Nexus : An Agentic Framework for Time Series Forecasting
Sarkar Snigdha Sarathi Das, Palash Goyal, Mihir Parmar, Nanyun Peng, Vishy Tirumalashetty, Chun-Liang Li, Rui Zhang, Jinsung Yoon, Tomas Pfister

TL;DR
Nexus is a multi-agent framework that enhances time series forecasting by integrating numerical and contextual reasoning, outperforming existing models on real-world data.
Contribution
Introduces Nexus, a novel multi-agent forecasting framework that decomposes prediction into stages for better handling of contextual and temporal information.
Findings
Nexus matches or outperforms state-of-the-art TSFMs and LLM baselines.
Nexus produces explicit reasoning traces explaining forecast drivers.
LLMs have stronger intrinsic forecasting ability than previously recognized.
Abstract
Time series forecasting is not just numerical extrapolation, but often requires reasoning with unstructured contextual data such as news or events. While specialized Time Series Foundation Models (TSFMs) excel at forecasting based on numerical patterns, they remain unaware to real-world textual signals. Conversely, while LLMs are emerging as zero-shot forecasters, their performance remains uneven across domains and contextual grounding. To bridge this gap, we introduce Nexus, a multi-agent forecasting framework that decomposes prediction into specialized stages: isolating macro-level and micro-level temporal fluctuations, and integrating contextual information when available before synthesizing a final forecast. This decomposition enables Nexus to adapt from seasonal signals to volatile, event-driven information without relying on external statistical anchors or monolithic prompting. We…
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