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AI-Powered Farmer Intelligence for Inclusive Credit, Advisory, and Climate-Resilient Agriculture

AI-Powered Farmer Intelligence for Inclusive Credit, Advisory, and Climate-Resilient Agriculture

Kenya flag

Kenya

Agriculture

Financial Inclusion

Environment

High replicability and adaption

Implementing Organisation

Shamba Records

Kenya, Nairobi

Private sector

Implementing Point of Contact

George Maina

CEO and Founder

Contributor of the Impact Story

Shamba Records

Year of implementation

2021

Problem statement

Across Africa, over 60% of the population depends on smallholder agriculture, yet more than 70% of smallholder farmers remain excluded from formal financial services due to lack of collateral, credit history, and verifiable farm records. Traditional credit models rely on fixed assets and historical banking data, automatically excluding women and youth, who make up over 50% of the agricultural labor force but own less than 20% of titled land. At the same time, public extension systems serve fewer than 1 in 5 farmers, leaving most without timely agronomic advice. Climate shocks now account for up to 30-40% yield losses annually in rain-fed systems, while rising compliance requirements such as EUDR are restricting market access for farmers without traceable production data. As a result, farmers face delayed or denied credit, low-quality inputs, preventable crop losses, and exclusion from higher-value markets. Lenders, buyers, and governments lack real-time, farm-level data to assess risk, productivity, and sustainability, increasing financing costs and limiting scalable intervention. Shamba Records addresses this gap by applying AI to last-mile farm data. Through machine learning, localized language models, predictive analytics, and blockchain traceability, we convert fragmented farm activity into verifiable, actionable intelligence, enabling inclusive credit scoring, personalized advisory, early risk detection, and transparent farm-to-market records. This unlocks productivity, financial inclusion, and climate resilience at scale.

Impact story details

Shamba Records is a data-driven agri-fintech platform on a mission to close the $300 billion credit gap for smallholder farmers in Africa. We transform fragmented farm data into verifiable digital identities and financial profiles. Our integrated platform combines an AI-powered credit scoring engine, digital farmer wallets, cooperative management tools, and blockchain-enabled traceability. We target women and youth, who are disproportionately excluded from formal finance. By leveraging alternative data-satellite imagery, mobile money history, and transaction records-our AI models de-risk lending, enabling financial institutions to offer loans to previously "invisible" farmers. Our solution drives a 30% targeted increase in farmer income by facilitating access to inputs, climate-smart advisory delivered in local languages, and premium markets. We are building transparent, investable agricultural value chains from the ground up.

AI Technology Used

Machine Learning
Natural Language Processing
Predictive Analytics

Key Outcomes

Economic Value Creation, Access

Reach, Inclusion

Equity, Accuracy

Quality, Improvement, Resilience

Risk Reduction, Knowledge

Skills Impact

Impact Metrics

Farmers with access to formal credit using AI scoring

Post-Implementation

45 %+

Average farmer income change

Post-Implementation

0

Advisory delivery accuracy (localized AI)

Post-Implementation

Context-specific, crop- and season-based

Women participation in digital services

Post-Implementation

40 %+ participation

Implementation Context

Scaled

Kenya, Uganda

50,000+ smallholder farmers. Primary focus on rural, underserved populations, with deliberate targeting of women (60% of users) and youth (under 35).

Key Partnerships

Government agricultural agencies, Financial institutions and fintechs, Research organizations (e.g. CGIAR ecosystem), Technology partners, Cooperatives and NGOs

Replicability & Adaptation

High (Proven in multiple contexts with minimal adaptation)

Training AI Models on Local Data: Integrating region-specific crop data, climate patterns, and mobile money schemas. Language Localization: Applying NLP to translate and adapt the advisory engine into new local languages and dialects. Partner Ecosystem: Integrating with in-country financial institutions (banks, microfinance), mobile network operators (for USSD), and existing agricultural extension networks.

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