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A Meta-RL implementation using MAML and VAE.

Project description

popularl

PopulaRL is an open-source Python Module that implements my research in Meta-RL and Representation Learning. This is a work-in-progress Meta-Reinforcement Learning library that integrates MAML with VAE-based task encoding.

Features (Planned & Implemented)

  • MAML-based adaptation
  • VAE for task inference
  • Support for more environments
  • Optimization improvements

Installation

pip install popularl

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