Venkatakrishnan Ramesh (Venkatakrishnan-Ramesh)

Venkatakrishnan-Ramesh

Geek Repo

Company:Senior in Artificial intelligence @Amrita Vishwa Vidyapeetam

Location:Chennai

Home Page:https://venkatakrishnanr.wordpress.com/

Twitter:@Cody_coder017

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Venkatakrishnan Ramesh's repositories

gaussian-splatting

Original reference implementation of "3D Gaussian Splatting for Real-Time Radiance Field Rendering"

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PIFu

This repository contains the code for the paper "PIFu: Pixel-Aligned Implicit Function for High-Resolution Clothed Human Digitization"

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nerf

Code release for NeRF (Neural Radiance Fields)

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gaussian-splatting-cuda

3D Gaussian Splatting, reimagined: Unleashing unmatched speed with C++ and CUDA from the ground up!

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google-research

Google Research

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Time-Series-Analysis-Of-COVID-19-In-India

The project is based on modelling the second wave of COVID-19 in India

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Breast-Cancer-Detection

This was the submission for IBM ZDatathon ( US Edition )

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OperationalML

The OperationalML App is a machine learning profiler application designed to help developers and data scientists optimize and improve the performance of their machine learning models. The app allows users to upload datasets, perform exploratory data analysis, run machine learning models, and download the best model for future use

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nano-demo-calculator-app

Demo app to test and get used to the demo envrionment

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MapReduce-Based-Text-Mining-and-Categorization-System

A robust and scalable MapReduce-Based Text Mining and Categorization System. Utilizing Hadoop and Python, this system enables efficient text mining and categorization of large datasets. Designed to extract valuable insights and classify text into predefined categories, it serves as a valuable tool for data analysts, researchers,

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codespaces-project-template-js

Codespaces template for creating and deploying your own React portfolio

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FairCVtest

FairCVtest: Testbed for Fair Automatic Recruitment and Multimodal Bias Analysis

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Portfolio

MLSA Test

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ML..Interview..Preparation

Preparation for Machine Learning Interview

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Whatify

Whatify is to address the issue of hate speech and negative comments on social media in India

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Movie-classifier

Example Streamlit app that you can fork to test out share.streamlit.io

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NLP-Engineer-Assignment

Objective: The goal of this assignment is to build a text classification model using the Hugging Face library to classify a dataset of text into one of multiple categories. Using a pre-trained model such as BERT or GPT-2 as a starting point and fine-tune it on the classification task.

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hyperreel

Code release for HyperReel: High-Fidelity 6-DoF Video with Ray-Conditioned Sampling

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