hc99's picture
Add files using upload-large-folder tool
476455e verified
# 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 pytest
from mock import Mock, patch
from sagemaker import image_uris
from sagemaker.amazon.lda import LDA, LDAPredictor
from sagemaker.amazon.amazon_estimator import RecordSet
ROLE = "myrole"
INSTANCE_COUNT = 1
INSTANCE_TYPE = "ml.c4.xlarge"
NUM_TOPICS = 3
COMMON_TRAIN_ARGS = {"role": ROLE, "instance_type": INSTANCE_TYPE}
ALL_REQ_ARGS = dict({"num_topics": NUM_TOPICS}, **COMMON_TRAIN_ARGS)
REGION = "us-west-2"
BUCKET_NAME = "Some-Bucket"
DESCRIBE_TRAINING_JOB_RESULT = {"ModelArtifacts": {"S3ModelArtifacts": "s3://bucket/model.tar.gz"}}
ENDPOINT_DESC = {"EndpointConfigName": "test-endpoint"}
ENDPOINT_CONFIG_DESC = {"ProductionVariants": [{"ModelName": "model-1"}, {"ModelName": "model-2"}]}
@pytest.fixture()
def sagemaker_session():
boto_mock = Mock(name="boto_session", region_name=REGION)
sms = Mock(
name="sagemaker_session",
boto_session=boto_mock,
config=None,
local_mode=False,
s3_client=None,
s3_resource=None,
)
sms.boto_region_name = REGION
sms.default_bucket = Mock(name="default_bucket", return_value=BUCKET_NAME)
sms.sagemaker_client.describe_training_job = Mock(
name="describe_training_job", return_value=DESCRIBE_TRAINING_JOB_RESULT
)
sms.sagemaker_client.describe_endpoint = Mock(return_value=ENDPOINT_DESC)
sms.sagemaker_client.describe_endpoint_config = Mock(return_value=ENDPOINT_CONFIG_DESC)
return sms
def test_init_required_positional(sagemaker_session):
lda = LDA(ROLE, INSTANCE_TYPE, NUM_TOPICS, sagemaker_session=sagemaker_session)
assert lda.role == ROLE
assert lda.instance_count == INSTANCE_COUNT
assert lda.instance_type == INSTANCE_TYPE
assert lda.num_topics == NUM_TOPICS
def test_init_required_named(sagemaker_session):
lda = LDA(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
assert lda.role == COMMON_TRAIN_ARGS["role"]
assert lda.instance_count == INSTANCE_COUNT
assert lda.instance_type == COMMON_TRAIN_ARGS["instance_type"]
assert lda.num_topics == ALL_REQ_ARGS["num_topics"]
def test_all_hyperparameters(sagemaker_session):
lda = LDA(
sagemaker_session=sagemaker_session,
alpha0=2.2,
max_restarts=3,
max_iterations=10,
tol=3.3,
**ALL_REQ_ARGS,
)
assert lda.hyperparameters() == dict(
num_topics=str(ALL_REQ_ARGS["num_topics"]),
alpha0="2.2",
max_restarts="3",
max_iterations="10",
tol="3.3",
)
def test_image(sagemaker_session):
lda = LDA(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
assert image_uris.retrieve("lda", REGION) == lda.training_image_uri()
@pytest.mark.parametrize("required_hyper_parameters, value", [("num_topics", "string")])
def test_required_hyper_parameters_type(sagemaker_session, required_hyper_parameters, value):
with pytest.raises(ValueError):
test_params = ALL_REQ_ARGS.copy()
test_params[required_hyper_parameters] = value
LDA(sagemaker_session=sagemaker_session, **test_params)
@pytest.mark.parametrize("required_hyper_parameters, value", [("num_topics", 0)])
def test_required_hyper_parameters_value(sagemaker_session, required_hyper_parameters, value):
with pytest.raises(ValueError):
test_params = ALL_REQ_ARGS.copy()
test_params[required_hyper_parameters] = value
LDA(sagemaker_session=sagemaker_session, **test_params)
@pytest.mark.parametrize(
"optional_hyper_parameters, value",
[
("alpha0", "string"),
("max_restarts", "string"),
("max_iterations", "string"),
("tol", "string"),
],
)
def test_optional_hyper_parameters_type(sagemaker_session, optional_hyper_parameters, value):
with pytest.raises(ValueError):
test_params = ALL_REQ_ARGS.copy()
test_params.update({optional_hyper_parameters: value})
LDA(sagemaker_session=sagemaker_session, **test_params)
@pytest.mark.parametrize(
"optional_hyper_parameters, value", [("max_restarts", 0), ("max_iterations", 0), ("tol", 0)]
)
def test_optional_hyper_parameters_value(sagemaker_session, optional_hyper_parameters, value):
with pytest.raises(ValueError):
test_params = ALL_REQ_ARGS.copy()
test_params.update({optional_hyper_parameters: value})
LDA(sagemaker_session=sagemaker_session, **test_params)
PREFIX = "prefix"
FEATURE_DIM = 10
MINI_BATCH_SZIE = 200
@patch("sagemaker.amazon.amazon_estimator.AmazonAlgorithmEstimatorBase.fit")
def test_call_fit(base_fit, sagemaker_session):
lda = LDA(base_job_name="lda", sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
lda.fit(data, MINI_BATCH_SZIE)
base_fit.assert_called_once()
assert len(base_fit.call_args[0]) == 2
assert base_fit.call_args[0][0] == data
assert base_fit.call_args[0][1] == MINI_BATCH_SZIE
def test_prepare_for_training_no_mini_batch_size(sagemaker_session):
lda = LDA(base_job_name="lda", sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
with pytest.raises(ValueError):
lda._prepare_for_training(data, None)
def test_prepare_for_training_wrong_type_mini_batch_size(sagemaker_session):
lda = LDA(base_job_name="lda", sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
with pytest.raises(ValueError):
lda._prepare_for_training(data, "some")
def test_prepare_for_training_wrong_value_mini_batch_size(sagemaker_session):
lda = LDA(base_job_name="lda", sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
with pytest.raises(ValueError):
lda._prepare_for_training(data, 0)
def test_model_image(sagemaker_session):
lda = LDA(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
lda.fit(data, MINI_BATCH_SZIE)
model = lda.create_model()
assert image_uris.retrieve("lda", REGION) == model.image_uri
def test_predictor_type(sagemaker_session):
lda = LDA(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
lda.fit(data, MINI_BATCH_SZIE)
model = lda.create_model()
predictor = model.deploy(1, INSTANCE_TYPE)
assert isinstance(predictor, LDAPredictor)
def test_predictor_custom_serialization(sagemaker_session):
lda = LDA(sagemaker_session=sagemaker_session, **ALL_REQ_ARGS)
data = RecordSet(
"s3://{}/{}".format(BUCKET_NAME, PREFIX),
num_records=1,
feature_dim=FEATURE_DIM,
channel="train",
)
lda.fit(data, MINI_BATCH_SZIE)
model = lda.create_model()
custom_serializer = Mock()
custom_deserializer = Mock()
predictor = model.deploy(
1,
INSTANCE_TYPE,
serializer=custom_serializer,
deserializer=custom_deserializer,
)
assert isinstance(predictor, LDAPredictor)
assert predictor.serializer is custom_serializer
assert predictor.deserializer is custom_deserializer