--- license: apache-2.0 language: - en - ha - yo - fr tags: - marketing - africa - product - business - nigeria - autoscientist base_model: google/gemma-3-1b-it --- # Africa Development Risk Index Model ### AutoScientist Challenge 2026 | Marketing Category **Author:** Hussein Adeiza (mabera) **Role:** Licensed Environmental Health Officer, Abuja Nigeria **Base Model:** Gemma 3 1B (it) **Fine-tuned with:** AutoScientist by Adaption Labs ## Model Description This is a LoRA adapter fine-tuned to explain and pitch the Africa Development Risk Index, a composite scoring system combining Health Risk, Economic Risk and Legal Complexity into one unified view for African states and countries. It answers product positioning questions for 8 distinct decision-maker audiences. ## The Product The Africa Development Risk Index synthesizes three models already built in this challenge: - Healthcare: Nigeria WASH Risk Model + Nigeria Malaria Health Model - Finance: Nigeria Poverty Prediction Model - Legal: Africa Environmental Law Model Instead of three disconnected reports, decision-makers get one unified composite score per Nigerian state or African country. ## Training Data - Source: Original product positioning Q&A authored by the project creator - Dataset: 14 Q&A pairs across 8 audiences, expanded via Adaptive Data - Languages: English, Hausa, Yoruba, French - Quality improvement: 50.0% (Grade C → A) - Kaggle: https://www.kaggle.com/datasets/yunusahusseinadeiza/africa-development-risk-index-marketing-dataset ## Training Metrics - Win rate: 57% adapted vs 43% base model - Base model: google/gemma-3-1b-it - Method: LoRA — House Special + Reasoning Traces + Hallucination mitigation - Dataset quality: 6.0 → 9.0 (+50.0% improvement, Grade A) ## Target Audiences NGO Program Directors, Impact Investors, Government Policy Analysts, Environmental Compliance Officers, Public Health Researchers, Startup Founders, Journalists, Microfinance Institutions ## Why This Matters NGOs, investors, governments and startups working in Africa typically consult fragmented, siloed data sources, health ministries, finance ministries, environmental regulators, with no single view connecting them. This model explains how a unified cross-domain index helps each of these audiences make faster, better-informed decisions. ## Credits Powered by Adaptive Data — Adaption Labs AutoScientist Challenge 2026 | Marketing Category Built on top of: WASH, Malaria, Poverty and Africa Environmental Law models