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TSCenter/awesome-time-series-papers

An Awesome List of the latest time series papers and code from top AI venues.

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What it does

This project is a curated collection of the latest research papers and accompanying code focused on analyzing data that changes over time — think stock prices, sensor readings, patient vitals, or website traffic patterns. It tracks cutting-edge work from top AI conferences, covering use cases like predicting future trends, spotting unusual behavior, and classifying patterns in time-based data.

Why it matters

Time-based data analysis is foundational to products in finance, healthcare, IoT, and operations — any product that needs to forecast demand, detect fraud, or flag equipment failures relies on these techniques. Having a single, up-to-date map of what's possible and what's proven helps product and strategy teams understand where the technology is heading and what competitors might build next.

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Score updated Feb 22, 2026

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