Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
LCP
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"
Image for the paper "The working limitations of large language models"

The limits of LLMs

Machine learning

Large language models like ChatGPT can generate human-like text but businesses that overestimate their abilities risk misusing the technology.

The working limitations of large language models

Large language models (LLMs) seem set to transform businesses. Their ability to generate detailed, creative responses to queries in plain language and code has sparked a wave of excitement that led ChatGPT to reach 100 million users faster than any other technology after it first launched. Subsequently, investors poured over $40 billion into artificial intelligence startups in the first half of 2023 — more than 20% of all global venture capital investments — and companies from seed-stage startups to tech giants are developing new applications of the technology. But while LLMs are incredibly powerful, their ability to generate humanlike text can invite us to falsely credit them with other human capabilities, leading to misapplications of the technology. With a deeper understanding of how LLMs work and their fundamental limitations, managers can make more informed decisions about how LLMs are used in their organizations, addressing their shortcomings with a mix of complementary technologies and human governance.