Advanced SDSS stellar classification — multi-class RF/SVM on photometric bands + redshift. >97% accuracy with colour-magnitude diagrams and per-class confidence output.
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Updated
Mar 15, 2026 - Python
Advanced SDSS stellar classification — multi-class RF/SVM on photometric bands + redshift. >97% accuracy with colour-magnitude diagrams and per-class confidence output.
This repository contains exploratory data analysis of stellar data and use unsupervised and supervised learning to classiify them into stars, quasars and galaxies.
ML system for classifying stars and predicting atmospheric parameters from spectroscopic survey data
Stellar Classification
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Machine-learning and deep-learning models for reconstructing Gamma-Ray Burst (GRB) light curves during my NAOJ Winter Research Internship (2024–25). Includes LSTM, Bi-LSTM, GRU, Transformer experiments, and classical statistical modeling pipelines.
Photometric stellar object classifier distinguishing Stars, Galaxies and Quasars from SDSS u/g/r/i/z magnitudes and redshift. Includes PCA feature projection and CMD plots.
Cosmic intelligence research lab — gravitational physics simulations, black hole lensing visualisation, spacetime curvature modelling, and AI-assisted astronomical data analysis and classification tools.
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