Releases: oracle/accelerated-data-science
Releases · oracle/accelerated-data-science
2.8.0
ADS
- Added support for the
machine learning pipelinesfeature. - Fixed a bug in
fetch_training_code_details(). When git commit is empty string, set it as None to avoid service error. - Fixed a bug in
fetch_training_code_details(). Use the folder oftraining_script_pathas the artifact directory, instead of..
2.7.3
ADS
- Added support for the model version set feature.
- Added
--job-infooption toads opctl runCLI to save job run information to a YAML file. - Added the AuthContext class. It supports API key configuration, resource principal, and instance principal authentication. In addition, predefined signers, callable signers, or API keys configurations from specified locations.
- Added
restart_deployment()method to the framework-specific classes. Update model deployment associated with the model. - Added
activate()anddeactivate()method to the model deployment classes. - Fixed a bug in
to_sql(). The string length for the column created in Oracle Database table was counting characters, not bytes. - Fixed a bug where any exception that occurred in a notebook cell printed "ADS Exception" even if the ADS code was not responsible for the error.
2.7.2
2.7.1
2.7.0
ADS
- Fixed a bug in
GenericModel.prepare. The.model-ignorefile was not included in theManifest.in.
2.6.9
ADS
- Added compatibility with Python
3.10. - Added
update_deployment()method to the framework-specificclasses. Update model deployment associated with the model. - Added
from_id()method to the framework-specific classes. Load existing model by OCID directly from the model catalog and model deployment. - Added
upload_artifact()to the framework-specific classes. Upload model artifacts to Object Storage. - Added
update()method to the framework-specific classes. Update the model metadata for the registered model. - Added
config,singer,signer_callableattributes to theads.set_auth()to support additional signers. - Added support for
Instance Principalsauthentication for theads opctl conda publishandads opctl conda installcommands. - Added an option for
PyTorchModelframework allowing to serialize model in aTorchScriptformat. - Added an option to import :doc:
framework-specific <framework_specific_instruction>classes directly from theads.modelpackage. Example:from ads.model import LightGBMModel, AutoMLModel, GenericModel. - Fixed a bug in ADSDataset
get_recommendationswhen imbalanced correction depends on classes alpha order. - Fixed a bug in ADS jobs. The shape configuration details were incorrectly extracted from a notebook session.
- Fixed a bug to replace the use of a deprecated API with latest API in the Model Evaluation module.
Following modules are marked as deprecated:
ads.catalog.model.py.ads.catalog.notebook.pyads.catalog.project.pyads.catalog.summary.py
2.6.8
2.6.7
ADS
- Fixed a bug in
PyTorchModel. Thescore.pyfailed whentorch.Tensorwas used as input data. - Added support for flexible shapes for Data Flow Jobs.
- Loading a model from Model Catalog (
GenericModel.from_model_catalog()) and Model Deployment (GenericModel.from_model_deployment()) no longer requires a model file name. - Switched from using
cx_Oracleinterface to theoracledbdriver to connect to Oracle Databases. - Added support for image attribute for the
PyTorchModel.predict()andTensorFlowModel.predict()methods. Images can now be directly passed to the model Deployment predict.
The following APIs are deprecated:
- OracleAutoMLProvider
2.6.6
ADS
- Added
SparkPipelineModelmodel serialization class for fast and easy model deployment. - Added support for flexible shapes for Jobs and Model Deployments.
- Added support for
freeform_tagsanddefined_tagsfor Model Deployments. - Added the
populate_schema()method to theGenericModelclass. Populate input and output schemas for model artifacts. - The
ADSStringwas added to the Feature types system. Use the enhanced string class functionalities such as regular expression (RegEx) matching and natural language parsing within Pandas dataframes and series. - Saving model does not require iPython dependencies
Following APIs are deprecated:
- DatasetFactory.open
- ADSModel.prepare
- ads.common.model_export_util.prepare_generic_model