I've started using Spark SQL and DataFrames in Spark 1.4.0. I'm wanting to define a custom partitioner on DataFrames, in Scala, but not seeing how to do this.

One of the data tables I'm working with contains a list of transactions, by account, silimar to the following example.

Account   Date       Type       Amount
1001    2014-04-01  Purchase    100.00
1001    2014-04-01  Purchase     50.00
1001    2014-04-05  Purchase     70.00
1001    2014-04-01  Payment    -150.00
1002    2014-04-01  Purchase     80.00
1002    2014-04-02  Purchase     22.00
1002    2014-04-04  Payment    -120.00
1002    2014-04-04  Purchase     60.00
1003    2014-04-02  Purchase    210.00
1003    2014-04-03  Purchase     15.00

At least initially, most of the calculations will occur between the transactions within an account. So I would want to have the data partitioned so that all of the transactions for an account are in the same Spark partition.

But I'm not seeing a way to define this. The DataFrame class has a method called 'repartition(Int)', where you can specify the number of partitions to create. But I'm not seeing any method available to define a custom partitioner for a DataFrame, such as can be specified for an RDD.

The source data is stored in Parquet. I did see that when writing a DataFrame to Parquet, you can specify a column to partition by, so presumably I could tell Parquet to partition it's data by the 'Account' column. But there could be millions of accounts, and if I'm understanding Parquet correctly, it would create a distinct directory for each Account, so that didn't sound like a reasonable solution.

Is there a way to get Spark to partition this DataFrame so that all data for an Account is in the same partition?

  • check this link stackoverflow.com/questions/23127329/… – Abhishek Choudhary Jun 23 '15 at 8:10
  • If you can tell Parquet to partition by account, you can probably partition by int(account/someInteger) and thereby get a reasonable number of accounts per directory. – Paul Jun 23 '15 at 12:26
  • 1
    @ABC: I did see that link. Was looking for the equivalent of that partitionBy(Partitioner) method, but for DataFrames instead of RDDs. I do now see that partitionBy is only available for Pair RDDs, not sure why that is. – rake Jun 23 '15 at 16:40
  • @Paul: I did consider doing what you describe. A few things held me back: – rake Jun 23 '15 at 16:48
  • continuing.... (1) That is for "Parquet-partitioning". I wasn't able to find any docs that state that Spark-partitioning will actually use Parquet-partitioning. (2) If I understand the Parquet docs, I need to define a new field "foo", then each Parquet directory would have a name like "foo=123". But if I construct a query involving AccountID, how would Spark/hive/parquet know that there was any linkage between foo and AccountID? – rake Jun 23 '15 at 17:00
up vote 144 down vote accepted

Spark >= 2.3.0

SPARK-22614 exposes range partitioning.

val partitionedByRange = df.repartitionByRange(42, $"k")

// == Parsed Logical Plan ==
// 'RepartitionByExpression ['k ASC NULLS FIRST], 42
// +- AnalysisBarrier Project [_1#2 AS k#5, _2#3 AS v#6]
// == Analyzed Logical Plan ==
// k: string, v: int
// RepartitionByExpression [k#5 ASC NULLS FIRST], 42
// +- Project [_1#2 AS k#5, _2#3 AS v#6]
//    +- LocalRelation [_1#2, _2#3]
// == Optimized Logical Plan ==
// RepartitionByExpression [k#5 ASC NULLS FIRST], 42
// +- LocalRelation [k#5, v#6]
// == Physical Plan ==
// Exchange rangepartitioning(k#5 ASC NULLS FIRST, 42)
// +- LocalTableScan [k#5, v#6]

SPARK-22389 exposes external format partitioning in the Data Source API v2.

Spark >= 1.6.0

In Spark >= 1.6 it is possible to use partitioning by column for query and caching. See: SPARK-11410 and SPARK-4849 using repartition method:

val df = Seq(
  ("A", 1), ("B", 2), ("A", 3), ("C", 1)
).toDF("k", "v")

val partitioned = df.repartition($"k")

// scala> df.repartition($"k").explain(true)
// == Parsed Logical Plan ==
// 'RepartitionByExpression ['k], None
// +- Project [_1#5 AS k#7,_2#6 AS v#8]
//    +- LogicalRDD [_1#5,_2#6], MapPartitionsRDD[3] at rddToDataFrameHolder at <console>:27
// == Analyzed Logical Plan ==
// k: string, v: int
// RepartitionByExpression [k#7], None
// +- Project [_1#5 AS k#7,_2#6 AS v#8]
//    +- LogicalRDD [_1#5,_2#6], MapPartitionsRDD[3] at rddToDataFrameHolder at <console>:27
// == Optimized Logical Plan ==
// RepartitionByExpression [k#7], None
// +- Project [_1#5 AS k#7,_2#6 AS v#8]
//    +- LogicalRDD [_1#5,_2#6], MapPartitionsRDD[3] at rddToDataFrameHolder at <console>:27
// == Physical Plan ==
// TungstenExchange hashpartitioning(k#7,200), None
// +- Project [_1#5 AS k#7,_2#6 AS v#8]
//    +- Scan PhysicalRDD[_1#5,_2#6]

Unlike RDDs Spark Dataset (including Dataset[Row] a.k.a DataFrame) cannot use custom partitioner as for now. You can typically address that by creating an artificial partitioning column but it won't give you the same flexibility.

Spark < 1.6.0:

One thing you can do is to pre-partition input data before you create a DataFrame

import org.apache.spark.sql.types._
import org.apache.spark.sql.Row
import org.apache.spark.HashPartitioner

val schema = StructType(Seq(
  StructField("x", StringType, false),
  StructField("y", LongType, false),
  StructField("z", DoubleType, false)

val rdd = sc.parallelize(Seq(
  Row("foo", 1L, 0.5), Row("bar", 0L, 0.0), Row("??", -1L, 2.0),
  Row("foo", -1L, 0.0), Row("??", 3L, 0.6), Row("bar", -3L, 0.99)

val partitioner = new HashPartitioner(5) 

val partitioned = rdd.map(r => (r.getString(0), r))

val df = sqlContext.createDataFrame(partitioned, schema)

Since DataFrame creation from an RDD requires only a simple map phase existing partition layout should be preserved*:

assert(df.rdd.partitions == partitioned.partitions)

The same way you can repartition existing DataFrame:

  df.rdd.map(r => (r.getInt(1), r)).partitionBy(partitioner).values,

So it looks like it is not impossible. The question remains if it make sense at all. I will argue that most of the time it doesn't:

  1. Repartitioning is an expensive process. In a typical scenario most of the data has to be serialized, shuffled and deserialized. From the other hand number of operations which can benefit from a pre-partitioned data is relatively small and is further limited if internal API is not designed to leverage this property.

    • joins in some scenarios, but it would require an internal support,
    • window functions calls with matching partitioner. Same as above, limited to a single window definition. It is already partitioned internally though, so pre-partitioning may be redundant,
    • simple aggregations with GROUP BY - it is possible to reduce memory footprint of the temporary buffers**, but overall cost is much higher. More or less equivalent to groupByKey.mapValues(_.reduce) (current behavior) vs reduceByKey (pre-partitioning). Unlikely to be useful in practice.
    • data compression with SqlContext.cacheTable. Since it looks like it is using run length encoding, applying OrderedRDDFunctions.repartitionAndSortWithinPartitions could improve compression ratio.
  2. Performance is highly dependent on a distribution of the keys. If it is skewed it will result in a suboptimal resource utilization. In the worst case scenario it will be impossible to finish the job at all.

  3. A whole point of using a high level declarative API is to isolate yourself from a low level implementation details. As already mentioned by @dwysakowicz and @RomiKuntsman an optimization is a job of the Catalyst Optimizer. It is a pretty sophisticated beast and I really doubt you can easily improve on that without diving much deeper into its internals.

Related concepts

Partitioning with JDBC sources:

JDBC data sources support predicates argument. It can be used as follows:

sqlContext.read.jdbc(url, table, Array("foo = 1", "foo = 3"), props)

It creates a single JDBC partition per predicate. Keep in mind that if sets created using individual predicates are not disjoint you'll see duplicates in the resulting table.

partitionBy method in DataFrameWriter:

Spark DataFrameWriter provides partitionBy method which can be used to "partition" data on write. It separates data on write using provided set of columns

val df = Seq(
  ("foo", 1.0), ("bar", 2.0), ("foo", 1.5), ("bar", 2.6)
).toDF("k", "v")


This enables predicate push down on read for queries based on key:

val df1 = sqlContext.read.schema(df.schema).json("/tmp/foo.json")
df1.where($"k" === "bar")

but it is not equivalent to DataFrame.repartition. In particular aggregations like:

val cnts = df1.groupBy($"k").sum()

will still require TungstenExchange:


// == Physical Plan ==
// TungstenAggregate(key=[k#90], functions=[(sum(v#91),mode=Final,isDistinct=false)], output=[k#90,sum(v)#93])
// +- TungstenExchange hashpartitioning(k#90,200), None
//    +- TungstenAggregate(key=[k#90], functions=[(sum(v#91),mode=Partial,isDistinct=false)], output=[k#90,sum#99])
//       +- Scan JSONRelation[k#90,v#91] InputPaths: file:/tmp/foo.json

bucketBy method in DataFrameWriter (Spark >= 2.0):

bucketBy has similar applications as partitionBy but it is available only for tables (saveAsTable). Bucketing information can used to optimize joins:

// Temporarily disable broadcast joins
spark.conf.set("spark.sql.autoBroadcastJoinThreshold", -1)

df.write.bucketBy(42, "k").saveAsTable("df1")
val df2 = Seq(("A", -1.0), ("B", 2.0)).toDF("k", "v2")
df2.write.bucketBy(42, "k").saveAsTable("df2")

// == Physical Plan ==
// *Project [k#41, v#42, v2#47]
// +- *SortMergeJoin [k#41], [k#46], Inner
//    :- *Sort [k#41 ASC NULLS FIRST], false, 0
//    :  +- *Project [k#41, v#42]
//    :     +- *Filter isnotnull(k#41)
//    :        +- *FileScan parquet default.df1[k#41,v#42] Batched: true, Format: Parquet, Location: InMemoryFileIndex[file:/spark-warehouse/df1], PartitionFilters: [], PushedFilters: [IsNotNull(k)], ReadSchema: struct<k:string,v:int>
//    +- *Sort [k#46 ASC NULLS FIRST], false, 0
//       +- *Project [k#46, v2#47]
//          +- *Filter isnotnull(k#46)
//             +- *FileScan parquet default.df2[k#46,v2#47] Batched: true, Format: Parquet, Location: InMemoryFileIndex[file:/spark-warehouse/df2], PartitionFilters: [], PushedFilters: [IsNotNull(k)], ReadSchema: struct<k:string,v2:double>

* By partition layout I mean only a data distribution. partitioned RDD has no longer a partitioner. ** Assuming no early projection. If aggregation covers only small subset of columns there is probably no gain whatsoever.

  • @bychance Yes and no. Data layout will be preserved but AFAIK it won't give you benefits like partition pruning. – zero323 May 27 '16 at 18:33
  • @zero323 Thanks, is there a way to check partition allocation of parquet file to validate df.save.write indeed save the layout? And if I do df.repartition("A"), then do df.write.repartitionBy("B"), the physical folder structure will be partitioned by B, and within each B value folder, will it still keep the partition by A? – bychance May 27 '16 at 22:21
  • 1
    @bychance DataFrameWriter.partitionBy is logically not the same as DataFrame.repartition. Former on doesn't shuffle, it simply separates the output. Regarding the first question.- data is saved per partition and there is no shuffle. You can easily check that by reading individual files. But Spark alone has no way to know about it if this is what you really want. – zero323 May 28 '16 at 6:53

In Spark < 1.6 If you create a HiveContext, not the plain old SqlContext you can use the HiveQL DISTRIBUTE BY colX... (ensures each of N reducers gets non-overlapping ranges of x) & CLUSTER BY colX... (shortcut for Distribute By and Sort By) for example;

hiveCtx.sql("select * from partitionMe DISTRIBUTE BY accountId SORT BY accountId, date")

Not sure how this fits in with Spark DF api. These keywords aren't supported in the normal SqlContext (note you dont need to have a hive meta store to use the HiveContext)

EDIT: Spark 1.6+ now has this in the native DataFrame API

  • 1
    Are the partitions are preserved as the dataframe is saved? – Sim Sep 24 '15 at 1:44
  • how do you control how many partitions you can have in the hive ql example? e.g. in the pair RDD approach, you can do this to create 5 partitions: val partitioner = new HashPartitioner(5) – Minnie Shi Jan 20 '16 at 3:24
  • ok, found answer, it can be done like this: sqlContext.setConf("spark.sql.shuffle.partitions", "5") I could not edit previous comment as i missed 5 mins limit – Minnie Shi Jan 20 '16 at 4:05

Use the DataFrame returned by:


There is no explicit way to use partitionBy on a DataFrame, only on a PairRDD, but when you sort a DataFrame, it will use that in it's LogicalPlan and that will help when you need to make calculations on each Account.

I just stumbled upon the same exact issue, with a dataframe that I want to partition by account. I assume that when you say "want to have the data partitioned so that all of the transactions for an account are in the same Spark partition", you want it for scale and performance, but your code doesn't depend on it (like using mapPartitions() etc), right?

  • 1
    What about if your code does depend on it because your are using mapPartitions? – NightWolf Aug 10 '15 at 4:02
  • 1
    You can convert the DataFrame to a RDD, and then Partition it (for example using aggregatByKey() and pass a custom Partitioner) – Romi Kuntsman Aug 10 '15 at 9:36

I was able to do this using RDD. But I don't know if this is an acceptable solution for you. Once you have the DF available as an RDD, you can apply repartitionAndSortWithinPartitions to perform custom repartitioning of data.

Here is a sample I used:

class DatePartitioner(partitions: Int) extends Partitioner {

  override def getPartition(key: Any): Int = {
    val start_time: Long = key.asInstanceOf[Long]
    Objects.hash(Array(start_time)) % partitions

  override def numPartitions: Int = partitions

  .repartitionAndSortWithinPartitions(new DatePartitioner(24))
  .map { v => v._2 }

So to start with some kind of answer : ) - You can't

I am not an expert, but as far as I understand DataFrames, they are not equal to rdd and DataFrame has no such thing as Partitioner.

Generally DataFrame's idea is to provide another level of abstraction that handles such problems itself. The queries on DataFrame are translated into logical plan that is further translated to operations on RDDs. The partitioning you suggested will probably be applied automatically or at least should be.

If you don't trust SparkSQL that it will provide some kind of optimal job, you can always transform DataFrame to RDD[Row] as suggested in of the comments.

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