Esempio n. 1
0
  @Test
  public void testDefaultParallelInSkewJoin() throws Throwable {
    // default_parallel is considered only at runtime, so here we only test requested parallel
    // more thorough tests can be found in TestNumberOfReducers.java
    String query =
        "a = load 'input';"
            + "b = load 'input';"
            + "c = join a by $0, b by $0 using 'skewed' parallel 100;"
            + "store c into 'output';";
    PigServer ps = new PigServer(cluster.getExecType(), cluster.getProperties());
    PhysicalPlan pp = Util.buildPp(ps, query);
    MROperPlan mrPlan = Util.buildMRPlan(pp, pc);

    // Get the skew join job
    Iterator<MapReduceOper> iter = mrPlan.getKeys().values().iterator();
    int counter = 0;
    while (iter.hasNext()) {
      MapReduceOper op = iter.next();
      counter++;
      if (op.isSkewedJoin()) {
        assertTrue(op.getRequestedParallelism() == 100);
      }
    }
    assertEquals(3, counter);

    pc.defaultParallel = -1;
  }
Esempio n. 2
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  @Test
  public void testReducerNumEstimationForOrderBy() throws Exception {
    // Skip the test for Tez. Tez use a different mechanism.
    // Equivalent test is in TestTezAutoParallelism
    Assume.assumeTrue("Skip this test for TEZ", Util.isMapredExecType(cluster.getExecType()));
    // use the estimation
    pc.getProperties().setProperty("pig.exec.reducers.bytes.per.reducer", "100");
    pc.getProperties().setProperty("pig.exec.reducers.max", "10");

    String query = "a = load '/passwd';" + "b = order a by $0;" + "store b into 'output';";
    PigServer ps = new PigServer(cluster.getExecType(), cluster.getProperties());
    PhysicalPlan pp = Util.buildPp(ps, query);

    MROperPlan mrPlan = Util.buildMRPlanWithOptimizer(pp, pc);
    Configuration conf = ConfigurationUtil.toConfiguration(pc.getProperties());
    JobControlCompiler jcc = new JobControlCompiler(pc, conf);
    JobControl jobControl = jcc.compile(mrPlan, query);

    assertEquals(2, mrPlan.size());

    // first job uses a single reducer for the sampling
    Util.assertParallelValues(-1, 1, -1, 1, jobControl.getWaitingJobs().get(0).getJobConf());

    // Simulate the first job having run so estimation kicks in.
    MapReduceOper sort = mrPlan.getLeaves().get(0);
    jcc.updateMROpPlan(jobControl.getReadyJobs());
    FileLocalizer.create(sort.getQuantFile(), pc);
    jobControl = jcc.compile(mrPlan, query);

    sort = mrPlan.getLeaves().get(0);
    long reducer =
        Math.min(
            (long) Math.ceil(new File("test/org/apache/pig/test/data/passwd").length() / 100.0),
            10);
    assertEquals(reducer, sort.getRequestedParallelism());

    // the second job estimates reducers
    Util.assertParallelValues(
        -1, -1, reducer, reducer, jobControl.getWaitingJobs().get(0).getJobConf());

    // use the PARALLEL key word, it will override the estimated reducer number
    query = "a = load '/passwd';" + "b = order a by $0 PARALLEL 2;" + "store b into 'output';";
    pp = Util.buildPp(ps, query);

    mrPlan = Util.buildMRPlanWithOptimizer(pp, pc);

    assertEquals(2, mrPlan.size());

    sort = mrPlan.getLeaves().get(0);
    assertEquals(2, sort.getRequestedParallelism());

    // the estimation won't take effect when it apply to non-dfs or the files doesn't exist, such as
    // hbase
    query =
        "a = load 'hbase://passwd' using org.apache.pig.backend.hadoop.hbase.HBaseStorage('c:f1 c:f2');"
            + "b = order a by $0 ;"
            + "store b into 'output';";
    pp = Util.buildPp(ps, query);

    mrPlan = Util.buildMRPlanWithOptimizer(pp, pc);
    assertEquals(2, mrPlan.size());

    sort = mrPlan.getLeaves().get(0);

    // the requested parallel will be -1 if users don't set any of default_parallel, paralllel
    // and the estimation doesn't take effect. MR framework will finally set it to 1.
    assertEquals(-1, sort.getRequestedParallelism());

    // test order by with three jobs (after optimization)
    query =
        "a = load '/passwd';"
            + "b = foreach a generate $0, $1, $2;"
            + "c = order b by $0;"
            + "store c into 'output';";
    pp = Util.buildPp(ps, query);

    mrPlan = Util.buildMRPlanWithOptimizer(pp, pc);
    assertEquals(3, mrPlan.size());

    // Simulate the first 2 jobs having run so estimation kicks in.
    sort = mrPlan.getLeaves().get(0);
    FileLocalizer.create(sort.getQuantFile(), pc);

    jobControl = jcc.compile(mrPlan, query);
    Util.copyFromLocalToCluster(
        cluster,
        "test/org/apache/pig/test/data/passwd",
        ((POLoad) sort.mapPlan.getRoots().get(0)).getLFile().getFileName());

    // First job is just foreach with projection, mapper-only job, so estimate gets ignored
    Util.assertParallelValues(-1, -1, -1, 0, jobControl.getWaitingJobs().get(0).getJobConf());

    jcc.updateMROpPlan(jobControl.getReadyJobs());
    jobControl = jcc.compile(mrPlan, query);
    jcc.updateMROpPlan(jobControl.getReadyJobs());

    // Second job is a sampler, which requests and gets 1 reducer
    Util.assertParallelValues(-1, 1, -1, 1, jobControl.getWaitingJobs().get(0).getJobConf());

    jobControl = jcc.compile(mrPlan, query);
    sort = mrPlan.getLeaves().get(0);
    assertEquals(reducer, sort.getRequestedParallelism());

    // Third job is the order, which uses the estimated number of reducers
    Util.assertParallelValues(
        -1, -1, reducer, reducer, jobControl.getWaitingJobs().get(0).getJobConf());
  }