• Stars
    star
    1
  • Language
    JavaScript
  • Created over 3 years ago
  • Updated over 3 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

More Repositories

1

pass-the-butter

In this project we want to implement some search algorithms like: IDS, Bidirectional BFS and A*
Python
2
star
2

AI_Project_3

Python
1
star
3

mario

Java
1
star
4

K-NN_JS

JavaScript
1
star
5

Support-Vector-Machine_JS

JavaScript
1
star
6

Multiple_Linear_Regression_JS

JavaScript
1
star
7

DS-in-TS

TypeScript
1
star
8

Natours-Backend

HTML
1
star
9

LU-Factorization

Python
1
star
10

NLP_filter_toxic_comment

Toxic comments are detected and filtered using the naive Bayes classification
Python
1
star
11

Genetic-algorithm

Implementation of different stages of genetic algorithm
Python
1
star
12

react-project

JavaScript
1
star
13

os-final-project

C
1
star
14

Polynomial_Linear_Regression_JS

JavaScript
1
star
15

Simple_Linear_Regression_JS

JavaScript
1
star
16

Pig-Game

In this game, User Interface (UI) contains user/player that can do three things, they are as follows: Roll the dice, Hold and Reset
JavaScript
1
star
17

online-clothing-shop

JavaScript
1
star
18

Logistic_Regression_JS

JavaScript
1
star
19

Naive_Bayes_JS

JavaScript
1
star
20

Guess-My-Number

This simple project shows how to manipulate the DOM.
JavaScript
1
star
21

js-screenshot_node-version

JavaScript
1
star
22

Modal-Window

This mini project shows how to manipulate css classes:)
JavaScript
1
star
23

Random_Forest_Regression_JS

JavaScript
1
star
24

Natours-Design

CSS
1
star
25

monsters-rolodex

Familiarity with React basic concepts such as: class component, function component, state, props , ...
JavaScript
1
star
26

Cat_vs_No-Cat

The goal is to train a classifier that the input is an image represented by a feature vector, x, and predicts whether the corresponding label y is 1 or 0. In this case, whether this is a cat image (1) or a non-cat image (0).
Jupyter Notebook
1
star
27

Neural-networks-optimization-methods

Until now, I've always used Gradient Descent to update the parameters and minimize the cost. In this notebook, i will learn more advanced optimization methods that can speed up learning and perhaps even get me to a better final value for the cost function. Having a good optimization algorithm can be the difference between waiting days vs. just a few hours to get a good result.
Jupyter Notebook
1
star
28

2-layer-neural-network

It's time to build my first neural network, which will have a hidden layer. You will see a big difference between this model and the one i implemented using logistic regression(cat vs not-cat)
Jupyter Notebook
1
star
29

Deep_neural_network

I have previously trained a 2-layer Neural Network (with a single hidden layer). In this project, i will build a deep neural network, with as many layers as i want!
Jupyter Notebook
1
star