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Overview and map of the organization, for the UCSD course COGS108: Data Science in Practice.

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Overview

COGS 108 - Data Science in Practice - is a class offered by the Cognitive Science Department of UC San Diego, taught by Professors Bradley Voytek, Shannon Ellis, & Jason Fleischer. Here is an overview and map of the COGS 108 Organization, which hosts materials and assignments for the class.

Syllabus

The most recent iteration of this class is Fall 2023 quarter, the syllabus for which is available here.

Lectures

  • Slides and materials will be organized by week. All links to class videos, slides, and notebooks used MWF will be included here.

Discussion Section

  • Discussion Labs are released, completed, and submitted on datahub
  • Tutorial Notebooks that run along with the topics of the class and can help as you complete assignments and discussion section tasks.

Assignments

Assignments and Discussion Labs will be completed on datahub.ucsd.edu.

Readings

A suggested reading list (recommended, but not required).

Final Projects

A core component of the class is completing a group project. Some example projects from the Spring 2017, Winter 2018, Spring 2019, Fall 2019, Winter 2020, Spring 2020, Fall 2020, Winter 2021, Spring 2021, Fall 2021, Winter 2022 iterations of the class are available


A reminder about time:

These assignments are intermingled with your project proposal, checkpoints and final project (due finals week). This is an assignment-heavy course load to get you as much practice as possible. This will require good time management and planning on your part. Start planning ahead now to avoid late submissions and issues later in the quarter.


License

The content of this project itself is licensed under the Creative Commons Attribution 3.0 Unported license, and the underlying source code used to format and display that content is licensed under the MIT license.