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Andrea Giusti
Visiting PhD Student
Current Appointments:
Previous Appointments:
Education:
BSc Automatic Control Engineering, University of Naples Federico II, 2015-2018
MSc Automatic Control Engineering, University of Naples Federico II, 2018-2020
PhD Computational and Quantitative Biology, University of Naples Federico II, 2020-ongoing
Interests: automatic control, complex systems, multi-agent systems
Biography
Andrea Giusti graduated in Automation Engineering in October 2020 at the University of Naples Federico II, with a research thesis on pattern formation in large scale multi-agent systems. Andrea is currently a Ph.D. student in Computational and Quantitative Biology, under the supervision of Prof. Mario di Bernardo. His research interests are mainly focused on the modeling and the control of multi-agent systems, with applications to both robotics and system biology.
Pre-prints
Data-driven inference of digital twins for high-throughput phenotyping of motile and light-responsive microorganisms
Giusti A., Salzano D., di Bernardo M., Gorochowski T.E.
bioRxiv, 2025. (DOI: )
Current Appointments:
Previous Appointments:
Education:
BSc Automatic Control Engineering, University of Naples Federico II, 2015-2018
MSc Automatic Control Engineering, University of Naples Federico II, 2018-2020
PhD Computational and Quantitative Biology, University of Naples Federico II, 2020-ongoing
Interests: automatic control, complex systems, multi-agent systems
Andrea Giusti graduated in Automation Engineering in October 2020 at the University of Naples Federico II, with a research thesis on pattern formation in large scale multi-agent systems. Andrea is currently a Ph.D. student in Computational and Quantitative Biology, under the supervision of Prof. Mario di Bernardo. His research interests are mainly focused on the modeling and the control of multi-agent systems, with applications to both robotics and system biology.
Data-driven inference of digital twins for high-throughput phenotyping of motile and light-responsive microorganisms
Giusti A., Salzano D., di Bernardo M., Gorochowski T.E.
bioRxiv, 2025. (DOI: )