コード例 #1
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def __rcf_training_job(
    sagemaker_session, container_image, cpu_instance_type, num_trees, num_samples_per_tree
):
    job_name = unique_name_from_base("randomcutforest")
    with timeout(minutes=TRAINING_DEFAULT_TIMEOUT_MINUTES):
        # Generate a thousand 14-dimensional datapoints.
        feature_num = 14
        train_input = numpy.random.rand(1000, feature_num)

        rcf = RandomCutForest(
            role=ROLE,
            instance_count=1,
            instance_type=cpu_instance_type,
            num_trees=num_trees,
            num_samples_per_tree=num_samples_per_tree,
            eval_metrics=["accuracy", "precision_recall_fscore"],
            sagemaker_session=sagemaker_session,
        )

        rcf.fit(records=rcf.record_set(train_input), job_name=job_name)

        # Replace the container image value with a multi-model container image for now since the
        # frameworks do not support multi-model container image yet.
        rcf_model = rcf.create_model()
        rcf_model.image_uri = container_image
        return rcf_model
コード例 #2
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def test_model_image(sagemaker_session):
    randomcutforest = RandomCutForest(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
    data = RecordSet("s3://{}/{}".format(BUCKET_NAME, PREFIX), num_records=1, feature_dim=FEATURE_DIM, channel='train')
    randomcutforest.fit(data, MINI_BATCH_SIZE)

    model = randomcutforest.create_model()
    assert model.image == registry(REGION, "randomcutforest") + '/randomcutforest:1'
コード例 #3
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def test_model_image(sagemaker_session):
    randomcutforest = RandomCutForest(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
    data = RecordSet("s3://{}/{}".format(BUCKET_NAME, PREFIX), num_records=1, feature_dim=FEATURE_DIM, channel='train')
    randomcutforest.fit(data, MINI_BATCH_SIZE)

    model = randomcutforest.create_model()
    assert model.image == registry(REGION, "randomcutforest") + '/randomcutforest:1'
コード例 #4
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def test_predictor_type(sagemaker_session):
    randomcutforest = RandomCutForest(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
    data = RecordSet("s3://{}/{}".format(BUCKET_NAME, PREFIX), num_records=1, feature_dim=FEATURE_DIM, channel='train')
    randomcutforest.fit(data, MINI_BATCH_SIZE)
    model = randomcutforest.create_model()
    predictor = model.deploy(1, TRAIN_INSTANCE_TYPE)

    assert isinstance(predictor, RandomCutForestPredictor)
コード例 #5
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def test_predictor_type(sagemaker_session):
    randomcutforest = RandomCutForest(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
    data = RecordSet("s3://{}/{}".format(BUCKET_NAME, PREFIX), num_records=1, feature_dim=FEATURE_DIM, channel='train')
    randomcutforest.fit(data, MINI_BATCH_SIZE)
    model = randomcutforest.create_model()
    predictor = model.deploy(1, TRAIN_INSTANCE_TYPE)

    assert isinstance(predictor, RandomCutForestPredictor)
コード例 #6
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def test_model_image(sagemaker_session):
    randomcutforest = RandomCutForest(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
    data = RecordSet(
        "s3://{}/{}".format(BUCKET_NAME, PREFIX),
        num_records=1,
        feature_dim=FEATURE_DIM,
        channel="train",
    )
    randomcutforest.fit(data, MINI_BATCH_SIZE)

    model = randomcutforest.create_model()
    assert image_uris.retrieve("randomcutforest", REGION) == model.image_uri