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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

  • Selecting and using programming languages (Python, R, Scala).
  • Writing and executing code.
  • Integrating with big data systems (Apache Spark).

Advanced Jupyter Features

  • Customizing the 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.
 7 Hours

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