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This project focuses on predicting gold prices using historical data and machine learning techniques. It demonstrates a complete data science workflow, including data preprocessing, exploratory data analysis, feature engineering, model training, evaluation, and result visualization using Python.
A Python project that forecasts gold prices using machine learning and deep learning techniques, leveraging historical data and economic indicators for accurate predictions. If you need further modifications, just let me know!
Developed Random-Forest-based machine learning model to precisely predict gold prices, achieving 85% accuracy in testing conditions. Integrated large datasets to generate forecasts for near-term price fluctuations.
Nostradamus is a powerful and adaptable project designed to predict future outcomes across various domains. Its current focus is on forecasting the gold spot price for a given date, but it is built as a scalable foundation for expanding into a wide range of predictive applications.
It a Gold Price Impact and LTV Risk Analysis dashboard. I built it to understand how companies like Rupeek or Muthoot assess lending risk. The project involves 45 years of gold price data, forecasting future prices, simulating a loan portfolio of 500 customers, and calculating real-time LTV
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Gold price prediction web app using Random Forest and XGBoost, with macroeconomic features, PSI drift monitoring, and MLflow experiment tracking via DagsHub.
Gold price prediction using Linear Regression and historical Yahoo Finance data (2021-2025). Exploring the Efficient Market Hypothesis through Python and Machine Learning.
Developed a Streamlit-based web app featuring regression prediction projects for House Price, Car Price, Gold Price, Medical Insurance Cost, Big Mart Sales, and Calories Burnt using various machine learning models.
A Machine Learning project that uses Linear Regression to analyze historical gold prices and predict future market trends with data visualization and performance evaluation.