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Everyone Needs to Eat.

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Categories

  • Fomentar la resiliencia de los pequeños agricultores
  • Lograr la seguridad alimentaria en todo el país

Description

Agentic Earth Observation for Smallholder Agroecology (AEOSA)


1. The Challenge:  

The core problem of geospatial analysis is not a lack of data; it is an process and understanding bottleneck. Copernicus generates terabytes of valuable Earth Observation (EO) data every day, but this is out of reach for most smallholder farmers and rural communitiess. They fundamentally lack the data science skills, the high performance compute infrastructure, and connectivity to continuously monitor, process, and act on it. Given the "hidden" value of this data, we aim to unlock the inherent potential to enable resilient food polyculture systems that reduce dependencies on costly and toxic agrochemicals.


2. The Global South Solution 

Autonomous Multi-Agent Orchestration (AMO) has the potential to completely abstract the complexity of Earth Observation datasets. We use this prototype AMO framework, to build an autonomous & dynamic pipeline that monitors Copernicus data 24/7. When a climate anomaly is detected from space using traditional means, our AMO system automatically process the imagery, runs spatial analyses in containerized QGIS instances, generating localized early-warning alerts for smallholders. The type of alerts generated is identified through a combination of real time socio-economic research, cutting edge regenerative farming methodologies, other diverse data sources such as our advanced portable microclimate laboratories, plus learned user information & feedback to make the end product hyperlocal to smallholder farmers.


3. The Copernicus-Driven Workflow 

Our proposed architecture in this initial iteration relies on the fusion of two ESA satellite constellations, and a digital twin of our portable microclimate laboratory (PML):

  1. Step 1: Continuous EO Ingestion (Sentinel 1 & 2 & 3) is performed by what we call "Watcher Agent Systems" (WAS) that continuously pull from the Copernicus Data Space platform. They pull Sentinel-2 optical imagery to monitor canopy health and Sentinel-1 Synthetic Aperture Radar (SAR) data to assess surface soil moisture, regardless of cloud cover, with Sentinel-3 multi-instrument overlays to reinforce the world models. In future iterations we plan to include other satellite constellations including high temporal and spatial resolution options. 
  2. Step 2: When new data arrives, another set of "Analysis Agents Systems" (AAS) automatically calculates key regional stress indicators in QGIS using the backend functions dynamically programmed in python and BASH scripts, according to the most up to date research and methodologies. They compute a set of relevant indexes such as for example the NDWI or LAI from Sentinel-2 to detect drought stress before it becomes visible to the farmer. If say, the NDWI drops below a critical threshold, the agent triggers the relevant PyQGIS script which autonomously overlays the Copernicus hazard maps with local smallholder plot macroeconomic and societal data to result in a triple perspective analysis. 
  3. Step 3: To ensure our world models are accurate, we input our advanced sensor nodes (PML) to feed ground-truth multimodal data back into the AMO framework, to then, for example, automatically calibrate Sentinel's radar backscatter algorithms for specific local subsoil types, input bioacoustic data into pest early-warning alerts, or better understand the interior microclimates of multi-level agroforestry systems where satellites can't sense into. 
  4. Step 4: The system outputs simple, actionable SMS alerts to the affected farmers (e.g., "High drought risk detected via satellite in your sector. Shift to efficient irrigation.") with optional hyperlocal audiovisual support material (podcasts, explainer videos, infographs, etc) to cross barriers of understanding and increase absorbtion of sometimes very complex data. For more technical users, the AMO framework can send QGIS-generated resource deployment maps to local stakeholders with their respective executive briefs and interactive dashboards for immediate understanding.

This is in many cases standard practice for most current platforms, paid and free, but regardless still out of reach economically and technically for most poor uneducated farmers who barely often know how to read and write. We effectively automate and abstract away the GIS engineer, therefore democratizing access and understanding.


Use Case 1: Pest Early Detection

The traditional approach to pest management in the Global South is reactive, where for example, chlorophyll levels in plants drop significantly when attacked by pests (ie borers or leaf folders) or diseases (ie rice blast). This physiological stress occurs days or weeks before human eyes can detect physical changes in the canopy. Farmers often spray pesticides only after crop damage is visible which commonly means the yield has already been compromised. Our goal is to shift this paradigm to a proactive model by leveraging Sentinel-2 multispectral imagery.

Use Case 2: Smart Polyculture Recommendations

Conventional monoculture farming in the globally heavily degrades ssoilover time and requires ever increasing amounts of synthetic fertilizer inputs. Transitioning to polyculture (ie intercropping or agroforestry) is a proven climate adaptation strategy that enhances overall productivity and resource use efficiencymon multiple levels. However, today's smallholders (and moreso tomorrow's!) often lack the data and knowledge to know which crops to mix, where to plant them, when to plant, and how to manage complex organic systems. For example, integrating legumes (like beans or lablab) with cereals (like maize) and natural cover crops (like squash), commonly referred to in traditional agriculture as "The Three Sisters", adds biologically fixed nitrogen to the soil, reduces the need for agrotoxins, and improves nutritional diversity. Furthermore, large-scale studies show that polycultures are 20-30% more efficient when comparing cultivated land versus growing the crops separately in conventional monocultures. 

Use Case #3: Synthetic Fertilizer Reduction

The overuse of synthetics (NPK) is a catastrophic threat to food security in the Global South given its current ubiquitous dependency everywhere. This hard link to external inputs can often bankrupt smallholders, destroys the soil microbiome (reducing future harvests), and contaminates local drinking water directly and indirectly (ie cyanobacterial blooms). Farmers blanket-spray these expensive inputs because they cannot measure localized nutrient bioavailability. We propose to solve this by using edge devices like our PML to ground truth satellite imagery, shifting the farm from blind application to deterministic micro-dosing within a context of regenerative agricultural transition. While Copernicus Sentinel-2 can detect canopy nitrogen stress (chlorosis) via indices like NDRE. However, when the satellite detects a starving plant, it cannot tell the farmer why. The soil might be empty, or the nutrients might be present but locked out due to opaque chemical imbalances. When the AMO framework detects a nitrogen crash in a specific maize plot via Sentinel-2. Before advising the farmer to buy synthetic fertilizer, the agent queries the federated database to diagnose the soil chemistry and other key parameters, and seek hoem grown alternatives. This wworkflow has the potential to slash synthetic fertilizer costs by up to 60%, ensuring the farmer's capital is preserved, global supply risk mitigated, and the community's caloric output is maximized without further and unnecessarily degrading the land.



Team

We are a Guatemalan & Austrian power couple living in the Mayan highlands of Guatemala. Inspired by the strength of our local communities, the deep wisdom of ancestral practices, and the constant presence of the great volcanoes that influence the climate so stunningly everyday; we're participating in this hackathon to continue championing the open-source development and collaborative problem-solving necessary for the next century of technology for agroecology.

Lilli D.
An expert in human-computer interaction with a Master's in Criminal and Forensic Psychology from the University of Groningen. Originally from Austria and now residing in Guatemala, she is currently leading LLM development teams at a world renowned and industry-leading AI tech companies. One of her many goals is retiring on a farm with David and running a stray animal shelter for puppies,  kittens and every other cute critter.

David D.
A ex-Google engineer and founder of a startup developing geospatial intelligence systems for precise multidimensional data acquisition and analysis with the award winning and #1 AI startup in Guatemala called SINTROP.IA, a recent YLAI 2026 Fellow, and Nature enthusiast. Proudly originating from the Xinca people of Guatemala, his career bridges nature, business, and open-source technology. Deeply moved by Carl Sagan’s "Pale Blue Dot", his ultimate personal goal is to plant a tree on the moon, somehow, with his own hands. 


TL;DR

We believe a truly nature-nurturing agroecological platform must reduce the cognitive friction between complex ecological datasets and human comprehension, operating less like a sterile database and more like a responsive, intelligent organism. 

Given the success of commercial AI driven data visualization software for other industries that demonstrates how associative engines can eliminate the need for complex, rigid queries or time-consuming CSS modifications, we believe the GIS sector is ripe for exactly this type of system. These dynamic and interactive programming capabilities have the potential to ensure that users do not merely "query" a database using rigid systems; rather, they can intuitively "talk" with the platform and the massive amounts of data, asking both simple and complex questions using their native languages in text and speech to reveal hidden ecological relationships to empower people towards the transition to sovereign regenerative agriculture.