Parakeet: Emission Factor Recommendation for Carbon Footprinting with Generative AI (Papers Track) Spotlight
Bharathan Balaji (Amazon); Nina Domingo (Amazon); Abu Zaher Faridee (Amazon); Venkata Sai Gargeya Vunnava (amazon); Anran Wang (Amazon); Fahimeh Ebrahimi Meymand (Amazon); Kellen Axten (Amazon); Aravind Srinivasan (Amazon); Qingshi Tu (University of British Columbia); Harsh Gupta (Amazon); Shikha Gupta (Amazon); Soma Ramalingam (Amazon); Jeremie Hakian (Amazon); Jared Kramer (Amazon)
Abstract
Accurately quantifying greenhouse gas (GHG) emissions from products and business activities is crucial for organizations to measure their environmental impact and undertake mitigation actions. Life cycle assessment (LCA) is the scientific discipline for measuring GHG emissions associated with each stage of a product or activity, from raw material extraction to disposal. Measuring the emissions outside of a product owner's control is challenging, and practitioners rely on emission factors (EFs) – estimates of GHG emissions per unit of activity – to model and estimate indirect impacts. These EFs come from prior LCA studies and are collated into databases. The current practice of manually finding the appropriate EF to use from databases is time-consuming, error-prone, and requires domain expertise, hindering scalability and accuracy in emissions quantification. We present a novel AI-assisted method that leverages large language models to automatically recommend EFs. Our method parses business activity descriptions and recommends the appropriate EF with a human-interpretable justification. We benchmark our solution across multiple domains and find it achieves state-of-the-art performance in EF recommendation, with an average Precision@1 of 88.4%. By streamlining and automating the EF selection process, our AI-assisted method enables scalable and accurate quantification of GHG emissions, supporting organizations' sustainability initiatives and driving progress toward net-zero emissions targets across industries.