5

I have a Dataflow job to write to BigQuery. It works well for non-nested schema, however fails for the nested schema.

Here is my Dataflow pipeline:

pipeline_options = PipelineOptions()
  p = beam.Pipeline(options=pipeline_options)

  wordcount_options = pipeline_options.view_as(WordcountTemplatedOptions)

  schema = 'url: STRING,' \
           'ua: STRING,' \
           'method: STRING,' \
           'man: RECORD,' \
           'man.ip: RECORD,' \
           'man.ip.cc: STRING,' \
           'man.ip.city: STRING,' \
           'man.ip.as: INTEGER,' \
           'man.ip.country: STRING,' \
           'man.res: RECORD,' \
           'man.res.ip_dom: STRING'

  first = p | 'read' >> ReadFromText(wordcount_options.input)
  second = (first
            | 'process' >> (beam.ParDo(processFunction()))
            | 'write' >> beam.io.WriteToBigQuery(
              'myBucket:tableFolder.test_table',
              schema=schema)
  )

I created BigQuery Table using the following Schema is:

[
  {
    "mode": "NULLABLE",
    "name": "url",
    "type": "STRING"
  },
  {
    "mode": "NULLABLE",
    "name": "ua",
    "type": "STRING"
  },
  {
    "mode": "NULLABLE",
    "name": "method",
    "type": "STRING"
  },
  {
    "mode": "REPEATED",
    "name": "man",
    "type": "RECORD",
    "fields":
      [
        {
          "mode": "REPEATED",
          "name": "ip",
          "type": "RECORD",
          "fields":
            [
              {
                "mode": "NULLABLE",
                "name": "cc",
                "type": "STRING"
              },
              {
                "mode": "NULLABLE",
                "name": "city",
                "type": "STRING"
              },
              {
                "mode": "NULLABLE",
                "name": "as",
                "type": "INTEGER"
              },
              {
                "mode": "NULLABLE",
                "name": "country",
                "type": "STRING"
              }
            ]
        },
        {
          "mode": "REPEATED",
          "name": "res",
          "type": "RECORD",
          "fields":
            [
              {
                "mode": "NULLABLE",
                "name": "ip_dom",
                "type": "STRING"
              }
            ]
        }
      ]
  }
]

I am getting the following error:

BigQuery creation of import job for table "test_table" in dataset "tableFolder" in project "myBucket" failed., BigQuery execution failed., HTTP transport error:
 Message: Invalid value for: url is not a valid value
 HTTP Code: 400

Question Can someone please guide me? What am I doing wrong? Also, If there is a better way to iterate through all the nested schema and write to BigQuery please suggest?

Additional info My data file:

{"url":"xyz.com","ua":"Mozilla/5.0 Chrome/63","method":"PUT","man":{"ip":{"cc":"IN","city":"delhi","as":274,"country":"States"},"res":{"ip_dom":"v1"}}}
{"url":"xyz.com","ua":"Mozilla/5.0 Chrome/63","method":"PUT","man":{"ip":{"cc":"DK","city":"munlan","as":4865,"country":"United"},"res":{"ip_dom":"v1"}}}
{"url":"xyz.com","ua":"Mozilla/5.0 Chrome/63","method":"GET","man":{"ip":{"cc":"BS","city":"sind","as":7655,"country":"India"},"res":{"ip_dom":"v1"}}}
  • First of all, why do you use WriteToBigQuery directly after ReadFromText? ReadFromText returns PCollection of strings, which are not compatible with input of WriteToBigQuery (it expects dictionaries) – Marcin Zablocki Feb 12 '18 at 7:41
  • Sorry @marcin-zablocki. I have a process function in between. Edited and added to my question. The process function returns a dictionary. – Preetesh Gaitonde Feb 12 '18 at 7:44
  • Does you dictionary contain proper data types? Do you parse the data properly? Seems like a trivial type error – Marcin Zablocki Feb 12 '18 at 8:04
  • It works for non-nested table. I just tried with two columns. I have added the data set with the process function. Can you guess what could be the error? – Preetesh Gaitonde Feb 12 '18 at 8:20
11

The problem with your code is that you try to use nested fields while specifying BigQuery Table Schema as string, which is not supported. In order to push nested records into BigQuery from Apache Beam you need to create TableSchema object, i.e using built-in parser:

from apache_beam.io.gcp.bigquery import parse_table_schema_from_json
table_schema = parse_table_schema_from_json(your_bigquery_json_schema)

You need to pass schema as JSON string there, you can obtain it using the following command in your terminal (I assume that you have gcloud tools installed):

bq --project=your-gcp-project-name --format=json show your.table.name > schema.json

and in Python use it as follows:

table_schema = parse_table_schema_from_json(json.dumps(json.load(open("schema.json"))["schema"]))

Then in your pipeline:

 beam.io.WriteToBigQuery(
              'myBucket:tableFolder.test_table',
              schema=table_schema)

You can also take a look at the example showing manual creation of TableSchema object: https://github.com/apache/beam/blob/474345f5987e47a22d063c7bfcb3638c85a57e64/sdks/python/apache_beam/examples/cookbook/bigquery_schema.py

which is (from the linked example):

from apache_beam.io.gcp.internal.clients import bigquery
table_schema = bigquery.TableSchema()
full_name_schema = bigquery.TableFieldSchema()
full_name_schema.name = 'fullName'
full_name_schema.type = 'string'
full_name_schema.mode = 'required'
table_schema.fields.append(full_name_schema)

# A nested field
phone_number_schema = bigquery.TableFieldSchema()
phone_number_schema.name = 'phoneNumber'
phone_number_schema.type = 'record'
phone_number_schema.mode = 'nullable'
number = bigquery.TableFieldSchema()
number.name = 'number'
number.type = 'integer'
number.mode = 'nullable'
phone_number_schema.fields.append(number)

table_schema.fields.append(phone_number_schema)
area_code = bigquery.TableFieldSchema()
area_code.name = 'areaCode'
area_code.type = 'integer'
area_code.mode = 'nullable'
phone_number_schema.fields.append(area_code)
table_schema.fields.append(phone_number_schema)

then just use table_schema variable in beam.io.WriteToBigQuery.

| improve this answer | |
  • Marcin, Do I need to pass your_bigquery_json_schema as string? or just copy paste the json schema in their. Like this -- table_schema = parse_table_schema_from_json([{......}]) ? Sorry I am slightly confused. Can you please add in your answer? – Preetesh Gaitonde Feb 12 '18 at 16:38
  • Thank you Marcin! I'll test this and update here. Currently, with the link you provided to create manual TableSchema object works. But I'll try using parse_table_schema_from_json. – Preetesh Gaitonde Feb 13 '18 at 10:52
  • This is great! It may overstate the need for JSON - you can just supply the schema as a nested python structure rather than JSON / using the parse function – Maximilian Feb 13 '18 at 12:35
  • Hi Maximillan, Can you please add it as an answer? – Preetesh Gaitonde Feb 15 '18 at 18:35

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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