SK Reddy (skreddy99)

skreddy99

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Company:Hexagon

Location:www.Hexagon.com

Home Page:https://www.linkedin.com/in/skreddy99/

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SK Reddy's repositories

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Natural_Language_processing_using_Deep_Neural_Networks

Sentiment analysis on a large dataset

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NLP-Question-and-Answering-using-Mahabharatha

The text dataset used to create Question-Answer models in NLP.

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Ontime_Flight_TensorFlow

On-time flight problem solved using TensorFlow

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Predictive_Maintenance

This repo implements a few classical Machine Learning techniques to demonstrate predictive modeling.

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Sentiment_Analyses_using_Deep_Neural_Networks

Sentiment analyses of small dataset using deep networks

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Autoencoder

Autoencoder

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Image-Captioning-using-Neural-Networks

A neural network based implemenantion of Image Captioning based on the paper "Show, Attend and Tell: Neural Image Caption Generation with Visual Attention"

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Recommentation-Systems

This is a recommendation system that does Matrix Factorization and recommends a product. I had worked on this in the past using Theano but released in 2019.

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Time-Series-based-Prediction

Times series based implementation using Keras to predict power consumption and predict load.

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Credit-Card-Fraud-Detection-using-NNs

This is an experimental project to develop a NN based solution to detect fraud in Credit Card transactions.

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MultiClass_Classification

This is a solution to create multi models using classical machine learning and a Deep Learning model to classify objects to multiple classes. This solution could be used in retail (to classify custmers or retail items being sold), Financial (to classify customers, identify financial products for right customers, etc.). This could also be used in Healthcare (to classify treatment plans, medicines, etc.). In addition, this could be used in Industry 4.0 use cases.

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temp

NMT

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