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nakshatra108/README.md
  • 👋 My name is Nakshatra Goswami and I am a Data Science and Engineering undergrad at IISER Bhopal
  • 👀 I am broadly interested in the domain of Quantitative Finance
  • 👯 I'm looking to collaborate on anything related to Quant Finance, Risk Management, Algo Trading, ML, DL or RL in Finance
  • 📫 How to reach me: Mail at nakshatra20@iiserb.ac.in or LinkedIn

Popular repositories Loading

  1. Diamond-Price-Prediction Diamond-Price-Prediction Public

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  2. Credit-Card-Fault-Detection Credit-Card-Fault-Detection Public

    Used Gaussian Naive Bayes Classifier and XG Boost Classifier for Credit Card Fault Detection

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  3. BankNifty-Momentum-Algorithmic-Trading BankNifty-Momentum-Algorithmic-Trading Public

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  4. Dynamic-Asset-Allocation-and-Crisis-Management-UsingDeep-Reinforcement-Learing Dynamic-Asset-Allocation-and-Crisis-Management-UsingDeep-Reinforcement-Learing Public

    In this project we have calculated the optimal asset allocation for each day (dynamically) with minimised risk and maximised profit using Deep Reinforcement Learning

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  5. Detection-of-Seasonal-Patterns-in-Time-Series-Data Detection-of-Seasonal-Patterns-in-Time-Series-Data Public

    Used First Difference Method for Stationarity of the Time Series and then Used ARIMA & SARIMA to predict the values and based on the prediction, checked if the series contains Seasonal Patterns in …

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  6. Principal-Component-Analysis Principal-Component-Analysis Public

    Used Principal Component Analysis on Iris Dataset and reduced it from 4-features to 3-features and captured 93% of variance

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