Dear all,

Apologies if you receive multiple copies of this email.

A PhD position is available (fully funded for 4 years with the possibility of 
extension) at the Electrical and Computer Engineering Department of Utah State 
University. The expected starting date is early January 2020. PhD application 
information is available at: 
https://engineering.usu.edu/ece/files/pdfs/ece-graduate-program-application-info.pdf

Abstract:
Synthetic biology and nanotechnology place increasing demands on design 
methodologies to ensure dependable and robust operation. Consisting of noisy 
and unreliable components, these complex systems have large and often infinite 
state spaces that include extremely rare error states. Probabilistic model 
checking techniques have demonstrated significant potential in quantitatively 
analyzing such system models under extremely low probability. Unfortunately, 
they generally require enumerating the model's state space, which is 
computationally intractable or impossible. Therefore, addressing these design 
challenges in emerging technologies requires enhancing the applicability of 
probabilistic model checking. Motivated by this problem, this project 
investigates an automated probabilistic verification framework that integrates 
approximate probabilistic model checking and counterexample-guided rare-event 
simulation to improve the analysis accuracy and efficiency.

This multi-institution collaborative project focuses on verifying 
infinite-state continuous-time Markov chain (CTMC) models with rare-event 
properties. It addresses the scalability problem by first applying 
property-guided and on-the-fly state truncation techniques to prune unlikely 
states to obtain finite state representations that are amenable to 
probabilistic model checking. In the case of false or indeterminate 
verification results, probabilistic counterexamples are generated and utilized 
to improve the accuracy of the state reductions. Furthermore, it mines these 
critical counterexamples as automated guidance to improve the quality and 
efficiency for rare-event probabilistic simulations. This verification 
framework will be integrated within existing state-of-the-art probabilistic 
model checking tools (e.g., the PRISM model checking tool), and benchmarked on 
a wide range of real-world case studies in synthetic biology and nanotechnology.
========================================


Project description:

The PhD position at Utah State University will be advancing and developing 
efficient model abstraction and state space truncation techniques for the 
infinite-state CTMC models. In particular, we are interested in investigating:

- Model abstraction techniques on chemical reaction networks for synthetic 
biology

- Approximation techniques for state space truncation and abstraction

- Property-guided state space pruning techniques
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Qualifications:

Applicants must have a bachelor's degree in Computer Science, Computer 
Engineering, or a related field. A master's degree is preferred. The successful 
candidate is expected to demonstrate strong background and interest in formal 
methods and algorithms, and preferably basic knowledge of probability and 
random process. He/She should be confident in independently developing academic 
software tools. Good writing and presentation skills in English are important 
as well. Knowledge of synthetic biology is preferred, but not required.
========================================


Contact:

For questions about this position, please contact:

Dr. Zhen Zhang, [email protected]<mailto:[email protected]>, 
https://engineering.usu.edu/ece/faculty-sites/zhen-zhang/index
========================================


ECE Department at USU:

The place of employment is the Electrical and Computer Engineering Department 
at Utah State University. The university is located in Logan, Utah, 88 miles 
(about 142 km) north of Salt Lake City. The mission of the Department of 
Electrical and Computer Engineering is to serve society through excellence in 
learning, discovery, and outreach. We provide undergraduate and graduate 
students an education in electrical and computer engineering, and we aspire to 
instill in them attitudes, values, and visions that will prepare them for 
lifetimes of continued learning and leadership in their chosen careers. Through 
research, the department strives to generate and disseminate new knowledge and 
technology for the benefit of the State of Utah, the nation, and beyond. The 
detailed graduate program description can be found at: 
https://engineering.usu.edu/ece/students/graduate/index.
========================================
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