Uploaded image for project: 'Kudu'
  1. Kudu
  2. KUDU-3054

Init kudu.write_duration accumulator lazily

Attach filesAttach ScreenshotVotersWatch issueWatchersCreate sub-taskLinkCloneUpdate Comment AuthorReplace String in CommentUpdate Comment VisibilityDelete Comments
    XMLWordPrintableJSON

Details

    • Improvement
    • Status: Resolved
    • Major
    • Resolution: Duplicate
    • 1.9.0
    • NA
    • spark
    • None

    Description

      Currently, we encountered a issue in kudu-spark that will causing spark sql query failure:

      ```

      Job aborted due to stage failure: Total size of serialized results of 942 tasks (2.0 GB) is bigger than spark.driver.maxResultSize (2.0 GB)

      ```

      After carefully debug, we find out that it's the kudu.write_duration accumulators causing single spark task larger than 2M, thus all tasks size of the stage will bigger than the limit.

      However, this stage is just reading kudu table and do shuffle exchange, no writing any kudu tables.

      So I think should init this accumulator lazily in KuduContext to avoid such issues.

       

      Attachments

        1. durationHisto_large.png
          209 kB
          liupengcheng
        2. durationhisto.png
          83 kB
          liupengcheng
        3. read_kudu_and_shuffle.png
          150 kB
          liupengcheng

        Issue Links

        Activity

          This comment will be Viewable by All Users Viewable by All Users
          Cancel

          People

            Unassigned Unassigned
            liupengcheng liupengcheng
            Votes:
            0 Vote for this issue
            Watchers:
            3 Start watching this issue

            Dates

              Created:
              Updated:
              Resolved:

              Time Tracking

                Estimated:
                Original Estimate - Not Specified
                Not Specified
                Remaining:
                Remaining Estimate - 0h
                0h
                Logged:
                Time Spent - 0.5h
                0.5h

                Slack

                  Issue deployment