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Dual-Stream Foundation Model

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GlucoFM: A Dual-Stream Foundation Model for Continuous Glucose Monitoring

arXiv:2605.30865v1 Announce Type: new Abstract: Continuous glucose monitoring (CGM) provides a dense view of daily metabolic physiology, yet existing generic time-series and CGM-specific foundation models often encode glucose traces as entangled single-stream sequences, leaving the distinct temporal structure of glycemic dynamics only implicitly modeled. We present GlucoFM, a lightweight CGM foundation model that aligns irregular recordings to a 24-hour chronological grid, preserves...

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PRISM: Synergizing Vision Foundation Models via Self-organized Expert Specialization

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GNSS-FM: A Self-Supervised Foundation Model for Daily GNSS Displacement Time Series

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GNSS-FM: A Self-Supervised Foundation Model for Daily GNSS Displacement Time Series

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dots.tts Technical Report

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Combining Statistical Features and Deep Encodings for Rehearsal-Based Class-Incremental Time Series Classification

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