Shagun Sharma's repositories

Global-Structural-Earthquake-Damage-Prediction

Using deep learning techniques like 1D and 2D CNNs, LSTM to detect damage in a structure with hinges/joints after an earthquake.

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O.F.D.M.-Transceiver-using-MATLAB

O.F.D.M. Transceiver framework simulation using Matlab

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Netflix---Data-Exploration-and-Visualization

We are interested in increasing the revenue of Netflix, our main objective is to figure out which all shows and movies performed the best.

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Predicting-employees-under-stress-for-pre-emptive-remediation

Spotting early signs of stress among employees to help employers identify and address the scenario, and hence help in reducing its impact on the employee and on the organization.

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awesome-osint

:scream: A curated list of amazingly awesome OSINT

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aws-ai-intelligent-document-processing

Intelligent Document Processing with AWS AI Services and generative AI

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chakra-ui

⚡️ Simple, Modular & Accessible UI Components for your React Applications

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CMS-Fraud-Detection

Fraud detection algorithm using Autoencoders and Stacked Autoencoders to detect fraudulent physicians in CMS Part B claims data

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covid19-vaccine-tracker

Covid-19 Vaccines Near me

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credit-card-fraud-detection-using-logistic-regression

Classifying whether the credit card transaction is fraudulent or not using Logistic Regression

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data-science-interviews

Data science interview questions and answers

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Deep_Learning_Class_Manit

For all the class work in Deep Learning Class By Prof. Vijay Bhaskar Semwal

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Detectx-Yolo-V3

Yolo-V3 implementation from scratch in pytorch

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drawio-desktop

Official electron build of draw.io

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EasyOCR

Easy OCR demo + Invoice for Youtube

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Keras-CNN-multi-model-ensemble-with-voting

Keras CNN multi model (Custom + LeNet-5) ensemble with voting on MNIST dataset

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Keras_LSTM_Diagram

Understanding Keras Recurrent Nets' structure and data flow (mainly LSTM) in a single diagram.

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Loan-prediction-using-Machine-Learning-and-Python

To design a predictive model using xgboost and voting ensembling techniques and extract insights from the data using pandas, seaborn and matplotlib

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modelfusion

Build multimodal AI applications, chatbots, and agents with JavaScript and TypeScript.

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OCR-bill-detection

OCR bill detection is a python program that can detect the type of your household bills

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PaddleSpeech

Easy-to-use Speech Toolkit including SOTA/Streaming ASR with punctuation, influential TTS with text frontend, Speaker Verification System, End-to-End Speech Translation and Keyword Spotting. Won NAACL2022 Best Demo Award.

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PET-APPIAN

APPIAN is an open-source automated software pipeline for analyzing PET images in conjunction with MRI. The goal of APPIAN is to make PET tracer kinetic data analysis easy for users with moderate computing skills and to facilitate reproducible research.

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Predicting-Employee-under-Stress

With the ongoing COVID-19 pandemic, business and organizations have adapted to unconventional and different working styles and patterns, like working from home, working with limited employees in the office premise, etc. With the new normal here to stay for the recent future, employees have also adapted to different working environment and routines, which has also resulted in fatigue and stress for many, as they adapt to the new normal and adjust their personal and professional lives. Employees may feel stressed when they are unable to cope with the prolonged uncertainty and pressure. Other factors leading to stress may include feeling isolated while working remotely, lower wages or salaries, lack of opportunity for advancement or growth, unmanageable workload, extended working hours, unsatisfactory work environment, lack of connect with the team, lack of ability and skill to cope with the work apart from the fear of catching the virus. Spotting early signs of stress among employees will help employers identify and address the scenario, and hence help in reducing its impact on the employee and on the organization.

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text-to-handwriting

So your teacher asked you to upload written assignments? Hate writing assigments? This tool will help you convert your text to handwriting xD

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University-of-California-San-Diego-Big-Data-Specialization

Repository for the Big Data Specialization from University of California San Diego on Coursera

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