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| | |
| | from __future__ import absolute_import |
| | from urllib import request |
| | import json |
| | from packaging.version import Version |
| | from enum import Enum |
| |
|
| |
|
| | class Tasks(str, Enum): |
| | """The ML task name as referenced in the infix of the model ID.""" |
| |
|
| | IC = "ic" |
| | OD = "od" |
| | OD1 = "od1" |
| | SEMSEG = "semseg" |
| | IS = "is" |
| | TC = "tc" |
| | SPC = "spc" |
| | EQA = "eqa" |
| | TEXT_GENERATION = "textgeneration" |
| | IC_EMBEDDING = "icembedding" |
| | TC_EMBEDDING = "tcembedding" |
| | NER = "ner" |
| | SUMMARIZATION = "summarization" |
| | TRANSLATION = "translation" |
| | TABULAR_REGRESSION = "regression" |
| | TABULAR_CLASSIFICATION = "classification" |
| |
|
| |
|
| | class ProblemTypes(str, Enum): |
| | """Possible problem types for JumpStart models.""" |
| |
|
| | IMAGE_CLASSIFICATION = "Image Classification" |
| | IMAGE_EMBEDDING = "Image Embedding" |
| | OBJECT_DETECTION = "Object Detection" |
| | SEMANTIC_SEGMENTATION = "Semantic Segmentation" |
| | INSTANCE_SEGMENTATION = "Instance Segmentation" |
| | TEXT_CLASSIFICATION = "Text Classification" |
| | TEXT_EMBEDDING = "Text Embedding" |
| | QUESTION_ANSWERING = "Question Answering" |
| | SENTENCE_PAIR_CLASSIFICATION = "Sentence Pair Classification" |
| | TEXT_GENERATION = "Text Generation" |
| | TEXT_SUMMARIZATION = "Text Summarization" |
| | MACHINE_TRANSLATION = "Machine Translation" |
| | NAMED_ENTITY_RECOGNITION = "Named Entity Recognition" |
| | TABULAR_REGRESSION = "Regression" |
| | TABULAR_CLASSIFICATION = "Classification" |
| |
|
| |
|
| | class Frameworks(str, Enum): |
| | """Possible frameworks for JumpStart models""" |
| |
|
| | TENSORFLOW = "Tensorflow Hub" |
| | PYTORCH = "Pytorch Hub" |
| | HUGGINGFACE = "HuggingFace" |
| | CATBOOST = "Catboost" |
| | GLUONCV = "GluonCV" |
| | LIGHTGBM = "LightGBM" |
| | XGBOOST = "XGBoost" |
| | SCIKIT_LEARN = "ScikitLearn" |
| | SOURCE = "Source" |
| |
|
| |
|
| | JUMPSTART_REGION = "eu-west-2" |
| | SDK_MANIFEST_FILE = "models_manifest.json" |
| | JUMPSTART_BUCKET_BASE_URL = "https://jumpstart-cache-prod-{}.s3.{}.amazonaws.com".format( |
| | JUMPSTART_REGION, JUMPSTART_REGION |
| | ) |
| | TASK_MAP = { |
| | Tasks.IC: ProblemTypes.IMAGE_CLASSIFICATION, |
| | Tasks.IC_EMBEDDING: ProblemTypes.IMAGE_EMBEDDING, |
| | Tasks.OD: ProblemTypes.OBJECT_DETECTION, |
| | Tasks.OD1: ProblemTypes.OBJECT_DETECTION, |
| | Tasks.SEMSEG: ProblemTypes.SEMANTIC_SEGMENTATION, |
| | Tasks.IS: ProblemTypes.INSTANCE_SEGMENTATION, |
| | Tasks.TC: ProblemTypes.TEXT_CLASSIFICATION, |
| | Tasks.TC_EMBEDDING: ProblemTypes.TEXT_EMBEDDING, |
| | Tasks.EQA: ProblemTypes.QUESTION_ANSWERING, |
| | Tasks.SPC: ProblemTypes.SENTENCE_PAIR_CLASSIFICATION, |
| | Tasks.TEXT_GENERATION: ProblemTypes.TEXT_GENERATION, |
| | Tasks.SUMMARIZATION: ProblemTypes.TEXT_SUMMARIZATION, |
| | Tasks.TRANSLATION: ProblemTypes.MACHINE_TRANSLATION, |
| | Tasks.NER: ProblemTypes.NAMED_ENTITY_RECOGNITION, |
| | Tasks.TABULAR_REGRESSION: ProblemTypes.TABULAR_REGRESSION, |
| | Tasks.TABULAR_CLASSIFICATION: ProblemTypes.TABULAR_CLASSIFICATION, |
| | } |
| |
|
| | TO_FRAMEWORK = { |
| | "Tensorflow Hub": Frameworks.TENSORFLOW, |
| | "Pytorch Hub": Frameworks.PYTORCH, |
| | "HuggingFace": Frameworks.HUGGINGFACE, |
| | "Catboost": Frameworks.CATBOOST, |
| | "GluonCV": Frameworks.GLUONCV, |
| | "LightGBM": Frameworks.LIGHTGBM, |
| | "XGBoost": Frameworks.XGBOOST, |
| | "ScikitLearn": Frameworks.SCIKIT_LEARN, |
| | "Source": Frameworks.SOURCE, |
| | } |
| |
|
| |
|
| | MODALITY_MAP = { |
| | (Tasks.IC, Frameworks.PYTORCH): "algorithms/vision/image_classification_pytorch.rst", |
| | (Tasks.IC, Frameworks.TENSORFLOW): "algorithms/vision/image_classification_tensorflow.rst", |
| | (Tasks.IC_EMBEDDING, Frameworks.TENSORFLOW): "algorithms/vision/image_embedding_tensorflow.rst", |
| | (Tasks.IS, Frameworks.GLUONCV): "algorithms/vision/instance_segmentation_mxnet.rst", |
| | (Tasks.OD, Frameworks.GLUONCV): "algorithms/vision/object_detection_mxnet.rst", |
| | (Tasks.OD, Frameworks.PYTORCH): "algorithms/vision/object_detection_pytorch.rst", |
| | (Tasks.OD, Frameworks.TENSORFLOW): "algorithms/vision/object_detection_tensorflow.rst", |
| | (Tasks.SEMSEG, Frameworks.GLUONCV): "algorithms/vision/semantic_segmentation_mxnet.rst", |
| | ( |
| | Tasks.TRANSLATION, |
| | Frameworks.HUGGINGFACE, |
| | ): "algorithms/text/machine_translation_hugging_face.rst", |
| | (Tasks.NER, Frameworks.GLUONCV): "algorithms/text/named_entity_recognition_hugging_face.rst", |
| | (Tasks.EQA, Frameworks.PYTORCH): "algorithms/text/question_answering_pytorch.rst", |
| | ( |
| | Tasks.SPC, |
| | Frameworks.HUGGINGFACE, |
| | ): "algorithms/text/sentence_pair_classification_hugging_face.rst", |
| | ( |
| | Tasks.SPC, |
| | Frameworks.TENSORFLOW, |
| | ): "algorithms/text/sentence_pair_classification_tensorflow.rst", |
| | (Tasks.TC, Frameworks.TENSORFLOW): "algorithms/text/text_classification_tensorflow.rst", |
| | ( |
| | Tasks.TC_EMBEDDING, |
| | Frameworks.GLUONCV, |
| | ): "algorithms/vision/text_embedding_tensorflow_mxnet.rst", |
| | ( |
| | Tasks.TC_EMBEDDING, |
| | Frameworks.TENSORFLOW, |
| | ): "algorithms/vision/text_embedding_tensorflow_mxnet.rst", |
| | ( |
| | Tasks.TEXT_GENERATION, |
| | Frameworks.HUGGINGFACE, |
| | ): "algorithms/text/text_generation_hugging_face.rst", |
| | ( |
| | Tasks.SUMMARIZATION, |
| | Frameworks.HUGGINGFACE, |
| | ): "algorithms/text/text_summarization_hugging_face.rst", |
| | } |
| |
|
| |
|
| | def get_jumpstart_sdk_manifest(): |
| | url = "{}/{}".format(JUMPSTART_BUCKET_BASE_URL, SDK_MANIFEST_FILE) |
| | with request.urlopen(url) as f: |
| | models_manifest = f.read().decode("utf-8") |
| | return json.loads(models_manifest) |
| |
|
| |
|
| | def get_jumpstart_sdk_spec(key): |
| | url = "{}/{}".format(JUMPSTART_BUCKET_BASE_URL, key) |
| | with request.urlopen(url) as f: |
| | model_spec = f.read().decode("utf-8") |
| | return json.loads(model_spec) |
| |
|
| |
|
| | def get_model_task(id): |
| | task_short = id.split("-")[1] |
| | return TASK_MAP[task_short] if task_short in TASK_MAP else "Source" |
| |
|
| |
|
| | def get_string_model_task(id): |
| | return id.split("-")[1] |
| |
|
| |
|
| | def get_model_source(url): |
| | if "tfhub" in url: |
| | return "Tensorflow Hub" |
| | if "pytorch" in url: |
| | return "Pytorch Hub" |
| | if "huggingface" in url: |
| | return "HuggingFace" |
| | if "catboost" in url: |
| | return "Catboost" |
| | if "gluon" in url: |
| | return "GluonCV" |
| | if "lightgbm" in url: |
| | return "LightGBM" |
| | if "xgboost" in url: |
| | return "XGBoost" |
| | if "scikit" in url: |
| | return "ScikitLearn" |
| | else: |
| | return "Source" |
| |
|
| |
|
| | def create_jumpstart_model_table(): |
| | sdk_manifest = get_jumpstart_sdk_manifest() |
| | sdk_manifest_top_versions_for_models = {} |
| |
|
| | for model in sdk_manifest: |
| | if model["model_id"] not in sdk_manifest_top_versions_for_models: |
| | sdk_manifest_top_versions_for_models[model["model_id"]] = model |
| | else: |
| | if Version( |
| | sdk_manifest_top_versions_for_models[model["model_id"]]["version"] |
| | ) < Version(model["version"]): |
| | sdk_manifest_top_versions_for_models[model["model_id"]] = model |
| |
|
| | file_content_intro = [] |
| |
|
| | file_content_intro.append(".. _all-pretrained-models:\n\n") |
| | file_content_intro.append(".. |external-link| raw:: html\n\n") |
| | file_content_intro.append(' <i class="fa fa-external-link"></i>\n\n') |
| |
|
| | file_content_intro.append("================================================\n") |
| | file_content_intro.append("Built-in Algorithms with pre-trained Model Table\n") |
| | file_content_intro.append("================================================\n") |
| | file_content_intro.append( |
| | """ |
| | The SageMaker Python SDK uses model IDs and model versions to access the necessary |
| | utilities for pre-trained models. This table serves to provide the core material plus |
| | some extra information that can be useful in selecting the correct model ID and |
| | corresponding parameters.\n""" |
| | ) |
| | file_content_intro.append( |
| | """ |
| | If you want to automatically use the latest version of the model, use "*" for the `model_version` attribute. |
| | We highly suggest pinning an exact model version however.\n""" |
| | ) |
| | file_content_intro.append( |
| | """ |
| | These models are also available through the |
| | `JumpStart UI in SageMaker Studio <https://docs.aws.amazon.com/sagemaker/latest/dg/studio-jumpstart.html>`__\n""" |
| | ) |
| | file_content_intro.append("\n") |
| | file_content_intro.append(".. list-table:: Available Models\n") |
| | file_content_intro.append(" :widths: 50 20 20 20 30 20\n") |
| | file_content_intro.append(" :header-rows: 1\n") |
| | file_content_intro.append(" :class: datatable\n") |
| | file_content_intro.append("\n") |
| | file_content_intro.append(" * - Model ID\n") |
| | file_content_intro.append(" - Fine Tunable?\n") |
| | file_content_intro.append(" - Latest Version\n") |
| | file_content_intro.append(" - Min SDK Version\n") |
| | file_content_intro.append(" - Problem Type\n") |
| | file_content_intro.append(" - Source\n") |
| |
|
| | dynamic_table_files = [] |
| | file_content_entries = [] |
| |
|
| | for model in sdk_manifest_top_versions_for_models.values(): |
| | model_spec = get_jumpstart_sdk_spec(model["spec_key"]) |
| | model_task = get_model_task(model_spec["model_id"]) |
| | string_model_task = get_string_model_task(model_spec["model_id"]) |
| | model_source = get_model_source(model_spec["url"]) |
| | file_content_entries.append(" * - {}\n".format(model_spec["model_id"])) |
| | file_content_entries.append(" - {}\n".format(model_spec["training_supported"])) |
| | file_content_entries.append(" - {}\n".format(model["version"])) |
| | file_content_entries.append(" - {}\n".format(model["min_version"])) |
| | file_content_entries.append(" - {}\n".format(model_task)) |
| | file_content_entries.append( |
| | " - `{} <{}>`__ |external-link|\n".format(model_source, model_spec["url"]) |
| | ) |
| |
|
| | if (string_model_task, TO_FRAMEWORK[model_source]) in MODALITY_MAP: |
| | file_content_single_entry = [] |
| |
|
| | if ( |
| | MODALITY_MAP[(string_model_task, TO_FRAMEWORK[model_source])] |
| | not in dynamic_table_files |
| | ): |
| | file_content_single_entry.append("\n") |
| | file_content_single_entry.append(".. list-table:: Available Models\n") |
| | file_content_single_entry.append(" :widths: 50 20 20 20 20\n") |
| | file_content_single_entry.append(" :header-rows: 1\n") |
| | file_content_single_entry.append(" :class: datatable\n") |
| | file_content_single_entry.append("\n") |
| | file_content_single_entry.append(" * - Model ID\n") |
| | file_content_single_entry.append(" - Fine Tunable?\n") |
| | file_content_single_entry.append(" - Latest Version\n") |
| | file_content_single_entry.append(" - Min SDK Version\n") |
| | file_content_single_entry.append(" - Source\n") |
| |
|
| | dynamic_table_files.append( |
| | MODALITY_MAP[(string_model_task, TO_FRAMEWORK[model_source])] |
| | ) |
| |
|
| | file_content_single_entry.append(" * - {}\n".format(model_spec["model_id"])) |
| | file_content_single_entry.append(" - {}\n".format(model_spec["training_supported"])) |
| | file_content_single_entry.append(" - {}\n".format(model["version"])) |
| | file_content_single_entry.append(" - {}\n".format(model["min_version"])) |
| | file_content_single_entry.append( |
| | " - `{} <{}>`__\n".format(model_source, model_spec["url"]) |
| | ) |
| | f = open(MODALITY_MAP[(string_model_task, TO_FRAMEWORK[model_source])], "a") |
| | f.writelines(file_content_single_entry) |
| | f.close() |
| |
|
| | f = open("doc_utils/pretrainedmodels.rst", "a") |
| | f.writelines(file_content_intro) |
| | f.writelines(file_content_entries) |
| | f.close() |
| |
|