BOOKS - Effective XGBoost Optimizing, Tuning, Understanding, and Deploying Classifica...
Effective XGBoost Optimizing, Tuning, Understanding, and Deploying Classification Models - Matt Harrison 2023 PDF MetaSnake BOOKS
ECO~14 kg CO²

1 TON

Views
26193

Telegram
 
Effective XGBoost Optimizing, Tuning, Understanding, and Deploying Classification Models
Author: Matt Harrison
Year: 2023
Pages: 221
Format: PDF
File size: 28.9 MB
Language: ENG



Pay with Telegram STARS
Book Description: 'Effective XGBoost Optimizing Tuning Understanding and Deploying Classification Models' is a comprehensive guide to optimizing and deploying XGBoost models for classification tasks. The book covers the entire process of XGBoost model development, from data preparation to model deployment, and provides practical tips and techniques for improving model performance. It also discusses the importance of understanding the underlying principles of XGBoost and how to apply them in real-world applications. The book begins by introducing the concept of XGBoost and its advantages over other machine learning algorithms. It then delves into the details of data preparation, feature selection, and model training, providing readers with a solid foundation in the basics of XGBoost model development. From there, the book moves on to more advanced topics such as hyperparameter tuning, model evaluation, and deployment strategies. Throughout the book, the author emphasizes the importance of understanding the underlying principles of XGBoost and how to apply them in real-world applications. The book also includes numerous examples and case studies to illustrate the concepts discussed. The book concludes with a discussion on the future of XGBoost and its potential applications in emerging technologies such as deep learning and big data analytics. Book Outline: I.
'Effective XGBoost Optimizing Tuning Understanding and Deployment Classification Models'- всеобъемлющее руководство по оптимизации и развертыванию моделей XGBoost для задач классификации. Книга охватывает весь процесс разработки модели XGBoost, от подготовки данных до развертывания модели, и содержит практические советы и методы для повышения производительности модели. Также обсуждается важность понимания основных принципов XGBoost и их применения в реальных приложениях. Книга начинается с введения понятия XGBoost и его преимуществ перед другими алгоритмами машинного обучения. Затем он углубляется в детали подготовки данных, выбора функций и обучения моделей, предоставляя читателям прочную основу в основах разработки моделей XGBoost. Оттуда книга переходит к более продвинутым темам, таким как настройка гиперпараметров, оценка моделей и стратегии развертывания. На протяжении всей книги автор подчеркивает важность понимания основополагающих принципов XGBoost и того, как применять их в реальных приложениях. Книга также включает многочисленные примеры и тематические исследования для иллюстрации обсуждаемых концепций. Книга завершается обсуждением будущего XGBoost и его потенциальных приложений в развивающихся технологиях, таких как глубокое обучение и аналитика больших данных. Очерк книги: И.
''

You may also be interested in:

What if I Say the Wrong Thing?: 25 Habits for Culturally Effective People
Flow Engineering: From Value Stream Mapping to Effective Action
Effective Go Elegant, efficient, and testable code (MEAP v5)
Privatization and Deregulation in ASEAN and the EC: Making Markets More Effective
Python for Devops: Learn Ruthlessly Effective Automation
How to Talk to Anyone in Any Situation: Unlock the Secrets of Effective Communication
Defeating Addiction and Alcoholism (Effective Survival Strategies, 1)
Construction Claims and Responses: Effective Writing and Presentation
Brainspotting: The Revolutionary New Therapy for Rapid and Effective Change
Effective C, 2nd Edition An Introduction to Professional C Programming
Leading Every Day: 124 Actions for Effective Leadership
How to Build Your Brand Implementing a Proven and Effective Process
A Practical Guide to Effective School Board Meetings
Effective Software Testing A developer|s guide
Effective Pandas 2 Opinionated Patterns for Data Manipulation
Popular Lyric Writing 10 Steps to Effective Storytelling
Stop Overreacting: Effective Strategies for Calming Your Emotions
Changemaker: A Data-Driven Guide to Being an Effective Activist
Beyond Effective Go Part 2 - Striving for High-Quality Code
Designing for Wearables Effective UX for Current and Future Devices
Effective Go Recipes: Fast Solutions to Common Tasks
Making Sense of Data Designing Effective Visualizations
Effective Testing with RSpec 3 Build Ruby Apps with Confidence
Design for Impact: Your Guide to Designing Effective Product Experiments
Finding a Way in International Development: Options for Ethical and Effective Work
Cyber Guardians Empowering Board Members for Effective Cybersecurity
Big Data Analytics Tools and Technology for Effective Planning
Effective Handgun Defense A Comprehensive Guide to Concealed Carry
Creating Effective Spaces Declutter, Organize and Maintain Your Space
EXCELLENT BUSINESSES MAKING EFFECTIVE: Creating business success
Convivial Urban Spaces Creating Effective Public Places
Retaining Effective Teachers: A Guide for Hiring, Induction, and Support
Employee Experience by Design How to Create an Effective EX for Competitive Advantage
Creating Effective Spaces Declutter, Organize and Maintain Your Space
Effective Machine Learning Teams Best Practices for Ml Practitioners (Final)
Traditional Math: An effective strategy that teachers feel guilty using
Effective Innovation: How to Stay Ahead of the Competition (Effective1 Series)
Python Testing with pytest Simple, Rapid, Effective, and Scalable
The Silver Way: Techniques, Tips, and Tutorials for Effective Character Design
Learning from the Student|s Perspective: A Sourcebook for Effective Teaching