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Bump mlflow from 1.8.0 to 1.23.1
Bumps mlflow from 1.8.0 to 1.23.1.
Release notes
Sourced from mlflow's releases.
MLflow 1.23.1 is a patch release containing the following bug fixes:
- [Models] Fix a directory creation failure when loading PySpark ML models (#5299,
@arjundc-db
)- [Model Registry] Revert to using case-insensitive validation logic for stage names in
models:/
URIs (#5312,@lichenran1234
)- [Projects] Fix a race condition during Project tar file creation (#5303,
@dbczumar
)Note: Version 1.23.1 of the MLflow R package has not yet been released. It will be available on CRAN within the next week.
MLflow 1.23.0 includes several major features and improvements:
Note: Version 1.23.0 of the MLflow R package has not yet been released. It will be available on CRAN within the next week.
Features:
- [Models] Introduce an
mlflow.evaluate()
API for evaluating MLflow Models, providing performance and explainability insights. For an overview, see https://mlflow.org/docs/latest/models.html#model-evaluation (#5069, #5092, #5256,@WeichenXu123
)- [Models]
log_model()
APIs now return information about the logged MLflow Model, including artifact location, flavors, and schema (#5230,@liangz1
)- [Models] Introduce an
mlflow.models.Model.load_input_example()
Python API for loading MLflow Model input examples (#5212,@maitre-matt
)- [Models] Add a UUID field to the MLflow Model specification. MLflow Models now have a unique identifier (#5149, #5167,
@WeichenXu123
)- [Models] Support passing SciPy CSC and CSR matrices as MLflow Model input examples (#5016,
@WeichenXu123
)- [Model Registry] Support specifying
latest
in model URI to get the latest version of a model regardless of the stage (#5027,@lichenran1234
)- [Tracking] Add support for LightGBM scikit-learn models to
mlflow.lightgbm.autolog()
(#5130, #5200, #5271@jwyyy
)- [Tracking] Improve S3 artifact download speed by caching boto clients (#4695,
@Samreay
)- [UI] Automatically update metric plots for in-progress runs (#5017,
@cedkoffeto
,@harupy
)Bug fixes and documentation updates:
- [Models] Fix a bug in MLflow Model schema enforcement where strings were incorrectly cast to Pandas objects (#5134,
@stevenchen-db
)- [Models] Fix a bug where keyword arguments passed to
mlflow.pytorch.load_model()
were not applied for scripted models (#5163,@schmidt-jake
)- [Model Registry][r] Fix bug in R client
mlflow_create_model_version()
API that caused modelsource
to be set incorrectly (#5185,@bramrodenburg
)- [Projects] Fix parsing behavior for Project URIs containing quotes (#5117,
@dinaldoap
)- [Scoring] Use the correct 400-level error code for malformed MLflow Model Server requests (#5003,
@abatomunkuev
)- [Tracking] Fix a bug where
mlflow.start_run()
modified user-supplied tags dictionary (#5191,@matheusMoreno
)- [UI] Fix a bug causing redundant scroll bars to be displayed on the Experiment Page (#5159,
@sunishsheth2009
)Small bug fixes and doc updates (#5275, #5264, #5244, #5249, #5255, #5248, #5243, #5240, #5239, #5232, #5234, #5235, #5082, #5220, #5219, #5226, #5217, #5194, #5188, #5132, #5182, #5183, #5180, #5177, #5165, #5164, #5162, #5015, #5136, #5065, #5125, #5106, #5127, #5120,
@harupy
; #5045,@BenWilson2
; #5156,@pbezglasny
; #5202,@jwyyy
; #3863,@JoshuaAnickat
; #5205,@abhiramr
; #4604,@OSobky
; #4256,@einsmein
; #5140,@AveshCSingh
; #5273, #5186, #5176,@WeichenXu123
; #5260, #5229, #5206, #5174, #5160,@liangz1
)MLflow 1.22.0
1.22.0 (2021-11-29)
MLflow 1.22.0 includes several major features and improvements:
Features:
- [UI] Add a share button to the Experiment page (#4936,
@marijncv
)- [UI] Improve readability of column sorting dropdown on Experiment page (#5022,
@WeichenXu123
; #5018,@NieuweNils
,@coder-freestyle
)- [Tracking] Mark all autologging integrations as stable by removing
@experimental
decorators (#5028,@liangz1
)- [Tracking] Add optional
experiment_id
parameter tomlflow.set_experiment()
(#5012,@dbczumar
)- [Tracking] Add support for XGBoost scikit-learn models to
mlflow.xgboost.autolog()
(#5078,@jwyyy
)- [Tracking] Improve statsmodels autologging performance by removing unnecessary metrics (#4942,
@WeichenXu123
)- [Tracking] Update R client to tag nested runs with parent run ID (#4197,
@yitao-li
)
... (truncated)
Changelog
Sourced from mlflow's changelog.
1.23.1 (2022-01-27)
MLflow 1.23.1 is a patch release containing the following bug fixes:
- [Models] Fix a directory creation failure when loading PySpark ML models (#5299,
@arjundc-db
)- [Model Registry] Revert to using case-insensitive validation logic for stage names in
models:/
URIs (#5312,@lichenran1234
)- [Projects] Fix a race condition during Project tar file creation (#5303,
@dbczumar
)1.23.0 (2022-01-17)
MLflow 1.23.0 includes several major features and improvements:
Features:
- [Models] Introduce an
mlflow.evaluate()
API for evaluating MLflow Models, providing performance and explainability insights. For an overview, see https://mlflow.org/docs/latest/models.html#model-evaluation (#5069, #5092, #5256,@WeichenXu123
)- [Models]
log_model()
APIs now return information about the logged MLflow Model, including artifact location, flavors, and schema (#5230,@liangz1
)- [Models] Introduce an
mlflow.models.Model.load_input_example()
Python API for loading MLflow Model input examples (#5212,@maitre-matt
)- [Models] Add a UUID field to the MLflow Model specification. MLflow Models now have a unique identifier (#5149, #5167,
@WeichenXu123
)- [Models] Support passing SciPy CSC and CSR matrices as MLflow Model input examples (#5016,
@WeichenXu123
)- [Model Registry] Support specifying
latest
in model URI to get the latest version of a model regardless of the stage (#5027,@lichenran1234
)- [Tracking] Add support for LightGBM scikit-learn models to
mlflow.lightgbm.autolog()
(#5130, #5200, #5271@jwyyy
)- [Tracking] Improve S3 artifact download speed by caching boto clients (#4695,
@Samreay
)- [UI] Automatically update metric plots for in-progress runs (#5017,
@cedkoffeto
,@harupy
)Bug fixes and documentation updates:
- [Models] Fix a bug in MLflow Model schema enforcement where strings were incorrectly cast to Pandas objects (#5134,
@stevenchen-db
)- [Models] Fix a bug where keyword arguments passed to
mlflow.pytorch.load_model()
were not applied for scripted models (#5163,@schmidt-jake
)- [Model Registry][R] Fix bug in R client
mlflow_create_model_version()
API that caused modelsource
to be set incorrectly (#5185,@bramrodenburg
)- [Projects] Fix parsing behavior for Project URIs containing quotes (#5117,
@dinaldoap
)- [Scoring] Use the correct 400-level error code for malformed MLflow Model Server requests (#5003,
@abatomunkuev
)- [Tracking] Fix a bug where
mlflow.start_run()
modified user-supplied tags dictionary (#5191,@matheusMoreno
)- [UI] Fix a bug causing redundant scroll bars to be displayed on the Experiment Page (#5159,
@sunishsheth2009
)Small bug fixes and doc updates (#5275, #5264, #5244, #5249, #5255, #5248, #5243, #5240, #5239, #5232, #5234, #5235, #5082, #5220, #5219, #5226, #5217, #5194, #5188, #5132, #5182, #5183, #5180, #5177, #5165, #5164, #5162, #5015, #5136, #5065, #5125, #5106, #5127, #5120,
@harupy
; #5045,@BenWilson2
; #5156,@pbezglasny
; #5202,@jwyyy
; #3863,@JoshuaAnickat
; #5205,@abhiramr
; #4604,@OSobky
; #4256,@einsmein
; #5140,@AveshCSingh
; #5273, #5186, #5176,@WeichenXu123
; #5260, #5229, #5206, #5174, #5160,@liangz1
)1.22.0 (2021-11-29)
MLflow 1.22.0 includes several major features and improvements:
Features:
- [UI] Add a share button to the Experiment page (#4936,
@marijncv
)- [UI] Improve readability of column sorting dropdown on Experiment page (#5022,
@WeichenXu123
; #5018,@NieuweNils
,@coder-freestyle
)- [Tracking] Mark all autologging integrations as stable by removing
@experimental
decorators (#5028,@liangz1
)- [Tracking] Add optional
experiment_id
parameter tomlflow.set_experiment()
(#5012,@dbczumar
)- [Tracking] Add support for XGBoost scikit-learn models to
mlflow.xgboost.autolog()
(#5078,@jwyyy
)- [Tracking] Improve statsmodels autologging performance by removing unnecessary metrics (#4942,
@WeichenXu123
)- [Tracking] Update R client to tag nested runs with parent run ID (#4197,
@yitao-li
)- [Models] Support saving and loading all XGBoost model types (#4954,
@jwyyy
)
... (truncated)
Commits
1fd9b52
Update MLflow version to 1.23.1 (#5324)eab972d
python dev/update_ml_package_versions.py (#5323)5387dd3
python dev/update_pypi_package_index.py (#5322)fced3a4
Fix loading a spark model on databricks (#5299)61984e6
Use mkstemp to replace deprecated mktemp call (#5303)271750b
Fix the bug of stages in models URI being case-sensitive (#5312)86ad040
Update MLflow version to 1.23.0 (#5279)f2dc157
python dev/update_pypi_package_index.py (#5280)9ef881f
python dev/update_ml_package_versions.py (#5278)043108c
Changelog for MLflow 1.23 (#5270)- Additional commits viewable in compare view
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