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Advanced Raster Data Processing and Analysis System

Sri Lanka flag

Sri Lanka

Agriculture

Moderate

Implementing Organisation

Rootcode

Sri Lanka, Colombo, Western Province

Private Sector

Implementing Point of Contact

Alagan Mahalingam

Founder and CEO

Contributor of the Impact Story

Carnegie India

Year of implementation

2023

Problem statement

Agricultural decision-makers and food security organizations face significant challenges in processing and analyzing large-scale geospatial data for informed policy-making. Traditional methods of integrating spatial information with conventional datasets are time-consuming, error-prone, and often fail to provide the rapid, accurate analysis needed for timely interventions. This results in suboptimal resource allocation, delayed responses to food security threats, and increased costs in agricultural planning and compliance monitoring. The UN FAO and regional organizations needed a system that could transform raw raster data into actionable insights for sustainable development planning.

Impact story details

Rootcode is a global technology company founded in Sri Lanka, specializing in AI platforms and software solutions for European governments and Fortune 500 companies. With 115+ employees across Sri Lanka, Estonia, and the US, Rootcode has won competitive government contracts in Estonia, Portugal, and Czech Republic, often against major consulting firms like Accenture and IBM. The company holds ISO 9001 and ISO 27001 certifications and has been recognized with multiple awards including the Asia Pacific ICT Awards 2025 (#1 in Asia Pacific). Rootcode also operates the Rootcode Foundation, providing technology education to over 1,000 underprivileged students in Sri Lanka.

AI Technology Used

Remote Sensing Analytics

Key Outcomes

Efficiency

Productivity, Accuracy

Quality Improvement, Access

Reach, Knowledge

Skills Impact

Narrative Outcome

Agricultural use cases often require large-scale geospatial data to be processed in real-time with a high-degree of accuracy to make effective decisions. Traditional methods often result in delays that limit timely intervention and involve manual compilation and integration of data. Rootcode’s AI-powered system enables near real-time analysis of satellite and spatial data, replacing workflows that previously took days or weeks. The platform integrates spatial data with conventional datasets, enabling food security planning and resource allocation through useful visualisation, allowing effective planning and crisis response with low operational overheads.

Impact Metrics

Time reduction in processing and analyzing raster data for agricultural decision-making

Baseline Value

Manual processing took days to weeks Days

Post-Implementation

Near real-time analysis of raster data achieved post-implementation Days

Internal Monitoring·Jan 2023 - Jan 2024

Ability to Integrate Spacial Data with Convential Datasets

Baseline Value

There was limited data integration due to siloed systems System capability

Post-Implementation

Seamless integration with holistic data visualization was achieved System capability

Internal Monitoring·Jan 2023 - Jan 2024

Implementation Context

Deployed

Southeast Asia and Afghanistan, in partnership with Geo-Informatics Center, Thailand

The target population is FAO officials and policy makers working on food security and agricultural development across Southeast Asia and Afghanistan.

Key Partnerships

United Nations Food and Agriculture Organization (FAO), Geo-Informatics Center (GIC)

Replicability & Adaptation

Moderate

1. Similar raster data processing systems can be adapted for different geographic regions by incorporating region-specific satellite imagery and agricultural data. 2. Local calibration of algorithms may be required based on crop types, climate conditions, and available data sources. 3. Integration with existing national agricultural information systems would enhance adoption.

* The data presented is self-reported by the respective organisations. Readers should consult the original sources for further details.