Meet the five Microsoft Research
New Faculty Fellows.
Frédo Durand
Massachusetts Institute of Technology
Assistant professor
Computer Graphics
Durand’s research addresses all aspects of image synthesis and capture, and
this integration enables him to address transversal issues such as 3-D modeling
from 2-D images, relighting of photographs, real-time photorealistic effects
and material appearance capture. His research combines computer science,
mathematics, physics, visual perception and the visual arts.
Subhash Khot
Georgia Institute of Technology
Assistant professor
College of Computing
Khot works in the area of theoretical computer science, with an emphasis on
complexity theory. He tackles problems that are among the most difficult and
long-standing in computer-science theory, using novel techniques that draw on
fields such as coding theory, linear algebra and Fourier analysis. He has
provided specific leadership in the use of Probabilistically Checkable Proof
Systems to prove many inapproximability results, an approach that has been
proven powerful.
Dan Klein
University of California at Berkeley
Assistant professor
Computer Science
Division
Klein’s research demonstrates the feasibility of unsupervised methods of
learning to natural language processing problems such as grammar induction and
machine learning. His efforts to enable computers to learn important language
information, such as grammar, from abundantly occurring data, as opposed to
hand-labeled data, could have an enormous impact.
Radhika Nagpal
Harvard University
Assistant professor of Computer Science
School of Engineering
and Applied Sciences
Nagpal is interested in robust programming paradigms for systems composed of
large numbers of embedded, locally interacting, identically programmed nodes,
such as sensor-actuator networks, smart materials, and self-assembling and
swarm robotics. Her research draws on concepts from embryo development
suggested by biologists to explain how globally robust behavior can emerge from
the decentralized interactions of less reliable cells.
Wei Wang
University of North Carolina at Chapel Hill
Assistant professor
Department of Computer Science
Wei proposes to use novel techniques in data mining, automatic classification
and natural language text retrieval to address a central challenge of molecular
biology: linking proteins to their function. She has developed algorithms to
find recurring amino acid packing patterns in protein structures and to select
those patters whose occurrences are highly associated with known
functionalities.