Nabat is building the operating system for nature.
An end-to end AI platform to restore and manage the planet's most critical ecosystems at scale.
Nature is the planet's most critical infrastructure. Yet it has no standard operating system. Nabat is building it.
Coastal and dryland ecosystems are massive carbon sinks,
protect inhabited coastlines, and underpin critical food systems - yet are
dangerously undermanaged & underserved today.
Nabat changes that.
Coastal
7M ha of mangrove ecosystems are at risk of collapse by 2050. That is 50% globally.
Arid
1B ha of dry lands are degraded. That is 10-20% globally.
NabatOS
A complete AI-powered ecosystem management platform, that supports the full journey of government environmental agencies, corporate ESGs, project developers, and nature investors.
From accurate data to scalable action, to verified outcomes.
NabatOS pipeline
Manages ecosystems from data capture to verified outcomes.
Map
Multi-sensor acquisition: survey drones, satellites, field sensors, LiDAR, SAR, optical. mm-resolution aerial and marine coverage. Data ingested directly into NabatOS for Ether-powered analysis.
Assess
Ether-powered habitat intelligence: land cover classification, species identification, canopy structure, biomass estimation, and health scoring — across the full site at scale.
Plan
AI-led site suitability scoring: restoration zone mapping integrating hydrology, salinity gradients, sediment dynamics, and species-habitat fit. Interventions tested against multiple failure conditions.
Restore
Autonomous seeding mission planning and execution: AI-optimized UAV flight paths, precision dispersal by site zone. Seed and sapling detection. Ground-truth integration for emergence confirmation.
Monitor
Continuous satellite and drone-based growth tracking: risk alerts and health change detection in near real-time. Stress signals detected before they become visible to the human eye.
Verify
Data-lineage-backed outcome verification: carbon sequestration estimates, biodiversity recovery metrics, audit-ready reporting for carbon markets and compliance.
Ether
Nabat's self-supervised geospatial AI foundation model — trained on petabytes of coastal and arid habitat data at mm-level resolution, across millions of hectares.
It drives every analysis in NabatOS: from land cover classification and site suitability scoring to biomass estimation, carbon sequestration modeling, and real-time health change detection. Purpose-built for the ecosystems where no off-the-shelf model works.
Millions ha
coverage
Petabytes
training data
mm-level
resolution
Field-validated
by in-house ecologists
Task-specific AI models
See NabatOS in action
Nabat Restoration
Nabat expert services deliver real-world outcomes – combining science, technology, and community engagement.
Nature program
Design · Planning · Delivery · Monitoring
High-precision data capture
mm resolution · Aerial & marine · Optical, LiDar, SAR
Autonomous aerial seeding
large scale · Science-led
Ecology consulting
Methodology · Ground truthing
Community engagement
Knowledge transfer · Capacity building
Ready to design your program?
Solutions
Our solutions support the full journey of government environmental agencies, corporate ESGs, project developers, and nature investors. From accurate data to scalable action, to verified outcomes.
Case studies
Insights & research
Restoration Needs an Operating System
Ecosystem restoration is often framed through science or technology alone. In practice success depends on how well ecological knowledge, advanced tools , and field experience work together in real-world conditions.
How Science, Technology, and Field Experience Shape Ecosystem Restoration
Ecosystem restoration is often framed through science or technology alone. In practice success depends on how well ecological knowledge, advanced tools , and field experience work together in real-world conditions.
Detecting mangrove seedlings from UAV imagery using deep learning for restoration monitoring
We’re pleased to share a newly published peer-reviewed study led by our colleague Yuri Shendryk, co-authored with Maria P. Vilas, exploring how ultra-high-resolution UAV imagery and deep learning can be used to detect mangrove seedlings for restoration monitoring.