Closed abhisheks008 closed 2 years ago
Hello @abhisheks008,
Thank you for opening an issue. :octocat:
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/ assign Name: Anindyadeep Batch 1
Full name : Aditya Nikhil Batch Number: 2 GitHub Profile Link : github.com/adityanikhil Which type of Contribution you want to make : Documentation (Coding in .ipynb file, show the implementation)
Issue assigned @Anindyadeep. Go ahead 🚀
@Anindyadeep Update on this?
@Anindyadeep Update on this?
Sorry for late update. All done ... just some quick revision is left ... + some pictures .. otherwise, I completed yesteryear. I guess you know the heavy downpour in West Bengal... So there is power cut since yesterday. I am going for PR today.
Description
📌 Issues for Week 2
Welcome to 'ML' Team, good to see you here
:arrow_forward: This issue will helps readers in acquiring all the knowledge that one needs to know about ----
Implement Gradient Descent without using any standard ML library like scikit-learn or more.
:red_circle: To get assigned to this issue, add your Batch Numbers mentioned in the spreadsheet of "Machine Learning", the approach one would follow and choice you prefer (Documentation, Audio, Video). You can go with all three or any number of options you're interested to work on.
✔️ Domain : Machine Learning
:red_circle::yellow_circle: Points to Note :
The issues will be assigned on a first come first serve basis, 1 Issue == 1 PR.
"Issue Title" and "PR Title should be the same. Include issue number along with it.
Changes should be made inside the
Machine Learning/Machine_Learning/Supervised_Machine_Learning
Branch.Follow Contributing Guidelines & Code of Conduct before start Contributing.
This issue is only for 'GWOC' contributors of 'Machine Learning' domain.
Dataset to be used : IRIS DATASET. (No other datasets will be entertained.)
:white_check_mark: To be Mentioned while taking the issue :
Happy Contributing 🚀
All the best. Enjoy your open source journey ahead. 😎
Domain
Machine Learning
Type of Contribution
Documentation
Code of Conduct