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This question already has an answer here:

Currently I am using Spark (pyspark with Spark version 1.6) and I have a DataFrame like:

DataFrame[clientId: bigint, clientName: string, action: string, ...]

I want to dump it in S3 segregated by an attribute (e.g. clientId) in the following format s3://path/<clientId>/<datafiles>.

I want the datafiles to contain the rows for the corresponding clientId in json format, so for the path s3://path/1/, the datafiles will contain:

{"clientId":1, "clientName":"John Doe", "action":"foo", ...}
{"clientId":1, "clientName":"John Doe", "action":"bar", ...}
{"clientId":1, "clientName":"John Doe", "action":"baz", ...}

I was thinking on using groupBy then a toJSON but in DataFrames you can only collect the data and the DataFrame is too big to fit in the driver (also the I/O is massive). How can I save the partial results of the group from the executors?

marked as duplicate by eliasah apache-spark Apr 20 '18 at 13:45

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Just partitionBy and write to JSON:

df.write.partitionBy("clientName").json(output_path)

You'll get structure

s3://path/clientId=some_id/<datafiles>

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