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Field
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the cytoskeleton and associated signalling pathways regulate viral exocytosis. Immediately after virion fusion with the plasma membrane, but prior to the induction of actin polymerization, vaccinia recruits septins
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include: Developing deep learning models for spatiotemporal fusion of multi-sensor satellite data (e.g. SAR and SMAP), with soil moisture as a target variable. Designing and evaluating deep learning
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Responsibilities Research & Technical Development – 35% Develop, test, and deploy AI/ML models for: Flood forecasting (nowcasting and short-term prediction) Rainfall estimation and downscaling Remote-sensing fusion
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USDOT-funded, multi-year R-SEAT (Rural Safe Efficient Advanced Transportation) Center research, collaborating with consortium universities and local DOT partners on pilot projects, data fusion efforts
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development experience GTSAM or similar factor graph optimization frameworks Field robotics deployment in challenging environments Multi-sensor calibration and fusion Commitment to open-source development and
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-XRF, Raman, FTIR in reflection mode) to enable multimodal data fusion and automated material characterization. • Apply and further develop machine-learning and statistical models (e.g. PCA, SAM
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sensing (e.g., fusion of event camera, LIDAR and RGB vision sensing streams) that permit ultra-low power, saliency-driven sensing of 3D physical spaces, and (c) unobtrusive capture and use of implicit
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, atmospheric signals), data fusion across sensing modalities, and development of scalable machine learning pipelines. Work will be entirely computational and based in Seattle, with no field deployment
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. However, very little work has been performed on system/network optimization while considering the communications requirements jointly with the decision fusion process. This approach will produce novel
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twin models based on the fusion of mechanistic and data-driven approaches. Develop predictive maintenance and fault diagnosis algorithms for critical equipment (e.g., compressors, reaction kettles