Many-Sorted Algebras for Deep Learning by Charles R. Giardina (.PDF)+

File Size: 14.2 MB

Many-Sorted Algebras for Deep Learning & Quantum Technology by Charles R. Giardina
Requirements: .ePUB, .PDF reader, 14.2 MB | True PDF, True ePUB
Overview: 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 a need for a text that can give readers insight 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. This thread is exposed using Many-Sorted Algebras (MSA). In almost every aspect of Quantum Theory as well as Deep Learning more than one sort or type of object is involved. For instance, in Quantum areas Hilbert spaces require two sorts, while in affine spaces, three sorts are needed. Both a global level and a local level of precise specification is described using MSA.
Genre: Non-Fiction > Tech & Devices

Free Download links:

https://tbit.to/e1cfkr5hprzz.html

https://katfile.com/k4gjn6fcvqvg/Many-Sorted_Algebras_for_Deep_Learning_TruePDF.rar.html