MP4 | Video: AVC 1920x1080 30fps | Audio: AAC 48KHz 2ch | Duration: 4h
Genre: eLearning | Language: English | Size: 593 MB
Learn
Build key algorithms using PyTorch
Implement self-learning agents using PyTorch
Combine and modify Deep Q Networks and policy gradients to form more powerful algorithms
Create actor-critic and deep deterministic policy gradients, and apply proximal policy
Optimization in PyTorch and its extensions to improve performance
Explore the importance of Q learning, sample efficiency, and the on/off policy in deep reinforcement learning
Use function approximators, trust regions, and advanced value functions to build upon RL methods and drive new results
Relate the basics of RL to original Deep RL algorithms, more advanced extensions, and cutting-edge research
About
PyTorch, Facebook's deep learning framework, is clear, easy to code and easy to debug, thus providing a straightforward and simple experience for developers.
This course is your hands-on guide to the core concepts of deep reinforcement learning and its implementation in PyTorch. We will help you get your PyTorch environment ready before moving on to the core concepts that encompass deep reinforcement learning.
Following a practical approach, you will build reinforcement learning algorithms and develop/train agents in simulated OpenAI Gym environments. You'll learn the skills you need to implement deep reinforcement learning concepts so you can get started building smart systems that learn from their own experiences.
By the end of this course, you will have enhanced your knowledge of deep reinforcement learning algorithms and will be confident enough to effectively use PyTorch to build your RL projects.
The code bundle for this course is available at:
Features
An ideal blend of conceptual explanations and deep RL implementation in PyTorch
Go from zero to hero by exploring extensions and current research
Covers deep Q networks, policy gradients, actor-critic, deep deterministic policy gradients, and proximal policy optimization
发布日期: 2019-09-21