XMLWordPrintableJSON

Details

    Description

      Now, the interpreter is executed according to the paragraph. Click the run button in the paragraph, and only the code content in the current paragraph can be obtained in the interpreter process.

      To pass the Dashboard paragraph in the submarine interpreter, you need to submit all the code content in this note to tensorflow for execution.

      So, I think need to get the note data in sever through `RemoteInterpreterEventServer` in the interpreter process.

      I implemented two other methods, so that the interpreter can get the note in the server, the actual running effect is not the best solution.
      1) By having the interpreter directly access the external storage of the note repository, such as HDFS, S3.
      1. But this limits the need to store notes in an external storage system.
      2. In hdfs with kerberos authentication system enabled, not all users can access the note folder.

      2) Get the note from the server from the REST client in the interpreter.
      1. Need to let zeppelin/api/notes intercept in shrio.ini.
      2. Or let the interpreter access the REST interface of the server through the user and password, but it is not safe.

      In addition, inĀ ZEPPELIN-4018 Workflow and orchestration, it is also necessary to query all the notes and paragraphs of the user in the workflow paragraph for the execution of the note.

      Attachments

        Issue Links

          Activity

            People

              liuxun323 Xun Liu
              liuxun323 Xun Liu
              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 - 3h 40m
                  3h 40m