Bridging the High-Frequency Data Gap: A Millisecond-Resolution Network Dataset for Advancing Time Series Foundation Models
arXiv cs.LG / 3/18/2026
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Key Points
- The paper introduces a millisecond-resolution dataset of wireless and traffic conditions from a live 5G deployment to extend time series foundation models to high-frequency data.
- It adds a new domain, wireless networks, and provides forecasting use cases with horizons from 100 ms to 9.6 s.
- Benchmark results show that most TSFM configurations struggle on this data distribution in both zero-shot and fine-tuned settings, revealing gaps in current architectures.
- The work argues for including high-frequency datasets in pre-training and forecasting to improve generalization, robustness, and adaptability of TSFMs in real-world applications.
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