LGJul 12, 2023

NetGPT: A Native-AI Network Architecture Beyond Provisioning Personalized Generative Services

arXiv:2307.06148v431 citationsh-index: 32Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of enhancing personalized generative services for users by integrating communications and computing resources, though it appears incremental as it builds on existing cloud-edge collaboration methods.

The authors tackled the challenge of personalizing large language models (LLMs) by proposing NetGPT, a collaborative cloud-edge architecture that synergizes LLMs based on computing capacity and leverages edge-based location information for prompt completion, demonstrating its feasibility through fine-tuning open-source models and showing superiority over alternative techniques in numerical comparisons.

Large language models (LLMs) have triggered tremendous success to empower our daily life by generative information. The personalization of LLMs could further contribute to their applications due to better alignment with human intents. Towards personalized generative services, a collaborative cloud-edge methodology is promising, as it facilitates the effective orchestration of heterogeneous distributed communication and computing resources. In this article, we put forward NetGPT to capably synergize appropriate LLMs at the edge and the cloud based on their computing capacity. In addition, edge LLMs could efficiently leverage location-based information for personalized prompt completion, thus benefiting the interaction with the cloud LLM. In particular, we present the feasibility of NetGPT by leveraging low-rank adaptation-based fine-tuning of open-source LLMs (i.e., GPT-2-base model and LLaMA model), and conduct comprehensive numerical comparisons with alternative cloud-edge collaboration or cloud-only techniques, so as to demonstrate the superiority of NetGPT. Subsequently, we highlight the essential changes required for an artificial intelligence (AI)-native network architecture towards NetGPT, with emphasis on deeper integration of communications and computing resources and careful calibration of logical AI workflow. Furthermore, we demonstrate several benefits of NetGPT, which come as by-products, as the edge LLMs' capability to predict trends and infer intents promises a unified solution for intelligent network management & orchestration. We argue that NetGPT is a promising AI-native network architecture for provisioning beyond personalized generative services.

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