- 🔭 I’m currently working in UniQin.ai and Building an application for E-commerce sellers that is powered by Machine Learning and data analytics and provides Data-Driven predictions and analytics
- I love to code and that is my profession too :) I have single-handedly written data pipelines that pull millions of data points each day efficiently, which is error-free, efficient, scalable, and super cheap while consuming AWS resources!
- 🌱 I’m proficient in Cloud and MLOPs, microservices, and deployments. I am eager to learn every day and I adapt quickly with new tech environment
- I’m looking to collaborate on Building a Python Library
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uniQin.ai
- Bangalore
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data-engineering-hackathon
data-engineering-hackathon PublicBeing a part of the data engineering team, are expected to “Develop input features” for the efficient marketing model given the Visitor log data and User Data. As a Data Engineer Creating ETL Pipel…
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Imbalanced-classification
Imbalanced-classification PublicAnalytics Vidhya hackathon problem. This is a classic imbalanced classification problem where we have to predict credit card lead. Resample and threshold shifting strategy used to increase the accu…
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great-indian-hiring-hackathon
great-indian-hiring-hackathon PublicThis is hiring hackathon. Retail price prediction challenge by machinehack.com. Challenge to come up with an algorithm to predict the price of retail items belonging to different categories.
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Amazon-bussiness-DA
Amazon-bussiness-DA PublicThis is part of hiring process for Amazon Business Analyst. The data provided here has two target variable - BiasInfluentialFactor and FitmentPercent. The prediction should be bias free as per requ…
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Predict-the-churn
Predict-the-churn PublicPredict the churn score for a website based on the features provided in the dataset. Ranked 70/4000 in Hackerearth
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