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Main Authors: Kim, Jiyeon, Lee, Hyunji, Zhou, Dylan, Park, Sue Hyun, Yoon, Seunghyun, Bui, Trung, Dernoncourt, Franck, Cha, Sungmin, Seo, Minjoon
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.07392
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author Kim, Jiyeon
Lee, Hyunji
Zhou, Dylan
Park, Sue Hyun
Yoon, Seunghyun
Bui, Trung
Dernoncourt, Franck
Cha, Sungmin
Seo, Minjoon
author_facet Kim, Jiyeon
Lee, Hyunji
Zhou, Dylan
Park, Sue Hyun
Yoon, Seunghyun
Bui, Trung
Dernoncourt, Franck
Cha, Sungmin
Seo, Minjoon
contents LLMs operating in dynamic real-world contexts often encounter knowledge that evolves continuously or emerges incrementally. To remain accurate and effective, models must adapt to newly arriving information on the fly. We introduce Online Adaptation to Continual Knowledge Streams(OAKS) to evaluate this capability, establishing a benchmark for online adaptation over streaming, continually updating knowledge. Specifically, the benchmark is structured as a sequence of fine-grained context chunks where facts change dynamically across time intervals. OAKS comprises two datasets: OAKS-BABI and OAKS-Novel, where individual facts evolve multiple times across context chunks. These datasets include dense annotations to measure whether models track changes accurately. Evaluating 14 models with varied inference approaches, we observe significant limitations in current methodologies. Both state-of-the-art models and agentic memory systems fail to adapt robustly on OAKS, demonstrating delays in state-tracking and susceptibility to distraction within streaming environments.
format Preprint
id arxiv_https___arxiv_org_abs_2603_07392
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Can Large Language Models Keep Up? Benchmarking Online Adaptation to Continual Knowledge Streams
Kim, Jiyeon
Lee, Hyunji
Zhou, Dylan
Park, Sue Hyun
Yoon, Seunghyun
Bui, Trung
Dernoncourt, Franck
Cha, Sungmin
Seo, Minjoon
Computation and Language
LLMs operating in dynamic real-world contexts often encounter knowledge that evolves continuously or emerges incrementally. To remain accurate and effective, models must adapt to newly arriving information on the fly. We introduce Online Adaptation to Continual Knowledge Streams(OAKS) to evaluate this capability, establishing a benchmark for online adaptation over streaming, continually updating knowledge. Specifically, the benchmark is structured as a sequence of fine-grained context chunks where facts change dynamically across time intervals. OAKS comprises two datasets: OAKS-BABI and OAKS-Novel, where individual facts evolve multiple times across context chunks. These datasets include dense annotations to measure whether models track changes accurately. Evaluating 14 models with varied inference approaches, we observe significant limitations in current methodologies. Both state-of-the-art models and agentic memory systems fail to adapt robustly on OAKS, demonstrating delays in state-tracking and susceptibility to distraction within streaming environments.
title Can Large Language Models Keep Up? Benchmarking Online Adaptation to Continual Knowledge Streams
topic Computation and Language
url https://arxiv.org/abs/2603.07392