Deep Learning

Reinforcement Learning — Learn to build intelligent agents that make optimal decisions through trial and error to achieve specific goals.

Deep Reinforcement Learning in Python: A Modern Introduction

Reinforcement Learning
Master the fundamentals of training intelligent agents using Python, PyTorch, and modern reinforcement learning algorithms like A2C and DDPG.
★ 4.7 (3,889)

Practical Reinforcement Learning in Python: Build Intelligent AI Agents

Reinforcement Learning
Master the fundamentals of deep reinforcement learning and build custom intelligent agents using Python, TensorFlow, and Gymnasium.
★ 4.6 (1,290)

Deep Reinforcement Learning with Python: Train Virtual Agents with TD3

Reinforcement Learning
Master the foundations of reinforcement learning and implement the advanced TD3 algorithm in Python to train virtual agents to walk, run, and navigate complex environments.
★ 4.7 (1,367)

Deep Reinforcement Learning: Implement Deep Q Agents from Papers

Reinforcement Learning
Read reinforcement learning research papers and implement Deep Q, Double Deep Q, and Dueling Deep Q networks from scratch using PyTorch and Gymnasium.
★ 4.3 (1,112)

Deep Reinforcement Learning: Implementing Research Papers in PyTorch and TensorFlow

Reinforcement Learning
Learn to translate complex AI research into functional code by building advanced agents for continuous control and decision-making tasks.
★ 4.3 (530)

Deep Reinforcement Learning with PyTorch: From DQN to SAC

Reinforcement Learning
Build and train intelligent AI agents from scratch using PyTorch and Gymnasium to solve complex decision-making and control tasks.
★ 4.3 (191)

Reinforcement Learning in Python: Build AI Agents with PyTorch and Gym

Reinforcement Learning
Learn to design, train, and evaluate intelligent AI agents from scratch using Python, PyTorch, and standard Gym simulation environments.
★ 4.3 (402)

Reinforcement Learning: Prediction and Control with Function Approximation

Reinforcement Learning
Scale reinforcement learning agents to large, continuous state spaces using value function approximation and modern neural networks.
★ 4.8 (848)

Foundations of Deep Learning and Reinforcement Learning

Reinforcement Learning
Understand the principles of neural networks and reward-based learning to build a solid foundation in modern artificial intelligence.
★ 4.6 (297)

Reinforcement Learning with Python for Beginners

Reinforcement Learning
Build and train intelligent agents to solve complex tasks and play games using modern Python libraries and core reinforcement learning principles.
★ 4.3 (164)

Introduction to Reinforcement Learning: From Q-Learning to Deep RL

Reinforcement Learning
Master foundational reinforcement learning concepts and implement key algorithms to solve complex decision-making problems through clear written explanations and code.
★ 4.7 (150)

Deep Reinforcement Learning Fundamentals

Reinforcement Learning
Learn to build intelligent agents that solve complex tasks by combining deep neural networks with reinforcement learning principles.
★ 5.0 (124)

Reinforcement Learning for Operations Research

Reinforcement Learning
Learn to solve complex scheduling, routing, and resource allocation problems by training intelligent decision-making agents using Python.
★ 4.4 (58)

Loop Control for AI Reward Learning Agents

Reinforcement Learning
Develop foundational skills to implement robust loop control and exit conditions in AI reward learning systems.

Reinforcement Learning: Adaptive Agent Evaluation

Reinforcement Learning
Gain foundational knowledge to understand and evaluate adaptive reinforcement learning agents and their self-improvement mechanisms.

Reinforcement Learning: GAIL for Imitation Learning

Reinforcement Learning
Understand how to apply Generative Adversarial Imitation Learning (GAIL) to build reinforcement learning agents that mimic expert behavior.

Reinforcement Learning Foundations: Core Concepts and Modern Algorithms

Reinforcement Learning
Master the fundamentals of reinforcement learning, from Markov Decision Processes to deep Q-networks, and learn to build intelligent decision-making agents.

Eureka Agent for AI Reward Design

Reinforcement Learning
Learn to guide AI agents using human feedback to discover novel and effective reward functions for complex problems.

Decision Making in Dynamic Environments: Foundations of Multi-Agent Systems

Reinforcement Learning
Learn how intelligent agents make strategic decisions, interact in complex environments, and adapt to constant change through clear, written explanations.

Foundations of Reinforcement Learning: From Math to Practical Application

Reinforcement Learning
Gain a solid mathematical and practical understanding of reinforcement learning algorithms, designed specifically for beginners ready to explore AI decision-making.

Automated Reward Design with Eureka and Evolutionary Search

Reinforcement Learning
Learn how to leverage the Eureka framework to iteratively design, evaluate, and optimize reward functions for reinforcement learning using evolutionary search.

Building Reward Learning Agents

Reinforcement Learning
Learn to design, structure, and implement intelligent agents that adapt and learn from rewards, suitable for beginners.

Reinforcement Learning Reward Design with Eureka Reflection

Reinforcement Learning
Master the concepts of reward reflection using Eureka to automatically evaluate, refine, and optimize reinforcement learning reward functions.

Reward Learning for AI Agents: Selection, Reflection, and Feedback

Reinforcement Learning
Build aligned AI agents by implementing reward selection, reflection, and human feedback loops using modern agent development frameworks.
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