| /* |
| * 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.cassandra.hadoop.cql3; |
| |
| import java.io.IOException; |
| import java.util.*; |
| import java.util.concurrent.*; |
| |
| import com.datastax.driver.core.Cluster; |
| import com.datastax.driver.core.Host; |
| import com.datastax.driver.core.Metadata; |
| import com.datastax.driver.core.ResultSet; |
| import com.datastax.driver.core.Row; |
| import com.datastax.driver.core.Session; |
| import com.datastax.driver.core.TokenRange; |
| |
| import org.apache.cassandra.config.SchemaConstants; |
| import org.apache.hadoop.conf.Configuration; |
| import org.apache.hadoop.mapred.InputSplit; |
| import org.apache.hadoop.mapred.JobConf; |
| import org.apache.hadoop.mapred.RecordReader; |
| import org.apache.hadoop.mapred.Reporter; |
| import org.apache.hadoop.mapreduce.JobContext; |
| import org.apache.hadoop.mapreduce.TaskAttemptContext; |
| import org.apache.hadoop.mapreduce.TaskAttemptID; |
| import org.slf4j.Logger; |
| import org.slf4j.LoggerFactory; |
| import org.apache.cassandra.db.SystemKeyspace; |
| import org.apache.cassandra.dht.*; |
| import org.apache.cassandra.thrift.KeyRange; |
| import org.apache.cassandra.hadoop.*; |
| |
| import static java.util.stream.Collectors.toMap; |
| |
| /** |
| * Hadoop InputFormat allowing map/reduce against Cassandra rows within one ColumnFamily. |
| * |
| * At minimum, you need to set the KS and CF in your Hadoop job Configuration. |
| * The ConfigHelper class is provided to make this |
| * simple: |
| * ConfigHelper.setInputColumnFamily |
| * |
| * You can also configure the number of rows per InputSplit with |
| * 1: ConfigHelper.setInputSplitSize. The default split size is 64k rows. |
| * or |
| * 2: ConfigHelper.setInputSplitSizeInMb. InputSplit size in MB with new, more precise method |
| * If no value is provided for InputSplitSizeInMb, we default to using InputSplitSize. |
| * |
| * CQLConfigHelper.setInputCQLPageRowSize. The default page row size is 1000. You |
| * should set it to "as big as possible, but no bigger." It set the LIMIT for the CQL |
| * query, so you need set it big enough to minimize the network overhead, and also |
| * not too big to avoid out of memory issue. |
| * |
| * other native protocol connection parameters in CqlConfigHelper |
| */ |
| public class CqlInputFormat extends org.apache.hadoop.mapreduce.InputFormat<Long, Row> implements org.apache.hadoop.mapred.InputFormat<Long, Row> |
| { |
| public static final String MAPRED_TASK_ID = "mapred.task.id"; |
| private static final Logger logger = LoggerFactory.getLogger(CqlInputFormat.class); |
| private String keyspace; |
| private String cfName; |
| private IPartitioner partitioner; |
| |
| public RecordReader<Long, Row> getRecordReader(InputSplit split, JobConf jobConf, final Reporter reporter) |
| throws IOException |
| { |
| TaskAttemptContext tac = HadoopCompat.newMapContext( |
| jobConf, |
| TaskAttemptID.forName(jobConf.get(MAPRED_TASK_ID)), |
| null, |
| null, |
| null, |
| new ReporterWrapper(reporter), |
| null); |
| |
| |
| CqlRecordReader recordReader = new CqlRecordReader(); |
| recordReader.initialize((org.apache.hadoop.mapreduce.InputSplit)split, tac); |
| return recordReader; |
| } |
| |
| @Override |
| public org.apache.hadoop.mapreduce.RecordReader<Long, Row> createRecordReader( |
| org.apache.hadoop.mapreduce.InputSplit arg0, TaskAttemptContext arg1) throws IOException, |
| InterruptedException |
| { |
| return new CqlRecordReader(); |
| } |
| |
| protected void validateConfiguration(Configuration conf) |
| { |
| if (ConfigHelper.getInputKeyspace(conf) == null || ConfigHelper.getInputColumnFamily(conf) == null) |
| { |
| throw new UnsupportedOperationException("you must set the keyspace and table with setInputColumnFamily()"); |
| } |
| if (ConfigHelper.getInputInitialAddress(conf) == null) |
| throw new UnsupportedOperationException("You must set the initial output address to a Cassandra node with setInputInitialAddress"); |
| if (ConfigHelper.getInputPartitioner(conf) == null) |
| throw new UnsupportedOperationException("You must set the Cassandra partitioner class with setInputPartitioner"); |
| } |
| |
| public List<org.apache.hadoop.mapreduce.InputSplit> getSplits(JobContext context) throws IOException |
| { |
| Configuration conf = HadoopCompat.getConfiguration(context); |
| |
| validateConfiguration(conf); |
| |
| keyspace = ConfigHelper.getInputKeyspace(conf); |
| cfName = ConfigHelper.getInputColumnFamily(conf); |
| partitioner = ConfigHelper.getInputPartitioner(conf); |
| logger.trace("partitioner is {}", partitioner); |
| |
| // canonical ranges, split into pieces, fetching the splits in parallel |
| ExecutorService executor = new ThreadPoolExecutor(0, 128, 60L, TimeUnit.SECONDS, new LinkedBlockingQueue<Runnable>()); |
| List<org.apache.hadoop.mapreduce.InputSplit> splits = new ArrayList<>(); |
| |
| try (Cluster cluster = CqlConfigHelper.getInputCluster(ConfigHelper.getInputInitialAddress(conf).split(","), conf); |
| Session session = cluster.connect()) |
| { |
| List<Future<List<org.apache.hadoop.mapreduce.InputSplit>>> splitfutures = new ArrayList<>(); |
| KeyRange jobKeyRange = ConfigHelper.getInputKeyRange(conf); |
| Range<Token> jobRange = null; |
| if (jobKeyRange != null) |
| { |
| if (jobKeyRange.start_key != null) |
| { |
| if (!partitioner.preservesOrder()) |
| throw new UnsupportedOperationException("KeyRange based on keys can only be used with a order preserving partitioner"); |
| if (jobKeyRange.start_token != null) |
| throw new IllegalArgumentException("only start_key supported"); |
| if (jobKeyRange.end_token != null) |
| throw new IllegalArgumentException("only start_key supported"); |
| jobRange = new Range<>(partitioner.getToken(jobKeyRange.start_key), |
| partitioner.getToken(jobKeyRange.end_key)); |
| } |
| else if (jobKeyRange.start_token != null) |
| { |
| jobRange = new Range<>(partitioner.getTokenFactory().fromString(jobKeyRange.start_token), |
| partitioner.getTokenFactory().fromString(jobKeyRange.end_token)); |
| } |
| else |
| { |
| logger.warn("ignoring jobKeyRange specified without start_key or start_token"); |
| } |
| } |
| |
| Metadata metadata = cluster.getMetadata(); |
| |
| // canonical ranges and nodes holding replicas |
| Map<TokenRange, Set<Host>> masterRangeNodes = getRangeMap(keyspace, metadata); |
| |
| for (TokenRange range : masterRangeNodes.keySet()) |
| { |
| if (jobRange == null) |
| { |
| // for each tokenRange, pick a live owner and ask it to compute bite-sized splits |
| splitfutures.add(executor.submit(new SplitCallable(range, masterRangeNodes.get(range), conf, session))); |
| } |
| else |
| { |
| TokenRange jobTokenRange = rangeToTokenRange(metadata, jobRange); |
| if (range.intersects(jobTokenRange)) |
| { |
| for (TokenRange intersection: range.intersectWith(jobTokenRange)) |
| { |
| // for each tokenRange, pick a live owner and ask it to compute bite-sized splits |
| splitfutures.add(executor.submit(new SplitCallable(intersection, masterRangeNodes.get(range), conf, session))); |
| } |
| } |
| } |
| } |
| |
| // wait until we have all the results back |
| for (Future<List<org.apache.hadoop.mapreduce.InputSplit>> futureInputSplits : splitfutures) |
| { |
| try |
| { |
| splits.addAll(futureInputSplits.get()); |
| } |
| catch (Exception e) |
| { |
| throw new IOException("Could not get input splits", e); |
| } |
| } |
| } |
| finally |
| { |
| executor.shutdownNow(); |
| } |
| |
| assert splits.size() > 0; |
| Collections.shuffle(splits, new Random(System.nanoTime())); |
| return splits; |
| } |
| |
| private TokenRange rangeToTokenRange(Metadata metadata, Range<Token> range) |
| { |
| return metadata.newTokenRange(metadata.newToken(partitioner.getTokenFactory().toString(range.left)), |
| metadata.newToken(partitioner.getTokenFactory().toString(range.right))); |
| } |
| |
| private Map<TokenRange, Long> getSubSplits(String keyspace, String cfName, TokenRange range, Configuration conf, Session session) |
| { |
| int splitSize = ConfigHelper.getInputSplitSize(conf); |
| int splitSizeMb = ConfigHelper.getInputSplitSizeInMb(conf); |
| try |
| { |
| return describeSplits(keyspace, cfName, range, splitSize, splitSizeMb, session); |
| } |
| catch (Exception e) |
| { |
| throw new RuntimeException(e); |
| } |
| } |
| |
| private Map<TokenRange, Set<Host>> getRangeMap(String keyspace, Metadata metadata) |
| { |
| return metadata.getTokenRanges() |
| .stream() |
| .collect(toMap(p -> p, p -> metadata.getReplicas('"' + keyspace + '"', p))); |
| } |
| |
| private Map<TokenRange, Long> describeSplits(String keyspace, String table, TokenRange tokenRange, int splitSize, int splitSizeMb, Session session) |
| { |
| String query = String.format("SELECT mean_partition_size, partitions_count " + |
| "FROM %s.%s " + |
| "WHERE keyspace_name = ? AND table_name = ? AND range_start = ? AND range_end = ?", |
| SchemaConstants.SYSTEM_KEYSPACE_NAME, |
| SystemKeyspace.SIZE_ESTIMATES); |
| |
| ResultSet resultSet = session.execute(query, keyspace, table, tokenRange.getStart().toString(), tokenRange.getEnd().toString()); |
| |
| Row row = resultSet.one(); |
| |
| long meanPartitionSize = 0; |
| long partitionCount = 0; |
| int splitCount = 0; |
| |
| if (row != null) |
| { |
| meanPartitionSize = row.getLong("mean_partition_size"); |
| partitionCount = row.getLong("partitions_count"); |
| |
| splitCount = splitSizeMb > 0 |
| ? (int)(meanPartitionSize * partitionCount / splitSizeMb / 1024 / 1024) |
| : (int)(partitionCount / splitSize); |
| } |
| |
| // If we have no data on this split or the size estimate is 0, |
| // return the full split i.e., do not sub-split |
| // Assume smallest granularity of partition count available from CASSANDRA-7688 |
| if (splitCount == 0) |
| { |
| Map<TokenRange, Long> wrappedTokenRange = new HashMap<>(); |
| wrappedTokenRange.put(tokenRange, (long) 128); |
| return wrappedTokenRange; |
| } |
| |
| List<TokenRange> splitRanges = tokenRange.splitEvenly(splitCount); |
| Map<TokenRange, Long> rangesWithLength = new HashMap<>(); |
| for (TokenRange range : splitRanges) |
| rangesWithLength.put(range, partitionCount/splitCount); |
| |
| return rangesWithLength; |
| } |
| |
| // Old Hadoop API |
| public InputSplit[] getSplits(JobConf jobConf, int numSplits) throws IOException |
| { |
| TaskAttemptContext tac = HadoopCompat.newTaskAttemptContext(jobConf, new TaskAttemptID()); |
| List<org.apache.hadoop.mapreduce.InputSplit> newInputSplits = this.getSplits(tac); |
| InputSplit[] oldInputSplits = new InputSplit[newInputSplits.size()]; |
| for (int i = 0; i < newInputSplits.size(); i++) |
| oldInputSplits[i] = (ColumnFamilySplit)newInputSplits.get(i); |
| return oldInputSplits; |
| } |
| |
| /** |
| * Gets a token tokenRange and splits it up according to the suggested |
| * size into input splits that Hadoop can use. |
| */ |
| class SplitCallable implements Callable<List<org.apache.hadoop.mapreduce.InputSplit>> |
| { |
| |
| private final TokenRange tokenRange; |
| private final Set<Host> hosts; |
| private final Configuration conf; |
| private final Session session; |
| |
| public SplitCallable(TokenRange tr, Set<Host> hosts, Configuration conf, Session session) |
| { |
| this.tokenRange = tr; |
| this.hosts = hosts; |
| this.conf = conf; |
| this.session = session; |
| } |
| |
| public List<org.apache.hadoop.mapreduce.InputSplit> call() throws Exception |
| { |
| ArrayList<org.apache.hadoop.mapreduce.InputSplit> splits = new ArrayList<>(); |
| Map<TokenRange, Long> subSplits; |
| subSplits = getSubSplits(keyspace, cfName, tokenRange, conf, session); |
| // turn the sub-ranges into InputSplits |
| String[] endpoints = new String[hosts.size()]; |
| |
| // hadoop needs hostname, not ip |
| int endpointIndex = 0; |
| for (Host endpoint : hosts) |
| endpoints[endpointIndex++] = endpoint.getAddress().getHostName(); |
| |
| boolean partitionerIsOpp = partitioner instanceof OrderPreservingPartitioner || partitioner instanceof ByteOrderedPartitioner; |
| |
| for (Map.Entry<TokenRange, Long> subSplitEntry : subSplits.entrySet()) |
| { |
| List<TokenRange> ranges = subSplitEntry.getKey().unwrap(); |
| for (TokenRange subrange : ranges) |
| { |
| ColumnFamilySplit split = |
| new ColumnFamilySplit( |
| partitionerIsOpp ? |
| subrange.getStart().toString().substring(2) : subrange.getStart().toString(), |
| partitionerIsOpp ? |
| subrange.getEnd().toString().substring(2) : subrange.getEnd().toString(), |
| subSplitEntry.getValue(), |
| endpoints); |
| |
| logger.trace("adding {}", split); |
| splits.add(split); |
| } |
| } |
| return splits; |
| } |
| } |
| } |