Dimitris Anastassiou
http://dbpedia.org/resource/Dimitris_Anastassiou an entity of type: Thing
Dimitris Anastassiou is an electrical engineer and Charles Batchelor Professor of Electrical Engineering in the Columbia University School of Engineering. Anastassiou's earlier work focuses primarily on signal and information processing and reverse engineering. His more recent work involves interdisciplinary research, specifically in systems biology, with investigators at Columbia University Medical Center. Anastassiou is Fellow of the IEEE as well as Fellow of the National Academy of Inventors and recipient of both the National Science Foundation Presidential Young Investigator Award and the IBM Outstanding Innovation Award.
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Dimitris Anastassiou
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Dimitris Anastassiou
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Dimitris Anastassiou
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26725844
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1952
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MPEG-2 technology
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Dimitris Anastassiou is an electrical engineer and Charles Batchelor Professor of Electrical Engineering in the Columbia University School of Engineering. Anastassiou's earlier work focuses primarily on signal and information processing and reverse engineering. His more recent work involves interdisciplinary research, specifically in systems biology, with investigators at Columbia University Medical Center. Anastassiou is Fellow of the IEEE as well as Fellow of the National Academy of Inventors and recipient of both the National Science Foundation Presidential Young Investigator Award and the IBM Outstanding Innovation Award. Anastassiou has made significant advances in the areas of digital technology. His research resulted in Columbia being the only university to hold patent in MPEG-2 technology, a crucial technique used in all types of digital televisions, DVDs, satellite TV, HDTV, digital cable systems, computer video, and other interactive media. In 2013, a team led by Anastassiou won the DREAM Breast Cancer Prognosis Challenge with a genetic model that could predict cancer prognoses with 76% accuracy.
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12083