PLANAR: bias-aware unsupervised morphology discovery for protoplanetary disk observations (EXXA pipeline).
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Updated
Mar 20, 2026 - Jupyter Notebook
PLANAR: bias-aware unsupervised morphology discovery for protoplanetary disk observations (EXXA pipeline).
An automated exoplanet transit data pipeline built in Python. Locally filters raw Kepler/TESS telescope telemetry using adaptive flattening, discovers exact orbital periods via BLS sweeps, and derives precision physical geometries, signal SNR, and morphology models.
ML pipeline for detecting and characterizing exoplanets from Kepler/TESS light curves
Learning guide for exoplanet detection using machine learning on TESS data
Federation of TinyML for Space Science - Democratizing exoplanet discovery. Process NASA data, detect transits, and discover new worlds.
We pointed a laptop at NASA's TESS data and found 197 exoplanet transit candidates. Rust-powered BLS detection, 10-50x faster than Python.
🌟 AI-powered exoplanet detection system using NASA data for Space Apps 2025 hackathon. Features BLS/TLS algorithms, machine learning classification, and real-time analysis pipeline. | 使用 NASA 資料的 AI 系外行星偵測系統,專為 2025 太空應用程式挑戰賽開發。
VESPER- Validation Engine for Stellar Photometric Evidence and Recovery. Evidence-first exoplanet detection pipeline for computationally efficient transit discovery using TESS and Kepler light curves.
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