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https://issues.apache.org/jira/browse/BEAM-7926?focusedWorklogId=332716&page=com.atlassian.jira.plugin.system.issuetabpanels:worklog-tabpanel#worklog-332716
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ASF GitHub Bot logged work on BEAM-7926:
----------------------------------------

                Author: ASF GitHub Bot
            Created on: 23/Oct/19 17:46
            Start Date: 23/Oct/19 17:46
    Worklog Time Spent: 10m 
      Work Description: aaltay commented on pull request #9741: [BEAM-7926] 
Visualize PCollection
URL: https://github.com/apache/beam/pull/9741#discussion_r338183866
 
 

 ##########
 File path: 
sdks/python/apache_beam/runners/interactive/display/pcoll_visualization.py
 ##########
 @@ -0,0 +1,279 @@
+#
+# Licensed to the Apache Software Foundation (ASF) under one or more
+# contributor license agreements.  See the NOTICE file distributed with
+# this work for additional information regarding copyright ownership.
+# The ASF licenses this file to You under the Apache License, Version 2.0
+# (the "License"); you may not use this file except in compliance with
+# the License.  You may obtain a copy of the License at
+#
+#    http://www.apache.org/licenses/LICENSE-2.0
+#
+# Unless required by applicable law or agreed to in writing, software
+# distributed under the License is distributed on an "AS IS" BASIS,
+# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
+# See the License for the specific language governing permissions and
+# limitations under the License.
+#
+
+"""Module visualizes PCollection data.
+
+For internal use only; no backwards-compatibility guarantees.
+Only works with Python 3.5+.
+"""
+from __future__ import absolute_import
+
+import base64
+import logging
+from datetime import timedelta
+
+from pandas.io.json import json_normalize
+
+from apache_beam import pvalue
+from apache_beam.runners.interactive import interactive_environment as ie
+from apache_beam.runners.interactive import pipeline_instrument as instr
+
+# jsons doesn't support < Python 3.5. Work around with json for legacy tests.
+# TODO(BEAM-8288): clean up once Py2 is deprecated from Beam.
+try:
+  import jsons
+  _pv_jsons_load = jsons.load
+  _pv_jsons_dump = jsons.dump
+except ImportError:
+  import json
+  _pv_jsons_load = json.load
+  _pv_jsons_dump = json.dump
+
+try:
+  from facets_overview.generic_feature_statistics_generator import 
GenericFeatureStatisticsGenerator
+  _facets_gfsg_ready = True
+except ImportError:
+  _facets_gfsg_ready = False
+
+try:
+  from IPython.core.display import HTML
+  from IPython.core.display import Javascript
+  from IPython.core.display import display
+  from IPython.core.display import display_javascript
+  from IPython.core.display import update_display
+  _ipython_ready = True
+except ImportError:
+  _ipython_ready = False
+
+try:
+  from timeloop import Timeloop
+  _tl_ready = True
+except ImportError:
+  _tl_ready = False
+
+# 1-d types that need additional normalization to be compatible with DataFrame.
+_one_dimension_types = (int, float, str, bool, list, tuple)
+
+_DIVE_SCRIPT_TEMPLATE = """
+            document.querySelector("#{display_id}").data = {jsonstr};"""
+_DIVE_HTML_TEMPLATE = """
+            <script 
src="https://cdnjs.cloudflare.com/ajax/libs/webcomponentsjs/1.3.3/webcomponents-lite.js";></script>
+            <link rel="import" 
href="https://raw.githubusercontent.com/PAIR-code/facets/1.0.0/facets-dist/facets-jupyter.html";>
+            <facets-dive sprite-image-width="{sprite_size}" 
sprite-image-height="{sprite_size}" id="{display_id}" 
height="600"></facets-dive>
+            <script>
+              document.querySelector("#{display_id}").data = {jsonstr};
+            </script>"""
+_OVERVIEW_SCRIPT_TEMPLATE = """
+              document.querySelector("#{display_id}").protoInput = 
"{protostr}";
+              """
+_OVERVIEW_HTML_TEMPLATE = """
+            <script 
src="https://cdnjs.cloudflare.com/ajax/libs/webcomponentsjs/1.3.3/webcomponents-lite.js";></script>
+            <link rel="import" 
href="https://raw.githubusercontent.com/PAIR-code/facets/1.0.0/facets-dist/facets-jupyter.html";>
+            <facets-overview id="{display_id}"></facets-overview>
+            <script>
+              document.querySelector("#{display_id}").protoInput = 
"{protostr}";
+            </script>"""
+_DATAFRAME_PAGINATION_TEMPLATE = """
+            <script 
src="https://ajax.googleapis.com/ajax/libs/jquery/2.2.2/jquery.min.js";></script>
 
+            <script 
src="https://cdn.datatables.net/1.10.16/js/jquery.dataTables.js";></script> 
+            <link rel="stylesheet" 
href="https://cdn.datatables.net/1.10.16/css/jquery.dataTables.css";>
+            {dataframe_html}
+            <script>
+              $("#{table_id}").DataTable();
+            </script>"""
+
+
+def visualize(pcoll, dynamic_plotting_interval=None):
+  """Visualizes the data of a given PCollection. Optionally enables dynamic
+  plotting with interval in seconds if the PCollection is being produced by a
+  running pipeline or the pipeline is streaming indefinitely. The function
+  always returns immediately and is asynchronous when dynamic plotting is on.
+
+  If dynamic plotting enabled, the visualization is updated continuously until
+  the pipeline producing the PCollection is in an end state. The visualization
+  would be anchored to the notebook cell output area. The function
+  asynchronously returns a handle to the visualization job immediately. The 
user
+  could manually do::
+
+    # In one notebook cell, enable dynamic plotting every 1 second:
+    handle = visualize(pcoll, dynamic_plotting_interval=1)
+    # Visualization anchored to the cell's output area.
+    # In a different cell:
+    handle.stop()
+    # Will stop the dynamic plotting of the above visualization manually.
+    # Otherwise, dynamic plotting ends when pipeline is not running anymore.
+
+  If dynamic_plotting is not enabled (by default), None is returned.
+  """
+  if not _ipython_ready:
+    return None
+  pv = PCollVisualization(pcoll)
+  pv.display_facets()
+
+  if dynamic_plotting_interval and _tl_ready:
+    # Disables the verbose logging from timeloop.
+    logging.getLogger('timeloop').disabled = True
+    tl = Timeloop()
+
+    def dynamic_plotting(pcoll, pv, tl):
+      @tl.job(interval=timedelta(seconds=dynamic_plotting_interval))
+      def continuous_update_display():  # pylint: disable=unused-variable
+        # Always creates a new PCollVisualization instance when the
+        # PCollection materialization is being updated and dynamic
+        # plotting is in-process.
+        updated_pv = PCollVisualization(pcoll)
+        updated_pv.display_facets(updating_pv=pv)
+        if ie.current_env().is_terminated(pcoll.pipeline):
+          try:
+            tl.stop()
+          except RuntimeError:
+            # The job can only be stopped once. Ignore excessive stops.
+            pass
+
+      tl.start()
+      return tl
+
+    return dynamic_plotting(pcoll, pv, tl)
+  return None
+
+
+class PCollVisualization(object):
+  """A visualization of a PCollection.
+
+  The class relies on creating a PipelineInstrument w/o actual instrument to
+  access current interactive environment for materialized PCollection data at
+  the moment of self instantiation through cache. It utilizes Facets, pandas
+  DataFrame and jQuery DataTable to visualize the PCollection data.
+  """
+
+  def __init__(self, pcoll):
+    assert isinstance(pcoll, pvalue.PCollection), (
+        'pcoll should be apache_beam.pvalue.PCollection')
+    self._pcoll = pcoll
+    # This allows us to access cache key and other meta data about the pipeline
+    # whether it's the pipeline defined in user code or a copy of that 
pipeline.
+    # Thus, this module doesn't need any other user input but the PCollection
+    # variable to be visualized. It then automatically figures out the pipeline
+    # definition, materialized data and the pipeline result for the execution
+    # even if the user never assigned or waited the result explicitly.
+    # With only the constructor of PipelineInstrument, any interactivity 
related
+    # pre-process or instrument is not triggered for performance concerns.
+    self._pin = instr.PipelineInstrument(pcoll.pipeline)
+    self._cache_key = self._pin.cache_key(self._pcoll)
+    self._dive_display_id = 'facets_dive_{}_{}'.format(self._cache_key,
+                                                       id(self))
+    self._overview_display_id = 'facets_overview_{}_{}'.format(self._cache_key,
+                                                               id(self))
+    self._df_display_id = 'df_{}_{}'.format(self._cache_key, id(self))
+
+  def display_facets(self, updating_pv=None):
+    """Displays the visualization through IPython.
+
+    The visualization has 3 parts: facets-dive, facets-overview and paginated
+    data table. Each part is assigned an auto-generated unique display id
+    (the uniqueness is guaranteed throughout the lifespan of the PCollection
+    variable). If a PCollVisualization instance is provided as updating_pv,
 
 Review comment:
   You might document updating_pv and extract out that part of the single 
paragraph here.
 
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Issue Time Tracking
-------------------

    Worklog Id:     (was: 332716)
    Time Spent: 10h  (was: 9h 50m)

> Visualize PCollection with Interactive Beam
> -------------------------------------------
>
>                 Key: BEAM-7926
>                 URL: https://issues.apache.org/jira/browse/BEAM-7926
>             Project: Beam
>          Issue Type: New Feature
>          Components: runner-py-interactive
>            Reporter: Ning Kang
>            Assignee: Ning Kang
>            Priority: Major
>          Time Spent: 10h
>  Remaining Estimate: 0h
>
> Support auto plotting / charting of materialized data of a given PCollection 
> with Interactive Beam.
> Say an Interactive Beam pipeline defined as
> p = create_pipeline()
> pcoll = p | 'Transform' >> transform()
> The use can call a single function and get auto-magical charting of the data 
> as materialized pcoll.
> e.g., visualize(pcoll)



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