No ficción
Linear Algebra for Data Science with Python makes linear algebra both accessible and practical by translating abstract mathematical theory into real-world problem-solving applications. Linear algebra serves as the hidden computational engine powering modern data science, machine learning, and artificial intelligence. This resource pairs core mathematical concepts with hands-on Python implementation, enabling readers to understand both theory and practice simultaneously. The book covers fundamental topics including vectors, matrices, linear transformations, eigenvalues, eigenvectors, and singular value decomposition. Readers learn matrix operations, systems of linear equations, vector spaces, and orthogonality principles essential for data analysis. The text demonstrates how linear algebra underlies dimensionality reduction techniques, principal component analysis, and neural network architectures. Each chapter combines concise mathematical explanations with working code examples using NumPy, SciPy, and scikit-learn libraries. Through practical exercises and real data applications, the material shows how linear algebra enables document classification, image processing, recommendation systems, and predictive modeling. The book requires only basic familiarity with linear algebra and Python programming, making sophisticated mathematical tools approachable for data scientists and analysts. This resource serves as both a learning text and a practical reference for applying linear algebra in contemporary data science workflows.
© 2026 Educohack Press (Libro electrónico): 9789361529870
Fecha de lanzamiento
Libro electrónico: 1 de junio de 2026
Más de 1 millón de títulos
Modo sin conexión
Kids Mode
Cancela en cualquier momento
Escucha y lee sin límites.
CLP 7990 /mes
Escucha y lee los títulos que quieras
Modo sin conexión + Kids Mode
Cancela en cualquier momento