In Kenya’s digital economy, innovation isn’t just a buzzword — it’s a competitive necessity. With nearly every adult linked to some form of digital financial service, the frontier of inclusion has moved beyond account opening to making finance smarter, tailored, and outcome‑driven. Amid this shift, NCBA’s approach to integrating artificial intelligence (AI) and data analytics stands out as a practical model for the future of banking in Africa.
AI and data are transforming how banks understand customers. In the Kenyan context, institutions increasingly rely on machine learning and analytics to tailor credit scoring, detect fraud, and personalize user experiences. According to a Central Bank of Kenya survey, credit scoring and personalized engagement are among the top applications of AI across local banks, though challenges in governance and capacity remain.
NCBA’s commitment to digital innovation has begun to pay dividends. The bank has invested heavily in digital infrastructure including a next‑generation core banking system developed with partners like Huawei and MuRong Technology enabling more agile product delivery and seamless customer experiences.
One of the most visible benefits of data‑driven banking is in credit access. In 2024 alone, NCBA disbursed more than KES 1 trillion in digital loans, a record figure reflecting a 23 percent year‑on‑year increase. Products like Fuliza, the mobile overdraft facility embedded in M‑PESA, accounted for a large share of this volume, with more than KES 906 billion lent to users for everyday needs such as stock purchases and school fees. Meanwhile, its M‑Shwari savings and loan product continues to play a critical role in fostering financial discipline and opening credit access for previously unbanked or underbanked segments.
These digital services rely on sophisticated behaviour‑based scoring models that review transaction patterns and mobile usage to determine creditworthiness. For many small traders, freelancers, and students, this means access to credit without the need for formal collateral — a conventional barrier that has historically locked out millions from productive finance.
But it’s not just about credit. Analytics also drives personalized savings nudges and goal‑based product features in digital apps like Loop, which doubled its loan disbursements in recent years as young professionals and entrepreneurs use it to manage both personal and business finances.
On the risk side, AI helps NCBA monitor emerging threats in near real‑time, improving fraud detection and enhancing resilience against scams or misuse — a significant advantage in a market where digital transactions occur daily in the tens of millions.
The broader implication is clear: as traditional banks tighten credit to SMEs and low‑income households in response to rising defaults and economic pressures, NCBA’s data‑optimized lending fills an important gap, enabling financial services to adapt to real customer behaviour rather than outdated risk proxies.
Looking ahead, this marriage of AI and financial inclusion may well define the competitive edge for banks across Kenya and East Africa. As regulators sharpen guidance on AI governance and risk management, institutions like NCBA that have already embedded data and machine learning into their products will be better positioned to deliver efficient, inclusive banking that meets the needs of a rapidly evolving customer base.
