"Thinking at a distance" with large language models sparks human-AI cognitive capacity transcending biological limits, but it risks existential "entangled mind" miscalibration.
LLMs enable "thinking at a distance"—almost instant access to vast knowledge, pushing human cognitive limits.
Human-AI convergence creates "entangled cognition" but risks misalignment between human and AI intellects.when it comes to processing information. The dichotomy maybe aptly captured by the metaphor"thinking at a distance," which draws parallels to the idea of, and lived experiences over extended periods. Data is splintered across disparate domains that we gradually unify through concerted cognitive labor over years.
As this synergistic synthesis deepens, continuously re-examining the"thinking at a distance" framing offers an interesting conceptual lens. It provides insights into foundational questions about intelligence, cognition, and the nature of knowledge itself. The era of"thinking at a distance" being redefined through human-machine co-evolution is firmly at hand and one of many fascinating aspects of our newAt any moment, someone’s aggravating behavior or our own bad luck can set us off on an emotional spiral that threatens to derail our entire day. Here’s how we can face our triggers with less reactivity so that we can get on with our lives.
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