A new wave of industry analysis highlights that the rollout of artificial intelligence across Africa is being held back by two significant obstacles: the absence of local language support in major AI models and the large number of people who have internet access but no smartphones. According to the global mobile trade association GSMA, Africa is home to over 2,000 languages yet “those languages are not represented in the AI models.” Furthermore, roughly 790 million Africans live in regions with internet connectivity but lack smartphone devices, limiting real access to AI services. In response, GSMA and major telecom operators have launched a continent-wide initiative — involving companies like Airtel, MTN, Orange, Vodacom and research partners such as Masakhane and Lelapa AI — to build language-inclusive large language models (LLMs) tailored for Africa and to address infrastructure gaps. While this presents a major opportunity for digital growth and inclusion, experts caution that without significant investment in affordable devices, compute infrastructure and local data, the digital gap may widen and Africa could be left behind in the global AI race.
Sources: Bloomberg, Business Insider
Key Takeaways
– A major impediment to AI adoption in Africa is the linguistic mismatch: over 2,000 African languages are largely unsupported in current large language models, reducing relevance and usability.
– Infrastructure and device access remain critical bottlenecks: although many Africans are in areas with internet coverage, nearly 790 million lack smartphones, severely limiting practical access to AI tools.
– A proactive initiative led by GSMA and African telecom/tech partners is aiming to build “AI Language Models in Africa, by Africa, for Africa,” focusing on local languages, data, compute, talent and policy – but success hinges on sustained investment and coordination.
In-Depth
When we talk about the promise of artificial intelligence (AI) in Africa, many commentators envision leap-frog growth, innovative uses in agriculture, healthcare, education and mobile finance. But reality is bumping up against two formidable hurdles: language representation and device-access. The global AI frenzy has generated large language models (LLMs) trained primarily in major languages like English, Mandarin, Spanish — leaving the vast linguistic diversity of Africa mostly on the sidelines. According to the GSMA, Africa is home to over 2,000 languages, yet a very small fraction are supported in current AI models. That means billions of people face a barrier: they can’t meaningfully interact with, benefit from, or trust AI systems built without their languages, cultural contexts or digital habits. On top of that, even where there is internet coverage, many Africans lack the devices to access AI services. GSMA estimates that about 790 million people reside in areas with network access but no smartphone. If you don’t have a smart device, many of the mobile-first AI innovations simply cannot reach you. These twin gaps—language and access—pose a real risk of deepening the digital divide in Africa rather than narrowing it.
Recognizing this, GSMA has teamed with major telecom operators (Airtel, MTN, Vodacom, Orange, Ethio Telecom, Axian Telecom) and research hubs (Masakhane, Lelapa AI, etc.) to launch a continent-wide collaboration. The ambition: build inclusive African AI language models, train them on African data, embed them into services, and ensure the continent does not remain a consumer of global-north AI but becomes a creator of its own AI ecosystem. The partnership is structured around four pillars: data, compute, talent and policy. By building local datasets, boosting compute infrastructure, developing homegrown talent and shaping regulatory/policy frameworks, the initiative aims to enable region-relevant AI applications that serve education, health, governance, creative industries and other sectors.
From a conservative viewpoint, however, it’s important to view this with cautious realism. Setting bold goals is one thing; delivering them cost-effectively and sustainably is another. Africa’s infrastructure deficits—limited power grids, weak data centres, expensive internet access and high device costs—remain significant. Ensuring truly affordable smartphones, subsidised or otherwise, and appropriate compute and network capacity, will require real capital, sound governance and partnerships with private industry. Moreover, building trust in AI applications requires transparency, data privacy frameworks and culturally-sensitive deployment. The language models themselves must reflect local values and norms, or the rise of AI may reproduce the same biases and exclusions we’ve seen elsewhere.
Still, the upside is compelling. If Africa can successfully develop AI systems that cater to its languages, cultures and realities, the payoff could be substantial: local innovation, job creation in tech sectors, improved public services, bottom-up entrepreneurship and less dependence on external tech monopolies. From a policy perspective, African governments and businesses should treat this as strategic infrastructure, similar to roads or power grids, rather than a mere fancy tool. Investing in device affordability, rural connectivity, digital literacy and language-data generation may not deliver returns overnight, but over time the compound effect could be transformative.
In short, the challenge is clear: AI isn’t just about building smarter algorithms—it’s about making those algorithms accessible, meaningful and trusted in the context of Africa’s many languages, cultures and levels of development. The ambition of “AI for Africa, by Africa” is laudable, but turning it into reality will require sober planning, sustained investment, regional coordination and private-sector engagement. For those watching global tech competition, Africa’s next decade of AI development could become a strategic battleground: either the continent bridges the divide and builds its own path, or it risks being sidelined in an age defined by data, algorithms and digital infrastructure. The former outcome is far better not just for Africans but for global balance in technology—and it begins with speaking the languages people actually use and getting devices to the people who need them.

