A common mistake leaders make is buying powerful AI tools and forcing them into outdated processes, leading to failed pilots and wasted money. True transformation requires reimagining how people think, collaborate, and work *before* inserting revolutionary technology, not after.
Companies that experiment endlessly with AI but fail to operationalize it face the biggest risk of falling behind. The danger lies not in ignoring AI, but in lacking the change management and workflow redesign needed to move from small-scale tests to full integration.
Don't just sprinkle AI features onto your existing product ('AI at the edge'). Transformative companies rethink workflows and shrink their old codebase, making the LLM a core part of the solution. This is about re-architecting the solution from the ground up, not just enhancing it.
Notion's CEO compares current AI adoption to swapping a water wheel for a steam engine but keeping the factory layout the same. The real gains will come from fundamentally rethinking workflows, meetings, and hierarchies to leverage AI that works 24/7, rather than just layering it onto existing processes.
A critical error in AI integration is automating existing, often clunky, processes. Instead, companies should use AI as an opportunity to fundamentally rethink and redesign workflows from the ground up to achieve the desired outcome in a more efficient and customer-centric way.
The biggest mistake in AI adoption is simply automating an existing manual workflow, which creates an efficient but still flawed process. True transformation occurs when AI enables a completely new, non-human way of achieving an outcome, changing the process itself rather than just the actor performing it.
A common implementation mistake is the "technology versus business" mentality, often led by IT. Teams purchase a specific AI tool and then search for problems it can solve. This backward approach is fundamentally flawed compared to starting with a business challenge and then selecting the appropriate technology.
Many AI projects become expensive experiments because companies treat AI as a trendy add-on to existing systems rather than fundamentally re-evaluating the underlying business processes and organizational readiness. This leads to issues like hallucinations and incomplete tasks, turning potential assets into costly failures.
Adopting AI acts as a powerful diagnostic tool, exposing an organization's "ugly underbelly." It highlights pre-existing weaknesses in company culture, inter-departmental collaboration, data quality, and the tech stack. Success requires fixing these fundamentals first.
Don't just plug AI into your current processes, as this often creates more complexity and inefficiency. The correct approach is to discard existing workflows and redesign them from the ground up, based on the new paradigms AI introduces, like skipping a product requirements document entirely.
McKinsey finds over half the challenge in leveraging AI is organizational, not technical. To see enterprise-level value, companies must flatten hierarchies, break down departmental silos, and redesign workflows, a process that is proving harder and longer than leaders expect.