Rejoignez-nous pour un voyage dans le monde des livres!
Ajouter ce livre à l'électronique
Grey
Ecrivez un nouveau commentaire Default profile 50px
Grey
Écoutez en ligne les premiers chapitres de ce livre audio!
All characters reduced
Python for Data Science - A Practical Guide to Data Wrangling Analysis and Machine Learning Using Python’s Most Powerful Libraries - cover
ÉCOUTER EXTRAIT

Python for Data Science - A Practical Guide to Data Wrangling Analysis and Machine Learning Using Python’s Most Powerful Libraries

Sam Miley

Narrateur Maha Ameer

Maison d'édition: Independently Published

  • 0
  • 0
  • 0

Synopsis

Unlock the full potential of your data with the power of Python. Python for Data Science: A Practical Guide to Data Wrangling, Analysis, and Machine Learning Using Python’s Most Powerful Libraries is your comprehensive roadmap to mastering the tools and techniques that turn raw data into meaningful insights and predictive models. 
This hands-on guide takes you from the basics of Python programming to advanced data workflows using industry-standard libraries such as NumPy, Pandas, Matplotlib, Seaborn, Scikit-learn, and more. Through real-world examples and practical exercises, you'll learn how to manipulate data, create compelling visualizations, and build machine learning models that solve complex problems. 
Inside, you’ll discover how to: 
•	Prepare, clean, and structure data for analysis using Pandas and NumPy 
•	Visualize patterns and trends with Matplotlib and Seaborn 
•	Explore and analyze datasets through statistical techniques 
•	Build predictive models with Scikit-learn, including regression, classification, and clustering 
•	Evaluate model performance and avoid common pitfalls 
•	Apply your skills to real-world projects in business, science, and beyond 
Designed for both beginners and those looking to deepen their expertise, this book bridges the gap between theory and practical application. Python for Data Science provides the tools and confidence you need to extract insights and drive data-informed decisions.
Durée: environ 4 heures (03:43:34)
Date de publication: 16/02/2026; Unabridged; Copyright Year: — Copyright Statment: —