Mihir Durve is a researcher at the Center for Life Nano & Neuro Science (CLN2S), IIT Rome, specialising in deep learning-based computer vision for microfluidic analysis. He is currently involved in the EIC Pathfinder-funded iNSIGHT project, automating in-air capsule production for precision nutrition.
Research center
					              	CLN²S@Sapienza
				              			Biografia
	              			Education
	              			
							                Title: Ph.D. (Physics)
							                Institute: University of Trieste and ICTP
							                Location: Trieste
							                Country: Italy
							                From: 2016 To: 2020
						                
Skills
	              			
							                 Machine learning - Reinforcement learning, computer vision, deep learning
							                
						                
							                 HPC computing - Fortran90, Python, PyTorch, TensorFlow
							                
						                
							                 Statistical physics - Active matter systems, far from equilibrium system modelling
							                
						                
All Publications
	                2025
										Tiribocchi A., Durve M., Lauricella M., Montessori A., Tucny J.-M., Succi S.
										Lattice Boltzmann simulations for soft flowing matter
										Physics Reports, vol. 1105, pp. 1-52
									2024
										Bogdan M., Pineda J., Durve M., Jurkiewicz L., Succi S., Volpe G., Guzowski J.
										Crystallization and topology-induced dynamical heterogeneities in soft granular clusters
										Physical Review Research, vol. 6, (no. 3)
									
										
											Article
										
										
											Journal
										
										
									
								2024
										Durve M., Tucny JM., Bhamre D., Tiribocchi A., Lauricella M., Montessori A., Succi S.
										Droplet shape representation using fourier series and autoencoders
										AIAA Journal, vol. 0, (no. 0), pp. 1-5
									2024
										Tucny J.-M., Durve M., Montessori A., Succi S.
										Learning of viscosity functions in rarefied gas flows with physics-informed neural networks
										Computers and Fluids, vol. 269
									2024
										Durve M., Orsini S., Tiribocchi A., Montessori A., Tucny J.-M., Lauricella M., Camposeo A., Pisignano D., Succi S.
										Measuring arrangement and size distributions of flowing droplets in microchannels through deep learning using DropTrack
										Physics of Fluids, vol. 36, (no. 2)
									Colleagues of Multiscale and Quantum Simulations