What does this mean for Professional Services? How does the role change?
It changes the role quite fundamentally.
Professional Services can no longer be just about implementing software and moving on. In an AI‑enabled BPO model, the work becomes continuous and outcome-oriented. You design workflows, train and fine‑tune them, put governance in place, and keep improving them over time.
Crucially, the expert oversight layer can work in different ways. In some cases, our specialists provide that validation and control. In others, the client’s own teams retain it. The automation is consistent — the responsibility model is flexible.
That opens up some very natural service areas. There’s still upfront work: understanding client processes, configuring agent logic, handling exceptions, and designing governance and compliance frameworks. But the real value sits in what happens after go‑live.
Ongoing outcome assurance becomes central. Monitoring performance, validating results, maintaining audit trails, managing human review, and adapting workflows as regulations or business priorities change.
What are the biggest challenges in making this work?
There are four that stand out.
First, people and culture. This isn’t just a technical shift — it’s a human one. Experts need to get comfortable training and governing automated processes, not just executing tasks themselves. Teams need to think in systems, not silos. And organisations need roles that blend domain expertise, process thinking, and AI literacy.
Second, operating models. You can’t just bolt AI onto existing ways of working and hope for the best. Governance, escalation, risk management, and success metrics all need to be rethought. Human oversight has to be deliberately designed into the process — not added as an afterthought.
Third, commercial models. Many service organisations are still geared around selling hours and projects. This model is about selling outcomes and ongoing value, which can feel less tangible at first. Pricing, contracting, and even how value is explained to clients all need to evolve.
Finally, regulation. In high‑stakes environments, things like explainability, logging, conformity assessments, and monitoring are part of the service itself. Regulation such as the EU AI Act only reinforces that.
That’s why I strongly believe in starting small. Pick a focused, high‑value use case. Prove the governance and the business value. Then scale. Trying to do everything at once is rarely realistic.