Eurus-Holmes / CS269-projects-2022spring

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UCLA CS269 Spring2022 human AI Course Project

Project page: https://ucladeepvision.github.io/CS269-projects-2022spring/

Instruction for running this site locally

  1. Follow the first 2 steps in pull-request-instruction

  2. Installing Ruby with version 3.0.0 if you are using a Mac, and ruby 2.7 should work for Linux, check https://www.ruby-lang.org/en/documentation/installation/ for instruction.

  3. Installing Bundler and jekyll with

gem install --user-install bundler jekyll
bundler install
bundle add webrick
  1. Run your site with
bundle exec jekyll serve

You should see an address pop on the terminal (http://127.0.0.1:4000/CS269-projects-2022spring / by default), go to this address with your browser.

Working on the project

  1. Create a folder with your team id under ./assets/images/your-teamid, you will use this folder to store all the images in your project.

  2. Copy the template at ./_posts/2022-04-10-team00-instruction-to-post.md and rename it with format "year-month-date-yourteamid-projectshortname.md" under ./_posts/, for example, 2022-04-10-team01-object-detection.md

  3. Check out the sample posts we provide and the source code as well as basic Markdown syntax.

  4. Start your work in your .md file. You may only edit the .md file you just copied and renamed, and add images to ./assets/images/your-teamid. Please do NOT change any other files in this repo.

Once you save the .md file, jekyll will synchronize the site and you can check the changes on browser.

Submission

We will use git pull request to manage submissions.

Once you've done, follow steps 3 and 4 in pull-request-instruction to make a pull request BEFORE the deadline. Please make sure not to modify any file except your .md file and your images folder. We will merge the request after all submissions are received, and you should able to check your work in the project page on next week of each deadline.

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