Practical simulations for machine learning : using synthetic data for AI / Paris and Mars Buttfield-Addison, Tim Nugent, and Jon Manning.
Material type:
- text
- still image
- unmediated
- volume
- 9781492089926
- Q325.5.B87 2022
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KWUST-Main Library General Stacks | Q325.5.B87 2022 (Browse shelf(Opens below)) | C.1 | Available | 2023-0820 | |
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KWUST-Main Library General Stacks | Q325.5.B87 2022 (Browse shelf(Opens below)) | C.2 | Available | 2023-0821 |
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Q 181 .A1N52 2010 Science Activities | Q 181 .A1N52 2013 Science Activities | Q325.5.B87 2022 Practical simulations for machine learning : using synthetic data for AI / | Q325.5.B87 2022 Practical simulations for machine learning : using synthetic data for AI / | Q 325.5 .D 45 2020 Mathematics for Machine Learning | Q 325.5 .D 45 2020 Mathematics for Machine Learning | Q 325.5 .D 45 2020 Mathematics for Machine Learning |
Includes bibliographical references and index.
Simulation and synthesis are core parts of the future of AI and machine learning. Consider: programmers, data scientists, and machine learning engineers can create the brain of a self-driving car without the car. Rather than use information from the real world, you can create artificial data using simulations to train traditional machine learning models. That's just the beginning. With this practical book, you'll explore the possibilities of simulation- and synthesis-based machine learning and AI, with a focus on deep reinforcement learning and imitation learning techniques. AI and ML are increasingly data driven, and simulations are a powerful, engaging way to unlock their full potential. With this deeply practical book, you'll learn how to: Design an approach for solving ML and AI problems using simulations Use a game engine to synthesize images for use as training data Create simulation environments designed for training deep reinforcement learning and imitation learning Use and apply efficient general-purpose algorithms for simulation-based ML, such as proximal policy optimization (PPO) and soft actor-critic (SAO) Train ML models locally, concurrently, and in the cloud Use PyTorch, TensorFlow, the Unity ML-Agents and Perception Toolkits to enable ML tools to work with industry-standard game development tools.
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