• Stars
    star
    1
  • Language
    JavaScript
  • Created over 8 years ago
  • Updated over 7 years ago

Reviews

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

Repository Details

Epidemiology modeling (FMI project)

More Repositories

1

WebGLEditor

Webgl editor for the web
JavaScript
6
star
2

fmi-fp-2020-21

Functional Programming Practicum at FMI 2020-21
Haskell
5
star
3

algo-playground

Playground for data structures and algorithms
Jupyter Notebook
3
star
4

forward-model

Master's thesis project on learning stateful simulations with deep differentiable models. The focus is to train a neural network to simulate a game (PONG) end-to-end.
Python
3
star
5

PyLearn

Python library implementing machine learning algorithms
Python
2
star
6

testEnv.js

JS Unit testing library
JavaScript
2
star
7

cuda-mandelbulb

Rendering the mandelbulb fractal with cuda.
Cuda
2
star
8

hivemon

IOT project for monitoring bee hives
JavaScript
2
star
9

agar

Agar.io clone with web sockets
JavaScript
2
star
10

PantaRay

C++ Raytracer
C++
2
star
11

fmi-ai-2122

AI for Bachelors of Computer Science - Materials and Exercises
Jupyter Notebook
1
star
12

ai

This repository contains implementations of algorithms used for solving various ai related problems
Python
1
star
13

differentiable-simulation

Collection of notes and notebooks for my masters project. You can find newer and more organized repo here - https://github.com/ichko/forward-model
Jupyter Notebook
1
star
14

webapp-boilerplate

Express api and vuejs front-end in separate docker containers 🚧
JavaScript
1
star
15

bind.js

JS lib for bidirectional data binding written in ES6 🚧
JavaScript
1
star
16

ml-playground

Machine learning playground
Jupyter Notebook
1
star
17

lagrange.js

Lagrange interpolating polynomial example (ES6)
JavaScript
1
star
18

nand-to-tetris

This repository contains HWs and material from the nand to tetris course
Assembly
1
star
19

inverted-auto-encoder

Generating visual language for exchanging information between neural networks. The procedure described in the blog post generates 2D structured images that try to preserve the information two neural networks are trying to communicate under differentiable noise.
Jupyter Notebook
1
star