Applied Machine Learning for Health and Fitness: A Practical Guide to Machine Learning with Deep Vision,Sensors and IoT
by: Kevin Ashley
Print Length 页数: 276 pages
ISBN-10: 1484257715
ISBN-13: 9781484257715
Product Dimensions1.65 x 23.5 cm
Publisher finelybook 出版社: Apress; 1st ed. Edition (25 Aug. 2020)
Language 语言: English
Book Description
Explore the world of using machine learning methods with deep computer vision,sensors and data in sports,health and fitness and other industries. Accompanied by: practical step-by: -step Python code samples and Jupyter notebooks,this comprehensive guide acts as a reference for a data scientist,machine learning practitioner or anyone interested in AI applications. These ML models and methods can be used to create solutions for AI enhanced coaching,judging,athletic performance improvement,movement analysis,simulations,in motion capture,gaming,cinema production and more.
Packed with fun,practical applications for sports,machine learning models used in the book include supervised,unsupervised and cutting-edge reinforcement learning methods and models with popular tools like PyTorch,Tensorflow,Keras,OpenAI Gym and OpenCV. Author Kevin Ashley―who happens to be both a machine learning expert and a professional ski instructor―has written an insightful book that takes you on a journey of modern sport science and AI.
Filled with thorough,engaging illustrations and dozens of real-life examples,this book is your next step to understanding the implementation of AI within the sports world and beyond. Whether you are a data scientist,a coach,an athlete,or simply a personal fitness enthusiast excited about connecting your findings with AI methods,the author’s practical expertise in both tech and sports is an undeniable asset for your learning process. Today’s data scientists are the future of athletics,and Applied Machine Learning for Health and Fitness hands you the knowledge you need to stay relevant in this rapidly growing space.
What You’ll Learn
Use multiple data science tools and frameworks
Apply deep computer vision and other machine learning methods for classification,semantic segmentation,and action recognition
Build and train neural networks,reinforcement learning models and more
Analyze multiple sporting activities with deep learning
Use datasets available today for model training
Use machine learning in the cloud to train and deploy models
Apply best practices in machine learning and data science