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AI PERSONA: Towards Life-long Personalization of LLMs

A framework for lifelong personalization of large language models to continuously adapt to user profiles and provide personalized assistance is introduced, along with methods for synthesizing benchmarks and evaluation metrics.

Year
2024
Venue
arXiv 2024
Authors
7
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arxiv.org/abs/2412.13103ARXIV-DEFAULT
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Abstract

In this work, we introduce the task of life-long personalization of large language models. While recent mainstream efforts in the LLM community mainly focus on scaling data and compute for improved capabilities of LLMs, we argue that it is also very important to enable LLM systems, or language agents, to continuously adapt to the diverse and ever-changing profiles of every distinct user and provide up-to-date personalized assistance. We provide a clear task formulation and introduce a simple, general, effective, and scalable framework for life-long personalization of LLM systems and language agents. To facilitate future research on LLM personalization, we also introduce methods to synthesize realistic benchmarks and robust evaluation metrics. We will release all codes and data for building and benchmarking life-long personalized LLM systems.

Authors

7