What is the difference between DataFrame
repartition() and DataFrameWriter
I hope both are used to "partition data based on dataframe column"? Or is there any difference?
If you run
repartition(COL) you change the partitioning during calculations - you will get
spark.sql.shuffle.partitions (default: 200) partitions. If you then call
.write you will get one directory with many files.
If you run
.write.partitionBy(COL) then as the result you will get as many directories as unique values in COL. This speeds up futher data reading (if you filter by partitioning column) and saves some space on storage (partitioning column is removed from data files).
UPDATE: See @conradlee's answer. He explains in details not only how the directories structure will look like after applying different methods but also what will be resulting number of files in both scenarios.
Watch out: I believe the accepted answer is not quite right! I'm glad you ask this question, because the behavior of these similarly-named functions differs in important and unexpected ways that are not well documented in the official spark documentation.
The first part of the accepted answer is correct: calling
df.repartition(COL, numPartitions=k) will create a dataframe with
k partitions using a hash-based partitioner.
COL here defines the partitioning key--it can be a single column or a list of columns. The hash-based partitioner takes each input row's partition key, hashes it into a space of
k partitions via something like
partition = hash(partitionKey) % k. This guarantees that all rows with the same partition key end up in the same partition. However, rows from multiple partition keys can also end up in the same partition (when a hash collision between the partition keys occurs) and some partitions might be empty.
In summary, the unintuitive aspects of
df.repartition(COL, numPartitions=k) are that
kpartitions may be empty, whereas others may contain rows from multiple partition keys
The behavior of
df.write.partitionBy is quite different, in a way that many users won't expect. Let's say that you want your output files to be date-partitioned, and your data spans over 7 days. Let's also assume that
df has 10 partitions to begin with. When you run
df.write.partitionBy('day'), how many output files should you expect? The answer is 'it depends'. If each partition of your starting partitions in
df contains data from each day, then the answer is 70. If each of your starting partitions in
df contains data from exactly one day, then the answer is 10.
How can we explain this behavior? When you run
df.write, each of the original partitions in
df is written independently. That is, each of your original 10 partitions is sub-partitioned separately on the 'day' column, and a separate file is written for each sub-partition.
I find this behavior rather annoying and wish there were a way to do a global repartitioning when writing dataframes.
repartition() is used to partition data in memory and
partitionBy is used to partition data on disk. They're often used in conjunction as explained in this blog post.
partitionBy can be used to "partition data based on dataframe column", but
repartition() partitions the data in memory and
partitionBy partitions the data on disk.
Let's play around with some code to better understand partitioning. Suppose you have the following CSV data.
first_name,last_name,country Ernesto,Guevara,Argentina Vladimir,Putin,Russia Maria,Sharapova,Russia Bruce,Lee,China Jack,Ma,China
df.repartition(col("country")) will repartition the data by country in memory.
Let's write out the data so we can inspect the contents of each memory partition.
val outputPath = new java.io.File("./tmp/partitioned_by_country/").getCanonicalPath df.repartition(col("country")) .write .csv(outputPath)
Here's how the data is written out on disk:
partitioned_by_country/ part-00002-95acd280-42dc-457e-ad4f-c6c73be6226f-c000.csv part-00044-95acd280-42dc-457e-ad4f-c6c73be6226f-c000.csv part-00059-95acd280-42dc-457e-ad4f-c6c73be6226f-c000.csv
Each file contains data for a single country - the
part-00059-95acd280-42dc-457e-ad4f-c6c73be6226f-c000.csv file contains this China data for example:
Let's write out data to disk with
partitionBy and see how the filesystem output differs.
Here's the code to write out the data to disk partitions.
val outputPath = new java.io.File("./tmp/partitionedBy_disk/").getCanonicalPath df .write .partitionBy("country") .csv(outputPath)
Here's what the data looks like on disk:
partitionedBy_disk/ country=Argentina/ part-00000-906f845c-ecdc-4b37-a13d-099c211527b4.c000.csv country=China/ part-00000-906f845c-ecdc-4b37-a13d-099c211527b4.c000 country=Russia/ part-00000-906f845c-ecdc-4b37-a13d-099c211527b4.c000
Why partition data on disk?
Partitioning data on disk can make certain queries run much faster, as explained in this blog post.