S3ModelDataSource
Specifies the S3 location of ML model data to deploy.
Contents
- CompressionType
-
Specifies how the ML model data is prepared.
If you choose
Gzip
and chooseS3Object
as the value ofS3DataType
,S3Uri
identifies an object that is a gzip-compressed TAR archive. SageMaker will attempt to decompress and untar the object during model deployment.If you choose
None
and choooseS3Object
as the value ofS3DataType
,S3Uri
identifies an object that represents an uncompressed ML model to deploy.If you choose None and choose
S3Prefix
as the value ofS3DataType
,S3Uri
identifies a key name prefix, under which all objects represents the uncompressed ML model to deploy.If you choose None, then SageMaker will follow rules below when creating model data files under /opt/ml/model directory for use by your inference code:
-
If you choose
S3Object
as the value ofS3DataType
, then SageMaker will split the key of the S3 object referenced byS3Uri
by slash (/), and use the last part as the filename of the file holding the content of the S3 object. -
If you choose
S3Prefix
as the value ofS3DataType
, then for each S3 object under the key name pefix referenced byS3Uri
, SageMaker will trim its key by the prefix, and use the remainder as the path (relative to/opt/ml/model
) of the file holding the content of the S3 object. SageMaker will split the remainder by slash (/), using intermediate parts as directory names and the last part as filename of the file holding the content of the S3 object. -
Do not use any of the following as file names or directory names:
-
An empty or blank string
-
A string which contains null bytes
-
A string longer than 255 bytes
-
A single dot (
.
) -
A double dot (
..
)
-
-
Ambiguous file names will result in model deployment failure. For example, if your uncompressed ML model consists of two S3 objects
s3://mybucket/model/weights
ands3://mybucket/model/weights/part1
and you specifys3://mybucket/model/
as the value ofS3Uri
andS3Prefix
as the value ofS3DataType
, then it will result in name clash between/opt/ml/model/weights
(a regular file) and/opt/ml/model/weights/
(a directory). -
Do not organize the model artifacts in S3 console using folders. When you create a folder in S3 console, S3 creates a 0-byte object with a key set to the folder name you provide. They key of the 0-byte object ends with a slash (/) which violates SageMaker restrictions on model artifact file names, leading to model deployment failure.
Type: String
Valid Values:
None | Gzip
Required: Yes
-
- S3DataType
-
Specifies the type of ML model data to deploy.
If you choose
S3Prefix
,S3Uri
identifies a key name prefix. SageMaker uses all objects that match the specified key name prefix as part of the ML model data to deploy. A valid key name prefix identified byS3Uri
always ends with a forward slash (/).If you choose
S3Object
,S3Uri
identifies an object that is the ML model data to deploy.Type: String
Valid Values:
S3Prefix | S3Object
Required: Yes
- S3Uri
-
Specifies the S3 path of ML model data to deploy.
Type: String
Length Constraints: Maximum length of 1024.
Pattern:
^(https|s3)://([^/]+)/?(.*)$
Required: Yes
- HubAccessConfig
-
Configuration information for hub access.
Type: InferenceHubAccessConfig object
Required: No
- ManifestS3Uri
-
The Amazon S3 URI of the manifest file. The manifest file is a CSV file that stores the artifact locations.
Type: String
Length Constraints: Maximum length of 1024.
Pattern:
^(https|s3)://([^/]+)/?(.*)$
Required: No
- ModelAccessConfig
-
Specifies the access configuration file for the ML model. You can explicitly accept the model end-user license agreement (EULA) within the
ModelAccessConfig
. You are responsible for reviewing and complying with any applicable license terms and making sure they are acceptable for your use case before downloading or using a model.Type: ModelAccessConfig object
Required: No
See Also
For more information about using this API in one of the language-specific AWS SDKs, see the following: