Abiola Rasaq

Chief Quality Officer

Biography.

Abiola Rasaq is a Software Quality and AI Ethics Advocate. She is the founder of The Bug Detective (TBD), a QA-as-a-Service company and a global community of nearly a thousand testers. With almost a decade of experience across fintech, startups, and international tech companies, she helps teams deliver reliable products used by millions.
She has authored articles and white papers on the intersection of AI and Quality and is the founder of Africa’s largest QA event, Test Festival, as well as the Women in Software Testing Initiative. Through her talks, trainings, and community engagements, she has reached hundreds of thousands of people worldwide.
Abiola delivered a keynote and participated in the AI on Trial panel at EuroSTAR 2025 and took the keynote at Test Festival 2025, exploring how AI and Quality can accelerate African tech.
Her work has earned recognition as Africa’s Foremost QA Advocate (This Day News), QA Leader of the Year (Scandium), and acknowledgment by Benchmark for shaping software testing in Africa, among many other honors.

Talk.

What QA Can Teach AI About Accountability

AI is impressive. It learns fast, adapts quickly, and makes decisions faster than any of us can blink. But there’s something it still doesn’t understand. Accountability. It can tell you what it did, but not always why. And if there’s one thing QA has mastered over the years, it’s learning how to explain the why.
As testers, we’re trained to prove our work, trace every step, and question what looks right but feels off. “It works” has never been enough for us. We need evidence, context, and a clear path that others can follow. When we document bugs, we don’t just say what failed; we add steps to reproduce so that anyone can see exactly how it happened. The ones we can’t reproduce stay with us like ghosts that haunt our projects, because without a trace, there’s no accountability.
In this session, I’ll walk through how those same QA instincts, documenting what happened, investigating why it failed, and involving humans at every stage, can guide how we build and monitor AI systems. Not through technical deep dives, but through simple principles that keep humans in charge of judgment.
We’ll talk about what the QA mindset looks like when applied to AI:
1. How test logs can inspire decision logs for explainable AI.
2. Why root cause analysis matters just as much for bias as it does for bugs.
3. And how keeping the “human in the loop” is still the best quality check we have.
Because at its core, QA isn’t just about preventing defects, it’s about protecting trust. And if AI is going to be part of our future, it needs that same habit of accountability we’ve built our entire profession around.

Get in Touch

We would love to speak with you.
Feel free to reach out using the below details.