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Introduction to Data Visualization with Python / Seaborn

Introduction to Data Visualization with Python / Seaborn Online

This hands-on workshop will cover the basics of data visualization using Seaborn (https://seaborn.pydata.org), a library for the Python programming language. We will cover how to create plots using numeric and categorical data, as well as the creation of multi-panel figures for data exploration and presentation.

InstructorJames Adams, Manager of Research and Data Services, Harvard Kennedy School

Pre-class instructions:
Attendees don’t need much experience with Python, though a basic familiarity with the language will be helpful. We’ll want to get started right away, so please make sure to install JupyterLab or Jupyter Notebook (https://jupyter.org/install) prior to arrival. Alternatively, attendees are welcome to use Google Colab (https://colab.research.google.com) if they have existing Google accounts. Please contact James Adams if you encounter any difficulties with setup.

Date:
Wednesday, July 19, 2023
Time:
12:00pm - 1:00pm
Time Zone:
Eastern Time - US & Canada (change)
Online:
This is an online event. Event URL will be sent via registration email.
Categories:
  Classes     Data Management  
Registration has closed.

Summer RDM Camp: Data Visualization

Join us all summer long for more opportunities to build your data visualization skills.

Date Seminar Title Location
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7/19 Introduction to Data Visualization with Python / Seaborn Online
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Event Organizer

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Julie Goldman

 

Need help with data management? Feel free to book a 30 minute meeting slot with me.

Happy to help with data organization, cleaning, and sharing for fostering reproducible workflows and open science!

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