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Direction et administration - ESC UNIL
Direction et administration - ESC UNIL

University of Lausanne - Wikipedia
University of Lausanne - Wikipedia

Ecole des sciences criminelles - ESC UNIL
Ecole des sciences criminelles - ESC UNIL

Florent GATHERIAS | LinkedIn
Florent GATHERIAS | LinkedIn

Frank Breitinger | Associate Professor of Digital Forensic Science and  Investigation, University of Lausanne
Frank Breitinger | Associate Professor of Digital Forensic Science and Investigation, University of Lausanne

24 5C 1610 Frank Zobel
24 5C 1610 Frank Zobel

Christophe Champod (@cchampod) / Twitter
Christophe Champod (@cchampod) / Twitter

Ecole des sciences criminelles - ESC UNIL
Ecole des sciences criminelles - ESC UNIL

Timothy BOLLÉ | University of Lausanne, Lausanne | UNIL | Ecole des  sciences criminelles (ESC) | Research profile
Timothy BOLLÉ | University of Lausanne, Lausanne | UNIL | Ecole des sciences criminelles (ESC) | Research profile

L'Ecole des Sciences Criminelles de Lausanne - Police Scientifique
L'Ecole des Sciences Criminelles de Lausanne - Police Scientifique

Issues · esc-unil/Visualist · GitHub
Issues · esc-unil/Visualist · GitHub

Direction et administration - ESC UNIL
Direction et administration - ESC UNIL

Carre_B_300x300.png
Carre_B_300x300.png

Julio Paulos 🦣 @juliopaulos@assemblag.es (@julio_paulos) / Twitter
Julio Paulos 🦣 @juliopaulos@assemblag.es (@julio_paulos) / Twitter

24 5C 1610 Frank Zobel
24 5C 1610 Frank Zobel

A strategy and more high-tech tools – Les Globes de Mercator de l'UNIL
A strategy and more high-tech tools – Les Globes de Mercator de l'UNIL

PDF) The Opening and Closing of BreachesA Theory on Crime Waves, Law  Creation and Crime Prevention
PDF) The Opening and Closing of BreachesA Theory on Crime Waves, Law Creation and Crime Prevention

Ecole des sciences criminelles - ESC UNIL
Ecole des sciences criminelles - ESC UNIL

A general approach to Bayesian networks for the interpretation of evidence
A general approach to Bayesian networks for the interpretation of evidence