Tahera Firdose 
Ultimate Pandas for Data Manipulation and Visualization [EPUB ebook] 
Efficiently Process and Visualize Data with Python’s Most Popular Data Manipulation Library (English Edition)

สนับสนุน

Unlock the power of Data Manipulation with Pandas.
Key Features
● Master Pandas from basics to advanced and its data manipulation techniques.
● Visualize data effectively with Matplotlib and explore data efficiently.
● Learn through hands-on examples and practical real-world use cases.
Book Description
Unlock the power of Pandas, the essential Python library for data analysis and manipulation. This comprehensive guide takes you from the basics to advanced techniques, ensuring you master every aspect of pandas. You’ll start with an introduction to pandas and data analysis, followed by in-depth explorations of pandas Series and Data Frame, the core data structures.
Learn essential skills for data cleaning and filtering, and master grouping and aggregation techniques to summarize and analyze your data sets effectively. Discover how to reshape and pivot data, join and merge multiple datasets, and handle time series analysis.
Enhance your data analysis with compelling visualizations using Matplotlib, and apply your knowledge in a real-world scenario by analyzing bank customer churn. Through hands-on examples and practical use cases, this book equips you with the tools to clean, filter, aggregate, reshape, merge, and visualize data effectively, transforming it into actionable insights.
What you will learn
● Wrangle data efficiently using Pandas’ cleaning, filtering, and transformation techniques.
● Unlock hidden patterns with advanced grouping, joining, and merging operations.
● Master time series analysis with Pandas to extract valuable insights from your data.
● Apply Pandas to real-world scenarios like customer churn analysis and financial modeling.
● Unleash the power of data visualization with Matplotlib and craft compelling charts and graphs.
● Enhance your workflow with essential Pandas optimizations and performance tips.
Table of Contents
1. Introduction to Pandas and Data Analysis
2. Pandas Series
3. Pandas Data Frame
4. Data Cleaning with Pandas
5. Data Filtering with Pandas
6. Grouping and Aggregating Data
7. Reshaping and Pivoting in Pandas
8. Joining and Merging Data in Pandas
9. Introduction to Time Series Analysis in Pandas
10. Visualization Using Matplotlib
11. Analyzing Bank Customer Churn Using Pandas
    
Index
About the Authors
Tahera Firdose  holds a postgraduate degree in Artificial Intelligence and has made significant strides in the fields of data analysis and machine learning. Her academic background, combined with her passion for these domains, has propelled her into a prominent position as an educator, blogger, and community influencer.
Tahera’s expertise in Artificial Intelligence extends beyond theoretical knowledge; she has applied her skills in various practical and impactful projects. Her work in machine learning, particularly in developing innovative algorithms and predictive models, has been recognized for its excellence and practical applications. She is known for her ability to simplify complex concepts and make them accessible to a broader audience.
An avid writer, Tahera frequently shares her insights and discoveries through her well-regarded blog. Her articles cover a wide range of topics within data analysis and machine learning, providing valuable resources for both beginners and seasoned professionals. Her writing is characterized by its clarity, depth, and practical relevance, making her blog a go-to source for anyone looking to deepen their understanding of these fields.
 

€23.49
วิธีการชำระเงิน
ซื้อ eBook เล่มนี้และรับฟรีอีก 1 เล่ม!
ภาษา อังกฤษ ● รูป EPUB ● หน้า 465 ● ISBN 9788197256240 ● ขนาดไฟล์ 137.2 MB ● สำนักพิมพ์ Orange Education Pvt Ltd ● การตีพิมพ์ 2024 ● ที่สามารถดาวน์โหลดได้ 24 เดือน ● เงินตรา EUR ● ID 9481237 ● ป้องกันการคัดลอก Adobe DRM
ต้องใช้เครื่องอ่านหนังสืออิเล็กทรอนิกส์ที่มีความสามารถ DRM

หนังสืออิเล็กทรอนิกส์เพิ่มเติมจากผู้แต่งคนเดียวกัน / บรรณาธิการ

3,375 หนังสืออิเล็กทรอนิกส์ในหมวดหมู่นี้