Linear Algebra and Learning from Data by Gilbert Strang
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 43721
- Number of Pages: 446
Rs.0.00
Tags: affordable prices , best books , best books online , Best Price , best prices , Best Selling Books , best shop , Book shopping , bookshop , bookshop Multan , bookshop near me , bookshop online , bookshop online Multan , bookshopPakistan , buy online books , computational algorithms , data modeling , data-driven decision making , digital shopping , eigenvectors , Gilbert Strang , good books , good booksonline , Internet Shop , learning from data , Linear Algebra , linear algebra applications , linear algebra for beginners , linear algebra textbooks , linear algebra theory , matrices , matrix algebra , one stop shop , ONLINE BOOKS , Online Books Shop , online books store , Online Bookshop , Online Bookshop Pakistan , online bookstore , online shop , online shopping , Online Shopping Pakistan , OnlineShoppingPakistan , Pakistan Bookshop , PakistanBookshop , PakistanOnlineShopping , price cut , price-friendly Comprehensive , ReasonablePrice , reduced price , secure shopping , Shopping , ShopSmartPakistan , vectors , Virtual Shop
Dive into the foundational principles of linear algebra as applied to modern data analysis with "Linear Algebra and Learning from Data" by Gilbert Strang. This insightful textbook bridges theoretical concepts with practical applications, offering a clear understanding of how linear algebra underpins machine learning, data science, and computational mathematics. Strang's approachable style and emphasis on real-world examples make this book essential for students and professionals alike seeking to grasp the mathematical backbone of data analysis.
Key Points:
- Fundamental Concepts: Covers essential concepts of linear algebra such as vectors, matrices, eigenvalues, and eigenvectors.
- Application to Data Analysis: Illustrates how linear algebra concepts are crucial for understanding and implementing algorithms in data science and machine learning.
- Clear Explanations: Strang's clear and intuitive explanations make complex mathematical ideas accessible to a wide audience.
- Practical Examples: Provides numerous real-world examples and applications that demonstrate the relevance of linear algebra in solving data-driven problems.
- Pedagogical Approach: Emphasizes learning through problem-solving and application, enhancing both theoretical understanding and practical skills.
Conclusion: "Linear Algebra and Learning from Data" by Gilbert Strang offers a comprehensive exploration of linear algebra's role in modern data analysis. By combining theoretical foundations with practical insights, Strang equips readers with the tools necessary to understand and leverage linear algebra in the context of data-driven decision-making and computational mathematics.
════ ⋆★⋆ ═══
Writer ✤ Gilbert Strang (Author)