Bumps the pip group with 1 update in the /kubernetes/src/odh_base_ml_platform directory: mlflow.
Bumps the pip group with 1 update in the /model-vcs/mlflow/simple_mlflow_fastapi_k8s directory: mlflow.
Bumps the pip group with 1 update in the /model-vcs/mlflow/sklearn_mlflow directory: mlflow.
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
We are excited to announce the release of MLflow 2.16.0. This release includes many major features and improvements!
Major features:
LlamaIndex Enhancements🦙 - to provide additional flexibility to the LlamaIndex integration, we now have support for the models-from-code functionality for logging, extended engine-based logging, and broadened support for external vector stores.
LangGraph Support - We've expanded the LangChain integration to support the agent framework LangGraph. With tracing and support for logging using the models-from-code feature, creating and storing agent applications has never been easier!
AutoGen Tracing - Full automatic support for tracing multi-turn agent applications built with Microsoft's AutoGen framework is now available in MLflow. Enabling autologging via mlflow.autogen.autolog() will instrument your agents built with AutoGen.
Plugin support for AI Gateway - You can now define your own provider interfaces that will work with MLflow's AI Gateway (also known as the MLflow Deployments Server). Creating an installable provider definition will allow you to connect the Gateway server to any GenAI service of your choosing.
[Models] Replace pkg_resources with importlib.metadata due to package deprecation (#12853, @​harupy)
[Tracking] Fix error handling for OpenAI autolog tracing (#12841, @​B-Step62)
[Tracking] Fix a condition where a deadlock can occur when connecting to an SFTP artifact store (#12938, @​WeichenXu123)
[Tracking] Fix an issue where code_paths dependencies were not properly initialized within the system path for LangChain models (#12923, @​harshilprajapati96)
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Bumps the pip group with 1 update in the /kubernetes/src/odh_base_ml_platform directory: mlflow. Bumps the pip group with 1 update in the /model-vcs/mlflow/simple_mlflow_fastapi_k8s directory: mlflow. Bumps the pip group with 1 update in the /model-vcs/mlflow/sklearn_mlflow directory: mlflow.
Updates
mlflow
from 2.14.2 to 2.16.0Release notes
Sourced from mlflow's releases.
... (truncated)
Changelog
Sourced from mlflow's changelog.
... (truncated)
Commits
07fdad0
Runpython3 dev/update_mlflow_versions.py pre-release ...
(#13031)ebab8ff
Runpython3 dev/update_requirements.py --requirements-...
(#13027)bc738eb
Runpython3 dev/update_ml_package_versions.py
(#13026)2042bd0
Runpython3 dev/update_pypi_package_index.py
(#13028)cc949ac
MLflow UI Sync (#13024)71570ae
Add docs updates for LangGraph support (#13025)9bfa231
Addmlflow.models.Model.get_tags_dict
to generatemodel-history
tag (#12...8135ea8
Support saving LangGraph object via model-from-code (#12996)2b33509
Fix data conversion for serving in langchain (#12987)811c0f4
Change uc_function to function (#13019)Updates
mlflow
from 2.15.1 to 2.16.0Release notes
Sourced from mlflow's releases.
... (truncated)
Changelog
Sourced from mlflow's changelog.
... (truncated)
Commits
07fdad0
Runpython3 dev/update_mlflow_versions.py pre-release ...
(#13031)ebab8ff
Runpython3 dev/update_requirements.py --requirements-...
(#13027)bc738eb
Runpython3 dev/update_ml_package_versions.py
(#13026)2042bd0
Runpython3 dev/update_pypi_package_index.py
(#13028)cc949ac
MLflow UI Sync (#13024)71570ae
Add docs updates for LangGraph support (#13025)9bfa231
Addmlflow.models.Model.get_tags_dict
to generatemodel-history
tag (#12...8135ea8
Support saving LangGraph object via model-from-code (#12996)2b33509
Fix data conversion for serving in langchain (#12987)811c0f4
Change uc_function to function (#13019)Updates
mlflow
from 2.14.3 to 2.16.0Release notes
Sourced from mlflow's releases.
... (truncated)
Changelog
Sourced from mlflow's changelog.
... (truncated)
Commits
07fdad0
Runpython3 dev/update_mlflow_versions.py pre-release ...
(#13031)ebab8ff
Runpython3 dev/update_requirements.py --requirements-...
(#13027)bc738eb
Runpython3 dev/update_ml_package_versions.py
(#13026)2042bd0
Runpython3 dev/update_pypi_package_index.py
(#13028)cc949ac
MLflow UI Sync (#13024)71570ae
Add docs updates for LangGraph support (#13025)9bfa231
Addmlflow.models.Model.get_tags_dict
to generatemodel-history
tag (#12...8135ea8
Support saving LangGraph object via model-from-code (#12996)2b33509
Fix data conversion for serving in langchain (#12987)811c0f4
Change uc_function to function (#13019)Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting
@dependabot rebase
.Dependabot commands and options
You can trigger Dependabot actions by commenting on this PR: - `@dependabot rebase` will rebase this PR - `@dependabot recreate` will recreate this PR, overwriting any edits that have been made to it - `@dependabot merge` will merge this PR after your CI passes on it - `@dependabot squash and merge` will squash and merge this PR after your CI passes on it - `@dependabot cancel merge` will cancel a previously requested merge and block automerging - `@dependabot reopen` will reopen this PR if it is closed - `@dependabot close` will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually - `@dependabot show