Keynote Speakers

Madeleine Udell is Assistant Professor of Operations Research and Information Engineering and Richard and Sybil Smith Sesquicentennial Fellow at Cornell University. She studies optimization and machine learning for large scale data analysis and control, with applications in marketing, demographic modeling, medical informatics, engineering system design, and automated machine learning. Her research in optimization centers on detecting and exploiting novel structures in optimization problems, with a particular focus on convex and low rank problems. These structures lead the way to automatic proofs of optimality, better complexity guarantees, and faster, more memory-efficient algorithms. She has developed a number of open source libraries for modeling and solving optimization problems, including Convex.jl, one of the top tools in the Julia language for technical computing.

Steven G. Johnson is a Professor of Applied Mathematics and Physics at MIT, where he joined the faculty in 2004 and previously received a PhD in physics (2001) and BS degrees in physics, mathematics, and computer science (1995). He has a long history of contributions to scientific computation and software, including the FFTW fast Fourier transform library (for which he co-received the 1999 J. H. Wilkinson Prize) and many other software packages. He has been using, contributing to, and teaching with Julia since 2012. He created and maintains blockbuster Julia packages that you may have heard of: PyCall and IJulia (and Julia’s FFTW bindings, of course). Professor Johnson’s professional research concerns wave-matter interactions and electromagnetism in media structured on the wavelength scale (“nanophotonics”), especially in the infrared and optical regimes. He works on many aspects of the theory, design, and computational modeling of nanophotonic devices, both classical and quantum. He is also a coauthor on over 200 papers and over 30 patents in this area, including the textbook Photonic Crystals: Molding the Flow of Light.

Steven Lee DOE Advanced Scientific Computing Research

Steven Lee is an Applied Mathematics Program Manager for Advanced Scientific Computing Research (ASCR) within the Department of Energy (DOE), Office of Science. Most recently, Steven and an organizing committee issued a brochure and workshop report on Scientific Machine Learning: Core Technologies for Artificial Intelligence. He has also been an ASCR Program Manager within the Scientific Discovery through Advanced Computing program (SciDAC-3 Institutes) for the projects: FASTMATH - Frameworks, Algorithms and Scalable Technologies for Mathematics; and QUEST - Quantification of Uncertainty for Extreme-Scale Computations. Before joining the DOE, Steven was a computational scientist at Lawrence Livermore National Laboratory and Oak Ridge National Laboratory. He has also been a visiting Assistant Professor in the Department of Mathematics at MIT. He has a Ph.D. in Computer Science (UIUC) and B.S. in Applied Mathematics (Yale).

Dr. Cynthia J. (C.J.) Musante is Senior Scientific Director and Head of Quantitative Systems Pharmacology (QSP) in Early Clinical Development at Pfizer in Cambridge, MA. She received her Ph.D. in Applied Mathematics from North Carolina State University and has over eighteen years of experience in QSP modeling. At Pfizer, her group is responsible for developing and applying mechanistic models and disease platforms to enhance the robustness and quality of decision-making at the program and therapeutic strategy-level. Dr. Musante is an advocate for model-informed drug discovery and development approaches. She currently serves as Treasurer and on the Board of Directors of the International Society of Pharmacometrics (ISoP), as Co-Chair of the Innovation and Quality (IQ) Consortium Clinical Pharmacology QSP Working Group, on the Scientific Programming Committee for the American Society of Clinical Pharmacology and Therapeutics, and formerly served as the inaugural Chair of ISoP’s QSP Special Interest Group.

Arch D. Robison is a Principal Systems Software Engineer at NVIDIA, where he works on TensorRT, NVIDIA’s platform for high-performance deep-learning inference. He was the lead developer for KAI C++, the original architect of Intel Threading Building Blocks, and one of the authors of the book Structured Parallel Programming: Patterns for Efficient Computation. Arch contributed type-based alias analysis and vectorization support to Julia, including the original implementation of SIMD in Julia 0.3. He’s used Julia to generate x86 assembly language for a Go implementation of his video game Frequon Invaders. He also took 2nd place in AI Zimmermann’s contest "Delacorte Numbers" using Julia exclusively. He has 21 patents and an Erdös number of 3.