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Autori principali: Sun, Guoheng, Wang, Ziyao, Zhao, Xuandong, Tian, Bowei, Shen, Zheyu, He, Yexiao, Xing, Jinming, Li, Ang
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.18471
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author Sun, Guoheng
Wang, Ziyao
Zhao, Xuandong
Tian, Bowei
Shen, Zheyu
He, Yexiao
Xing, Jinming
Li, Ang
author_facet Sun, Guoheng
Wang, Ziyao
Zhao, Xuandong
Tian, Bowei
Shen, Zheyu
He, Yexiao
Xing, Jinming
Li, Ang
contents Modern large language model (LLM) services increasingly rely on complex, often abstract operations, such as multi-step reasoning and multi-agent collaboration, to generate high-quality outputs. While users are billed based on token consumption and API usage, these internal steps are typically not visible. We refer to such systems as Commercial Opaque LLM Services (COLS). This position paper highlights emerging accountability challenges in COLS: users are billed for operations they cannot observe, verify, or contest. We formalize two key risks: \textit{quantity inflation}, where token and call counts may be artificially inflated, and \textit{quality downgrade}, where providers might quietly substitute lower-cost models or tools. Addressing these risks requires a diverse set of auditing strategies, including commitment-based, predictive, behavioral, and signature-based methods. We further explore the potential of complementary mechanisms such as watermarking and trusted execution environments to enhance verifiability without compromising provider confidentiality. We also propose a modular three-layer auditing framework for COLS and users that enables trustworthy verification across execution, secure logging, and user-facing auditability without exposing proprietary internals. Our aim is to encourage further research and policy development toward transparency, auditability, and accountability in commercial LLM services.
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id arxiv_https___arxiv_org_abs_2505_18471
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Invisible Tokens, Visible Bills: The Urgent Need to Audit Hidden Operations in Opaque LLM Services
Sun, Guoheng
Wang, Ziyao
Zhao, Xuandong
Tian, Bowei
Shen, Zheyu
He, Yexiao
Xing, Jinming
Li, Ang
Cryptography and Security
Artificial Intelligence
Modern large language model (LLM) services increasingly rely on complex, often abstract operations, such as multi-step reasoning and multi-agent collaboration, to generate high-quality outputs. While users are billed based on token consumption and API usage, these internal steps are typically not visible. We refer to such systems as Commercial Opaque LLM Services (COLS). This position paper highlights emerging accountability challenges in COLS: users are billed for operations they cannot observe, verify, or contest. We formalize two key risks: \textit{quantity inflation}, where token and call counts may be artificially inflated, and \textit{quality downgrade}, where providers might quietly substitute lower-cost models or tools. Addressing these risks requires a diverse set of auditing strategies, including commitment-based, predictive, behavioral, and signature-based methods. We further explore the potential of complementary mechanisms such as watermarking and trusted execution environments to enhance verifiability without compromising provider confidentiality. We also propose a modular three-layer auditing framework for COLS and users that enables trustworthy verification across execution, secure logging, and user-facing auditability without exposing proprietary internals. Our aim is to encourage further research and policy development toward transparency, auditability, and accountability in commercial LLM services.
title Invisible Tokens, Visible Bills: The Urgent Need to Audit Hidden Operations in Opaque LLM Services
topic Cryptography and Security
Artificial Intelligence
url https://arxiv.org/abs/2505.18471