Intelligent Engine Release Notes¶
This page lists the Release Notes for Intelligent Engine, so that you can learn its evolution path and feature changes.
2024-05-30¶
v0.5.0¶
Features¶
- Added Support for adding
Tensorboardanalysis dashboard when creating tasks withbaizectl. - Added Support for binding
Jobto custom environments created inEnvironment Management. - Added Optimizations for custom environment configuration updates and improvements to the
Pythonversion selector inEnvironment Management. - Added Support for viewing resource monitoring dashboards in the details of
Inference Service. - Added Support for binding
Inference Serviceto custom environments created inEnvironment Management.
Fixes¶
- Fix the issue where
Pythonversion prompts permission problems in certain cases within environment management. - Fix the issue where the inference service does not support stopping during exceptions.
2024-04-30¶
v0.4.0¶
Features¶
- Added
Notebooknow supports local SSH access, compatible with various development tools such asPycharm,VS Code, etc. - Added Upgrade
Notebookimage to support the built-inCLItoolbaizectl, for command-line task submission and management. - Added
Notebookadds affinity scheduling strategy configuration. - Added Distributed training tasks can now configure
SHM sizethrough the UI. - Added One-click restart function for training tasks.
- Added Model training tasks support custom cluster scheduler specification.
- Added Training task analysis tool
Tensorboardsupport, can be launched with one click inNotebookand training tasks. - Added When editing queue quotas, hints are provided for the shared resource configuration of the current workspace.
- Added Upgrade and adapt Kueue version
v0.6.2.
Fixes¶
- Fixed Occasional sync anomaly issue with
NotebookCRD. - Fixed The query interface for
Notebookaffinity configuration parameters did not return.
2024-04-01¶
v0.3.0¶
Features¶
- Added the Notebooks module, supporting development tools like
Jupyter Notebook. - Added the Job Center module, supporting the training of jobs with various mainstream development frameworks such as
Pytorch,Tensorflow, andPaddle. - Added the Model Inference module, supporting rapid deployment of
Model Serving, compatible with any model algorithm and large language models. - Added the Data Management module, supporting the integration of mainstream data sources such as
S3,NFS,HTTP, andGit, with support for automatic data preheating.