84 subscribers
انتقل إلى وضع عدم الاتصال باستخدام تطبيق Player FM !
Katharine Jarmul on using Python for data analysis
Manage episode 261558966 series 1652312
The O’Reilly Programming Podcast: Wrangling data with Python’s libraries and packages.
In this episode of the O’Reilly Programming Podcast, I talk with Katharine Jarmul, a Python developer and data analyst whose company, Kjamistan, provides consulting and training on topics surrounding machine learning, natural language processing, and data testing. Jarmul is the co-author (along with Jacqueline Kazil) of the O’Reilly book Data Wrangling with Python, and she has presented the live online training course Practical Data Cleaning with Python.
Discussion points:
- How data wrangling enables you to take real-world data and “clean it, organize it, validate it, and put it in some format you can actually work with,” says Jarmul.
- Why Python has become a preferred language for use in data science: Jarmul cites the accessibility of the language and the emergence of packages such as NumPy, pandas, SciPy, and scikit-learn.
- Jarmul calls pandas “Excel on steroids” and says, “it allows you to manipulate tabular data, and transform it quite easily. For anyone using structured, tabular data, you can’t go wrong with doing some part of your analysis in pandas.”
- She cites gensim and spaCy as her favorite NLP Python libraries, praising them for “the ability to just install a library and have it do quite a lot of deep learning or machine learning tasks for you.”
Other links:
- Check out the video Building Data Pipelines with Python, presented by Jarmul.
- Check out the video Data Wrangling and Analysis with Python, presented by Jarmul.
- Jarmul is one of the founders of the group PyLadies, which focuses on helping more women become active participants and leaders in the Python open source community.
40 حلقات
Manage episode 261558966 series 1652312
The O’Reilly Programming Podcast: Wrangling data with Python’s libraries and packages.
In this episode of the O’Reilly Programming Podcast, I talk with Katharine Jarmul, a Python developer and data analyst whose company, Kjamistan, provides consulting and training on topics surrounding machine learning, natural language processing, and data testing. Jarmul is the co-author (along with Jacqueline Kazil) of the O’Reilly book Data Wrangling with Python, and she has presented the live online training course Practical Data Cleaning with Python.
Discussion points:
- How data wrangling enables you to take real-world data and “clean it, organize it, validate it, and put it in some format you can actually work with,” says Jarmul.
- Why Python has become a preferred language for use in data science: Jarmul cites the accessibility of the language and the emergence of packages such as NumPy, pandas, SciPy, and scikit-learn.
- Jarmul calls pandas “Excel on steroids” and says, “it allows you to manipulate tabular data, and transform it quite easily. For anyone using structured, tabular data, you can’t go wrong with doing some part of your analysis in pandas.”
- She cites gensim and spaCy as her favorite NLP Python libraries, praising them for “the ability to just install a library and have it do quite a lot of deep learning or machine learning tasks for you.”
Other links:
- Check out the video Building Data Pipelines with Python, presented by Jarmul.
- Check out the video Data Wrangling and Analysis with Python, presented by Jarmul.
- Jarmul is one of the founders of the group PyLadies, which focuses on helping more women become active participants and leaders in the Python open source community.
40 حلقات
كل الحلقات
×![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Kyle Simpson and Tammy Everts on the challenges of the modern web 49:02
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Rebecca Parsons on evolutionary architecture 25:42
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Richard Warburton and Raoul-Gabriel Urma on Java 8 and Reactive Programming 36:36
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Paul Bakker and Sander Mak on Java 9 modularity 29:31
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Luciano Ramalho on Python’s features and libraries 20:40
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Wendy Wise on developing for virtual reality and augmented reality 21:07
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Katharine Jarmul on using Python for data analysis 26:17
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Nathaniel Schutta on succeeding as a software architect 29:52
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Matt Stine on cloud-native architecture 42:45
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Michael Nygard on architecture without an end state 28:31
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
![O'Reilly Programming Podcast - O'Reilly Media Podcast podcast artwork](/static/images/64pixel.png)
1 Jim Blandy and Jason Orendorff on Rust 29:24
مرحبًا بك في مشغل أف ام!
يقوم برنامج مشغل أف أم بمسح الويب للحصول على بودكاست عالية الجودة لتستمتع بها الآن. إنه أفضل تطبيق بودكاست ويعمل على أجهزة اندرويد والأيفون والويب. قم بالتسجيل لمزامنة الاشتراكات عبر الأجهزة.