Python for Data Analysis

"Python for Data Analysis"

In "Python for Data Analysis," Wes McKinney introduces you to the fundamental tools and techniques required to work effectively with data in Python. The book is designed for both beginners and intermediate Python users who want to explore data analysis, manipulation, and visualization using popular open-source libraries.

Key Features:

Pandas: The book extensively covers the Pandas library, which is widely used for data manipulation and analysis. It introduces you to data structures like Series and DataFrame, explaining how to clean, transform, and reshape data effortlessly.

NumPy: NumPy is essential for numerical computations in Python. The book explains how to use NumPy arrays for efficient and powerful numerical operations.

IPython: IPython provides an enhanced interactive environment for working with Python. The book shows how to leverage IPython's capabilities for interactive data exploration and experimentation.

Data Cleaning and Transformation: You'll learn how to handle missing data, duplicate values, and outliers, ensuring that your data is clean and suitable for analysis.

Data Visualization: While the primary focus is on data manipulation, the book also covers visualization techniques using libraries like Matplotlib and Seaborn.

Real-world Examples: Throughout the book, real-world examples and datasets are used to demonstrate concepts. This makes it easier to understand how to apply these techniques to your own data analysis projects.

Case Studies: The book includes case studies that walk you through entire data analysis workflows, providing insights into how to approach different types of data and problems.

Jupyter Notebooks: The book encourages the use of Jupyter Notebooks, which provide an interactive and shareable platform for coding, visualizations, and explanations.


Auteur | Deepak Kumar
Taal | Engels
Type | E-book
Categorie |

bol logo

Kijk verder

Boekomslag voor ISBN: 9781492078005
Boekomslag voor ISBN: 9781292101767
Boekomslag voor ISBN: 9781292092232
Boekomslag voor ISBN: 9780201616224
Boekomslag voor ISBN: 9780135957059
Boekomslag voor ISBN: 9781447746409


Boekn ©