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We have huge amounts of server data stored in S3 (soon to be in a Parquet format). The data needs some transformation, and so it can't be a straight copy from S3. I'll be using Spark to access the data, but I'm wondering if instead of manipulating it with Spark, writing back out to S3, and then copying to Redshift if I can just skip a step and run a query to pull/transform the data and then copy it straight to Redshift?

1 Answer 1

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Sure thing, totally possible.

Scala code to read parquet (taken from here)

val people: RDD[Person] = ... 
people.write.parquet("people.parquet")
val parquetFile = sqlContext.read.parquet("people.parquet") //data frame

Scala code to write to redshift (taken from here)

parquetFile.write
.format("com.databricks.spark.redshift")
.option("url", "jdbc:redshift://redshifthost:5439/database?user=username&password=pass")
.option("dbtable", "my_table_copy")
.option("tempdir", "s3n://path/for/temp/data")
.mode("error")
.save()
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  • Any thoughts on how efficient this is in comparison to parquet -> csv -> S3 -> copy statement to redshift from S3 Commented Mar 9, 2017 at 16:41
  • @marcin_koss, I haven't measured that, but generally speaking, the less transformations, the better. With S3 you also have to keep in mind possible cost of writing / reading data from it.
    – evgenii
    Commented Dec 5, 2017 at 9:44

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