Ved Prakash Dubey (VedPDubey)

VedPDubey

Geek Repo

Company:SRM University,KTR

Location:Kolkata, India

Home Page:https://www.linkedin.com/in/ved-prakash-dubey-swash/

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Ved Prakash Dubey's repositories

VoIP

Voice over IP web application built using Express, Socket.IO and Node JS along with an interactive front-end.

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Pollution-and-the-Pandemic

Full stack machine learning project, with data visualization and analysis of the air quality of India, the effect of the pandemic on pollution, and performing Time Series Forecasting on the data using Facebook Prophet to predict future values of the AQI. Interactive and engaging website designed and the model and backend deployed on a local host using Flask.

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RSNA-Pneumonia-Detection

Performing Pneumonia Detection and Segmentation from DICOM images. Data provided from the Kaggle competition RSNA Pneumonia Detection Challenge

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Eyes-in-the-Sky

An accessible and robust website made using ReactJS that will perform land cover segmentation and classification from satellites and drones at the click of a button powered by powerful deep learning models served by FastAPI. We have also showed how drastically land cover changes have occurred due to environmental calamities such as thunderstorms and floods.

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FastAPI-emotion

Multi-class emotion classification with a BERT model deployed using FastAPI

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ML_Challenge_NRSC

Machine Learning based feature extraction of Electrical Substations from Satellite data using Open-Source tools. Achieved test IoU of 84% using our model for semantic segmentation and a third rank on the leaderboard.

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Cainvas-Internship-Notebooks

Repository of notebooks of use-cases I worked on during my Cainvas internship at AI Technology and Systems.

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COVID-19-and-India

An analytical and interactive approach to showcase India's effort against the ongoing COVID19 pandemic. Performed analysis of existing data using the ELK stack, keeps the user updated on live statistics, and keeps the user engaged through an interactive chatbot made with RASA which also provides them with live location based COVID19 statistics.

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Heart-Disease-Classifier-using-Machine-Learning

Built a binary heart disease classifier using machine learning techniques.

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intro-to-dl

Resources for "Introduction to Deep Learning" course.

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MenSTAT

The wellness app

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NSAC-Skywalkers

Easy Space Data Access - Making space data more accessible for people ranging from space enthusiasts to astronomers and researchers.

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Optical-Character-Recognition

Converting any image with printed text into a downloadable text file. All with the help of Python and deployed with Streamlit.

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Portfolio-Website-using-Heroku-and-Netlify

Building a portfolio website and deploying it.

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Predicting-Red-Shift-using-Regression

Notebook to highlight how machine learning can be used on astronomical data

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Study-of-Loss-Functions-for-Semantic-Segmentation

In this poster, I have summarized some of the well-known loss functions widely used for Semantic Segmentation and explained where their usage can help in fast and better convergence of a model. The dataset used is a combination of the NLM Montgomery County and the Shenzhen set - Chest X-ray Database upon which we have to perform the task of binary semantic segmentation.

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XGBoost-classifier-for-predicting-insurance-holders-feedback

Jupyter notebook for Jobathon 2021's problem statement

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