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Main Authors: Ning, Jiahong, Zhu, Pengyan, Zheng, Ce, Lee, Gary, Sun, Sumei, Yang, Tingting
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.11729
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author Ning, Jiahong
Zhu, Pengyan
Zheng, Ce
Lee, Gary
Sun, Sumei
Yang, Tingting
author_facet Ning, Jiahong
Zhu, Pengyan
Zheng, Ce
Lee, Gary
Sun, Sumei
Yang, Tingting
contents As sixth-generation (6G) networks advance, large language models (LLMs) are increasingly integrated into 6G infrastructure to enhance network management and intelligence. However, traditional LLMs architecture struggle to meet the stringent latency and security requirements of 6G, especially as the increasing in sequence length leads to greater task complexity. This paper proposes Edge-Prompt, a cloud-edge collaborative framework based on a hierarchical attention splicing mechanism. EdgePrompt employs distributed key-value (KV) pair optimization techniques to accelerate inference and adapt to network conditions. Additionally, to reduce the risk of data leakage, EdgePrompt incorporates a privacy preserving strategy by isolating sensitive information during processing. Experiments on public dataset show that EdgePrompt effectively improves the inference throughput and reduces the latency, which provides a reliable solution for LLMs deployment in 6G environments.
format Preprint
id arxiv_https___arxiv_org_abs_2504_11729
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EdgePrompt: A Distributed Key-Value Inference Framework for LLMs in 6G Networks
Ning, Jiahong
Zhu, Pengyan
Zheng, Ce
Lee, Gary
Sun, Sumei
Yang, Tingting
Signal Processing
As sixth-generation (6G) networks advance, large language models (LLMs) are increasingly integrated into 6G infrastructure to enhance network management and intelligence. However, traditional LLMs architecture struggle to meet the stringent latency and security requirements of 6G, especially as the increasing in sequence length leads to greater task complexity. This paper proposes Edge-Prompt, a cloud-edge collaborative framework based on a hierarchical attention splicing mechanism. EdgePrompt employs distributed key-value (KV) pair optimization techniques to accelerate inference and adapt to network conditions. Additionally, to reduce the risk of data leakage, EdgePrompt incorporates a privacy preserving strategy by isolating sensitive information during processing. Experiments on public dataset show that EdgePrompt effectively improves the inference throughput and reduces the latency, which provides a reliable solution for LLMs deployment in 6G environments.
title EdgePrompt: A Distributed Key-Value Inference Framework for LLMs in 6G Networks
topic Signal Processing
url https://arxiv.org/abs/2504.11729