| File Name: | Cutting-Edge AI: Deep Reinforcement Learning in PyTorch (v2) |
| Content Source: | https://www.udemy.com/course/deep-reinforcement-learning-ddpg-td3-in-pytorch/ |
| Genre / Category: | Ai Courses |
| File Size : | 8.9 GB |
| Publisher: | Lazy Programmer Team |
| Updated and Published: | February 27, 2026 |
The world of Artificial Intelligence is moving fast, and Deep Reinforcement Learning (DRL) is the engine driving its most impressive breakthroughs—from mastering complex games to autonomous robotics and high-frequency trading.
Welcome to Version 2. We’ve completely rebuilt this course from the ground up to reflect the modern AI landscape. This isn’t just a minor update; it’s a total transformation designed to take you from a curious coder to a DRL expert.
Why Version 2?
We listened to your feedback and updated every component to ensure you’re learning with the most relevant, industry-standard tools available today:
- PyTorch Native: We’ve ditched the clunky syntax of TensorFlow 1 for the elegance and flexibility of PyTorch, the preferred framework for AI researchers worldwide.
- Free MuJoCo Integration: Take advantage of the industry-leading physics engine, MuJoCo, which is now open-source and free to use for your robotics simulations.
- Refined Explanations: We’ve streamlined the theory, making the “math-heavy” concepts intuitive, clear, and actually fun to learn.
What You’ll Master
This course bridges the gap between academic theory and production-ready code. You won’t just learn how to use libraries; you’ll learn how to build these sophisticated agents from scratch.
1. The Foundations (The RL Brain) Before diving into deep networks, we ensure your foundation is rock-solid. You’ll master Markov Decision Processes (MDPs) and the Bellman Equation – the mathematical heart of how an agent “values” its future.
2. Deep Deterministic Policy Gradient (DDPG) Learn the algorithm that brought Reinforcement Learning into continuous action spaces. Unlike DQN, which chooses from a list of buttons, DDPG allows agents to operate in worlds with infinite possibilities—like precisely rotating a robotic arm or adjusting a throttle.
3. TD3 (Twin-Delayed DDPG) Move beyond the basics with TD3, the “corrected” version of DDPG. You’ll learn how to tackle the common problem of overestimation bias using clipped double-Q learning and delayed policy updates, resulting in much more stable and reliable agents.
4. The VIP Project: Algorithmic Trading) Put your skills to the test in a high-stakes environment. You will build a custom environment for Position Sizing in Algorithmic Trading. You’ll code the environment from scratch, then deploy your DDPG and TD3 agents to manage risk and maximize returns in a simulated market.
DOWNLOAD LINK: Cutting-Edge AI: Deep Reinforcement Learning in PyTorch (v2)
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part01.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part02.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part03.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part04.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part05.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part06.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part07.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part08.rar – 1000.0 MB
Cutting-Edge_AI_Deep_Reinforcement_Learning_in_PyTorch_v2_.part09.rar – 997.7 MB
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