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Resources for the Distributed AI course (Reinforcement Learning actually) at UAntwerpen

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RL_Lab

Introduction

This repo is where all lab exercises and sessions for UA would be posted It is expected of students to have a basic knowledge of github to access this repo.

Since this will a public repo, don't add your code and follow the guidelines for using the repo.

Guidelines

Fork this repository to your account, using the Fork button on the top right corner.

Use git clone to clone your forked repo to your local machine: (replace 'your_username' with appropriate value)

git clone https://github.com/<username>/RL_Lab.git


cd into cloned repo: cd <folder_name>

Obviously setting up SSH for interacting with github is a much more secure and hassle free way. So, it is highly recommended that you setup ssh for github/bitbucket using: How to set up SSH - bit bucket.


Set the upstream to this repo:

The easiest way is to use the https url:

git remote add upstream https_url_of_repo

or if you have ssh set up you can use that url instead:

git remote add upstream ssh_url_of_repo

Lab assignments and exercises will always be in master branch.

NOTE: You must not mess with master branch or BAD THINGS will happen. master branch will only contain exercises, so just leave it be.


Now you can fetch latest changes from main repo using:

git fetch upstream

Lab exercises willuse following convention:

RL_Lab
│   README.md
│      
│      
│
└─── Lab_session1
│   │   
│   └───code_1
│   └───code_1
│   └───code_1
│
│─── Lab_session2
│   │   
│   └───Sub_exercise_1
│       │   code_1
│       │   code_2
│       │   ...
│   └───Sub_exercise_2
│       │   code_1
│       │   code_2
│       │   ...

w.r.t the assesment you would be asked to submit your code, instructions will follow in a seperate PDF/markdown document.

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