Search

Shopping cart

Saved articles

You have not yet added any article to your bookmarks!

Browse articles
Newsletter image

Subscribe to the Newsletter

Join 10k+ people to get notified about new posts, news and tips.

Do not worry we don't spam!

GDPR Compliance

We use cookies to ensure you get the best experience on our website. By continuing to use our site, you accept our use of cookies, Privacy Policy, and Terms of Service.

Hands-On AI: Building ML Models with Python

Hands-On AI: Building ML Models with Python

Hands-On AI: Building ML Models with Python" provides a comprehensive guide to understanding and applying machine learning (ML) using Python. The book covers the fundamental concepts, mathematical foundations, and the essential tools necessary for building successful ML models. It begins with an introduction to machine learning, explaining the basics and setting up the Python environment for AI development. The book then delves into data preparation and feature engineering, exploring techniques for data cleaning, wrangling, and visualization, all of which are crucial for effective model training.

The book also addresses core machine learning algorithms, including supervised and unsupervised learning, regression models, classification models, and ensemble methods. Advanced topics such as deep learning, natural language processing (NLP), reinforcement learning, and time series forecasting are also discussed in detail. Practical applications and real-world examples are integrated throughout, allowing readers to see how theoretical concepts are applied in industry scenarios.

Additionally, the book explores model evaluation, optimization, and deployment, including how to build and deploy end-to-end ML pipelines. Readers will gain insights into scaling models, automating workflows, and implementing CI/CD for machine learning.

With a focus on hands-on experience, the book is designed for practitioners who want to enhance their skills and develop practical, deployable machine learning models. It serves as both an introductory and advanced reference, offering invaluable knowledge for those looking to pursue careers in machine learning and AI.

Comments