Yash Bhirud (theheisenberg10)

theheisenberg10

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Location:United States

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Yash Bhirud's repositories

Customer-Segmentation-For-Airline

Optimized firm’s loyalty program by analyzing flyer patterns and providing personalized travel packages using K-prototype clustering and Principal Component Analysis

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Food-Delivery-System

Basically connects foodies to various entities of restaurant delivery using restful web services and also introduces analysis based functionalities to restaurant management .

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Impact-Analysis-for-Second-Harvest-Heartland

Understanding factors affecting donations from media channels for Non-Profit Organization

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Marketing-Mix-for-Leading-Hospitality-Company

Sending personalized marketing offers (called free play in a casino setting) to players by observing data on their gaming behavior and demographic information

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Pet-Pawpularity-Score-Prediction-CNNs-

Enhanced adoption rate by identifying parts of pet photo that contribute most towards its cuteness using transfer learning techniques in Convolution neural networks and Attention Mechanism, Transformers

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Root-Cause-Analysis-for-Testing-Service-Provider-

Root Cause analysis to check for disparity in testing performance across different jurisdictions across US

Facebook-Post-Sentiment-Analysis-NLP-using-RNNs

Predicting sentiment of Facebook posts (Appreciation, Complaint, or Feedback) using RNNs

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Machine-Learning-Linear-Regression-

Prediction of profits for a food truck using Linear Regression algorithm in Matlab programming language. Also using Gradient Descent to optimize parameters and Data visualization.

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Machine-Learning-Logistic-Regression-

Predicting whether a student passes or not in an exam based on historical experience of marks in subjects by building a classification model with Logistic Regression .

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