Jupyter for Data Science Teams Training Course
Jupyter is an open-source, web-based interactive IDE and computing environment.
This instructor-led, live training (online or onsite) introduces the idea of collaborative development in data science and demonstrates how to use Jupyter to track and participate as a team in the "life cycle of a computational idea". It walks participants through the creation of a sample data science project based on top of the Jupyter ecosystem.
By the end of this training, participants will be able to:
- Install and configure Jupyter, including the creation and integration of a team repository on Git.
- Use Jupyter features such as extensions, interactive widgets, multiuser mode and more to enable project collaboraton.
- Create, share and organize Jupyter Notebooks with team members.
- Choose from Scala, Python, R, to write and execute code against big data systems such as Apache Spark, all through the Jupyter interface.
Format of the Course
- Interactive lecture and discussion.
- Lots of exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- The Jupyter Notebook supports over 40 languages including R, Python, Scala, Julia, etc. To customize this course to your language(s) of choice, please contact us to arrange.
Course Outline
Introduction to Jupyter
- Overview of Jupyter and its ecosystem
- Installation and setup
- Configuring Jupyter for team collaboration
Collaborative Features
- Using Git for version control
- Extensions and interactive widgets
- Multiuser mode
Creating and Managing Notebooks
- Notebook structure and functionality
- Sharing and organizing notebooks
- Best practices for collaboration
Programming with Jupyter
- Choosing and using programming languages (Python, R, Scala)
- Writing and executing code
- Integrating with big data systems (Apache Spark)
Advanced Jupyter Features
- Customizing Jupyter environment
- Automating workflows with Jupyter
- Exploring advanced use cases
Practical Sessions
- Hands-on labs
- Real-world data science projects
- Group exercises and peer reviews
Summary and Next Steps
Requirements
- Programming experience in languages such as Python, R, Scala, etc.
- A background in data science
Audience
- Data science teams
Open Training Courses require 5+ participants.
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Testimonials (1)
It is great to have the course custom made to the key areas that I have highlighted in the pre-course questionnaire. This really helps to address the questions that I have with the subject matter and to align with my learning goals.
Winnie Chan - Statistics Canada
Course - Jupyter for Data Science Teams
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