Unisciti a noi in un viaggio nel mondo dei libri!
Aggiungi questo libro allo scaffale
Grey
Scrivi un nuovo commento Default profile 50px
Grey
Ascolta online i primi capitoli di questo audiolibro!
All characters reduced
Python Machine Learning for Beginners - cover
RIPRODURRE CAMPIONE

Python Machine Learning for Beginners

Jim D Johnston

Narratore Jim D Johnston

Casa editrice: Maksym Nevdokhin

  • 0
  • 0
  • 0

Sinossi

Step into the exciting world of artificial intelligence and data science with a practical guide designed for complete beginners. 
Python Machine Learning for Beginners introduces readers to the fundamental concepts of machine learning using Python, the world's most popular programming language for AI and data-driven applications. Written in a clear and accessible style, this book helps beginners understand how machines learn from data, make predictions, recognize patterns, and solve real-world problems. 
From basic programming concepts to building your first machine learning models, this comprehensive guide provides a strong foundation for anyone looking to start a career in artificial intelligence, data science, or software development. 
Inside, you will discover:The fundamentals of Python programming for machine learningCore concepts of artificial intelligence, data science, and machine learningUnderstanding data collection, preparation, and preprocessingExploratory data analysis and data visualization techniquesSupervised and unsupervised learning algorithmsBuilding predictive models with PythonIntroduction to neural networks and deep learningWorking with popular libraries such as NumPy, Pandas, Matplotlib, and Scikit-learnEvaluating and improving machine learning model performanceReal-world applications in business, healthcare, finance, marketing, and automation 
With practical examples, hands-on exercises, and real-world projects, Python Machine Learning for Beginners provides the knowledge, skills, and confidence needed to begin your journey into one of the fastest-growing fields in technology today.
Durata: circa un'ora (01:26:49)
Data di pubblicazione: 12/06/2026; Unabridged; Copyright Year: — Copyright Statment: —