Many-Sorted Algebras for Deep Learning and Quantum Technology presents a precise and rigorous description of basic concepts in Quantum technologies and how they relate to Deep Learning and Quantum Theory. Current merging of Quantum Theory and Deep Learning techniques provides the need for a text that gives readers insights into the algebraic underpinnings of these disciplines. Although analytical, topological, probabilistic, as well as geometrical concepts are employed in many of these areas, algebra exhibits the principal thread, hence this thread is exposed using Many-Sorted Algebras (MSA). This book includes hundreds of well-designed examples that illustrate the intriguing concepts in Quantum systems. Along with these examples are numerous visual displays. In particular, the Polyadic Graph shows the types or sorts of objects used in Quantum or Deep Learning. It also illustrates all the inter and intra sort operations needed in describing algebras. In brief, it provides the closure conditions. Throughout the text, all laws or equational identities needed in specifying an algebraic structure are precisely described.
- ISBN13 9780443136979
- Publish Date 1 January 2024
- Publish Status Forthcoming
- Publish Country US
- Publisher Elsevier Science & Technology
- Imprint Morgan Kaufmann Publishers In
- Format Paperback
- Pages 350
- Language English