Get hands-on with the most widely used Python library in machine learning with over 80 practical recipes that cover core as well as advanced functionsFree with your book: DRM-free PDF version + access to Packt's next-gen Reader*Key Features: - Solve complex business problems with data-driven approaches- Master tools associated with developing predictive and prescriptive models- Build robust ML pipelines for real-world applications, avoiding common pitfalls- Free with your book: PDF Copy, AI Assistant, and Next-Gen ReaderBook Description: Trusted by data scientists, ML engineers, and software developers alike, scikit-learn offers a versatile, user-friendly framework for implementing a wide range of ML algorithms, enabling the efficient development and deployment of predictive models in real-world applications.
Author(s): John Sukup
388 Pages
Computers + Internet, Computer Engineering
Description
Book Synopsis
Get hands-on with the most widely used Python library in machine learning with over 80 practical recipes that cover core as well as advanced functions
Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*
Key Features:
- Solve complex business problems with data-driven approaches
- Master tools associated with developing predictive and prescriptive models
- Build robust ML pipelines for real-world applications, avoiding common pitfalls
- Free with your book: PDF Copy, AI Assistant, and Next-Gen Reader
Book Description:
Trusted by data scientists, ML engineers, and software developers alike, scikit-learn offers a versatile, user-friendly framework for implementing a wide range of ML algorithms, enabling the efficient development and deployment of predictive models in real-world applications. This third edition of scikit-learn Cookbook will help you master ML with real-world examples and scikit-learn 1.5 features.
This updated edition takes you on a journey from understanding the fundamentals of ML and data preprocessing, through implementing advanced algorithms and techniques, to deploying and optimizing ML models in production. Along the way, you'll explore practical, step-by-step recipes that cover everything from feature engineering and model selection to hyperparameter tuning and model evaluation, all using scikit-learn.
By the end of this book, you'll have gained the knowledge and skills needed to confidently build, evaluate, and deploy sophisticated ML models using scikit-learn, ready to tackle a wide range of data-driven challenges.
What You Will Learn:
- Implement a variety of ML algorithms, from basic classifiers to complex ensemble methods, using scikit-learn
- Perform data preprocessing, feature engineering, and model selection to prepare datasets for optimal model performance
- Optimize ML models through hyperparameter tuning and cross-validation techniques to improve accuracy and reliability
- Deploy ML models for scalable, maintainable real-world applications
- Evaluate and interpret models with advanced metrics and visualizations in scikit-learn
- Explore comprehensive, hands-on recipes tailored to scikit-learn version 1.5
Who this book is for:
This book is for data scientists as well as machine learning and software development professionals looking to deepen their understanding of advanced ML techniques. To get the most out of this book, you should have proficiency in Python programming and familiarity with commonly used ML libraries; e.g., pandas, NumPy, matplotlib, and sciPy. An understanding of basic ML concepts, such as linear regression, decision trees, and model evaluation metrics will be helpful. Familiarity with mathematical concepts such as linear algebra, calculus, and probability will also be invaluable.
Table of Contents
- Common Conventions and API Elements of scikit-learn
- Pre-Model Workflow and Data Preprocessing
- Dimensionality Reduction Techniques
- Building Models with Distance Metrics and Nearest Neighbors
- Linear Models and Regularization
- Advanced Logistic Regression and Extensions
- Support Vector Machines and Kernel Methods
- Tree-Based Algorithms and Ensemble Methods
- Text Processing and Multiclass Classification
- Clustering Techniques
- Novelty and Outlier Detection
- Cross-Validation and Model Evaluation Techniques
- Deploying scikit-learn Models in Production
Dimensions (Overall): 9.25 Inches (H) x 7.5 Inches (W) x .8 Inches (D)
Weight: 1.46 Pounds
Suggested Age: 22 Years and Up
Number of Pages: 388
Genre: Computers + Internet
Sub-Genre: Computer Engineering
Publisher: Packt Publishing
Format: Paperback
Author: John Sukup
Language: English
Street Date: December 19, 2025
TCIN: 1010134364
UPC: 9781836644453
Item Number (DPCI): 247-28-7907
Origin: Made in the USA or Imported
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Shipping details
Estimated ship dimensions: 0.8 inches length x 7.5 inches width x 9.25 inches height
Estimated ship weight: 1.46 pounds
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