Part 2 of 3 — A Perspective by Marko Lah, Founder & CEO, Context64.AI
In the first part of this series, I wrote about a truth I’ve witnessed for more than fifteen years: organizations don’t lack data, they lack understanding. And without context, AI cannot support real decision-making.
This is the heart of the GenAI Divide:
- The widening gap between impressive AI prototypes and meaningful business outcomes.
- But the divide isn’t inevitable.
It exists because most AI systems still operate in a vacuum-powerful, but disconnected from how the business actually works. To cross this divide, leaders need something new. Not another model. Not another dashboard. But a discipline: Context Engineering.
Why Organizations Struggle to Scale AI
Businesses are complex, interconnected systems:
Requirements shape designs → Designs influence processes → Processes drive decisions → Decisions ripple across teams → Data evolves as work progresses
Traditional AI sees none of this. It processes text and numbers. It does not understand meaning, relationships, dependencies, or intent. That’s why impressive prototypes so often collapse in real-world environments: the AI simply doesn’t know how the business works.
.png)
The Role of Context Engineering
Context Engineering is the discipline of structuring, connecting, and operationalizing the knowledge that AI needs to function inside your business, not beside it.
At Context64AI, we define Context Engineering across four dimensions:
- Structure: Capturing how data, documents, systems, and engineering artifacts relate to one another.
- Understanding: Learning how decisions flow through the organization, what depends on what, and why.
- Memory: Ensuring AI retains past outcomes, learns from experience, and improves with use.
- Feedback Loops: Reinforcing behaviours that lead to better decisions and reducing noise over time.
When these dimensions come together, AI stops being a model generating outputs and becomes an intelligent participant in your workflows.
This is the step where GenAI stops being experimental and becomes operational.
Why Context Engineering Matters for Leaders
For business leaders, the implications are significant.
- AI becomes aligned with business outcomes, not isolated tasks.
- Teams spend less time searching for answers and more time making decisions.
- Knowledge becomes organizational, not individual.
- Governance becomes built-in.
.png)
How Context64AI Enables This Shift
Context64AI was built specifically to solve this problem.
The Data Context Hub (DCH) serves as the foundation, a unified, ledger-backed representation of your engineering data, documents, relationships, and workflows.
It dissolves silos and creates a living, connected view of your organization.
On top of this, the C64-Stack enables AI to operate with full contextual awareness:
- Linked Data
- Engineering relationships
- Cross-domain knowledge
- Memory
- Real-time feedback loops
And with M4AI, our reasoning layer, copilots can trace their answers, follow the graph, and adapt to the structure of your work.
This is enterprise AI grounded in how you actually operate.
Transform AI Potential into Business Reality
Book a live demo and see Context64AI in action. Schedule a live demo or proof of concept today to see how we can optimize your data processes, enhance decision-making, and drive measurable business value.
About Context64AI: We are a European technology company specializing in AI-powered data integration for complex engineering environments. Our ledger-backed knowledge graph platform enables trustworthy virtual validation for the automotive industry and beyond.