4

In Hadoop the following metrics are supplied after a job execution:

  • map time
  • reduce time
  • shuffle time
  • merge time

I can't find an exact definition of these times as all sources remain unclear on how these times are exactly calculated. This is how I see it:

  • Map time is the time to read input and apply map function and sort the data
  • Reduce time is the time to apply reduce function and write output
  • Shuffle time is the time to merge the map sorted data an transfer is to the reducers
  • Merge time is the time to merge the map outputs at the reduce side only

I am uncertain about the things in bold. Is my analysis correct?

6

I decided to look into the Hadoop code to gain more insight. The image below explains my findings. Map reduce overview

I discovered that:

  • Map time is the time taken by the map tasks. Map task are responsible for reading input, applying the map function, sorting the data and merging the data.
  • Shuffle time is the time to copy the map output data to a reduce task, this is part of a reduce task.
  • Merge time is the time to merge the map outputs at the reduce side, this is part of a reduce task.
  • Reduce time is the time to apply the reduce function and write the output.

These findings are supported by the following code code:

In the Shuffle class, which is used by a ReduceTask, we see that the "copy" phase is followed by a "sort" phase.

copyPhase.complete(); // copy is already complete
taskStatus.setPhase(TaskStatus.Phase.SORT);
reduceTask.statusUpdate(umbilical);

// Finish the on-going merges...
RawKeyValueIterator kvIter = null;
try {
  kvIter = merger.close();
} catch (Throwable e) {
  throw new ShuffleError("Error while doing final merge " , e);
}

In the TaskStatus class we see that the shuffletime is the time BEFORE the sort phase and the sort time is the time between the shuffle and reduce phases.

public void setPhase(Phase phase){
  TaskStatus.Phase oldPhase = getPhase();
  if (oldPhase != phase){
    // sort phase started
    if (phase == TaskStatus.Phase.SORT){
      if (oldPhase == TaskStatus.Phase.MAP) {
        setMapFinishTime(System.currentTimeMillis());
      }
      else {
        setShuffleFinishTime(System.currentTimeMillis());
      }
    }else if (phase == TaskStatus.Phase.REDUCE){
      setSortFinishTime(System.currentTimeMillis());
    }
    this.phase = phase;
  }
  ...

In the JobInfo class we see that shuffle time corresponds to the copying, and that merge time is the "sort" time we mentioned above.

switch (task.getType()) {
    case MAP:
      successfulMapAttempts += successful;
      failedMapAttempts += failed;
      killedMapAttempts += killed;
      if (attempt.getState() == TaskAttemptState.SUCCEEDED) {
        numMaps++;
        avgMapTime += (attempt.getFinishTime() - attempt.getLaunchTime());
      }
      break;
    case REDUCE:
      successfulReduceAttempts += successful;
      failedReduceAttempts += failed;
      killedReduceAttempts += killed;
      if (attempt.getState() == TaskAttemptState.SUCCEEDED) {
        numReduces++;
        avgShuffleTime += (attempt.getShuffleFinishTime() - attempt
            .getLaunchTime());
        avgMergeTime += attempt.getSortFinishTime()
            - attempt.getShuffleFinishTime();
        avgReduceTime += (attempt.getFinishTime() - attempt
            .getSortFinishTime());
      }
}

More information on how the reduce and map task work may be derived from the classes MapTask and ReduceTask, respectively.

Finally, I would like to note that the source code I refer to in the links mostly corresponds to the Hadoop 2.7.1 code.

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