LGAIJul 13, 2025

LLMs Meet Cross-Modal Time Series Analytics: Overview and Directions

arXiv:2507.10620v15 citationsh-index: 16SSTD
Originality Synthesis-oriented
AI Analysis

It offers a tutorial for researchers and practitioners in time series analytics, but is incremental as it summarizes existing methods without introducing new results.

This tutorial addresses the cross-modality gap between time series and textual data for LLM-based analytics by providing an overview and taxonomy of existing approaches, aiming to expand practical applications in real-world problems.

Large Language Models (LLMs) have emerged as a promising paradigm for time series analytics, leveraging their massive parameters and the shared sequential nature of textual and time series data. However, a cross-modality gap exists between time series and textual data, as LLMs are pre-trained on textual corpora and are not inherently optimized for time series. In this tutorial, we provide an up-to-date overview of LLM-based cross-modal time series analytics. We introduce a taxonomy that classifies existing approaches into three groups based on cross-modal modeling strategies, e.g., conversion, alignment, and fusion, and then discuss their applications across a range of downstream tasks. In addition, we summarize several open challenges. This tutorial aims to expand the practical application of LLMs in solving real-world problems in cross-modal time series analytics while balancing effectiveness and efficiency. Participants will gain a thorough understanding of current advancements, methodologies, and future research directions in cross-modal time series analytics.

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