Visiting Professor
Swarm Intelligence, Distributed Control of Multi-Agent Systems, and Distributed Task Allocation. I also investigate Machine Learning implementations (Supervised & Reinforcement) to expedite traditional planning algorithms.
Professor
Schema Matching; Entity Resolution; Semantic Integration of Data Resources; Business Process Management; Temporal Databases and Temporal Evolution of Databases.
Professor
Service-Engineering of large operations (e.g. hospitals / emergency-departments, call / contact-centers, courts, …); Operations research; Statistics; Queueing science & theory; Control theory; Data- and process-mining.
Professor
Computer Vision, Computer Graphics, Machine Learning, Visualization.
Associate Professor
Enviromatics; machine learning methods and mathematical for natural complex environments; hydro-informatics; atmospheric-informatics; precise agriculture; structural health; smart infrastructure systems and connected transportation.
Visiting Professor
Deep Neural Network representation learning, Machine Learning, Computer Vision, Geometric Deep learning, Algorithms for efficient training and inference of Deep Neural Networks.
Associate Professor
"Environmental Fluid dynamics Turbulent atmospheric flows Water waves, and wind-waves interactions Acoustics"
Assistant Professor
Urban and regional economics, Ecological and environmental economics, Systems modeling, Land use change, Economic geography
Professor
Conceptual Modeling, Systems Eng. and Modeling, Systems Architecture, Enterprise Systems Modeling; Object-Process Methodology; Ontologies; Software Development Methodologies, Semantic Web; Systems Biology, Robotics.
Associate Professor
Information and coding theory with applications to non-volatile memories, associative memories, data storage and retrieval, distributed storage, privacy, and DNA storage.
Assistant Professor
Automated Planning, Robotics, Artificial Intelligence.
Assistant Professor
Caching, Content Distribution, Optimizations for Flash Based Storage, Erasure Coding, Deduplication, Workload Characterization and Improved Analysis Tools.
Professor
Distributed and network-based computing, Distributed Storage, Parallel Computing, Blockchains.
Assistant Professor
Algorithmic game theory; Theory of computation; Optimization; AI; Internet economics; Market design; Auctions.
Professor
InterArray processing, signal processing, deep learning, analysis and modeling of acoustic signals, speech enhancement, noise estimation, source localization, blind source separation, system identification and adaptive filtering.
Professor
Accessibility, mobility, travel problems, disparities, social exclusion, equity.
Assistant Professor
Algorithmic aspects of multi-robot systems; smart mobility optimization; autonomous driving; robot control and decision making; societal aspects of autonomous transportation systems
Professor
Control policies that facilitates learning and sim2real transfer with applications to robot assembly and legged locomotion; Invasive and non-invasive Brain Machine Interfaces (BMIs) and error related processing;
Associate Professor
Machine Learning and Statistics, Combinatorial Optimization and Approximation Algorithms, Algorithmic Dimension Reduction and Applications, Complexity.
Assistant Professor
I seek to deeply understand and to rigorously address the computational challenges that arise when planning for robots. My research, lying at the intersection of Computer Science and Robotics, is motivated by the key insight that in order to address these challenges, traditional Computer Science algorithms, tools and paradigms need to be revisited. This requires (i) understanding and analyzing the unique domain-specific computational challenges in robotic planning and, subsequently (ii) developing algorithms to address these challenges to provide the robotics community foundational tools to solve real-world problems. For additional details, see my research statement.
Assistant Professor
Predicting human decision making; Mining behavioral data; behavioral economics; behavioral decision making; human learning processes; behavioral mechanism design; behavioral public policy.
Associate Professor
I am interested in understanding and mitigating the negative effects of strategic behavior. Mainly by people interacting via large systems, e.g. congestion in networks or biased group decisions.
Professor
Computer vision, graphics, Geometric machine learning and big data, computational medicine and biometry, applied metric and differential geometries.
Assistant Professor
Mathematical foundations of deep learning, graph neural networks, geometric deep learning, explainable AI.
Assistant Professor
Geodata science, methods of interpretation, mining, and integration of crowdsourced content to augment and develop location-based services and smart mapping infrastructures. Spatial-cognition, navigation, and the built-environment.
Assistant Professor
Multi-agent AI, multi-robot systems, collaborative AI, multi-agent environment design, integrated task and motion planning for robotics, and multi-agent reinforcement learning.
Professor
Artificial Intelligence, Machine Learning, Natural Language Semantics, Anytime Learning, Active and Selective Learning, Information retrieval, Multi-agent Systems, Adversary search, Opponent Modeling, Resource-bounded reasoning, Cost-sensitive Learning.
Professor
AI and machine learning, reinforcement learning and planning; learning, optimization and control under uncertainty, Multi-agent systems, Optimization of large scale problems, application of machine learning to a variety of problems: power grids, communication networks, etc.
Assistant Professor
Robust and adaptive optimization; Data-driven optimization; Algorithms for nonconvex and mixed-integer optimization; Optimization applications in: energy, inventory systems, estimation and control, statistics and healthcare.
Distinguished Professor
Network and multi-user information theory, Modern Communication networks (Cloud and Fog Radio Networks), Information and Signal Processing (Information-Estimation), Information bottleneck problems in communications and learning.
Associate Professor
Continuous Optimization: Theory and Algorithms, development and analysis of Optimization Methods for large-scale optimization problems, Applications of Optimization Methods in Machine/Deep Learning.
Assistant Professor
Theoretical & practical aspects of machine learning. Mathematical solutions to real-life problems demonstrating non-traditional statistical behavior.
Associate Professor
Computer Vision; Machine Learning; Image Processing; Signal Processing.
Professor
Transportation systems modeling and analysis, traffic simulation modeling, driving and travel behavior, intelligent transportation systems, traffic management and control.
Associate Professor
The intersection of probabilistic perception and inference, learning, and planning under uncertainty, both for single and distributed multi-agent autonomous systems.
Assistant Professor
Research centers around the theory and practice of statistical inference and machine learning, focusing on the reliability, robustness, and interpretability of modern data-driven algorithms.
Associate Professor
Storage devices, systems; Reliable data distribution in networks; Coding theory, Data compression.