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my direct runner is running fine except its not inserting into bigquery. While my DataFlowRunner is not working at all.I have setup file and everything.Its not showing any error either so its hard for me to debug,please help

import datetime
import logging
import json
import argparse
from datetime import datetime

import apache_beam as beam
import apache_beam.transforms.window as window

from apache_beam.io.filesystems import FileSystems

from apache_beam.options.pipeline_options import GoogleCloudOptions
from apache_beam.options.pipeline_options import PipelineOptions
from apache_beam.options.pipeline_options import SetupOptions
from apache_beam.options.pipeline_options import StandardOptions

# Configuration
# I set all the constant before creating the Pipeline Options
options = PipelineOptions()
options.view_as(StandardOptions).streaming = True
#options.view_as(StandardOptions).runner = 'DirectRunner'
options.view_as(SetupOptions).save_main_session = True
options.view_as(StandardOptions).runner = 'DataflowRunner'
google_cloud_options = options.view_as(GoogleCloudOptions)
google_cloud_options.project = '*******-230413'




def run(argv=None):
    """
    Define and run the pipeline.
    """
    """Build and run the pipeline."""
    parser = argparse.ArgumentParser()
    parser.add_argument(
      '--output',
         dest='output',
        required=True,
        help='GCS destination folder to save the images to (example: gs://BUCKET_NAME/path')
    group = parser.add_mutually_exclusive_group(required=True)
    group.add_argument(
      '--input_topic',
      help=('Input PubSub topic of the form '
            '"projects/<project name>/topics/<topic name>".'))
    known_args, pipeline_args = parser.parse_known_args(argv)


    # DoFn
    class ExtractHashtagsDoFn(beam.DoFn):
        def process(self, element):
            """
            Takes a text as input, search and return its content 
            """
            result = {'text': element}
            logging.info('{}'.format(result))
            yield result


    class SentimentAnalysisDoFn(beam.DoFn):
        def process(self, element):
            from google.cloud import language
            from google.gax.errors import RetryError

            client = language.LanguageServiceClient()
            document = language.types.Document(
                content=element['text'].encode('utf-8'),
                type='PLAIN_TEXT')

            try:
                response = client.analyze_sentiment(
                    document=document,
                    encoding_type='UTF8')
                sentiment = response.document_sentiment
                element['sentiment_score'] = sentiment.score
                element['sentiment_magnitude'] = sentiment.magnitude


            except RetryError:
                element['sentiment_score'] = None
                element['sentiment_magnitude'] = None


    #         logging.info('{}'.format(element))
            yield element


    class WriteToGCS(beam.DoFn):
        def __init__(self, outdir):
            #source_date=datetime.now().strftime("%Y%m%d-%H%M%S")
            self.outdir = outdir
        def process(self, element):
            element = json.dumps(element).encode('utf-8')
            source_date=datetime.now().strftime("%Y%m%d-%H%M%S")
            #outdir = known_args.output+'output'+format(source_date) +'.txt'
            writer = FileSystems.create(self.outdir+'output'+format(source_date) +'.txt','text/plain')
            writer.write(element)
            writer.close()


    # Define Composite Transforms
    class TextAnalysisTransform(beam.PTransform):
        def expand(self, pcoll):
            return(
                pcoll
                | 'Decode' >> beam.Map(lambda string: string.decode('utf8', 'ignore'))
                | 'ExtractHashtags' >> beam.ParDo(ExtractHashtagsDoFn())
                | 'SentimentAnalysis' >> beam.ParDo(SentimentAnalysisDoFn())
                |  'Save file' >> beam.ParDo(WriteToGCS(known_args.output))
            )



    class WindowingForOutputTransform(beam.PTransform):
        def expand(self, pcoll):
            import json
            return(
                pcoll
                | 'Pack' >> beam.Map(lambda x: (x, 1))
                | 'Windowing' >> beam.WindowInto(window.FixedWindows(5, 0))
                | 'GroupByKey' >> beam.GroupByKey()
                | 'Unpack' >> beam.Map(lambda x: x[0])
            )


    class SaveToBigQueryTransform(beam.PTransform):
        def expand(self, pcoll):
            # Define the Schema.
            from apache_beam.io.gcp.internal.clients import bigquery

            table_schema = bigquery.TableSchema()

            # Fields that use standard types.
            alpha_schema = bigquery.TableFieldSchema()
            alpha_schema.name = 'text'
            alpha_schema.type = 'string'
            alpha_schema.mode = 'nullable'
            table_schema.fields.append(alpha_schema)

            beta_schema = bigquery.TableFieldSchema()
            beta_schema.name = 'sentiment_score'
            beta_schema.type = 'float'
            beta_schema.mode = 'nullable'
            table_schema.fields.append(beta_schema)

            gamma_schema = bigquery.TableFieldSchema()
            gamma_schema.name = 'sentiment_magnitude'
            gamma_schema.type = 'float'
            gamma_schema.mode = 'nullable'
            table_schema.fields.append(gamma_schema)


            # Saving the output to BigQuery.
            return (
                pcoll
                | 'PrepareForOutput' >> WindowingForOutputTransform()
                | 'WriteToBigQuery' >> beam.io.WriteToBigQuery(
                    table='test',
                    dataset='testimport',
                    project='*******-230413',
                    schema=table_schema,  # Pass the defined table_schema
                    create_disposition=beam.io.BigQueryDisposition.CREATE_IF_NEEDED,
                    write_disposition=beam.io.BigQueryDisposition.WRITE_APPEND))

    with beam.Pipeline(options=options) as p:
        plumbing = (
            p
            | 'LoadTestData' >> beam.io.ReadFromPubSub(topic=known_args.input_topic).with_output_types(bytes)
            | 'decode' >> beam.Map(lambda x: json.loads(x.decode('utf-8')))
            | 'read_file' >> beam.FlatMap(lambda metadata: FileSystems.open('gs://%s/%s' % (metadata['bucket'], metadata['name'])))
            | 'TextAnalysis' >> TextAnalysisTransform()
            | 'StreamToBigQuery' >> SaveToBigQueryTransform()
            )

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

What am i doing wrong here ?Also i have created the bigquery table while running direct runner initially i couldnt see table preview so i had run a query to see the content of the table and next time onwards it stopped streaming.

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