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Standalone local AI runtime core for LX medical model workflows.

Project description

lx-active-learning

Standalone AI runtime and deployment core for the LX ecosystem.

This is a inference module that provides active learning functionalities on data imported into endoreg-db. It provides optimizations for various types of models and will be ready to host models and efficiently run them while actively updating their weights if that is possible.

This package intentionally contains no Django models, no Celery tasks, no direct database access, and no network transfer logic. Integrating callers such as endoreg-db own storage, provenance persistence, queueing, and security policy.

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