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[Python] Hugging Face pipeline support #27399

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06af6b7
automodel first pass
riteshghorse May 10, 2023
416166d
new model
riteshghorse May 16, 2023
6f063e5
updated model handler api
riteshghorse Jun 21, 2023
df87366
add model_class param
riteshghorse Jun 23, 2023
4da7edd
Merge branch 'master' of https://github.com/apache/beam into hf-model…
riteshghorse Jun 23, 2023
025cc52
update doc comments
riteshghorse Jun 26, 2023
8cf7a01
Merge branch 'master' of https://github.com/apache/beam into hf-model…
riteshghorse Jun 26, 2023
2c671ab
updated integration test and example
riteshghorse Jun 26, 2023
abaeb2a
unit test, modified params
riteshghorse Jun 27, 2023
d5e1cf3
add test setup for hugging face tests
riteshghorse Jun 27, 2023
4177c09
fix lints
riteshghorse Jun 27, 2023
6324752
fix import order
riteshghorse Jun 27, 2023
30029d3
refactor, doc, lints
riteshghorse Jun 28, 2023
c60d312
refactor, doc comments
riteshghorse Jun 29, 2023
a52536f
change test file
riteshghorse Jun 29, 2023
496d205
update types
riteshghorse Jul 7, 2023
8dd0ff2
add hugging face pipeline support
riteshghorse Jul 7, 2023
c670ada
integration test for pipeline
riteshghorse Jul 10, 2023
09e64a4
add doc, gs link
riteshghorse Jul 11, 2023
504b161
test raises exception
riteshghorse Jul 11, 2023
4ece137
fix python lints
riteshghorse Jul 18, 2023
250a2d5
add inference fn
riteshghorse Jul 24, 2023
4d6b6b2
Merge branch 'master', remote-tracking branch 'origin' into hf-pipeline
riteshghorse Jul 24, 2023
4787635
update doc
riteshghorse Jul 24, 2023
c9fa0d5
merge master
riteshghorse Jul 24, 2023
c592f91
docs, lint
riteshghorse Jul 24, 2023
db99ad0
docs, lint
riteshghorse Jul 24, 2023
b539d32
remove optional from inference_fn
riteshghorse Jul 24, 2023
e912d35
add enum for tasks
riteshghorse Jul 26, 2023
ba5e31f
update pydoc
riteshghorse Jul 26, 2023
6963a5d
update pydoc
riteshghorse Jul 26, 2023
44916b9
doc, formatting changes
riteshghorse Aug 1, 2023
4d3fdd0
fix doc
riteshghorse Aug 1, 2023
9b64975
fix optional in doc
riteshghorse Aug 1, 2023
7db987b
pin model version
riteshghorse Aug 2, 2023
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#
# 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.
#

""""A pipeline that uses RunInference to perform Question Answering using the
model from Hugging Face Models Hub.

This pipeline takes questions and context from a custom text file separated by
a semicolon. These are converted to SquadExamples by using the utility provided
by transformers.QuestionAnsweringPipeline and passed to the model handler.
We just provide the model name here because the model repository specifies the
task that it will do. The pipeline then writes the prediction to an output
file in which users can then compare against the original context.
"""

import argparse
import logging
from typing import Iterable
from typing import Tuple

import apache_beam as beam
from apache_beam.ml.inference.base import KeyedModelHandler
from apache_beam.ml.inference.base import PredictionResult
from apache_beam.ml.inference.base import RunInference
from apache_beam.ml.inference.huggingface_inference import HuggingFacePipelineModelHandler
from apache_beam.ml.inference.huggingface_inference import PipelineTask
from apache_beam.options.pipeline_options import PipelineOptions
from apache_beam.options.pipeline_options import SetupOptions
from apache_beam.runners.runner import PipelineResult
from transformers import QuestionAnsweringPipeline


class PostProcessor(beam.DoFn):
"""Processes the PredictionResult to get the predicted answer.

Hugging Face Pipeline for Question Answering returns a dictionary
with score, start and end index of answer and the answer.
"""
def process(self, result: Tuple[str, PredictionResult]) -> Iterable[str]:
text, prediction = result
predicted_answer = prediction.inference['answer']
yield text + ';' + predicted_answer


def preprocess(text):
"""
preprocess separates the text into question and context
by splitting on semi-colon.

Args:
text (str): string with question and context separated by semi-colon.

Yields:
(str, str): yields question and context from text.
"""
if len(text.strip()) > 0:
question, context = text.split(';')
yield (question, context)


def create_squad_example(text):
"""Creates SquadExample objects to be fed to QuestionAnsweringPipeline
supported by Hugging Face.

Check out https://huggingface.co/docs/transformers/main_classes/pipelines#transformers.QuestionAnsweringPipeline.__call__.X #pylint: disable=line-too-long
to learn about valid input types for QuestionAnswering Pipeline.
Args:
text (Tuple[str,str]): a tuple of question and context.
"""
question, context = text
yield question, QuestionAnsweringPipeline.create_sample(question, context)
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def parse_known_args(argv):
"""Parses args for the workflow."""
parser = argparse.ArgumentParser()
parser.add_argument(
'--input',
dest='input',
help='Path of file containing question and context separated by semicolon'
)
parser.add_argument(
'--output',
dest='output',
required=True,
help='Path of file in which to save the output predictions.')
parser.add_argument(
'--model_name',
dest='model_name',
default="deepset/roberta-base-squad2",
help='Model repository-id from Hugging Face Models Hub.')
parser.add_argument(
'--revision',
dest='revision',
help=
'Specific model version to use - branch name, tag name, or a commit-id.')
return parser.parse_known_args(argv)


def run(
argv=None, save_main_session=True, test_pipeline=None) -> PipelineResult:
"""
Args:
argv: Command line arguments defined for this example.
save_main_session: Used for internal testing.
test_pipeline: Used for internal testing.
"""
known_args, pipeline_args = parse_known_args(argv)
pipeline_options = PipelineOptions(pipeline_args)
pipeline_options.view_as(SetupOptions).save_main_session = save_main_session

pipeline = test_pipeline
if not test_pipeline:
pipeline = beam.Pipeline(options=pipeline_options)

model_handler = HuggingFacePipelineModelHandler(
task=PipelineTask.QuestionAnswering,
model=known_args.model_name,
load_model_args={
'framework': 'pt', 'revision': known_args.revision
})
if not known_args.input:
text = (
pipeline | 'CreateSentences' >> beam.Create([
"What does Apache Beam do?;"
"Apache Beam enables batch and streaming data processing.",
"What is the capital of France?;The capital of France is Paris .",
"Where was beam summit?;Apache Beam Summit 2023 was in NYC.",
]))
else:
text = (
pipeline | 'ReadSentences' >> beam.io.ReadFromText(known_args.input))
processed_text = (
text
| 'PreProcess' >> beam.ParDo(preprocess)
| 'SquadExample' >> beam.ParDo(create_squad_example))
output = (
processed_text
| 'RunInference' >> RunInference(KeyedModelHandler(model_handler))
| 'ProcessOutput' >> beam.ParDo(PostProcessor()))
_ = output | "WriteOutput" >> beam.io.WriteToText(
known_args.output, shard_name_template='', append_trailing_newlines=True)

result = pipeline.run()
result.wait_until_finish()
return result


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