Hands-On Gradient Boosting with Python (Paperback)
Dr Adrian Devlin
Sold by Grand Eagle Retail, Bensenville, IL, U.S.A.
AbeBooks Seller since October 12, 2005
New - Soft cover
Condition: New
Ships within U.S.A.
Quantity: 1 available
Add to basketSold by Grand Eagle Retail, Bensenville, IL, U.S.A.
AbeBooks Seller since October 12, 2005
Condition: New
Quantity: 1 available
Add to basketPaperback. Are you curious about machine learning but feel overwhelmed by math, jargon, and complex tutorials?If words like XGBoost, LightGBM, and gradient boosting sound exciting but intimidating, this book is your friendly guide through the noise.Hands-On Gradient Boosting with Python: A Practical Introduction to XGBoost, LightGBM, and the Scikit-Learn Ecosystem is written for complete beginners and self-taught developers who want a clear, step-by-step path into modern Python machine learning-without needing a PhD or years of coding experience.You'll start with the basics of Python, scikit-learn, and tabular data, then gently build up to powerful boosting models used in real-world projects and Kaggle competitions. Every chapter walks you through code line by line, explains why each step matters, and shows you how to avoid common mistakes.Inside, you'll learn how to: Set up your Python machine learning environment with confidenceUnderstand core concepts like decision trees, ensembles, and gradient boosting in plain EnglishBuild practical models with scikit-learn, XGBoost, and LightGBM for regression and classificationWork on real-world projects such as house price prediction and credit risk scoringTune hyperparameters, handle imbalanced data, and evaluate models with metrics like AUC, F1, and RMSEUse SHAP and LIME for model explainability so you can trust your predictionsSave, load, and deploy your models so they are ready for real applicationsThroughout the book, you're treated like a learner-not a walking error message. Mistakes are normalized, experiments are encouraged, and every "small win" is celebrated: Clear explanations before any codeGradual progression from simple to advanced modelsGentle reminders that confusion is part of learningPractical tips for debugging, improving, and reusing your workWhether you're a student, an aspiring data scientist, or a developer stepping into Python machine learning for the first time, this book becomes your supportive companion-one that makes gradient boosting feel approachable, understandable, and genuinely fun.If you're ready to stop scrolling tutorials and start building real models that actually work, open this book and begin your hands-on journey into gradient boosting with Python today. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability.
Seller Inventory # 9798278284963
Are you curious about machine learning but feel overwhelmed by math, jargon, and complex tutorials?
If words like XGBoost, LightGBM, and gradient boosting sound exciting but intimidating, this book is your friendly guide through the noise.
Hands-On Gradient Boosting with Python: A Practical Introduction to XGBoost, LightGBM, and the Scikit-Learn Ecosystem is written for complete beginners and self-taught developers who want a clear, step-by-step path into modern Python machine learning—without needing a PhD or years of coding experience.
You’ll start with the basics of Python, scikit-learn, and tabular data, then gently build up to powerful boosting models used in real-world projects and Kaggle competitions. Every chapter walks you through code line by line, explains why each step matters, and shows you how to avoid common mistakes.
Inside, you’ll learn how to:
Set up your Python machine learning environment with confidence
Understand core concepts like decision trees, ensembles, and gradient boosting in plain English
Build practical models with scikit-learn, XGBoost, and LightGBM for regression and classification
Work on real-world projects such as house price prediction and credit risk scoring
Tune hyperparameters, handle imbalanced data, and evaluate models with metrics like AUC, F1, and RMSE
Use SHAP and LIME for model explainability so you can trust your predictions
Save, load, and deploy your models so they are ready for real applications
Throughout the book, you’re treated like a learner—not a walking error message. Mistakes are normalized, experiments are encouraged, and every “small win” is celebrated:
Clear explanations before any code
Gradual progression from simple to advanced models
Gentle reminders that confusion is part of learning
Practical tips for debugging, improving, and reusing your work
Whether you’re a student, an aspiring data scientist, or a developer stepping into Python machine learning for the first time, this book becomes your supportive companion—one that makes gradient boosting feel approachable, understandable, and genuinely fun.
If you’re ready to stop scrolling tutorials and start building real models that actually work, open this book and begin your hands-on journey into gradient boosting with Python today.
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