Source code for apache_beam.yaml.generate_yaml_docs

#
# 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.
#

import argparse
import contextlib
import re

import yaml

from apache_beam.portability.api import schema_pb2
from apache_beam.utils import subprocess_server
from apache_beam.yaml import json_utils
from apache_beam.yaml import yaml_provider


def _fake_value(name, beam_type):
  type_info = beam_type.WhichOneof("type_info")
  if type_info == "atomic_type":
    if beam_type.atomic_type == schema_pb2.STRING:
      return f'"{name}"'
    elif beam_type.atomic_type == schema_pb2.BOOLEAN:
      return "true|false"
    else:
      return name
  elif type_info == "array_type":
    return [_fake_value(name, beam_type.array_type.element_type), '...']
  elif type_info == "iterable_type":
    return [_fake_value(name, beam_type.iterable_type.element_type), '...']
  elif type_info == "map_type":
    if beam_type.map_type.key_type.atomic_type == schema_pb2.STRING:
      return {
          'a': _fake_value(name + '_value_a', beam_type.map_type.value_type),
          'b': _fake_value(name + '_value_b', beam_type.map_type.value_type),
          'c': '...',
      }
    else:
      return {
          _fake_value(name + '_key', beam_type.map_type.key_type): _fake_value(
              name + '_value', beam_type.map_type.value_type)
      }
  elif type_info == "row_type":
    return _fake_row(beam_type.row_type.schema)
  elif type_info == "logical_type":
    return name
  else:
    raise ValueError(f"Unrecognized type_info: {type_info!r}")


def _fake_row(schema):
  if schema is None:
    return '...'
  return {f.name: _fake_value(f.name, f.type) for f in schema.fields}


[docs]def pretty_example(provider, t): spec = {'type': t} try: requires_inputs = provider.requires_inputs(t, {}) except Exception: requires_inputs = False if requires_inputs: spec['input'] = '...' config_schema = provider.config_schema(t) if config_schema is None or config_schema.fields: spec['config'] = _fake_row(config_schema) s = yaml.dump(spec, sort_keys=False) return s.replace("'", "")
[docs]def config_docs(schema): if schema is None: return '' elif not schema.fields: return 'No configuration parameters.' def pretty_type(beam_type): type_info = beam_type.WhichOneof("type_info") if type_info == "atomic_type": return schema_pb2.AtomicType.Name(beam_type.atomic_type).lower() elif type_info == "array_type": return f'Array[{pretty_type(beam_type.array_type.element_type)}]' elif type_info == "iterable_type": return f'Iterable[{pretty_type(beam_type.iterable_type.element_type)}]' elif type_info == "map_type": return ( f'Map[{pretty_type(beam_type.map_type.key_type)}, ' f'{pretty_type(beam_type.map_type.value_type)}]') elif type_info == "row_type": return 'Row' else: return '?' def maybe_row_parameters(t): if t.WhichOneof("type_info") == "row_type": return indent('\n\nRow fields:\n\n' + config_docs(t.row_type.schema), 4) else: return '' def maybe_optional(t): return " (Optional)" if t.nullable else "" def lines(): for f in schema.fields: yield ''.join([ f'**{f.name}** `{pretty_type(f.type)}`', maybe_optional(f.type), indent(': ' + f.description if f.description else '', 2), maybe_row_parameters(f.type), ]) return '\n\n'.join('*' + indent(line, 2) for line in lines()).strip()
[docs]def indent(lines, size): return '\n'.join(' ' * size + line for line in lines.split('\n'))
[docs]def longest(func, xs): return max([func(x) or '' for x in xs], key=len)
[docs]def io_grouping_key(transform_name): """Place reads and writes next to each other, after all other transforms.""" if transform_name.startswith('ReadFrom'): return 1, transform_name[8:], 0 elif transform_name.startswith('WriteTo'): return 1, transform_name[7:], 1 else: return 0, transform_name
SKIP = [ 'Combine', 'Filter', 'MapToFields', ]
[docs]def transform_docs(t, providers): return '\n'.join([ f'## {t}', '', longest(lambda p: p.description(t), providers), '', '### Configuration', '', longest(lambda p: config_docs(p.config_schema(t)), providers), '', '### Usage', '', indent(longest(lambda p: pretty_example(p, t), providers), 4), ])
[docs]def main(): parser = argparse.ArgumentParser() parser.add_argument('--markdown_file') parser.add_argument('--schema_file') parser.add_argument('--include', default='.*') parser.add_argument( '--exclude', default='(Combine)|(Filter)|(MapToFields)-.*') options = parser.parse_args() include = re.compile(options.include).match exclude = re.compile(options.exclude).match with subprocess_server.SubprocessServer.cache_subprocesses(): json_config_schemas = [] with contextlib.ExitStack() as stack: if options.markdown_file: markdown_out = stack.enter_context(open(options.markdown_file, 'w')) providers = yaml_provider.standard_providers() for transform in sorted(providers.keys(), key=io_grouping_key): if include(transform) and not exclude(transform): print(transform) if options.markdown_file: markdown_out.write(transform_docs(transform, providers[transform])) markdown_out.write('\n\n') if options.schema_file: schema = providers[transform][0].config_schema(transform) if schema: json_config_schemas.append({ 'if': { 'properties': { 'type': { 'const': transform } } }, 'then': { 'properties': { 'config': { 'type': 'object', 'properties': { '__line__': { 'type': 'integer' }, '__uuid__': {}, **{ f.name: json_utils.beam_type_to_json_type( f.type) for f in schema.fields } }, 'additionalProperties': False, } } } }) if options.schema_file: with open(options.schema_file, 'w') as fout: yaml.dump(json_config_schemas, fout, sort_keys=False)
if __name__ == '__main__': main()