Tensor Decompositions for Data Science: Book by Ballard and Kolda on Amazon
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This is a product listing page for the book "Tensor Decompositions for Data Science" by Grey Ballard and Tamara G. Kolda on Amazon.com. The book is described as a foundational text on tensor analysis for data science, starting from basics and building up to core tensor decompositions. It features a clear notation system, practical exercises, and is positioned as both a reference for advanced undergraduates and an accessible introduction for new researchers in the field.
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· 4 pulledTensor Decompositions for Data Science by Grey Ballard and Tamara G. Kolda is a much-needed contribution to the field of tensor analysis.
This book starts from ground zero and carefully builds up to the core tensor decompositions for data science, with just the right amount of intuition and several practical exercises.
This book presents a carefully designed, clear, and intuitive system of notation that will become the standard notation for tensors, making an intimidating subject approachable for new researchers.
It will serve as an excellent reference for an advanced undergraduate...
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