Emily Mo-Hellenbrand, M.Sc.: Difference between revisions

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== Research Interests ==
== Research Interests ==
* High performance computing (HPC), invasive computing, hardware-aware programming
* High performance computing (HPC). Invasive computing. Hardware-aware programming.
* Weather / tsunami simulations
* Hyperbolic problems. Finite volume methods. Tsunami/weather/climate simulations.
* Fault-tolerant applications
* Inverse problems. Bayesian inference. Machine learning/data mining.
* Inverse problems, Bayesian inference, model reduction, machine learning
* Model order reduction. Sparse grids.
* Sparse grids
* Fault-tolerant applications.


== Research Projects ==
== Research Projects ==

Revision as of 03:11, 14 December 2014

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Address:
Technische Universität München
Institut für Informatik, Lehrstuhl 5
Boltzmannstr. 3
85748 Garching b. München


Office: MI 02.05.057

Email: Hellenbrmail.png

Phone: (089) 289 18 630

Fax: (089) 289 18 607

Office Hours: by arrangement


Student projects available. Contact for details.



Short CV

  • 2005-2007: Bachelor of Engineering in Electrical Engineering - Microelectronics, Stony Brook University (State University of New York), United States
  • 2007-2010: Applications Developer, JPMorgan Chase, New York, United States
  • 2011-2013: Master of Science in Computational Science and Engineering (CSE), Technical University Munich, Germany
  • 2014-present : Research associate / PhD candidate, Chair of Scientific Computing in Computer Science (SCCS), Technical University Munich, Germany

Research Interests

  • High performance computing (HPC). Invasive computing. Hardware-aware programming.
  • Hyperbolic problems. Finite volume methods. Tsunami/weather/climate simulations.
  • Inverse problems. Bayesian inference. Machine learning/data mining.
  • Model order reduction. Sparse grids.
  • Fault-tolerant applications.

Research Projects

Deutsche Forschungsgemeinschaft (DFG) funded. Collaboration between Universität Erlangen-Nürnberg, Karlsruhe Institute of Technology and Technische Universität München.

Conference Talks

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Teaching

Winter 14/15

Student Projects

  • P. Gómez: Adaptive Construction of Surrogate Models Based on Sparse Grid Interpolants for Bayesian Inverse Problems, IDP. (Active)