transkinesis

Research

Established research on spatio-temporal machine learning for mobility systems — forecasting, origin-destination modeling, and learning under structure — with emerging work on language models for research and decision workflows.

Themes

  • 01

    Spatio-temporal forecasting

    Forecasting models that treat time, geography, and mobility demand as connected structure.

  • 02

    Origin-destination modeling

    Methods for representing and predicting multi-modal movement patterns across urban systems.

  • 03

    Learning under structure

    Lipschitz-aware learning, graph structure, and transport constraints for stable modeling.

  • 04

    Language models for research

    Emerging work applying and evaluating language models for research workflows and structured decision support — the direction behind Local Research.

Publications

  • 2026

    Coming soon

    Selected publications will be added here.