Exam Schedule Generator using Genetic Algorithm

Overview

Exam Schedule Generator using Genetic Algorithm

Requirements

  • Use any kind of crossover
  • Choose any justifiable rate of mutation
  • Use roulette wheel selection for selecting potentially useful solutions for recombination

The success of the solution is estimated on fulfillment of given constraints and criteria. Results of testing the algorithm show that all hard constraints are satisfied, while additional criteria is optimised to a certain extent.

Constraints

There is a set of constraints that needs to be fulfilled.

Hard Constraints

  • An exam will be scheduled for each course.
  • A student is enrolled in at least 3 courses. A student cannot give more than 1 exam at a time.
  • Exam will not be held on weekends.
  • Each exam must be held between 9 am and 5 pm
  • Each exam must be invigilated by a teacher. A teacher cannot invigilate two exams at the same time.
  • A teacher cannot invigilate two exams in a row

The above-mentioned constraints must be satisfied.

Soft Constraints

  • All students and teachers shall be given a break on Friday from 1-2.
  • A student shall not give more than 1 exam consecutively.
  • If a student is enrolled in a MG course and a CS course, it is preferred that their MG course exam be held before their CS course exam.
  • Two hours of break in the week such that at least half the faculty is free in one slot and the rest of the faculty is free in the other slot so the faculty meetings shall be held in parts as they are now.

Input & Output

Input data for each exam are teachers’ names, students’, exam duration, courses (course codes), and list of allowed classrooms.

Output data are classroom and starting time for each exam along with course code and invigilating teacher. Time is determined by day (Monday to Friday) and start hour of the exam.

  • Output will be a chromosome which satisfies all hard constraints and soft constraints at least three. (as much as you can)
  • You have to display a list of all hard and soft constraints which are fulfilled in the output.
  • Don’t forget to show fitness values at each iteration.

Credits

This project was done with equal contribution from my group partner Hassan Shahzad and I.

Contact Me

Gmail GitHub LinkedIn

Owner
Sana Khan
I like learning.
Sana Khan
Given a list of tickers, this algorithm generates a recommended portfolio for high-risk investors.

RiskyPortfolioGenerator Given a list of tickers, this algorithm generates a recommended portfolio for high-risk investors. Working in a group, we crea

Victoria Zhao 2 Jan 13, 2022
:computer: Data Structures and Algorithms in Python

Algorithms in Python Implementations of a few algorithms and datastructures for fun and profit! Completed Karatsuba Multiplication Basic Sorting Rabin

Prakhar Srivastav 2.9k Jan 01, 2023
BCI datasets and algorithms

Brainda Welcome! First and foremost, Welcome! Thank you for visiting the Brainda repository which was initially released at this repo and reorganized

52 Jan 04, 2023
A Python library for simulating finite automata, pushdown automata, and Turing machines

Automata Copyright 2016-2021 Caleb Evans Released under the MIT license Automata is a Python 3 library which implements the structures and algorithms

Caleb Evans 219 Dec 12, 2022
The DarkRift2 networking framework written in Python 3

DarkRiftPy is Darkrift2 written in Python 3. The implementation is fully compatible with the original version. So you can write a client side on Python that connects to a Darkrift2 server written in

Anton Dobryakov 6 May 23, 2022
Greedy Algorithm-Problem Solving

MAX-MIN-Hackrrank-Python-Solution Greedy Algorithm-Problem Solving You will be given a list of integers, , and a single integer . You must create an a

Mahesh Nagargoje 3 Jul 13, 2021
Implementation for Evolution of Strategies for Cooperation

Moraliser Implementation for Evolution of Strategies for Cooperation Dependencies You will need a python3 (= 3.8) environment to run the code. Before

1 Dec 21, 2021
Leveraging Unique CPS Properties to Design Better Privacy-Enhancing Algorithms

Differential_Privacy_CPS Python implementation of the research paper Leveraging Unique CPS Properties to Design Better Privacy-Enhancing Algorithms Re

Shubhesh Anand 2 Dec 14, 2022
Genius Square puzzle solver in Python

Genius Square puzzle solver in Python

James 3 Dec 15, 2022
A library for benchmarking, developing and deploying deep learning anomaly detection algorithms

A library for benchmarking, developing and deploying deep learning anomaly detection algorithms Key Features • Getting Started • Docs • License Introd

OpenVINO Toolkit 1.5k Jan 04, 2023
My own Unicode compression algorithm

Zee Code ZCode is a custom compression algorithm I originally developed for a competition held for the Spring 2019 Datastructures and Algorithms cours

Vahid Zehtab 2 Oct 20, 2021
Algoritmos de busca:

Algoritmos-de-Buscas Algoritmos de busca: Abaixo está a interface da aplicação: Ao selecionar o tipo de busca e o caminho, então será realizado o cálc

Elielson Barbosa 5 Oct 04, 2021
A simple python implementation of A* and bfs algorithm solving Eight-Puzzle

A simple python implementation of A* and bfs algorithm solving Eight-Puzzle

2 May 22, 2022
Python based framework providing a simple and intuitive framework for algorithmic trading

Harvest is a Python based framework providing a simple and intuitive framework for algorithmic trading. Visit Harvest's website for details, tutorials

100 Jan 03, 2023
PICO is an algorithm for exploiting Reinforcement Learning (RL) on Multi-agent Path Finding tasks.

PICO is an algorithm for exploiting Reinforcement Learning (RL) on Multi-agent Path Finding tasks. It is developed by the Multi-Agent Artificial Intel

21 Dec 20, 2022
🌟 Python algorithm team note for programming competition or coding test

🌟 Python algorithm team note for programming competition or coding test

Seung Hoon Lee 3 Feb 25, 2022
CLI Eight Puzzle mini-game featuring BFS, DFS, Greedy and A* searches as solver algorithms.

🕹 Eight Puzzle CLI Jogo do quebra-cabeças de 8 peças em linha de comando desenvolvido para a disciplina de Inteligência Artificial. Escrito em python

Lucas Nakahara 1 Jun 30, 2021
This project consists of a collaborative filtering algorithm to predict movie reviews ratings from a dataset of Netflix ratings.

Collaborative Filtering - Netflix movie reviews Description This project consists of a collaborative filtering algorithm to predict movie reviews rati

Shashank Kumar 1 Dec 21, 2021
QDax is a tool to accelerate Quality-Diveristy (QD) algorithms through hardware accelerators and massive parallelism

QDax: Accelerated Quality-Diversity QDax is a tool to accelerate Quality-Diveristy (QD) algorithms through hardware accelerators and massive paralleli

Adaptive and Intelligent Robotics Lab 183 Dec 30, 2022
causal-learn: Causal Discovery for Python

causal-learn: Causal Discovery for Python Causal-learn is a python package for causal discovery that implements both classical and state-of-the-art ca

589 Dec 29, 2022