dropna {SparkR} | R Documentation |
Returns a new SparkDataFrame omitting rows with null values.
Replace null values.
dropna(x, how = c("any", "all"), minNonNulls = NULL, cols = NULL) na.omit(object, ...) fillna(x, value, cols = NULL) ## S4 method for signature 'SparkDataFrame' dropna(x, how = c("any", "all"), minNonNulls = NULL, cols = NULL) ## S4 method for signature 'SparkDataFrame' na.omit(object, how = c("any", "all"), minNonNulls = NULL, cols = NULL) ## S4 method for signature 'SparkDataFrame' fillna(x, value, cols = NULL)
x |
A SparkDataFrame. |
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. if minNonNulls is specified, how is ignored. |
minNonNulls |
If specified, drop rows that have less than minNonNulls non-null values. This overwrites the how parameter. |
cols |
Optional list of column names to consider. |
value |
Value to replace null values with. Should be an integer, numeric, character or named list. If the value is a named list, then cols is ignored and value must be a mapping from column name (character) to replacement value. The replacement value must be an integer, numeric or character. |
x |
A SparkDataFrame. |
cols |
optional list of column names to consider. Columns specified in cols that do not have matching data type are ignored. For example, if value is a character, and subset contains a non-character column, then the non-character column is simply ignored. |
A SparkDataFrame
Other SparkDataFrame functions: SparkDataFrame-class
,
[[
, agg
,
arrange
, as.data.frame
,
attach
, cache
,
collect
, colnames
,
coltypes
, columns
,
count
, dapply
,
describe
, dim
,
distinct
, dropDuplicates
,
drop
, dtypes
,
except
, explain
,
filter
, first
,
group_by
, head
,
histogram
, insertInto
,
intersect
, isLocal
,
join
, limit
,
merge
, mutate
,
ncol
, persist
,
printSchema
,
registerTempTable
, rename
,
repartition
, sample
,
saveAsTable
, selectExpr
,
select
, showDF
,
show
, str
,
take
, unionAll
,
unpersist
, withColumn
,
write.df
, write.jdbc
,
write.json
, write.parquet
,
write.text
## Not run:
##D sc <- sparkR.init()
##D sqlCtx <- sparkRSQL.init(sc)
##D path <- "path/to/file.json"
##D df <- read.json(sqlCtx, path)
##D dropna(df)
## End(Not run)
## Not run:
##D sc <- sparkR.init()
##D sqlCtx <- sparkRSQL.init(sc)
##D path <- "path/to/file.json"
##D df <- read.json(sqlCtx, path)
##D fillna(df, 1)
##D fillna(df, list("age" = 20, "name" = "unknown"))
## End(Not run)