1

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 """
  @classmethod
  def _add_argparse_args(cls, parser):
    parser.add_value_provider_argument(
      '--input_file',
      dest='input_file',
      type=str,
      required=False,
      help='Google Storage Bucket location of Input file',
      default=''
    )

    parser.add_value_provider_argument(
      '--input_file_schema',
      dest='input_file_schema',
      type=str,
      required=False,
      help='Google Storage Bucket location of Input file schema',
      default=''
    )

    parser.add_value_provider_argument(
      '--bq_table_name',
      dest='bq_table_name',
      type=str,
      required=False,
      help='Output BQ table to write results to',
      default=''
    )

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)
    )

    (p
      | 'Read Input File From GCS' >> beam.io.textio.ReadFromText(known_args.input_file,
                                                skip_header_lines=1)
 ==>     | 'String to BigQuery Row' >> beam.ParDo(ParseLine(), schemaPCollection) <==
      | 'Write to BigQuery' >> beam.io.WriteToBigQuery(
            known_args.bq_table_name,
            schema=<NEED THE SCHEMA AS STRING>,
            create_disposition=beam.io.BigQueryDisposition.CREATE_IF_NEEDED,
            write_disposition=beam.io.BigQueryDisposition.WRITE_TRUNCATE)
    )

    p.run().wait_until_finish()

if __name__ == '__main__':
  logging.getLogger().setLevel(logging.INFO)
  run()

1 Answer 1

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

3
  • 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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.