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Use the W&B Python SDK to construct artifacts from W&B Runs. You can add files, directories, URIs, and files from parallel runs to artifacts. After you add a file to an artifact, save the artifact to the W&B Server or your own private server. Each artifact is associated with a run. For information on how to track external files, such as files stored in Amazon S3, see the Track external files page.

How to construct an artifact

Construct a W&B Artifact in three steps:

1. Create an artifact Python object with wandb.Artifact()

Initialize the wandb.Artifact() class to create an artifact object. Specify the following parameters:
  • Name: Specify a name for your artifact. The name should be unique, descriptive, and easy to remember. Use an artifacts name to both: identify the artifact in the W&B App UI and when you want to use that artifact.
  • Type: Provide a type. The type should be simple, descriptive and correspond to a single step of your machine learning pipeline. Common artifact types include 'dataset' or 'model'.
W&B uses the “name” and “type” you provide to create a directed acyclic graph. View the lineage of an artifact on the W&B App. See the Explore and traverse artifact graphs for more information.
Artifacts can not have the same name, even if you specify a different type for the types parameter. In other words, you can not create an artifact named cats of type dataset and another artifact with the same name of type model.
You can optionally provide a description and metadata when you initialize an artifact object. For more information on available attributes and parameters, see the wandb.Artifact Class definition in the Python SDK Reference Guide. Copy and paste the following code snippet to create an artifact object. Replace the <name> and <type> placeholders with your own values.:

2. Add one more files to the artifact

Add files, directories, external URI references (such as Amazon S3) and more to your artifact object. To add a single file, use the artifact object’s Artifact.add_file() method:
See the next section, Add a single file, for more information on adding different file types to an artifact. To add a directory, use the Artifact.add_dir() method:
See the next section, Add multiple files, for more information on adding different file types to an artifact.

3. Save your artifact to the W&B server

Finally, save your artifact to the W&B server. Use a run objects wandb.Run.log_artifact() method to save the artifact.
Putting this all together, the following code snippet demonstrates how to create a dataset artifact, add a file to the artifact, and save the artifact to W&B:
When to use Artifact.save() or wandb.Run.log_artifact()
  • Use Artifact.save() to update an existing artifact without creating a new run.
  • Use wandb.Run.log_artifact() to create a new artifact and associate it with a specific run.
Calls to log_artifact are performed asynchronously for performant uploads. This can cause surprising behavior when logging artifacts in a loop. For example:
The artifact version v0 is NOT guaranteed to have an index of 0 in its metadata, as the artifacts may be logged in an arbitrary order.

Add files to an artifact

The following sections demonstrate how to construct artifacts with different file types and from parallel runs. For the following examples, assume you have a project directory with multiple files and a directory structure:

Add a single file

The following code snippet demonstrates how to add a single, local file to your artifact:
For example, suppose you had a file called 'file.txt' in your working local directory.
The artifact now has the following content:
Optionally, pass the desired path within the artifact for the name parameter.
The artifact is stored as:

Add multiple files

The following code snippet demonstrates how to add an entire, local directory to your artifact:
The proceeding API calls produce the proceeding artifact content:

Add a URI reference

Artifacts track checksums and other information for reproducibility if the URI has a scheme that W&B library knows how to handle. Add an external URI reference to an artifact with the add_reference method. Replace the 'uri' string with your own URI. Optionally pass the desired path within the artifact for the name parameter.
Artifacts currently support the following URI schemes:
  • http(s)://: A path to a file accessible over HTTP. The artifact will track checksums in the form of etags and size metadata if the HTTP server supports the ETag and Content-Length response headers.
  • s3://: A path to an object or object prefix in S3. The artifact will track checksums and versioning information (if the bucket has object versioning enabled) for the referenced objects. Object prefixes are expanded to include the objects under the prefix, up to a maximum of 10,000 objects.
  • gs://: A path to an object or object prefix in GCS. The artifact will track checksums and versioning information (if the bucket has object versioning enabled) for the referenced objects. Object prefixes are expanded to include the objects under the prefix, up to a maximum of 10,000 objects.
The proceeding API calls will produce the proceeding artifacts:

Add files to artifacts from parallel runs

For large datasets or distributed training, multiple parallel runs might need to contribute to a single artifact.

Find path for logged artifacts and other metadata

The following code snippet shows how to use the W&B Public API to list the files in a run, including their names and URLs. Replace the <entity/project/run-id> placeholder with your own values:
See the File Class for more information on available attributes and methods.