টিএফএক্স পাইপলাইন এবং টেনসরফ্লো ডেটা বৈধকরণ ব্যবহার করে ডেটা বৈধকরণ

এই নোটবুক-ভিত্তিক টিউটোরিয়ালে, আমরা ইনপুট ডেটা যাচাই করতে এবং একটি ML মডেল তৈরি করতে TFX পাইপলাইন তৈরি করব এবং চালাব। এই নোটবুক TFX পাইপলাইন আমরা সালে নির্মিত উপর ভিত্তি করে তৈরি সরল TFX পাইপলাইন টিউটোরিয়াল । আপনি যদি এখনও সেই টিউটোরিয়ালটি না পড়ে থাকেন তবে এই নোটবুকটি নিয়ে এগিয়ে যাওয়ার আগে আপনার এটি পড়া উচিত।

যেকোন ডেটা সায়েন্স বা এমএল প্রজেক্টের প্রথম কাজ হল ডেটা বোঝা এবং পরিষ্কার করা, যার মধ্যে রয়েছে:

  • প্রতিটি বৈশিষ্ট্য সম্পর্কে ডেটা প্রকার, বিতরণ এবং অন্যান্য তথ্য (যেমন, গড় মান বা অনন্য সংখ্যা) বোঝা
  • একটি প্রাথমিক স্কিমা তৈরি করা যা ডেটা বর্ণনা করে
  • প্রদত্ত স্কিমা সম্পর্কিত ডেটাতে অসামঞ্জস্যতা এবং অনুপস্থিত মান সনাক্ত করা

এই টিউটোরিয়ালে, আমরা দুটি TFX পাইপলাইন তৈরি করব।

প্রথমত, আমরা ডেটাসেট বিশ্লেষণ করার জন্য একটি পাইপলাইন তৈরি করব এবং প্রদত্ত ডেটাসেটের একটি প্রাথমিক স্কিমা তৈরি করব। এই পাইপলাইন দুটি নতুন উপাদান, অন্তর্ভুক্ত করা হবে StatisticsGen এবং SchemaGen

একবার আমাদের কাছে ডেটার একটি সঠিক স্কিমা হয়ে গেলে, আমরা পূর্ববর্তী টিউটোরিয়াল থেকে পাইপলাইনের উপর ভিত্তি করে একটি ML শ্রেণীবিভাগ মডেল প্রশিক্ষণের জন্য একটি পাইপলাইন তৈরি করব। এই পাইপলাইন, আমরা প্রথম পাইপলাইন এবং একটি নতুন উপাদান থেকে স্কিমা ব্যবহার করবে ExampleValidator , ইনপুট ডেটা যাচাই করতে।

তিনটি নতুন উপাদান, StatisticsGen, SchemaGen এবং ExampleValidator, ডাটা বিশ্লেষণ ও যাচাইকরণের জন্য TFX উপাদান, এবং তারা ব্যবহার প্রয়োগ করা হয় TensorFlow ডেটা ভ্যালিডেশন গ্রন্থাগার।

দয়া করে দেখুন TFX পাইপলাইন বুঝুন TFX বিভিন্ন ধারণা সম্পর্কে আরো জানতে।

সেট আপ করুন

আমাদের প্রথমে TFX পাইথন প্যাকেজ ইনস্টল করতে হবে এবং ডেটাসেটটি ডাউনলোড করতে হবে যা আমরা আমাদের মডেলের জন্য ব্যবহার করব।

পিপ আপগ্রেড করুন

স্থানীয়ভাবে চালানোর সময় একটি সিস্টেমে পিপ আপগ্রেড করা এড়াতে, আমরা Colab-এ চালাচ্ছি কিনা তা নিশ্চিত করুন। স্থানীয় সিস্টেম অবশ্যই আলাদাভাবে আপগ্রেড করা যেতে পারে।

try:
  import colab
  !pip install --upgrade pip
except:
  pass

TFX ইনস্টল করুন

pip install -U tfx

আপনি কি রানটাইম রিস্টার্ট করেছেন?

আপনি যদি Google Colab ব্যবহার করেন, প্রথমবার যখন আপনি উপরের সেলটি চালান, তাহলে আপনাকে অবশ্যই উপরে "রিস্টার্ট RUNTIME" বোতামে ক্লিক করে বা "রানটাইম > রানটাইম রিস্টার্ট..." মেনু ব্যবহার করে রানটাইম রিস্টার্ট করতে হবে। Colab যেভাবে প্যাকেজগুলি লোড করে তার কারণেই এটি হয়েছে৷

TensorFlow এবং TFX সংস্করণ পরীক্ষা করুন।

import tensorflow as tf
print('TensorFlow version: {}'.format(tf.__version__))
from tfx import v1 as tfx
print('TFX version: {}'.format(tfx.__version__))
TensorFlow version: 2.6.2
TFX version: 1.4.0

ভেরিয়েবল সেট আপ করুন

একটি পাইপলাইন সংজ্ঞায়িত করতে ব্যবহৃত কিছু ভেরিয়েবল আছে। আপনি আপনার ইচ্ছা মত এই ভেরিয়েবল কাস্টমাইজ করতে পারেন. ডিফল্টরূপে পাইপলাইন থেকে সমস্ত আউটপুট বর্তমান ডিরেক্টরির অধীনে তৈরি করা হবে।

import os

# We will create two pipelines. One for schema generation and one for training.
SCHEMA_PIPELINE_NAME = "penguin-tfdv-schema"
PIPELINE_NAME = "penguin-tfdv"

# Output directory to store artifacts generated from the pipeline.
SCHEMA_PIPELINE_ROOT = os.path.join('pipelines', SCHEMA_PIPELINE_NAME)
PIPELINE_ROOT = os.path.join('pipelines', PIPELINE_NAME)
# Path to a SQLite DB file to use as an MLMD storage.
SCHEMA_METADATA_PATH = os.path.join('metadata', SCHEMA_PIPELINE_NAME,
                                    'metadata.db')
METADATA_PATH = os.path.join('metadata', PIPELINE_NAME, 'metadata.db')

# Output directory where created models from the pipeline will be exported.
SERVING_MODEL_DIR = os.path.join('serving_model', PIPELINE_NAME)

from absl import logging
logging.set_verbosity(logging.INFO)  # Set default logging level.

উদাহরণ ডেটা প্রস্তুত করুন

আমরা আমাদের TFX পাইপলাইনে ব্যবহারের জন্য উদাহরণ ডেটাসেট ডাউনলোড করব। ডেটা সেটটি আমরা ব্যবহার করা হয় পামার পেঙ্গুইনদের ডেটা সেটটি যা অন্যান্য ব্যবহার করা হয় TFX উদাহরণ

এই ডেটাসেটে চারটি সংখ্যাসূচক বৈশিষ্ট্য রয়েছে:

  • culmen_length_mm
  • culmen_depth_mm
  • ফ্লিপার_দৈর্ঘ্য_মিমি
  • বডি_মাস_জি

সমস্ত বৈশিষ্ট্য ইতিমধ্যে পরিসীমা [0,1] থাকার জন্য স্বাভাবিক করা হয়েছে। আমরা একটি শ্রেণীবিভাগ মডেল যা অনুমান গড়ে তুলবে species পেঙ্গুইনদের করুন।

যেহেতু TFX ExampleGen কম্পোনেন্ট একটি ডিরেক্টরি থেকে ইনপুট পড়ে, আমাদের একটি ডিরেক্টরি তৈরি করতে হবে এবং এতে ডেটাসেটটি কপি করতে হবে।

import urllib.request
import tempfile

DATA_ROOT = tempfile.mkdtemp(prefix='tfx-data')  # Create a temporary directory.
_data_url = 'https://raw.githubusercontent.com/tensorflow/tfx/master/tfx/examples/penguin/data/labelled/penguins_processed.csv'
_data_filepath = os.path.join(DATA_ROOT, "data.csv")
urllib.request.urlretrieve(_data_url, _data_filepath)
('/tmp/tfx-datan3p7t1d2/data.csv', <http.client.HTTPMessage at 0x7f8d2f9f9110>)

CSV ফাইলটি দ্রুত দেখে নিন।

head {_data_filepath}
species,culmen_length_mm,culmen_depth_mm,flipper_length_mm,body_mass_g
0,0.2545454545454545,0.6666666666666666,0.15254237288135594,0.2916666666666667
0,0.26909090909090905,0.5119047619047618,0.23728813559322035,0.3055555555555556
0,0.29818181818181805,0.5833333333333334,0.3898305084745763,0.1527777777777778
0,0.16727272727272732,0.7380952380952381,0.3559322033898305,0.20833333333333334
0,0.26181818181818167,0.892857142857143,0.3050847457627119,0.2638888888888889
0,0.24727272727272717,0.5595238095238096,0.15254237288135594,0.2569444444444444
0,0.25818181818181823,0.773809523809524,0.3898305084745763,0.5486111111111112
0,0.32727272727272727,0.5357142857142859,0.1694915254237288,0.1388888888888889
0,0.23636363636363636,0.9642857142857142,0.3220338983050847,0.3055555555555556

আপনি পাঁচটি বৈশিষ্ট্য কলাম দেখতে সক্ষম হওয়া উচিত। species 0, 1 বা 2 অন্যতম, এবং অন্যান্য সমস্ত বৈশিষ্ট্য মান 0 এবং 1 এর মধ্যে আমরা এই ডেটা সেটটি বিশ্লেষণ করার জন্য একটি TFX পাইপলাইন তৈরি করবে থাকা উচিত।

একটি প্রাথমিক স্কিমা তৈরি করুন

TFX পাইপলাইনগুলি Python API ব্যবহার করে সংজ্ঞায়িত করা হয়। আমরা স্বয়ংক্রিয়ভাবে ইনপুট উদাহরণ থেকে একটি স্কিমা তৈরি করতে একটি পাইপলাইন তৈরি করব। এই স্কিমা একজন মানুষের দ্বারা পর্যালোচনা করা যেতে পারে এবং প্রয়োজন অনুসারে সামঞ্জস্য করা যেতে পারে। একবার স্কিমা চূড়ান্ত হয়ে গেলে এটি পরবর্তী কাজগুলিতে প্রশিক্ষণ এবং উদাহরণ যাচাইকরণের জন্য ব্যবহার করা যেতে পারে।

ছাড়াও CsvExampleGen যা ব্যবহার করা হয় সিম্পল TFX পাইপলাইন টিউটোরিয়াল , আমরা ব্যবহার করবে StatisticsGen এবং SchemaGen :

  • StatisticsGen ডেটা সেটটি জন্য পরিসংখ্যান হিসাব করে।
  • SchemaGen পরিসংখ্যান পরীক্ষা করে এবং ইনিশিয়াল তথ্য স্কিমা তৈরি করে।

প্রতিটি উপাদানের জন্য গাইড দেখুন অথবা TFX উপাদান টিউটোরিয়াল এই উপাদানগুলির উপর আরো জানার লিঙ্ক।

পাইপলাইনের সংজ্ঞা লিখ

আমরা একটি TFX পাইপলাইন তৈরি করার জন্য একটি ফাংশন সংজ্ঞায়িত করি। একটি Pipeline বস্তুর একটি TFX পাইপলাইন যা পাইপলাইন অর্কেস্ট্রারচনা সিস্টেমগুলি TFX সমর্থন একটি ব্যবহার চলবে প্রতিনিধিত্ব করে।

def _create_schema_pipeline(pipeline_name: str,
                            pipeline_root: str,
                            data_root: str,
                            metadata_path: str) -> tfx.dsl.Pipeline:
  """Creates a pipeline for schema generation."""
  # Brings data into the pipeline.
  example_gen = tfx.components.CsvExampleGen(input_base=data_root)

  # NEW: Computes statistics over data for visualization and schema generation.
  statistics_gen = tfx.components.StatisticsGen(
      examples=example_gen.outputs['examples'])

  # NEW: Generates schema based on the generated statistics.
  schema_gen = tfx.components.SchemaGen(
      statistics=statistics_gen.outputs['statistics'], infer_feature_shape=True)

  components = [
      example_gen,
      statistics_gen,
      schema_gen,
  ]

  return tfx.dsl.Pipeline(
      pipeline_name=pipeline_name,
      pipeline_root=pipeline_root,
      metadata_connection_config=tfx.orchestration.metadata
      .sqlite_metadata_connection_config(metadata_path),
      components=components)

পাইপলাইন চালান

আমরা ব্যবহার করবে LocalDagRunner পূর্ববর্তী টিউটোরিয়ালে হিসাবে।

tfx.orchestration.LocalDagRunner().run(
  _create_schema_pipeline(
      pipeline_name=SCHEMA_PIPELINE_NAME,
      pipeline_root=SCHEMA_PIPELINE_ROOT,
      data_root=DATA_ROOT,
      metadata_path=SCHEMA_METADATA_PATH))
INFO:absl:Excluding no splits because exclude_splits is not set.
INFO:absl:Excluding no splits because exclude_splits is not set.
INFO:absl:Using deployment config:
 executor_specs {
  key: "CsvExampleGen"
  value {
    beam_executable_spec {
      python_executor_spec {
        class_path: "tfx.components.example_gen.csv_example_gen.executor.Executor"
      }
    }
  }
}
executor_specs {
  key: "SchemaGen"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.schema_gen.executor.Executor"
    }
  }
}
executor_specs {
  key: "StatisticsGen"
  value {
    beam_executable_spec {
      python_executor_spec {
        class_path: "tfx.components.statistics_gen.executor.Executor"
      }
    }
  }
}
custom_driver_specs {
  key: "CsvExampleGen"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.example_gen.driver.FileBasedDriver"
    }
  }
}
metadata_connection_config {
  sqlite {
    filename_uri: "metadata/penguin-tfdv-schema/metadata.db"
    connection_mode: READWRITE_OPENCREATE
  }
}

INFO:absl:Using connection config:
 sqlite {
  filename_uri: "metadata/penguin-tfdv-schema/metadata.db"
  connection_mode: READWRITE_OPENCREATE
}

INFO:absl:Component CsvExampleGen is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.example_gen.csv_example_gen.component.CsvExampleGen"
  }
  id: "CsvExampleGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.CsvExampleGen"
      }
    }
  }
}
outputs {
  outputs {
    key: "examples"
    value {
      artifact_spec {
        type {
          name: "Examples"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
          properties {
            key: "version"
            value: INT
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "input_base"
    value {
      field_value {
        string_value: "/tmp/tfx-datan3p7t1d2"
      }
    }
  }
  parameters {
    key: "input_config"
    value {
      field_value {
        string_value: "{\n  \"splits\": [\n    {\n      \"name\": \"single_split\",\n      \"pattern\": \"*\"\n    }\n  ]\n}"
      }
    }
  }
  parameters {
    key: "output_config"
    value {
      field_value {
        string_value: "{\n  \"split_config\": {\n    \"splits\": [\n      {\n        \"hash_buckets\": 2,\n        \"name\": \"train\"\n      },\n      {\n        \"hash_buckets\": 1,\n        \"name\": \"eval\"\n      }\n    ]\n  }\n}"
      }
    }
  }
  parameters {
    key: "output_data_format"
    value {
      field_value {
        int_value: 6
      }
    }
  }
  parameters {
    key: "output_file_format"
    value {
      field_value {
        int_value: 5
      }
    }
  }
}
downstream_nodes: "StatisticsGen"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
WARNING: Logging before InitGoogleLogging() is written to STDERR
I1205 11:10:06.444468  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:06.453292  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:06.460209  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:06.467104  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:select span and version = (0, None)
INFO:absl:latest span and version = (0, None)
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 1
I1205 11:10:06.521926  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=1, input_dict={}, output_dict=defaultdict(<class 'list'>, {'examples': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/CsvExampleGen/examples/1"
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
, artifact_type: name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}), exec_properties={'input_config': '{\n  "splits": [\n    {\n      "name": "single_split",\n      "pattern": "*"\n    }\n  ]\n}', 'output_config': '{\n  "split_config": {\n    "splits": [\n      {\n        "hash_buckets": 2,\n        "name": "train"\n      },\n      {\n        "hash_buckets": 1,\n        "name": "eval"\n      }\n    ]\n  }\n}', 'input_base': '/tmp/tfx-datan3p7t1d2', 'output_file_format': 5, 'output_data_format': 6, 'span': 0, 'version': None, 'input_fingerprint': 'split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606'}, execution_output_uri='pipelines/penguin-tfdv-schema/CsvExampleGen/.system/executor_execution/1/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv-schema/CsvExampleGen/.system/stateful_working_dir/2021-12-05T11:10:06.420329', tmp_dir='pipelines/penguin-tfdv-schema/CsvExampleGen/.system/executor_execution/1/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.example_gen.csv_example_gen.component.CsvExampleGen"
  }
  id: "CsvExampleGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.CsvExampleGen"
      }
    }
  }
}
outputs {
  outputs {
    key: "examples"
    value {
      artifact_spec {
        type {
          name: "Examples"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
          properties {
            key: "version"
            value: INT
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "input_base"
    value {
      field_value {
        string_value: "/tmp/tfx-datan3p7t1d2"
      }
    }
  }
  parameters {
    key: "input_config"
    value {
      field_value {
        string_value: "{\n  \"splits\": [\n    {\n      \"name\": \"single_split\",\n      \"pattern\": \"*\"\n    }\n  ]\n}"
      }
    }
  }
  parameters {
    key: "output_config"
    value {
      field_value {
        string_value: "{\n  \"split_config\": {\n    \"splits\": [\n      {\n        \"hash_buckets\": 2,\n        \"name\": \"train\"\n      },\n      {\n        \"hash_buckets\": 1,\n        \"name\": \"eval\"\n      }\n    ]\n  }\n}"
      }
    }
  }
  parameters {
    key: "output_data_format"
    value {
      field_value {
        int_value: 6
      }
    }
  }
  parameters {
    key: "output_file_format"
    value {
      field_value {
        int_value: 5
      }
    }
  }
}
downstream_nodes: "StatisticsGen"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv-schema"
, pipeline_run_id='2021-12-05T11:10:06.420329')
INFO:absl:Generating examples.
WARNING:apache_beam.runners.interactive.interactive_environment:Dependencies required for Interactive Beam PCollection visualization are not available, please use: `pip install apache-beam[interactive]` to install necessary dependencies to enable all data visualization features.
INFO:absl:Processing input csv data /tmp/tfx-datan3p7t1d2/* to TFExample.
WARNING:root:Make sure that locally built Python SDK docker image has Python 3.7 interpreter.
WARNING:apache_beam.io.tfrecordio:Couldn't find python-snappy so the implementation of _TFRecordUtil._masked_crc32c is not as fast as it could be.
INFO:absl:Examples generated.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 1 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'examples': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/CsvExampleGen/examples/1"
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}) for execution 1
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component CsvExampleGen is finished.
INFO:absl:Component StatisticsGen is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.statistics_gen.component.StatisticsGen"
  }
  id: "StatisticsGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.StatisticsGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "examples"
    value {
      channels {
        producer_node_query {
          id: "CsvExampleGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:06.420329"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema.CsvExampleGen"
            }
          }
        }
        artifact_query {
          type {
            name: "Examples"
          }
        }
        output_key: "examples"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "statistics"
    value {
      artifact_spec {
        type {
          name: "ExampleStatistics"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
}
upstream_nodes: "CsvExampleGen"
downstream_nodes: "SchemaGen"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:08.104562  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 2
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=2, input_dict={'examples': [Artifact(artifact: id: 1
type_id: 15
uri: "pipelines/penguin-tfdv-schema/CsvExampleGen/examples/1"
properties {
  key: "split_names"
  value {
    string_value: "[\"train\", \"eval\"]"
  }
}
custom_properties {
  key: "file_format"
  value {
    string_value: "tfrecords_gzip"
  }
}
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "payload_format"
  value {
    string_value: "FORMAT_TF_EXAMPLE"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702608076
last_update_time_since_epoch: 1638702608076
, artifact_type: id: 15
name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}, output_dict=defaultdict(<class 'list'>, {'statistics': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/StatisticsGen/statistics/2"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:StatisticsGen:statistics:0"
  }
}
, artifact_type: name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}), exec_properties={'exclude_splits': '[]'}, execution_output_uri='pipelines/penguin-tfdv-schema/StatisticsGen/.system/executor_execution/2/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv-schema/StatisticsGen/.system/stateful_working_dir/2021-12-05T11:10:06.420329', tmp_dir='pipelines/penguin-tfdv-schema/StatisticsGen/.system/executor_execution/2/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.statistics_gen.component.StatisticsGen"
  }
  id: "StatisticsGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.StatisticsGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "examples"
    value {
      channels {
        producer_node_query {
          id: "CsvExampleGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:06.420329"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema.CsvExampleGen"
            }
          }
        }
        artifact_query {
          type {
            name: "Examples"
          }
        }
        output_key: "examples"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "statistics"
    value {
      artifact_spec {
        type {
          name: "ExampleStatistics"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
}
upstream_nodes: "CsvExampleGen"
downstream_nodes: "SchemaGen"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv-schema"
, pipeline_run_id='2021-12-05T11:10:06.420329')
INFO:absl:Generating statistics for split train.
INFO:absl:Statistics for split train written to pipelines/penguin-tfdv-schema/StatisticsGen/statistics/2/Split-train.
INFO:absl:Generating statistics for split eval.
INFO:absl:Statistics for split eval written to pipelines/penguin-tfdv-schema/StatisticsGen/statistics/2/Split-eval.
WARNING:root:Make sure that locally built Python SDK docker image has Python 3.7 interpreter.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 2 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'statistics': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/StatisticsGen/statistics/2"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:StatisticsGen:statistics:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}) for execution 2
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component StatisticsGen is finished.
INFO:absl:Component SchemaGen is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.schema_gen.component.SchemaGen"
  }
  id: "SchemaGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.SchemaGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "statistics"
    value {
      channels {
        producer_node_query {
          id: "StatisticsGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:06.420329"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema.StatisticsGen"
            }
          }
        }
        artifact_query {
          type {
            name: "ExampleStatistics"
          }
        }
        output_key: "statistics"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "schema"
    value {
      artifact_spec {
        type {
          name: "Schema"
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
  parameters {
    key: "infer_feature_shape"
    value {
      field_value {
        int_value: 1
      }
    }
  }
}
upstream_nodes: "StatisticsGen"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:10.975282  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 3
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=3, input_dict={'statistics': [Artifact(artifact: id: 2
type_id: 17
uri: "pipelines/penguin-tfdv-schema/StatisticsGen/statistics/2"
properties {
  key: "split_names"
  value {
    string_value: "[\"train\", \"eval\"]"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:StatisticsGen:statistics:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702610957
last_update_time_since_epoch: 1638702610957
, artifact_type: id: 17
name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}, output_dict=defaultdict(<class 'list'>, {'schema': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/SchemaGen/schema/3"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:SchemaGen:schema:0"
  }
}
, artifact_type: name: "Schema"
)]}), exec_properties={'exclude_splits': '[]', 'infer_feature_shape': 1}, execution_output_uri='pipelines/penguin-tfdv-schema/SchemaGen/.system/executor_execution/3/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv-schema/SchemaGen/.system/stateful_working_dir/2021-12-05T11:10:06.420329', tmp_dir='pipelines/penguin-tfdv-schema/SchemaGen/.system/executor_execution/3/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.schema_gen.component.SchemaGen"
  }
  id: "SchemaGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:06.420329"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv-schema.SchemaGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "statistics"
    value {
      channels {
        producer_node_query {
          id: "StatisticsGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:06.420329"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv-schema.StatisticsGen"
            }
          }
        }
        artifact_query {
          type {
            name: "ExampleStatistics"
          }
        }
        output_key: "statistics"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "schema"
    value {
      artifact_spec {
        type {
          name: "Schema"
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
  parameters {
    key: "infer_feature_shape"
    value {
      field_value {
        int_value: 1
      }
    }
  }
}
upstream_nodes: "StatisticsGen"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv-schema"
, pipeline_run_id='2021-12-05T11:10:06.420329')
INFO:absl:Processing schema from statistics for split train.
INFO:absl:Processing schema from statistics for split eval.
INFO:absl:Schema written to pipelines/penguin-tfdv-schema/SchemaGen/schema/3/schema.pbtxt.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 3 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'schema': [Artifact(artifact: uri: "pipelines/penguin-tfdv-schema/SchemaGen/schema/3"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv-schema:2021-12-05T11:10:06.420329:SchemaGen:schema:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "Schema"
)]}) for execution 3
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component SchemaGen is finished.
I1205 11:10:11.010145  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type

আপনার দেখতে হবে "INFO:absl:কম্পোনেন্ট SchemaGen শেষ হয়েছে।" যদি পাইপলাইন সফলভাবে শেষ হয়।

আমরা আমাদের ডেটাসেট বুঝতে পাইপলাইনের আউটপুট পরীক্ষা করব।

পাইপলাইনের আউটপুট পর্যালোচনা করুন

আগের টিউটোরিয়ালে ব্যাখ্যা, একটি TFX পাইপলাইন আউটপুট, নিদর্শন এবং দুই ধরণের উত্পাদন করে মেটাডেটা ডিবি (MLMD) যা নিদর্শন এবং পাইপলাইন মৃত্যুদণ্ডের মেটাডাটা রয়েছে। আমরা উপরের কক্ষগুলিতে এই আউটপুটগুলির অবস্থান সংজ্ঞায়িত করেছি। ডিফল্টরূপে, নিদর্শন অধীনে সংরক্ষণ করা হয় pipelines ডিরেক্টরি ও মিটাডাটা অধীনে একটি SQLite ডাটাবেস হিসাবে সংরক্ষিত হয় metadata ডিরেক্টরি।

আপনি এই আউটপুটগুলি প্রোগ্রামেটিকভাবে সনাক্ত করতে MLMD API ব্যবহার করতে পারেন। প্রথমত, আমরা কিছু ইউটিলিটি ফাংশন সংজ্ঞায়িত করব আউটপুট আর্টিফ্যাক্টগুলি অনুসন্ধান করার জন্য যা এইমাত্র উত্পাদিত হয়েছে।

from ml_metadata.proto import metadata_store_pb2
# Non-public APIs, just for showcase.
from tfx.orchestration.portable.mlmd import execution_lib

# TODO(b/171447278): Move these functions into the TFX library.

def get_latest_artifacts(metadata, pipeline_name, component_id):
  """Output artifacts of the latest run of the component."""
  context = metadata.store.get_context_by_type_and_name(
      'node', f'{pipeline_name}.{component_id}')
  executions = metadata.store.get_executions_by_context(context.id)
  latest_execution = max(executions,
                         key=lambda e:e.last_update_time_since_epoch)
  return execution_lib.get_artifacts_dict(metadata, latest_execution.id,
                                          [metadata_store_pb2.Event.OUTPUT])

# Non-public APIs, just for showcase.
from tfx.orchestration.experimental.interactive import visualizations

def visualize_artifacts(artifacts):
  """Visualizes artifacts using standard visualization modules."""
  for artifact in artifacts:
    visualization = visualizations.get_registry().get_visualization(
        artifact.type_name)
    if visualization:
      visualization.display(artifact)

from tfx.orchestration.experimental.interactive import standard_visualizations
standard_visualizations.register_standard_visualizations()

এখন আমরা পাইপলাইন এক্সিকিউশন থেকে আউটপুট পরীক্ষা করতে পারি।

# Non-public APIs, just for showcase.
from tfx.orchestration.metadata import Metadata
from tfx.types import standard_component_specs

metadata_connection_config = tfx.orchestration.metadata.sqlite_metadata_connection_config(
    SCHEMA_METADATA_PATH)

with Metadata(metadata_connection_config) as metadata_handler:
  # Find output artifacts from MLMD.
  stat_gen_output = get_latest_artifacts(metadata_handler, SCHEMA_PIPELINE_NAME,
                                         'StatisticsGen')
  stats_artifacts = stat_gen_output[standard_component_specs.STATISTICS_KEY]

  schema_gen_output = get_latest_artifacts(metadata_handler,
                                           SCHEMA_PIPELINE_NAME, 'SchemaGen')
  schema_artifacts = schema_gen_output[standard_component_specs.SCHEMA_KEY]
INFO:absl:MetadataStore with DB connection initialized

প্রতিটি উপাদান থেকে আউটপুট পরীক্ষা করার সময় এসেছে। উপরে বর্ণিত, Tensorflow ডেটা ভ্যালিডেশন (TFDV) ব্যবহার করা হয় StatisticsGen এবং SchemaGen এবং TFDV এই উপাদানগুলো থেকে আউটপুট কল্পনা প্রদান করে।

এই টিউটোরিয়ালে, আমরা TFX-এ ভিজ্যুয়ালাইজেশন হেল্পার পদ্ধতিগুলি ব্যবহার করব যা ভিজ্যুয়ালাইজেশন দেখানোর জন্য অভ্যন্তরীণভাবে TFDV ব্যবহার করে।

StatisticsGen থেকে আউটপুট পরীক্ষা করুন

# docs-infra: no-execute
visualize_artifacts(stats_artifacts)

আপনি ইনপুট ডেটার জন্য বিভিন্ন পরিসংখ্যান দেখতে পারেন। এই পরিসংখ্যানগুলি সরবরাহ করা হয় SchemaGen স্বয়ংক্রিয়ভাবে তথ্য ইনিশিয়াল স্কিমা গঠন করা।

SchemaGen থেকে আউটপুট পরীক্ষা করুন

visualize_artifacts(schema_artifacts)

StatisticsGen-এর আউটপুট থেকে এই স্কিমা স্বয়ংক্রিয়ভাবে অনুমান করা হয়। আপনি 4টি ফ্লোট বৈশিষ্ট্য এবং 1টি আইএনটি বৈশিষ্ট্য দেখতে সক্ষম হবেন।

ভবিষ্যতে ব্যবহারের জন্য স্কিমা রপ্তানি করুন

আমাদের উত্পন্ন স্কিমা পর্যালোচনা এবং পরিমার্জন করতে হবে। পর্যালোচিত স্কিমা ML মডেল প্রশিক্ষণের জন্য পরবর্তী পাইপলাইনে ব্যবহার করার জন্য স্থির থাকতে হবে। অন্য কথায়, আপনি প্রকৃত ব্যবহারের ক্ষেত্রে আপনার সংস্করণ নিয়ন্ত্রণ সিস্টেমে স্কিমা ফাইল যোগ করতে চাইতে পারেন। এই টিউটোরিয়ালে, আমরা সরলতার জন্য একটি পূর্বনির্ধারিত ফাইল সিস্টেম পাথে স্কিমাটিকে কপি করব।

import shutil

_schema_filename = 'schema.pbtxt'
SCHEMA_PATH = 'schema'

os.makedirs(SCHEMA_PATH, exist_ok=True)
_generated_path = os.path.join(schema_artifacts[0].uri, _schema_filename)

# Copy the 'schema.pbtxt' file from the artifact uri to a predefined path.
shutil.copy(_generated_path, SCHEMA_PATH)
'schema/schema.pbtxt'

স্কিমা ফাইল ব্যবহার প্রোটোকল বাফার টেক্সট বিন্যাসে এবং একটি দৃষ্টান্ত TensorFlow মেটাডেটা স্কিমা প্রোটো

print(f'Schema at {SCHEMA_PATH}-----')
!cat {SCHEMA_PATH}/*
Schema at schema-----
feature {
  name: "body_mass_g"
  type: FLOAT
  presence {
    min_fraction: 1.0
    min_count: 1
  }
  shape {
    dim {
      size: 1
    }
  }
}
feature {
  name: "culmen_depth_mm"
  type: FLOAT
  presence {
    min_fraction: 1.0
    min_count: 1
  }
  shape {
    dim {
      size: 1
    }
  }
}
feature {
  name: "culmen_length_mm"
  type: FLOAT
  presence {
    min_fraction: 1.0
    min_count: 1
  }
  shape {
    dim {
      size: 1
    }
  }
}
feature {
  name: "flipper_length_mm"
  type: FLOAT
  presence {
    min_fraction: 1.0
    min_count: 1
  }
  shape {
    dim {
      size: 1
    }
  }
}
feature {
  name: "species"
  type: INT
  presence {
    min_fraction: 1.0
    min_count: 1
  }
  shape {
    dim {
      size: 1
    }
  }
}

আপনি পর্যালোচনা এবং সম্ভবত প্রয়োজন অনুযায়ী স্কিমা সংজ্ঞা সম্পাদনা করতে ভুলবেন না। এই টিউটোরিয়ালে, আমরা শুধুমাত্র জেনারেট করা স্কিমা অপরিবর্তিত ব্যবহার করব।

ইনপুট উদাহরণ যাচাই করুন এবং একটি ML মডেল প্রশিক্ষণ

আমরা পাইপলাইন যে আমরা তৈরি ফিরে যেতে হবে সরল TFX পাইপলাইন টিউটোরিয়াল , একটি এমএল মডেল প্রশিক্ষণ এবং মডেল প্রশিক্ষণ কোড লেখার জন্য উত্পন্ন স্কিমা ব্যবহার করতে।

আমরা একটি যোগ হবে ExampleValidator উপাদান স্কিমা থেকে সম্মান সঙ্গে ইনকামিং ডেটাসেটে ব্যতিক্রমসমূহ এবং হারিয়ে যাওয়া মানের জন্য দেখাবে।

মডেল প্রশিক্ষণ কোড লিখুন

আমরা যেমন করেছিল মডেল কোড লিখতে প্রয়োজন সরল TFX পাইপলাইন টিউটোরিয়াল

মডেলটি নিজেই আগের টিউটোরিয়ালের মতোই, তবে এবার আমরা ম্যানুয়ালি বৈশিষ্ট্যগুলি নির্দিষ্ট করার পরিবর্তে আগের পাইপলাইন থেকে তৈরি স্কিমা ব্যবহার করব। বেশিরভাগ কোড পরিবর্তন করা হয়নি। একমাত্র পার্থক্য হল এই ফাইলটিতে আমাদের নাম এবং বৈশিষ্ট্যগুলির ধরন উল্লেখ করার দরকার নেই। এর পরিবর্তে, আমরা তাদের স্কিমা ফাইল থেকে পড়া।

_trainer_module_file = 'penguin_trainer.py'
%%writefile {_trainer_module_file}

from typing import List
from absl import logging
import tensorflow as tf
from tensorflow import keras
from tensorflow_transform.tf_metadata import schema_utils

from tfx import v1 as tfx
from tfx_bsl.public import tfxio
from tensorflow_metadata.proto.v0 import schema_pb2

# We don't need to specify _FEATURE_KEYS and _FEATURE_SPEC any more.
# Those information can be read from the given schema file.

_LABEL_KEY = 'species'

_TRAIN_BATCH_SIZE = 20
_EVAL_BATCH_SIZE = 10

def _input_fn(file_pattern: List[str],
              data_accessor: tfx.components.DataAccessor,
              schema: schema_pb2.Schema,
              batch_size: int = 200) -> tf.data.Dataset:
  """Generates features and label for training.

  Args:
    file_pattern: List of paths or patterns of input tfrecord files.
    data_accessor: DataAccessor for converting input to RecordBatch.
    schema: schema of the input data.
    batch_size: representing the number of consecutive elements of returned
      dataset to combine in a single batch

  Returns:
    A dataset that contains (features, indices) tuple where features is a
      dictionary of Tensors, and indices is a single Tensor of label indices.
  """
  return data_accessor.tf_dataset_factory(
      file_pattern,
      tfxio.TensorFlowDatasetOptions(
          batch_size=batch_size, label_key=_LABEL_KEY),
      schema=schema).repeat()


def _build_keras_model(schema: schema_pb2.Schema) -> tf.keras.Model:
  """Creates a DNN Keras model for classifying penguin data.

  Returns:
    A Keras Model.
  """
  # The model below is built with Functional API, please refer to
  # https://www.tensorflow.org/guide/keras/overview for all API options.

  # ++ Changed code: Uses all features in the schema except the label.
  feature_keys = [f.name for f in schema.feature if f.name != _LABEL_KEY]
  inputs = [keras.layers.Input(shape=(1,), name=f) for f in feature_keys]
  # ++ End of the changed code.

  d = keras.layers.concatenate(inputs)
  for _ in range(2):
    d = keras.layers.Dense(8, activation='relu')(d)
  outputs = keras.layers.Dense(3)(d)

  model = keras.Model(inputs=inputs, outputs=outputs)
  model.compile(
      optimizer=keras.optimizers.Adam(1e-2),
      loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
      metrics=[keras.metrics.SparseCategoricalAccuracy()])

  model.summary(print_fn=logging.info)
  return model


# TFX Trainer will call this function.
def run_fn(fn_args: tfx.components.FnArgs):
  """Train the model based on given args.

  Args:
    fn_args: Holds args used to train the model as name/value pairs.
  """

  # ++ Changed code: Reads in schema file passed to the Trainer component.
  schema = tfx.utils.parse_pbtxt_file(fn_args.schema_path, schema_pb2.Schema())
  # ++ End of the changed code.

  train_dataset = _input_fn(
      fn_args.train_files,
      fn_args.data_accessor,
      schema,
      batch_size=_TRAIN_BATCH_SIZE)
  eval_dataset = _input_fn(
      fn_args.eval_files,
      fn_args.data_accessor,
      schema,
      batch_size=_EVAL_BATCH_SIZE)

  model = _build_keras_model(schema)
  model.fit(
      train_dataset,
      steps_per_epoch=fn_args.train_steps,
      validation_data=eval_dataset,
      validation_steps=fn_args.eval_steps)

  # The result of the training should be saved in `fn_args.serving_model_dir`
  # directory.
  model.save(fn_args.serving_model_dir, save_format='tf')
Writing penguin_trainer.py

এখন আপনি মডেল প্রশিক্ষণের জন্য একটি TFX পাইপলাইন তৈরি করার সমস্ত প্রস্তুতিমূলক পদক্ষেপগুলি সম্পন্ন করেছেন।

পাইপলাইনের সংজ্ঞা লিখ

আমরা দুটি নতুন উপাদান, যোগ হবে Importer এবং ExampleValidator । আমদানিকারক TFX পাইপলাইনে একটি বহিরাগত ফাইল নিয়ে আসে। এই ক্ষেত্রে, এটি স্কিমা সংজ্ঞা ধারণকারী একটি ফাইল। ExampleValidator ইনপুট ডেটা পরীক্ষা করবে এবং যাচাই করবে যে সমস্ত ইনপুট ডেটা আমাদের দেওয়া ডেটা স্কিমার সাথে সঙ্গতিপূর্ণ কিনা।

def _create_pipeline(pipeline_name: str, pipeline_root: str, data_root: str,
                     schema_path: str, module_file: str, serving_model_dir: str,
                     metadata_path: str) -> tfx.dsl.Pipeline:
  """Creates a pipeline using predefined schema with TFX."""
  # Brings data into the pipeline.
  example_gen = tfx.components.CsvExampleGen(input_base=data_root)

  # Computes statistics over data for visualization and example validation.
  statistics_gen = tfx.components.StatisticsGen(
      examples=example_gen.outputs['examples'])

  # NEW: Import the schema.
  schema_importer = tfx.dsl.Importer(
      source_uri=schema_path,
      artifact_type=tfx.types.standard_artifacts.Schema).with_id(
          'schema_importer')

  # NEW: Performs anomaly detection based on statistics and data schema.
  example_validator = tfx.components.ExampleValidator(
      statistics=statistics_gen.outputs['statistics'],
      schema=schema_importer.outputs['result'])

  # Uses user-provided Python function that trains a model.
  trainer = tfx.components.Trainer(
      module_file=module_file,
      examples=example_gen.outputs['examples'],
      schema=schema_importer.outputs['result'],  # Pass the imported schema.
      train_args=tfx.proto.TrainArgs(num_steps=100),
      eval_args=tfx.proto.EvalArgs(num_steps=5))

  # Pushes the model to a filesystem destination.
  pusher = tfx.components.Pusher(
      model=trainer.outputs['model'],
      push_destination=tfx.proto.PushDestination(
          filesystem=tfx.proto.PushDestination.Filesystem(
              base_directory=serving_model_dir)))

  components = [
      example_gen,

      # NEW: Following three components were added to the pipeline.
      statistics_gen,
      schema_importer,
      example_validator,

      trainer,
      pusher,
  ]

  return tfx.dsl.Pipeline(
      pipeline_name=pipeline_name,
      pipeline_root=pipeline_root,
      metadata_connection_config=tfx.orchestration.metadata
      .sqlite_metadata_connection_config(metadata_path),
      components=components)

পাইপলাইন চালান

tfx.orchestration.LocalDagRunner().run(
  _create_pipeline(
      pipeline_name=PIPELINE_NAME,
      pipeline_root=PIPELINE_ROOT,
      data_root=DATA_ROOT,
      schema_path=SCHEMA_PATH,
      module_file=_trainer_module_file,
      serving_model_dir=SERVING_MODEL_DIR,
      metadata_path=METADATA_PATH))
INFO:absl:Excluding no splits because exclude_splits is not set.
INFO:absl:Excluding no splits because exclude_splits is not set.
INFO:absl:Generating ephemeral wheel package for '/tmpfs/src/temp/docs/tutorials/tfx/penguin_trainer.py' (including modules: ['penguin_trainer']).
INFO:absl:User module package has hash fingerprint version 000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.
INFO:absl:Executing: ['/tmpfs/src/tf_docs_env/bin/python', '/tmp/tmp50dqc5bp/_tfx_generated_setup.py', 'bdist_wheel', '--bdist-dir', '/tmp/tmp6_kn7s87', '--dist-dir', '/tmp/tmpwt7plki0']
/tmpfs/src/tf_docs_env/lib/python3.7/site-packages/setuptools/command/install.py:37: SetuptoolsDeprecationWarning: setup.py install is deprecated. Use build and pip and other standards-based tools.
  setuptools.SetuptoolsDeprecationWarning,
listing git files failed - pretending there aren't any
INFO:absl:Successfully built user code wheel distribution at 'pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl'; target user module is 'penguin_trainer'.
INFO:absl:Full user module path is 'penguin_trainer@pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl'
INFO:absl:Using deployment config:
 executor_specs {
  key: "CsvExampleGen"
  value {
    beam_executable_spec {
      python_executor_spec {
        class_path: "tfx.components.example_gen.csv_example_gen.executor.Executor"
      }
    }
  }
}
executor_specs {
  key: "ExampleValidator"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.example_validator.executor.Executor"
    }
  }
}
executor_specs {
  key: "Pusher"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.pusher.executor.Executor"
    }
  }
}
executor_specs {
  key: "StatisticsGen"
  value {
    beam_executable_spec {
      python_executor_spec {
        class_path: "tfx.components.statistics_gen.executor.Executor"
      }
    }
  }
}
executor_specs {
  key: "Trainer"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.trainer.executor.GenericExecutor"
    }
  }
}
custom_driver_specs {
  key: "CsvExampleGen"
  value {
    python_class_executable_spec {
      class_path: "tfx.components.example_gen.driver.FileBasedDriver"
    }
  }
}
metadata_connection_config {
  sqlite {
    filename_uri: "metadata/penguin-tfdv/metadata.db"
    connection_mode: READWRITE_OPENCREATE
  }
}

INFO:absl:Using connection config:
 sqlite {
  filename_uri: "metadata/penguin-tfdv/metadata.db"
  connection_mode: READWRITE_OPENCREATE
}

INFO:absl:Component CsvExampleGen is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.example_gen.csv_example_gen.component.CsvExampleGen"
  }
  id: "CsvExampleGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.CsvExampleGen"
      }
    }
  }
}
outputs {
  outputs {
    key: "examples"
    value {
      artifact_spec {
        type {
          name: "Examples"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
          properties {
            key: "version"
            value: INT
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "input_base"
    value {
      field_value {
        string_value: "/tmp/tfx-datan3p7t1d2"
      }
    }
  }
  parameters {
    key: "input_config"
    value {
      field_value {
        string_value: "{\n  \"splits\": [\n    {\n      \"name\": \"single_split\",\n      \"pattern\": \"*\"\n    }\n  ]\n}"
      }
    }
  }
  parameters {
    key: "output_config"
    value {
      field_value {
        string_value: "{\n  \"split_config\": {\n    \"splits\": [\n      {\n        \"hash_buckets\": 2,\n        \"name\": \"train\"\n      },\n      {\n        \"hash_buckets\": 1,\n        \"name\": \"eval\"\n      }\n    ]\n  }\n}"
      }
    }
  }
  parameters {
    key: "output_data_format"
    value {
      field_value {
        int_value: 6
      }
    }
  }
  parameters {
    key: "output_file_format"
    value {
      field_value {
        int_value: 5
      }
    }
  }
}
downstream_nodes: "StatisticsGen"
downstream_nodes: "Trainer"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:11.685647  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:11.692644  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:11.699625  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:11.708110  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:select span and version = (0, None)
INFO:absl:latest span and version = (0, None)
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 1
I1205 11:10:11.722760  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=1, input_dict={}, output_dict=defaultdict(<class 'list'>, {'examples': [Artifact(artifact: uri: "pipelines/penguin-tfdv/CsvExampleGen/examples/1"
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
, artifact_type: name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}), exec_properties={'input_base': '/tmp/tfx-datan3p7t1d2', 'input_config': '{\n  "splits": [\n    {\n      "name": "single_split",\n      "pattern": "*"\n    }\n  ]\n}', 'output_data_format': 6, 'output_config': '{\n  "split_config": {\n    "splits": [\n      {\n        "hash_buckets": 2,\n        "name": "train"\n      },\n      {\n        "hash_buckets": 1,\n        "name": "eval"\n      }\n    ]\n  }\n}', 'output_file_format': 5, 'span': 0, 'version': None, 'input_fingerprint': 'split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606'}, execution_output_uri='pipelines/penguin-tfdv/CsvExampleGen/.system/executor_execution/1/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv/CsvExampleGen/.system/stateful_working_dir/2021-12-05T11:10:11.667239', tmp_dir='pipelines/penguin-tfdv/CsvExampleGen/.system/executor_execution/1/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.example_gen.csv_example_gen.component.CsvExampleGen"
  }
  id: "CsvExampleGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.CsvExampleGen"
      }
    }
  }
}
outputs {
  outputs {
    key: "examples"
    value {
      artifact_spec {
        type {
          name: "Examples"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
          properties {
            key: "version"
            value: INT
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "input_base"
    value {
      field_value {
        string_value: "/tmp/tfx-datan3p7t1d2"
      }
    }
  }
  parameters {
    key: "input_config"
    value {
      field_value {
        string_value: "{\n  \"splits\": [\n    {\n      \"name\": \"single_split\",\n      \"pattern\": \"*\"\n    }\n  ]\n}"
      }
    }
  }
  parameters {
    key: "output_config"
    value {
      field_value {
        string_value: "{\n  \"split_config\": {\n    \"splits\": [\n      {\n        \"hash_buckets\": 2,\n        \"name\": \"train\"\n      },\n      {\n        \"hash_buckets\": 1,\n        \"name\": \"eval\"\n      }\n    ]\n  }\n}"
      }
    }
  }
  parameters {
    key: "output_data_format"
    value {
      field_value {
        int_value: 6
      }
    }
  }
  parameters {
    key: "output_file_format"
    value {
      field_value {
        int_value: 5
      }
    }
  }
}
downstream_nodes: "StatisticsGen"
downstream_nodes: "Trainer"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv"
, pipeline_run_id='2021-12-05T11:10:11.667239')
INFO:absl:Generating examples.
INFO:absl:Processing input csv data /tmp/tfx-datan3p7t1d2/* to TFExample.
running bdist_wheel
running build
running build_py
creating build
creating build/lib
copying penguin_trainer.py -> build/lib
installing to /tmp/tmp6_kn7s87
running install
running install_lib
copying build/lib/penguin_trainer.py -> /tmp/tmp6_kn7s87
running install_egg_info
running egg_info
creating tfx_user_code_Trainer.egg-info
writing tfx_user_code_Trainer.egg-info/PKG-INFO
writing dependency_links to tfx_user_code_Trainer.egg-info/dependency_links.txt
writing top-level names to tfx_user_code_Trainer.egg-info/top_level.txt
writing manifest file 'tfx_user_code_Trainer.egg-info/SOURCES.txt'
reading manifest file 'tfx_user_code_Trainer.egg-info/SOURCES.txt'
writing manifest file 'tfx_user_code_Trainer.egg-info/SOURCES.txt'
Copying tfx_user_code_Trainer.egg-info to /tmp/tmp6_kn7s87/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3.7.egg-info
running install_scripts
creating /tmp/tmp6_kn7s87/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.dist-info/WHEEL
creating '/tmp/tmpwt7plki0/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl' and adding '/tmp/tmp6_kn7s87' to it
adding 'penguin_trainer.py'
adding 'tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.dist-info/METADATA'
adding 'tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.dist-info/WHEEL'
adding 'tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.dist-info/top_level.txt'
adding 'tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2.dist-info/RECORD'
removing /tmp/tmp6_kn7s87
WARNING:root:Make sure that locally built Python SDK docker image has Python 3.7 interpreter.
INFO:absl:Examples generated.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 1 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'examples': [Artifact(artifact: uri: "pipelines/penguin-tfdv/CsvExampleGen/examples/1"
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}) for execution 1
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component CsvExampleGen is finished.
INFO:absl:Component schema_importer is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.dsl.components.common.importer.Importer"
  }
  id: "schema_importer"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.schema_importer"
      }
    }
  }
}
outputs {
  outputs {
    key: "result"
    value {
      artifact_spec {
        type {
          name: "Schema"
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "artifact_uri"
    value {
      field_value {
        string_value: "schema"
      }
    }
  }
  parameters {
    key: "reimport"
    value {
      field_value {
        int_value: 0
      }
    }
  }
}
downstream_nodes: "ExampleValidator"
downstream_nodes: "Trainer"
execution_options {
  caching_options {
  }
}

INFO:absl:Running as an importer node.
INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:12.796727  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Processing source uri: schema, properties: {}, custom_properties: {}
INFO:absl:Component schema_importer is finished.
I1205 11:10:12.806819  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Component StatisticsGen is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.statistics_gen.component.StatisticsGen"
  }
  id: "StatisticsGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.StatisticsGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "examples"
    value {
      channels {
        producer_node_query {
          id: "CsvExampleGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.CsvExampleGen"
            }
          }
        }
        artifact_query {
          type {
            name: "Examples"
          }
        }
        output_key: "examples"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "statistics"
    value {
      artifact_spec {
        type {
          name: "ExampleStatistics"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
}
upstream_nodes: "CsvExampleGen"
downstream_nodes: "ExampleValidator"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:12.827589  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 3
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=3, input_dict={'examples': [Artifact(artifact: id: 1
type_id: 15
uri: "pipelines/penguin-tfdv/CsvExampleGen/examples/1"
properties {
  key: "split_names"
  value {
    string_value: "[\"train\", \"eval\"]"
  }
}
custom_properties {
  key: "file_format"
  value {
    string_value: "tfrecords_gzip"
  }
}
custom_properties {
  key: "input_fingerprint"
  value {
    string_value: "split:single_split,num_files:1,total_bytes:25648,xor_checksum:1638702606,sum_checksum:1638702606"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:CsvExampleGen:examples:0"
  }
}
custom_properties {
  key: "payload_format"
  value {
    string_value: "FORMAT_TF_EXAMPLE"
  }
}
custom_properties {
  key: "span"
  value {
    int_value: 0
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702612780
last_update_time_since_epoch: 1638702612780
, artifact_type: id: 15
name: "Examples"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
properties {
  key: "version"
  value: INT
}
)]}, output_dict=defaultdict(<class 'list'>, {'statistics': [Artifact(artifact: uri: "pipelines/penguin-tfdv/StatisticsGen/statistics/3"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:StatisticsGen:statistics:0"
  }
}
, artifact_type: name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}), exec_properties={'exclude_splits': '[]'}, execution_output_uri='pipelines/penguin-tfdv/StatisticsGen/.system/executor_execution/3/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv/StatisticsGen/.system/stateful_working_dir/2021-12-05T11:10:11.667239', tmp_dir='pipelines/penguin-tfdv/StatisticsGen/.system/executor_execution/3/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.statistics_gen.component.StatisticsGen"
  }
  id: "StatisticsGen"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.StatisticsGen"
      }
    }
  }
}
inputs {
  inputs {
    key: "examples"
    value {
      channels {
        producer_node_query {
          id: "CsvExampleGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.CsvExampleGen"
            }
          }
        }
        artifact_query {
          type {
            name: "Examples"
          }
        }
        output_key: "examples"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "statistics"
    value {
      artifact_spec {
        type {
          name: "ExampleStatistics"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
}
upstream_nodes: "CsvExampleGen"
downstream_nodes: "ExampleValidator"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv"
, pipeline_run_id='2021-12-05T11:10:11.667239')
INFO:absl:Generating statistics for split train.
INFO:absl:Statistics for split train written to pipelines/penguin-tfdv/StatisticsGen/statistics/3/Split-train.
INFO:absl:Generating statistics for split eval.
INFO:absl:Statistics for split eval written to pipelines/penguin-tfdv/StatisticsGen/statistics/3/Split-eval.
WARNING:root:Make sure that locally built Python SDK docker image has Python 3.7 interpreter.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 3 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'statistics': [Artifact(artifact: uri: "pipelines/penguin-tfdv/StatisticsGen/statistics/3"
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, artifact_type: name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
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properties {
  key: "split_names"
  value: STRING
}
)]}) for execution 3
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component StatisticsGen is finished.
INFO:absl:Component Trainer is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.trainer.component.Trainer"
  }
  id: "Trainer"
}
contexts {
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inputs {
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outputs {
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upstream_nodes: "CsvExampleGen"
upstream_nodes: "schema_importer"
downstream_nodes: "Pusher"
execution_options {
  caching_options {
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}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:15.426606  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 4
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=4, input_dict={'examples': [Artifact(artifact: id: 1
type_id: 15
uri: "pipelines/penguin-tfdv/CsvExampleGen/examples/1"
properties {
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    string_value: "[\"train\", \"eval\"]"
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custom_properties {
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    string_value: "tfrecords_gzip"
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custom_properties {
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custom_properties {
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custom_properties {
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custom_properties {
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custom_properties {
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state: LIVE
create_time_since_epoch: 1638702612780
last_update_time_since_epoch: 1638702612780
, artifact_type: id: 15
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properties {
  key: "span"
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properties {
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properties {
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)], 'schema': [Artifact(artifact: id: 2
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custom_properties {
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state: LIVE
create_time_since_epoch: 1638702612810
last_update_time_since_epoch: 1638702612810
, artifact_type: id: 17
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custom_properties {
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  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Trainer:model_run:0"
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custom_properties {
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, artifact_type: name: "Model"
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contexts {
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      name: "pipeline"
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        artifact_query {
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            name: "Schema"
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        output_key: "result"
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outputs {
  outputs {
    key: "model"
    value {
      artifact_spec {
        type {
          name: "Model"
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  outputs {
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      artifact_spec {
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parameters {
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      }
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  parameters {
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      field_value {
        string_value: "{\n  \"num_steps\": 100\n}"
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upstream_nodes: "CsvExampleGen"
upstream_nodes: "schema_importer"
downstream_nodes: "Pusher"
execution_options {
  caching_options {
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}
, pipeline_info=id: "penguin-tfdv"
, pipeline_run_id='2021-12-05T11:10:11.667239')
INFO:absl:Train on the 'train' split when train_args.splits is not set.
INFO:absl:Evaluate on the 'eval' split when eval_args.splits is not set.
INFO:absl:udf_utils.get_fn {'eval_args': '{\n  "num_steps": 5\n}', 'module_path': 'penguin_trainer@pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl', 'custom_config': 'null', 'train_args': '{\n  "num_steps": 100\n}'} 'run_fn'
INFO:absl:Installing 'pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl' to a temporary directory.
INFO:absl:Executing: ['/tmpfs/src/tf_docs_env/bin/python', '-m', 'pip', 'install', '--target', '/tmp/tmpbb1l9_v7', 'pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl']
Processing ./pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl
INFO:absl:Successfully installed 'pipelines/penguin-tfdv/_wheels/tfx_user_code_Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2-py3-none-any.whl'.
INFO:absl:Training model.
INFO:absl:Feature body_mass_g has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_depth_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature flipper_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature species has a shape dim {
  size: 1
}
. Setting to DenseTensor.
Installing collected packages: tfx-user-code-Trainer
Successfully installed tfx-user-code-Trainer-0.0+000876a22093ec764e3751d5a3ed939f1b107d1d6ade133f954ea2a767b8dfb2
INFO:absl:Feature body_mass_g has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_depth_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature flipper_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature species has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature body_mass_g has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_depth_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature flipper_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature species has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature body_mass_g has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_depth_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature culmen_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature flipper_length_mm has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Feature species has a shape dim {
  size: 1
}
. Setting to DenseTensor.
INFO:absl:Model: "model"
INFO:absl:__________________________________________________________________________________________________
INFO:absl:Layer (type)                    Output Shape         Param #     Connected to                     
INFO:absl:==================================================================================================
INFO:absl:body_mass_g (InputLayer)        [(None, 1)]          0                                            
INFO:absl:__________________________________________________________________________________________________
INFO:absl:culmen_depth_mm (InputLayer)    [(None, 1)]          0                                            
INFO:absl:__________________________________________________________________________________________________
INFO:absl:culmen_length_mm (InputLayer)   [(None, 1)]          0                                            
INFO:absl:__________________________________________________________________________________________________
INFO:absl:flipper_length_mm (InputLayer)  [(None, 1)]          0                                            
INFO:absl:__________________________________________________________________________________________________
INFO:absl:concatenate (Concatenate)       (None, 4)            0           body_mass_g[0][0]                
INFO:absl:                                                                 culmen_depth_mm[0][0]            
INFO:absl:                                                                 culmen_length_mm[0][0]           
INFO:absl:                                                                 flipper_length_mm[0][0]          
INFO:absl:__________________________________________________________________________________________________
INFO:absl:dense (Dense)                   (None, 8)            40          concatenate[0][0]                
INFO:absl:__________________________________________________________________________________________________
INFO:absl:dense_1 (Dense)                 (None, 8)            72          dense[0][0]                      
INFO:absl:__________________________________________________________________________________________________
INFO:absl:dense_2 (Dense)                 (None, 3)            27          dense_1[0][0]                    
INFO:absl:==================================================================================================
INFO:absl:Total params: 139
INFO:absl:Trainable params: 139
INFO:absl:Non-trainable params: 0
INFO:absl:__________________________________________________________________________________________________
100/100 [==============================] - 1s 3ms/step - loss: 0.5752 - sparse_categorical_accuracy: 0.8165 - val_loss: 0.2294 - val_sparse_categorical_accuracy: 0.9400
2021-12-05 11:10:20.208161: W tensorflow/python/util/util.cc:348] Sets are not currently considered sequences, but this may change in the future, so consider avoiding using them.
INFO:tensorflow:Assets written to: pipelines/penguin-tfdv/Trainer/model/4/Format-Serving/assets
INFO:tensorflow:Assets written to: pipelines/penguin-tfdv/Trainer/model/4/Format-Serving/assets
INFO:absl:Training complete. Model written to pipelines/penguin-tfdv/Trainer/model/4/Format-Serving. ModelRun written to pipelines/penguin-tfdv/Trainer/model_run/4
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 4 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'model_run': [Artifact(artifact: uri: "pipelines/penguin-tfdv/Trainer/model_run/4"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Trainer:model_run:0"
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custom_properties {
  key: "tfx_version"
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, artifact_type: name: "ModelRun"
)], 'model': [Artifact(artifact: uri: "pipelines/penguin-tfdv/Trainer/model/4"
custom_properties {
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  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Trainer:model:0"
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}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "Model"
)]}) for execution 4
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component Trainer is finished.
I1205 11:10:20.766410  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
I1205 11:10:20.770478  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Component ExampleValidator is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.example_validator.component.ExampleValidator"
  }
  id: "ExampleValidator"
}
contexts {
  contexts {
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      name: "pipeline"
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  contexts {
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    name {
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        string_value: "2021-12-05T11:10:11.667239"
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  contexts {
    type {
      name: "node"
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    name {
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        string_value: "penguin-tfdv.ExampleValidator"
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inputs {
  inputs {
    key: "schema"
    value {
      channels {
        producer_node_query {
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        }
        context_queries {
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        artifact_query {
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      }
      min_count: 1
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  inputs {
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    value {
      channels {
        producer_node_query {
          id: "StatisticsGen"
        }
        context_queries {
          type {
            name: "pipeline"
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        artifact_query {
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outputs {
  outputs {
    key: "anomalies"
    value {
      artifact_spec {
        type {
          name: "ExampleAnomalies"
          properties {
            key: "span"
            value: INT
          }
          properties {
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parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
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}
upstream_nodes: "StatisticsGen"
upstream_nodes: "schema_importer"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:20.793696  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Going to run a new execution 5
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=5, input_dict={'statistics': [Artifact(artifact: id: 3
type_id: 19
uri: "pipelines/penguin-tfdv/StatisticsGen/statistics/3"
properties {
  key: "split_names"
  value {
    string_value: "[\"train\", \"eval\"]"
  }
}
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:StatisticsGen:statistics:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702615406
last_update_time_since_epoch: 1638702615406
, artifact_type: id: 19
name: "ExampleStatistics"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)], 'schema': [Artifact(artifact: id: 2
type_id: 17
uri: "schema"
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702612810
last_update_time_since_epoch: 1638702612810
, artifact_type: id: 17
name: "Schema"
)]}, output_dict=defaultdict(<class 'list'>, {'anomalies': [Artifact(artifact: uri: "pipelines/penguin-tfdv/ExampleValidator/anomalies/5"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:ExampleValidator:anomalies:0"
  }
}
, artifact_type: name: "ExampleAnomalies"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}), exec_properties={'exclude_splits': '[]'}, execution_output_uri='pipelines/penguin-tfdv/ExampleValidator/.system/executor_execution/5/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv/ExampleValidator/.system/stateful_working_dir/2021-12-05T11:10:11.667239', tmp_dir='pipelines/penguin-tfdv/ExampleValidator/.system/executor_execution/5/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.example_validator.component.ExampleValidator"
  }
  id: "ExampleValidator"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.ExampleValidator"
      }
    }
  }
}
inputs {
  inputs {
    key: "schema"
    value {
      channels {
        producer_node_query {
          id: "schema_importer"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.schema_importer"
            }
          }
        }
        artifact_query {
          type {
            name: "Schema"
          }
        }
        output_key: "result"
      }
      min_count: 1
    }
  }
  inputs {
    key: "statistics"
    value {
      channels {
        producer_node_query {
          id: "StatisticsGen"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.StatisticsGen"
            }
          }
        }
        artifact_query {
          type {
            name: "ExampleStatistics"
          }
        }
        output_key: "statistics"
      }
      min_count: 1
    }
  }
}
outputs {
  outputs {
    key: "anomalies"
    value {
      artifact_spec {
        type {
          name: "ExampleAnomalies"
          properties {
            key: "span"
            value: INT
          }
          properties {
            key: "split_names"
            value: STRING
          }
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "exclude_splits"
    value {
      field_value {
        string_value: "[]"
      }
    }
  }
}
upstream_nodes: "StatisticsGen"
upstream_nodes: "schema_importer"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv"
, pipeline_run_id='2021-12-05T11:10:11.667239')
INFO:absl:Validating schema against the computed statistics for split train.
INFO:absl:Validation complete for split train. Anomalies written to pipelines/penguin-tfdv/ExampleValidator/anomalies/5/Split-train.
INFO:absl:Validating schema against the computed statistics for split eval.
INFO:absl:Validation complete for split eval. Anomalies written to pipelines/penguin-tfdv/ExampleValidator/anomalies/5/Split-eval.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 5 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'anomalies': [Artifact(artifact: uri: "pipelines/penguin-tfdv/ExampleValidator/anomalies/5"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:ExampleValidator:anomalies:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "ExampleAnomalies"
properties {
  key: "span"
  value: INT
}
properties {
  key: "split_names"
  value: STRING
}
)]}) for execution 5
INFO:absl:MetadataStore with DB connection initialized
INFO:absl:Component ExampleValidator is finished.
INFO:absl:Component Pusher is running.
INFO:absl:Running launcher for node_info {
  type {
    name: "tfx.components.pusher.component.Pusher"
  }
  id: "Pusher"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.Pusher"
      }
    }
  }
}
inputs {
  inputs {
    key: "model"
    value {
      channels {
        producer_node_query {
          id: "Trainer"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.Trainer"
            }
          }
        }
        artifact_query {
          type {
            name: "Model"
          }
        }
        output_key: "model"
      }
    }
  }
}
outputs {
  outputs {
    key: "pushed_model"
    value {
      artifact_spec {
        type {
          name: "PushedModel"
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "custom_config"
    value {
      field_value {
        string_value: "null"
      }
    }
  }
  parameters {
    key: "push_destination"
    value {
      field_value {
        string_value: "{\n  \"filesystem\": {\n    \"base_directory\": \"serving_model/penguin-tfdv\"\n  }\n}"
      }
    }
  }
}
upstream_nodes: "Trainer"
execution_options {
  caching_options {
  }
}

INFO:absl:MetadataStore with DB connection initialized
INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:20.848567  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Going to run a new execution 6
INFO:absl:Going to run a new execution: ExecutionInfo(execution_id=6, input_dict={'model': [Artifact(artifact: id: 5
type_id: 22
uri: "pipelines/penguin-tfdv/Trainer/model/4"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Trainer:model:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
state: LIVE
create_time_since_epoch: 1638702620774
last_update_time_since_epoch: 1638702620774
, artifact_type: id: 22
name: "Model"
)]}, output_dict=defaultdict(<class 'list'>, {'pushed_model': [Artifact(artifact: uri: "pipelines/penguin-tfdv/Pusher/pushed_model/6"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Pusher:pushed_model:0"
  }
}
, artifact_type: name: "PushedModel"
)]}), exec_properties={'push_destination': '{\n  "filesystem": {\n    "base_directory": "serving_model/penguin-tfdv"\n  }\n}', 'custom_config': 'null'}, execution_output_uri='pipelines/penguin-tfdv/Pusher/.system/executor_execution/6/executor_output.pb', stateful_working_dir='pipelines/penguin-tfdv/Pusher/.system/stateful_working_dir/2021-12-05T11:10:11.667239', tmp_dir='pipelines/penguin-tfdv/Pusher/.system/executor_execution/6/.temp/', pipeline_node=node_info {
  type {
    name: "tfx.components.pusher.component.Pusher"
  }
  id: "Pusher"
}
contexts {
  contexts {
    type {
      name: "pipeline"
    }
    name {
      field_value {
        string_value: "penguin-tfdv"
      }
    }
  }
  contexts {
    type {
      name: "pipeline_run"
    }
    name {
      field_value {
        string_value: "2021-12-05T11:10:11.667239"
      }
    }
  }
  contexts {
    type {
      name: "node"
    }
    name {
      field_value {
        string_value: "penguin-tfdv.Pusher"
      }
    }
  }
}
inputs {
  inputs {
    key: "model"
    value {
      channels {
        producer_node_query {
          id: "Trainer"
        }
        context_queries {
          type {
            name: "pipeline"
          }
          name {
            field_value {
              string_value: "penguin-tfdv"
            }
          }
        }
        context_queries {
          type {
            name: "pipeline_run"
          }
          name {
            field_value {
              string_value: "2021-12-05T11:10:11.667239"
            }
          }
        }
        context_queries {
          type {
            name: "node"
          }
          name {
            field_value {
              string_value: "penguin-tfdv.Trainer"
            }
          }
        }
        artifact_query {
          type {
            name: "Model"
          }
        }
        output_key: "model"
      }
    }
  }
}
outputs {
  outputs {
    key: "pushed_model"
    value {
      artifact_spec {
        type {
          name: "PushedModel"
        }
      }
    }
  }
}
parameters {
  parameters {
    key: "custom_config"
    value {
      field_value {
        string_value: "null"
      }
    }
  }
  parameters {
    key: "push_destination"
    value {
      field_value {
        string_value: "{\n  \"filesystem\": {\n    \"base_directory\": \"serving_model/penguin-tfdv\"\n  }\n}"
      }
    }
  }
}
upstream_nodes: "Trainer"
execution_options {
  caching_options {
  }
}
, pipeline_info=id: "penguin-tfdv"
, pipeline_run_id='2021-12-05T11:10:11.667239')
WARNING:absl:Pusher is going to push the model without validation. Consider using Evaluator or InfraValidator in your pipeline.
INFO:absl:Model version: 1638702620
INFO:absl:Model written to serving path serving_model/penguin-tfdv/1638702620.
INFO:absl:Model pushed to pipelines/penguin-tfdv/Pusher/pushed_model/6.
INFO:absl:Cleaning up stateless execution info.
INFO:absl:Execution 6 succeeded.
INFO:absl:Cleaning up stateful execution info.
INFO:absl:Publishing output artifacts defaultdict(<class 'list'>, {'pushed_model': [Artifact(artifact: uri: "pipelines/penguin-tfdv/Pusher/pushed_model/6"
custom_properties {
  key: "name"
  value {
    string_value: "penguin-tfdv:2021-12-05T11:10:11.667239:Pusher:pushed_model:0"
  }
}
custom_properties {
  key: "tfx_version"
  value {
    string_value: "1.4.0"
  }
}
, artifact_type: name: "PushedModel"
)]}) for execution 6
INFO:absl:MetadataStore with DB connection initialized
I1205 11:10:20.879335  4006 rdbms_metadata_access_object.cc:686] No property is defined for the Type
INFO:absl:Component Pusher is finished.

আপনার দেখতে হবে "INFO:absl:কম্পোনেন্ট পুশার শেষ হয়েছে।" যদি পাইপলাইন সফলভাবে শেষ হয়।

পাইপলাইনের আউটপুট পরীক্ষা করুন

আমরা পেঙ্গুইনের শ্রেণিবিন্যাস মডেলকে প্রশিক্ষণ দিয়েছি, এবং আমরা ExampleValidator উপাদানে ইনপুট উদাহরণগুলিকেও যাচাই করেছি। আমরা পূর্ববর্তী পাইপলাইনের মতো করে ExampleValidator থেকে আউটপুট বিশ্লেষণ করতে পারি।

metadata_connection_config = tfx.orchestration.metadata.sqlite_metadata_connection_config(
    METADATA_PATH)

with Metadata(metadata_connection_config) as metadata_handler:
  ev_output = get_latest_artifacts(metadata_handler, PIPELINE_NAME,
                                   'ExampleValidator')
  anomalies_artifacts = ev_output[standard_component_specs.ANOMALIES_KEY]
INFO:absl:MetadataStore with DB connection initialized

ExampleValidator থেকে ExampleAnomaliesও কল্পনা করা যেতে পারে।

visualize_artifacts(anomalies_artifacts)

উদাহরণের প্রতিটি বিভাজনের জন্য আপনার "কোনও অসঙ্গতি পাওয়া যায়নি" দেখতে হবে। যেহেতু আমরা এই পাইপলাইনে স্কিমা জেনারেশনের জন্য যে ডেটা ব্যবহার করা হয়েছিল সেই একই ডেটা ব্যবহার করেছি, এখানে কোনও অসঙ্গতি প্রত্যাশিত নয়৷ আপনি যদি নতুন ইনকামিং ডেটার সাথে বারবার এই পাইপলাইনটি চালান, ExampleValidator নতুন ডেটা এবং বিদ্যমান স্কিমার মধ্যে কোনো অসঙ্গতি খুঁজে পেতে সক্ষম হবে।

কোনো অসঙ্গতি পাওয়া গেলে, কোনো উদাহরণ আপনার অনুমান অনুসরণ করে না তা পরীক্ষা করতে আপনি আপনার ডেটা পর্যালোচনা করতে পারেন। StatisticsGen এর মত অন্যান্য উপাদান থেকে আউটপুট দরকারী হতে পারে। যাইহোক, পাওয়া যায় এমন কোনো অসঙ্গতি আর পাইপলাইন নির্বাহকে ব্লক করবে না।

পরবর্তী পদক্ষেপ

আপনি আরও রিসোর্স জানতে পারেন https://www.tensorflow.org/tfx/tutorials

দয়া করে দেখুন TFX পাইপলাইন বুঝুন TFX বিভিন্ন ধারণা সম্পর্কে আরো জানতে।