pyspark.sql module

Module Context

Important classes of Spark SQL and DataFrames:

class pyspark.sql.SparkSession(sparkContext, jsparkSession=None)[source]

The entry point to programming Spark with the Dataset and DataFrame API.

A SparkSession can be used create DataFrame, register DataFrame as tables, execute SQL over tables, cache tables, and read parquet files. To create a SparkSession, use the following builder pattern:

>>> spark = SparkSession.builder \
...     .master("local") \
...     .appName("Word Count") \
...     .config("spark.some.config.option", "some-value") \
...     .getOrCreate()
class Builder[source]

Builder for SparkSession.

appName(name)[source]

Sets a name for the application, which will be shown in the Spark web UI.

If no application name is set, a randomly generated name will be used.

Parameters:name – an application name

New in version 2.0.

config(key=None, value=None, conf=None)[source]

Sets a config option. Options set using this method are automatically propagated to both SparkConf and SparkSession’s own configuration.

For an existing SparkConf, use conf parameter.

>>> from pyspark.conf import SparkConf
>>> SparkSession.builder.config(conf=SparkConf())
<pyspark.sql.session...

For a (key, value) pair, you can omit parameter names.

>>> SparkSession.builder.config("spark.some.config.option", "some-value")
<pyspark.sql.session...
Parameters:
  • key – a key name string for configuration property
  • value – a value for configuration property
  • conf – an instance of SparkConf

New in version 2.0.

enableHiveSupport()[source]

Enables Hive support, including connectivity to a persistent Hive metastore, support for Hive serdes, and Hive user-defined functions.

New in version 2.0.

getOrCreate()[source]

Gets an existing SparkSession or, if there is no existing one, creates a new one based on the options set in this builder.

This method first checks whether there is a valid global default SparkSession, and if yes, return that one. If no valid global default SparkSession exists, the method creates a new SparkSession and assigns the newly created SparkSession as the global default.

>>> s1 = SparkSession.builder.config("k1", "v1").getOrCreate()
>>> s1.conf.get("k1") == s1.sparkContext.getConf().get("k1") == "v1"
True

In case an existing SparkSession is returned, the config options specified in this builder will be applied to the existing SparkSession.

>>> s2 = SparkSession.builder.config("k2", "v2").getOrCreate()
>>> s1.conf.get("k1") == s2.conf.get("k1")
True
>>> s1.conf.get("k2") == s2.conf.get("k2")
True

New in version 2.0.

master(master)[source]

Sets the Spark master URL to connect to, such as “local” to run locally, “local[4]” to run locally with 4 cores, or “spark://master:7077” to run on a Spark standalone cluster.

Parameters:master – a url for spark master

New in version 2.0.

builder = <pyspark.sql.session.SparkSession.Builder object>
catalog

Interface through which the user may create, drop, alter or query underlying databases, tables, functions etc.

New in version 2.0.

conf

Runtime configuration interface for Spark.

This is the interface through which the user can get and set all Spark and Hadoop configurations that are relevant to Spark SQL. When getting the value of a config, this defaults to the value set in the underlying SparkContext, if any.

New in version 2.0.

createDataFrame(data, schema=None, samplingRatio=None, verifySchema=True)[source]

Creates a DataFrame from an RDD, a list or a pandas.DataFrame.

When schema is a list of column names, the type of each column will be inferred from data.

When schema is None, it will try to infer the schema (column names and types) from data, which should be an RDD of Row, or namedtuple, or dict.

When schema is pyspark.sql.types.DataType or a datatype string, it must match the real data, or an exception will be thrown at runtime. If the given schema is not pyspark.sql.types.StructType, it will be wrapped into a pyspark.sql.types.StructType as its only field, and the field name will be “value”, each record will also be wrapped into a tuple, which can be converted to row later.

If schema inference is needed, samplingRatio is used to determined the ratio of rows used for schema inference. The first row will be used if samplingRatio is None.

Parameters:
  • data – an RDD of any kind of SQL data representation(e.g. row, tuple, int, boolean, etc.), or list, or pandas.DataFrame.
  • schema – a pyspark.sql.types.DataType or a datatype string or a list of column names, default is None. The data type string format equals to pyspark.sql.types.DataType.simpleString, except that top level struct type can omit the struct<> and atomic types use typeName() as their format, e.g. use byte instead of tinyint for pyspark.sql.types.ByteType. We can also use int as a short name for IntegerType.
  • samplingRatio – the sample ratio of rows used for inferring
  • verifySchema – verify data types of every row against schema.
Returns:

DataFrame

Changed in version 2.1: Added verifySchema.

>>> l = [('Alice', 1)]
>>> spark.createDataFrame(l).collect()
[Row(_1='Alice', _2=1)]
>>> spark.createDataFrame(l, ['name', 'age']).collect()
[Row(name='Alice', age=1)]
>>> d = [{'name': 'Alice', 'age': 1}]
>>> spark.createDataFrame(d).collect()
[Row(age=1, name='Alice')]
>>> rdd = sc.parallelize(l)
>>> spark.createDataFrame(rdd).collect()
[Row(_1='Alice', _2=1)]
>>> df = spark.createDataFrame(rdd, ['name', 'age'])
>>> df.collect()
[Row(name='Alice', age=1)]
>>> from pyspark.sql import Row
>>> Person = Row('name', 'age')
>>> person = rdd.map(lambda r: Person(*r))
>>> df2 = spark.createDataFrame(person)
>>> df2.collect()
[Row(name='Alice', age=1)]
>>> from pyspark.sql.types import *
>>> schema = StructType([
...    StructField("name", StringType(), True),
...    StructField("age", IntegerType(), True)])
>>> df3 = spark.createDataFrame(rdd, schema)
>>> df3.collect()
[Row(name='Alice', age=1)]
>>> spark.createDataFrame(df.toPandas()).collect()  
[Row(name='Alice', age=1)]
>>> spark.createDataFrame(pandas.DataFrame([[1, 2]])).collect()  
[Row(0=1, 1=2)]
>>> spark.createDataFrame(rdd, "a: string, b: int").collect()
[Row(a='Alice', b=1)]
>>> rdd = rdd.map(lambda row: row[1])
>>> spark.createDataFrame(rdd, "int").collect()
[Row(value=1)]
>>> spark.createDataFrame(rdd, "boolean").collect() 
Traceback (most recent call last):
    ...
Py4JJavaError: ...

New in version 2.0.

newSession()[source]

Returns a new SparkSession as new session, that has separate SQLConf, registered temporary views and UDFs, but shared SparkContext and table cache.

New in version 2.0.

range(start, end=None, step=1, numPartitions=None)[source]

Create a DataFrame with single pyspark.sql.types.LongType column named id, containing elements in a range from start to end (exclusive) with step value step.

Parameters:
  • start – the start value
  • end – the end value (exclusive)
  • step – the incremental step (default: 1)
  • numPartitions – the number of partitions of the DataFrame
Returns:

DataFrame

>>> spark.range(1, 7, 2).collect()
[Row(id=1), Row(id=3), Row(id=5)]

If only one argument is specified, it will be used as the end value.

>>> spark.range(3).collect()
[Row(id=0), Row(id=1), Row(id=2)]

New in version 2.0.

read

Returns a DataFrameReader that can be used to read data in as a DataFrame.

Returns:DataFrameReader

New in version 2.0.

readStream

Returns a DataStreamReader that can be used to read data streams as a streaming DataFrame.

Note

Experimental.

Returns:DataStreamReader

New in version 2.0.

sparkContext

Returns the underlying SparkContext.

New in version 2.0.

sql(sqlQuery)[source]

Returns a DataFrame representing the result of the given query.

Returns:DataFrame
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.sql("SELECT field1 AS f1, field2 as f2 from table1")
>>> df2.collect()
[Row(f1=1, f2='row1'), Row(f1=2, f2='row2'), Row(f1=3, f2='row3')]

New in version 2.0.

stop()[source]

Stop the underlying SparkContext.

New in version 2.0.

streams

Returns a StreamingQueryManager that allows managing all the StreamingQuery StreamingQueries active on this context.

Note

Experimental.

Returns:StreamingQueryManager

New in version 2.0.

table(tableName)[source]

Returns the specified table as a DataFrame.

Returns:DataFrame
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.table("table1")
>>> sorted(df.collect()) == sorted(df2.collect())
True

New in version 2.0.

udf

Returns a UDFRegistration for UDF registration.

Returns:UDFRegistration

New in version 2.0.

version

The version of Spark on which this application is running.

New in version 2.0.

class pyspark.sql.SQLContext(sparkContext, sparkSession=None, jsqlContext=None)[source]

The entry point for working with structured data (rows and columns) in Spark, in Spark 1.x.

As of Spark 2.0, this is replaced by SparkSession. However, we are keeping the class here for backward compatibility.

A SQLContext can be used create DataFrame, register DataFrame as tables, execute SQL over tables, cache tables, and read parquet files.

Parameters:
  • sparkContext – The SparkContext backing this SQLContext.
  • sparkSession – The SparkSession around which this SQLContext wraps.
  • jsqlContext – An optional JVM Scala SQLContext. If set, we do not instantiate a new SQLContext in the JVM, instead we make all calls to this object.
cacheTable(tableName)[source]

Caches the specified table in-memory.

New in version 1.0.

clearCache()[source]

Removes all cached tables from the in-memory cache.

New in version 1.3.

createDataFrame(data, schema=None, samplingRatio=None, verifySchema=True)[source]

Creates a DataFrame from an RDD, a list or a pandas.DataFrame.

When schema is a list of column names, the type of each column will be inferred from data.

When schema is None, it will try to infer the schema (column names and types) from data, which should be an RDD of Row, or namedtuple, or dict.

When schema is pyspark.sql.types.DataType or a datatype string it must match the real data, or an exception will be thrown at runtime. If the given schema is not pyspark.sql.types.StructType, it will be wrapped into a pyspark.sql.types.StructType as its only field, and the field name will be “value”, each record will also be wrapped into a tuple, which can be converted to row later.

If schema inference is needed, samplingRatio is used to determined the ratio of rows used for schema inference. The first row will be used if samplingRatio is None.

Parameters:
  • data – an RDD of any kind of SQL data representation(e.g. Row, tuple, int, boolean, etc.), or list, or pandas.DataFrame.
  • schema – a pyspark.sql.types.DataType or a datatype string or a list of column names, default is None. The data type string format equals to pyspark.sql.types.DataType.simpleString, except that top level struct type can omit the struct<> and atomic types use typeName() as their format, e.g. use byte instead of tinyint for pyspark.sql.types.ByteType. We can also use int as a short name for pyspark.sql.types.IntegerType.
  • samplingRatio – the sample ratio of rows used for inferring
  • verifySchema – verify data types of every row against schema.
Returns:

DataFrame

Changed in version 2.0: The schema parameter can be a pyspark.sql.types.DataType or a datatype string after 2.0. If it’s not a pyspark.sql.types.StructType, it will be wrapped into a pyspark.sql.types.StructType and each record will also be wrapped into a tuple.

Changed in version 2.1: Added verifySchema.

>>> l = [('Alice', 1)]
>>> sqlContext.createDataFrame(l).collect()
[Row(_1='Alice', _2=1)]
>>> sqlContext.createDataFrame(l, ['name', 'age']).collect()
[Row(name='Alice', age=1)]
>>> d = [{'name': 'Alice', 'age': 1}]
>>> sqlContext.createDataFrame(d).collect()
[Row(age=1, name='Alice')]
>>> rdd = sc.parallelize(l)
>>> sqlContext.createDataFrame(rdd).collect()
[Row(_1='Alice', _2=1)]
>>> df = sqlContext.createDataFrame(rdd, ['name', 'age'])
>>> df.collect()
[Row(name='Alice', age=1)]
>>> from pyspark.sql import Row
>>> Person = Row('name', 'age')
>>> person = rdd.map(lambda r: Person(*r))
>>> df2 = sqlContext.createDataFrame(person)
>>> df2.collect()
[Row(name='Alice', age=1)]
>>> from pyspark.sql.types import *
>>> schema = StructType([
...    StructField("name", StringType(), True),
...    StructField("age", IntegerType(), True)])
>>> df3 = sqlContext.createDataFrame(rdd, schema)
>>> df3.collect()
[Row(name='Alice', age=1)]
>>> sqlContext.createDataFrame(df.toPandas()).collect()  
[Row(name='Alice', age=1)]
>>> sqlContext.createDataFrame(pandas.DataFrame([[1, 2]])).collect()  
[Row(0=1, 1=2)]
>>> sqlContext.createDataFrame(rdd, "a: string, b: int").collect()
[Row(a='Alice', b=1)]
>>> rdd = rdd.map(lambda row: row[1])
>>> sqlContext.createDataFrame(rdd, "int").collect()
[Row(value=1)]
>>> sqlContext.createDataFrame(rdd, "boolean").collect() 
Traceback (most recent call last):
    ...
Py4JJavaError: ...

New in version 1.3.

createExternalTable(tableName, path=None, source=None, schema=None, **options)[source]

Creates an external table based on the dataset in a data source.

It returns the DataFrame associated with the external table.

The data source is specified by the source and a set of options. If source is not specified, the default data source configured by spark.sql.sources.default will be used.

Optionally, a schema can be provided as the schema of the returned DataFrame and created external table.

Returns:DataFrame

New in version 1.3.

dropTempTable(tableName)[source]

Remove the temp table from catalog.

>>> sqlContext.registerDataFrameAsTable(df, "table1")
>>> sqlContext.dropTempTable("table1")

New in version 1.6.

getConf(key, defaultValue=None)[source]

Returns the value of Spark SQL configuration property for the given key.

If the key is not set and defaultValue is not None, return defaultValue. If the key is not set and defaultValue is None, return the system default value.

>>> sqlContext.getConf("spark.sql.shuffle.partitions")
'200'
>>> sqlContext.getConf("spark.sql.shuffle.partitions", u"10")
'10'
>>> sqlContext.setConf("spark.sql.shuffle.partitions", u"50")
>>> sqlContext.getConf("spark.sql.shuffle.partitions", u"10")
'50'

New in version 1.3.

classmethod getOrCreate(sc)[source]

Get the existing SQLContext or create a new one with given SparkContext.

Parameters:sc – SparkContext

New in version 1.6.

newSession()[source]

Returns a new SQLContext as new session, that has separate SQLConf, registered temporary views and UDFs, but shared SparkContext and table cache.

New in version 1.6.

range(start, end=None, step=1, numPartitions=None)[source]

Create a DataFrame with single pyspark.sql.types.LongType column named id, containing elements in a range from start to end (exclusive) with step value step.

Parameters:
  • start – the start value
  • end – the end value (exclusive)
  • step – the incremental step (default: 1)
  • numPartitions – the number of partitions of the DataFrame
Returns:

DataFrame

>>> sqlContext.range(1, 7, 2).collect()
[Row(id=1), Row(id=3), Row(id=5)]

If only one argument is specified, it will be used as the end value.

>>> sqlContext.range(3).collect()
[Row(id=0), Row(id=1), Row(id=2)]

New in version 1.4.

read

Returns a DataFrameReader that can be used to read data in as a DataFrame.

Returns:DataFrameReader

New in version 1.4.

readStream

Returns a DataStreamReader that can be used to read data streams as a streaming DataFrame.

Note

Experimental.

Returns:DataStreamReader
>>> text_sdf = sqlContext.readStream.text(tempfile.mkdtemp())
>>> text_sdf.isStreaming
True

New in version 2.0.

registerDataFrameAsTable(df, tableName)[source]

Registers the given DataFrame as a temporary table in the catalog.

Temporary tables exist only during the lifetime of this instance of SQLContext.

>>> sqlContext.registerDataFrameAsTable(df, "table1")

New in version 1.3.

registerFunction(name, f, returnType=StringType)[source]

Registers a python function (including lambda function) as a UDF so it can be used in SQL statements.

In addition to a name and the function itself, the return type can be optionally specified. When the return type is not given it default to a string and conversion will automatically be done. For any other return type, the produced object must match the specified type.

Parameters:
>>> sqlContext.registerFunction("stringLengthString", lambda x: len(x))
>>> sqlContext.sql("SELECT stringLengthString('test')").collect()
[Row(stringLengthString(test)='4')]
>>> from pyspark.sql.types import IntegerType
>>> sqlContext.registerFunction("stringLengthInt", lambda x: len(x), IntegerType())
>>> sqlContext.sql("SELECT stringLengthInt('test')").collect()
[Row(stringLengthInt(test)=4)]
>>> from pyspark.sql.types import IntegerType
>>> sqlContext.udf.register("stringLengthInt", lambda x: len(x), IntegerType())
>>> sqlContext.sql("SELECT stringLengthInt('test')").collect()
[Row(stringLengthInt(test)=4)]

New in version 1.2.

registerJavaFunction(name, javaClassName, returnType=None)[source]

Register a java UDF so it can be used in SQL statements.

In addition to a name and the function itself, the return type can be optionally specified. When the return type is not specified we would infer it via reflection. :param name: name of the UDF :param javaClassName: fully qualified name of java class :param returnType: a pyspark.sql.types.DataType object

>>> sqlContext.registerJavaFunction("javaStringLength",
...   "test.org.apache.spark.sql.JavaStringLength", IntegerType())
>>> sqlContext.sql("SELECT javaStringLength('test')").collect()
[Row(UDF(test)=4)]
>>> sqlContext.registerJavaFunction("javaStringLength2",
...   "test.org.apache.spark.sql.JavaStringLength")
>>> sqlContext.sql("SELECT javaStringLength2('test')").collect()
[Row(UDF(test)=4)]

New in version 2.1.

setConf(key, value)[source]

Sets the given Spark SQL configuration property.

New in version 1.3.

sql(sqlQuery)[source]

Returns a DataFrame representing the result of the given query.

Returns:DataFrame
>>> sqlContext.registerDataFrameAsTable(df, "table1")
>>> df2 = sqlContext.sql("SELECT field1 AS f1, field2 as f2 from table1")
>>> df2.collect()
[Row(f1=1, f2='row1'), Row(f1=2, f2='row2'), Row(f1=3, f2='row3')]

New in version 1.0.

streams

Returns a StreamingQueryManager that allows managing all the StreamingQuery StreamingQueries active on this context.

Note

Experimental.

New in version 2.0.

table(tableName)[source]

Returns the specified table as a DataFrame.

Returns:DataFrame
>>> sqlContext.registerDataFrameAsTable(df, "table1")
>>> df2 = sqlContext.table("table1")
>>> sorted(df.collect()) == sorted(df2.collect())
True

New in version 1.0.

tableNames(dbName=None)[source]

Returns a list of names of tables in the database dbName.

Parameters:dbName – string, name of the database to use. Default to the current database.
Returns:list of table names, in string
>>> sqlContext.registerDataFrameAsTable(df, "table1")
>>> "table1" in sqlContext.tableNames()
True
>>> "table1" in sqlContext.tableNames("default")
True

New in version 1.3.

tables(dbName=None)[source]

Returns a DataFrame containing names of tables in the given database.

If dbName is not specified, the current database will be used.

The returned DataFrame has two columns: tableName and isTemporary (a column with BooleanType indicating if a table is a temporary one or not).

Parameters:dbName – string, name of the database to use.
Returns:DataFrame
>>> sqlContext.registerDataFrameAsTable(df, "table1")
>>> df2 = sqlContext.tables()
>>> df2.filter("tableName = 'table1'").first()
Row(database='', tableName='table1', isTemporary=True)

New in version 1.3.

udf

Returns a UDFRegistration for UDF registration.

Returns:UDFRegistration

New in version 1.3.1.

uncacheTable(tableName)[source]

Removes the specified table from the in-memory cache.

New in version 1.0.

class pyspark.sql.HiveContext(sparkContext, jhiveContext=None)[source]

A variant of Spark SQL that integrates with data stored in Hive.

Configuration for Hive is read from hive-site.xml on the classpath. It supports running both SQL and HiveQL commands.

Parameters:
  • sparkContext – The SparkContext to wrap.
  • jhiveContext – An optional JVM Scala HiveContext. If set, we do not instantiate a new HiveContext in the JVM, instead we make all calls to this object.

Note

Deprecated in 2.0.0. Use SparkSession.builder.enableHiveSupport().getOrCreate().

refreshTable(tableName)[source]

Invalidate and refresh all the cached the metadata of the given table. For performance reasons, Spark SQL or the external data source library it uses might cache certain metadata about a table, such as the location of blocks. When those change outside of Spark SQL, users should call this function to invalidate the cache.

class pyspark.sql.UDFRegistration(sqlContext)[source]

Wrapper for user-defined function registration.

register(name, f, returnType=StringType)[source]

Registers a python function (including lambda function) as a UDF so it can be used in SQL statements.

In addition to a name and the function itself, the return type can be optionally specified. When the return type is not given it default to a string and conversion will automatically be done. For any other return type, the produced object must match the specified type.

Parameters:
>>> sqlContext.registerFunction("stringLengthString", lambda x: len(x))
>>> sqlContext.sql("SELECT stringLengthString('test')").collect()
[Row(stringLengthString(test)='4')]
>>> from pyspark.sql.types import IntegerType
>>> sqlContext.registerFunction("stringLengthInt", lambda x: len(x), IntegerType())
>>> sqlContext.sql("SELECT stringLengthInt('test')").collect()
[Row(stringLengthInt(test)=4)]
>>> from pyspark.sql.types import IntegerType
>>> sqlContext.udf.register("stringLengthInt", lambda x: len(x), IntegerType())
>>> sqlContext.sql("SELECT stringLengthInt('test')").collect()
[Row(stringLengthInt(test)=4)]

New in version 1.2.

class pyspark.sql.DataFrame(jdf, sql_ctx)[source]

A distributed collection of data grouped into named columns.

A DataFrame is equivalent to a relational table in Spark SQL, and can be created using various functions in SQLContext:

people = sqlContext.read.parquet("...")

Once created, it can be manipulated using the various domain-specific-language (DSL) functions defined in: DataFrame, Column.

To select a column from the data frame, use the apply method:

ageCol = people.age

A more concrete example:

# To create DataFrame using SQLContext
people = sqlContext.read.parquet("...")
department = sqlContext.read.parquet("...")

people.filter(people.age > 30).join(department, people.deptId == department.id) \
  .groupBy(department.name, "gender").agg({"salary": "avg", "age": "max"})

New in version 1.3.

agg(*exprs)[source]

Aggregate on the entire DataFrame without groups (shorthand for df.groupBy.agg()).

>>> df.agg({"age": "max"}).collect()
[Row(max(age)=5)]
>>> from pyspark.sql import functions as F
>>> df.agg(F.min(df.age)).collect()
[Row(min(age)=2)]

New in version 1.3.

alias(alias)[source]

Returns a new DataFrame with an alias set.

>>> from pyspark.sql.functions import *
>>> df_as1 = df.alias("df_as1")
>>> df_as2 = df.alias("df_as2")
>>> joined_df = df_as1.join(df_as2, col("df_as1.name") == col("df_as2.name"), 'inner')
>>> joined_df.select("df_as1.name", "df_as2.name", "df_as2.age").collect()
[Row(name='Bob', name='Bob', age=5), Row(name='Alice', name='Alice', age=2)]

New in version 1.3.

approxQuantile(col, probabilities, relativeError)[source]

Calculates the approximate quantiles of a numerical column of a DataFrame.

The result of this algorithm has the following deterministic bound: If the DataFrame has N elements and if we request the quantile at probability p up to error err, then the algorithm will return a sample x from the DataFrame so that the exact rank of x is close to (p * N). More precisely,

floor((p - err) * N) <= rank(x) <= ceil((p + err) * N).

This method implements a variation of the Greenwald-Khanna algorithm (with some speed optimizations). The algorithm was first present in [[http://dx.doi.org/10.1145/375663.375670 Space-efficient Online Computation of Quantile Summaries]] by Greenwald and Khanna.

Parameters:
  • col – the name of the numerical column
  • probabilities – a list of quantile probabilities Each number must belong to [0, 1]. For example 0 is the minimum, 0.5 is the median, 1 is the maximum.
  • relativeError – The relative target precision to achieve (>= 0). If set to zero, the exact quantiles are computed, which could be very expensive. Note that values greater than 1 are accepted but give the same result as 1.
Returns:

the approximate quantiles at the given probabilities

New in version 2.0.

cache()[source]

Persists the DataFrame with the default storage level (MEMORY_AND_DISK).

Note

The default storage level has changed to MEMORY_AND_DISK to match Scala in 2.0.

New in version 1.3.

checkpoint(eager=True)[source]

Returns a checkpointed version of this Dataset. Checkpointing can be used to truncate the logical plan of this DataFrame, which is especially useful in iterative algorithms where the plan may grow exponentially. It will be saved to files inside the checkpoint directory set with SparkContext.setCheckpointDir().

Parameters:eager – Whether to checkpoint this DataFrame immediately

Note

Experimental

New in version 2.1.

coalesce(numPartitions)[source]

Returns a new DataFrame that has exactly numPartitions partitions.

Similar to coalesce defined on an RDD, this operation results in a narrow dependency, e.g. if you go from 1000 partitions to 100 partitions, there will not be a shuffle, instead each of the 100 new partitions will claim 10 of the current partitions. If a larger number of partitions is requested, it will stay at the current number of partitions.

However, if you’re doing a drastic coalesce, e.g. to numPartitions = 1, this may result in your computation taking place on fewer nodes than you like (e.g. one node in the case of numPartitions = 1). To avoid this, you can call repartition(). This will add a shuffle step, but means the current upstream partitions will be executed in parallel (per whatever the current partitioning is).

>>> df.coalesce(1).rdd.getNumPartitions()
1

New in version 1.4.

collect()[source]

Returns all the records as a list of Row.

>>> df.collect()
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]

New in version 1.3.

columns

Returns all column names as a list.

>>> df.columns
['age', 'name']

New in version 1.3.

corr(col1, col2, method=None)[source]

Calculates the correlation of two columns of a DataFrame as a double value. Currently only supports the Pearson Correlation Coefficient. DataFrame.corr() and DataFrameStatFunctions.corr() are aliases of each other.

Parameters:
  • col1 – The name of the first column
  • col2 – The name of the second column
  • method – The correlation method. Currently only supports “pearson”

New in version 1.4.

count()[source]

Returns the number of rows in this DataFrame.

>>> df.count()
2

New in version 1.3.

cov(col1, col2)[source]

Calculate the sample covariance for the given columns, specified by their names, as a double value. DataFrame.cov() and DataFrameStatFunctions.cov() are aliases.

Parameters:
  • col1 – The name of the first column
  • col2 – The name of the second column

New in version 1.4.

createGlobalTempView(name)[source]

Creates a global temporary view with this DataFrame.

The lifetime of this temporary view is tied to this Spark application. throws TempTableAlreadyExistsException, if the view name already exists in the catalog.

>>> df.createGlobalTempView("people")
>>> df2 = spark.sql("select * from global_temp.people")
>>> sorted(df.collect()) == sorted(df2.collect())
True
>>> df.createGlobalTempView("people")  
Traceback (most recent call last):
...
AnalysisException: u"Temporary table 'people' already exists;"
>>> spark.catalog.dropGlobalTempView("people")

New in version 2.1.

createOrReplaceTempView(name)[source]

Creates or replaces a local temporary view with this DataFrame.

The lifetime of this temporary table is tied to the SparkSession that was used to create this DataFrame.

>>> df.createOrReplaceTempView("people")
>>> df2 = df.filter(df.age > 3)
>>> df2.createOrReplaceTempView("people")
>>> df3 = spark.sql("select * from people")
>>> sorted(df3.collect()) == sorted(df2.collect())
True
>>> spark.catalog.dropTempView("people")

New in version 2.0.

createTempView(name)[source]

Creates a local temporary view with this DataFrame.

The lifetime of this temporary table is tied to the SparkSession that was used to create this DataFrame. throws TempTableAlreadyExistsException, if the view name already exists in the catalog.

>>> df.createTempView("people")
>>> df2 = spark.sql("select * from people")
>>> sorted(df.collect()) == sorted(df2.collect())
True
>>> df.createTempView("people")  
Traceback (most recent call last):
...
AnalysisException: u"Temporary table 'people' already exists;"
>>> spark.catalog.dropTempView("people")

New in version 2.0.

crossJoin(other)[source]

Returns the cartesian product with another DataFrame.

Parameters:other – Right side of the cartesian product.
>>> df.select("age", "name").collect()
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]
>>> df2.select("name", "height").collect()
[Row(name='Tom', height=80), Row(name='Bob', height=85)]
>>> df.crossJoin(df2.select("height")).select("age", "name", "height").collect()
[Row(age=2, name='Alice', height=80), Row(age=2, name='Alice', height=85),
 Row(age=5, name='Bob', height=80), Row(age=5, name='Bob', height=85)]

New in version 2.1.

crosstab(col1, col2)[source]

Computes a pair-wise frequency table of the given columns. Also known as a contingency table. The number of distinct values for each column should be less than 1e4. At most 1e6 non-zero pair frequencies will be returned. The first column of each row will be the distinct values of col1 and the column names will be the distinct values of col2. The name of the first column will be $col1_$col2. Pairs that have no occurrences will have zero as their counts. DataFrame.crosstab() and DataFrameStatFunctions.crosstab() are aliases.

Parameters:
  • col1 – The name of the first column. Distinct items will make the first item of each row.
  • col2 – The name of the second column. Distinct items will make the column names of the DataFrame.

New in version 1.4.

cube(*cols)[source]

Create a multi-dimensional cube for the current DataFrame using the specified columns, so we can run aggregation on them.

>>> df.cube("name", df.age).count().orderBy("name", "age").show()
+-----+----+-----+
| name| age|count|
+-----+----+-----+
| null|null|    2|
| null|   2|    1|
| null|   5|    1|
|Alice|null|    1|
|Alice|   2|    1|
|  Bob|null|    1|
|  Bob|   5|    1|
+-----+----+-----+

New in version 1.4.

describe(*cols)[source]

Computes statistics for numeric and string columns.

This include count, mean, stddev, min, and max. If no columns are given, this function computes statistics for all numerical or string columns.

Note

This function is meant for exploratory data analysis, as we make no guarantee about the backward compatibility of the schema of the resulting DataFrame.

>>> df.describe(['age']).show()
+-------+------------------+
|summary|               age|
+-------+------------------+
|  count|                 2|
|   mean|               3.5|
| stddev|2.1213203435596424|
|    min|                 2|
|    max|                 5|
+-------+------------------+
>>> df.describe().show()
+-------+------------------+-----+
|summary|               age| name|
+-------+------------------+-----+
|  count|                 2|    2|
|   mean|               3.5| null|
| stddev|2.1213203435596424| null|
|    min|                 2|Alice|
|    max|                 5|  Bob|
+-------+------------------+-----+

New in version 1.3.1.

distinct()[source]

Returns a new DataFrame containing the distinct rows in this DataFrame.

>>> df.distinct().count()
2

New in version 1.3.

drop(*cols)[source]

Returns a new DataFrame that drops the specified column. This is a no-op if schema doesn’t contain the given column name(s).

Parameters:cols – a string name of the column to drop, or a Column to drop, or a list of string name of the columns to drop.
>>> df.drop('age').collect()
[Row(name='Alice'), Row(name='Bob')]
>>> df.drop(df.age).collect()
[Row(name='Alice'), Row(name='Bob')]
>>> df.join(df2, df.name == df2.name, 'inner').drop(df.name).collect()
[Row(age=5, height=85, name='Bob')]
>>> df.join(df2, df.name == df2.name, 'inner').drop(df2.name).collect()
[Row(age=5, name='Bob', height=85)]
>>> df.join(df2, 'name', 'inner').drop('age', 'height').collect()
[Row(name='Bob')]

New in version 1.4.

dropDuplicates(subset=None)[source]

Return a new DataFrame with duplicate rows removed, optionally only considering certain columns.

drop_duplicates() is an alias for dropDuplicates().

>>> from pyspark.sql import Row
>>> df = sc.parallelize([ \
...     Row(name='Alice', age=5, height=80), \
...     Row(name='Alice', age=5, height=80), \
...     Row(name='Alice', age=10, height=80)]).toDF()
>>> df.dropDuplicates().show()
+---+------+-----+
|age|height| name|
+---+------+-----+
|  5|    80|Alice|
| 10|    80|Alice|
+---+------+-----+
>>> df.dropDuplicates(['name', 'height']).show()
+---+------+-----+
|age|height| name|
+---+------+-----+
|  5|    80|Alice|
+---+------+-----+

New in version 1.4.

drop_duplicates(subset=None)

drop_duplicates() is an alias for dropDuplicates().

New in version 1.4.

dropna(how='any', thresh=None, subset=None)[source]

Returns a new DataFrame omitting rows with null values. DataFrame.dropna() and DataFrameNaFunctions.drop() are aliases of each other.

Parameters:
  • how – ‘any’ or ‘all’. If ‘any’, drop a row if it contains any nulls. If ‘all’, drop a row only if all its values are null.
  • thresh – int, default None If specified, drop rows that have less than thresh non-null values. This overwrites the how parameter.
  • subset – optional list of column names to consider.
>>> df4.na.drop().show()
+---+------+-----+
|age|height| name|
+---+------+-----+
| 10|    80|Alice|
+---+------+-----+

New in version 1.3.1.

dtypes

Returns all column names and their data types as a list.

>>> df.dtypes
[('age', 'int'), ('name', 'string')]

New in version 1.3.

explain(extended=False)[source]

Prints the (logical and physical) plans to the console for debugging purpose.

Parameters:extended – boolean, default False. If False, prints only the physical plan.
>>> df.explain()
== Physical Plan ==
Scan ExistingRDD[age#0,name#1]
>>> df.explain(True)
== Parsed Logical Plan ==
...
== Analyzed Logical Plan ==
...
== Optimized Logical Plan ==
...
== Physical Plan ==
...

New in version 1.3.

fillna(value, subset=None)[source]

Replace null values, alias for na.fill(). DataFrame.fillna() and DataFrameNaFunctions.fill() are aliases of each other.

Parameters:
  • value – int, long, float, string, or dict. Value to replace null values with. If the value is a dict, then subset is ignored and value must be a mapping from column name (string) to replacement value. The replacement value must be an int, long, float, or string.
  • subset – optional list of column names to consider. Columns specified in subset that do not have matching data type are ignored. For example, if value is a string, and subset contains a non-string column, then the non-string column is simply ignored.
>>> df4.na.fill(50).show()
+---+------+-----+
|age|height| name|
+---+------+-----+
| 10|    80|Alice|
|  5|    50|  Bob|
| 50|    50|  Tom|
| 50|    50| null|
+---+------+-----+
>>> df4.na.fill({'age': 50, 'name': 'unknown'}).show()
+---+------+-------+
|age|height|   name|
+---+------+-------+
| 10|    80|  Alice|
|  5|  null|    Bob|
| 50|  null|    Tom|
| 50|  null|unknown|
+---+------+-------+

New in version 1.3.1.

filter(condition)[source]

Filters rows using the given condition.

where() is an alias for filter().

Parameters:condition – a Column of types.BooleanType or a string of SQL expression.
>>> df.filter(df.age > 3).collect()
[Row(age=5, name='Bob')]
>>> df.where(df.age == 2).collect()
[Row(age=2, name='Alice')]
>>> df.filter("age > 3").collect()
[Row(age=5, name='Bob')]
>>> df.where("age = 2").collect()
[Row(age=2, name='Alice')]

New in version 1.3.

first()[source]

Returns the first row as a Row.

>>> df.first()
Row(age=2, name='Alice')

New in version 1.3.

foreach(f)[source]

Applies the f function to all Row of this DataFrame.

This is a shorthand for df.rdd.foreach().

>>> def f(person):
...     print(person.name)
>>> df.foreach(f)

New in version 1.3.

foreachPartition(f)[source]

Applies the f function to each partition of this DataFrame.

This a shorthand for df.rdd.foreachPartition().

>>> def f(people):
...     for person in people:
...         print(person.name)
>>> df.foreachPartition(f)

New in version 1.3.

freqItems(cols, support=None)[source]

Finding frequent items for columns, possibly with false positives. Using the frequent element count algorithm described in “http://dx.doi.org/10.1145/762471.762473, proposed by Karp, Schenker, and Papadimitriou”. DataFrame.freqItems() and DataFrameStatFunctions.freqItems() are aliases.

Note

This function is meant for exploratory data analysis, as we make no guarantee about the backward compatibility of the schema of the resulting DataFrame.

Parameters:
  • cols – Names of the columns to calculate frequent items for as a list or tuple of strings.
  • support – The frequency with which to consider an item ‘frequent’. Default is 1%. The support must be greater than 1e-4.

New in version 1.4.

groupBy(*cols)[source]

Groups the DataFrame using the specified columns, so we can run aggregation on them. See GroupedData for all the available aggregate functions.

groupby() is an alias for groupBy().

Parameters:cols – list of columns to group by. Each element should be a column name (string) or an expression (Column).
>>> df.groupBy().avg().collect()
[Row(avg(age)=3.5)]
>>> sorted(df.groupBy('name').agg({'age': 'mean'}).collect())
[Row(name='Alice', avg(age)=2.0), Row(name='Bob', avg(age)=5.0)]
>>> sorted(df.groupBy(df.name).avg().collect())
[Row(name='Alice', avg(age)=2.0), Row(name='Bob', avg(age)=5.0)]
>>> sorted(df.groupBy(['name', df.age]).count().collect())
[Row(name='Alice', age=2, count=1), Row(name='Bob', age=5, count=1)]

New in version 1.3.

groupby(*cols)

groupby() is an alias for groupBy().

New in version 1.4.

head(n=None)[source]

Returns the first n rows.

Note

This method should only be used if the resulting array is expected to be small, as all the data is loaded into the driver’s memory.

Parameters:n – int, default 1. Number of rows to return.
Returns:If n is greater than 1, return a list of Row. If n is 1, return a single Row.
>>> df.head()
Row(age=2, name='Alice')
>>> df.head(1)
[Row(age=2, name='Alice')]

New in version 1.3.

intersect(other)[source]

Return a new DataFrame containing rows only in both this frame and another frame.

This is equivalent to INTERSECT in SQL.

New in version 1.3.

isLocal()[source]

Returns True if the collect() and take() methods can be run locally (without any Spark executors).

New in version 1.3.

isStreaming

Returns true if this Dataset contains one or more sources that continuously return data as it arrives. A Dataset that reads data from a streaming source must be executed as a StreamingQuery using the start() method in DataStreamWriter. Methods that return a single answer, (e.g., count() or collect()) will throw an AnalysisException when there is a streaming source present.

Note

Experimental

New in version 2.0.

join(other, on=None, how=None)[source]

Joins with another DataFrame, using the given join expression.

Parameters:
  • other – Right side of the join
  • on – a string for the join column name, a list of column names, a join expression (Column), or a list of Columns. If on is a string or a list of strings indicating the name of the join column(s), the column(s) must exist on both sides, and this performs an equi-join.
  • how – str, default inner. Must be one of: inner, cross, outer, full, full_outer, left, left_outer, right, right_outer, left_semi, and left_anti.

The following performs a full outer join between df1 and df2.

>>> df.join(df2, df.name == df2.name, 'outer').select(df.name, df2.height).collect()
[Row(name=None, height=80), Row(name='Bob', height=85), Row(name='Alice', height=None)]
>>> df.join(df2, 'name', 'outer').select('name', 'height').collect()
[Row(name='Tom', height=80), Row(name='Bob', height=85), Row(name='Alice', height=None)]
>>> cond = [df.name == df3.name, df.age == df3.age]
>>> df.join(df3, cond, 'outer').select(df.name, df3.age).collect()
[Row(name='Alice', age=2), Row(name='Bob', age=5)]
>>> df.join(df2, 'name').select(df.name, df2.height).collect()
[Row(name='Bob', height=85)]
>>> df.join(df4, ['name', 'age']).select(df.name, df.age).collect()
[Row(name='Bob', age=5)]

New in version 1.3.

limit(num)[source]

Limits the result count to the number specified.

>>> df.limit(1).collect()
[Row(age=2, name='Alice')]
>>> df.limit(0).collect()
[]

New in version 1.3.

na

Returns a DataFrameNaFunctions for handling missing values.

New in version 1.3.1.

orderBy(*cols, **kwargs)

Returns a new DataFrame sorted by the specified column(s).

Parameters:
  • cols – list of Column or column names to sort by.
  • ascending – boolean or list of boolean (default True). Sort ascending vs. descending. Specify list for multiple sort orders. If a list is specified, length of the list must equal length of the cols.
>>> df.sort(df.age.desc()).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.sort("age", ascending=False).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.orderBy(df.age.desc()).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> from pyspark.sql.functions import *
>>> df.sort(asc("age")).collect()
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]
>>> df.orderBy(desc("age"), "name").collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.orderBy(["age", "name"], ascending=[0, 1]).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]

New in version 1.3.

persist(storageLevel=StorageLevel(True, True, False, False, 1))[source]

Sets the storage level to persist the contents of the DataFrame across operations after the first time it is computed. This can only be used to assign a new storage level if the DataFrame does not have a storage level set yet. If no storage level is specified defaults to (MEMORY_AND_DISK).

Note

The default storage level has changed to MEMORY_AND_DISK to match Scala in 2.0.

New in version 1.3.

printSchema()[source]

Prints out the schema in the tree format.

>>> df.printSchema()
root
 |-- age: integer (nullable = true)
 |-- name: string (nullable = true)

New in version 1.3.

randomSplit(weights, seed=None)[source]

Randomly splits this DataFrame with the provided weights.

Parameters:
  • weights – list of doubles as weights with which to split the DataFrame. Weights will be normalized if they don’t sum up to 1.0.
  • seed – The seed for sampling.
>>> splits = df4.randomSplit([1.0, 2.0], 24)
>>> splits[0].count()
1
>>> splits[1].count()
3

New in version 1.4.

rdd

Returns the content as an pyspark.RDD of Row.

New in version 1.3.

registerTempTable(name)[source]

Registers this RDD as a temporary table using the given name.

The lifetime of this temporary table is tied to the SQLContext that was used to create this DataFrame.

>>> df.registerTempTable("people")
>>> df2 = spark.sql("select * from people")
>>> sorted(df.collect()) == sorted(df2.collect())
True
>>> spark.catalog.dropTempView("people")

Note

Deprecated in 2.0, use createOrReplaceTempView instead.

New in version 1.3.

repartition(numPartitions, *cols)[source]

Returns a new DataFrame partitioned by the given partitioning expressions. The resulting DataFrame is hash partitioned.

numPartitions can be an int to specify the target number of partitions or a Column. If it is a Column, it will be used as the first partitioning column. If not specified, the default number of partitions is used.

Changed in version 1.6: Added optional arguments to specify the partitioning columns. Also made numPartitions optional if partitioning columns are specified.

>>> df.repartition(10).rdd.getNumPartitions()
10
>>> data = df.union(df).repartition("age")
>>> data.show()
+---+-----+
|age| name|
+---+-----+
|  5|  Bob|
|  5|  Bob|
|  2|Alice|
|  2|Alice|
+---+-----+
>>> data = data.repartition(7, "age")
>>> data.show()
+---+-----+
|age| name|
+---+-----+
|  2|Alice|
|  5|  Bob|
|  2|Alice|
|  5|  Bob|
+---+-----+
>>> data.rdd.getNumPartitions()
7
>>> data = data.repartition("name", "age")
>>> data.show()
+---+-----+
|age| name|
+---+-----+
|  5|  Bob|
|  5|  Bob|
|  2|Alice|
|  2|Alice|
+---+-----+

New in version 1.3.

replace(to_replace, value, subset=None)[source]

Returns a new DataFrame replacing a value with another value. DataFrame.replace() and DataFrameNaFunctions.replace() are aliases of each other.

Parameters:
  • to_replace – int, long, float, string, or list. Value to be replaced. If the value is a dict, then value is ignored and to_replace must be a mapping from column name (string) to replacement value. The value to be replaced must be an int, long, float, or string.
  • value – int, long, float, string, or list. Value to use to replace holes. The replacement value must be an int, long, float, or string. If value is a list or tuple, value should be of the same length with to_replace.
  • subset – optional list of column names to consider. Columns specified in subset that do not have matching data type are ignored. For example, if value is a string, and subset contains a non-string column, then the non-string column is simply ignored.
>>> df4.na.replace(10, 20).show()
+----+------+-----+
| age|height| name|
+----+------+-----+
|  20|    80|Alice|
|   5|  null|  Bob|
|null|  null|  Tom|
|null|  null| null|
+----+------+-----+
>>> df4.na.replace(['Alice', 'Bob'], ['A', 'B'], 'name').show()
+----+------+----+
| age|height|name|
+----+------+----+
|  10|    80|   A|
|   5|  null|   B|
|null|  null| Tom|
|null|  null|null|
+----+------+----+

New in version 1.4.

rollup(*cols)[source]

Create a multi-dimensional rollup for the current DataFrame using the specified columns, so we can run aggregation on them.

>>> df.rollup("name", df.age).count().orderBy("name", "age").show()
+-----+----+-----+
| name| age|count|
+-----+----+-----+
| null|null|    2|
|Alice|null|    1|
|Alice|   2|    1|
|  Bob|null|    1|
|  Bob|   5|    1|
+-----+----+-----+

New in version 1.4.

sample(withReplacement, fraction, seed=None)[source]

Returns a sampled subset of this DataFrame.

Note

This is not guaranteed to provide exactly the fraction specified of the total count of the given DataFrame.

>>> df.sample(False, 0.5, 42).count()
2

New in version 1.3.

sampleBy(col, fractions, seed=None)[source]

Returns a stratified sample without replacement based on the fraction given on each stratum.

Parameters:
  • col – column that defines strata
  • fractions – sampling fraction for each stratum. If a stratum is not specified, we treat its fraction as zero.
  • seed – random seed
Returns:

a new DataFrame that represents the stratified sample

>>> from pyspark.sql.functions import col
>>> dataset = sqlContext.range(0, 100).select((col("id") % 3).alias("key"))
>>> sampled = dataset.sampleBy("key", fractions={0: 0.1, 1: 0.2}, seed=0)
>>> sampled.groupBy("key").count().orderBy("key").show()
+---+-----+
|key|count|
+---+-----+
|  0|    5|
|  1|    9|
+---+-----+

New in version 1.5.

schema

Returns the schema of this DataFrame as a pyspark.sql.types.StructType.

>>> df.schema
StructType(List(StructField(age,IntegerType,true),StructField(name,StringType,true)))

New in version 1.3.

select(*cols)[source]

Projects a set of expressions and returns a new DataFrame.

Parameters:cols – list of column names (string) or expressions (Column). If one of the column names is ‘*’, that column is expanded to include all columns in the current DataFrame.
>>> df.select('*').collect()
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]
>>> df.select('name', 'age').collect()
[Row(name='Alice', age=2), Row(name='Bob', age=5)]
>>> df.select(df.name, (df.age + 10).alias('age')).collect()
[Row(name='Alice', age=12), Row(name='Bob', age=15)]

New in version 1.3.

selectExpr(*expr)[source]

Projects a set of SQL expressions and returns a new DataFrame.

This is a variant of select() that accepts SQL expressions.

>>> df.selectExpr("age * 2", "abs(age)").collect()
[Row((age * 2)=4, abs(age)=2), Row((age * 2)=10, abs(age)=5)]

New in version 1.3.

show(n=20, truncate=True)[source]

Prints the first n rows to the console.

Parameters:
  • n – Number of rows to show.
  • truncate – If set to True, truncate strings longer than 20 chars by default. If set to a number greater than one, truncates long strings to length truncate and align cells right.
>>> df
DataFrame[age: int, name: string]
>>> df.show()
+---+-----+
|age| name|
+---+-----+
|  2|Alice|
|  5|  Bob|
+---+-----+
>>> df.show(truncate=3)
+---+----+
|age|name|
+---+----+
|  2| Ali|
|  5| Bob|
+---+----+

New in version 1.3.

sort(*cols, **kwargs)[source]

Returns a new DataFrame sorted by the specified column(s).

Parameters:
  • cols – list of Column or column names to sort by.
  • ascending – boolean or list of boolean (default True). Sort ascending vs. descending. Specify list for multiple sort orders. If a list is specified, length of the list must equal length of the cols.
>>> df.sort(df.age.desc()).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.sort("age", ascending=False).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.orderBy(df.age.desc()).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> from pyspark.sql.functions import *
>>> df.sort(asc("age")).collect()
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]
>>> df.orderBy(desc("age"), "name").collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]
>>> df.orderBy(["age", "name"], ascending=[0, 1]).collect()
[Row(age=5, name='Bob'), Row(age=2, name='Alice')]

New in version 1.3.

sortWithinPartitions(*cols, **kwargs)[source]

Returns a new DataFrame with each partition sorted by the specified column(s).

Parameters:
  • cols – list of Column or column names to sort by.
  • ascending – boolean or list of boolean (default True). Sort ascending vs. descending. Specify list for multiple sort orders. If a list is specified, length of the list must equal length of the cols.
>>> df.sortWithinPartitions("age", ascending=False).show()
+---+-----+
|age| name|
+---+-----+
|  2|Alice|
|  5|  Bob|
+---+-----+

New in version 1.6.

stat

Returns a DataFrameStatFunctions for statistic functions.

New in version 1.4.

storageLevel

Get the DataFrame’s current storage level.

>>> df.storageLevel
StorageLevel(False, False, False, False, 1)
>>> df.cache().storageLevel
StorageLevel(True, True, False, True, 1)
>>> df2.persist(StorageLevel.DISK_ONLY_2).storageLevel
StorageLevel(True, False, False, False, 2)

New in version 2.1.

subtract(other)[source]

Return a new DataFrame containing rows in this frame but not in another frame.

This is equivalent to EXCEPT in SQL.

New in version 1.3.

take(num)[source]

Returns the first num rows as a list of Row.

>>> df.take(2)
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]

New in version 1.3.

toDF(*cols)[source]

Returns a new class:DataFrame that with new specified column names

Parameters:cols – list of new column names (string)
>>> df.toDF('f1', 'f2').collect()
[Row(f1=2, f2='Alice'), Row(f1=5, f2='Bob')]
toJSON(use_unicode=True)[source]

Converts a DataFrame into a RDD of string.

Each row is turned into a JSON document as one element in the returned RDD.

>>> df.toJSON().first()
'{"age":2,"name":"Alice"}'

New in version 1.3.

toLocalIterator()[source]

Returns an iterator that contains all of the rows in this DataFrame. The iterator will consume as much memory as the largest partition in this DataFrame.

>>> list(df.toLocalIterator())
[Row(age=2, name='Alice'), Row(age=5, name='Bob')]

New in version 2.0.

toPandas()[source]

Returns the contents of this DataFrame as Pandas pandas.DataFrame.

This is only available if Pandas is installed and available.

Note

This method should only be used if the resulting Pandas’s DataFrame is expected to be small, as all the data is loaded into the driver’s memory.

>>> df.toPandas()  
   age   name
0    2  Alice
1    5    Bob

New in version 1.3.

union(other)[source]

Return a new DataFrame containing union of rows in this frame and another frame.

This is equivalent to UNION ALL in SQL. To do a SQL-style set union (that does deduplication of elements), use this function followed by a distinct.

New in version 2.0.

unionAll(other)[source]

Return a new DataFrame containing union of rows in this frame and another frame.

Note

Deprecated in 2.0, use union instead.

New in version 1.3.

unpersist(blocking=False)[source]

Marks the DataFrame as non-persistent, and remove all blocks for it from memory and disk.

Note

blocking default has changed to False to match Scala in 2.0.

New in version 1.3.

where(condition)

where() is an alias for filter().

New in version 1.3.

withColumn(colName, col)[source]

Returns a new DataFrame by adding a column or replacing the existing column that has the same name.

Parameters:
  • colName – string, name of the new column.
  • col – a Column expression for the new column.
>>> df.withColumn('age2', df.age + 2).collect()
[Row(age=2, name='Alice', age2=4), Row(age=5, name='Bob', age2=7)]

New in version 1.3.

withColumnRenamed(existing, new)[source]

Returns a new DataFrame by renaming an existing column. This is a no-op if schema doesn’t contain the given column name.

Parameters:
  • existing – string, name of the existing column to rename.
  • col – string, new name of the column.
>>> df.withColumnRenamed('age', 'age2').collect()
[Row(age2=2, name='Alice'), Row(age2=5, name='Bob')]

New in version 1.3.

withWatermark(eventTime, delayThreshold)[source]

Defines an event time watermark for this DataFrame. A watermark tracks a point in time before which we assume no more late data is going to arrive.

Spark will use this watermark for several purposes:
  • To know when a given time window aggregation can be finalized and thus can be emitted when using output modes that do not allow updates.
  • To minimize the amount of state that we need to keep for on-going aggregations.

The current watermark is computed by looking at the MAX(eventTime) seen across all of the partitions in the query minus a user specified delayThreshold. Due to the cost of coordinating this value across partitions, the actual watermark used is only guaranteed to be at least delayThreshold behind the actual event time. In some cases we may still process records that arrive more than delayThreshold late.

Parameters:
  • eventTime – the name of the column that contains the event time of the row.
  • delayThreshold – the minimum delay to wait to data to arrive late, relative to the latest record that has been processed in the form of an interval (e.g. “1 minute” or “5 hours”).

Note

Experimental

>>> sdf.select('name', sdf.time.cast('timestamp')).withWatermark('time', '10 minutes')
DataFrame[name: string, time: timestamp]

New in version 2.1.

write

Interface for saving the content of the non-streaming DataFrame out into external storage.

Returns:DataFrameWriter

New in version 1.4.

writeStream

Interface for saving the content of the streaming DataFrame out into external storage.

Note

Experimental.

Returns:DataStreamWriter

New in version 2.0.

class pyspark.sql.GroupedData(jgd, sql_ctx)[source]

A set of methods for aggregations on a DataFrame, created by DataFrame.groupBy().

Note

Experimental

New in version 1.3.

agg(*exprs)[source]

Compute aggregates and returns the result as a DataFrame.

The available aggregate functions are avg, max, min, sum, count.

If exprs is a single dict mapping from string to string, then the key is the column to perform aggregation on, and the value is the aggregate function.

Alternatively, exprs can also be a list of aggregate Column expressions.

Parameters:exprs – a dict mapping from column name (string) to aggregate functions (string), or a list of Column.
>>> gdf = df.groupBy(df.name)
>>> sorted(gdf.agg({"*": "count"}).collect())
[Row(name='Alice', count(1)=1), Row(name='Bob', count(1)=1)]
>>> from pyspark.sql import functions as F
>>> sorted(gdf.agg(F.min(df.age)).collect())
[Row(name='Alice', min(age)=2), Row(name='Bob', min(age)=5)]

New in version 1.3.

avg(*cols)[source]

Computes average values for each numeric columns for each group.

mean() is an alias for avg().

Parameters:cols – list of column names (string). Non-numeric columns are ignored.
>>> df.groupBy().avg('age').collect()
[Row(avg(age)=3.5)]
>>> df3.groupBy().avg('age', 'height').collect()
[Row(avg(age)=3.5, avg(height)=82.5)]

New in version 1.3.

count()[source]

Counts the number of records for each group.

>>> sorted(df.groupBy(df.age).count().collect())
[Row(age=2, count=1), Row(age=5, count=1)]

New in version 1.3.

max(*cols)[source]

Computes the max value for each numeric columns for each group.

>>> df.groupBy().max('age').collect()
[Row(max(age)=5)]
>>> df3.groupBy().max('age', 'height').collect()
[Row(max(age)=5, max(height)=85)]

New in version 1.3.

mean(*cols)[source]

Computes average values for each numeric columns for each group.

mean() is an alias for avg().

Parameters:cols – list of column names (string). Non-numeric columns are ignored.
>>> df.groupBy().mean('age').collect()
[Row(avg(age)=3.5)]
>>> df3.groupBy().mean('age', 'height').collect()
[Row(avg(age)=3.5, avg(height)=82.5)]

New in version 1.3.

min(*cols)[source]

Computes the min value for each numeric column for each group.

Parameters:cols – list of column names (string). Non-numeric columns are ignored.
>>> df.groupBy().min('age').collect()
[Row(min(age)=2)]
>>> df3.groupBy().min('age', 'height').collect()
[Row(min(age)=2, min(height)=80)]

New in version 1.3.

pivot(pivot_col, values=None)[source]

Pivots a column of the current [[DataFrame]] and perform the specified aggregation. There are two versions of pivot function: one that requires the caller to specify the list of distinct values to pivot on, and one that does not. The latter is more concise but less efficient, because Spark needs to first compute the list of distinct values internally.

Parameters:
  • pivot_col – Name of the column to pivot.
  • values – List of values that will be translated to columns in the output DataFrame.

# Compute the sum of earnings for each year by course with each course as a separate column

>>> df4.groupBy("year").pivot("course", ["dotNET", "Java"]).sum("earnings").collect()
[Row(year=2012, dotNET=15000, Java=20000), Row(year=2013, dotNET=48000, Java=30000)]

# Or without specifying column values (less efficient)

>>> df4.groupBy("year").pivot("course").sum("earnings").collect()
[Row(year=2012, Java=20000, dotNET=15000), Row(year=2013, Java=30000, dotNET=48000)]

New in version 1.6.

sum(*cols)[source]

Compute the sum for each numeric columns for each group.

Parameters:cols – list of column names (string). Non-numeric columns are ignored.
>>> df.groupBy().sum('age').collect()
[Row(sum(age)=7)]
>>> df3.groupBy().sum('age', 'height').collect()
[Row(sum(age)=7, sum(height)=165)]

New in version 1.3.

class pyspark.sql.Column(jc)[source]

A column in a DataFrame.

Column instances can be created by:

# 1. Select a column out of a DataFrame

df.colName
df["colName"]

# 2. Create from an expression
df.colName + 1
1 / df.colName

New in version 1.3.

alias(*alias)[source]

Returns this column aliased with a new name or names (in the case of expressions that return more than one column, such as explode).

>>> df.select(df.age.alias("age2")).collect()
[Row(age2=2), Row(age2=5)]

New in version 1.3.

asc()

Returns a sort expression based on the ascending order of the given column name.

astype(dataType)

astype() is an alias for cast().

New in version 1.4.

between(lowerBound, upperBound)[source]

A boolean expression that is evaluated to true if the value of this expression is between the given columns.

>>> df.select(df.name, df.age.between(2, 4)).show()
+-----+---------------------------+
| name|((age >= 2) AND (age <= 4))|
+-----+---------------------------+
|Alice|                       true|
|  Bob|                      false|
+-----+---------------------------+

New in version 1.3.

bitwiseAND(other)

binary operator

bitwiseOR(other)

binary operator

bitwiseXOR(other)

binary operator

cast(dataType)[source]

Convert the column into type dataType.

>>> df.select(df.age.cast("string").alias('ages')).collect()
[Row(ages='2'), Row(ages='5')]
>>> df.select(df.age.cast(StringType()).alias('ages')).collect()
[Row(ages='2'), Row(ages='5')]

New in version 1.3.

desc()

Returns a sort expression based on the descending order of the given column name.

endswith(other)

binary operator

getField(name)[source]

An expression that gets a field by name in a StructField.

>>> from pyspark.sql import Row
>>> df = sc.parallelize([Row(r=Row(a=1, b="b"))]).toDF()
>>> df.select(df.r.getField("b")).show()
+---+
|r.b|
+---+
|  b|
+---+
>>> df.select(df.r.a).show()
+---+
|r.a|
+---+
|  1|
+---+

New in version 1.3.

getItem(key)[source]

An expression that gets an item at position ordinal out of a list, or gets an item by key out of a dict.

>>> df = sc.parallelize([([1, 2], {"key": "value"})]).toDF(["l", "d"])
>>> df.select(df.l.getItem(0), df.d.getItem("key")).show()
+----+------+
|l[0]|d[key]|
+----+------+
|   1| value|
+----+------+
>>> df.select(df.l[0], df.d["key"]).show()
+----+------+
|l[0]|d[key]|
+----+------+
|   1| value|
+----+------+

New in version 1.3.

isNotNull()

True if the current expression is not null.

isNull()

True if the current expression is null.

isin(*cols)[source]

A boolean expression that is evaluated to true if the value of this expression is contained by the evaluated values of the arguments.

>>> df[df.name.isin("Bob", "Mike")].collect()
[Row(age=5, name='Bob')]
>>> df[df.age.isin([1, 2, 3])].collect()
[Row(age=2, name='Alice')]

New in version 1.5.

like(other)

binary operator

name(*alias)

name() is an alias for alias().

New in version 2.0.

otherwise(value)[source]

Evaluates a list of conditions and returns one of multiple possible result expressions. If Column.otherwise() is not invoked, None is returned for unmatched conditions.

See pyspark.sql.functions.when() for example usage.

Parameters:value – a literal value, or a Column expression.
>>> from pyspark.sql import functions as F
>>> df.select(df.name, F.when(df.age > 3, 1).otherwise(0)).show()
+-----+-------------------------------------+
| name|CASE WHEN (age > 3) THEN 1 ELSE 0 END|
+-----+-------------------------------------+
|Alice|                                    0|
|  Bob|                                    1|
+-----+-------------------------------------+

New in version 1.4.

over(window)[source]

Define a windowing column.

Parameters:window – a WindowSpec
Returns:a Column
>>> from pyspark.sql import Window
>>> window = Window.partitionBy("name").orderBy("age").rowsBetween(-1, 1)
>>> from pyspark.sql.functions import rank, min
>>> # df.select(rank().over(window), min('age').over(window))

New in version 1.4.

rlike(other)

binary operator

startswith(other)

binary operator

substr(startPos, length)[source]

Return a Column which is a substring of the column.

Parameters:
  • startPos – start position (int or Column)
  • length – length of the substring (int or Column)
>>> df.select(df.name.substr(1, 3).alias("col")).collect()
[Row(col='Ali'), Row(col='Bob')]

New in version 1.3.

when(condition, value)[source]

Evaluates a list of conditions and returns one of multiple possible result expressions. If Column.otherwise() is not invoked, None is returned for unmatched conditions.

See pyspark.sql.functions.when() for example usage.

Parameters:
  • condition – a boolean Column expression.
  • value – a literal value, or a Column expression.
>>> from pyspark.sql import functions as F
>>> df.select(df.name, F.when(df.age > 4, 1).when(df.age < 3, -1).otherwise(0)).show()
+-----+------------------------------------------------------------+
| name|CASE WHEN (age > 4) THEN 1 WHEN (age < 3) THEN -1 ELSE 0 END|
+-----+------------------------------------------------------------+
|Alice|                                                          -1|
|  Bob|                                                           1|
+-----+------------------------------------------------------------+

New in version 1.4.

class pyspark.sql.Row[source]

A row in DataFrame. The fields in it can be accessed:

  • like attributes (row.key)
  • like dictionary values (row[key])

key in row will search through row keys.

Row can be used to create a row object by using named arguments, the fields will be sorted by names.

>>> row = Row(name="Alice", age=11)
>>> row
Row(age=11, name='Alice')
>>> row['name'], row['age']
('Alice', 11)
>>> row.name, row.age
('Alice', 11)
>>> 'name' in row
True
>>> 'wrong_key' in row
False

Row also can be used to create another Row like class, then it could be used to create Row objects, such as

>>> Person = Row("name", "age")
>>> Person
<Row(name, age)>
>>> 'name' in Person
True
>>> 'wrong_key' in Person
False
>>> Person("Alice", 11)
Row(name='Alice', age=11)
asDict(recursive=False)[source]

Return as an dict

Parameters:recursive – turns the nested Row as dict (default: False).
>>> Row(name="Alice", age=11).asDict() == {'name': 'Alice', 'age': 11}
True
>>> row = Row(key=1, value=Row(name='a', age=2))
>>> row.asDict() == {'key': 1, 'value': Row(age=2, name='a')}
True
>>> row.asDict(True) == {'key': 1, 'value': {'name': 'a', 'age': 2}}
True
class pyspark.sql.DataFrameNaFunctions(df)[source]

Functionality for working with missing data in DataFrame.

New in version 1.4.

drop(how='any', thresh=None, subset=None)[source]

Returns a new DataFrame omitting rows with null values. DataFrame.dropna() and DataFrameNaFunctions.drop() are aliases of each other.

Parameters:
  • how – ‘any’ or ‘all’. If ‘any’, drop a row if it contains any nulls. If ‘all’, drop a row only if all its values are null.
  • thresh – int, default None If specified, drop rows that have less than thresh non-null values. This overwrites the how parameter.
  • subset – optional list of column names to consider.
>>> df4.na.drop().show()
+---+------+-----+
|age|height| name|
+---+------+-----+
| 10|    80|Alice|
+---+------+-----+

New in version 1.3.1.

fill(value, subset=None)[source]

Replace null values, alias for na.fill(). DataFrame.fillna() and DataFrameNaFunctions.fill() are aliases of each other.

Parameters:
  • value – int, long, float, string, or dict. Value to replace null values with. If the value is a dict, then subset is ignored and value must be a mapping from column name (string) to replacement value. The replacement value must be an int, long, float, or string.
  • subset – optional list of column names to consider. Columns specified in subset that do not have matching data type are ignored. For example, if value is a string, and subset contains a non-string column, then the non-string column is simply ignored.
>>> df4.na.fill(50).show()
+---+------+-----+
|age|height| name|
+---+------+-----+
| 10|    80|Alice|
|  5|    50|  Bob|
| 50|    50|  Tom|
| 50|    50| null|
+---+------+-----+
>>> df4.na.fill({'age': 50, 'name': 'unknown'}).show()
+---+------+-------+
|age|height|   name|
+---+------+-------+
| 10|    80|  Alice|
|  5|  null|    Bob|
| 50|  null|    Tom|
| 50|  null|unknown|
+---+------+-------+

New in version 1.3.1.

replace(to_replace, value, subset=None)[source]

Returns a new DataFrame replacing a value with another value. DataFrame.replace() and DataFrameNaFunctions.replace() are aliases of each other.

Parameters:
  • to_replace – int, long, float, string, or list. Value to be replaced. If the value is a dict, then value is ignored and to_replace must be a mapping from column name (string) to replacement value. The value to be replaced must be an int, long, float, or string.
  • value – int, long, float, string, or list. Value to use to replace holes. The replacement value must be an int, long, float, or string. If value is a list or tuple, value should be of the same length with to_replace.
  • subset – optional list of column names to consider. Columns specified in subset that do not have matching data type are ignored. For example, if value is a string, and subset contains a non-string column, then the non-string column is simply ignored.
>>> df4.na.replace(10, 20).show()
+----+------+-----+
| age|height| name|
+----+------+-----+
|  20|    80|Alice|
|   5|  null|  Bob|
|null|  null|  Tom|
|null|  null| null|
+----+------+-----+
>>> df4.na.replace(['Alice', 'Bob'], ['A', 'B'], 'name').show()
+----+------+----+
| age|height|name|
+----+------+----+
|  10|    80|   A|
|   5|  null|   B|
|null|  null| Tom|
|null|  null|null|
+----+------+----+

New in version 1.4.

class pyspark.sql.DataFrameStatFunctions(df)[source]

Functionality for statistic functions with DataFrame.

New in version 1.4.

approxQuantile(col, probabilities, relativeError)[source]

Calculates the approximate quantiles of a numerical column of a DataFrame.

The result of this algorithm has the following deterministic bound: If the DataFrame has N elements and if we request the quantile at probability p up to error err, then the algorithm will return a sample x from the DataFrame so that the exact rank of x is close to (p * N). More precisely,

floor((p - err) * N) <= rank(x) <= ceil((p + err) * N).

This method implements a variation of the Greenwald-Khanna algorithm (with some speed optimizations). The algorithm was first present in [[http://dx.doi.org/10.1145/375663.375670 Space-efficient Online Computation of Quantile Summaries]] by Greenwald and Khanna.

Parameters:
  • col – the name of the numerical column
  • probabilities – a list of quantile probabilities Each number must belong to [0, 1]. For example 0 is the minimum, 0.5 is the median, 1 is the maximum.
  • relativeError – The relative target precision to achieve (>= 0). If set to zero, the exact quantiles are computed, which could be very expensive. Note that values greater than 1 are accepted but give the same result as 1.
Returns:

the approximate quantiles at the given probabilities

New in version 2.0.

corr(col1, col2, method=None)[source]

Calculates the correlation of two columns of a DataFrame as a double value. Currently only supports the Pearson Correlation Coefficient. DataFrame.corr() and DataFrameStatFunctions.corr() are aliases of each other.

Parameters:
  • col1 – The name of the first column
  • col2 – The name of the second column
  • method – The correlation method. Currently only supports “pearson”

New in version 1.4.

cov(col1, col2)[source]

Calculate the sample covariance for the given columns, specified by their names, as a double value. DataFrame.cov() and DataFrameStatFunctions.cov() are aliases.

Parameters:
  • col1 – The name of the first column
  • col2 – The name of the second column

New in version 1.4.

crosstab(col1, col2)[source]

Computes a pair-wise frequency table of the given columns. Also known as a contingency table. The number of distinct values for each column should be less than 1e4. At most 1e6 non-zero pair frequencies will be returned. The first column of each row will be the distinct values of col1 and the column names will be the distinct values of col2. The name of the first column will be $col1_$col2. Pairs that have no occurrences will have zero as their counts. DataFrame.crosstab() and DataFrameStatFunctions.crosstab() are aliases.

Parameters:
  • col1 – The name of the first column. Distinct items will make the first item of each row.
  • col2 – The name of the second column. Distinct items will make the column names of the DataFrame.

New in version 1.4.

freqItems(cols, support=None)[source]

Finding frequent items for columns, possibly with false positives. Using the frequent element count algorithm described in “http://dx.doi.org/10.1145/762471.762473, proposed by Karp, Schenker, and Papadimitriou”. DataFrame.freqItems() and DataFrameStatFunctions.freqItems() are aliases.

Note

This function is meant for exploratory data analysis, as we make no guarantee about the backward compatibility of the schema of the resulting DataFrame.

Parameters:
  • cols – Names of the columns to calculate frequent items for as a list or tuple of strings.
  • support – The frequency with which to consider an item ‘frequent’. Default is 1%. The support must be greater than 1e-4.

New in version 1.4.

sampleBy(col, fractions, seed=None)[source]

Returns a stratified sample without replacement based on the fraction given on each stratum.

Parameters:
  • col – column that defines strata
  • fractions – sampling fraction for each stratum. If a stratum is not specified, we treat its fraction as zero.
  • seed – random seed
Returns:

a new DataFrame that represents the stratified sample

>>> from pyspark.sql.functions import col
>>> dataset = sqlContext.range(0, 100).select((col("id") % 3).alias("key"))
>>> sampled = dataset.sampleBy("key", fractions={0: 0.1, 1: 0.2}, seed=0)
>>> sampled.groupBy("key").count().orderBy("key").show()
+---+-----+
|key|count|
+---+-----+
|  0|    5|
|  1|    9|
+---+-----+

New in version 1.5.

class pyspark.sql.Window[source]

Utility functions for defining window in DataFrames.

For example:

>>> # ORDER BY date ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW
>>> window = Window.orderBy("date").rowsBetween(Window.unboundedPreceding, Window.currentRow)
>>> # PARTITION BY country ORDER BY date RANGE BETWEEN 3 PRECEDING AND 3 FOLLOWING
>>> window = Window.orderBy("date").partitionBy("country").rangeBetween(-3, 3)

Note

Experimental

New in version 1.4.

currentRow = 0
static orderBy(*cols)[source]

Creates a WindowSpec with the ordering defined.

New in version 1.4.

static partitionBy(*cols)[source]

Creates a WindowSpec with the partitioning defined.

New in version 1.4.

static rangeBetween(start, end)[source]

Creates a WindowSpec with the frame boundaries defined, from start (inclusive) to end (inclusive).

Both start and end are relative from the current row. For example, “0” means “current row”, while “-1” means one off before the current row, and “5” means the five off after the current row.

We recommend users use Window.unboundedPreceding, Window.unboundedFollowing, and Window.currentRow to specify special boundary values, rather than using integral values directly.

Parameters:
  • start – boundary start, inclusive. The frame is unbounded if this is Window.unboundedPreceding, or any value less than or equal to max(-sys.maxsize, -9223372036854775808).
  • end – boundary end, inclusive. The frame is unbounded if this is Window.unboundedFollowing, or any value greater than or equal to min(sys.maxsize, 9223372036854775807).

New in version 2.1.

static rowsBetween(start, end)[source]

Creates a WindowSpec with the frame boundaries defined, from start (inclusive) to end (inclusive).

Both start and end are relative positions from the current row. For example, “0” means “current row”, while “-1” means the row before the current row, and “5” means the fifth row after the current row.

We recommend users use Window.unboundedPreceding, Window.unboundedFollowing, and Window.currentRow to specify special boundary values, rather than using integral values directly.

Parameters:
  • start – boundary start, inclusive. The frame is unbounded if this is Window.unboundedPreceding, or any value less than or equal to -9223372036854775808.
  • end – boundary end, inclusive. The frame is unbounded if this is Window.unboundedFollowing, or any value greater than or equal to 9223372036854775807.

New in version 2.1.

unboundedFollowing = 9223372036854775807
unboundedPreceding = -9223372036854775808
class pyspark.sql.WindowSpec(jspec)[source]

A window specification that defines the partitioning, ordering, and frame boundaries.

Use the static methods in Window to create a WindowSpec.

Note

Experimental

New in version 1.4.

orderBy(*cols)[source]

Defines the ordering columns in a WindowSpec.

Parameters:cols – names of columns or expressions

New in version 1.4.

partitionBy(*cols)[source]

Defines the partitioning columns in a WindowSpec.

Parameters:cols – names of columns or expressions

New in version 1.4.

rangeBetween(start, end)[source]

Defines the frame boundaries, from start (inclusive) to end (inclusive).

Both start and end are relative from the current row. For example, “0” means “current row”, while “-1” means one off before the current row, and “5” means the five off after the current row.

We recommend users use Window.unboundedPreceding, Window.unboundedFollowing, and Window.currentRow to specify special boundary values, rather than using integral values directly.

Parameters:
  • start – boundary start, inclusive. The frame is unbounded if this is Window.unboundedPreceding, or any value less than or equal to max(-sys.maxsize, -9223372036854775808).
  • end – boundary end, inclusive. The frame is unbounded if this is Window.unboundedFollowing, or any value greater than or equal to min(sys.maxsize, 9223372036854775807).

New in version 1.4.

rowsBetween(start, end)[source]

Defines the frame boundaries, from start (inclusive) to end (inclusive).

Both start and end are relative positions from the current row. For example, “0” means “current row”, while “-1” means the row before the current row, and “5” means the fifth row after the current row.

We recommend users use Window.unboundedPreceding, Window.unboundedFollowing, and Window.currentRow to specify special boundary values, rather than using integral values directly.

Parameters:
  • start – boundary start, inclusive. The frame is unbounded if this is Window.unboundedPreceding, or any value less than or equal to max(-sys.maxsize, -9223372036854775808).
  • end – boundary end, inclusive. The frame is unbounded if this is Window.unboundedFollowing, or any value greater than or equal to min(sys.maxsize, 9223372036854775807).

New in version 1.4.

class pyspark.sql.DataFrameReader(spark)[source]

Interface used to load a DataFrame from external storage systems (e.g. file systems, key-value stores, etc). Use spark.read() to access this.

New in version 1.4.

csv(path, schema=None, sep=None, encoding=None, quote=None, escape=None, comment=None, header=None, inferSchema=None, ignoreLeadingWhiteSpace=None, ignoreTrailingWhiteSpace=None, nullValue=None, nanValue=None, positiveInf=None, negativeInf=None, dateFormat=None, timestampFormat=None, maxColumns=None, maxCharsPerColumn=None, maxMalformedLogPerPartition=None, mode=None)[source]

Loads a CSV file and returns the result as a DataFrame.

This function will go through the input once to determine the input schema if inferSchema is enabled. To avoid going through the entire data once, disable inferSchema option or specify the schema explicitly using schema.

Parameters:
  • path – string, or list of strings, for input path(s).
  • schema – an optional pyspark.sql.types.StructType for the input schema.
  • sep – sets the single character as a separator for each field and value. If None is set, it uses the default value, ,.
  • encoding – decodes the CSV files by the given encoding type. If None is set, it uses the default value, UTF-8.
  • quote – sets the single character used for escaping quoted values where the separator can be part of the value. If None is set, it uses the default value, ". If you would like to turn off quotations, you need to set an empty string.
  • escape – sets the single character used for escaping quotes inside an already quoted value. If None is set, it uses the default value, \.
  • comment – sets the single character used for skipping lines beginning with this character. By default (None), it is disabled.
  • header – uses the first line as names of columns. If None is set, it uses the default value, false.
  • inferSchema – infers the input schema automatically from data. It requires one extra pass over the data. If None is set, it uses the default value, false.
  • ignoreLeadingWhiteSpace – defines whether or not leading whitespaces from values being read should be skipped. If None is set, it uses the default value, false.
  • ignoreTrailingWhiteSpace – defines whether or not trailing whitespaces from values being read should be skipped. If None is set, it uses the default value, false.
  • nullValue – sets the string representation of a null value. If None is set, it uses the default value, empty string. Since 2.0.1, this nullValue param applies to all supported types including the string type.
  • nanValue – sets the string representation of a non-number value. If None is set, it uses the default value, NaN.
  • positiveInf – sets the string representation of a positive infinity value. If None is set, it uses the default value, Inf.
  • negativeInf – sets the string representation of a negative infinity value. If None is set, it uses the default value, Inf.
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
  • maxColumns – defines a hard limit of how many columns a record can have. If None is set, it uses the default value, 20480.
  • maxCharsPerColumn – defines the maximum number of characters allowed for any given value being read. If None is set, it uses the default value, -1 meaning unlimited length.
  • maxMalformedLogPerPartition – sets the maximum number of malformed rows Spark will log for each partition. Malformed records beyond this number will be ignored. If None is set, it uses the default value, 10.
  • mode
    allows a mode for dealing with corrupt records during parsing. If None is
    set, it uses the default value, PERMISSIVE.
    • PERMISSIVE : sets other fields to null when it meets a corrupted record.
      When a schema is set by user, it sets null for extra fields.
    • DROPMALFORMED : ignores the whole corrupted records.
    • FAILFAST : throws an exception when it meets corrupted records.
>>> df = spark.read.csv('python/test_support/sql/ages.csv')
>>> df.dtypes
[('_c0', 'string'), ('_c1', 'string')]

New in version 2.0.

format(source)[source]

Specifies the input data source format.

Parameters:source – string, name of the data source, e.g. ‘json’, ‘parquet’.
>>> df = spark.read.format('json').load('python/test_support/sql/people.json')
>>> df.dtypes
[('age', 'bigint'), ('name', 'string')]

New in version 1.4.

jdbc(url, table, column=None, lowerBound=None, upperBound=None, numPartitions=None, predicates=None, properties=None)[source]

Construct a DataFrame representing the database table named table accessible via JDBC URL url and connection properties.

Partitions of the table will be retrieved in parallel if either column or predicates is specified.

If both column and predicates are specified, column will be used.

Note

Don’t create too many partitions in parallel on a large cluster; otherwise Spark might crash your external database systems.

Parameters:
  • url – a JDBC URL of the form jdbc:subprotocol:subname
  • table – the name of the table
  • column – the name of an integer column that will be used for partitioning; if this parameter is specified, then numPartitions, lowerBound (inclusive), and upperBound (exclusive) will form partition strides for generated WHERE clause expressions used to split the column column evenly
  • lowerBound – the minimum value of column used to decide partition stride
  • upperBound – the maximum value of column used to decide partition stride
  • numPartitions – the number of partitions
  • predicates – a list of expressions suitable for inclusion in WHERE clauses; each one defines one partition of the DataFrame
  • properties – a dictionary of JDBC database connection arguments. Normally at least properties “user” and “password” with their corresponding values. For example { ‘user’ : ‘SYSTEM’, ‘password’ : ‘mypassword’ }
Returns:

a DataFrame

New in version 1.4.

json(path, schema=None, primitivesAsString=None, prefersDecimal=None, allowComments=None, allowUnquotedFieldNames=None, allowSingleQuotes=None, allowNumericLeadingZero=None, allowBackslashEscapingAnyCharacter=None, mode=None, columnNameOfCorruptRecord=None, dateFormat=None, timestampFormat=None)[source]

Loads a JSON file (JSON Lines text format or newline-delimited JSON) or an RDD of Strings storing JSON objects (one object per record) and returns the result as a :class`DataFrame`.

If the schema parameter is not specified, this function goes through the input once to determine the input schema.

Parameters:
  • path – string represents path to the JSON dataset, or RDD of Strings storing JSON objects.
  • schema – an optional pyspark.sql.types.StructType for the input schema.
  • primitivesAsString – infers all primitive values as a string type. If None is set, it uses the default value, false.
  • prefersDecimal – infers all floating-point values as a decimal type. If the values do not fit in decimal, then it infers them as doubles. If None is set, it uses the default value, false.
  • allowComments – ignores Java/C++ style comment in JSON records. If None is set, it uses the default value, false.
  • allowUnquotedFieldNames – allows unquoted JSON field names. If None is set, it uses the default value, false.
  • allowSingleQuotes – allows single quotes in addition to double quotes. If None is set, it uses the default value, true.
  • allowNumericLeadingZero – allows leading zeros in numbers (e.g. 00012). If None is set, it uses the default value, false.
  • allowBackslashEscapingAnyCharacter – allows accepting quoting of all character using backslash quoting mechanism. If None is set, it uses the default value, false.
  • mode
    allows a mode for dealing with corrupt records during parsing. If None is
    set, it uses the default value, PERMISSIVE.
    • PERMISSIVE : sets other fields to null when it meets a corrupted record and puts the malformed string into a new field configured by columnNameOfCorruptRecord. When a schema is set by user, it sets null for extra fields.
    • DROPMALFORMED : ignores the whole corrupted records.
    • FAILFAST : throws an exception when it meets corrupted records.
  • columnNameOfCorruptRecord – allows renaming the new field having malformed string created by PERMISSIVE mode. This overrides spark.sql.columnNameOfCorruptRecord. If None is set, it uses the value specified in spark.sql.columnNameOfCorruptRecord.
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
>>> df1 = spark.read.json('python/test_support/sql/people.json')
>>> df1.dtypes
[('age', 'bigint'), ('name', 'string')]
>>> rdd = sc.textFile('python/test_support/sql/people.json')
>>> df2 = spark.read.json(rdd)
>>> df2.dtypes
[('age', 'bigint'), ('name', 'string')]

New in version 1.4.

load(path=None, format=None, schema=None, **options)[source]

Loads data from a data source and returns it as a :class`DataFrame`.

Parameters:
  • path – optional string or a list of string for file-system backed data sources.
  • format – optional string for format of the data source. Default to ‘parquet’.
  • schema – optional pyspark.sql.types.StructType for the input schema.
  • options – all other string options
>>> df = spark.read.load('python/test_support/sql/parquet_partitioned', opt1=True,
...     opt2=1, opt3='str')
>>> df.dtypes
[('name', 'string'), ('year', 'int'), ('month', 'int'), ('day', 'int')]
>>> df = spark.read.format('json').load(['python/test_support/sql/people.json',
...     'python/test_support/sql/people1.json'])
>>> df.dtypes
[('age', 'bigint'), ('aka', 'string'), ('name', 'string')]

New in version 1.4.

option(key, value)[source]

Adds an input option for the underlying data source.

New in version 1.5.

options(**options)[source]

Adds input options for the underlying data source.

New in version 1.4.

orc(path)[source]

Loads an ORC file, returning the result as a DataFrame.

Note

Currently ORC support is only available together with Hive support.

>>> df = spark.read.orc('python/test_support/sql/orc_partitioned')
>>> df.dtypes
[('a', 'bigint'), ('b', 'int'), ('c', 'int')]

New in version 1.5.

parquet(*paths)[source]

Loads a Parquet file, returning the result as a DataFrame.

You can set the following Parquet-specific option(s) for reading Parquet files:
  • mergeSchema: sets whether we should merge schemas collected from all Parquet part-files. This will override spark.sql.parquet.mergeSchema. The default value is specified in spark.sql.parquet.mergeSchema.
>>> df = spark.read.parquet('python/test_support/sql/parquet_partitioned')
>>> df.dtypes
[('name', 'string'), ('year', 'int'), ('month', 'int'), ('day', 'int')]

New in version 1.4.

schema(schema)[source]

Specifies the input schema.

Some data sources (e.g. JSON) can infer the input schema automatically from data. By specifying the schema here, the underlying data source can skip the schema inference step, and thus speed up data loading.

Parameters:schema – a pyspark.sql.types.StructType object

New in version 1.4.

table(tableName)[source]

Returns the specified table as a DataFrame.

Parameters:tableName – string, name of the table.
>>> df = spark.read.parquet('python/test_support/sql/parquet_partitioned')
>>> df.createOrReplaceTempView('tmpTable')
>>> spark.read.table('tmpTable').dtypes
[('name', 'string'), ('year', 'int'), ('month', 'int'), ('day', 'int')]

New in version 1.4.

text(paths)[source]

Loads text files and returns a DataFrame whose schema starts with a string column named “value”, and followed by partitioned columns if there are any.

Each line in the text file is a new row in the resulting DataFrame.

Parameters:paths – string, or list of strings, for input path(s).
>>> df = spark.read.text('python/test_support/sql/text-test.txt')
>>> df.collect()
[Row(value='hello'), Row(value='this')]

New in version 1.6.

class pyspark.sql.DataFrameWriter(df)[source]

Interface used to write a DataFrame to external storage systems (e.g. file systems, key-value stores, etc). Use DataFrame.write() to access this.

New in version 1.4.

csv(path, mode=None, compression=None, sep=None, quote=None, escape=None, header=None, nullValue=None, escapeQuotes=None, quoteAll=None, dateFormat=None, timestampFormat=None)[source]

Saves the content of the DataFrame in CSV format at the specified path.

Parameters:
  • path – the path in any Hadoop supported file system
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • compression – compression codec to use when saving to file. This can be one of the known case-insensitive shorten names (none, bzip2, gzip, lz4, snappy and deflate).
  • sep – sets the single character as a separator for each field and value. If None is set, it uses the default value, ,.
  • quote – sets the single character used for escaping quoted values where the separator can be part of the value. If None is set, it uses the default value, ". If you would like to turn off quotations, you need to set an empty string.
  • escape – sets the single character used for escaping quotes inside an already quoted value. If None is set, it uses the default value, \
  • escapeQuotes – A flag indicating whether values containing quotes should always be enclosed in quotes. If None is set, it uses the default value true, escaping all values containing a quote character.
  • quoteAll – A flag indicating whether all values should always be enclosed in quotes. If None is set, it uses the default value false, only escaping values containing a quote character.
  • header – writes the names of columns as the first line. If None is set, it uses the default value, false.
  • nullValue – sets the string representation of a null value. If None is set, it uses the default value, empty string.
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
>>> df.write.csv(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 2.0.

format(source)[source]

Specifies the underlying output data source.

Parameters:source – string, name of the data source, e.g. ‘json’, ‘parquet’.
>>> df.write.format('json').save(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

insertInto(tableName, overwrite=False)[source]

Inserts the content of the DataFrame to the specified table.

It requires that the schema of the class:DataFrame is the same as the schema of the table.

Optionally overwriting any existing data.

New in version 1.4.

jdbc(url, table, mode=None, properties=None)[source]

Saves the content of the DataFrame to an external database table via JDBC.

Note

Don’t create too many partitions in parallel on a large cluster; otherwise Spark might crash your external database systems.

Parameters:
  • url – a JDBC URL of the form jdbc:subprotocol:subname
  • table – Name of the table in the external database.
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • properties – a dictionary of JDBC database connection arguments. Normally at least properties “user” and “password” with their corresponding values. For example { ‘user’ : ‘SYSTEM’, ‘password’ : ‘mypassword’ }

New in version 1.4.

json(path, mode=None, compression=None, dateFormat=None, timestampFormat=None)[source]

Saves the content of the DataFrame in JSON format at the specified path.

Parameters:
  • path – the path in any Hadoop supported file system
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • compression – compression codec to use when saving to file. This can be one of the known case-insensitive shorten names (none, bzip2, gzip, lz4, snappy and deflate).
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
>>> df.write.json(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

mode(saveMode)[source]

Specifies the behavior when data or table already exists.

Options include:

  • append: Append contents of this DataFrame to existing data.
  • overwrite: Overwrite existing data.
  • error: Throw an exception if data already exists.
  • ignore: Silently ignore this operation if data already exists.
>>> df.write.mode('append').parquet(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

option(key, value)[source]

Adds an output option for the underlying data source.

New in version 1.5.

options(**options)[source]

Adds output options for the underlying data source.

New in version 1.4.

orc(path, mode=None, partitionBy=None, compression=None)[source]

Saves the content of the DataFrame in ORC format at the specified path.

Note

Currently ORC support is only available together with Hive support.

Parameters:
  • path – the path in any Hadoop supported file system
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • partitionBy – names of partitioning columns
  • compression – compression codec to use when saving to file. This can be one of the known case-insensitive shorten names (none, snappy, zlib, and lzo). This will override orc.compress. If None is set, it uses the default value, snappy.
>>> orc_df = spark.read.orc('python/test_support/sql/orc_partitioned')
>>> orc_df.write.orc(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.5.

parquet(path, mode=None, partitionBy=None, compression=None)[source]

Saves the content of the DataFrame in Parquet format at the specified path.

Parameters:
  • path – the path in any Hadoop supported file system
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • partitionBy – names of partitioning columns
  • compression – compression codec to use when saving to file. This can be one of the known case-insensitive shorten names (none, snappy, gzip, and lzo). This will override spark.sql.parquet.compression.codec. If None is set, it uses the value specified in spark.sql.parquet.compression.codec.
>>> df.write.parquet(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

partitionBy(*cols)[source]

Partitions the output by the given columns on the file system.

If specified, the output is laid out on the file system similar to Hive’s partitioning scheme.

Parameters:cols – name of columns
>>> df.write.partitionBy('year', 'month').parquet(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

save(path=None, format=None, mode=None, partitionBy=None, **options)[source]

Saves the contents of the DataFrame to a data source.

The data source is specified by the format and a set of options. If format is not specified, the default data source configured by spark.sql.sources.default will be used.

Parameters:
  • path – the path in a Hadoop supported file system
  • format – the format used to save
  • mode

    specifies the behavior of the save operation when data already exists.

    • append: Append contents of this DataFrame to existing data.
    • overwrite: Overwrite existing data.
    • ignore: Silently ignore this operation if data already exists.
    • error (default case): Throw an exception if data already exists.
  • partitionBy – names of partitioning columns
  • options – all other string options
>>> df.write.mode('append').parquet(os.path.join(tempfile.mkdtemp(), 'data'))

New in version 1.4.

saveAsTable(name, format=None, mode=None, partitionBy=None, **options)[source]

Saves the content of the DataFrame as the specified table.

In the case the table already exists, behavior of this function depends on the save mode, specified by the mode function (default to throwing an exception). When mode is Overwrite, the schema of the DataFrame does not need to be the same as that of the existing table.

  • append: Append contents of this DataFrame to existing data.
  • overwrite: Overwrite existing data.
  • error: Throw an exception if data already exists.
  • ignore: Silently ignore this operation if data already exists.
Parameters:
  • name – the table name
  • format – the format used to save
  • mode – one of append, overwrite, error, ignore (default: error)
  • partitionBy – names of partitioning columns
  • options – all other string options

New in version 1.4.

text(path, compression=None)[source]

Saves the content of the DataFrame in a text file at the specified path.

Parameters:
  • path – the path in any Hadoop supported file system
  • compression – compression codec to use when saving to file. This can be one of the known case-insensitive shorten names (none, bzip2, gzip, lz4, snappy and deflate).

The DataFrame must have only one column that is of string type. Each row becomes a new line in the output file.

New in version 1.6.

pyspark.sql.types module

class pyspark.sql.types.DataType[source]

Base class for data types.

fromInternal(obj)[source]

Converts an internal SQL object into a native Python object.

json()[source]
jsonValue()[source]
needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

simpleString()[source]
toInternal(obj)[source]

Converts a Python object into an internal SQL object.

classmethod typeName()[source]
class pyspark.sql.types.NullType[source]

Null type.

The data type representing None, used for the types that cannot be inferred.

class pyspark.sql.types.StringType[source]

String data type.

class pyspark.sql.types.BinaryType[source]

Binary (byte array) data type.

class pyspark.sql.types.BooleanType[source]

Boolean data type.

class pyspark.sql.types.DateType[source]

Date (datetime.date) data type.

EPOCH_ORDINAL = 719163
fromInternal(v)[source]

Converts an internal SQL object into a native Python object.

needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

toInternal(d)[source]

Converts a Python object into an internal SQL object.

class pyspark.sql.types.TimestampType[source]

Timestamp (datetime.datetime) data type.

fromInternal(ts)[source]

Converts an internal SQL object into a native Python object.

needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

toInternal(dt)[source]

Converts a Python object into an internal SQL object.

class pyspark.sql.types.DecimalType(precision=10, scale=0)[source]

Decimal (decimal.Decimal) data type.

The DecimalType must have fixed precision (the maximum total number of digits) and scale (the number of digits on the right of dot). For example, (5, 2) can support the value from [-999.99 to 999.99].

The precision can be up to 38, the scale must less or equal to precision.

When create a DecimalType, the default precision and scale is (10, 0). When infer schema from decimal.Decimal objects, it will be DecimalType(38, 18).

Parameters:
  • precision – the maximum total number of digits (default: 10)
  • scale – the number of digits on right side of dot. (default: 0)
jsonValue()[source]
simpleString()[source]
class pyspark.sql.types.DoubleType[source]

Double data type, representing double precision floats.

class pyspark.sql.types.FloatType[source]

Float data type, representing single precision floats.

class pyspark.sql.types.ByteType[source]

Byte data type, i.e. a signed integer in a single byte.

simpleString()[source]
class pyspark.sql.types.IntegerType[source]

Int data type, i.e. a signed 32-bit integer.

simpleString()[source]
class pyspark.sql.types.LongType[source]

Long data type, i.e. a signed 64-bit integer.

If the values are beyond the range of [-9223372036854775808, 9223372036854775807], please use DecimalType.

simpleString()[source]
class pyspark.sql.types.ShortType[source]

Short data type, i.e. a signed 16-bit integer.

simpleString()[source]
class pyspark.sql.types.ArrayType(elementType, containsNull=True)[source]

Array data type.

Parameters:
  • elementTypeDataType of each element in the array.
  • containsNull – boolean, whether the array can contain null (None) values.
fromInternal(obj)[source]

Converts an internal SQL object into a native Python object.

classmethod fromJson(json)[source]
jsonValue()[source]
needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

simpleString()[source]
toInternal(obj)[source]

Converts a Python object into an internal SQL object.

class pyspark.sql.types.MapType(keyType, valueType, valueContainsNull=True)[source]

Map data type.

Parameters:
  • keyTypeDataType of the keys in the map.
  • valueTypeDataType of the values in the map.
  • valueContainsNull – indicates whether values can contain null (None) values.

Keys in a map data type are not allowed to be null (None).

fromInternal(obj)[source]

Converts an internal SQL object into a native Python object.

classmethod fromJson(json)[source]
jsonValue()[source]
needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

simpleString()[source]
toInternal(obj)[source]

Converts a Python object into an internal SQL object.

class pyspark.sql.types.StructField(name, dataType, nullable=True, metadata=None)[source]

A field in StructType.

Parameters:
  • name – string, name of the field.
  • dataTypeDataType of the field.
  • nullable – boolean, whether the field can be null (None) or not.
  • metadata – a dict from string to simple type that can be toInternald to JSON automatically
fromInternal(obj)[source]

Converts an internal SQL object into a native Python object.

classmethod fromJson(json)[source]
jsonValue()[source]
needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

simpleString()[source]
toInternal(obj)[source]

Converts a Python object into an internal SQL object.

class pyspark.sql.types.StructType(fields=None)[source]

Struct type, consisting of a list of StructField.

This is the data type representing a Row.

Iterating a StructType will iterate its StructField`s. A contained :class:`StructField can be accessed by name or position.

>>> struct1 = StructType([StructField("f1", StringType(), True)])
>>> struct1["f1"]
StructField(f1,StringType,true)
>>> struct1[0]
StructField(f1,StringType,true)
add(field, data_type=None, nullable=True, metadata=None)[source]

Construct a StructType by adding new elements to it to define the schema. The method accepts either:

  1. A single parameter which is a StructField object.
  2. Between 2 and 4 parameters as (name, data_type, nullable (optional), metadata(optional). The data_type parameter may be either a String or a DataType object.
>>> struct1 = StructType().add("f1", StringType(), True).add("f2", StringType(), True, None)
>>> struct2 = StructType([StructField("f1", StringType(), True), \
...     StructField("f2", StringType(), True, None)])
>>> struct1 == struct2
True
>>> struct1 = StructType().add(StructField("f1", StringType(), True))
>>> struct2 = StructType([StructField("f1", StringType(), True)])
>>> struct1 == struct2
True
>>> struct1 = StructType().add("f1", "string", True)
>>> struct2 = StructType([StructField("f1", StringType(), True)])
>>> struct1 == struct2
True
Parameters:
  • field – Either the name of the field or a StructField object
  • data_type – If present, the DataType of the StructField to create
  • nullable – Whether the field to add should be nullable (default True)
  • metadata – Any additional metadata (default None)
Returns:

a new updated StructType

fromInternal(obj)[source]

Converts an internal SQL object into a native Python object.

classmethod fromJson(json)[source]
jsonValue()[source]
needConversion()[source]

Does this type need to conversion between Python object and internal SQL object.

This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.

simpleString()[source]
toInternal(obj)[source]

Converts a Python object into an internal SQL object.

pyspark.sql.functions module

A collections of builtin functions

pyspark.sql.functions.abs(col)

Computes the absolute value.

New in version 1.3.

pyspark.sql.functions.acos(col)

Computes the cosine inverse of the given value; the returned angle is in the range0.0 through pi.

New in version 1.4.

pyspark.sql.functions.add_months(start, months)[source]

Returns the date that is months months after start

>>> df = spark.createDataFrame([('2015-04-08',)], ['d'])
>>> df.select(add_months(df.d, 1).alias('d')).collect()
[Row(d=datetime.date(2015, 5, 8))]

New in version 1.5.

pyspark.sql.functions.approxCountDistinct(col, rsd=None)[source]

Note

Deprecated in 2.1, use approx_count_distinct instead.

New in version 1.3.

pyspark.sql.functions.approx_count_distinct(col, rsd=None)[source]

Returns a new Column for approximate distinct count of col.

>>> df.agg(approx_count_distinct(df.age).alias('c')).collect()
[Row(c=2)]

New in version 2.1.

pyspark.sql.functions.array(*cols)[source]

Creates a new array column.

Parameters:cols – list of column names (string) or list of Column expressions that have the same data type.
>>> df.select(array('age', 'age').alias("arr")).collect()
[Row(arr=[2, 2]), Row(arr=[5, 5])]
>>> df.select(array([df.age, df.age]).alias("arr")).collect()
[Row(arr=[2, 2]), Row(arr=[5, 5])]

New in version 1.4.

pyspark.sql.functions.array_contains(col, value)[source]

Collection function: returns True if the array contains the given value. The collection elements and value must be of the same type.

Parameters:
  • col – name of column containing array
  • value – value to check for in array
>>> df = spark.createDataFrame([(["a", "b", "c"],), ([],)], ['data'])
>>> df.select(array_contains(df.data, "a")).collect()
[Row(array_contains(data, a)=True), Row(array_contains(data, a)=False)]

New in version 1.5.

pyspark.sql.functions.asc(col)

Returns a sort expression based on the ascending order of the given column name.

New in version 1.3.

pyspark.sql.functions.ascii(col)

Computes the numeric value of the first character of the string column.

New in version 1.5.

pyspark.sql.functions.asin(col)

Computes the sine inverse of the given value; the returned angle is in the range-pi/2 through pi/2.

New in version 1.4.

pyspark.sql.functions.atan(col)

Computes the tangent inverse of the given value.

New in version 1.4.

pyspark.sql.functions.atan2(col1, col2)

Returns the angle theta from the conversion of rectangular coordinates (x, y) topolar coordinates (r, theta).

New in version 1.4.

pyspark.sql.functions.avg(col)

Aggregate function: returns the average of the values in a group.

New in version 1.3.

pyspark.sql.functions.base64(col)

Computes the BASE64 encoding of a binary column and returns it as a string column.

New in version 1.5.

pyspark.sql.functions.bin(col)[source]

Returns the string representation of the binary value of the given column.

>>> df.select(bin(df.age).alias('c')).collect()
[Row(c='10'), Row(c='101')]

New in version 1.5.

pyspark.sql.functions.bitwiseNOT(col)

Computes bitwise not.

New in version 1.4.

pyspark.sql.functions.broadcast(df)[source]

Marks a DataFrame as small enough for use in broadcast joins.

New in version 1.6.

pyspark.sql.functions.bround(col, scale=0)[source]

Round the given value to scale decimal places using HALF_EVEN rounding mode if scale >= 0 or at integral part when scale < 0.

>>> spark.createDataFrame([(2.5,)], ['a']).select(bround('a', 0).alias('r')).collect()
[Row(r=2.0)]

New in version 2.0.

pyspark.sql.functions.cbrt(col)

Computes the cube-root of the given value.

New in version 1.4.

pyspark.sql.functions.ceil(col)

Computes the ceiling of the given value.

New in version 1.4.

pyspark.sql.functions.coalesce(*cols)[source]

Returns the first column that is not null.

>>> cDf = spark.createDataFrame([(None, None), (1, None), (None, 2)], ("a", "b"))
>>> cDf.show()
+----+----+
|   a|   b|
+----+----+
|null|null|
|   1|null|
|null|   2|
+----+----+
>>> cDf.select(coalesce(cDf["a"], cDf["b"])).show()
+--------------+
|coalesce(a, b)|
+--------------+
|          null|
|             1|
|             2|
+--------------+
>>> cDf.select('*', coalesce(cDf["a"], lit(0.0))).show()
+----+----+----------------+
|   a|   b|coalesce(a, 0.0)|
+----+----+----------------+
|null|null|             0.0|
|   1|null|             1.0|
|null|   2|             0.0|
+----+----+----------------+

New in version 1.4.

pyspark.sql.functions.col(col)

Returns a Column based on the given column name.

New in version 1.3.

pyspark.sql.functions.collect_list(col)

Aggregate function: returns a list of objects with duplicates.

New in version 1.6.

pyspark.sql.functions.collect_set(col)

Aggregate function: returns a set of objects with duplicate elements eliminated.

New in version 1.6.

pyspark.sql.functions.column(col)

Returns a Column based on the given column name.

New in version 1.3.

pyspark.sql.functions.concat(*cols)[source]

Concatenates multiple input string columns together into a single string column.

>>> df = spark.createDataFrame([('abcd','123')], ['s', 'd'])
>>> df.select(concat(df.s, df.d).alias('s')).collect()
[Row(s='abcd123')]

New in version 1.5.

pyspark.sql.functions.concat_ws(sep, *cols)[source]

Concatenates multiple input string columns together into a single string column, using the given separator.

>>> df = spark.createDataFrame([('abcd','123')], ['s', 'd'])
>>> df.select(concat_ws('-', df.s, df.d).alias('s')).collect()
[Row(s='abcd-123')]

New in version 1.5.

pyspark.sql.functions.conv(col, fromBase, toBase)[source]

Convert a number in a string column from one base to another.

>>> df = spark.createDataFrame([("010101",)], ['n'])
>>> df.select(conv(df.n, 2, 16).alias('hex')).collect()
[Row(hex='15')]

New in version 1.5.

pyspark.sql.functions.corr(col1, col2)[source]

Returns a new Column for the Pearson Correlation Coefficient for col1 and col2.

>>> a = range(20)
>>> b = [2 * x for x in range(20)]
>>> df = spark.createDataFrame(zip(a, b), ["a", "b"])
>>> df.agg(corr("a", "b").alias('c')).collect()
[Row(c=1.0)]

New in version 1.6.

pyspark.sql.functions.cos(col)

Computes the cosine of the given value.

New in version 1.4.

pyspark.sql.functions.cosh(col)

Computes the hyperbolic cosine of the given value.

New in version 1.4.

pyspark.sql.functions.count(col)

Aggregate function: returns the number of items in a group.

New in version 1.3.

pyspark.sql.functions.countDistinct(col, *cols)[source]

Returns a new Column for distinct count of col or cols.

>>> df.agg(countDistinct(df.age, df.name).alias('c')).collect()
[Row(c=2)]
>>> df.agg(countDistinct("age", "name").alias('c')).collect()
[Row(c=2)]

New in version 1.3.

pyspark.sql.functions.covar_pop(col1, col2)[source]

Returns a new Column for the population covariance of col1 and col2.

>>> a = [1] * 10
>>> b = [1] * 10
>>> df = spark.createDataFrame(zip(a, b), ["a", "b"])
>>> df.agg(covar_pop("a", "b").alias('c')).collect()
[Row(c=0.0)]

New in version 2.0.

pyspark.sql.functions.covar_samp(col1, col2)[source]

Returns a new Column for the sample covariance of col1 and col2.

>>> a = [1] * 10
>>> b = [1] * 10
>>> df = spark.createDataFrame(zip(a, b), ["a", "b"])
>>> df.agg(covar_samp("a", "b").alias('c')).collect()
[Row(c=0.0)]

New in version 2.0.

pyspark.sql.functions.crc32(col)[source]

Calculates the cyclic redundancy check value (CRC32) of a binary column and returns the value as a bigint.

>>> spark.createDataFrame([('ABC',)], ['a']).select(crc32('a').alias('crc32')).collect()
[Row(crc32=2743272264)]

New in version 1.5.

pyspark.sql.functions.create_map(*cols)[source]

Creates a new map column.

Parameters:cols – list of column names (string) or list of Column expressions that grouped as key-value pairs, e.g. (key1, value1, key2, value2, …).
>>> df.select(create_map('name', 'age').alias("map")).collect()
[Row(map={'Alice': 2}), Row(map={'Bob': 5})]
>>> df.select(create_map([df.name, df.age]).alias("map")).collect()
[Row(map={'Alice': 2}), Row(map={'Bob': 5})]

New in version 2.0.

pyspark.sql.functions.cume_dist()

Window function: returns the cumulative distribution of values within a window partition, i.e. the fraction of rows that are below the current row.

New in version 1.6.

pyspark.sql.functions.current_date()[source]

Returns the current date as a date column.

New in version 1.5.

pyspark.sql.functions.current_timestamp()[source]

Returns the current timestamp as a timestamp column.

pyspark.sql.functions.date_add(start, days)[source]

Returns the date that is days days after start

>>> df = spark.createDataFrame([('2015-04-08',)], ['d'])
>>> df.select(date_add(df.d, 1).alias('d')).collect()
[Row(d=datetime.date(2015, 4, 9))]

New in version 1.5.

pyspark.sql.functions.date_format(date, format)[source]

Converts a date/timestamp/string to a value of string in the format specified by the date format given by the second argument.

A pattern could be for instance dd.MM.yyyy and could return a string like ‘18.03.1993’. All pattern letters of the Java class java.text.SimpleDateFormat can be used.

Note

Use when ever possible specialized functions like year. These benefit from a specialized implementation.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(date_format('a', 'MM/dd/yyy').alias('date')).collect()
[Row(date='04/08/2015')]

New in version 1.5.

pyspark.sql.functions.date_sub(start, days)[source]

Returns the date that is days days before start

>>> df = spark.createDataFrame([('2015-04-08',)], ['d'])
>>> df.select(date_sub(df.d, 1).alias('d')).collect()
[Row(d=datetime.date(2015, 4, 7))]

New in version 1.5.

pyspark.sql.functions.datediff(end, start)[source]

Returns the number of days from start to end.

>>> df = spark.createDataFrame([('2015-04-08','2015-05-10')], ['d1', 'd2'])
>>> df.select(datediff(df.d2, df.d1).alias('diff')).collect()
[Row(diff=32)]

New in version 1.5.

pyspark.sql.functions.dayofmonth(col)[source]

Extract the day of the month of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(dayofmonth('a').alias('day')).collect()
[Row(day=8)]

New in version 1.5.

pyspark.sql.functions.dayofyear(col)[source]

Extract the day of the year of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(dayofyear('a').alias('day')).collect()
[Row(day=98)]

New in version 1.5.

pyspark.sql.functions.decode(col, charset)[source]

Computes the first argument into a string from a binary using the provided character set (one of ‘US-ASCII’, ‘ISO-8859-1’, ‘UTF-8’, ‘UTF-16BE’, ‘UTF-16LE’, ‘UTF-16’).

New in version 1.5.

pyspark.sql.functions.degrees(col)

Converts an angle measured in radians to an approximately equivalent angle measured in degrees.

New in version 2.1.

pyspark.sql.functions.dense_rank()

Window function: returns the rank of rows within a window partition, without any gaps.

The difference between rank and dense_rank is that dense_rank leaves no gaps in ranking sequence when there are ties. That is, if you were ranking a competition using dense_rank and had three people tie for second place, you would say that all three were in second place and that the next person came in third. Rank would give me sequential numbers, making the person that came in third place (after the ties) would register as coming in fifth.

This is equivalent to the DENSE_RANK function in SQL.

New in version 1.6.

pyspark.sql.functions.desc(col)

Returns a sort expression based on the descending order of the given column name.

New in version 1.3.

pyspark.sql.functions.encode(col, charset)[source]

Computes the first argument into a binary from a string using the provided character set (one of ‘US-ASCII’, ‘ISO-8859-1’, ‘UTF-8’, ‘UTF-16BE’, ‘UTF-16LE’, ‘UTF-16’).

New in version 1.5.

pyspark.sql.functions.exp(col)

Computes the exponential of the given value.

New in version 1.4.

pyspark.sql.functions.explode(col)[source]

Returns a new row for each element in the given array or map.

>>> from pyspark.sql import Row
>>> eDF = spark.createDataFrame([Row(a=1, intlist=[1,2,3], mapfield={"a": "b"})])
>>> eDF.select(explode(eDF.intlist).alias("anInt")).collect()
[Row(anInt=1), Row(anInt=2), Row(anInt=3)]
>>> eDF.select(explode(eDF.mapfield).alias("key", "value")).show()
+---+-----+
|key|value|
+---+-----+
|  a|    b|
+---+-----+

New in version 1.4.

pyspark.sql.functions.expm1(col)

Computes the exponential of the given value minus one.

New in version 1.4.

pyspark.sql.functions.expr(str)[source]

Parses the expression string into the column that it represents

>>> df.select(expr("length(name)")).collect()
[Row(length(name)=5), Row(length(name)=3)]

New in version 1.5.

pyspark.sql.functions.factorial(col)[source]

Computes the factorial of the given value.

>>> df = spark.createDataFrame([(5,)], ['n'])
>>> df.select(factorial(df.n).alias('f')).collect()
[Row(f=120)]

New in version 1.5.

pyspark.sql.functions.first(col, ignorenulls=False)[source]

Aggregate function: returns the first value in a group.

The function by default returns the first values it sees. It will return the first non-null value it sees when ignoreNulls is set to true. If all values are null, then null is returned.

New in version 1.3.

pyspark.sql.functions.floor(col)

Computes the floor of the given value.

New in version 1.4.

pyspark.sql.functions.format_number(col, d)[source]

Formats the number X to a format like ‘#,–#,–#.–’, rounded to d decimal places, and returns the result as a string.

Parameters:
  • col – the column name of the numeric value to be formatted
  • d – the N decimal places
>>> spark.createDataFrame([(5,)], ['a']).select(format_number('a', 4).alias('v')).collect()
[Row(v='5.0000')]

New in version 1.5.

pyspark.sql.functions.format_string(format, *cols)[source]

Formats the arguments in printf-style and returns the result as a string column.

Parameters:
  • col – the column name of the numeric value to be formatted
  • d – the N decimal places
>>> df = spark.createDataFrame([(5, "hello")], ['a', 'b'])
>>> df.select(format_string('%d %s', df.a, df.b).alias('v')).collect()
[Row(v='5 hello')]

New in version 1.5.

pyspark.sql.functions.from_json(col, schema, options={})[source]

Parses a column containing a JSON string into a [[StructType]] with the specified schema. Returns null, in the case of an unparseable string.

Parameters:
  • col – string column in json format
  • schema – a StructType to use when parsing the json column
  • options – options to control parsing. accepts the same options as the json datasource
>>> from pyspark.sql.types import *
>>> data = [(1, '''{"a": 1}''')]
>>> schema = StructType([StructField("a", IntegerType())])
>>> df = spark.createDataFrame(data, ("key", "value"))
>>> df.select(from_json(df.value, schema).alias("json")).collect()
[Row(json=Row(a=1))]

New in version 2.1.

pyspark.sql.functions.from_unixtime(timestamp, format='yyyy-MM-dd HH:mm:ss')[source]

Converts the number of seconds from unix epoch (1970-01-01 00:00:00 UTC) to a string representing the timestamp of that moment in the current system time zone in the given format.

New in version 1.5.

pyspark.sql.functions.from_utc_timestamp(timestamp, tz)[source]

Given a timestamp, which corresponds to a certain time of day in UTC, returns another timestamp that corresponds to the same time of day in the given timezone.

>>> df = spark.createDataFrame([('1997-02-28 10:30:00',)], ['t'])
>>> df.select(from_utc_timestamp(df.t, "PST").alias('t')).collect()
[Row(t=datetime.datetime(1997, 2, 28, 2, 30))]

New in version 1.5.

pyspark.sql.functions.get_json_object(col, path)[source]

Extracts json object from a json string based on json path specified, and returns json string of the extracted json object. It will return null if the input json string is invalid.

Parameters:
  • col – string column in json format
  • path – path to the json object to extract
>>> data = [("1", '''{"f1": "value1", "f2": "value2"}'''), ("2", '''{"f1": "value12"}''')]
>>> df = spark.createDataFrame(data, ("key", "jstring"))
>>> df.select(df.key, get_json_object(df.jstring, '$.f1').alias("c0"), \
...                   get_json_object(df.jstring, '$.f2').alias("c1") ).collect()
[Row(key='1', c0='value1', c1='value2'), Row(key='2', c0='value12', c1=None)]

New in version 1.6.

pyspark.sql.functions.greatest(*cols)[source]

Returns the greatest value of the list of column names, skipping null values. This function takes at least 2 parameters. It will return null iff all parameters are null.

>>> df = spark.createDataFrame([(1, 4, 3)], ['a', 'b', 'c'])
>>> df.select(greatest(df.a, df.b, df.c).alias("greatest")).collect()
[Row(greatest=4)]

New in version 1.5.

pyspark.sql.functions.grouping(col)[source]

Aggregate function: indicates whether a specified column in a GROUP BY list is aggregated or not, returns 1 for aggregated or 0 for not aggregated in the result set.

>>> df.cube("name").agg(grouping("name"), sum("age")).orderBy("name").show()
+-----+--------------+--------+
| name|grouping(name)|sum(age)|
+-----+--------------+--------+
| null|             1|       7|
|Alice|             0|       2|
|  Bob|             0|       5|
+-----+--------------+--------+

New in version 2.0.

pyspark.sql.functions.grouping_id(*cols)[source]

Aggregate function: returns the level of grouping, equals to

(grouping(c1) << (n-1)) + (grouping(c2) << (n-2)) + … + grouping(cn)

Note

The list of columns should match with grouping columns exactly, or empty (means all the grouping columns).

>>> df.cube("name").agg(grouping_id(), sum("age")).orderBy("name").show()
+-----+-------------+--------+
| name|grouping_id()|sum(age)|
+-----+-------------+--------+
| null|            1|       7|
|Alice|            0|       2|
|  Bob|            0|       5|
+-----+-------------+--------+

New in version 2.0.

pyspark.sql.functions.hash(*cols)[source]

Calculates the hash code of given columns, and returns the result as an int column.

>>> spark.createDataFrame([('ABC',)], ['a']).select(hash('a').alias('hash')).collect()
[Row(hash=-757602832)]

New in version 2.0.

pyspark.sql.functions.hex(col)[source]

Computes hex value of the given column, which could be pyspark.sql.types.StringType, pyspark.sql.types.BinaryType, pyspark.sql.types.IntegerType or pyspark.sql.types.LongType.

>>> spark.createDataFrame([('ABC', 3)], ['a', 'b']).select(hex('a'), hex('b')).collect()
[Row(hex(a)='414243', hex(b)='3')]

New in version 1.5.

pyspark.sql.functions.hour(col)[source]

Extract the hours of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08 13:08:15',)], ['a'])
>>> df.select(hour('a').alias('hour')).collect()
[Row(hour=13)]

New in version 1.5.

pyspark.sql.functions.hypot(col1, col2)

Computes sqrt(a^2 + b^2) without intermediate overflow or underflow.

New in version 1.4.

pyspark.sql.functions.initcap(col)[source]

Translate the first letter of each word to upper case in the sentence.

>>> spark.createDataFrame([('ab cd',)], ['a']).select(initcap("a").alias('v')).collect()
[Row(v='Ab Cd')]

New in version 1.5.

pyspark.sql.functions.input_file_name()[source]

Creates a string column for the file name of the current Spark task.

New in version 1.6.

pyspark.sql.functions.instr(str, substr)[source]

Locate the position of the first occurrence of substr column in the given string. Returns null if either of the arguments are null.

Note

The position is not zero based, but 1 based index. Returns 0 if substr could not be found in str.

>>> df = spark.createDataFrame([('abcd',)], ['s',])
>>> df.select(instr(df.s, 'b').alias('s')).collect()
[Row(s=2)]

New in version 1.5.

pyspark.sql.functions.isnan(col)[source]

An expression that returns true iff the column is NaN.

>>> df = spark.createDataFrame([(1.0, float('nan')), (float('nan'), 2.0)], ("a", "b"))
>>> df.select(isnan("a").alias("r1"), isnan(df.a).alias("r2")).collect()
[Row(r1=False, r2=False), Row(r1=True, r2=True)]

New in version 1.6.

pyspark.sql.functions.isnull(col)[source]

An expression that returns true iff the column is null.

>>> df = spark.createDataFrame([(1, None), (None, 2)], ("a", "b"))
>>> df.select(isnull("a").alias("r1"), isnull(df.a).alias("r2")).collect()
[Row(r1=False, r2=False), Row(r1=True, r2=True)]

New in version 1.6.

pyspark.sql.functions.json_tuple(col, *fields)[source]

Creates a new row for a json column according to the given field names.

Parameters:
  • col – string column in json format
  • fields – list of fields to extract
>>> data = [("1", '''{"f1": "value1", "f2": "value2"}'''), ("2", '''{"f1": "value12"}''')]
>>> df = spark.createDataFrame(data, ("key", "jstring"))
>>> df.select(df.key, json_tuple(df.jstring, 'f1', 'f2')).collect()
[Row(key='1', c0='value1', c1='value2'), Row(key='2', c0='value12', c1=None)]

New in version 1.6.

pyspark.sql.functions.kurtosis(col)

Aggregate function: returns the kurtosis of the values in a group.

New in version 1.6.

pyspark.sql.functions.lag(col, count=1, default=None)[source]

Window function: returns the value that is offset rows before the current row, and defaultValue if there is less than offset rows before the current row. For example, an offset of one will return the previous row at any given point in the window partition.

This is equivalent to the LAG function in SQL.

Parameters:
  • col – name of column or expression
  • count – number of row to extend
  • default – default value

New in version 1.4.

pyspark.sql.functions.last(col, ignorenulls=False)[source]

Aggregate function: returns the last value in a group.

The function by default returns the last values it sees. It will return the last non-null value it sees when ignoreNulls is set to true. If all values are null, then null is returned.

New in version 1.3.

pyspark.sql.functions.last_day(date)[source]

Returns the last day of the month which the given date belongs to.

>>> df = spark.createDataFrame([('1997-02-10',)], ['d'])
>>> df.select(last_day(df.d).alias('date')).collect()
[Row(date=datetime.date(1997, 2, 28))]

New in version 1.5.

pyspark.sql.functions.lead(col, count=1, default=None)[source]

Window function: returns the value that is offset rows after the current row, and defaultValue if there is less than offset rows after the current row. For example, an offset of one will return the next row at any given point in the window partition.

This is equivalent to the LEAD function in SQL.

Parameters:
  • col – name of column or expression
  • count – number of row to extend
  • default – default value

New in version 1.4.

pyspark.sql.functions.least(*cols)[source]

Returns the least value of the list of column names, skipping null values. This function takes at least 2 parameters. It will return null iff all parameters are null.

>>> df = spark.createDataFrame([(1, 4, 3)], ['a', 'b', 'c'])
>>> df.select(least(df.a, df.b, df.c).alias("least")).collect()
[Row(least=1)]

New in version 1.5.

pyspark.sql.functions.length(col)[source]

Calculates the length of a string or binary expression.

>>> spark.createDataFrame([('ABC',)], ['a']).select(length('a').alias('length')).collect()
[Row(length=3)]

New in version 1.5.

pyspark.sql.functions.levenshtein(left, right)[source]

Computes the Levenshtein distance of the two given strings.

>>> df0 = spark.createDataFrame([('kitten', 'sitting',)], ['l', 'r'])
>>> df0.select(levenshtein('l', 'r').alias('d')).collect()
[Row(d=3)]

New in version 1.5.

pyspark.sql.functions.lit(col)

Creates a Column of literal value.

New in version 1.3.

pyspark.sql.functions.locate(substr, str, pos=1)[source]

Locate the position of the first occurrence of substr in a string column, after position pos.

Note

The position is not zero based, but 1 based index. Returns 0 if substr could not be found in str.

Parameters:
>>> df = spark.createDataFrame([('abcd',)], ['s',])
>>> df.select(locate('b', df.s, 1).alias('s')).collect()
[Row(s=2)]

New in version 1.5.

pyspark.sql.functions.log(arg1, arg2=None)[source]

Returns the first argument-based logarithm of the second argument.

If there is only one argument, then this takes the natural logarithm of the argument.

>>> df.select(log(10.0, df.age).alias('ten')).rdd.map(lambda l: str(l.ten)[:7]).collect()
['0.30102', '0.69897']
>>> df.select(log(df.age).alias('e')).rdd.map(lambda l: str(l.e)[:7]).collect()
['0.69314', '1.60943']

New in version 1.5.

pyspark.sql.functions.log10(col)

Computes the logarithm of the given value in Base 10.

New in version 1.4.

pyspark.sql.functions.log1p(col)

Computes the natural logarithm of the given value plus one.

New in version 1.4.

pyspark.sql.functions.log2(col)[source]

Returns the base-2 logarithm of the argument.

>>> spark.createDataFrame([(4,)], ['a']).select(log2('a').alias('log2')).collect()
[Row(log2=2.0)]

New in version 1.5.

pyspark.sql.functions.lower(col)

Converts a string column to lower case.

New in version 1.5.

pyspark.sql.functions.lpad(col, len, pad)[source]

Left-pad the string column to width len with pad.

>>> df = spark.createDataFrame([('abcd',)], ['s',])
>>> df.select(lpad(df.s, 6, '#').alias('s')).collect()
[Row(s='##abcd')]

New in version 1.5.

pyspark.sql.functions.ltrim(col)

Trim the spaces from left end for the specified string value.

New in version 1.5.

pyspark.sql.functions.max(col)

Aggregate function: returns the maximum value of the expression in a group.

New in version 1.3.

pyspark.sql.functions.md5(col)[source]

Calculates the MD5 digest and returns the value as a 32 character hex string.

>>> spark.createDataFrame([('ABC',)], ['a']).select(md5('a').alias('hash')).collect()
[Row(hash='902fbdd2b1df0c4f70b4a5d23525e932')]

New in version 1.5.

pyspark.sql.functions.mean(col)

Aggregate function: returns the average of the values in a group.

New in version 1.3.

pyspark.sql.functions.min(col)

Aggregate function: returns the minimum value of the expression in a group.

New in version 1.3.

pyspark.sql.functions.minute(col)[source]

Extract the minutes of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08 13:08:15',)], ['a'])
>>> df.select(minute('a').alias('minute')).collect()
[Row(minute=8)]

New in version 1.5.

pyspark.sql.functions.monotonically_increasing_id()[source]

A column that generates monotonically increasing 64-bit integers.

The generated ID is guaranteed to be monotonically increasing and unique, but not consecutive. The current implementation puts the partition ID in the upper 31 bits, and the record number within each partition in the lower 33 bits. The assumption is that the data frame has less than 1 billion partitions, and each partition has less than 8 billion records.

As an example, consider a DataFrame with two partitions, each with 3 records. This expression would return the following IDs: 0, 1, 2, 8589934592 (1L << 33), 8589934593, 8589934594.

>>> df0 = sc.parallelize(range(2), 2).mapPartitions(lambda x: [(1,), (2,), (3,)]).toDF(['col1'])
>>> df0.select(monotonically_increasing_id().alias('id')).collect()
[Row(id=0), Row(id=1), Row(id=2), Row(id=8589934592), Row(id=8589934593), Row(id=8589934594)]

New in version 1.6.

pyspark.sql.functions.month(col)[source]

Extract the month of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(month('a').alias('month')).collect()
[Row(month=4)]

New in version 1.5.

pyspark.sql.functions.months_between(date1, date2)[source]

Returns the number of months between date1 and date2.

>>> df = spark.createDataFrame([('1997-02-28 10:30:00', '1996-10-30')], ['t', 'd'])
>>> df.select(months_between(df.t, df.d).alias('months')).collect()
[Row(months=3.9495967...)]

New in version 1.5.

pyspark.sql.functions.nanvl(col1, col2)[source]

Returns col1 if it is not NaN, or col2 if col1 is NaN.

Both inputs should be floating point columns (DoubleType or FloatType).

>>> df = spark.createDataFrame([(1.0, float('nan')), (float('nan'), 2.0)], ("a", "b"))
>>> df.select(nanvl("a", "b").alias("r1"), nanvl(df.a, df.b).alias("r2")).collect()
[Row(r1=1.0, r2=1.0), Row(r1=2.0, r2=2.0)]

New in version 1.6.

pyspark.sql.functions.next_day(date, dayOfWeek)[source]

Returns the first date which is later than the value of the date column.

Day of the week parameter is case insensitive, and accepts:
“Mon”, “Tue”, “Wed”, “Thu”, “Fri”, “Sat”, “Sun”.
>>> df = spark.createDataFrame([('2015-07-27',)], ['d'])
>>> df.select(next_day(df.d, 'Sun').alias('date')).collect()
[Row(date=datetime.date(2015, 8, 2))]

New in version 1.5.

pyspark.sql.functions.ntile(n)[source]

Window function: returns the ntile group id (from 1 to n inclusive) in an ordered window partition. For example, if n is 4, the first quarter of the rows will get value 1, the second quarter will get 2, the third quarter will get 3, and the last quarter will get 4.

This is equivalent to the NTILE function in SQL.

Parameters:n – an integer

New in version 1.4.

pyspark.sql.functions.percent_rank()

Window function: returns the relative rank (i.e. percentile) of rows within a window partition.

New in version 1.6.

pyspark.sql.functions.posexplode(col)[source]

Returns a new row for each element with position in the given array or map.

>>> from pyspark.sql import Row
>>> eDF = spark.createDataFrame([Row(a=1, intlist=[1,2,3], mapfield={"a": "b"})])
>>> eDF.select(posexplode(eDF.intlist)).collect()
[Row(pos=0, col=1), Row(pos=1, col=2), Row(pos=2, col=3)]
>>> eDF.select(posexplode(eDF.mapfield)).show()
+---+---+-----+
|pos|key|value|
+---+---+-----+
|  0|  a|    b|
+---+---+-----+

New in version 2.1.

pyspark.sql.functions.pow(col1, col2)

Returns the value of the first argument raised to the power of the second argument.

New in version 1.4.

pyspark.sql.functions.quarter(col)[source]

Extract the quarter of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(quarter('a').alias('quarter')).collect()
[Row(quarter=2)]

New in version 1.5.

pyspark.sql.functions.radians(col)

Converts an angle measured in degrees to an approximately equivalent angle measured in radians.

New in version 2.1.

pyspark.sql.functions.rand(seed=None)[source]

Generates a random column with independent and identically distributed (i.i.d.) samples from U[0.0, 1.0].

New in version 1.4.

pyspark.sql.functions.randn(seed=None)[source]

Generates a column with independent and identically distributed (i.i.d.) samples from the standard normal distribution.

New in version 1.4.

pyspark.sql.functions.rank()

Window function: returns the rank of rows within a window partition.

The difference between rank and dense_rank is that dense_rank leaves no gaps in ranking sequence when there are ties. That is, if you were ranking a competition using dense_rank and had three people tie for second place, you would say that all three were in second place and that the next person came in third. Rank would give me sequential numbers, making the person that came in third place (after the ties) would register as coming in fifth.

This is equivalent to the RANK function in SQL.

New in version 1.6.

pyspark.sql.functions.regexp_extract(str, pattern, idx)[source]

Extract a specific group matched by a Java regex, from the specified string column. If the regex did not match, or the specified group did not match, an empty string is returned.

>>> df = spark.createDataFrame([('100-200',)], ['str'])
>>> df.select(regexp_extract('str', '(\d+)-(\d+)', 1).alias('d')).collect()
[Row(d='100')]
>>> df = spark.createDataFrame([('foo',)], ['str'])
>>> df.select(regexp_extract('str', '(\d+)', 1).alias('d')).collect()
[Row(d='')]
>>> df = spark.createDataFrame([('aaaac',)], ['str'])
>>> df.select(regexp_extract('str', '(a+)(b)?(c)', 2).alias('d')).collect()
[Row(d='')]

New in version 1.5.

pyspark.sql.functions.regexp_replace(str, pattern, replacement)[source]

Replace all substrings of the specified string value that match regexp with rep.

>>> df = spark.createDataFrame([('100-200',)], ['str'])
>>> df.select(regexp_replace('str', '(\d+)', '--').alias('d')).collect()
[Row(d='-----')]

New in version 1.5.

pyspark.sql.functions.repeat(col, n)[source]

Repeats a string column n times, and returns it as a new string column.

>>> df = spark.createDataFrame([('ab',)], ['s',])
>>> df.select(repeat(df.s, 3).alias('s')).collect()
[Row(s='ababab')]

New in version 1.5.

pyspark.sql.functions.reverse(col)

Reverses the string column and returns it as a new string column.

New in version 1.5.

pyspark.sql.functions.rint(col)

Returns the double value that is closest in value to the argument and is equal to a mathematical integer.

New in version 1.4.

pyspark.sql.functions.round(col, scale=0)[source]

Round the given value to scale decimal places using HALF_UP rounding mode if scale >= 0 or at integral part when scale < 0.

>>> spark.createDataFrame([(2.5,)], ['a']).select(round('a', 0).alias('r')).collect()
[Row(r=3.0)]

New in version 1.5.

pyspark.sql.functions.row_number()

Window function: returns a sequential number starting at 1 within a window partition.

New in version 1.6.

pyspark.sql.functions.rpad(col, len, pad)[source]

Right-pad the string column to width len with pad.

>>> df = spark.createDataFrame([('abcd',)], ['s',])
>>> df.select(rpad(df.s, 6, '#').alias('s')).collect()
[Row(s='abcd##')]

New in version 1.5.

pyspark.sql.functions.rtrim(col)

Trim the spaces from right end for the specified string value.

New in version 1.5.

pyspark.sql.functions.second(col)[source]

Extract the seconds of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08 13:08:15',)], ['a'])
>>> df.select(second('a').alias('second')).collect()
[Row(second=15)]

New in version 1.5.

pyspark.sql.functions.sha1(col)[source]

Returns the hex string result of SHA-1.

>>> spark.createDataFrame([('ABC',)], ['a']).select(sha1('a').alias('hash')).collect()
[Row(hash='3c01bdbb26f358bab27f267924aa2c9a03fcfdb8')]

New in version 1.5.

pyspark.sql.functions.sha2(col, numBits)[source]

Returns the hex string result of SHA-2 family of hash functions (SHA-224, SHA-256, SHA-384, and SHA-512). The numBits indicates the desired bit length of the result, which must have a value of 224, 256, 384, 512, or 0 (which is equivalent to 256).

>>> digests = df.select(sha2(df.name, 256).alias('s')).collect()
>>> digests[0]
Row(s='3bc51062973c458d5a6f2d8d64a023246354ad7e064b1e4e009ec8a0699a3043')
>>> digests[1]
Row(s='cd9fb1e148ccd8442e5aa74904cc73bf6fb54d1d54d333bd596aa9bb4bb4e961')

New in version 1.5.

pyspark.sql.functions.shiftLeft(col, numBits)[source]

Shift the given value numBits left.

>>> spark.createDataFrame([(21,)], ['a']).select(shiftLeft('a', 1).alias('r')).collect()
[Row(r=42)]

New in version 1.5.

pyspark.sql.functions.shiftRight(col, numBits)[source]

(Signed) shift the given value numBits right.

>>> spark.createDataFrame([(42,)], ['a']).select(shiftRight('a', 1).alias('r')).collect()
[Row(r=21)]

New in version 1.5.

pyspark.sql.functions.shiftRightUnsigned(col, numBits)[source]

Unsigned shift the given value numBits right.

>>> df = spark.createDataFrame([(-42,)], ['a'])
>>> df.select(shiftRightUnsigned('a', 1).alias('r')).collect()
[Row(r=9223372036854775787)]

New in version 1.5.

pyspark.sql.functions.signum(col)

Computes the signum of the given value.

New in version 1.4.

pyspark.sql.functions.sin(col)

Computes the sine of the given value.

New in version 1.4.

pyspark.sql.functions.sinh(col)

Computes the hyperbolic sine of the given value.

New in version 1.4.

pyspark.sql.functions.size(col)[source]

Collection function: returns the length of the array or map stored in the column.

Parameters:col – name of column or expression
>>> df = spark.createDataFrame([([1, 2, 3],),([1],),([],)], ['data'])
>>> df.select(size(df.data)).collect()
[Row(size(data)=3), Row(size(data)=1), Row(size(data)=0)]

New in version 1.5.

pyspark.sql.functions.skewness(col)

Aggregate function: returns the skewness of the values in a group.

New in version 1.6.

pyspark.sql.functions.sort_array(col, asc=True)[source]

Collection function: sorts the input array in ascending or descending order according to the natural ordering of the array elements.

Parameters:col – name of column or expression
>>> df = spark.createDataFrame([([2, 1, 3],),([1],),([],)], ['data'])
>>> df.select(sort_array(df.data).alias('r')).collect()
[Row(r=[1, 2, 3]), Row(r=[1]), Row(r=[])]
>>> df.select(sort_array(df.data, asc=False).alias('r')).collect()
[Row(r=[3, 2, 1]), Row(r=[1]), Row(r=[])]

New in version 1.5.

pyspark.sql.functions.soundex(col)[source]

Returns the SoundEx encoding for a string

>>> df = spark.createDataFrame([("Peters",),("Uhrbach",)], ['name'])
>>> df.select(soundex(df.name).alias("soundex")).collect()
[Row(soundex='P362'), Row(soundex='U612')]

New in version 1.5.

pyspark.sql.functions.spark_partition_id()[source]

A column for partition ID.

Note

This is indeterministic because it depends on data partitioning and task scheduling.

>>> df.repartition(1).select(spark_partition_id().alias("pid")).collect()
[Row(pid=0), Row(pid=0)]

New in version 1.6.

pyspark.sql.functions.split(str, pattern)[source]

Splits str around pattern (pattern is a regular expression).

Note

pattern is a string represent the regular expression.

>>> df = spark.createDataFrame([('ab12cd',)], ['s',])
>>> df.select(split(df.s, '[0-9]+').alias('s')).collect()
[Row(s=['ab', 'cd'])]

New in version 1.5.

pyspark.sql.functions.sqrt(col)

Computes the square root of the specified float value.

New in version 1.3.

pyspark.sql.functions.stddev(col)

Aggregate function: returns the unbiased sample standard deviation of the expression in a group.

New in version 1.6.

pyspark.sql.functions.stddev_pop(col)

Aggregate function: returns population standard deviation of the expression in a group.

New in version 1.6.

pyspark.sql.functions.stddev_samp(col)

Aggregate function: returns the unbiased sample standard deviation of the expression in a group.

New in version 1.6.

pyspark.sql.functions.struct(*cols)[source]

Creates a new struct column.

Parameters:cols – list of column names (string) or list of Column expressions
>>> df.select(struct('age', 'name').alias("struct")).collect()
[Row(struct=Row(age=2, name='Alice')), Row(struct=Row(age=5, name='Bob'))]
>>> df.select(struct([df.age, df.name]).alias("struct")).collect()
[Row(struct=Row(age=2, name='Alice')), Row(struct=Row(age=5, name='Bob'))]

New in version 1.4.

pyspark.sql.functions.substring(str, pos, len)[source]

Substring starts at pos and is of length len when str is String type or returns the slice of byte array that starts at pos in byte and is of length len when str is Binary type

>>> df = spark.createDataFrame([('abcd',)], ['s',])
>>> df.select(substring(df.s, 1, 2).alias('s')).collect()
[Row(s='ab')]

New in version 1.5.

pyspark.sql.functions.substring_index(str, delim, count)[source]

Returns the substring from string str before count occurrences of the delimiter delim. If count is positive, everything the left of the final delimiter (counting from left) is returned. If count is negative, every to the right of the final delimiter (counting from the right) is returned. substring_index performs a case-sensitive match when searching for delim.

>>> df = spark.createDataFrame([('a.b.c.d',)], ['s'])
>>> df.select(substring_index(df.s, '.', 2).alias('s')).collect()
[Row(s='a.b')]
>>> df.select(substring_index(df.s, '.', -3).alias('s')).collect()
[Row(s='b.c.d')]

New in version 1.5.

pyspark.sql.functions.sum(col)

Aggregate function: returns the sum of all values in the expression.

New in version 1.3.

pyspark.sql.functions.sumDistinct(col)

Aggregate function: returns the sum of distinct values in the expression.

New in version 1.3.

pyspark.sql.functions.tan(col)

Computes the tangent of the given value.

New in version 1.4.

pyspark.sql.functions.tanh(col)

Computes the hyperbolic tangent of the given value.

New in version 1.4.

pyspark.sql.functions.toDegrees(col)

Note

Deprecated in 2.1, use degrees instead.

New in version 1.4.

pyspark.sql.functions.toRadians(col)

Note

Deprecated in 2.1, use radians instead.

New in version 1.4.

pyspark.sql.functions.to_date(col)[source]

Converts the column of pyspark.sql.types.StringType or pyspark.sql.types.TimestampType into pyspark.sql.types.DateType.

>>> df = spark.createDataFrame([('1997-02-28 10:30:00',)], ['t'])
>>> df.select(to_date(df.t).alias('date')).collect()
[Row(date=datetime.date(1997, 2, 28))]

New in version 1.5.

pyspark.sql.functions.to_json(col, options={})[source]

Converts a column containing a [[StructType]] into a JSON string. Throws an exception, in the case of an unsupported type.

Parameters:
  • col – name of column containing the struct
  • options – options to control converting. accepts the same options as the json datasource
>>> from pyspark.sql import Row
>>> from pyspark.sql.types import *
>>> data = [(1, Row(name='Alice', age=2))]
>>> df = spark.createDataFrame(data, ("key", "value"))
>>> df.select(to_json(df.value).alias("json")).collect()
[Row(json='{"age":2,"name":"Alice"}')]

New in version 2.1.

pyspark.sql.functions.to_utc_timestamp(timestamp, tz)[source]

Given a timestamp, which corresponds to a certain time of day in the given timezone, returns another timestamp that corresponds to the same time of day in UTC.

>>> df = spark.createDataFrame([('1997-02-28 10:30:00',)], ['t'])
>>> df.select(to_utc_timestamp(df.t, "PST").alias('t')).collect()
[Row(t=datetime.datetime(1997, 2, 28, 18, 30))]

New in version 1.5.

pyspark.sql.functions.translate(srcCol, matching, replace)[source]

A function translate any character in the srcCol by a character in matching. The characters in replace is corresponding to the characters in matching. The translate will happen when any character in the string matching with the character in the matching.

>>> spark.createDataFrame([('translate',)], ['a']).select(translate('a', "rnlt", "123") \
...     .alias('r')).collect()
[Row(r='1a2s3ae')]

New in version 1.5.

pyspark.sql.functions.trim(col)

Trim the spaces from both ends for the specified string column.

New in version 1.5.

pyspark.sql.functions.trunc(date, format)[source]

Returns date truncated to the unit specified by the format.

Parameters:format – ‘year’, ‘YYYY’, ‘yy’ or ‘month’, ‘mon’, ‘mm’
>>> df = spark.createDataFrame([('1997-02-28',)], ['d'])
>>> df.select(trunc(df.d, 'year').alias('year')).collect()
[Row(year=datetime.date(1997, 1, 1))]
>>> df.select(trunc(df.d, 'mon').alias('month')).collect()
[Row(month=datetime.date(1997, 2, 1))]

New in version 1.5.

pyspark.sql.functions.udf(f, returnType=StringType)[source]

Creates a Column expression representing a user defined function (UDF).

Note

The user-defined functions must be deterministic. Due to optimization, duplicate invocations may be eliminated or the function may even be invoked more times than it is present in the query.

Parameters:
>>> from pyspark.sql.types import IntegerType
>>> slen = udf(lambda s: len(s), IntegerType())
>>> df.select(slen(df.name).alias('slen')).collect()
[Row(slen=5), Row(slen=3)]

New in version 1.3.

pyspark.sql.functions.unbase64(col)

Decodes a BASE64 encoded string column and returns it as a binary column.

New in version 1.5.

pyspark.sql.functions.unhex(col)[source]

Inverse of hex. Interprets each pair of characters as a hexadecimal number and converts to the byte representation of number.

>>> spark.createDataFrame([('414243',)], ['a']).select(unhex('a')).collect()
[Row(unhex(a)=bytearray(b'ABC'))]

New in version 1.5.

pyspark.sql.functions.unix_timestamp(timestamp=None, format='yyyy-MM-dd HH:mm:ss')[source]

Convert time string with given pattern (‘yyyy-MM-dd HH:mm:ss’, by default) to Unix time stamp (in seconds), using the default timezone and the default locale, return null if fail.

if timestamp is None, then it returns current timestamp.

New in version 1.5.

pyspark.sql.functions.upper(col)

Converts a string column to upper case.

New in version 1.5.

pyspark.sql.functions.var_pop(col)

Aggregate function: returns the population variance of the values in a group.

New in version 1.6.

pyspark.sql.functions.var_samp(col)

Aggregate function: returns the unbiased variance of the values in a group.

New in version 1.6.

pyspark.sql.functions.variance(col)

Aggregate function: returns the population variance of the values in a group.

New in version 1.6.

pyspark.sql.functions.weekofyear(col)[source]

Extract the week number of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(weekofyear(df.a).alias('week')).collect()
[Row(week=15)]

New in version 1.5.

pyspark.sql.functions.when(condition, value)[source]

Evaluates a list of conditions and returns one of multiple possible result expressions. If Column.otherwise() is not invoked, None is returned for unmatched conditions.

Parameters:
  • condition – a boolean Column expression.
  • value – a literal value, or a Column expression.
>>> df.select(when(df['age'] == 2, 3).otherwise(4).alias("age")).collect()
[Row(age=3), Row(age=4)]
>>> df.select(when(df.age == 2, df.age + 1).alias("age")).collect()
[Row(age=3), Row(age=None)]

New in version 1.4.

pyspark.sql.functions.window(timeColumn, windowDuration, slideDuration=None, startTime=None)[source]

Bucketize rows into one or more time windows given a timestamp specifying column. Window starts are inclusive but the window ends are exclusive, e.g. 12:05 will be in the window [12:05,12:10) but not in [12:00,12:05). Windows can support microsecond precision. Windows in the order of months are not supported.

The time column must be of pyspark.sql.types.TimestampType.

Durations are provided as strings, e.g. ‘1 second’, ‘1 day 12 hours’, ‘2 minutes’. Valid interval strings are ‘week’, ‘day’, ‘hour’, ‘minute’, ‘second’, ‘millisecond’, ‘microsecond’. If the slideDuration is not provided, the windows will be tumbling windows.

The startTime is the offset with respect to 1970-01-01 00:00:00 UTC with which to start window intervals. For example, in order to have hourly tumbling windows that start 15 minutes past the hour, e.g. 12:15-13:15, 13:15-14:15… provide startTime as 15 minutes.

The output column will be a struct called ‘window’ by default with the nested columns ‘start’ and ‘end’, where ‘start’ and ‘end’ will be of pyspark.sql.types.TimestampType.

>>> df = spark.createDataFrame([("2016-03-11 09:00:07", 1)]).toDF("date", "val")
>>> w = df.groupBy(window("date", "5 seconds")).agg(sum("val").alias("sum"))
>>> w.select(w.window.start.cast("string").alias("start"),
...          w.window.end.cast("string").alias("end"), "sum").collect()
[Row(start='2016-03-11 09:00:05', end='2016-03-11 09:00:10', sum=1)]

New in version 2.0.

pyspark.sql.functions.year(col)[source]

Extract the year of a given date as integer.

>>> df = spark.createDataFrame([('2015-04-08',)], ['a'])
>>> df.select(year('a').alias('year')).collect()
[Row(year=2015)]

New in version 1.5.

pyspark.sql.streaming module

class pyspark.sql.streaming.StreamingQuery(jsq)[source]

A handle to a query that is executing continuously in the background as new data arrives. All these methods are thread-safe.

Note

Experimental

New in version 2.0.

awaitTermination(timeout=None)[source]

Waits for the termination of this query, either by query.stop() or by an exception. If the query has terminated with an exception, then the exception will be thrown. If timeout is set, it returns whether the query has terminated or not within the timeout seconds.

If the query has terminated, then all subsequent calls to this method will either return immediately (if the query was terminated by stop()), or throw the exception immediately (if the query has terminated with exception).

throws StreamingQueryException, if this query has terminated with an exception

New in version 2.0.

exception()[source]
Returns:the StreamingQueryException if the query was terminated by an exception, or None.

New in version 2.1.

explain(extended=False)[source]

Prints the (logical and physical) plans to the console for debugging purpose.

Parameters:extended – boolean, default False. If False, prints only the physical plan.
>>> sq = sdf.writeStream.format('memory').queryName('query_explain').start()
>>> sq.processAllAvailable() # Wait a bit to generate the runtime plans.
>>> sq.explain()
== Physical Plan ==
...
>>> sq.explain(True)
== Parsed Logical Plan ==
...
== Analyzed Logical Plan ==
...
== Optimized Logical Plan ==
...
== Physical Plan ==
...
>>> sq.stop()

New in version 2.1.

id

Returns the unique id of this query that persists across restarts from checkpoint data. That is, this id is generated when a query is started for the first time, and will be the same every time it is restarted from checkpoint data. There can only be one query with the same id active in a Spark cluster. Also see, runId.

New in version 2.0.

isActive

Whether this streaming query is currently active or not.

New in version 2.0.

lastProgress

Returns the most recent StreamingQueryProgress update of this streaming query or None if there were no progress updates :return: a map

New in version 2.1.

name

Returns the user-specified name of the query, or null if not specified. This name can be specified in the org.apache.spark.sql.streaming.DataStreamWriter as dataframe.writeStream.queryName(“query”).start(). This name, if set, must be unique across all active queries.

New in version 2.0.

processAllAvailable()[source]

Blocks until all available data in the source has been processed and committed to the sink. This method is intended for testing.

Note

In the case of continually arriving data, this method may block forever. Additionally, this method is only guaranteed to block until data that has been synchronously appended data to a stream source prior to invocation. (i.e. getOffset must immediately reflect the addition).

New in version 2.0.

recentProgress

Returns an array of the most recent [[StreamingQueryProgress]] updates for this query. The number of progress updates retained for each stream is configured by Spark session configuration spark.sql.streaming.numRecentProgressUpdates.

New in version 2.1.

runId

Returns the unique id of this query that does not persist across restarts. That is, every query that is started (or restarted from checkpoint) will have a different runId.

New in version 2.1.

status

Returns the current status of the query.

New in version 2.1.

stop()[source]

Stop this streaming query.

New in version 2.0.

class pyspark.sql.streaming.StreamingQueryManager(jsqm)[source]

A class to manage all the StreamingQuery StreamingQueries active.

Note

Experimental

New in version 2.0.

active

Returns a list of active queries associated with this SQLContext

>>> sq = sdf.writeStream.format('memory').queryName('this_query').start()
>>> sqm = spark.streams
>>> # get the list of active streaming queries
>>> [q.name for q in sqm.active]
['this_query']
>>> sq.stop()

New in version 2.0.

awaitAnyTermination(timeout=None)[source]

Wait until any of the queries on the associated SQLContext has terminated since the creation of the context, or since resetTerminated() was called. If any query was terminated with an exception, then the exception will be thrown. If timeout is set, it returns whether the query has terminated or not within the timeout seconds.

If a query has terminated, then subsequent calls to awaitAnyTermination() will either return immediately (if the query was terminated by query.stop()), or throw the exception immediately (if the query was terminated with exception). Use resetTerminated() to clear past terminations and wait for new terminations.

In the case where multiple queries have terminated since resetTermination() was called, if any query has terminated with exception, then awaitAnyTermination() will throw any of the exception. For correctly documenting exceptions across multiple queries, users need to stop all of them after any of them terminates with exception, and then check the query.exception() for each query.

throws StreamingQueryException, if this query has terminated with an exception

New in version 2.0.

get(id)[source]

Returns an active query from this SQLContext or throws exception if an active query with this name doesn’t exist.

>>> sq = sdf.writeStream.format('memory').queryName('this_query').start()
>>> sq.name
'this_query'
>>> sq = spark.streams.get(sq.id)
>>> sq.isActive
True
>>> sq = sqlContext.streams.get(sq.id)
>>> sq.isActive
True
>>> sq.stop()

New in version 2.0.

resetTerminated()[source]

Forget about past terminated queries so that awaitAnyTermination() can be used again to wait for new terminations.

>>> spark.streams.resetTerminated()

New in version 2.0.

class pyspark.sql.streaming.DataStreamReader(spark)[source]

Interface used to load a streaming DataFrame from external storage systems (e.g. file systems, key-value stores, etc). Use spark.readStream() to access this.

Note

Experimental.

New in version 2.0.

csv(path, schema=None, sep=None, encoding=None, quote=None, escape=None, comment=None, header=None, inferSchema=None, ignoreLeadingWhiteSpace=None, ignoreTrailingWhiteSpace=None, nullValue=None, nanValue=None, positiveInf=None, negativeInf=None, dateFormat=None, timestampFormat=None, maxColumns=None, maxCharsPerColumn=None, maxMalformedLogPerPartition=None, mode=None)[source]

Loads a CSV file stream and returns the result as a DataFrame.

This function will go through the input once to determine the input schema if inferSchema is enabled. To avoid going through the entire data once, disable inferSchema option or specify the schema explicitly using schema.

Note

Experimental.

Parameters:
  • path – string, or list of strings, for input path(s).
  • schema – an optional pyspark.sql.types.StructType for the input schema.
  • sep – sets the single character as a separator for each field and value. If None is set, it uses the default value, ,.
  • encoding – decodes the CSV files by the given encoding type. If None is set, it uses the default value, UTF-8.
  • quote – sets the single character used for escaping quoted values where the separator can be part of the value. If None is set, it uses the default value, ". If you would like to turn off quotations, you need to set an empty string.
  • escape – sets the single character used for escaping quotes inside an already quoted value. If None is set, it uses the default value, \.
  • comment – sets the single character used for skipping lines beginning with this character. By default (None), it is disabled.
  • header – uses the first line as names of columns. If None is set, it uses the default value, false.
  • inferSchema – infers the input schema automatically from data. It requires one extra pass over the data. If None is set, it uses the default value, false.
  • ignoreLeadingWhiteSpace – defines whether or not leading whitespaces from values being read should be skipped. If None is set, it uses the default value, false.
  • ignoreTrailingWhiteSpace – defines whether or not trailing whitespaces from values being read should be skipped. If None is set, it uses the default value, false.
  • nullValue – sets the string representation of a null value. If None is set, it uses the default value, empty string. Since 2.0.1, this nullValue param applies to all supported types including the string type.
  • nanValue – sets the string representation of a non-number value. If None is set, it uses the default value, NaN.
  • positiveInf – sets the string representation of a positive infinity value. If None is set, it uses the default value, Inf.
  • negativeInf – sets the string representation of a negative infinity value. If None is set, it uses the default value, Inf.
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
  • maxColumns – defines a hard limit of how many columns a record can have. If None is set, it uses the default value, 20480.
  • maxCharsPerColumn – defines the maximum number of characters allowed for any given value being read. If None is set, it uses the default value, -1 meaning unlimited length.
  • mode
    allows a mode for dealing with corrupt records during parsing. If None is
    set, it uses the default value, PERMISSIVE.
    • PERMISSIVE : sets other fields to null when it meets a corrupted record.
      When a schema is set by user, it sets null for extra fields.
    • DROPMALFORMED : ignores the whole corrupted records.
    • FAILFAST : throws an exception when it meets corrupted records.
>>> csv_sdf = spark.readStream.csv(tempfile.mkdtemp(), schema = sdf_schema)
>>> csv_sdf.isStreaming
True
>>> csv_sdf.schema == sdf_schema
True

New in version 2.0.

format(source)[source]

Specifies the input data source format.

Note

Experimental.

Parameters:source – string, name of the data source, e.g. ‘json’, ‘parquet’.
>>> s = spark.readStream.format("text")

New in version 2.0.

json(path, schema=None, primitivesAsString=None, prefersDecimal=None, allowComments=None, allowUnquotedFieldNames=None, allowSingleQuotes=None, allowNumericLeadingZero=None, allowBackslashEscapingAnyCharacter=None, mode=None, columnNameOfCorruptRecord=None, dateFormat=None, timestampFormat=None)[source]

Loads a JSON file stream (JSON Lines text format or newline-delimited JSON) and returns a :class`DataFrame`.

If the schema parameter is not specified, this function goes through the input once to determine the input schema.

Note

Experimental.

Parameters:
  • path – string represents path to the JSON dataset, or RDD of Strings storing JSON objects.
  • schema – an optional pyspark.sql.types.StructType for the input schema.
  • primitivesAsString – infers all primitive values as a string type. If None is set, it uses the default value, false.
  • prefersDecimal – infers all floating-point values as a decimal type. If the values do not fit in decimal, then it infers them as doubles. If None is set, it uses the default value, false.
  • allowComments – ignores Java/C++ style comment in JSON records. If None is set, it uses the default value, false.
  • allowUnquotedFieldNames – allows unquoted JSON field names. If None is set, it uses the default value, false.
  • allowSingleQuotes – allows single quotes in addition to double quotes. If None is set, it uses the default value, true.
  • allowNumericLeadingZero – allows leading zeros in numbers (e.g. 00012). If None is set, it uses the default value, false.
  • allowBackslashEscapingAnyCharacter – allows accepting quoting of all character using backslash quoting mechanism. If None is set, it uses the default value, false.
  • mode
    allows a mode for dealing with corrupt records during parsing. If None is
    set, it uses the default value, PERMISSIVE.
    • PERMISSIVE : sets other fields to null when it meets a corrupted record and puts the malformed string into a new field configured by columnNameOfCorruptRecord. When a schema is set by user, it sets null for extra fields.
    • DROPMALFORMED : ignores the whole corrupted records.
    • FAILFAST : throws an exception when it meets corrupted records.
  • columnNameOfCorruptRecord – allows renaming the new field having malformed string created by PERMISSIVE mode. This overrides spark.sql.columnNameOfCorruptRecord. If None is set, it uses the value specified in spark.sql.columnNameOfCorruptRecord.
  • dateFormat – sets the string that indicates a date format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to date type. If None is set, it uses the default value value, yyyy-MM-dd.
  • timestampFormat – sets the string that indicates a timestamp format. Custom date formats follow the formats at java.text.SimpleDateFormat. This applies to timestamp type. If None is set, it uses the default value value, yyyy-MM-dd'T'HH:mm:ss.SSSZZ.
>>> json_sdf = spark.readStream.json(tempfile.mkdtemp(), schema = sdf_schema)
>>> json_sdf.isStreaming
True
>>> json_sdf.schema == sdf_schema
True

New in version 2.0.

load(path=None, format=None, schema=None, **options)[source]

Loads a data stream from a data source and returns it as a :class`DataFrame`.

Note

Experimental.

Parameters:
  • path – optional string for file-system backed data sources.
  • format – optional string for format of the data source. Default to ‘parquet’.
  • schema – optional pyspark.sql.types.StructType for the input schema.
  • options – all other string options
>>> json_sdf = spark.readStream.format("json") \
...     .schema(sdf_schema) \
...     .load(tempfile.mkdtemp())
>>> json_sdf.isStreaming
True
>>> json_sdf.schema == sdf_schema
True

New in version 2.0.

option(key, value)[source]

Adds an input option for the underlying data source.

Note

Experimental.

>>> s = spark.readStream.option("x", 1)

New in version 2.0.

options(**options)[source]

Adds input options for the underlying data source.

Note

Experimental.

>>> s = spark.readStream.options(x="1", y=2)

New in version 2.0.

parquet(path)[source]

Loads a Parquet file stream, returning the result as a DataFrame.

You can set the following Parquet-specific option(s) for reading Parquet files:
  • mergeSchema: sets whether we should merge schemas collected from all Parquet part-files. This will override spark.sql.parquet.mergeSchema. The default value is specified in spark.sql.parquet.mergeSchema.

Note

Experimental.

>>> parquet_sdf = spark.readStream.schema(sdf_schema).parquet(tempfile.mkdtemp())
>>> parquet_sdf.isStreaming
True
>>> parquet_sdf.schema == sdf_schema
True

New in version 2.0.

schema(schema)[source]

Specifies the input schema.

Some data sources (e.g. JSON) can infer the input schema automatically from data. By specifying the schema here, the underlying data source can skip the schema inference step, and thus speed up data loading.

Note

Experimental.

Parameters:schema – a pyspark.sql.types.StructType object
>>> s = spark.readStream.schema(sdf_schema)

New in version 2.0.

text(path)[source]

Loads a text file stream and returns a DataFrame whose schema starts with a string column named “value”, and followed by partitioned columns if there are any.

Each line in the text file is a new row in the resulting DataFrame.

Note

Experimental.

Parameters:paths – string, or list of strings, for input path(s).
>>> text_sdf = spark.readStream.text(tempfile.mkdtemp())
>>> text_sdf.isStreaming
True
>>> "value" in str(text_sdf.schema)
True

New in version 2.0.

class pyspark.sql.streaming.DataStreamWriter(df)[source]

Interface used to write a streaming DataFrame to external storage systems (e.g. file systems, key-value stores, etc). Use DataFrame.writeStream() to access this.

Note

Experimental.

New in version 2.0.

format(source)[source]

Specifies the underlying output data source.

Note

Experimental.

Parameters:source – string, name of the data source, which for now can be ‘parquet’.
>>> writer = sdf.writeStream.format('json')

New in version 2.0.

option(key, value)[source]

Adds an output option for the underlying data source.

Note

Experimental.

New in version 2.0.

options(**options)[source]

Adds output options for the underlying data source.

Note

Experimental.

New in version 2.0.

outputMode(outputMode)[source]

Specifies how data of a streaming DataFrame/Dataset is written to a streaming sink.

Options include:

  • append:Only the new rows in the streaming DataFrame/Dataset will be written to
    the sink
  • complete:All the rows in the streaming DataFrame/Dataset will be written to the sink
    every time these is some updates
  • update:only the rows that were updated in the streaming DataFrame/Dataset will be
    written to the sink every time there are some updates. If the query doesn’t contain aggregations, it will be equivalent to append mode.

Note

Experimental.

>>> writer = sdf.writeStream.outputMode('append')

New in version 2.0.

partitionBy(*cols)[source]

Partitions the output by the given columns on the file system.

If specified, the output is laid out on the file system similar to Hive’s partitioning scheme.

Note

Experimental.

Parameters:cols – name of columns

New in version 2.0.

queryName(queryName)[source]

Specifies the name of the StreamingQuery that can be started with start(). This name must be unique among all the currently active queries in the associated SparkSession.

Note

Experimental.

Parameters:queryName – unique name for the query
>>> writer = sdf.writeStream.queryName('streaming_query')

New in version 2.0.

start(path=None, format=None, outputMode=None, partitionBy=None, queryName=None, **options)[source]

Streams the contents of the DataFrame to a data source.

The data source is specified by the format and a set of options. If format is not specified, the default data source configured by spark.sql.sources.default will be used.

Note

Experimental.

Parameters:
  • path – the path in a Hadoop supported file system
  • format – the format used to save
  • outputMode
    specifies how data of a streaming DataFrame/Dataset is written to a
    streaming sink.
    • append:Only the new rows in the streaming DataFrame/Dataset will be written to the sink
    • complete:All the rows in the streaming DataFrame/Dataset will be written to the sink
      every time these is some updates
    • update:only the rows that were updated in the streaming DataFrame/Dataset will be written to the sink every time there are some updates. If the query doesn’t contain aggregations, it will be equivalent to append mode.
  • partitionBy – names of partitioning columns
  • queryName – unique name for the query
  • options – All other string options. You may want to provide a checkpointLocation for most streams, however it is not required for a memory stream.
>>> sq = sdf.writeStream.format('memory').queryName('this_query').start()
>>> sq.isActive
True
>>> sq.name
'this_query'
>>> sq.stop()
>>> sq.isActive
False
>>> sq = sdf.writeStream.trigger(processingTime='5 seconds').start(
...     queryName='that_query', outputMode="append", format='memory')
>>> sq.name
'that_query'
>>> sq.isActive
True
>>> sq.stop()

New in version 2.0.

trigger(processingTime=None)[source]

Set the trigger for the stream query. If this is not set it will run the query as fast as possible, which is equivalent to setting the trigger to processingTime='0 seconds'.

Note

Experimental.

Parameters:processingTime – a processing time interval as a string, e.g. ‘5 seconds’, ‘1 minute’.
>>> # trigger the query for execution every 5 seconds
>>> writer = sdf.writeStream.trigger(processingTime='5 seconds')

New in version 2.0.