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LLMs struggle with logic, necessitating human oversight in regulated fields

A recent analysis highlights a significant limitation of current Large Language Models: their inherent inability to perform logical reasoning. While LLMs excel at tasks like translation and code generation due to their tokenization capabilities, they falter when faced with logic-based problems such as mathematical calculations. This deficiency suggests a future where human oversight, particularly in regulated sectors, will become increasingly crucial for AI applications. AI

RANK_REASON Opinion piece by a named individual discussing limitations of LLMs.

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LLMs struggle with logic, necessitating human oversight in regulated fields

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  1. Mastodon — mastodon.social TIER_1 English(EN) · cytechlaw ·

    A very real problem is relying on LLMs to do logic. LLMs fundamentally can't do logic, they are great tools for use cases where the underlying tokenization lend

    A very real problem is relying on LLMs to do logic. LLMs fundamentally can't do logic, they are great tools for use cases where the underlying tokenization lends itself, like translation and code generation, but models on their own without tools still struggle with logic tasks li…