Interactive platform for exoplanet detection using the astronomical transit method and artificial intelligence.
In recent years, data collected by several space missions dedicated to the search for exoplanets have enabled the discovery of thousands of new planets outside our solar system. However, most of these exoplanets have been identified manually. Thanks to advances in artificial intelligence and machine learning (AI/ML), it is now possible to automatically analyze large volumes of data obtained by these missions to identify exoplanets more efficiently.
For the development of this platform, we are using a combination of modern languages and technologies: JavaScript, Python, HTML, CSS, Node.js, Pandas, Numpy, and Amazon Bedrock. These tools allow us to create a robust and interactive platform for exoplanet detection, integrating artificial intelligence and citizen science.
Develop an artificial intelligence model capable of detecting exoplanets using the transit method, utilizing open data from the NASA Exoplanet Archive. The system must analyze light curves (stellar brightness variations over time) to identify patterns that indicate the possible presence of a planet orbiting a star.
How we detect planets around other stars
We monitor the brightness of thousands of stars continuously
We identify periodic drops in stellar brightness
Intelligent algorithms distinguish planets from false positives
Developed for the NASA Space Apps Challenge 2025
Coordination and Vision
User Experience
AI Algorithms