I am trying to create a custom dataflow template that takes 3 runtime arguments. An input file and schema file location from gcs and bigquery datasink table.

The input file seems to be read properly using the beam.io.textio.ReadFromText method. However, I need to feed the schema file (instead of hard-coding it inside the template by reading that from gcs as well.

This schema also needs to be passed to beam.io.WriteToBigQuery

This is my first time working with Dataflow and I am struggling to make it work. Any ideas on how do I read a gcs location as string when the location is provided as a runtime param (knowing that get() on run time param fails when pushing the Dataflow template).

from __future__ import absolute_import
import logging
import os

import apache_beam as beam
from apache_beam.options.pipeline_options import PipelineOptions
from apache_beam.io.gcp.bigquery_tools import parse_table_schema_from_json

class TemplateOptions(PipelineOptions):
  """ Class to parse runtime options as required for templating the pipeline """
  def _add_argparse_args(cls, parser):
      help='Google Storage Bucket location of Input file',

      help='Google Storage Bucket location of Input file schema',

      help='Output BQ table to write results to',

class ParseLine(beam.DoFn):
  """A helper class which contains the logic to translate the file into a
    format BigQuery will accept."""

  def process(self, string_input):
    from apache_beam.io.gcp.bigquery_tools import parse_table_schema_from_json
    import csv

    schema = parse_table_schema_from_json(self.schema)
    field_map = [f for f in schema.fields]
    items = csv.reader(string_input.split('\n'), delimiter=',')
    for item in items:
      values = [x.decode('utf8') for x in item]
      result = {}
      i = 0
      for value in values:
        result[field_map[i].name] = value
        i += 1
      return result

def run(argv=None):
  """The main function which creates the pipeline and runs it."""
  known_args = PipelineOptions().view_as(TemplateOptions)
  pipeline_options = {
    'project': '<project-id>' ,
    'staging_location': '<gcs>/staging',
    'runner': 'DataflowRunner',
    'temp_location': '<gcs>/temp',
    'template_location': '<gcs>/csv-processor'

  pipeline_options = PipelineOptions.from_dictionary(pipeline_options)
  with beam.Pipeline(options=pipeline_options) as p:
    schemaPCollection = (p 
      | 'Read Schema' >> beam.io.textio.ReadFromText(known_args.input_file_schema)

      | 'Read Input File From GCS' >> beam.io.textio.ReadFromText(known_args.input_file,
 ==>     | 'String to BigQuery Row' >> beam.ParDo(ParseLine(), schemaPCollection) <==
      | 'Write to BigQuery' >> beam.io.WriteToBigQuery(
            schema=<NEED THE SCHEMA AS STRING>,


if __name__ == '__main__':

1 Answer 1


If the schema file is in a known location in GCS, you can add a ParDo to your pipeline that directly reads it from GCS. For example, this can be done in a start_bundle() [1] implementation of your ParseLine DoFn so that it only get invoked once per bundle (not per element). You can use Beam's FileSystem abstraction[2] if you need to abstract out the file-system that you use to store the schema file (not just GCS).

[1] https://github.com/apache/beam/blob/master/sdks/python/apache_beam/transforms/core.py#L504 [2] https://github.com/apache/beam/blob/master/sdks/python/apache_beam/io/filesystems.py

  • Thanks for answering @chamikara! I have few noobie questions on that approach. I am also using BigQuery sink as part of the final Dataflow step. Won't this approach cause an issue since the schema location is a runtime variable so on yielding the string, I will essentially get a generator for parse_table_schema_from_json function. I need the schema parameter as string for WriteToBigQuery api. Commented Aug 7, 2019 at 20:53
  • Actually you have the option to pass a callable as the schema and also optionally pass a side-input that can be used by this callable. See here for documentation on this: github.com/apache/beam/blob/…
    – chamikara
    Commented Aug 7, 2019 at 21:44
  • Thanks for the links. I am going to try this tomorrow. Appreciate your help, @chamikara! Commented Aug 8, 2019 at 2:40

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