Job Description
The Bradley Department of Electrical and Computer Engineering (ECE) at Virginia Tech invites applications for a tenure-track or tenured faculty position at the assistant or associate professor level, focusing on Physical Artificial Intelligence (AI). The position is based in Blacksburg, Virginia, with opportunities for collaboration across Virginia Techs Institute of Advanced Computing (IAC) in Alexandria, VA, and other university research institutes.
The successful candidate will be expected to develop and maintain a nationally recognized, funded research program, teach undergraduate and graduate courses, and participate in department, college, and university service and outreach activities.
ECE Department Overview
The ECE department offers B.S., M.Eng., M.S., and Ph.D. degree programs in both Electrical Engineering and Computer Engineering, with a current enrollment of approximately 1,300 undergraduate and 670 graduate students. The department has 71 full-time, tenured or tenure-track faculty members and 22 non-tenure-track faculty located in two primary locations: the Blacksburg Campus and the Greater Washington, D.C. area, including the new VT IAC Campus in Alexandria, Virginia.
Annual research expenditures exceed $56 million. Recognition of faculty accomplishments includes 4 members of the National Academy of Engineering, 30 Fellows of the IEEE, and various fellows of other professional societies, 27 current and prior NSF CAREER awardees, and 4 DoD Young Investigators. The latest Global Universities ranking by U.S. News & World Report (USN&WR) places our department at 3 nationally in the Electrical and Electronic Engineering category.
The department has some of the nations best programs in the areas of fiber optics and photonics, space science and remote sensing, wireless communications and networking, power electronics, power systems, autonomous systems, embedded systems, and computational biology.
The Department is the beneficiary of the Bradley Endowment, valued in excess of $20 million. For additional information about the department and the College of Engineering, please visit www.ece.vt.edu and www.eng.vt.edu.
Job Summary
We seek a visionary scholar to pioneer the convergence of AI with physical laws, materials, devices, and engineered systems, enabling predictive, trustworthy, and autonomous operation of complex physical platforms. The successful candidate will develop AI-native models, digital twins, and control frameworks that bridge the loop between theory, simulation, experimentation, and deployment across one or more of ECEs core strength areas, including:
• Semiconductors and micronanofabrication • Photonics and optoelectronics • Quantum and cryogenic devices • Wireless communications, networking, and sensing systems • Power electronics, power systems, and energy infrastructure
This position aligns with national priorities in AI-for-Science, the Genesis Mission, CHIPS, and Science Act initiatives, autonomous laboratories, resilient cyber-physical systems, and next-generation infrastructure, and complements Virginia Techs strong interdisciplinary ecosystem spanning ECE, computing, materials, and applied sciences.
Research Focus
We invite candidates whose research advances Physical AI-AI systems that reason over learn from and act within the physical world, grounded in first principles and experimental reality. Areas of interest include but are not limited to:
• Physics-Informed and Hybrid AI Methods • Physics-Informed Neural Networks (PINNs) • Operator learning and neural surrogates • Hybrid modeling combining governing equations, simulations, and data • Uncertainty-aware learning, interpretability, and robustness for physical systems and inverse problems • Co-design and constrained learning under physical laws
Candidates may focus on one or more domains such as semiconductor devices and nanomanufacturing, process control, yield learning, variability, reliability, photonics and optoelectronics, inverse design, fabrication-aware modeling, nonlinear or multi-physics systems, quantum and cryogenic platforms, noise modeling, calibration, control, materials-device coupling, wireless and sensing systems, AI-native PHY/MAC RF-aware learning, joint sensing-communications, power electronics and power systems, physics-aware grid modeling, stability, protection, resilience, microgrids, and cross-domain work that transfers Physical AI methods across platforms.
Position Description
The successful candidate will teach core courses in computer engineering, such as embedded systems, computer architecture, and network application design, as well as specialized graduate courses in their research area. They will contribute to interdisciplinary initiatives with the Institute of Advanced Computing (IAC), the Commonwealth Cyber Initiative (CCI), the National Security Institute (NSI), the Institute for Creativity, Arts, and Technology (ICAT), and the Institute for Critical Technology and Applied Science (ICTAS). In addition, they will mentor graduate students and postdoctoral researchers and contribute to professional and university service activities.
Requirements
Applicants must apply online at jobs.vt.edu. Application materials include a cover letter, curriculum vitae, up to three relevant research publications, and contact information for at least three references. In addition, applicants must provide three separate written statements, up to 3 pages each:
Review of applications will commence on March 15, 2026, and continue until the position is filled.
Required Qualifications
• Ph.D. by start date in Electrical and Computer Engineering or a closely related field • Demonstrated research potential or accomplishments in Physical AI, Physics-Informed AI, or AI for physical systems • Strong grounding in physical modeling, devices, systems, or experimentation relevant to ECE • Evidence of potential to secure competitive extramural funding • Commitment to excellence in teaching, mentoring, and inclusive academic practices
Preferred Qualifications
• Experience with experimental platforms, fabrication hardware systems, or large-scale physical infrastructure • Experience with multi-physics modeling, simulation, or scientific computing • Experience bridging theory, computation, and real-world data • Experience with secure data workflows, reproducibility, or shared research infrastructure • Demonstrated interest in interdisciplinary or cross-domain Physical AI
Overtime Status
Exempt. Not eligible for overtime.
Appointment Type
Regular. Hours per week: 40.
Review Date
March 15, 2026, and remain open until filled.
Additional Information
The successful candidate will be required to have a criminal conviction check.
About Virginia Tech
Dedicated to its motto, "Ut Prosim," That I May Serve, Virginia Tech pushes the boundaries of knowledge by taking a hands-on, transdisciplinary approach to preparing scholars to be leaders and problem-solvers. A comprehensive land-grant institution that enhances the quality of life in Virginia and throughout the world, Virginia Tech is an inclusive community dedicated to knowledge discovery and creativity. The university offers more than 280 majors to a diverse enrollment of more than 36,000 undergraduate, graduate, and professional students in eight undergraduate colleges, a school of medicine, a veterinary medicine college, a Graduate School, and an Honors College.
The university has a significant presence across Virginia, including Blacksburg, the greater Washington, D.C. area, the Health Sciences and Technology Campus in Roanoke, sites in Newport News and Richmond, and numerous Extension offices and research institutes.
A leading global research institution, Virginia Tech conducts more than $650 million in research annually. Virginia Tech endorses and encourages participation in professional development opportunities and university shared governance, providing important representation and perspective, along with opportunities for unique and impactful professional development.
Virginia Tech does not discriminate against employees, students, or applicants on the basis of age, color, disability, sex, including pregnancy, gender, gender identity, gender expression, genetic information, ethnicity, or national origin, or otherwise discriminate against employees or applicants who inquire about, discuss, or disclose their compensation or the compensation of other employees or applicants, or on any other basis protected by law.
If you are an individual with a disability and desire an accommodation, please contact Cole Tankersley at cpt19@vt.edu during regular business hours at least 10 business days prior to the event.