sparklyr (version 1.7.2)

sdf_copy_to: Copy an Object into Spark

Description

Copy an object into Spark, and return an R object wrapping the copied object (typically, a Spark DataFrame).

Usage

sdf_copy_to(sc, x, name, memory, repartition, overwrite, struct_columns, ...)

sdf_import(x, sc, name, memory, repartition, overwrite, struct_columns, ...)

Arguments

sc

The associated Spark connection.

x

An R object from which a Spark DataFrame can be generated.

name

The name to assign to the copied table in Spark.

memory

Boolean; should the table be cached into memory?

repartition

The number of partitions to use when distributing the table across the Spark cluster. The default (0) can be used to avoid partitioning.

overwrite

Boolean; overwrite a pre-existing table with the name name if one already exists?

struct_columns

(only supported with Spark 2.4.0 or higher) A list of columns from the source data frame that should be converted to Spark SQL StructType columns. The source columns can contain either json strings or nested lists. All rows within each source column should have identical schemas (because otherwise the conversion result will contain unexpected null values or missing values as Spark currently does not support schema discovery on individual rows within a struct column).

...

Optional arguments, passed to implementing methods.

Advanced Usage

sdf_copy_to is an S3 generic that, by default, dispatches to sdf_import. Package authors that would like to implement sdf_copy_to for a custom object type can accomplish this by implementing the associated method on sdf_import.

See Also

Other Spark data frames: sdf_distinct(), sdf_random_split(), sdf_register(), sdf_sample(), sdf_sort(), sdf_weighted_sample()

Examples

Run this code
# NOT RUN {
# }
# NOT RUN {
sc <- spark_connect(master = "spark://HOST:PORT")
sdf_copy_to(sc, iris)
# }
# NOT RUN {
# }

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