What are the new ways to describe your data in pandas 2.0? Will the addition of Apache Arrow to the data back end foster the growth of data interoperability? This week on the show, we talk with pandas core developer Marc Garcia about the release of pandas 2.0.
Marc shares his background and work on pandas. We discuss the history of data representation in pandas and the need to move beyond NumPy. We also talk about how Apache Arrow only solves some of the issues.
We dig into the potential of an Apache Arrow back end and how it could offer interoperability between data platforms. We also cover the moderate adoption and backward-compatibility concerns. Marc also shares his thoughts on making pandas more extensible.
Course Spotlight: The pandas DataFrame: Working With Data Efficiently
In this course, you’ll get started with pandas DataFrames, which are powerful and widely used two-dimensional data structures. You’ll learn how to perform basic operations with data, handle missing values, work with time-series data, and visualize data from a pandas DataFrame.
Topics:
- 00:00:00 – Introduction
- 00:02:07 – Getting involved with the pandas project
- 00:03:48 – Continued growth of the platform
- 00:06:49 – Parallel branch development
- 00:09:19 – The introduction of Apache Arrow
- 00:18:53 – Working with NumPy data in pandas
- 00:30:18 – Arrow data types and strings
- 00:41:23 – Video Course Spotlight
- 00:42:37 – Interoperability of Arrow data back end
- 00:50:36 – Could pandas be more extensible?
- 01:00:49 – Python DataFrame Summit 2023
- 01:08:12 – What are you excited about in the world of Python?
- 01:11:13 – What do you want to learn next?
- 01:12:12 – How can people follow your work online?
- 01:13:46 – Thanks and Goodbye
Show Links:
- Marc Garcia - datapythonista - data engineer, data scientist and pandas core developer
- pandas 2.0 and the Arrow revolution (part I)
- The pandas of the future - Marc Garcia - SciPyLA 2019 - TubEdu
- The deadly consequences of rounding errors - Slate
- Community Blog - pandas - Python Data Analysis Library
- Apache Arrow - Apache Arrow
- Apache Arrow and the “10 Things I Hate About pandas” - Wes McKinney
- I/O Extensions in pandas - PDEP-9
- Extension Arrays for Pandas - Tom’s Blog
- Python Dataframe Summit 2023
- Rust Programming Language
- Freediving - Wikipedia
- Marc Garcia - LinkedIn
- Marc Garcia (@datapythonista) - X
Level up your Python skills with our expert-led courses: