thisismetis / Dsp
Metis Data Science Bootcamp - Official Prework Repository
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Data Science Bootcamp Pre-work Revision 2019
Table of Contents
1. Computer Requirements
2. Overview
3. Pre-work Exercises
4. FAQs
1. Computer Requirements
Review the computer requirements on hardware needed for the bootcamp.
2. Overview
What can I do to get ready before the bootcamp starts?
Completing the pre-work is essential to obtaining the foundational knowledge necessary to succeed in the Metis data science bootcamp. Each student should expect to spend 60+ hours of tutorials to become familiar with software installation, editors, command line, Python (numpy, pandas, etc.), linear algebra and statistics.
3. Pre-work Exercises
All exercises must be completed before the first day of class.
- Step 0. Getting Started
- Step 0a. Markdown
- Step 0b. Fork GitHub Repo
- Step 1. Installation
- Step 1a. Install software on your computer
- Step 1b. Install Jupyter Notebook on your computer
- Step 2. Choose and learn your editor(s)
- Step 3. Learn command line
- Step 4. Git and GitHub
- Step 4b Git Branching
- Step 5. Python
- Step 5a. Learn Python
- Step 5b. Advanced Python
- Step 5c. Python Pandas
- Step 6. Linear Algebra
- Step 7. Statistics
- Step 8. More Resources
4. FAQs
Q: How do I submit pre-work?
- Sections 0 to 4
- Fork the dsp repo this is covered in the GitHub section
- Clone your forked dsp repo to your local PC
- Run Jupyter on your local and make all changes
- Push all changes to your forked repo on GitHub; this is considered your pre-work submission. (No need to submit pull requests to the thisismetis/dsp repo.)
- Python
- use your forked repo for scratch work only
- Statistics
- Make all changes to your forked repo
Q: Can I discuss prework with other students in the course?
Yes
Q: Can I ask for hints for python questions?
Yes
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