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ML-Hub ๐Ÿ’ป

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A collection of several Machine learning projects from beginner to intermediate level.


Steps for contribution โš™๏ธ

1) Fork the repository


Fork


2)Clone your forked repository using terminal or gitbash.


clone

$ git clone https://github.com/<your-github-username>/ML-Hub.git
$ cd ML-Hub

3) Make changes to the cloned repository

Make changes to the project (by adding the assigned project).


make changes to project part 1


image


4) Add, Commit and Push


Stage your changes using:

$ git add .


Commit your changes using:

$ git commit -m "add any comment"


Push the changes to the forked repository using:

$ git push

5)From the cloned repository in your Github account, make a pull request


Resources ๐Ÿ“–


How should the Project look like? ๐Ÿค”

  • Create a new Project Folder with the name same as the Project (such as, Breast Cancer Prediction)

  • Inside this Project Folder there has to be three sub-folders or files-

    1 ) Dataset Folder - This folder contains the dataset that is provided for analysis and model building.

    2 ) Model Folder - This folder contains the project file. Make sure that the project file is formatted properly and is descriptive.

    3 ) README.md File - This file contains the idea and process of model building. It contains concise and lucid explanation of libraries and tools used, algorithms applied and the reasons to apply them. This file is optional if the project file already contains these contents but it's always preferred to include it.

Project List ๐Ÿ“

Serial No. Project Name Contributor Dataset Link
01 Breast Cancer Prediction Dekode1859 Click Here
02 Car Price prediction Click Here
03 Brain Stroke prediction AAnirudh07 Click Here
04 Law School Admission dataset Click Here
05 Data Science Job Salaries Click Here
06 BigMart Sales Analysis and Prediction Click Here
07 Estimate the weight of Fishes Click Here
08 Loan Prediction Click Here
09 Flight Fare Prediction Click Here
10 White Wine Quality Maulana Akbar Dwijaya Click Here
11 Student Performance Analysis Click Here
12 Individual Medical Cost Prediction ayushthe1 Click Here
13 Credit Card Fraud Detection Click Here
14 Air Quality Prediction Click Here
15 Heart Disease Prediction Click Here
16 Book Genre Prediction Click Here
17 Food Delivery Time Click Here
18 Airline Passenger Satisfaction Click Here
19 Water Quality Prediction Click Here
20 Smoke Detection Prediction Click Here

Our Contributors !! โœจ

Thanks to these wonderful people: โœจ

Contributors


Connect with us

ml-hub's People

Contributors

aanirudh07 avatar aka-vm avatar ashishkingdom avatar ayushthe1 avatar dekode1859 avatar divik2510 avatar maulanaakbardj avatar srivaspankhuri avatar

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