| We're going to gain a ton of utility when we can let go of the starry-eyed idea of LLM's as "prospective AGI agents" that should be broadly capable and need to be ethically censored, and revitalize the productive and practical idea of them as "text completers which may be engaged conversationally" The author needs to fight uphill and contort their workflow to squeeze out good articles because Antrhopic (like OpenAI) are caught up in the maybe-fantasy of creating AGI agents, and so burden their product design and their own research/engineering efforts with heavy, prescriptive training in "alignment" and "ethics". But use cases like Copilot had it more right before, as do apps like Narrative AI. If your LLM is for generating code, it doesn't need to learn that "killing" is bad and insist that processes shouldn't be killed, and if it's generating story content it doesn't need to learn that every output needs to resolve all tension and deliver a life lesson about caring for each other. These absurdities only happen because today's pack leading companies are now focusing their attention on making history with AGI (doubtful) instead of making products with generative systems (useful). And the absurdities will persist as these companies try to layer products on top of the lobotomizied "agents" with GPTs or characters or whatever instead of productizing the technological, useful, generative layer directly. Hopefully, some of the recent team shuffles at Google, Meta, and Microsoft; as well as the crisis at OpenAI; hint that we're starting to cast off the fantasy-laden and cult-tainted AGI fetishization and are returning to the exciting engineering promises of the technology that's already here. |
But when the pessimists and cynics show so clearly on such a large scale that they aren't uniformly wise or competent, it will allow more levelheaded perspectives towards LLMs and a more general cautious optimism be the guiding philosophy around developing these tools.