Skip to content
Back Home
  • People
  • RESEARCH & INNOVATION
    • Research Areas
    • FUNDED PROJECTS
    • Reports and books
  • Education
    • Computational Science & Computational Learning (CSCL)
    • Statistical Learning (STAT)
  • DISSEMINATION
    • Mox Colloquia
    • MOX SEMINARS
    • Conferences and Workshops
  • Societal Outreach
  • Media
    • News
    • PRESS
    • YouTube Channel
  • Search
Back Home
  • Search
  • People
  • RESEARCH & INNOVATION
    • Research Areas
    • FUNDED PROJECTS
    • Reports and books
  • Education
    • Computational Science & Computational Learning (CSCL)
    • Statistical Learning (STAT)
  • DISSEMINATION
    • Mox Colloquia
    • MOX SEMINARS
    • Conferences and Workshops
  • Societal Outreach
  • Media
    • News
    • PRESS
    • YouTube Channel
Home » Digital twin
sc4i SC4I News

MOX Colloquium on Digital twins by Prof. R. Kenett

On Thursday February 10, 2022 Prof. Ron Kenett, Chairman of the KPA Group, Senior Research Fellow, the Samuel Neaman Institute, Technion, Haifa and Research Professor at the University of Turin in Italy, has delivered a MOX Colloquium entitled “Topics on Digital twins: Hybrid modeling, befitting cross validation and dynamical systems”. […]

  • Digital twin
by Nicola Parolini
Published February 10, 2022
Tag List
CFD Compressible Flows COVID-19 DG Dipartimento_di_Matematica epimox Finite Elements Finite Volume Free-surface FSI Geometrical reduced model HA home_page hpc Immersed boundary Incompressible Flows Ink-Jet Istantaneous Control lattice materials LES Magnetostatics Materials Mixing mox MOXlab MOXlab_events MOXlab_new MOXlab_news MOXlab_report MOX_report multi-physics non-Newtonian flow Non-orthogonal Mesh ODE methods OpenFoam Optimal Control Packaging POD Polimi Reduced Order Model stat statlearning Stiff problems Topology Optimization vaccini

Post navigation

  • Previous post MOX Report on Reduced order modeling of nonlinear microstructures
  • Next post Alfio Quarteroni national #1 and world #48 in Top World Mathematics Scientists
      

© 2022 MOX Politecnico di Milano – Dipartimento di Matematica – Via Bonardi, n 9 – 20133 Milano – P.IVA 04376620151 – C.F. 80057930150

Privacy Policy

Cookie Policy

Contacts

Mail address:
p.za Leonardo da Vinci 32
20133 Milano
Phone: +39 02 2399 4611
Web site: mox.polimi.it
E-mail: lab-mox@polimi.it
E-mail: segreteria-mox@polimi.it