Advances in LLMs show promise, but token bias undermines their logical reliability. Small input shifts can distort outputs, posing risks in fields like medicine, law, and policy. Their dependence on pattern recognition over true reasoning demands closer scrutiny and better design.
This week I examine how AI improves the polish of business writing while obscuring weak logic. As decisions often rely on form over substance, AI can legitimise flawed arguments. Leaders must read more critically and recognise AI’s limits and biases.
By employing leaders capable of creating an AI framework — because they are awake and aware to the unintended effects of AI on social well-being, data integrity and privacy, diversity, and governance — organisations seeking to transform into being AI-first are well positioned to engage in trustworth
The hope is much, for having gotten this far is to be forewarned and thus forearmed. In that we do well to employ scepticism when listening to a human interlocutor. Because even the best of us are filling in the blanks in our memory.
Ultimately, I do not think the problem is that we are building machines so ‘smart’ that their output is indistinguishable from human compositions. The problem is that we are educating humans whose output is so illiterate, and devoid of experience, it is indistinguishable from computer generated text