Releases: oracle/accelerated-data-science
Releases · oracle/accelerated-data-science
ADS 2.11.2
Fixed bugs and introduced enhancements following our recent release, which included internal adjustments for future features and updates for the Jupyter Lab 3 upgrade.
ADS 2.11.1
Internal changes to support upcoming features and changes in Notebook related to Jupyter Lab 3 upgrade
ADS 2.11.0: Yanked
Reason this release was yanked: import errors in opctl.
ADS 2.10.1
- Releasing v1 of the Anomaly Detection Operator! The Anomaly Detection Operator is a no-code Anomaly or Outlier Detection solution through the OCI Data Science Platform. It uses dozens of models from Oracle’s own proprietary research and the best of open source. See the
Anomaly Detection
Section of theAI Operators
tab for full details (link). - Releasing a new version of the Forecast Operator. This release has faster explainability, improved support for reading from databases, upgrades to the automatic reporting, improved parallelization across all models, and an ability to save models for deferred inference. See the
Forecast
Section of theAI Operators
tab for full details (link). - Change to the default signer such that it now defaults to
resource_prinicpal
on any OCI Data Science resource (for example, jobs, notebooks, model deployments, dataflow).
ADS 2.10.0
- Improved the progress bar to use the percentage completed of workflow request instead of hardcoded steps.
- Used the service default for
WEB_CONCURRENCY
for model deployment. - Fixed the bug with zipping the model artifacts directory when
TMPRDIR
is provided. - Improved the
watch()
method for model deployment to keep streaming logs when the deployment is finished. - Changed the default log type of watch to both access logs and predict logs.
- Changed the target directory to
artifact_dir
instead of temp directory when saving the model artifacts. - Fixed the mount file system pre-check to check for duplicate
dest
. - Fixed duplicate logs in the model deployment consolidated logs.
- Added support for the optional downloading of artifacts in
GenericModel
using adownload_artifact()
method. - Set the Data Science service endpoint through the environment variable in
OCIDataScienceMixin
. - Made reloading the model to environment as optional at the time of invoking
GenericModel.from_id()
. - Mandated the Python version in
GenericModel.prepare()
when it can't be resolved. - Added a print out of the model deployment OCID in the notebook cell when
deploy()
is called.
ADS 2.9.1
- Added support for deploying LangChain application as OCI Model Deployment.
- Added support for using HuggingFace Evaluation as LLM guardrail.
- Added deployment support for RetrievalQA when using OpenSearchVectorSearch or FAISS vector DB as retriever.
- Added reload parameters in
GenericModel.save()
to provide option to not reload score.py. - Fixed a bug in model deployment progress bar due to fixed number of steps.
- Fixed a bug in
ads opctl build-image job-local
command.
ADS 2.9.0
- Introducing AI Forecast Operator. Learn more about Operators in the "Operators" section of the docs.
- Introducing PII Operator which aims to detect and redact Personal Identifiable Information in data.
- Fixed a bug with the
opctl conda create
andopctl conda publish
commands to ensure functionality on M1 and M2 local machines. - Fixed a bug with failed model deployment return value.
- Fixed a bug when sorting logs for jobs and model deployment.
ADS 2.8.11
- Added support to mount file systems in Data Science notebook sessions and jobs.
- Added support to cancel all job runs in the ADS
api
andopctl
commands. - Updated
ads.set_auth()
to use bothconfig
andsigner
when provided. - Fixed a bug when initializing distributed training artifacts with "Ray" framework.
ADS 2.9.0rc0
We are pleased to announce a release candidate for ADS 2.9.0. If all goes well, we'll release ADS 2.9.0 in few weeks.
The release will be available on PyPI and can be installed with --pre flag:
python -m pip install --pre oracle-ads==2.9.0rc0
Please report any issues with the release candidate on the ADS issue tracker.
ADS 2.8.10
- Improved the
LargeArtifactUploader
class to understand OCI paths to upload model artifacts to the model catalog by reference. - Removed
ADSDataset
runtime dependency ongeopandas
. - Fixed a bug in the progress bar during model registration.
- Fixed a bug where session variable could be referenced before assignment.
- Fixed a bug with model artifact save.
- Fixed a bug with pipelines step.