Foundations of Machine Learning: A Practitioner's Journey — From Mathematical to Classical Algorithms

Prijzen vanaf
31,77

Uitgelicht

VERGELIJK ALLE AANBIEDERS (3)

Beschrijving

Bol The first volume of A Practitioner's Journey. Eighteen chapters take you from linear algebra and probability through every classical machine-learning algorithm worth knowing - regression, trees, ensembles, SVMs, KNN, time series, and recommendation systems - with the math, the intuition, and runnable code, all in one place.This is the curriculum a working ML practitioner actually needs. Most "intro to ML" books pick a side: pure math with no code, or library-call tutorials that fall apart the moment you try to apply them. Foundations of Machine Learning refuses both. Every chapter is built around a working scenario. Every code example runs. Every concept comes with both the math and the intuition.You will learn to: - Reason about linear algebra, calculus, probability, and optimization the way ML uses them- Derive and implement classical algorithms from first principles, not as library calls- Choose the right algorithm for the right problem and explain why- Evaluate models honestly, avoid overfitting, and know when "good enough" is good enough- Apply the CRISP-DM framework to a real end-to-end case studyCompanion volumes: Book 2 Machine Learning in Production covers deep learning, computer vision, and the production engineering stack. Book 3 Artificial Intelligence in Production covers LLMs, RAG, agents, and modern AI infrastructure.

Vergelijk aanbieders (3)

Shop
Prijs
Verzendkosten
Totale prijs
31,77
Gratis
31,77
Naar shop
Gratis Shipping Costs
31,77
Gratis
31,77
Naar shop
Gratis Shipping Costs
32,99
Gratis
32,99
Naar shop
Gratis Shipping Costs
Beschrijving (2)
Bol

The first volume of A Practitioner's Journey. Eighteen chapters take you from linear algebra and probability through every classical machine-learning algorithm worth knowing - regression, trees, ensembles, SVMs, KNN, time series, and recommendation systems - with the math, the intuition, and runnable code, all in one place.This is the curriculum a working ML practitioner actually needs. Most "intro to ML" books pick a side: pure math with no code, or library-call tutorials that fall apart the moment you try to apply them. Foundations of Machine Learning refuses both. Every chapter is built around a working scenario. Every code example runs. Every concept comes with both the math and the intuition.You will learn to: - Reason about linear algebra, calculus, probability, and optimization the way ML uses them- Derive and implement classical algorithms from first principles, not as library calls- Choose the right algorithm for the right problem and explain why- Evaluate models honestly, avoid overfitting, and know when "good enough" is good enough- Apply the CRISP-DM framework to a real end-to-end case studyCompanion volumes: Book 2 Machine Learning in Production covers deep learning, computer vision, and the production engineering stack. Book 3 Artificial Intelligence in Production covers LLMs, RAG, agents, and modern AI infrastructure.

Amazon

Pagina's: 496, Paperback, Independently published


Productspecificaties

Merk Independently Published
EAN
  • 9798257059346
Maat

Prijzen voor het laatst bijgewerkt op:

Uitgelichte Keuze
31,77
Naar shop