Skip to main content
Research

Data science & artificial intelligence

As society’s challenges grow more complex, data science and artificial intelligence (AI) are increasingly important research tools for engineers. To effectively apply AI such as machine learning to real-world problems, researchers work with nonlinear systems, in complex environments and with ever-changing factors.

Researchers across ME are expanding future applications of machine learning, discovering new equation models and studying the ethical deployment of AI.

How ME is making an impact

AI for engineering

ME faculty are working to develop fundamental technology in AI and machine learning for dynamic systems; apply that technology to real-world problems; and shape educational and workforce development pathways.

Accelerating U.S. manufacturing

Batteries made in the U.S. must be cost-effective and high-performing, integrating elements such as digital twins, automation and AI-enabled smart manufacturing.

Putting the ‘AI’ in airplanes

Assistant Professor Krithika Manohar used a machine learning algorithm to optimally predict shim gaps for Boeing airplanes, saving the company time and computational resources.

Robotics for manufacturing

Researchers are working on quantifying the ergonomic risk of Boeing technicians who perform hand layups of composite materials.

Research centers and institutes

Advanced Composites Center

The Advanced Composites Center is building a robust innovation ecosystem for industry and academia to advance the field of data-driven methods for composites manufacturing.

AI Institute in Dynamic Systems

The AI Institute in Dynamic Systems aims to develop the next generation of advanced machine learning tools for controlling complex physical systems by discovering data-driven models through optimal sensor selection and placement.

Boeing Advanced Research Collaboration

Through the Boeing Advanced Research Collaboration, Boeing-employed engineers work in the lab alongside faculty and students on joint research projects in the manufacturing and assembly of aircraft and spacecraft structures.

eScience Institute

The eScience Institute empowers researchers and students in all fields to answer fundamental questions using large, complex and noisy data.

All research centers & institutes

Associated faculty

Faculty directory

Notable partners and sponsors

Argonne National Laboratory, Boeing, GE, Idaho National Laboratory, National Science Foundation, Oak Ridge National Laboratory, PACCAR, U.S. Department of Defense, U.S. Department of Energy, Pacific Northwest National Laboratory, UW Medicine.

Application areas

Advanced manufacturing

ME is using data science and AI to predict and improve manufacturing processes and lifecycles, create high-performance materials and improve ergonomic safety for employees.

Biomedical science and technology

ME is analyzing 3D imaging and applying machine learning to identify cancer risks, improve traumatic brain injury models and more. Integrating AI can lead to better diagnoses and treatments, which could transform patient care.

Energy

Researchers are building more energy-efficient materials, modeling how to collect and convert energy from renewable sources and more.

Environment

Researchers are analyzing large-scale fluid flow data to learn about microplastics transport, using machine learning to improve underwater monitoring and more.

Robotics

Our faculty and students use data science and AI to advance robotics for a variety of applications.

Related News

Comparison of AI-triaged 3D pathology and standard slide-based histology of Biopsy #13.

Mon, 08/05/2024

3D pathology and AI for Barrett’s esophagus

A new project aims to improve early cancer detection for people with a digestive condition.

Bar chart showing the clinical baseline at approximately 0.76, 2D AI on a 2D section at approximately 0.82, 2D AI on a 3D volume at approximately 0.84, and TriPath, 3D AI on a 3D volume, at approximately 0.86.

Tue, 06/18/2024 | Mass General Brigham

New AI models for 3D pathology

Researchers, including Professor Jonathan Liu, developed deep learning models that use 3D pathology datasets to predict clinical outcomes.

Mehmet Kurt

Thu, 12/07/2023 | UW Population Health Initiative

Population Health Initiative pilot grant award

Research co-led by Associate Professor Mehmet Kurt will develop machine learning strategies to improve glioblastoma segmentation in the Sub-Saharan Africa patient population.

 Mohammad Malakooti and Krithika Manohar

Mon, 11/13/2023

NSF grant to accelerate the discovery of soft multifunctional composites

The grant was awarded to Assistant Professor Mohammad Malakooti and Assistant Professor Krithika Manohar.