[ 
https://issues.apache.org/jira/browse/PARQUET-2159?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=17693637#comment-17693637
 ] 

ASF GitHub Bot commented on PARQUET-2159:
-----------------------------------------

jiangjiguang commented on code in PR #1011:
URL: https://github.com/apache/parquet-mr/pull/1011#discussion_r1118075418


##########
parquet-column/src/main/java/org/apache/parquet/column/values/bitpacking/ParquetReadRouter.java:
##########
@@ -0,0 +1,133 @@
+/*
+ * Licensed to the Apache Software Foundation (ASF) under one
+ * or more contributor license agreements.  See the NOTICE file
+ * distributed with this work for additional information
+ * regarding copyright ownership.  The ASF licenses this file
+ * to you under the Apache License, Version 2.0 (the
+ * "License"); you may not use this file except in compliance
+ * with the License.  You may obtain a copy of the License at
+ *
+ *   http://www.apache.org/licenses/LICENSE-2.0
+ *
+ * Unless required by applicable law or agreed to in writing,
+ * software distributed under the License is distributed on an
+ * "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
+ * KIND, either express or implied.  See the License for the
+ * specific language governing permissions and limitations
+ * under the License.
+ */
+package org.apache.parquet.column.values.bitpacking;
+
+import org.apache.parquet.bytes.ByteBufferInputStream;
+import org.slf4j.Logger;
+import org.slf4j.LoggerFactory;
+
+import java.io.EOFException;
+import java.io.IOException;
+import java.nio.ByteBuffer;
+import java.nio.charset.StandardCharsets;
+import java.nio.file.Files;
+import java.nio.file.Paths;
+import java.util.Arrays;
+import java.util.List;
+import java.util.Set;
+import java.util.stream.Collectors;
+
+/**
+ * Utility class for big data applications (such as Apache Spark and Apache 
Flink).
+ * For Intel CPU, Flags containing avx512vbmi and avx512_vbmi2 can have better 
performance gains.
+ */
+public class ParquetReadRouter {
+  private static final Logger LOG = 
LoggerFactory.getLogger(ParquetReadRouter.class);
+
+  private static final int BITS_PER_BYTE = 8;
+
+  // register of avx512 are 512 bits, and can load up to 64 bytes
+  private static final int BYTES_PER_VECTOR_512 = 64;
+
+  // values are bit packed 8 at a time, so reading bitWidth will always work
+  private static final int NUM_VALUES_TO_PACK = 8;
+
+  private static final VectorSupport vectorSupport;
+
+  static {
+    vectorSupport = getSupportVectorFromCPUFlags();
+  }
+
+  // Dispatches to use vector when available. Directly call 
readBatchUsing512Vector() if you are sure about it.
+  public static void read(int bitWidth, ByteBufferInputStream in, int 
currentCount, int[] currentBuffer) throws IOException {
+    switch (vectorSupport) {
+      case VECTOR_512:
+        readBatchUsing512Vector(bitWidth, in, currentCount, currentBuffer);
+        break;
+      default:
+        readBatch(bitWidth, in, currentCount, currentBuffer);
+    }
+  }
+
+  // Call the method directly if your computer system contains avx512vbmi and 
avx512_vbmi2 CPU Flags
+  public static void readBatchUsing512Vector(int bitWidth, 
ByteBufferInputStream in, int currentCount, int[] currentBuffer) throws 
IOException {
+    BytePacker packer = Packer.LITTLE_ENDIAN.newBytePacker(bitWidth);
+    BytePacker packerVector = 
Packer.LITTLE_ENDIAN.newBytePackerVector(bitWidth);
+    int valueIndex = 0;
+    int byteIndex = 0;
+    int unpackCount = packerVector.getUnpackCount();
+    int inputByteCountPerVector = packerVector.getUnpackCount() / 
BITS_PER_BYTE * bitWidth;
+    int totalByteCount = currentCount * bitWidth / BITS_PER_BYTE;
+    int totalByteCountVector = totalByteCount - BYTES_PER_VECTOR_512;
+    ByteBuffer buffer = in.slice(totalByteCount);
+    if (buffer.hasArray()) {
+      for (; byteIndex < totalByteCountVector; byteIndex += 
inputByteCountPerVector, valueIndex += unpackCount) {
+        packerVector.unpackValuesUsingVector(buffer.array(), 
buffer.arrayOffset() + buffer.position() + byteIndex, currentBuffer, 
valueIndex);
+      }
+      // If the remaining bytes size <= {BYTES_PER_512VECTOR}, the remaining 
bytes are unpacked by packer
+      for (; byteIndex < totalByteCount; byteIndex += bitWidth, valueIndex += 
NUM_VALUES_TO_PACK) {
+        packer.unpack8Values(buffer.array(), buffer.arrayOffset() + 
buffer.position() + byteIndex, currentBuffer, valueIndex);
+      }
+    } else {
+      for (; byteIndex < totalByteCountVector; byteIndex += 
inputByteCountPerVector, valueIndex += unpackCount) {
+        packerVector.unpackValuesUsingVector(buffer, buffer.position() + 
byteIndex, currentBuffer, valueIndex);
+      }
+      for (; byteIndex < totalByteCount; byteIndex += bitWidth, valueIndex += 
NUM_VALUES_TO_PACK) {
+        packer.unpack8Values(buffer, buffer.position() + byteIndex, 
currentBuffer, valueIndex);
+      }
+    }
+  }
+
+  // Call the method directly if your computer system doesn't contain 
avx512vbmi and avx512_vbmi2 CPU Flags
+  public static void readBatch(int bitWidth, ByteBufferInputStream in, int 
currentCount, int[] currentBuffer) throws EOFException {
+    BytePacker packer = Packer.LITTLE_ENDIAN.newBytePacker(bitWidth);
+    int valueIndex = 0;
+    while (valueIndex < currentCount) {
+      ByteBuffer buffer = in.slice(bitWidth);
+      packer.unpack8Values(buffer, buffer.position(), currentBuffer, 
valueIndex);
+      valueIndex += NUM_VALUES_TO_PACK;
+    }
+  }
+
+  private static VectorSupport getSupportVectorFromCPUFlags() {
+    try {
+      String os = System.getProperty("os.name");
+      if (os == null || !os.toLowerCase().startsWith("linux")) {
+        return VectorSupport.NONE;
+      }
+      List<String> allLines = Files.readAllLines(Paths.get("/proc/cpuinfo"), 
StandardCharsets.UTF_8);
+      for (String line : allLines) {
+        if (line != null && line.startsWith("flags")) {
+          int index = line.indexOf(":");
+          if (index < 0) {
+            continue;
+          }
+          line = line.substring(index + 1);
+          Set<String> flagsSet = Arrays.stream(line.split(" 
")).collect(Collectors.toSet());
+          if (flagsSet.contains("avx512vbmi") && 
flagsSet.contains("avx512_vbmi2")) {
+            return VectorSupport.VECTOR_512;
+          }
+        }
+      }

Review Comment:
   @gszadovszky I got it. As far as I know, there is no such library available 
for java. I think we can try to achieve implement a library like that with JNI 
in the future. But there is no time line. If I have finished it, I will update 
here.





> Parquet bit-packing de/encode optimization
> ------------------------------------------
>
>                 Key: PARQUET-2159
>                 URL: https://issues.apache.org/jira/browse/PARQUET-2159
>             Project: Parquet
>          Issue Type: Improvement
>          Components: parquet-mr
>    Affects Versions: 1.13.0
>            Reporter: Fang-Xie
>            Assignee: Fang-Xie
>            Priority: Major
>             Fix For: 1.13.0
>
>         Attachments: image-2022-06-15-22-56-08-396.png, 
> image-2022-06-15-22-57-15-964.png, image-2022-06-15-22-58-01-442.png, 
> image-2022-06-15-22-58-40-704.png
>
>
> Current Spark use Parquet-mr as parquet reader/writer library, but the 
> built-in bit-packing en/decode is not efficient enough. 
> Our optimization for Parquet bit-packing en/decode with jdk.incubator.vector 
> in Open JDK18 brings prominent performance improvement.
> Due to Vector API is added to OpenJDK since 16, So this optimization request 
> JDK16 or higher.
> *Below are our test results*
> Functional test is based on open-source parquet-mr Bit-pack decoding 
> function: *_public final void unpack8Values(final byte[] in, final int inPos, 
> final int[] out, final int outPos)_* __
> compared with our implementation with vector API *_public final void 
> unpack8Values_vec(final byte[] in, final int inPos, final int[] out, final 
> int outPos)_*
> We tested 10 pairs (open source parquet bit unpacking vs ours optimized 
> vectorized SIMD implementation) decode function with bit 
> width=\{1,2,3,4,5,6,7,8,9,10}, below are test results:
> !image-2022-06-15-22-56-08-396.png|width=437,height=223!
> We integrated our bit-packing decode implementation into parquet-mr, tested 
> the parquet batch reader ability from Spark VectorizedParquetRecordReader 
> which get parquet column data by the batch way. We construct parquet file 
> with different row count and column count, the column data type is Int32, the 
> maximum int value is 127 which satisfies bit pack encode with bit width=7,   
> the count of the row is from 10k to 100 million and the count of the column 
> is from 1 to 4.
> !image-2022-06-15-22-57-15-964.png|width=453,height=229!
> !image-2022-06-15-22-58-01-442.png|width=439,height=217!
> !image-2022-06-15-22-58-40-704.png|width=415,height=208!



--
This message was sent by Atlassian Jira
(v8.20.10#820010)

Reply via email to