We have an opening for a Data Science Postdoctoral Researcher to perform research in multi-objective reinforcement learning as applied to physics and engineering problems, such as may be used in the protection of critical infrastructure. This may require the development of numerical linear algebra techniques in order to achieve efficient computation, as well as neural network and data compression to enable models to run on constrained edge hardware. In addition, statistical techniques and stochastic computing methods are frequently employed to enable reasoning and learning under uncertainty. You will support ongoing projects by developing capabilities to solve real-world problems aimed at improving the safety, reliability, and efficiency of our nation’s critical infrastructure. This position is in the Center for Applied Scientific Computing (CASC) within the Computation Directorate. In this role you will Research and develop reinforcement learning techniques to solve physics and engineering problems focused on the protection of critical infrastructure. Research and develop neural network compression and efficiency-enhancing approaches to enable effective use in constrained environments. Research and develop multiresolution data compression and visualization techniques to enable analysis of complex data. Develop high-quality software that solves complex machine learning problems that is extensible and maintainable by downstream users and developers. Deploy software on real-world devices to evaluate novel techniques in real-world settings. Develop and test algorithms and software in practical settings taking real-world limitations under consideration. Interact with engineers and other stakeholders in the space to understand those practical, real-world limitations. Pursue independent (but complementary) research interests and being able to interact with team members internally and externally. Publish research results in external peer-reviewed scientific journals and participate in conferences and workshops. Present formal and informal overview of research progress at group meetings. Participate in existing division collaborations and alliances with academia and industry. Perform other duties as assigned.
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Job Type
Full-time
Career Level
Entry Level
Education Level
Ph.D. or professional degree