SAAD EDDYNE EL ABDARI's starred repositories

developer-roadmap

Interactive roadmaps, guides and other educational content to help developers grow in their careers.

Language:TypeScriptLicense:NOASSERTIONStargazers:281963Issues:0Issues:0

Our-E-School

A mobile app created using Flutter Framework for School management.

Language:DartLicense:MITStargazers:492Issues:0Issues:0

grokking_algorithms

Code for the book Grokking Algorithms (https://amzn.to/29rVyHf)

Language:JavaScriptLicense:NOASSERTIONStargazers:11031Issues:0Issues:0

ResearchProject

Traffic lights have and always will be necessary for the safety of the traffic on the road. However, the time cycles of these traffic lights are based on premeditated computations and not real time data. These scheduling methods can often be inefficient and therefore lead to traffic congestions. In this paper, we propose three different Smart Traffic Light Scheduling (STLS) algorithms that were tested on our Isolated Intersection Simulator (IIS) Java platform. IIS simulates real-life traffic flow on an atgrade junction with different traffic light scheduling algorithms. We integrate a heuristic to our proposed algorithms that takes into account, not only the density of the junctions like traditional schemes, but also the waiting time of the vehicles. In addition, it can also give the right of way to emergency vehicles that need immediate passage through the intersection. Throughout extensive simulations, IIS displays the efficiency of our different STLS algorithms in terms of managing the intersection and avoiding congestions. For instance, our simulations demonstrated a tremendous decrease in the average delay time when compared to regular traffic lights. In fact, cars on the intersection using our STLS algorithms performs 3 times better. On top of this, thanks to our algorithms, the average speed of the cars is nearly doubled and the amount of static cars on average are halved.

Language:JavaStargazers:3Issues:0Issues:0

TrafficLightNeuralNetwork

:traffic_light: An Artificial Neural Network based Traffic Light Controller for intersections. Computational Intelligence class final project.

Language:C#License:MITStargazers:21Issues:0Issues:0

TrafficControllerFuzzyLogic

The purpose of this project is to address the design and implementation of an intelligent traffic light system based on fuzzy logic technology using Python.

Language:PythonStargazers:19Issues:0Issues:0

Text-Rewrite-NLP

This lib uses two Natural Language Processing (SPACY & NLTK) as base to rewrite texts

Language:PythonLicense:MITStargazers:103Issues:0Issues:0

TrafficLightsControllers

Distributed Control Systems: Implementing 2 intersections with 2 controllers for the semaphores, with a model based on Petri Nets.

Language:JavaStargazers:2Issues:0Issues:0

public-pentesting-reports

A list of public penetration test reports published by several consulting firms and academic security groups.

Language:HTMLStargazers:8211Issues:0Issues:0
Language:CStargazers:8Issues:0Issues:0
Language:CStargazers:5Issues:0Issues:0
Language:CStargazers:42Issues:0Issues:0