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, she held post-doctoral positions with the Departments of Mathematics and of Electronics and Telecommunications, Politecnico di Torino. Since 2017, she has been a Tenured Researcher with the CNR-IEIIT, working in the Systems Modeling & Control Group. Her research interests include signal processing, 2011.

P. K. Nelson and . Chan, Suriname in 2013, the MSc. degree in Systems & Control from