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Apply modern AI techniques across science, engineering, and healthcare domains
Modern Machine Learning and Transformers began on long walks on New York's Vischer Ferry trail and became an accessible yet rigorous gateway to Modern AI. Two authors-one focused on multivariate statistics and interpretability, the other in industrial, neural-network-driven modeling-converge on a practical philosophy: build models you can trust. Across eleven mostly stand-alone chapters, intuition comes first, implementation follows, and deeper math lives in later sections and appendices. Regression and logistic regression appear as a Gauss-Legendre network, introducing weights, learning rates, and stochastic gradient descent early. A historically informed arc links classical regression and classification to backpropagation and today's transformers. Case studies span science, engineering, healthcare analytics, and scientific computing, showing what works, what fails, and why.
Readers will also find:
Whether you are preparing for Modern AI or refreshing your skills, you will learn to choose methods wisely, validate honestly, and recognize failure modes. You leave with code-ready intuition for classical models, deep networks, and transformers-plus perspectives on advanced GPU workflows and emerging quantum-enabled learning.
Apply modern AI techniques across science, engineering, and healthcare domains
Modern Machine Learning and Transformers began on long walks on New York's Vischer Ferry trail and became an accessible yet rigorous gateway to Modern AI. Two authors-one focused on multivariate statistics and interpretability, the other in industrial, neural-network-driven modeling-converge on a practical philosophy: build models you can trust. Across eleven mostly stand-alone chapters, intuition comes first, implementation follows, and deeper math lives in later sections and appendices. Regression and logistic regression appear as a Gauss-Legendre network, introducing weights, learning rates, and stochastic gradient descent early. A historically informed arc links classical regression and classification to backpropagation and today's transformers. Case studies span science, engineering, healthcare analytics, and scientific computing, showing what works, what fails, and why.
Readers will also find:
Whether you are preparing for Modern AI or refreshing your skills, you will learn to choose methods wisely, validate honestly, and recognize failure modes. You leave with code-ready intuition for classical models, deep networks, and transformers-plus perspectives on advanced GPU workflows and emerging quantum-enabled learning.
Atsiliepimai