Skip to content

Open-source AI platform for planetary health monitoring using Satellite Data and LLMs

Notifications You must be signed in to change notification settings

AviJxn/GaiaAir-Platform

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

7 Commits
 
 
 
 

Repository files navigation

GaiaAir: AI for Planetary Health

License: MIT Status Grant

"Treating the Earth like a living organism. Monitoring, diagnosing, and healing it with AI."

Overview

GaiaAir is an open-science initiative designed to bridge the gap between complex satellite telemetry and human-actionable insights. By combining Satellite Imagery Analysis with Cohere's Multilingual Language Models, we aim to create an "Earth Doctor" that not only detects environmental anomalies (droughts, pollution, crop stress) but explains them to local communities in their native languages.

Architecture

The system operates on a "Neural-Symbolic" pipeline:

  1. Sensory Layer (Vision): Ingests data from Sentinel-2, Landsat, and ground IoT sensors.
  2. Reasoning Layer (Cohere Command R+): Interprets structured data to generate advisory reports.
  3. Retrieval Layer (Cohere Embed + Rerank): Contextualizes alerts using a vector database of UN Climate Reports and agricultural best practices.

Key Features (Planned)

  • FarmVital: Multilingual SMS/WhatsApp advisory for farmers based on micro-climate data.
  • GaiaSense: Real-time anomaly detection for climate events.
  • RAG-based Policy Engine: Searchable climate intelligence for policymakers.

Tech Stack

  • AI/LLM: Cohere Command R+, Cohere Embed v3.0, LangChain.
  • Data: Streamlit (Dashboard), Python, GeoPandas.
  • Infrastructure: Google Earth Engine API.

Contributing

This project is currently in the Research Phase. We welcome contributions from data scientists and climate researchers. Please open an issue to discuss potential collaborations.


Built with ❤️ for the Planet.

About

Open-source AI platform for planetary health monitoring using Satellite Data and LLMs

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published