The Shape of Data shows how to use geometry- and topology-based algorithms for machine learning. Focused on practical applications rather than dense mathematical concepts, the book progresses through coding examples using social network data, text data, medical data, and education data. Readers will come away with an entirely new toolkit to use in their own machine-learning work, as well as with a solid understanding of some of the most exciting algorithms being used in the field today.
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Product Details
Dimensions: 177 x 234mm
Publication Date: 12 Sep 2023
Publisher: No Starch PressUS
Publication City/Country: United States
Language: English
ISBN13: 9781718503083
About Colleen M. FarrellyYae Ulrich Gaba
Colleen M. Farrelly is a senior data scientist whose academic and industry research has focused on topological data analysis quantum machine learning geometry-based machine learning network science hierarchical modeling and natural language processing. Since graduating from the University of Miami with an MS in biostatistics Colleen has worked as a data scientist in a vari- ety of industries including healthcare consumer packaged goods biotech nuclear engineering marketing and education. Colleen often speaks at tech conferences including PyData SAS Global WiDS Data Science Africa and DataScience SALON. When not working Colleen can be found writing haibun/haiga or swimming.Yae Ulrich Gaba completed his doctoral studies at the University of Cape Town (UCT South Africa) with a specialization in topology and is currently a research associate at Quantum Leap Africa (QLA Rwanda). His research interests are computational geometry applied algebraic topology (topologi- cal data analysis) and geometric machine learning (graph and point-cloud representation learning). His current focus lies in geometric methods in data analysis and his work seeks to develop effective and theoretically justified algorithms for data and shape analysis using geometric and topological ideas and methods.