Refuel: Accelerating the era of AI abundance
Blog post from Refuel
Foundation models represent a significant advancement in artificial intelligence, enabling broad applications across various sectors such as healthcare and education. However, the development of AI projects is often hindered by the time-consuming and costly process of data labeling, a problem highlighted by previous experiences at companies like Meta. To address this, Refuel introduces a platform that automates dataset creation and labeling by leveraging large language models (LLMs), significantly speeding up the process and maintaining high accuracy. The platform aims to empower companies to train their own AI models effectively, contributing to the broader vision of AI abundance. Refuel, founded by experienced AI professionals, has secured support from notable investors and is releasing Autolabel, an open-source library, to assist in data annotation.