• Stars
    star
    3
  • Rank 3,963,521 (Top 79 %)
  • Language
    Jupyter Notebook
  • 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

Ridge and Lasso Regression - A US-based housing company named Surprise Housing has decided to enter the Australian market. The company uses data analytics to purchase houses at a price below their actual values and flip them on at a higher price. For the same purpose, the company has collected a data set from the sale of houses in Australia.

More Repositories

1

Lava-Run-Game

Lava Run is a 2D Phaser Framework Game made using HTML 5, CSS, JAVASCRIPT & NODE.JS. I later on ported this game into a native android app using PhoneGap (Cordova).
JavaScript
12
star
2

weather-app

Forecast- Weather App is a web app made using HTML Canvas, JS,CSS, PHP and Jquery. The app uses OpenWeatherMap API, the link to the same is given in Readme.md. I later on ported this app to android using Apache Cordova.
JavaScript
4
star
3

Restaurant-Chatbot

Restaurant chatbot developed using RASA NLU and python 3.
Python
3
star
4

2048

2048 is a game developed using HTML 5, CSS and JS.
CSS
2
star
5

Traffic-Escape

Traffic Escape is a web app made using Python 3 and Django Framework. It runs on Google Maps API.
Python
1
star
6

To-Do-App

Todoapp is a to do list web app made using html, css and js. I later on ported the web app into a native android using Apache Cordova. Can check out the apk to figure out how exactly Cordova ports HTML5 to android.
JavaScript
1
star
7

javascript-calculator

Javascript Calculator is a web app capable of doing basic arithematic operations. There are certain animations used wherever there is a need for the use of any operator and for basic numbers. All the animations are carried out with HTML canvas and Jquery.
CSS
1
star
8

Image-Caption-Generator-Flickr8k

A deep learning model to generate captions for images. Flickr 8K dataset is used for training of this model. This project uses a CNN model for feature extraction. These features are converted to image captions by RNN.
Python
1
star