Tag

Ai-Strategy

13 entries.

Which Doors Should Machines Walk Through?

Jeff Bezos's test of one-way and two-way doors maps neatly onto where to let AI act alone. The twist is that automation reshapes which door you are standing in front of, so reversibility becomes something you engineer rather than something you inherit.

Read more

From RAG To KAG: The Structured-Knowledge Upgrade

Retrieval augmented generation became the default for grounding language model outputs. For domains where being wrong is expensive, knowledge augmented generation is the next move, and the reason it works is older than the technique.

Read more

A Five-Role Diagnostic For Any AI Agent

Davis, Shrobe, and Szolovits defined knowledge representation through five roles in 1993. Used as a diagnostic, those five roles will tell you where any AI agent system is likely to fail before it does.

Read more

The Harness Is Where Symbolic AI Returned

Modern AI agents are not pure neural systems. They are hybrid systems whose reliability comes from specific symbolic investments made in the layer around the model. The pattern is selective, not universal.

Read more

Designing AI That Protects Expertise

AI systems do not have to erode human skill. Designed deliberately, they can preserve and even strengthen it. Six practical design patterns, and the continuum that tells you where to keep practising.

Read more

The Cognitive Cost of Convenience

AI delivers real productivity gains, but relying on it to do our thinking quietly reduces the mental engagement that builds and maintains skill. Here is what the research shows, and what it does not.

Read more

The LLM Wiki: A Pattern for Smarter Organisational Knowledge Bases

Andrej Karpathy's 'LLM Wiki' pattern offers a compelling alternative to retrieval-augmented generation. Instead of re-deriving insights from scratch on every query, AI incrementally builds and maintains a persistent, structured knowledge base. The implications for organisational knowledge management are significant.

Read more