Free Download Python programming for data science with Pandas and NumPy: Mastering Data Analysis and Manipulation with Python’s Premier Libraries, Pandas and NumPy by Andix Tech
English | August 6, 2024 | ISBN: N/A | ASIN: B0DCGF6JFT | 121 pages | EPUB | 0.26 Mb
DESCRIPTION Python Programming for Data Science with Pandas and NumPy
Master the Essential Python Tools for Data Analysis and Machine Learning
This book is your comprehensive guide to harnessing the power of Python for data science. It provides a clear and practical path to mastering the essential tools of Pandas and NumPy, equipping you with the skills to efficiently manipulate, analyse, and visualise data. Whether you’re a beginner exploring the world of data science or an experienced programmer looking to enhance your data analysis toolkit, this book offers a structured learning experience tailored to your needs.
Starting with the fundamentals of Python programming, you’ll gain a solid foundation in variables, data types, operators, control flow, and functions, ensuring a smooth transition into data science. Next, you’ll dive into the world of NumPy arrays, learning how to create, manipulate, and perform efficient numerical computations on them. You’ll then explore Pandas’ powerful Series and DataFrames for advanced data analysis and manipulation, mastering techniques for filtering, sorting, grouping, merging, and reshaping data.
Once you have a strong grasp of these core tools, the book guides you through the crucial steps of data cleaning and preprocessing, exploring strategies for handling missing values and outliers to ensure data quality and reliability. You’ll then learn how to extract meaningful insights from your data using descriptive statistics and create compelling visualisations with Pandas’ built-in Descriptionting capabilities.
The final part of the book introduces you to the exciting field of machine learning using Scikit-learn, a user-friendly Python library. You’ll discover how to build and evaluate regression, classification, and clustering models, as well as how to perform crucial steps like feature engineering and selection. The journey culminates in an exploration of model deployment, guiding you through the process of integrating your models into real-world applications.
Benefits of this Book
* Clear and Comprehensive: The book presents complex concepts in a clear and accessible manner, ensuring a smooth learning curve for beginners and serving as a valuable reference for experienced practitioners.
* Hands-On Approach: Numerous examples and exercises throughout the book reinforce learning and provide opportunities for practice.
* Real-World Relevance: The book focuses on practical applications of Python for data science, drawing examples from various domains to demonstrate the relevance of these skills in solving real-world problems.
* Up-to-Date: The content reflects the latest versions of Python, Pandas, NumPy, and Scikit-learn, ensuring you’re equipped with the most current tools and techniques.
* End-to-End Coverage: The book covers the entire data science workflow, from data cleaning and exploration to model building, evaluation, and deployment, providing a holistic understanding of the field.
By the end of this book, you will:
* Confidently use Python, Pandas, and NumPy to manipulate, analyse, and visualise data.
* Master essential techniques for data cleaning and preprocessing.
* Understand the fundamentals of machine learning and build various types of models.
* Gain insights from data through descriptive statistics and visualisation.
* Be prepared to apply your skills to real-world data science projects and challenges.