Python for Data Analysis: Data Wrangling with pandas, NumPy, and Jupyter 3rd Edition by Wes McKinney (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 54726
- Number of Pages: 579
Rs.1,260.00
Rs.1,695.00
Tags: Advanced Data Analysis , affordable prices , best books , best books online , best online store , Best Price , best prices , Best Selling Books , best shop , Big Data , Book shopping , bookshop , bookshop Multan , bookshop near me , bookshop online , bookshop online Multan , bookshopPakistan , BUY ONLINE , buy online books , Computational Analysis , Data Aggregation , Data Analysis Libraries , Data Analysis Methods , Data Analysis Practices , Data Analysis Skills , Data Analysis with Python , Data Analysis Workflows , Data Analytics , Data Engineering , Data Extraction , Data Handling , Data Insights , Data Integration , Data Interpretation , Data Management , Data Manipulation , Data Mining , Data Modeling , Data Munging , Data Preprocessing , Data Presentation , Data Processing , Data Querying , Data Science , Data Science Applications , Data Science Techniques , Data Science Tools , Data Science with Python , Data Structures , Data Techniques , Data Tools , Data Transformation , Data Visualization , Data Workflow , digital shopping , digital shopping Best Selling Books , Exploratory Data Analysis , good books , good books online , good booksonline , Intermediate Data Analysis , Internet Shop , Jupyter , Largest Online Bookstore in Pakistan , latest books online , Machine Learning , NumPy , one stop shop , online , ONLINE BOOKS , Online Books Shop , online books store , Online Bookshop , Online Bookshop Pakistan , online bookstore , online shop , online shopping , Online Shopping Pakistan , onlinebooks , OnlineShoppingPakistan , Pakistan Bookshop , PakistanBookshop , PakistanOnlineShopping , pandas , price cut , price-friendly Comprehensive , Python Data Aggregation , Python Data Analysis , Python Data Cleaning , Python Data Engineering , Python Data Exploration , Python Data Integration , Python Data Interpretation , Python Data Manipulation , Python Data Modeling , Python Data Presentation , Python Data Processing , Python Data Science , Python Data Transformation , Python Data Visualization , Python Data Wrangling , Python for Data Analysis , Python for Data Science , Python Libraries , Python Programming , ReasonablePrice , reduced price , secure shopping , Shopping , ShopSmartPakistan , Statistical Analysis , Virtual Shop
"Python for Data Analysis: Data Wrangling with pandas, NumPy, and Jupyter 3rd Edition by Wes McKinney (Author)" serves as an essential resource crafted to empower data enthusiasts at all levels with robust tools for efficient data handling and exploration. With Wes McKinney, the visionary behind pandas, at the helm, this latest edition delivers a clear pathway into harnessing Python's pivotal libraries for effective data manipulation and analysis.
Starting with foundational Python programming concepts, the book swiftly transitions into the core functionalities of pandas, offering practical insights into data cleaning, transformation, and reshaping. McKinney's expert guidance extends to advanced topics such as managing missing data, merging datasets seamlessly, and applying function transformations with precision. The integration of NumPy amplifies the reader's capabilities in numerical computing, enabling complex computations and array operations to be executed with ease. Furthermore, the use of Jupyter notebooks enhances the learning journey by providing an interactive platform for data analysis and visualization, ensuring concepts are reinforced through practical application.
Key Points:
- Authoritative guide by Wes McKinney, the creator of pandas.
- Covers Python's data manipulation tools from basic to advanced techniques.
- Emphasizes practical application with real-world examples.
- Includes NumPy for efficient numerical computations and array operations.
- Utilizes Jupyter notebooks for interactive data analysis.
- Suitable for both beginners and experienced data analysts.
- Equips readers with essential skills for tackling diverse data challenges.
════ ⋆★⋆ ═══
Writer ✤ Wes McKinney (Author)