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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
from mock.mock import Mock, patch
import pytest
import random
from sagemaker.jumpstart import utils
from sagemaker.jumpstart.constants import (
ENV_VARIABLE_JUMPSTART_CONTENT_BUCKET_OVERRIDE,
JUMPSTART_BUCKET_NAME_SET,
JUMPSTART_REGION_NAME_SET,
JUMPSTART_RESOURCE_BASE_NAME,
JumpStartScriptScope,
)
from sagemaker.jumpstart.enums import JumpStartTag
from sagemaker.jumpstart.exceptions import (
DeprecatedJumpStartModelError,
VulnerableJumpStartModelError,
)
from sagemaker.jumpstart.types import JumpStartModelHeader, JumpStartVersionedModelId
from tests.unit.sagemaker.jumpstart.utils import get_spec_from_base_spec
def random_jumpstart_s3_uri(key):
return f"s3://{random.choice(list(JUMPSTART_BUCKET_NAME_SET))}/{key}"
def test_get_jumpstart_content_bucket():
bad_region = "bad_region"
assert bad_region not in JUMPSTART_REGION_NAME_SET
with pytest.raises(ValueError):
utils.get_jumpstart_content_bucket(bad_region)
def test_get_jumpstart_content_bucket_override():
with patch.dict(os.environ, {ENV_VARIABLE_JUMPSTART_CONTENT_BUCKET_OVERRIDE: "some-val"}):
with patch("logging.Logger.info") as mocked_info_log:
random_region = "random_region"
assert "some-val" == utils.get_jumpstart_content_bucket(random_region)
mocked_info_log.assert_called_once_with(
"Using JumpStart bucket override: '%s'",
"some-val",
)
def test_get_jumpstart_launched_regions_message():
with patch("sagemaker.jumpstart.constants.JUMPSTART_REGION_NAME_SET", {}):
assert (
utils.get_jumpstart_launched_regions_message()
== "JumpStart is not available in any region."
)
with patch("sagemaker.jumpstart.constants.JUMPSTART_REGION_NAME_SET", {"some_region"}):
assert (
utils.get_jumpstart_launched_regions_message()
== "JumpStart is available in some_region region."
)
with patch(
"sagemaker.jumpstart.constants.JUMPSTART_REGION_NAME_SET", {"some_region1", "some_region2"}
):
assert (
utils.get_jumpstart_launched_regions_message()
== "JumpStart is available in some_region1 and some_region2 regions."
)
with patch("sagemaker.jumpstart.constants.JUMPSTART_REGION_NAME_SET", {"a", "b", "c"}):
assert (
utils.get_jumpstart_launched_regions_message()
== "JumpStart is available in a, b, and c regions."
)
def test_get_formatted_manifest():
mock_manifest = [
{
"model_id": "tensorflow-ic-imagenet-inception-v3-classification-4",
"version": "1.0.0",
"min_version": "2.49.0",
"spec_key": "community_models_specs/tensorflow-ic-imagenet-inception-v3-classification-4/specs_v1.0.0.json",
},
]
assert utils.get_formatted_manifest(mock_manifest) == {
JumpStartVersionedModelId(
"tensorflow-ic-imagenet-inception-v3-classification-4", "1.0.0"
): JumpStartModelHeader(mock_manifest[0])
}
assert utils.get_formatted_manifest([]) == {}
def test_parse_sagemaker_version():
with patch("sagemaker.__version__", "1.2.3"):
assert utils.parse_sagemaker_version() == "1.2.3"
with patch("sagemaker.__version__", "1.2.3.3332j"):
assert utils.parse_sagemaker_version() == "1.2.3"
with patch("sagemaker.__version__", "1.2.3."):
assert utils.parse_sagemaker_version() == "1.2.3"
with pytest.raises(ValueError):
with patch("sagemaker.__version__", "1.2.3dfsdfs"):
utils.parse_sagemaker_version()
with pytest.raises(RuntimeError):
with patch("sagemaker.__version__", "1.2"):
utils.parse_sagemaker_version()
with pytest.raises(RuntimeError):
with patch("sagemaker.__version__", "1"):
utils.parse_sagemaker_version()
with pytest.raises(RuntimeError):
with patch("sagemaker.__version__", ""):
utils.parse_sagemaker_version()
with pytest.raises(RuntimeError):
with patch("sagemaker.__version__", "1.2.3.4.5"):
utils.parse_sagemaker_version()
@patch("sagemaker.jumpstart.utils.parse_sagemaker_version")
@patch("sagemaker.jumpstart.accessors.SageMakerSettings._parsed_sagemaker_version", "")
def test_get_sagemaker_version(patched_parse_sm_version: Mock):
utils.get_sagemaker_version()
utils.get_sagemaker_version()
utils.get_sagemaker_version()
assert patched_parse_sm_version.called_only_once()
def test_is_jumpstart_model_uri():
assert not utils.is_jumpstart_model_uri("fdsfdsf")
assert not utils.is_jumpstart_model_uri("s3://not-jumpstart-bucket/sdfsdfds")
assert not utils.is_jumpstart_model_uri("some/actual/localfile")
assert utils.is_jumpstart_model_uri(
random_jumpstart_s3_uri("source_directory_tarballs/sourcedir.tar.gz")
)
assert utils.is_jumpstart_model_uri(random_jumpstart_s3_uri("random_key"))
def test_add_jumpstart_tags_inference():
tags = None
inference_model_uri = "dfsdfsd"
inference_script_uri = "dfsdfs"
assert (
utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
)
is None
)
tags = []
inference_model_uri = "dfsdfsd"
inference_script_uri = "dfsdfs"
assert (
utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
)
== []
)
tags = [{"Key": "some", "Value": "tag"}]
inference_model_uri = "dfsdfsd"
inference_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [{"Key": "some", "Value": "tag"}]
tags = None
inference_model_uri = random_jumpstart_s3_uri("random_key")
inference_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": inference_model_uri}]
tags = []
inference_model_uri = random_jumpstart_s3_uri("random_key")
inference_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": inference_model_uri}]
tags = [{"Key": "some", "Value": "tag"}]
inference_model_uri = random_jumpstart_s3_uri("random_key")
inference_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": inference_model_uri},
]
tags = None
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri}]
tags = []
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri}]
tags = [{"Key": "some", "Value": "tag"}]
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri},
]
tags = None
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{
"Key": JumpStartTag.INFERENCE_MODEL_URI.value,
"Value": inference_model_uri,
},
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri},
]
tags = []
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{
"Key": JumpStartTag.INFERENCE_MODEL_URI.value,
"Value": inference_model_uri,
},
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri},
]
tags = [{"Key": "some", "Value": "tag"}]
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{
"Key": JumpStartTag.INFERENCE_MODEL_URI.value,
"Value": inference_model_uri,
},
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri},
]
tags = [{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value"}]
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": inference_script_uri},
]
tags = [{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value"}]
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": inference_model_uri},
]
tags = [
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value-2"},
]
inference_script_uri = random_jumpstart_s3_uri("random_key")
inference_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
inference_model_uri=inference_model_uri,
inference_script_uri=inference_script_uri,
) == [
{"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value-2"},
]
def test_add_jumpstart_tags_training():
tags = None
training_model_uri = "dfsdfsd"
training_script_uri = "dfsdfs"
assert (
utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
)
is None
)
tags = []
training_model_uri = "dfsdfsd"
training_script_uri = "dfsdfs"
assert (
utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
)
== []
)
tags = [{"Key": "some", "Value": "tag"}]
training_model_uri = "dfsdfsd"
training_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [{"Key": "some", "Value": "tag"}]
tags = None
training_model_uri = random_jumpstart_s3_uri("random_key")
training_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": training_model_uri}]
tags = []
training_model_uri = random_jumpstart_s3_uri("random_key")
training_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": training_model_uri}]
tags = [{"Key": "some", "Value": "tag"}]
training_model_uri = random_jumpstart_s3_uri("random_key")
training_script_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": training_model_uri},
]
tags = None
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri}]
tags = []
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri}]
tags = [{"Key": "some", "Value": "tag"}]
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = "dfsdfs"
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri},
]
tags = None
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{
"Key": JumpStartTag.TRAINING_MODEL_URI.value,
"Value": training_model_uri,
},
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri},
]
tags = []
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{
"Key": JumpStartTag.TRAINING_MODEL_URI.value,
"Value": training_model_uri,
},
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri},
]
tags = [{"Key": "some", "Value": "tag"}]
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": "some", "Value": "tag"},
{
"Key": JumpStartTag.TRAINING_MODEL_URI.value,
"Value": training_model_uri,
},
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri},
]
tags = [{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value"}]
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": training_script_uri},
]
tags = [{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value"}]
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": training_model_uri},
]
tags = [
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value-2"},
]
training_script_uri = random_jumpstart_s3_uri("random_key")
training_model_uri = random_jumpstart_s3_uri("random_key")
assert utils.add_jumpstart_tags(
tags=tags,
training_model_uri=training_model_uri,
training_script_uri=training_script_uri,
) == [
{"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value"},
{"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value-2"},
]
def test_update_inference_tags_with_jumpstart_training_script_tags():
random_tag_1 = {"Key": "tag-key-1", "Value": "tag-val-1"}
random_tag_2 = {"Key": "tag-key-2", "Value": "tag-val-2"}
js_tag = {"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value"}
js_tag_2 = {"Key": JumpStartTag.TRAINING_SCRIPT_URI.value, "Value": "garbage-value-2"}
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=None
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[]
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1]
)
assert [random_tag_2, js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [random_tag_2, js_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2, js_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=None
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1, js_tag]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=None
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1, js_tag]
)
def test_update_inference_tags_with_jumpstart_training_model_tags():
random_tag_1 = {"Key": "tag-key-1", "Value": "tag-val-1"}
random_tag_2 = {"Key": "tag-key-2", "Value": "tag-val-2"}
js_tag = {"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value"}
js_tag_2 = {"Key": JumpStartTag.TRAINING_MODEL_URI.value, "Value": "garbage-value-2"}
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=None
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[]
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1]
)
assert [random_tag_2, js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [random_tag_2, js_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2, js_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=None
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1, js_tag]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=None
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1, js_tag]
)
def test_update_inference_tags_with_jumpstart_training_script_tags_inference():
random_tag_1 = {"Key": "tag-key-1", "Value": "tag-val-1"}
random_tag_2 = {"Key": "tag-key-2", "Value": "tag-val-2"}
js_tag = {"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value"}
js_tag_2 = {"Key": JumpStartTag.INFERENCE_SCRIPT_URI.value, "Value": "garbage-value-2"}
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=None
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[]
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1]
)
assert [random_tag_2, js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [random_tag_2, js_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2, js_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=None
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1, js_tag]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=None
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1, js_tag]
)
def test_update_inference_tags_with_jumpstart_training_model_tags_inference():
random_tag_1 = {"Key": "tag-key-1", "Value": "tag-val-1"}
random_tag_2 = {"Key": "tag-key-2", "Value": "tag-val-2"}
js_tag = {"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value"}
js_tag_2 = {"Key": JumpStartTag.INFERENCE_MODEL_URI.value, "Value": "garbage-value-2"}
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=None
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[]
)
assert [random_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1]
)
assert [random_tag_2, js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [random_tag_2, js_tag_2] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[random_tag_2, js_tag_2], training_tags=[random_tag_1, js_tag]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=None
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[]
)
assert [] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=[], training_tags=[random_tag_1, js_tag]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=None
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[]
)
assert None is utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1]
)
assert [js_tag] == utils.update_inference_tags_with_jumpstart_training_tags(
inference_tags=None, training_tags=[random_tag_1, js_tag]
)
@patch("sagemaker.jumpstart.accessors.JumpStartModelsAccessor.get_model_specs")
def test_jumpstart_vulnerable_model(patched_get_model_specs):
def make_vulnerable_inference_spec(*largs, **kwargs):
spec = get_spec_from_base_spec(*largs, **kwargs)
spec.inference_vulnerable = True
spec.inference_vulnerabilities = ["some", "vulnerability"]
return spec
patched_get_model_specs.side_effect = make_vulnerable_inference_spec
with pytest.raises(VulnerableJumpStartModelError) as e:
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.INFERENCE.value,
region="us-west-2",
)
assert (
"Version '*' of JumpStart model 'pytorch-eqa-bert-base-cased' has at least 1 "
"vulnerable dependency in the inference script. "
"Please try targetting a higher version of the model. "
"List of vulnerabilities: some, vulnerability"
) == str(e.value.message)
with patch("logging.Logger.warning") as mocked_warning_log:
assert (
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.INFERENCE.value,
region="us-west-2",
tolerate_vulnerable_model=True,
)
is not None
)
mocked_warning_log.assert_called_once_with(
"Using vulnerable JumpStart model '%s' and version '%s' (inference).",
"pytorch-eqa-bert-base-cased",
"*",
)
def make_vulnerable_training_spec(*largs, **kwargs):
spec = get_spec_from_base_spec(*largs, **kwargs)
spec.training_vulnerable = True
spec.training_vulnerabilities = ["some", "vulnerability"]
return spec
patched_get_model_specs.side_effect = make_vulnerable_training_spec
with pytest.raises(VulnerableJumpStartModelError) as e:
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.TRAINING.value,
region="us-west-2",
)
assert (
"Version '*' of JumpStart model 'pytorch-eqa-bert-base-cased' has at least 1 "
"vulnerable dependency in the training script. "
"Please try targetting a higher version of the model. "
"List of vulnerabilities: some, vulnerability"
) == str(e.value.message)
with patch("logging.Logger.warning") as mocked_warning_log:
assert (
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.TRAINING.value,
region="us-west-2",
tolerate_vulnerable_model=True,
)
is not None
)
mocked_warning_log.assert_called_once_with(
"Using vulnerable JumpStart model '%s' and version '%s' (training).",
"pytorch-eqa-bert-base-cased",
"*",
)
@patch("sagemaker.jumpstart.accessors.JumpStartModelsAccessor.get_model_specs")
def test_jumpstart_deprecated_model(patched_get_model_specs):
def make_deprecated_spec(*largs, **kwargs):
spec = get_spec_from_base_spec(*largs, **kwargs)
spec.deprecated = True
return spec
patched_get_model_specs.side_effect = make_deprecated_spec
with pytest.raises(DeprecatedJumpStartModelError) as e:
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.INFERENCE.value,
region="us-west-2",
)
assert "Version '*' of JumpStart model 'pytorch-eqa-bert-base-cased' is deprecated. "
"Please try targetting a higher version of the model." == str(e.value.message)
with patch("logging.Logger.warning") as mocked_warning_log:
assert (
utils.verify_model_region_and_return_specs(
model_id="pytorch-eqa-bert-base-cased",
version="*",
scope=JumpStartScriptScope.INFERENCE.value,
region="us-west-2",
tolerate_deprecated_model=True,
)
is not None
)
mocked_warning_log.assert_called_once_with(
"Using deprecated JumpStart model '%s' and version '%s'.",
"pytorch-eqa-bert-base-cased",
"*",
)
def test_get_jumpstart_base_name_if_jumpstart_model():
uris = [random_jumpstart_s3_uri("random_key") for _ in range(random.randint(1, 10))]
assert JUMPSTART_RESOURCE_BASE_NAME == utils.get_jumpstart_base_name_if_jumpstart_model(*uris)
uris = ["s3://not-jumpstart-bucket/some-key" for _ in range(random.randint(0, 10))]
assert utils.get_jumpstart_base_name_if_jumpstart_model(*uris) is None
uris = ["s3://not-jumpstart-bucket/some-key" for _ in range(random.randint(1, 10))] + [
random_jumpstart_s3_uri("random_key")
]
assert JUMPSTART_RESOURCE_BASE_NAME == utils.get_jumpstart_base_name_if_jumpstart_model(*uris)
uris = (
["s3://not-jumpstart-bucket/some-key" for _ in range(random.randint(1, 10))]
+ [random_jumpstart_s3_uri("random_key")]
+ ["s3://not-jumpstart-bucket/some-key-2" for _ in range(random.randint(1, 10))]
)
assert JUMPSTART_RESOURCE_BASE_NAME == utils.get_jumpstart_base_name_if_jumpstart_model(*uris)