ICDM 2026 Half-Day Workshop
MIDAS: Multimodal Data Mining for Sustainable Agriculture
Bringing together data mining researchers, agricultural scientists, remote sensing experts, and industry practitioners to advance robust, scalable, and impactful data-driven methods for sustainable agriculture.
Workshop Scope
Data mining for modern agricultural systems
Agriculture is rapidly becoming a data-intensive domain shaped by large-scale sensing, remote observation, simulation models, and digital farm management systems. Modern agricultural data span field and satellite imagery, weather observations, soil and environmental sensor measurements, crop simulation outputs, genotype information, and farm management records.
MIDAS focuses on mining actionable knowledge from these heterogeneous sources to improve productivity, resilience, and sustainability. The workshop emphasizes methods for temporal modelling, robustness under distribution shifts, simulation-data fusion, and decision support in highly dynamic agricultural environments.
Call for Papers
Original contributions on data mining for sustainable agriculture
We invite original contributions on both theory and practice at the intersection of data mining and agricultural systems. Submissions may address multimodal learning, spatio-temporal modelling, simulation-data fusion, robust analytics, field deployment, or decision support for digital agriculture.
Contact
Questions about MIDAS?
Zijian Wang, The University of Queensland