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Mechanisms to detect insecure password through GANs based on data mining from leaks in the deep web

Grant number: 18/08673-8
Support Opportunities:Research Grants - Innovative Research in Small Business - PIPE
Start date: August 01, 2019
End date: August 31, 2020
Field of knowledge:Physical Sciences and Mathematics - Computer Science - Computer Systems
Principal Investigator:Rafael Mira de Oliveira Libardi
Grantee:Rafael Mira de Oliveira Libardi
Company:Noleak Tecnologia da Informação Ltda
CNAE: Desenvolvimento e licenciamento de programas de computador customizáveis
Consultoria em tecnologia da informação
City: Ribeirão Preto
Associated researchers:Emanuel Carlos de Alcantara Valente ; Lucas da Silva Assis
Associated scholarship(s):19/05116-3 - Mechanisms to detect insecure password through GANs based on data mining from leaks in the deep web, BP.PIPE
19/05473-0 - Mechanisms to detect insecure password through GANs based on data mining from leaks in the deep web, BP.TT
19/07730-0 - Mechanisms to detect insecure password through GANs based on data mining from leaks in the deep web, BP.TT

Abstract

Despite several systems force the usage of strong passwords, leaks, such as logins and credentials are growing. According to Verizon, in 2016 over 3 bilion passwords were stolen. According to the same report, 64 of data violations were consequence of stolen credentials. In 2016, the financial losses from these credential leakes were 1,5 trilion reais. Our proposal is to create a business risk intelligence platform from these leaks to protect the companies passwords. (AU)

Articles published in Agência FAPESP Newsletter about the research grant:
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