Welcome back to Two-for-One, our newsletter format where we tackle a pressing issue and provide two grounded, practical solutions. In a previous edition, we explored how to build trust in hybrid intelligence—a system that blends human expertise with AI-driven analysis. This time, we move one step further: how can that trust be operationalized in everyday workflows, specifically in business process management (BPM)?
While many organizations have made promising strides in overcoming the trust gap—by embracing explainable AI and robust governance frameworks—there’s now a new challenge: How can teams actually use hybrid intelligence in business processes without adding more friction, confusion, or inefficiency?
Gaining confidence in hybrid intelligence is a vital first milestone. But trust alone doesn’t ensure value creation. In many BPM contexts, employees are still unclear where AI’s responsibility ends and where their own begins. Who makes which decisions? At what point should AI insights be acted upon, questioned, or ignored?
Take, for instance, a procurement process. AI may flag anomalies in supplier pricing trends, but who is ultimately responsible for acting on that information? If no clear boundaries are in place, these AI insights risk being sidelined or overridden entirely—often because users simply don’t know whether or how to engage with them.
This ambiguity can erode confidence, stall innovation, and prevent meaningful impact—even when the technology is sound and the data reliable.
Description:
For hybrid intelligence to work in BPM, organizations must clearly delineate roles between human agents and AI systems. This means identifying which process steps are best handled by AI—like high-frequency data analysis—and which require human oversight, such as ethical evaluations or stakeholder communication.
Benefits:
Long-Term Perspective:
Establishing structured hybrid roles creates a scalable foundation for more advanced BPM maturity. It allows companies to standardize collaboration between human and machine without micromanagement or loss of agility. The result? A more predictable, efficient, and compliant process landscape.
Description:
Rather than attempting to replace human judgment, AI should be embedded as a predictive monitoring layer—a mechanism that flags deviations, inefficiencies, or risk signals within processes before they escalate. The human role here is to evaluate these signals, apply contextual understanding, and initiate appropriate responses.
Benefits:
Long-Term Perspective:
By functioning as a hybrid early warning system, AI doesn’t just detect anomalies—it strengthens operational resilience. Over time, organizations can refine these alerts using feedback loops, making the system smarter and more aligned with business realities.
As with all transformations, introducing hybrid intelligence into BPM raises thoughtful questions:
Trust in hybrid intelligence is necessary—but insufficient. The real value emerges when that trust translates into structured collaboration between humans and AI, embedded within actual business processes.
Companies that move from exploration to implementation—through defined hybrid roles and proactive monitoring systems—stand to gain not just operational efficiencies but also cultural alignment and digital readiness.
Want to explore how to make your processes hybrid-ready? Reach out to us for a conversation about your next BPM milestone.
Hybrid intelligence in BPM refers to the strategic collaboration between human decision-makers and AI systems to optimize business workflows. Humans bring judgment, ethics, and context; AI contributes speed, analysis, and pattern recognition.
Hybrid roles are defined by mapping specific process tasks to either AI or human responsibility based on factors like complexity, frequency, and ethical implications. Clear role definition improves efficiency and trust.
AI can monitor data streams in real time to detect anomalies or risk factors early. When paired with human evaluation, this helps prevent escalation and improves process responsiveness.
The main challenges include unclear decision boundaries, user resistance, and overwhelming alert systems. These can be mitigated through training, feedback loops, and governance frameworks.
Yes. Hybrid systems that combine transparent AI insights with human oversight can improve audit trails, regulatory alignment, and overall compliance in BPM.