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Deep Reinforcement Learning Using Python - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Deep Reinforcement Learning Using Python (/Thread-Deep-Reinforcement-Learning-Using-Python) |
Deep Reinforcement Learning Using Python - AD-TEAM - 04-06-2025 ![]() Deep Reinforcement Learning Using Python Published 1/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 5.75 GB | Duration: 9h 7m Complete guide to deep reinforcement learning What you'll learn Understand deep reinforcement learning and its applications Build your own neural network Implement 5 different reinforcement learning projects Learn a lot of ways to improve your robot Requirements Numpy, Matplotlib ,Pandas Gradient descent object-oriented programming General understanding of deep learning Description Welcome to Deep Reinforcement Learning using python!Have you ever asked yourself how smart robots are created?Reinforcement learning concerned with creating intelligent robots which is a sub-field of machine learning that achieved impressive results in the recent years where now we can build robots that can beat humans in very hard games like alpha-go game and chess game.Deep Reinforcement Learning means Reinforcement learning field plus deep learning field where deep learning it is also a a sub-field of machine learning which uses special algorithms called neural networks.In this course we will talk about Deep Reinforcement Learning and we will talk about the following things :-Section 1: An Introduction to Deep Reinforcement LearningIn this section we will study all the fundamentals of deep reinforcement learning . These include Policy , Value function , Q function and neural network.Section 2: Setting up the environmentIn this section we will learn how to create our virtual environment and installing all required packages.Section 3: Grid World Game & Deep Q-LearningIn this section we will learn how to build our first smart robot to solve Grid World Game.Here we will learn how to build and train our neural network and how to make exploration and exploitation.Section 4: Mountain Car game & Deep Q-LearningIn this section we will try to build a robot to solve Mountain Car game.Here we will learn how to build ICM module and RND module to solve sparse reward problem in Mountain Car game.Section 5: Flappy bird game & Deep Q-learningIn this section we will learn how to build a smart robot to solve Flappy bird game.Here we will learn how to build many variants of Q network like dueling Q network , prioritized Q network and 2 steps Q networkSection 6: Ms Pacman game & Deep Q-LearningIn this section we will learn how to build a smart robot to solve Ms Pacman game.Here we will learn how to build another variants of Q network like noisy Q network , double Q network and n-steps Q network.Section 7:Stock trading & Deep Q-LearningIn this section we will learn how to build a smart robot for stock trading. Overview Section 1: An Introduction to Deep Reinforcement Learning Lecture 1 What is reinforcement learning? Lecture 2 Policy , Value function and Q function Lecture 3 What are Neural Networks? Lecture 4 Optimal Q function Section 2: Setting up the environment Lecture 5 creating anaconda environment Lecture 6 Gym package Lecture 7 How to run the code of each section Section 3: Grid World Game & Deep Q-Learning Lecture 8 What is Grid World Game? Lecture 9 How to use Grid World environment ? Lecture 10 How to build your network ? Lecture 11 How to Build your first Q network using pytorch ? Lecture 12 How to make your neural network learn ? Lecture 13 Exploration & Exploitation using epsilon greedy Lecture 14 Training your neural network using pytorch part1 Lecture 15 Training your neural network using pytorch part2 Lecture 16 Batch training Lecture 17 train on batches python code Lecture 18 reward metric Lecture 19 Target nework Lecture 20 train your agent with target network python code Section 4: Mountain Car game & Deep Q-Learning Lecture 21 Mountain car in python Lecture 22 Dynamics network Lecture 23 Epsilon Greedy strategy mountain Car game in python Lecture 24 Dynamics Network with python Lecture 25 Multi variate gaussian distribution Lecture 26 Multivariate gaussian distribution with python Lecture 27 Model based exploration strategy with mountain car in python Lecture 28 What is ICM module ? Lecture 29 Filter network Lecture 30 Building Filter net python code Lecture 31 Inverse network Lecture 32 Building Inverse net python code Lecture 33 Forward network Lecture 34 Building Forward network python code Lecture 35 Building Agent Q network & Target Q network python code Lecture 36 Training Q network with ICM Lecture 37 Training Agent Q network with ICM python code Lecture 38 What is RND module? Lecture 39 Building P net & T net python code Lecture 40 Training Agent Q network with RND module Section 5: Flappy bird game & Deep Q-learning Lecture 41 Flappy bird game Lecture 42 Flappy bird game python code Lecture 43 Building convolution Q network Lecture 44 conv Q network with epsilon greedy approach python code Lecture 45 2-steps Q network Lecture 46 2-steps Q network python code Lecture 47 Prioritized Experience Replay buffer Lecture 48 Prioritized Experience Replay buffer python code Lecture 49 Dueling Q network Lecture 50 Dueling Q network python code Section 6: Ms Pacman game & Deep Q-Learning Lecture 51 Ms Pacman game Lecture 52 Ms Pacman game python code Lecture 53 Basic Q network python code Lecture 54 N-steps Q network Lecture 55 N-steps Q network python code Lecture 56 Noisy Q network Lecture 57 Noisy Q network python code Lecture 58 Noisy double dueling Q network python code Section 7: Stock trading & Deep Q-Learning Lecture 59 Basics of Trading Lecture 60 Stock Data Preprocessing Lecture 61 Building the trading environment Lecture 62 Building dueling conv1d Q network Lecture 63 Train your trading robot Anyone who wants to learn about artificial intelligence and deep learning,students & professionals ![]() AusFile RapidGator TurboBit |