书籍 Essential Math for AI的封面

Essential Math for AI

Hala Nelson

出版时间

2023-02-14

ISBN

9781098107635

评分

★★★★★
书籍介绍
Many industries are eager to integrate AI and data-driven technologies into their systems and operations. But to build truly successful AI systems, you need a firm grasp of the underlying mathematics. This comprehensive guide bridges the gap in presentation between the potential and applications of AI and its relevant mathematical foundations. In an immersive and conversational style, the book surveys the mathematics necessary to thrive in the AI field, focusing on real-world applications and state-of-the-art models, rather than on dense academic theory. You'll explore topics such as regression, neural networks, convolution, optimization, probability, graphs, random walks, Markov processes, differential equations, and more within an exclusive AI context geared toward computer vision, natural language processing, generative models, reinforcement learning, operations research, and automated systems. With a broad audience in mind, including engineers, data scientists, mathematicians, scientists, and people early in their careers, the book helps build a solid foundation for success in the AI and math fields. You'll be able to: Comfortably speak the languages of AI, machine learning, data science, and mathematics Unify machine learning models and natural language models under one mathematical structure Handle graph and network data with ease Explore real data, visualize space transformations, reduce dimensions, and process images Decide on which models to use for different data-driven projects Explore the various implications and limitations of AI
用户评论
据称:这是一本汇聚纽约大学博士10年经验的人工智能基础数学书籍。详细内容还有待今后细细阅读。另外,由于我常常标了想读后,阅读了后,就不再改标了,不如直接标成已读。
Z-Library