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Charles Tripp

Researcher III-Computational Science

| 303-275-4082

Charles Tripp is a machine learning researcher who has spent over a decade on professional research and development projects. After graduating from Stanford with his PhD, he founded Terrain Data, Inc., a Silicon Valley data science startup. After guiding that business to a successful acquisition, he returned to research to pursue a career focused on the aspects of his work he enjoys most.

At NREL, Charles applies machine learning techniques to renewable energy and energy efficiency. He works to bridge the gap between emerging artificial intelligence and machine learning technologies and real-world practical applications He is particularly interested in applications of, and inquiry into, the nature of reinforcement learning and derivative-free optimization algorithms. As a byproduct, he is additionally interested in the fusion of classical techniques such as analytical models, linear and model predictive control, dynamic programming, with modern machine learning methods. Charles is a Bayesian and Decision Analyst at heart, and is always looking to apply solid decision science to machine learning problems.

Research Interests

Reinforcement Learning

Derivative-Free Optimization

Probabilistic Modeling

Stochastic Simulation

Bayesian Methods

Non-Convex Optimization

Non-Linear Control

Kalman Filters

Particle Filters

Education

Ph.D., Electrical Engineering, Stanford University

M.S., Electrical Engineering, Stanford University

B.S., Electrical Engineering, Rice University

Associations and Memberships

Member, ACM (2019-present)

Member, INFORMS (2018-present)

Member, SIGPLAN (2018-present)

Featured Work

FRC: A high-performance concurrentparallel deferred reference counter for C++, ACM SIGPLAN International Symposium onMemory Management (2018)

Approximate Kalman filter Q-learning for continuous state-space MDPs, Proceedings of the Twenty-Ninth Conference on Uncertainty in Artificial Intelligence (2013)

Heuristics for Large Scale Dynamic Programming, Thesis (Ph.D.) Stanford University Department of Electrical Engineering (2013)

Backtracking for More Efficient Large Scale Dynamic Programming, 11th International Conference on Machine Learning and Applications (2012)

Patents

Finding Similar Images Based on Extracting Keys from Images, US Patent 9384519B (2016)

ACID database: Adaptive Buffered B-Tree, Graphical Query Management System, US Patent Pending 62181622 (2015)