Beschreibung
Neural networks are at the heart of AIso ensure youre on the cutting edge with this guide! For true beginners, get a crash course in Python and the mathematical concepts youll need to understand and create neural networks. Or jump right into programming your first neural network, from implementing the scikit-learn library to using the perceptron learning algorithm. Learn how to train your neural network, measure errors, make use of transfer learning, implementing the CRISP-DM model, and more. Whether youre interested in machine learning, gen AI, LLMs, deep learning, or all of the above, this is the AI book you need!Highlights include:1) Network creation2) Network training3) Supervised and unsupervised learning4) Reinforcement learning5) Algorithms6) Multi-layer networks7) Deep neural networks 8) Back propagation9) Transformers10) Python11) Mathematical concepts12) TensorFlow
Autorenportrait
Dr. Roland Schwaiger studied Computer Science at Bowling Green State University, Ohio, USA, and Applied Computer Science and Mathematics at the University of Salzburg, Austria, where he completed his doctorate in Mathematics. After several years of working as an assistant professor at the University of Salzburg, he joined SAP AG in 1996. There, he worked as a Human Resources software developer for three years, which gave him the opportunity to develop his skills in an exciting and inspirational working environment. In 1999, Roland became a freelance trainer, editor, consultant, and developer.
Informationen gemäß Produktsicherheitsverordnung
Hersteller:
Rheinwerk Verlag GmbH
service@rheinwerk-verlag.de
Rheinwerkallee 4
DE 53227 Bonn
www.rheinwerk-verlag.de