OpenAI LunarLander-v2 DeepRL-based solutions (DQN, DuelingDQN, D3QN)
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Updated
Aug 11, 2021 - Python
OpenAI LunarLander-v2 DeepRL-based solutions (DQN, DuelingDQN, D3QN)
A (very amateur) foreign exchange trading bot utilizing CNN + DQN.
Super Mario Bros training with Ray RLlib DQN algorithm
OpenAI MountainCar-v0 DeepRL-based solutions (DQN, DuelingDQN, D3QN)
Codes implementation of the paper "Deep reinforcement learning for minimizing tardiness in parallel machine scheduling with sequence dependent family setups"
An implementation of an Autonomous Vehicle Agent in CARLA simulator, using TF-Agents
Created an DQN AI Agent which chooses to sell, buy, or keep stocks from various companies.
In this repository there are the projects developed during the course of Advance Optimization-based Robot Control. The main topics are Task Space Inverse Dynamics (TSID), Differential Dynamic Programming (DDP) and Deep Q-Network (DQN).
a nearest frontier based DQN alg for robot exploration
A simple implementation of HFT (High-Frequency Trading) in Python on the concept of DQN for forex market
A DQN sample based on Keras or Tensorflow2.x using Maze env, which mainly take MorvanZhou's code for reference.
Implementation of reinforcement learning algorithms in a cyber security simulation. Autonomous and Adaptive Systems (University of Bologna, Italy) course project.
Solving MountainCar-v0 environment in Keras with Deep Q Learning an Deep Reinforcement Learning algorithm
simulation platform for algorithmic pricing
Project code for my seminar paper
Obstacle avoidance with DQN Algorithm (Double DQN, Prioritized Experience Replay, Dueling Network Architectures, N-step Return, Soft TargetNet, Parallel computing...
OpenAI CartPole-v0 DeepRL-based solutions (DQN, DuelingDQN, D3QN)
Atari OpenAI Pong-v4 DeepRL-based solutions (DQN, DuelingDQN, D3QN)
This is how you teach a dumb bot to walk on two feet.
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