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chore(deps): bump mlflow from 2.13.2 to 2.16.0 in /tests/data/serve_resources/mlflow/pytorch #4940

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@dependabot dependabot bot commented on behalf of github Nov 25, 2024

Bumps mlflow from 2.13.2 to 2.16.0.

Release notes

Sourced from mlflow's releases.

MLflow 2.16.0

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.

Features:

  • [UI] Add updated deployment usage examples to the MLflow artifact viewer (#13024, @​serena-ruan, @​daniellok-db)
  • [Models] Support logging LangGraph applications via the models-from-code feature (#12996, @​B-Step62)
  • [Models] Extend automatic authorization pass-through support for Langgraph agents (#13001, @​aravind-segu)
  • [Models] Expand the support for LangChain application logging to include UCFunctionToolkit dependencies (#12966, @​aravind-segu)
  • [Models] Support saving LlamaIndex engine directly via the models-from-code feature (#12978, @​B-Step62)
  • [Models] Support models-from-code within the LlamaIndex flavor (#12944, @​B-Step62)
  • [Models] Remove the data structure conversion of input examples to ensure enhanced compatibility with inference signatures (#12782, @​serena-ruan)
  • [Models] Add the ability to retrieve the underlying model object from within pyfunc model wrappers (#12814, @​serena-ruan)
  • [Models] Add spark vector UDT type support for model signatures (#12758, @​WeichenXu123)
  • [Tracing] Add tracing support for AutoGen (#12913, @​B-Step62)
  • [Tracing] Reduce the latency overhead for tracing (#12885, @​B-Step62)
  • [Tracing] Add Async support for the trace decorator (#12877, @​MPKonst)
  • [Deployments] Introduce a plugin provider system to the AI Gateway (Deployments Server) (#12611, @​gabrielfu)
  • [Projects] Add support for parameter submission to MLflow Projects run in Databricks (#12854, @​WeichenXu123)
  • [Model Registry] Introduce support for Open Source Unity Catalog as a model registry service (#12888, @​artjen)

Bug fixes:

Documentation updates:

... (truncated)

Changelog

Sourced from mlflow's changelog.

2.16.0 (2024-08-30)

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.

Features:

  • [UI] Add updated deployment usage examples to the MLflow artifact viewer (#13024, @​serena-ruan, @​daniellok-db)
  • [Models] Support logging LangGraph applications via the models-from-code feature (#12996, @​B-Step62)
  • [Models] Extend automatic authorization pass-through support for Langgraph agents (#13001, @​aravind-segu)
  • [Models] Expand the support for LangChain application logging to include UCFunctionToolkit dependencies (#12966, @​aravind-segu)
  • [Models] Support saving LlamaIndex engine directly via the models-from-code feature (#12978, @​B-Step62)
  • [Models] Support models-from-code within the LlamaIndex flavor (#12944, @​B-Step62)
  • [Models] Remove the data structure conversion of input examples to ensure enhanced compatibility with inference signatures (#12782, @​serena-ruan)
  • [Models] Add the ability to retrieve the underlying model object from within pyfunc model wrappers (#12814, @​serena-ruan)
  • [Models] Add spark vector UDT type support for model signatures (#12758, @​WeichenXu123)
  • [Tracing] Add tracing support for AutoGen (#12913, @​B-Step62)
  • [Tracing] Reduce the latency overhead for tracing (#12885, @​B-Step62)
  • [Tracing] Add Async support for the trace decorator (#12877, @​MPKonst)
  • [Deployments] Introduce a plugin provider system to the AI Gateway (Deployments Server) (#12611, @​gabrielfu)
  • [Projects] Add support for parameter submission to MLflow Projects run in Databricks (#12854, @​WeichenXu123)
  • [Model Registry] Introduce support for Open Source Unity Catalog as a model registry service (#12888, @​artjen)

Bug fixes:

Documentation updates:

... (truncated)

Commits

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@dependabot dependabot bot requested a review from a team as a code owner November 25, 2024 19:52
@dependabot dependabot bot added the dependencies Pull requests that update a dependency file label Nov 25, 2024
@dependabot dependabot bot requested a review from nileshvd November 25, 2024 19:52
Bumps [mlflow](https://github.com/mlflow/mlflow) from 2.13.2 to 2.16.0.
- [Release notes](https://github.com/mlflow/mlflow/releases)
- [Changelog](https://github.com/mlflow/mlflow/blob/master/CHANGELOG.md)
- [Commits](mlflow/mlflow@v2.13.2...v2.16.0)

---
updated-dependencies:
- dependency-name: mlflow
  dependency-type: direct:production
...

Signed-off-by: dependabot[bot] <[email protected]>
@dependabot dependabot bot force-pushed the dependabot/pip/tests/data/serve_resources/mlflow/pytorch/mlflow-2.16.0 branch from 075b56e to 308e659 Compare December 4, 2024 12:39
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