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a2c-algorithm

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Accepted by AROB 2021. For letting agents in traffic simulation behave more like humans, we propose a unified mechanism for agents learn to decide various accelerations on deep reinforcement learning and generate a traffic flow behaving variously to simulate the real traffic flow.

  • Updated May 7, 2021
  • GAML

This repository explores Reinforcement Learning (RL) through hands-on implementations of key algorithms and environments. It demonstrates how agents learn by interacting with environments, optimizing rewards, and adapting to tasks ranging from Atari games to autonomous driving and custom simulations.

  • Updated Aug 28, 2025
  • Jupyter Notebook

This is an AI for social good project, worked on as a culminating project for RL. Basically, AI agent will be simulating the government reps in a batch of 17 drugs negotiation with a goal with reduce the overall cost of each drugs s.t it is affordable for its users

  • Updated Feb 7, 2026
  • Jupyter Notebook

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