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https://issues.apache.org/jira/browse/BEAM-7760?focusedWorklogId=313356&page=com.atlassian.jira.plugin.system.issuetabpanels:worklog-tabpanel#worklog-313356
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ASF GitHub Bot logged work on BEAM-7760:
----------------------------------------

                Author: ASF GitHub Bot
            Created on: 17/Sep/19 00:04
            Start Date: 17/Sep/19 00:04
    Worklog Time Spent: 10m 
      Work Description: aaltay commented on issue #9278: [BEAM-7760] Added 
Interactive Beam module
URL: https://github.com/apache/beam/pull/9278#issuecomment-532003840
 
 
   Can you check the test failures?
 
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Issue Time Tracking
-------------------

    Worklog Id:     (was: 313356)
    Time Spent: 8h 20m  (was: 8h 10m)

> Interactive Beam Caching PCollections bound to user defined vars in notebook
> ----------------------------------------------------------------------------
>
>                 Key: BEAM-7760
>                 URL: https://issues.apache.org/jira/browse/BEAM-7760
>             Project: Beam
>          Issue Type: New Feature
>          Components: examples-python
>            Reporter: Ning Kang
>            Assignee: Ning Kang
>            Priority: Major
>          Time Spent: 8h 20m
>  Remaining Estimate: 0h
>
> Cache only PCollections bound to user defined variables in a pipeline when 
> running pipeline with interactive runner in jupyter notebooks.
> [Interactive 
> Beam|[https://github.com/apache/beam/tree/master/sdks/python/apache_beam/runners/interactive]]
>  has been caching and using caches of "leaf" PCollections for interactive 
> execution in jupyter notebooks.
> The interactive execution is currently supported so that when appending new 
> transforms to existing pipeline for a new run, executed part of the pipeline 
> doesn't need to be re-executed. 
> A PCollection is "leaf" when it is never used as input in any PTransform in 
> the pipeline.
> The problem with building caches and pipeline to execute around "leaf" is 
> that when a PCollection is consumed by a sink with no output, the pipeline to 
> execute built will miss the subgraph generating and consuming that 
> PCollection.
> An example, "ReadFromPubSub --> WirteToPubSub" will result in an empty 
> pipeline.
> Caching around PCollections bound to user defined variables and replacing 
> transforms with source and sink of caches could resolve the pipeline to 
> execute properly under the interactive execution scenario. Also, cached 
> PCollection now can trace back to user code and can be used for user data 
> visualization if user wants to do it.
> E.g.,
> {code:java}
> // ...
> p = beam.Pipeline(interactive_runner.InteractiveRunner(),
>                   options=pipeline_options)
> messages = p | "Read" >> beam.io.ReadFromPubSub(subscription='...')
> messages | "Write" >> beam.io.WriteToPubSub(topic_path)
> result = p.run()
> // ...
> visualize(messages){code}
>  The interactive runner automatically figures out that PCollection
> {code:java}
> messages{code}
> created by
> {code:java}
> p | "Read" >> beam.io.ReadFromPubSub(subscription='...'){code}
> should be cached and reused if the notebook user appends more transforms.
>  And once the pipeline gets executed, the user could use any 
> visualize(PCollection) module to visualize the data statically (batch) or 
> dynamically (stream)



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