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The ALCHEmist: Automated Labeling 500x CHEaper Than LLM Data Annotators

Alchemist generates cost-effective local programs from large pretrained models to annotate datasets with performance comparable to direct model queries.

Year
2024
Venue
arXiv 2024
Authors
4
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arxiv.org/abs/2407.11004v2ARXIV-DEFAULT
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Abstract

Large pretrained models can be used as annotators, helping replace or augment crowdworkers and enabling distilling generalist models into smaller specialist models. Unfortunately, this comes at a cost: employing top-of-the-line models often requires paying thousands of dollars for API calls, while the resulting datasets are static and challenging to audit. To address these challenges, we propose a simple alternative: rather than directly querying labels from pretrained models, we task models to generate programs that can produce labels. These programs can be stored and applied locally, re-used and extended, and cost orders of magnitude less. Our system, Alchemist, obtains comparable to or better performance than large language model-based annotation in a range of tasks for a fraction of the cost: on average, improvements amount to a 12.9% enhancement while the total labeling costs across all datasets are reduced by a factor of approximately 500x.

Authors

4