An NUS timetable generator which uses a genetic algorithm to optimise timetables to suit the needs of NUS students.

Overview

Where Got Time(table)?

A timetable optimiser for NUS which uses an evolutionary algorithm to "breed" a timetable suited to your needs.



Try it out here!

Inspiration

Planning the best fit timetable to suit our needs can be an absolute nightmare. Different sets of modules can result in a seemingly limitless combinations of timetable. Comparing and choosing the best timetable can take hours or even days. The struggle is real

Having chanced upon an article on genetic algorithm, we thought that this would be the best approach to tackling an optimization problem involving timetabling/scheduling. This project aims to provide the most optimized timetable given a set of pre-defined constraints.

What It Does

Users can input the following:

  • Modules codes for the particular semester
  • Adjustable start and end time
  • Select free days
  • Maximize lunch timings
  • Determine minimum hours of break between classes

Based on user inputs, the most optimized timetable is generated.





Why It Works

A Genetic Algorithm mimics the process of natural selection and evolution by combining the "elite" timetables to form the "next generation" of timetables.

The evolutionary process:

  1. Extracting, cleaning and generating our own data structure from NUSMods API
  2. Initialise the first generation which includes a population of timetables
  3. Grading each timetable with a fitness score
  4. Cross-over fittest "parents" to generate 2 "child" timetables with mutations
  5. Assign these timetables to the next generation
  6. Repeat this process until the fitness score across a generation converges
  7. If the soft and hard constraints were not met after reaching the generation limit, the most optimised timetable is returned to the user

How We Built It

Our main algorithm was written with Python. It utilizes NUSMods API to fetch the relevant module data. Some filtering and cleaning up of the data grants us a workable data structure. Implementation of the genetic algorithm returns a link that is sent to the web page which generates an image for the user.

Firstly, we generate a population of timetables. Using a scoring algorithm, we rate the fitness of each timetable. Timetables with a better fitness score gets to produce the next generation of timetables through cross-overs and mutation.

We repeat this process until the average fitness score of the entire generation converges to within a tolerance range. The fittest timetable from the final generation is returned to the user.

Challenges We Ran Into

Managing large data structures comes with confusing errors that are hard to pinpoint. NUS offers more than 6000 modules, some classes are fixed while others are variable. This results in multiple varying data structures for different modules. As such, our code needs to be robust enough to handle the unique data structures. Integration of front and backend code was much harder than expected.

Accomplishments We're Proud Of

We are proud to have come up with a minimum viable product.

What We Learned

As this is our first group project, we learnt how to work on Git Flow, how to push and pull information via Git and version control. One of us even deleted a whole file and had to rewrite from scratch We also learnt how to approach optimization problems and how to use the NUSMods API for parsing data into our program.

What's Next For Where Got Time(table)?

Improve the UI/UX of the landing page to facilitate better user experience. Allow more user constraints such as "Minimal Time Spent in School". We will further fine-tune the program which could possibly be used as an extension for the official NUSMods. A possible feature that can be added includes a GIF of the user's timetable evolving across generations from start to finish.

Try It Out

Where Got Time(table)?

Credits/Reference

Using Genetic Algorithm to Schedule Timetables

Owner
Nicholas Lee
Student
Nicholas Lee
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
Supplementary Data for Evolving Reinforcement Learning Algorithms

evolvingrl Supplementary Data for Evolving Reinforcement Learning Algorithms This dataset contains 1000 loss graphs from two experiments: 500 unique g

John Co-Reyes 42 Sep 21, 2022
implementation of the KNN algorithm on crab biometrics dataset for CS16

crab-knn implementation of the KNN algorithm in Python applied to biometrics data of purple rock crabs (leptograpsus variegatus) to classify the sex o

Andrew W. Chen 1 Nov 18, 2021
Sign data using symmetric-key algorithm encryption.

Sign data using symmetric-key algorithm encryption. Validate signed data and identify possible validation errors. Uses sha-(1, 224, 256, 385 and 512)/hmac for signature encryption. Custom hash algori

Artur Barseghyan 39 Jun 10, 2022
This is an Airport Scheduling Time table implemented using Genetic Algorithm

This is an Airport Scheduling Time table implemented using Genetic Algorithm In this The scheduling is performed on the basisi of that no two Air planes are arriving or departing at the same runway a

1 Jan 06, 2022
N Queen Problem using Genetic Algorithm

The N Queen is the problem of placing N chess queens on an N×N chessboard so that no two queens attack each other.

Mahdi Hassanzadeh 2 Nov 11, 2022
Algorithmic Trading with Python

Source code for Algorithmic Trading with Python (2020) by Chris Conlan

Chris Conlan 1.3k Jan 03, 2023
Python-Strongest-Encrypter - Transform your text into encrypted symbols using their dictionary

How does the encrypter works? Transform your text into encrypted symbols using t

1 Jul 10, 2022
This project is an implementation of a simple K-means algorithm

Simple-Kmeans-Clustering-Algorithm Abstract K-means is a centroid-based algorithm, or a distance-based algorithm, where we calculate the distances to

Saman Khamesian 7 Aug 09, 2022
This is an implementation of the QuickHull algorithm in Python. I

QuickHull This is an implementation of the QuickHull algorithm in Python. It randomly generates a set of points and finds the convex hull of this set

Anant Joshi 4 Dec 04, 2022
Better control of your asyncio tasks

quattro: task control for asyncio quattro is an Apache 2 licensed library, written in Python, for task control in asyncio applications. quattro is inf

Tin Tvrtković 37 Dec 28, 2022
Python implementation of Aho-Corasick algorithm for string searching

Python implementation of Aho-Corasick algorithm for string searching

Daniel O'Sullivan 1 Dec 31, 2021
Genius Square puzzle solver in Python

Genius Square puzzle solver in Python

James 3 Dec 15, 2022
Sorting-Algorithms - All information about sorting algorithm you need and you can visualize the code tracer

Sorting-Algorithms - All information about sorting algorithm you need and you can visualize the code tracer

Ahmed Hossam 15 Oct 16, 2022
Esse repositório tem como finalidade expor os trabalhos feitos para disciplina de Algoritmos computacionais e estruturais do CEFET-RJ no ano letivo de 2021.

Exercícios de Python 🐍 Esse repositório tem como finalidade expor os trabalhos feitos para disciplina de Algoritmos computacionais e estruturais do C

Rafaela Bezerra de Figueiredo 1 Nov 20, 2021
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
A Python program to easily solve the n-queens problem using min-conflicts algorithm

QueensProblem A program to easily solve the n-queens problem using min-conflicts algorithm Performances estimated with a sample of 1000 different rand

0 Oct 21, 2022
A lightweight, pure-Python mobile robot simulator designed for experiments in Artificial Intelligence (AI) and Machine Learning, especially for Jupyter Notebooks

aitk.robots A lightweight Python robot simulator for JupyterLab, Notebooks, and other Python environments. Goals A lightweight mobile robotics simulat

3 Oct 22, 2021
Algorithms and utilities for SAR sensors

WARNING: THIS CODE IS NOT READY FOR USE Sarsen Algorithms and utilities for SAR sensors Objectives Be faster and simpler than ESA SNAP and cloud nativ

B-Open 201 Dec 27, 2022
Apriori - An algorithm for frequent item set mining and association rule learning over relational databases

Apriori Apriori is an algorithm for frequent item set mining and association rul

Mohammad Nazari 8 Jan 10, 2022