Python Quant Stack
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Updated
Apr 22, 2025 - Jupyter Notebook
Python Quant Stack
Working and Implementation of various Machine learning classification algorithms using realtime dataset.
Kaggle Titanic dataset prediction with accuracy of around 75%
A machine learning driven system for predicting employee attrition, featuring statistical analysis, Flask API integration and Dockerized deployment.
Analyze Zomato restaurant data all the world and find the insights by using Python libaries and also visualize the dataset by using Power-bi
Predicting Average Starting Salary Based on College Characteristics
Applied Python, pandas, and scikit-learn to build a time-series sales forecasting model. Demonstrated skills in data preprocessing, feature engineering, linear regression, and data visualization.
Classification of person as underweight, Normal weight, overweight or obese using different ML Models.
Project made for demonstation defferent data cleaning methods.
An interactive web app for analyzing and comparing historical stock prices with dynamic visualizations. Fetches real-time stock data, provides trend analysis, and displays interactive charts like line graphs, box plots, and histograms. Features auto-refresh for live tracking and multi-stock comparisons.
An AI-based system for classifying Diabetic Retinopathy severity using GraphCNN and DenseNet121 on retinal images.
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