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Add config MLFLOW_JOHNSNOWLABS_MODEL_REUSE_SPARK_SESSION for johnsnowlab model loading #11994

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@WeichenXu123 WeichenXu123 commented May 14, 2024

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Install mlflow from this PR

pip install git+https://github.com/mlflow/mlflow.git@refs/pull/11994/merge

Checkout with GitHub CLI

gh pr checkout 11994

Related Issues/PRs

#xxx

What changes are proposed in this pull request?

Add environmental variable config MLFLOW_JOHNSNOWLABS_MODEL_REUSE_SPARK_SESSION for johnsnowlab model loading.

Motivation:

The

def _get_or_create_sparksession(model_path=None):
functionality is not fully correct.
It tries to reuse active spark session, but Johnsnow lab model requires specific spark.jars settings for spark session these jar settings are immutable once spark session is created, existing spark session might not satisfy the required setting.

How is this PR tested?

  • Existing unit/integration tests
  • New unit/integration tests
  • Manual tests

Does this PR require documentation update?

  • No. You can skip the rest of this section.
  • Yes. I've updated:
    • Examples
    • API references
    • Instructions

Release Notes

Is this a user-facing change?

  • No. You can skip the rest of this section.
  • Yes. Give a description of this change to be included in the release notes for MLflow users.

What component(s), interfaces, languages, and integrations does this PR affect?

Add environmental variable config MLFLOW_JOHNSNOWLABS_MODEL_REUSE_SPARK_SESSION for johnsnowlab model loading.

Components

  • area/artifacts: Artifact stores and artifact logging
  • area/build: Build and test infrastructure for MLflow
  • area/deployments: MLflow Deployments client APIs, server, and third-party Deployments integrations
  • area/docs: MLflow documentation pages
  • area/examples: Example code
  • area/model-registry: Model Registry service, APIs, and the fluent client calls for Model Registry
  • area/models: MLmodel format, model serialization/deserialization, flavors
  • area/recipes: Recipes, Recipe APIs, Recipe configs, Recipe Templates
  • area/projects: MLproject format, project running backends
  • area/scoring: MLflow Model server, model deployment tools, Spark UDFs
  • area/server-infra: MLflow Tracking server backend
  • area/tracking: Tracking Service, tracking client APIs, autologging

Interface

  • area/uiux: Front-end, user experience, plotting, JavaScript, JavaScript dev server
  • area/docker: Docker use across MLflow's components, such as MLflow Projects and MLflow Models
  • area/sqlalchemy: Use of SQLAlchemy in the Tracking Service or Model Registry
  • area/windows: Windows support

Language

  • language/r: R APIs and clients
  • language/java: Java APIs and clients
  • language/new: Proposals for new client languages

Integrations

  • integrations/azure: Azure and Azure ML integrations
  • integrations/sagemaker: SageMaker integrations
  • integrations/databricks: Databricks integrations

How should the PR be classified in the release notes? Choose one:

  • rn/none - No description will be included. The PR will be mentioned only by the PR number in the "Small Bugfixes and Documentation Updates" section
  • rn/breaking-change - The PR will be mentioned in the "Breaking Changes" section
  • rn/feature - A new user-facing feature worth mentioning in the release notes
  • rn/bug-fix - A user-facing bug fix worth mentioning in the release notes
  • rn/documentation - A user-facing documentation change worth mentioning in the release notes

Should this PR be included in the next patch release?

Yes should be selected for bug fixes, documentation updates, and other small changes. No should be selected for new features and larger changes. If you're unsure about the release classification of this PR, leave this unchecked to let the maintainers decide.

What is a minor/patch release?
  • Minor release: a release that increments the second part of the version number (e.g., 1.2.0 -> 1.3.0).
    Bug fixes, doc updates and new features usually go into minor releases.
  • Patch release: a release that increments the third part of the version number (e.g., 1.2.0 -> 1.2.1).
    Bug fixes and doc updates usually go into patch releases.
  • Yes (this PR will be cherry-picked and included in the next patch release)
  • No (this PR will be included in the next minor release)

Signed-off-by: Weichen Xu <weichen.xu@databricks.com>
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github-actions bot commented May 14, 2024

Documentation preview for 49872ca will be available when this CircleCI job
completes successfully.

More info

@github-actions github-actions bot added area/models MLmodel format, model serialization/deserialization, flavors rn/none List under Small Changes in Changelogs. patch-2.12.3 labels May 14, 2024
Signed-off-by: Weichen Xu <weichen.xu@databricks.com>
@WeichenXu123 WeichenXu123 marked this pull request as draft May 15, 2024 00:00
Signed-off-by: Weichen Xu <weichen.xu@databricks.com>
@WeichenXu123 WeichenXu123 marked this pull request as ready for review May 15, 2024 00:36
Signed-off-by: Weichen Xu <weichen.xu@databricks.com>
@WeichenXu123
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New PR #11994 instead of this

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