Learning Pandas 2.0

"Learning Pandas 2.0" is an essential guide for anyone looking to harness the power of Python's premier data manipulation library. With this comprehensive resource, you will not only master core Pandas 2.0 concepts but also learn how to employ its advanced features to perform efficient data manipulation and analysis.

 

Throughout the book, you will acquire a deep understanding of Pandas 2.0's data structures, indexing, and selection techniques. Gain expertise in loading, storing, and cleaning data from various file formats and sources, ensuring data integrity and consistency. As you progress, you will delve into advanced data transformation, merging, and aggregation methods to extract meaningful insights and generate insightful reports.

 

"Learning Pandas 2.0" also covers specialized data processing needs like time series data, DateTime operations, and geospatial analysis. Furthermore, this book demonstrates how to integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics. This will empower you to build powerful data-driven models to solve complex problems and enhance your decision-making capabilities.

 

Key Learnings

  • Master core Pandas 2.0 concepts, including data structures, indexing, and selection for efficient data manipulation.
  • Load, store, and clean data from various file formats and sources, ensuring data integrity and consistency.
  • Perform advanced data transformation, merging, and aggregation techniques for insightful analysis and reporting.
  • Harness time series data, DateTime operations, and geospatial analysis for specialized data processing needs.
  • Visualize data effectively using Seaborn, Plotly, and advanced geospatial visualization tools.
  • Integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics.

 

Table of Content

  1. Introduction to Pandas 2.0
  2. Data Read, Storage, and File Formats
  3. Indexing and Selecting Data
  4. Data Manipulation and Transformation
  5. Time Series and DateTime Operations
  6. Performance Optimization and Scaling
  7. Machine Learning with Pandas 2.0
  8. Text Data and Natural Language Processing
  9. Geospatial Data Analysis
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Learning Pandas 2.0

"Learning Pandas 2.0" is an essential guide for anyone looking to harness the power of Python's premier data manipulation library. With this comprehensive resource, you will not only master core Pandas 2.0 concepts but also learn how to employ its advanced features to perform efficient data manipulation and analysis.

 

Throughout the book, you will acquire a deep understanding of Pandas 2.0's data structures, indexing, and selection techniques. Gain expertise in loading, storing, and cleaning data from various file formats and sources, ensuring data integrity and consistency. As you progress, you will delve into advanced data transformation, merging, and aggregation methods to extract meaningful insights and generate insightful reports.

 

"Learning Pandas 2.0" also covers specialized data processing needs like time series data, DateTime operations, and geospatial analysis. Furthermore, this book demonstrates how to integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics. This will empower you to build powerful data-driven models to solve complex problems and enhance your decision-making capabilities.

 

Key Learnings

  • Master core Pandas 2.0 concepts, including data structures, indexing, and selection for efficient data manipulation.
  • Load, store, and clean data from various file formats and sources, ensuring data integrity and consistency.
  • Perform advanced data transformation, merging, and aggregation techniques for insightful analysis and reporting.
  • Harness time series data, DateTime operations, and geospatial analysis for specialized data processing needs.
  • Visualize data effectively using Seaborn, Plotly, and advanced geospatial visualization tools.
  • Integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics.

 

Table of Content

  1. Introduction to Pandas 2.0
  2. Data Read, Storage, and File Formats
  3. Indexing and Selecting Data
  4. Data Manipulation and Transformation
  5. Time Series and DateTime Operations
  6. Performance Optimization and Scaling
  7. Machine Learning with Pandas 2.0
  8. Text Data and Natural Language Processing
  9. Geospatial Data Analysis
24.99 In Stock
Learning Pandas 2.0

Learning Pandas 2.0

by Matthew Rosch
Learning Pandas 2.0

Learning Pandas 2.0

by Matthew Rosch

eBook

$24.99 

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Overview

"Learning Pandas 2.0" is an essential guide for anyone looking to harness the power of Python's premier data manipulation library. With this comprehensive resource, you will not only master core Pandas 2.0 concepts but also learn how to employ its advanced features to perform efficient data manipulation and analysis.

 

Throughout the book, you will acquire a deep understanding of Pandas 2.0's data structures, indexing, and selection techniques. Gain expertise in loading, storing, and cleaning data from various file formats and sources, ensuring data integrity and consistency. As you progress, you will delve into advanced data transformation, merging, and aggregation methods to extract meaningful insights and generate insightful reports.

 

"Learning Pandas 2.0" also covers specialized data processing needs like time series data, DateTime operations, and geospatial analysis. Furthermore, this book demonstrates how to integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics. This will empower you to build powerful data-driven models to solve complex problems and enhance your decision-making capabilities.

 

Key Learnings

  • Master core Pandas 2.0 concepts, including data structures, indexing, and selection for efficient data manipulation.
  • Load, store, and clean data from various file formats and sources, ensuring data integrity and consistency.
  • Perform advanced data transformation, merging, and aggregation techniques for insightful analysis and reporting.
  • Harness time series data, DateTime operations, and geospatial analysis for specialized data processing needs.
  • Visualize data effectively using Seaborn, Plotly, and advanced geospatial visualization tools.
  • Integrate Pandas 2.0 with machine learning libraries like Scikit-learn, TensorFlow, and PyTorch for predictive analytics.

 

Table of Content

  1. Introduction to Pandas 2.0
  2. Data Read, Storage, and File Formats
  3. Indexing and Selecting Data
  4. Data Manipulation and Transformation
  5. Time Series and DateTime Operations
  6. Performance Optimization and Scaling
  7. Machine Learning with Pandas 2.0
  8. Text Data and Natural Language Processing
  9. Geospatial Data Analysis

Product Details

BN ID: 2940167196735
Publisher: GitforGits
Publication date: 04/10/2023
Sold by: Draft2Digital
Format: eBook
File size: 1 MB
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