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Crespo-Martínez et al., 2023 - Google Patents

SQL injection attack detection in network flow data

Crespo-Martínez et al., 2023

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Document ID
10539031065989844193
Author
Crespo-Martínez I
Campazas-Vega A
Guerrero-Higueras
Riego-DelCastillo V
Álvarez-Aparicio C
Fernández-Llamas C
Publication year
Publication venue
Computers & Security

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SQL injections rank in the OWASP Top 3. The literature shows that analyzing network datagrams allows for detecting or preventing such attacks. Unfortunately, such detection usually implies studying all packets flowing in a computer network. Therefore, routers in …
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