EhsanGharibNezhad/TelescopeML
Deep Convolutional Neural Networks and Machine Learning Models for Analyzing Stellar and Exoplanetary Telescope Spectra
Organizes the spectral analysis pipeline into four specialized modules: DataMaster handles dataset preprocessing and feature engineering, DeepTrainer builds and trains CNNs using TensorFlow with hyperparameter tuning, Predictor deploys models for atmospheric parameter inference, and StatVisAnalyzer performs statistical validation including chi-square tests and confidence intervals. The package integrates with TensorFlow for model training and provides pre-trained CNN models alongside tutorials for immediate deployment on observational data.
No commits in the last 6 months. Available on PyPI.
Stars
14
Forks
18
Language
Python
License
GPL-3.0
Category
Last pushed
Oct 23, 2024
Monthly downloads
38
Commits (30d)
0
Dependencies
13
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