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# Copyright Amazon.com, Inc. or its affiliates. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License"). You
# may not use this file except in compliance with the License. A copy of
# the License is located at
#
# http://aws.amazon.com/apache2.0/
#
# or in the "license" file accompanying this file. This file is
# distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF
# ANY KIND, either express or implied. See the License for the specific
# language governing permissions and limitations under the License.
from __future__ import absolute_import
import os
import pytest
from mock import MagicMock, Mock, call, patch
from sagemaker.multidatamodel import MULTI_MODEL_CONTAINER_MODE
from sagemaker.multidatamodel import MultiDataModel
from sagemaker.mxnet import MXNetModel, MXNetPredictor
ENDPOINT_DESC = {"EndpointConfigName": "test-endpoint"}
ENDPOINT_CONFIG_DESC = {"ProductionVariants": [{"ModelName": "model-1"}]}
ENTRY_POINT = "mock.py"
MXNET_MODEL_DATA = "s3://mybucket/mxnet_path/model.tar.gz"
MXNET_MODEL_NAME = "dummy-mxnet-model"
MXNET_ROLE = "DummyMXNetRole"
MXNET_FRAMEWORK_VERSION = "1.2"
MXNET_PY_VERSION = "py2"
MXNET_IMAGE = "520713654638.dkr.ecr.us-west-2.amazonaws.com/sagemaker-mxnet:{}-cpu-{}".format(
MXNET_FRAMEWORK_VERSION, MXNET_PY_VERSION
)
DATA_DIR = os.path.join(os.path.dirname(__file__), "..", "data")
IMAGE = "123456789012.dkr.ecr.dummyregion.amazonaws.com/dummyimage:latest"
REGION = "us-west-2"
ROLE = "DummyRole"
MODEL_NAME = "dummy-model"
VALID_MULTI_MODEL_DATA_PREFIX = "s3://mybucket/path/"
INVALID_S3_URL = "https://my-training-bucket.s3.myregion.amazonaws.com/output/model.tar.gz"
VALID_S3_URL = "s3://my-training-bucket/output/model.tar.gz"
S3_URL_SOURCE_BUCKET = "my-training-bucket"
S3_URL_SOURCE_PREFIX = "output/model.tar.gz"
DST_BUCKET = "mybucket"
MULTI_MODEL_ENDPOINT_NAME = "multimodel-endpoint"
INSTANCE_COUNT = 1
INSTANCE_TYPE = "ml.c4.4xlarge"
EXPECTED_PROD_VARIANT = [
{
"InitialVariantWeight": 1,
"InitialInstanceCount": INSTANCE_COUNT,
"InstanceType": INSTANCE_TYPE,
"ModelName": MODEL_NAME,
"VariantName": "AllTraffic",
}
]
@pytest.fixture()
def sagemaker_session():
boto_mock = Mock(name="boto_session", region_name=REGION)
session = Mock(
name="sagemaker_session",
boto_session=boto_mock,
boto_region_name=REGION,
config=None,
local_mode=False,
s3_resource=None,
s3_client=None,
)
session.sagemaker_client.describe_endpoint = Mock(return_value=ENDPOINT_DESC)
session.sagemaker_client.describe_endpoint_config = Mock(return_value=ENDPOINT_CONFIG_DESC)
session.list_s3_files(
bucket=S3_URL_SOURCE_BUCKET, key_prefix=S3_URL_SOURCE_PREFIX
).return_value = Mock()
session.upload_data = Mock(
name="upload_data",
return_value=os.path.join(VALID_MULTI_MODEL_DATA_PREFIX, "mleap_model.tar.gz"),
)
s3_mock = Mock()
boto_mock.client("s3").return_value = s3_mock
boto_mock.client("s3").get_paginator("list_objects_v2").paginate.return_value = Mock()
s3_mock.reset_mock()
return session
@pytest.fixture()
def multi_data_model(sagemaker_session):
return MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
image_uri=IMAGE,
role=ROLE,
sagemaker_session=sagemaker_session,
)
@pytest.fixture()
def mxnet_model(sagemaker_session):
return MXNetModel(
MXNET_MODEL_DATA,
entry_point=ENTRY_POINT,
framework_version=MXNET_FRAMEWORK_VERSION,
py_version=MXNET_PY_VERSION,
role=MXNET_ROLE,
sagemaker_session=sagemaker_session,
name=MXNET_MODEL_NAME,
enable_network_isolation=True,
)
def test_multi_data_model_create_with_invalid_model_data_prefix():
invalid_model_data_prefix = "https://mybucket/path/"
with pytest.raises(ValueError) as ex:
MultiDataModel(
name=MODEL_NAME, model_data_prefix=invalid_model_data_prefix, image_uri=IMAGE, role=ROLE
)
err_msg = 'Expecting S3 model prefix beginning with "s3://". Received: "{}"'.format(
invalid_model_data_prefix
)
assert err_msg in str(ex.value)
def test_multi_data_model_create_with_invalid_arguments(sagemaker_session, mxnet_model):
with pytest.raises(ValueError) as ex:
MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
image_uri=IMAGE,
role=ROLE,
sagemaker_session=sagemaker_session,
model=mxnet_model,
)
assert (
"Parameters image_uri, role, and kwargs are not permitted when model parameter is passed."
in str(ex)
)
def test_multi_data_model_create(sagemaker_session):
model = MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
image_uri=IMAGE,
role=ROLE,
sagemaker_session=sagemaker_session,
)
assert model.sagemaker_session == sagemaker_session
assert model.name == MODEL_NAME
assert model.model_data_prefix == VALID_MULTI_MODEL_DATA_PREFIX
assert model.role == ROLE
assert model.image_uri == IMAGE
assert model.vpc_config is None
@patch("sagemaker.multidatamodel.Session", MagicMock())
def test_multi_data_model_create_with_model_arg_only(mxnet_model):
model = MultiDataModel(
name=MODEL_NAME, model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX, model=mxnet_model
)
assert model.model_data_prefix == VALID_MULTI_MODEL_DATA_PREFIX
assert model.model == mxnet_model
assert hasattr(model, "role") is False
assert hasattr(model, "image_uri") is False
@patch("sagemaker.fw_utils.tar_and_upload_dir", MagicMock())
def test_prepare_container_def_mxnet(sagemaker_session, mxnet_model):
expected_container_env_keys = [
"SAGEMAKER_CONTAINER_LOG_LEVEL",
"SAGEMAKER_PROGRAM",
"SAGEMAKER_REGION",
"SAGEMAKER_SUBMIT_DIRECTORY",
]
model = MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
sagemaker_session=sagemaker_session,
model=mxnet_model,
)
container_def = model.prepare_container_def(INSTANCE_TYPE)
assert container_def["Image"] == MXNET_IMAGE
assert container_def["ModelDataUrl"] == VALID_MULTI_MODEL_DATA_PREFIX
assert container_def["Mode"] == MULTI_MODEL_CONTAINER_MODE
# Check if the environment variables defined only for MXNetModel
# are part of the MultiDataModel container definition
assert set(container_def["Environment"].keys()) == set(expected_container_env_keys)
@patch("sagemaker.fw_utils.tar_and_upload_dir", MagicMock())
def test_deploy_multi_data_model(sagemaker_session):
model = MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
image_uri=IMAGE,
role=ROLE,
sagemaker_session=sagemaker_session,
env={"EXTRA_ENV_MOCK": "MockValue"},
)
model.deploy(
initial_instance_count=INSTANCE_COUNT,
instance_type=INSTANCE_TYPE,
endpoint_name=MULTI_MODEL_ENDPOINT_NAME,
)
sagemaker_session.create_model.assert_called_with(
MODEL_NAME,
ROLE,
model.prepare_container_def(INSTANCE_TYPE),
vpc_config=None,
enable_network_isolation=False,
tags=None,
)
sagemaker_session.endpoint_from_production_variants.assert_called_with(
name=MULTI_MODEL_ENDPOINT_NAME,
wait=True,
tags=None,
kms_key=None,
data_capture_config_dict=None,
production_variants=EXPECTED_PROD_VARIANT,
)
@patch("sagemaker.fw_utils.tar_and_upload_dir", MagicMock())
def test_deploy_multi_data_framework_model(sagemaker_session, mxnet_model):
model = MultiDataModel(
name=MODEL_NAME,
model_data_prefix=VALID_MULTI_MODEL_DATA_PREFIX,
sagemaker_session=sagemaker_session,
model=mxnet_model,
)
predictor = model.deploy(
initial_instance_count=INSTANCE_COUNT,
instance_type=INSTANCE_TYPE,
endpoint_name=MULTI_MODEL_ENDPOINT_NAME,
)
# Assert if this is called with mxnet_model parameters
sagemaker_session.create_model.assert_called_with(
MODEL_NAME,
MXNET_ROLE,
model.prepare_container_def(INSTANCE_TYPE),
vpc_config=None,
enable_network_isolation=True,
tags=None,
)
sagemaker_session.endpoint_from_production_variants.assert_called_with(
name=MULTI_MODEL_ENDPOINT_NAME,
wait=True,
tags=None,
kms_key=None,
data_capture_config_dict=None,
production_variants=EXPECTED_PROD_VARIANT,
)
sagemaker_session.create_endpoint_config.assert_not_called()
assert isinstance(predictor, MXNetPredictor)
def test_add_model_local_file_path(multi_data_model):
valid_local_model_artifact_path = os.path.join(DATA_DIR, "sparkml_model", "mleap_model.tar.gz")
uploaded_s3_path = multi_data_model.add_model(valid_local_model_artifact_path)
assert uploaded_s3_path == os.path.join(VALID_MULTI_MODEL_DATA_PREFIX, "mleap_model.tar.gz")
def test_add_model_s3_path(multi_data_model):
uploaded_s3_path = multi_data_model.add_model(VALID_S3_URL)
assert uploaded_s3_path == os.path.join(VALID_MULTI_MODEL_DATA_PREFIX, "output/model.tar.gz")
multi_data_model.s3_client.copy.assert_called()
calls = [
call(
{"Bucket": S3_URL_SOURCE_BUCKET, "Key": S3_URL_SOURCE_PREFIX},
DST_BUCKET,
"path/output/model.tar.gz",
)
]
multi_data_model.s3_client.copy.assert_has_calls(calls)
def test_add_model_with_dst_path(multi_data_model):
uploaded_s3_path = multi_data_model.add_model(VALID_S3_URL, "customer-a/model.tar.gz")
assert uploaded_s3_path == os.path.join(
VALID_MULTI_MODEL_DATA_PREFIX, "customer-a/model.tar.gz"
)
multi_data_model.s3_client.copy.assert_called()
calls = [
call(
{"Bucket": S3_URL_SOURCE_BUCKET, "Key": S3_URL_SOURCE_PREFIX},
DST_BUCKET,
"path/customer-a/model.tar.gz",
)
]
multi_data_model.s3_client.copy.assert_has_calls(calls)
def test_add_model_with_invalid_model_uri(multi_data_model):
with pytest.raises(ValueError) as ex:
multi_data_model.add_model(INVALID_S3_URL)
assert 'model_source must either be a valid local file path or s3 uri. Received: "{}"'.format(
INVALID_S3_URL
) in str(ex.value)
def test_list_models(multi_data_model):
multi_data_model.list_models()
multi_data_model.sagemaker_session.list_s3_files.assert_called()
assert multi_data_model.sagemaker_session.list_s3_files.called_with(
Bucket=S3_URL_SOURCE_BUCKET, Prefix=S3_URL_SOURCE_PREFIX
)