All Projects → PacktPublishing → Tensorflow-2-Reinforcement-Learning-Cookbook

PacktPublishing / Tensorflow-2-Reinforcement-Learning-Cookbook

Licence: MIT license
Tensorflow 2 Reinforcement Learning Cookbook, published by Packt

Programming Languages

Jupyter Notebook
11667 projects
HTML
75241 projects
python
139335 projects - #7 most used programming language
javascript
184084 projects - #8 most used programming language
CSS
56736 projects
java
68154 projects - #9 most used programming language

Projects that are alternatives of or similar to Tensorflow-2-Reinforcement-Learning-Cookbook

siachart
stock trading chart - 可编程,可定制,跨平台,通用的金融图表。
Stars: ✭ 32 (-74.4%)
Mutual labels:  stock-trading
investopedia simulator api
A simple Python API for Investopedia's stock simulator games. This programmatically logs into Investopedia and can retrieve portfolio summary, get stock quotes & option chain lookups, execute trades - buy & sell shares, puts, calls, sell short, etc.
Stars: ✭ 22 (-82.4%)
Mutual labels:  stock-trading
pytorch-rl
Pytorch Implementation of RL algorithms
Stars: ✭ 15 (-88%)
Mutual labels:  rl-agents
Stocky
Machine Learning Stock Trading Risk Analysis (Spring 2017)
Stars: ✭ 27 (-78.4%)
Mutual labels:  stock-trading
StockScreener
A handy tool for screening stocks based on certain criteria from several markets around the world. The list can then be delivered to your email address (one-off or regularly via crontab).
Stars: ✭ 51 (-59.2%)
Mutual labels:  stock-trading
FinRL
FinRL: The first open-source project for financial reinforcement learning. Please star. 🔥
Stars: ✭ 3,497 (+2697.6%)
Mutual labels:  stock-trading
Deep Reinforcement Learning
Repo for the Deep Reinforcement Learning Nanodegree program
Stars: ✭ 4,012 (+3109.6%)
Mutual labels:  rl-algorithms
Forex-and-Stock-Python-Pattern-Recognizer
A machine learning program that is able to recognize patterns inside Forex or stock data
Stars: ✭ 134 (+7.2%)
Mutual labels:  stock-trading
TradeAlgo
Stock trading algorithm written in Python for TD Ameritrade.
Stars: ✭ 147 (+17.6%)
Mutual labels:  stock-trading
tictactoe-reinforcement-learning
Train a tic-tac-toe agent using reinforcement learning.
Stars: ✭ 36 (-71.2%)
Mutual labels:  rl-agents
insomnia-workspace
An Insomnia Workspace for Alpaca API
Stars: ✭ 34 (-72.8%)
Mutual labels:  stock-trading
alpha-vantage-cli
Command line tool and API for retrieving stock market data from Alpha Vantage
Stars: ✭ 33 (-73.6%)
Mutual labels:  stock-trading
robinhood.tools
📈🤑💰 Advanced trading tools and resources for Robinhood Web.
Stars: ✭ 27 (-78.4%)
Mutual labels:  stock-trading
stockbot
Alpaca algo stock trading bot
Stars: ✭ 105 (-16%)
Mutual labels:  stock-trading
rl-algorithms
Reinforcement learning algorithms
Stars: ✭ 40 (-68%)
Mutual labels:  rl-algorithms
Agents
TF-Agents: A reliable, scalable and easy to use TensorFlow library for Contextual Bandits and Reinforcement Learning.
Stars: ✭ 2,135 (+1608%)
Mutual labels:  rl-algorithms
Machine-Learning-for-Stock-Recommendation-IEEE-2018
A Practical Machine Learning Approach for Dynamic Stock Recommendation. IEEE TrustCom 2018.
Stars: ✭ 27 (-78.4%)
Mutual labels:  stock-trading
MarketCycles.jl
Digital Signal Processing Indicators For Market Data.
Stars: ✭ 26 (-79.2%)
Mutual labels:  stock-trading
TradeTheEvent
Implementation of "Trade the Event: Corporate Events Detection for News-Based Event-Driven Trading." In Findings of ACL2021
Stars: ✭ 64 (-48.8%)
Mutual labels:  stock-trading
Finrl Library
FinRL: Financial Reinforcement Learning Framework. Please star. 🔥
Stars: ✭ 3,037 (+2329.6%)
Mutual labels:  stock-trading

Get this product for $5

Packt is having its biggest sale of the year. Get this eBook or any other book, video, or course that you like just for $5 each

Buy now

Buy similar titles for just $5

TensorFlow 2 Reinforcement Learning Cookbook

TensorFlow 2 Reinforcement Learning Cookbook

This is the code repository for TensorFlow 2 Reinforcement Learning Cookbook, published by Packt.

Over 50 recipes to help you build, train, and deploy learning agents for real-world applications

What is this book about?

With deep reinforcement learning, you can build intelligent agents, products, and services that can go beyond computer vision or perception to perform actions. TensorFlow 2.x is the latest major release of the most popular deep learning framework used to develop and train deep neural networks (DNNs). This book contains easy-to-follow recipes for leveraging TensorFlow 2.x to develop artificial intelligence applications.

Starting with an introduction to the fundamentals of deep reinforcement learning and TensorFlow 2.x, the book covers OpenAI Gym, model-based RL, model-free RL, and how to develop basic agents. You'll discover how to implement advanced deep reinforcement learning algorithms such as actor-critic, deep deterministic policy gradients, deep-Q networks, proximal policy optimization, and deep recurrent Q-networks for training your RL agents. As you advance, you’ll explore the applications of reinforcement learning by building cryptocurrency trading agents, stock/share trading agents, and intelligent agents for automating task completion. Finally, you'll find out how to deploy deep reinforcement learning agents to the cloud and build cross-platform apps using TensorFlow 2.x.

By the end of this TensorFlow book, you'll be able to:

Build: Deep RL agents from scratch using the all-new and powerful TensorFlow 2.x framework and Keras API
Implement: Deep RL algorithms (DQN, A3C, DDPG, PPO, SAC etc.) with minimal lines of code
Train: Deep RL agents in simulated environments (gyms) beyond toy-problems and games to perform real-world tasks like cryptocurrency trading, stock trading, tweet/email management and more!
Scale: Distributed training of RL agents using TensorFlow 2.x, Ray + Tune + RLLib
Deploy: RL agents to the cloud and edge for real-world testing by creating cloud services, web apps and Android mobile apps using TensorFlow Lite, TensorFlow.js, ONNX and Triton

This book covers the following exciting features:

  • Build deep reinforcement learning agents from scratch using the all-new TensorFlow 2.x and Keras API
  • Implement state-of-the-art deep reinforcement learning algorithms using minimal code
  • Build, train, and package deep RL agents for cryptocurrency and stock trading
  • Deploy RL agents to the cloud and edge to test them by creating desktop, web, and mobile apps and cloud services
  • Speed up agent development using distributed DNN model training
  • Explore distributed deep RL architectures and discover opportunities in AIaaS (AI as a Service)

If you feel this book is for you, get your copy today!

Citing

If you use, derive, customize any of the recipes in your work, please cite this book using the following BibTex:

@book{Palanisamy:2021,
 author = {Palanisamy, Praveen},
 title = {TensorFlow 2 Reinforcement Learning Cookbook: Over 50 recipes to help you build, train, and deploy learning agents for real-world applications},
 year = {2021},
 isbn = {183898254X, 9781838982546},
 publisher = {Packt Publishing},
}

Getting Started

It is advised to create and use a Python virtual environment named tfrl-cookbook to install the packages and run the code in this book. A Miniconda or Anaconda installation for Python virtual environment management is recommended. Follow these steps to set up a conda pyton virtual environment using miniconda:

  1. Install system dependencies:
    • Linux (Ubuntu/Debian): sudo apt install -y make cmake ffmpeg
    • Mac OSX: brew install make cmake ffmpeg
  2. Install miniconda: wget https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh && bash -b -p ${HOME}/miniconda3
  3. Setup conda python virtual environment: bash && conda env create -f tfrl-cookbook.yml -n "tfrl-cookbook" You are all set!
  4. Activate the tfrl-cookbook conda python environment: conda activate tfrl-cookbook and get started with the recipes in the book!

It is highly recommended to star and fork the GitHub repository to receive updates and improvements to the code recipes.We urge you to share what you build and also engage with other readers and the community here.

With the following software and hardware list you can run all code files present in the book (Chapter 1-9).

Software and Hardware List

Chapter Software required OS required
1 - 9 Python 3.6 (or later versions) Windows, Mac OS X, and Linux (Any)
9 Android Studio Windows, Mac OS X, and Linux (Any)

We also provide a PDF file that has color images of the screenshots/diagrams used in this book. Click here to download it.

Get to Know the Author

Praveen Palanisamy works on advancing AI for autonomous systems as a senior AI engineer at Microsoft. In the past, he has developed AI algorithms for autonomous vehicles using deep reinforcement learning, and has worked with start-ups and in academia to build autonomous robots and intelligent systems. He is the inventor of more than 15 patents on learning-based AI systems. He is the author of HOIAWOG: Hands-On Intelligent Agents with OpenAI Gym, which provides a step-by-step guide to developing deep RL agents to solve complex problems from scratch. He has a master's in robotics from Carnegie Mellon University.

Download a free PDF

If you have already purchased a print or Kindle version of this book, you can get a DRM-free PDF version at no cost.
Simply click on the link to claim your free PDF.

https://packt.link/free-ebook/9781838982546

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].