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Main Authors: Chen, Zirong, Chason, Elizabeth, Mladenovski, Noah, Wilson, Erin, Mullen, Kristin, Martini, Stephen, Ma, Meiyi
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.16844
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author Chen, Zirong
Chason, Elizabeth
Mladenovski, Noah
Wilson, Erin
Mullen, Kristin
Martini, Stephen
Ma, Meiyi
author_facet Chen, Zirong
Chason, Elizabeth
Mladenovski, Noah
Wilson, Erin
Mullen, Kristin
Martini, Stephen
Ma, Meiyi
contents Emergency response services are vital for enhancing public safety by safeguarding the environment, property, and human lives. As frontline members of these services, 9-1-1 dispatchers have a direct impact on response times and the overall effectiveness of emergency operations. However, traditional dispatcher training methods, which rely on role-playing by experienced personnel, are labor-intensive, time-consuming, and often neglect the specific needs of underserved communities. To address these challenges, we introduce Sim911, the first training simulation for 9-1-1 dispatchers powered by Large Language Models (LLMs). Sim911 enhances training through three key technical innovations: (1) knowledge construction, which utilizes archived 9-1-1 call data to generate simulations that closely mirror real-world scenarios; (2) context-aware controlled generation, which employs dynamic prompts and vector bases to ensure that LLM behavior aligns with training objectives; and (3) validation with looped correction, which filters out low-quality responses and refines the system performance.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16844
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Sim911: Towards Effective and Equitable 9-1-1 Dispatcher Training with an LLM-Enabled Simulation
Chen, Zirong
Chason, Elizabeth
Mladenovski, Noah
Wilson, Erin
Mullen, Kristin
Martini, Stephen
Ma, Meiyi
Computation and Language
Artificial Intelligence
Emergency response services are vital for enhancing public safety by safeguarding the environment, property, and human lives. As frontline members of these services, 9-1-1 dispatchers have a direct impact on response times and the overall effectiveness of emergency operations. However, traditional dispatcher training methods, which rely on role-playing by experienced personnel, are labor-intensive, time-consuming, and often neglect the specific needs of underserved communities. To address these challenges, we introduce Sim911, the first training simulation for 9-1-1 dispatchers powered by Large Language Models (LLMs). Sim911 enhances training through three key technical innovations: (1) knowledge construction, which utilizes archived 9-1-1 call data to generate simulations that closely mirror real-world scenarios; (2) context-aware controlled generation, which employs dynamic prompts and vector bases to ensure that LLM behavior aligns with training objectives; and (3) validation with looped correction, which filters out low-quality responses and refines the system performance.
title Sim911: Towards Effective and Equitable 9-1-1 Dispatcher Training with an LLM-Enabled Simulation
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2412.16844