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System-Design-Cheatsheet
System Design Studying can be daunting. This gives you a table to study different problems, understand what components they require, their pros and cons, and how to deal with mitigations.JIRA-Similar-Issue-Finder-App
Classical NLP Algorithms based JIRA Bot that can train a machine learning model and comment related JIRA IDs on a list of JIRA issues.LLM_training_strategies
Index of useful details for training large language modelsCaltech-101-Object-Classification
Multiple approaches tried for Object classification on Caltech 101 DatasetComputer-Architecture-Labs
Works of all the labs of Computer Architecture. Contains single-cycle, and pipelined ARM architecture verilog code.Gre-Words-Twitter-Bot
This is a simple twitter bot which tweets GRE words periodically.Quora-Question-Pairs
An attempt at https://www.kaggle.com/c/quora-question-pairsCombining-ILP-and-Maximum-Entropy
This repo contains my undergraduate thesis work where I tried to combine ILP with MaxEnt.Kaggle-Problems
This houses all the competitions, and datasets of Kaggle on which I worked on.QuizWizard
Takes a quiz of randomly chosen 'x' questions from the bank of questions. Stores database of users and their details who gave it.all-nlp-stuff
Here lies my practice, my experiments and learnings from all of NLPbhavuldotcom-old-design
An initial attempt at front-end design of my website.automated-google-auth-vpn
This exists because I got lazy of the openVPN UI which keeps on asking me about the Two Factor Auth credentials.leetcode_scraper
This just scrapes leetcode problem sets.AI-Learnings-and-Code
This repo contains my notes and learnings, as well as the code that goes with it. All the things are related to AI.awesome-ml
This repository hopes to be one-stop shop for you to make the best choices when you work on a new ML problem besides being a good resource for learning (almost) all practical aspects of ML.Cluster-Labeling-using-wikipedia
Cluster labelling was done by using the power of wikipedia searchLove Open Source and this site? Check out how you can help us