I want to know if Spark knows the partitioning key of the parquet file and uses this information to avoid shuffles.
Running Spark 2.0.1 running local SparkSession. I have a csv dataset that I am saving as parquet file on my disk like so:
val df0 = spark .read .format("csv") .option("header", true) .option("delimiter", ";") .option("inferSchema", false) .load("SomeFile.csv")) val df = df0.repartition(partitionExprs = col("numerocarte"), numPartitions = 42) df.write .mode(SaveMode.Overwrite) .format("parquet") .option("inferSchema", false) .save("SomeFile.parquet")
I am creating 42 partitions by column
numerocarte. This should group multiple
numerocarte to same partition. I don't want to do partitionBy("numerocarte") at the
write time because I don't want one partition per card. It would be millions of them.
After that in another script I read this
SomeFile.parquet parquet file and do some operations on it. In particular I am running a
window function on it where the partitioning is done on the same column that the parquet file was repartitioned by.
import org.apache.spark.sql.expressions.Window import org.apache.spark.sql.functions._ val df2 = spark.read .format("parquet") .option("header", true) .option("inferSchema", false) .load("SomeFile.parquet") val w = Window.partitionBy(col("numerocarte")) .orderBy(col("SomeColumn")) df2.withColumn("NewColumnName", sum(col("dollars").over(w))
read I can see that the
repartition worked as expected and DataFrame
df2 has 42 partitions and in each of them are different cards.
- Does Spark know that the dataframe
df2is partitioned by column
- If it knows, then there will be no shuffle in the window function. True?
- If it does not know, It will do a shuffle in the window function. True?
- If it does not know, how do I tell Spark the data is already partitioned by the right column?
- How can I check a partitioning key of
DataFrame? Is there a command for this? I know how to check number of partitions but how to see partitioning key?
- When I print number of partitions in a file after each step, I have 42 partitions after
readand 200 partitions after
withColumnwhich suggests that Spark repartitioned my
- If I have two different tables repartitioned with the same column, would the join use that information?