Your cart

Your cart is empty


Explore our range of products

De Gruyter Digital (delivered electronically) English

Simplified Machine Learning

The essential building blocks for Machine Learning expertise (English Edition)

By Dr. Pooja Sharma

Regular price £29.99
Unit price
per

De Gruyter Digital (delivered electronically) English

Simplified Machine Learning

The essential building blocks for Machine Learning expertise (English Edition)

By Dr. Pooja Sharma

Regular price £29.99
Unit price
per
 
Dispatched today with FREE Express Tracked Delivery
Delivery expected between Thursday, 25th June and Friday, 26th June
(0 in cart)
Apple Pay
Google Pay
Maestro
Mastercard
PayPal
Shop Pay
Visa

You may also like

  • "Simplified Machine Learning" is a comprehensive guide that navigates readers through the intricate landscape of Machine Learning, offering a balanced blend of theory, algorithms, and practical applications. The first section introduces foundational concepts such as supervised and unsupervised learning, regression, classification, clustering, and feature engineering, providing a solid base in Machine Learning theory. The second section explores algorithms like decision trees, support vector machines, and neural networks, explaining their functions, strengths, and limitations, with a special focus on deep learning, reinforcement learning, and ensemble methods. The book also covers essential topics like model evaluation, hyperparameter tuning, and model interpretability. The final section transitions from theory to practice, equipping readers with hands-on experience in deploying models, building scalable systems, and understanding ethical considerations.
"Simplified Machine Learning" is a comprehensive guide that navigates readers through the intricate landscape of Machine Learning, offering a balanced blend of theory, algorithms, and practical applications. The first section introduces foundational concepts such as supervised and unsupervised learning, regression, classification, clustering, and feature engineering, providing a solid base in Machine Learning theory. The second section explores algorithms like decision trees, support vector machines, and neural networks, explaining their functions, strengths, and limitations, with a special focus on deep learning, reinforcement learning, and ensemble methods. The book also covers essential topics like model evaluation, hyperparameter tuning, and model interpretability. The final section transitions from theory to practice, equipping readers with hands-on experience in deploying models, building scalable systems, and understanding ethical considerations.