Share this book with your friends

PYTHON MACHINE LEARNING Leveraging Python for Implementing Machine Learning Algorithms and Applications (2023 Guide)

Author Name: Roberta Bowman | Format: Paperback | Genre : Computers | Other Details

"Python Machine Learning: Leveraging Python for Implementing Machine Learning Algorithms and Applications" is your comprehensive guide to mastering the art of machine learning using the powerful capabilities of Python. This book provides practical insights and effective techniques for understanding, implementing, and deploying a wide range of machine learning algorithms to solve complex real-world problems and drive innovation.

Inside this comprehensive guide, you'll explore:

Fundamentals of Machine Learning and Python: A comprehensive exploration of the foundational concepts of machine learning and the essential Python programming skills required for implementing machine learning algorithms.
Data Preprocessing and Feature Engineering Techniques: Practical guidance on data preprocessing and feature engineering techniques using Python to ensure data quality and suitability for machine learning applications.
Supervised Learning Algorithms: How to implement and apply various supervised learning algorithms, including regression, classification, and ensemble methods, to solve predictive modeling problems.
Unsupervised Learning Algorithms: Techniques for implementing and utilizing unsupervised learning algorithms, such as clustering and dimensionality reduction, for pattern recognition and data exploration.

Embrace the power of Python for machine learning and unlock the potential for innovation and transformative impact.

Read More...
Paperback
Paperback 299

Inclusive of all taxes

Delivery

Item is available at

Enter pincode for exact delivery dates

Roberta Bowman

"Python Machine Learning: Leveraging Python for Implementing Machine Learning Algorithms and Applications" is your comprehensive guide to mastering the art of machine learning using the powerful capabilities of Python. This book provides practical insights and effective techniques for understanding, implementing, and deploying a wide range of machine learning algorithms to solve complex real-world problems and drive innovation.

Inside this comprehensive guide, you'll explore:

Fundamentals of Machine Learning and Python: A comprehensive exploration of the foundational concepts of machine learning and the essential Python programming skills required for implementing machine learning algorithms.
Data Preprocessing and Feature Engineering Techniques: Practical guidance on data preprocessing and feature engineering techniques using Python to ensure data quality and suitability for machine learning applications.
Supervised Learning Algorithms: How to implement and apply various supervised learning algorithms, including regression, classification, and ensemble methods, to solve predictive modeling problems.
Unsupervised Learning Algorithms: Techniques for implementing and utilizing unsupervised learning algorithms, such as clustering and dimensionality reduction, for pattern recognition and data exploration.
Model Evaluation and Validation Techniques: Strategies for evaluating and validating machine learning models using Python to assess model performance, accuracy, and generalization capabilities.
Deep Learning and Neural Networks: An introduction to deep learning and neural networks using Python, enabling you to build and train complex models for handling sophisticated tasks such as image recognition and natural language processing.
"Python Machine Learning" is more than just a book; it's your key to unlocking the potential of machine learning and artificial intelligence using Python. 

Embrace the power of Python for machine learning and unlock the potential for innovation and transformative impact.

Read More...

Achievements

+4 more
View All