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
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
This is a demo for AAD algorithm.

Asynchronous-Anisotropic-Diffusion-Algorithm This is a demo for AAD algorithm. The subroutine of the anisotropic diffusion algorithm is modified from

3 Mar 21, 2022
A pure Python implementation of a mixed effects random forest (MERF) algorithm

Mixed Effects Random Forest This repository contains a pure Python implementation of a mixed effects random forest (MERF) algorithm. It can be used, o

Manifold 199 Dec 06, 2022
HashDB is a community-sourced library of hashing algorithms used in malware.

HashDB HashDB is a community-sourced library of hashing algorithms used in malware. How To Use HashDB HashDB can be used as a stand alone hashing libr

OALabs 216 Jan 06, 2023
iAWE is a wonderful dataset for those of us who work on Non-Intrusive Load Monitoring (NILM) algorithms.

iAWE is a wonderful dataset for those of us who work on Non-Intrusive Load Monitoring (NILM) algorithms. You can find its main page and description via this link. If you are familiar with NILM-TK API

Mozaffar Etezadifar 3 Mar 19, 2022
Nature-inspired algorithms are a very popular tool for solving optimization problems.

Nature-inspired algorithms are a very popular tool for solving optimization problems. Numerous variants of nature-inspired algorithms have been develo

NiaOrg 215 Dec 28, 2022
A lightweight, object-oriented finite state machine implementation in Python with many extensions

transitions A lightweight, object-oriented state machine implementation in Python with many extensions. Compatible with Python 2.7+ and 3.0+. Installa

4.7k Jan 01, 2023
Algorithms and data structures for educational, demonstrational and experimental purposes.

Algorithms and Data Structures (ands) Introduction This project was created for personal use mostly while studying for an exam (starting in the month

50 Dec 06, 2022
This repository is an individual project made at BME with the topic of self-driving car simulator and control algorithm.

BME individual project - NEAT based self-driving car This repository is an individual project made at BME with the topic of self-driving car simulator

NGO ANH TUAN 1 Dec 13, 2021
Genetic algorithm which evolves aoe2 DE ai scripts

AlphaScripter Use the power of genetic algorithms to evolve AI scripts for Age of Empires II : Definitive Edition. For now this package runs in AOC Us

6 Nov 04, 2022
Multiple Imputation with Random Forests in Python

miceforest: Fast, Memory Efficient Imputation with lightgbm Fast, memory efficient Multiple Imputation by Chained Equations (MICE) with lightgbm. The

Samuel Wilson 202 Dec 31, 2022
FPE - Format Preserving Encryption with FF3 in Python

ff3 - Format Preserving Encryption in Python An implementation of the NIST approved FF3 and FF3-1 Format Preserving Encryption (FPE) algorithms in Pyt

Privacy Logistics 42 Dec 16, 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
Genetic Algorithm for Robby Robot based on Complexity a Guided Tour by Melanie Mitchell

Robby Robot Genetic Algorithm A Genetic Algorithm based Robby the Robot in Chapter 9 of Melanie Mitchell's book Complexity: A Guided Tour Description

Matthew 2 Dec 01, 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
Distributed Grid Descent: an algorithm for hyperparameter tuning guided by Bayesian inference, designed to run on multiple processes and potentially many machines with no central point of control

Distributed Grid Descent: an algorithm for hyperparameter tuning guided by Bayesian inference, designed to run on multiple processes and potentially many machines with no central point of control.

Martin 1 Jan 01, 2022
Algorithmic trading backtest and optimization examples using order book imbalances. (bitcoin, cryptocurrency, bitmex)

Algorithmic trading backtest and optimization examples using order book imbalances. (bitcoin, cryptocurrency, bitmex)

172 Dec 21, 2022
Repository for Comparison based sorting algorithms in python

Repository for Comparison based sorting algorithms in python. This was implemented for project one submission for ITCS 6114 Data Structures and Algorithms under the guidance of Dr. Dewan at the Unive

Devashri Khagesh Gadgil 1 Dec 20, 2021
Implementation of an ordered dithering algorithm used in computer graphics

Ordered Dithering Project In this project, we use an ordered dithering method to turn an RGB image, first to a gray scale image and then, turn the gra

1 Oct 26, 2021
Silver Trading Algorithm

Silver Trading Algorithm This project was done in the context of the Applied Algorithm Trading Course (FINM 35910) at the University of Chicago. Motiv

Laurent Lanteigne 1 Jan 29, 2022