Home | Research | Artificial Intelligence and Machine Learning

Artificial Intelligence and Machine Learning

Scott Sorenson - VIMS Lab

As Artificial Intelligence (AI) and Machine Learning (ML) expand their presence in every aspect of humans’ lives, almost all of the research activities in the Department of Computer and Information Sciences involve AI and ML in some way, too. The Department of Computer and Information Sciences has a long history of having a strong a successful line of research in the field of AI/ML. This includes research on the foundations of AI/ML as well as the applications of those. On the theoretical part, some of the currently active areas of research include multi-agent systems, reinforcement learning, and deep learning. On the applied part, most active research projects in the department relate to the applications of AI/ML techniques to health, biomedical, educational, and geographical data.

Rahmat Beheshti

Assistant Professor

Austin Brockmeier

Assistant Professor
Joint Appointment

Sunita Chandrasekaran

Associate Professor
David L. and Beverly J.C. Mills Career Development Chair

Dong Dai

Associate Professor

Keith Decker

Associate Professor

Yixiang Deng

Assistant Professor

Xi Peng

Assistant Professor

Christopher Rasmussen - CIS

Associate Professor

Ilya Safro

Associate Professor

Ulf Schiller

Associate Professor

Guangmo (Amo) Tong

Associate Professor

Cathy Wu

Unidel Edward G. Jefferson Chair in Engineering and Computer Science

Courses

  • CISC 4/642 – Introduction to Computer Vision
  • CISC 4/681 – Artificial Intelligence
  • CISC 4/682 – Introduction to Human-Computer Interaction
  • CISC 4/683 – Introduction to Data Mining
  • CISC 4/684 – Introduction to Machine Learning
  • CISC 4/686 – Introduction to Multi-Agent Systems
  • CISC 4/688 – Introduction to Natural Language Processing
  • CISC 4/689 – Topics: Artificial Intelligence
  • CISC 817 – Large Scale Machine Learning
  • CISC 846 – Introduction to Human-Centered Computing
  • CISC 886 – Multi-Agent Systems
  • CISC 889 – Advanced Topics in Artificial Intelligence

Artificial Intelligence Laboratories

Computational Data Science Lab

2020 Smith Hall, Professor Guangmo Tong.

We are the Computational Data Science lab at the University of Delaware. We are working on developing algorithmic and machine learning solutions towards effective and efficient decision makings in various systems, such as computational social networks, real-time embedded systems, and autonomous systems.

Computational Neural and Information Engineering Lab

306 Evans Hall, Professor Austin Brockmeier

Computational Neural and Information Eng. Lab

Deep Robust & Explainable AI Lab (Deep-REAL)

208 Smith Hall, Professor Xi Peng

Deep-REAL Lab works in the frontier research area of Deep Learning, Machine Learning, and Computer Vision. Our mission is to develop flexible, reliable, and explainable machine learning models, upon which cross-disciplinary research (biomechanics, geoscience, bioinformatics) can advance synergistically.

Dynamic Vision Lab

101 Smith Hall, Professor Christopher Rasmussen

The Dynamic Vision Lab studies visual and 3-D perception for mobile robots, particularly methods for robust, real-time tracking, detection, and segmentation in semi-structured outdoor environments.

Healthy LAife Laboratory

429 Smith Hall, Professor Rahmat Beheshti.

The Healthy LAife lab leverages data science and AI techniques to understand how individuals can have healthier lifestyles. We use various modalities of data including brain imaging, electronic health records, and wearable sensor datasets, and we are specifically working on several projects in the area of obesity and diabetes research.

Human Computer Interaction Lab

Professor Roghayeh (Leila) Barmaki

The Human-Computer Interaction (HCI) Lab investigates how immersive technologies can be designed and developed to facilitate user experience in education and healthcare. We study, design and prototype computing tools for digital capture and analysis of user-centered experiences in healthcare and education, drawing from the perspectives of patients, caregivers, students, and educators. Our research spans multimodal machine learning, data science, mixed reality and human-centered computing in general.

Human Language Technologies Laboratory

100 Elkton Road, Professor Kathy McCoy

The Human Language Technology Laboratory is an umbrella for two language-related laboratories: disabilities technology and discourse. The laboratory closely collaborates with the Statistical Information Retrieval Laboratory and the Text Mining Laboratory.

The Disabilities Technology Laboratory, directed by Kathy McCoy, develops intelligent interfaces for people with disabilities that affect their ability to communicate. The ICICLE System is an intelligent English grammar checker and tutor for people who are deaf. Other projects assist people who have special communication needs. We make “talking with” a computer faster and more natural. Another project is to help a person who has visual impairments “scan” a text to find the area relevant to answering a question.

The Discourse Laboratory, under the direction of Sandra Carberry, addresses problems related to discourse and dialogue. The Graphs project treats information graphics (bar charts, line graphs, etc.) as a form of discourse with a communicative goal. We are applying language understanding and generation techniques to index, store, and retrieve graphics from a digital library, to develop an interactive dialogue system that conveys the content of graphics via speech to individuals with sight impairments, and to develop an interactive graph design assistant that will critique graphs with the objective of improving them so that they achieve their communicative goal. Current collaborators include Dr. Stephanie Elzer (Millersville University), Dr. Dan Chester, and graduate students.

Multi Agent Systems Laboratory (MAS Lab)

447 Smith Hall, Professor Keith Decker

An agent is a computer system capable of flexible, autonomous action in dynamic multi-agent environments. The success of the Internet has shown that computing is no longer only about fast numerical calculation, or isolated information processing. It is now also about interaction and coordination amongst machines, and between machines and people. The MAS laboratory focuses on the science of coordination in applications ranging from distributed energy management and emergency response support to scientific information gathering.

Safro Research Group

101 Smith Hall, Professor Ilya Safro

Safro Research Group

Sensify Lab

101 Smith Hall, Professor Matthew Mauriello

The Sensify Lab at the University of Delaware focuses on sensing and data analysis techniques for detecting physical and behavioral phenomena that enable new interactions with technology. Particular emphasis is placed on human-centered design, cyber-physical and software systems that extend user capabilities, and practical applications of technology that address high-value social problems. Areas of interest include: education, health & wellbeing, environmental sustainability, human-building interactions, physical making, and games.

Text Mining Laboratory

102 Smith Hall, Professor Vijay Shanker

The Text Mining Laboratory, directed by Vijay Shanker, is concerned with the development of language technology algorithms to assist scientists to rapidly access relevant information from research literature. Projects include the extraction of targeted information, retrieval of relevant textual passages, and assistance in the knowledge discovery process. A related project involves rapid adaptation of language processing tools that were developed for a general domain to be used in a specific domain. A third project involves multi-disciplinary effort that integrates natural language cues found in large software programs and program analysis for multiple software development and maintenance tasks.

VIMS Vision Laboratory

212 Smith Hall, Professor Chandra Kambhamettu

VIMS (Video/Image Modeling and Synthesis) Lab encompasses research in areas related to computer vision and graphics. Our current research topics include camera systems, structure and motion recovery, stereo vision, facial image analysis, medical image analysis, object recognition and scene understanding, scientific visualization. Work done at VIMS explores solutions to challenging real-world problems such as Arctic ice motion and thickness studies, medical diagnosis and assistive robotics.