Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

REL-505 Add new ByteswapPartitioner #29

Merged
merged 3 commits into from
Jan 12, 2015

Conversation

markhamstra
Copy link

No description provided.

vnivargi added a commit that referenced this pull request Jan 12, 2015
@vnivargi vnivargi merged commit cec04c0 into alteryx:csd-1.1 Jan 12, 2015
markhamstra pushed a commit that referenced this pull request Apr 18, 2015
Invoking .size on arrays is valid, but requires an implicit conversion to SeqLike. This incurs a compile time overhead and more importantly a runtime overhead, as the Array must be wrapped before the method can be invoked. For example, the difference in generated byte code is:

  public int withSize();
    Code:
       0: getstatic     #23                 // Field scala/Predef$.MODULE$:Lscala/Predef$;
       3: aload_0
       4: invokevirtual #25                 // Method array:()[I
       7: invokevirtual #29                 // Method scala/Predef$.intArrayOps:([I)Lscala/collection/mutable/ArrayOps;
      10: invokeinterface #34,  1           // InterfaceMethod scala/collection/mutable/ArrayOps.size:()I
      15: ireturn

  public int withLength();
    Code:
       0: aload_0
       1: invokevirtual #25                 // Method array:()[I
       4: arraylength
       5: ireturn

Author: sksamuel <sam@sksamuel.com>

Closes apache#5376 from sksamuel/master and squashes the following commits:

77ec261 [sksamuel] Replace use of .size with .length for Arrays.
markhamstra pushed a commit that referenced this pull request Mar 21, 2017
…boxing/unboxing

## What changes were proposed in this pull request?

This PR improve performance of Dataset.map() for primitive types by removing boxing/unbox operations. This is based on [the discussion](apache#16391 (comment)) with cloud-fan.

Current Catalyst generates a method call to a `apply()` method of an anonymous function written in Scala. The types of an argument and return value are `java.lang.Object`. As a result, each method call for a primitive value involves a pair of unboxing and boxing for calling this `apply()` method and a pair of boxing and unboxing for returning from this `apply()` method.

This PR directly calls a specialized version of a `apply()` method without boxing and unboxing. For example, if types of an arguments ant return value is `int`, this PR generates a method call to `apply$mcII$sp`. This PR supports any combination of `Int`, `Long`, `Float`, and `Double`.

The following is a benchmark result using [this program](https://github.com/apache/spark/pull/16391/files) with 4.7x. Here is a Dataset part of this program.

Without this PR
```
OpenJDK 64-Bit Server VM 1.8.0_111-8u111-b14-2ubuntu0.16.04.2-b14 on Linux 4.4.0-47-generic
Intel(R) Xeon(R) CPU E5-2667 v3  3.20GHz
back-to-back map:                        Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
------------------------------------------------------------------------------------------------
RDD                                           1923 / 1952         52.0          19.2       1.0X
DataFrame                                      526 /  548        190.2           5.3       3.7X
Dataset                                       3094 / 3154         32.3          30.9       0.6X
```

With this PR
```
OpenJDK 64-Bit Server VM 1.8.0_111-8u111-b14-2ubuntu0.16.04.2-b14 on Linux 4.4.0-47-generic
Intel(R) Xeon(R) CPU E5-2667 v3  3.20GHz
back-to-back map:                        Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
------------------------------------------------------------------------------------------------
RDD                                           1883 / 1892         53.1          18.8       1.0X
DataFrame                                      502 /  642        199.1           5.0       3.7X
Dataset                                        657 /  784        152.2           6.6       2.9X
```

```java
  def backToBackMap(spark: SparkSession, numRows: Long, numChains: Int): Benchmark = {
    import spark.implicits._
    val rdd = spark.sparkContext.range(0, numRows)
    val ds = spark.range(0, numRows)
    val func = (l: Long) => l + 1
    val benchmark = new Benchmark("back-to-back map", numRows)
...
    benchmark.addCase("Dataset") { iter =>
      var res = ds.as[Long]
      var i = 0
      while (i < numChains) {
        res = res.map(func)
        i += 1
      }
      res.queryExecution.toRdd.foreach(_ => Unit)
    }
    benchmark
  }
```

A motivating example
```java
Seq(1, 2, 3).toDS.map(i => i * 7).show
```

Generated code without this PR
```java
/* 005 */ final class GeneratedIterator extends org.apache.spark.sql.execution.BufferedRowIterator {
/* 006 */   private Object[] references;
/* 007 */   private scala.collection.Iterator[] inputs;
/* 008 */   private scala.collection.Iterator inputadapter_input;
/* 009 */   private UnsafeRow deserializetoobject_result;
/* 010 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder deserializetoobject_holder;
/* 011 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter deserializetoobject_rowWriter;
/* 012 */   private int mapelements_argValue;
/* 013 */   private UnsafeRow mapelements_result;
/* 014 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder mapelements_holder;
/* 015 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter mapelements_rowWriter;
/* 016 */   private UnsafeRow serializefromobject_result;
/* 017 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder serializefromobject_holder;
/* 018 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter serializefromobject_rowWriter;
/* 019 */
/* 020 */   public GeneratedIterator(Object[] references) {
/* 021 */     this.references = references;
/* 022 */   }
/* 023 */
/* 024 */   public void init(int index, scala.collection.Iterator[] inputs) {
/* 025 */     partitionIndex = index;
/* 026 */     this.inputs = inputs;
/* 027 */     inputadapter_input = inputs[0];
/* 028 */     deserializetoobject_result = new UnsafeRow(1);
/* 029 */     this.deserializetoobject_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(deserializetoobject_result, 0);
/* 030 */     this.deserializetoobject_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(deserializetoobject_holder, 1);
/* 031 */
/* 032 */     mapelements_result = new UnsafeRow(1);
/* 033 */     this.mapelements_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(mapelements_result, 0);
/* 034 */     this.mapelements_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(mapelements_holder, 1);
/* 035 */     serializefromobject_result = new UnsafeRow(1);
/* 036 */     this.serializefromobject_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(serializefromobject_result, 0);
/* 037 */     this.serializefromobject_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(serializefromobject_holder, 1);
/* 038 */
/* 039 */   }
/* 040 */
/* 041 */   protected void processNext() throws java.io.IOException {
/* 042 */     while (inputadapter_input.hasNext() && !stopEarly()) {
/* 043 */       InternalRow inputadapter_row = (InternalRow) inputadapter_input.next();
/* 044 */       int inputadapter_value = inputadapter_row.getInt(0);
/* 045 */
/* 046 */       boolean mapelements_isNull = true;
/* 047 */       int mapelements_value = -1;
/* 048 */       if (!false) {
/* 049 */         mapelements_argValue = inputadapter_value;
/* 050 */
/* 051 */         mapelements_isNull = false;
/* 052 */         if (!mapelements_isNull) {
/* 053 */           Object mapelements_funcResult = null;
/* 054 */           mapelements_funcResult = ((scala.Function1) references[0]).apply(mapelements_argValue);
/* 055 */           if (mapelements_funcResult == null) {
/* 056 */             mapelements_isNull = true;
/* 057 */           } else {
/* 058 */             mapelements_value = (Integer) mapelements_funcResult;
/* 059 */           }
/* 060 */
/* 061 */         }
/* 062 */
/* 063 */       }
/* 064 */
/* 065 */       serializefromobject_rowWriter.zeroOutNullBytes();
/* 066 */
/* 067 */       if (mapelements_isNull) {
/* 068 */         serializefromobject_rowWriter.setNullAt(0);
/* 069 */       } else {
/* 070 */         serializefromobject_rowWriter.write(0, mapelements_value);
/* 071 */       }
/* 072 */       append(serializefromobject_result);
/* 073 */       if (shouldStop()) return;
/* 074 */     }
/* 075 */   }
/* 076 */ }
```

Generated code with this PR (lines 48-56 are changed)
```java
/* 005 */ final class GeneratedIterator extends org.apache.spark.sql.execution.BufferedRowIterator {
/* 006 */   private Object[] references;
/* 007 */   private scala.collection.Iterator[] inputs;
/* 008 */   private scala.collection.Iterator inputadapter_input;
/* 009 */   private UnsafeRow deserializetoobject_result;
/* 010 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder deserializetoobject_holder;
/* 011 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter deserializetoobject_rowWriter;
/* 012 */   private int mapelements_argValue;
/* 013 */   private UnsafeRow mapelements_result;
/* 014 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder mapelements_holder;
/* 015 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter mapelements_rowWriter;
/* 016 */   private UnsafeRow serializefromobject_result;
/* 017 */   private org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder serializefromobject_holder;
/* 018 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter serializefromobject_rowWriter;
/* 019 */
/* 020 */   public GeneratedIterator(Object[] references) {
/* 021 */     this.references = references;
/* 022 */   }
/* 023 */
/* 024 */   public void init(int index, scala.collection.Iterator[] inputs) {
/* 025 */     partitionIndex = index;
/* 026 */     this.inputs = inputs;
/* 027 */     inputadapter_input = inputs[0];
/* 028 */     deserializetoobject_result = new UnsafeRow(1);
/* 029 */     this.deserializetoobject_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(deserializetoobject_result, 0);
/* 030 */     this.deserializetoobject_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(deserializetoobject_holder, 1);
/* 031 */
/* 032 */     mapelements_result = new UnsafeRow(1);
/* 033 */     this.mapelements_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(mapelements_result, 0);
/* 034 */     this.mapelements_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(mapelements_holder, 1);
/* 035 */     serializefromobject_result = new UnsafeRow(1);
/* 036 */     this.serializefromobject_holder = new org.apache.spark.sql.catalyst.expressions.codegen.BufferHolder(serializefromobject_result, 0);
/* 037 */     this.serializefromobject_rowWriter = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(serializefromobject_holder, 1);
/* 038 */
/* 039 */   }
/* 040 */
/* 041 */   protected void processNext() throws java.io.IOException {
/* 042 */     while (inputadapter_input.hasNext() && !stopEarly()) {
/* 043 */       InternalRow inputadapter_row = (InternalRow) inputadapter_input.next();
/* 044 */       int inputadapter_value = inputadapter_row.getInt(0);
/* 045 */
/* 046 */       boolean mapelements_isNull = true;
/* 047 */       int mapelements_value = -1;
/* 048 */       if (!false) {
/* 049 */         mapelements_argValue = inputadapter_value;
/* 050 */
/* 051 */         mapelements_isNull = false;
/* 052 */         if (!mapelements_isNull) {
/* 053 */           mapelements_value = ((scala.Function1) references[0]).apply$mcII$sp(mapelements_argValue);
/* 054 */         }
/* 055 */
/* 056 */       }
/* 057 */
/* 058 */       serializefromobject_rowWriter.zeroOutNullBytes();
/* 059 */
/* 060 */       if (mapelements_isNull) {
/* 061 */         serializefromobject_rowWriter.setNullAt(0);
/* 062 */       } else {
/* 063 */         serializefromobject_rowWriter.write(0, mapelements_value);
/* 064 */       }
/* 065 */       append(serializefromobject_result);
/* 066 */       if (shouldStop()) return;
/* 067 */     }
/* 068 */   }
/* 069 */ }
```

Java bytecode for methods for `i => i * 7`
```java
$ javap -c Test\$\$anonfun\$5\$\$anonfun\$apply\$mcV\$sp\$1.class
Compiled from "Test.scala"
public final class org.apache.spark.sql.Test$$anonfun$5$$anonfun$apply$mcV$sp$1 extends scala.runtime.AbstractFunction1$mcII$sp implements scala.Serializable {
  public static final long serialVersionUID;

  public final int apply(int);
    Code:
       0: aload_0
       1: iload_1
       2: invokevirtual #18                 // Method apply$mcII$sp:(I)I
       5: ireturn

  public int apply$mcII$sp(int);
    Code:
       0: iload_1
       1: bipush        7
       3: imul
       4: ireturn

  public final java.lang.Object apply(java.lang.Object);
    Code:
       0: aload_0
       1: aload_1
       2: invokestatic  #29                 // Method scala/runtime/BoxesRunTime.unboxToInt:(Ljava/lang/Object;)I
       5: invokevirtual #31                 // Method apply:(I)I
       8: invokestatic  #35                 // Method scala/runtime/BoxesRunTime.boxToInteger:(I)Ljava/lang/Integer;
      11: areturn

  public org.apache.spark.sql.Test$$anonfun$5$$anonfun$apply$mcV$sp$1(org.apache.spark.sql.Test$$anonfun$5);
    Code:
       0: aload_0
       1: invokespecial #42                 // Method scala/runtime/AbstractFunction1$mcII$sp."<init>":()V
       4: return
}
```
## How was this patch tested?

Added new test suites to `DatasetPrimitiveSuite`.

Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>

Closes apache#17172 from kiszk/SPARK-19008.
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

Successfully merging this pull request may close these issues.

2 participants