Michael P. O'Neil, Ph.D.

Affiliations: 
2007 Yale University, New Haven, CT 
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"Michael O'Neil"

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Vladimir Rokhlin grad student 2007 Yale
 (A new class of analysis-based fast transforms.)
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Publications

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Vico F, Greengard L, O'Neil M, et al. (2020) A Fast Boundary Integral Method for High-Order Multiscale Mesh Generation Siam Journal On Scientific Computing. 42: A1380-A1401
Malhotra D, Cerfon AJ, O'Neil M, et al. (2020) Efficient high-order singular quadrature schemes in magnetic fusion Plasma Physics and Controlled Fusion. 62: 24004
Malhotra D, Cerfon AJ, Imbert-Gérard L, et al. (2019) Taylor states in stellarators: A fast high-order boundary integral solver Journal of Computational Physics. 397: 108791
Lai J, O'Neil M. (2019) An FFT-accelerated direct solver for electromagnetic scattering from penetrable axisymmetric objects Journal of Computational Physics. 390: 152-174
Epstein CL, Greengard L, O'Neil M. (2019) A high-order wideband direct solver for electromagnetic scattering from bodies of revolution Journal of Computational Physics. 387: 205-229
O'Neil M, Cerfon AJ. (2018) An integral equation-based numerical solver for Taylor states in toroidal geometries Journal of Computational Physics. 359: 263-282
Lai J, Greengard L, O'Neil M. (2018) A new hybrid integral representation for frequency domain scattering in layered media Applied and Computational Harmonic Analysis. 45: 359-378
Lai J, Greengard L, O'Neil M. (2017) Robust integral formulations for electromagnetic scattering from three-dimensional cavities Journal of Computational Physics. 345: 1-16
Rachh M, Klöckner A, O'Neil M. (2017) Fast algorithms for Quadrature by Expansion I: Globally valid expansions Journal of Computational Physics. 345: 706-731
Ambikasaran S, Foreman-Mackey D, Greengard L, et al. (2016) Fast Direct Methods for Gaussian Processes. Ieee Transactions On Pattern Analysis and Machine Intelligence. 38: 252-65
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