The Six Golden Rules of AI for Analysts.
Last Updated on March 28, 2024 by Editorial Team
Author(s): Kendrick
Originally published on Towards AI.
That Nobody Has Told You About.
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A senior analyst once emailed me βThe Ten Golden Rules of Analysis.β As the name suggests, it was a set of norms and best practices to help navigate the ebbs and flows of a challenging profession.
In my time creating and teaching AI products for analysts, I realized that I had inadvertently developed ten principles of AI for analysts (and honestly, for everyone else) that, hopefully, can guide analysts in and entering the AI world.
I am sharing six of the ten here. The full list will be available in chapter six of my upcoming book: AI as the Sixth Intelligence Discipline: A Tradecraft Guide for Analysts
The other day, a friend of mine showed me a clip from Joe Roganβs podcast. The guest was explaining to Rogan how AI (in this case, a large language model (LLM)) had circumvented those very annoying captcha checks. Among other things, the guest said, βthe AI had thought to do this on its own.β [1]
No, it did not. AI is dumb. It is dumber than most people think. There are a lot of technical reasons, but the most obvious one is, for example, that you must prompt LLMs (other AI architectures… Read the full blog for free on Medium.
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Published via Towards AI