Operationalising Ethical AI: A Governance Framework for Generative AI Adoption in Sub-Saharan African SMEs

Authors

Sigale Dadirai Mweha

Student: Special Honours Degree in Procurement & Supply Chain Management Lupane State University (Zimbabwe)

Article Information

DOI: 10.47772/IJRISS.2026.10100102

Subject Category: Entrepreneurship

Volume/Issue: 10/1 | Page No: 1245-1257

Publication Timeline

Submitted: 2025-12-29

Accepted: 2026-01-03

Published: 2026-01-23

Abstract

The rapid advancement of generative artificial intelligence presents unprecedented opportunities for small and medium enterprises in Sub-Saharan Africa, yet significant ethical and governance challenges persist. This study examines the current landscape of AI adoption among SMEs in the region and proposes a comprehensive governance framework for ethical generative AI implementation. Through systematic analysis of existing literature and policy documents from African contexts, this research identifies key barriers including inadequate digital infrastructure, limited financial resources, skills gaps, and absence of contextually appropriate regulatory frameworks. The study reveals that while African countries like Mauritius, Egypt, and Rwanda have developed national AI strategies, specific governance mechanisms for SME generative AI adoption remain underdeveloped. The proposed Ethical AI Governance Framework incorporates four interconnected pillars: Infrastructure and Capacity Building, Ethical Standards and Accountability, Stakeholder Engagement and Benefit-sharing, and Regional Cooperation and Policy Harmonisation. Each pillar addresses specific challenges while promoting inclusive, transparent, and culturally sensitive AI deployment. The framework emphasises community-centred approaches that respect indigenous knowledge systems and prioritise local capacity development. Key findings indicate that successful generative AI adoption in Sub-Saharan African SMEs requires coordinated efforts across technological, regulatory, and socio-cultural dimensions. The research demonstrates that ethical AI governance frameworks must balance innovation enablement with risk mitigation, ensuring that AI technologies serve local developmental priorities rather than perpetuating existing inequalities. Implementation strategies include establishing AI ethics committees, developing SME-specific compliance guidelines, creating public-private partnerships, and fostering regional knowledge sharing platforms. This framework provides actionable guidance for policymakers, SME leaders, and international development partners seeking to promote responsible AI adoption across Sub-Saharan Africa.

Keywords

Ethical AI, Generative AI, Governance Framework, Sub-Saharan Africa

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