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Scott Stender: Blind Security Testing - An Evolutionary Approach

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Manage episode 153226762 series 1085097
Content provided by Black Hat/ CMP Media, Inc. and Jeff Moss. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Black Hat/ CMP Media, Inc. and Jeff Moss or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.
The vast majority of security testing relies on two approaches: the use of randomly generated or mutated data and the use of type-specific boundary test cases.
Unfortunately, the current state of software security is such that most applications fall to these relatively simple tests. For those applications that have been specifically hardened against attack, something more sophisticated is required. Evolutionary algorithms can be used to gain the benefits of both approaches: tests that are better directed than random test cases but are not rigidly tied to data types.
This topic has been a hot one in the security industry for several years. Many approaches use code coverage or debugging techniques as key inputs for test case generation. Though helpful, these require complete access to the system under test.
This talk will cover the use of evolutionary algorithms in blind security testing, with an emphasis on test case generation and evaluation of test results. The concepts presented can be applied to any application under test, though this presentation will use web applications as the systems under test.
  continue reading

89 episodes

Artwork
iconShare
 
Manage episode 153226762 series 1085097
Content provided by Black Hat/ CMP Media, Inc. and Jeff Moss. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Black Hat/ CMP Media, Inc. and Jeff Moss or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.
The vast majority of security testing relies on two approaches: the use of randomly generated or mutated data and the use of type-specific boundary test cases.
Unfortunately, the current state of software security is such that most applications fall to these relatively simple tests. For those applications that have been specifically hardened against attack, something more sophisticated is required. Evolutionary algorithms can be used to gain the benefits of both approaches: tests that are better directed than random test cases but are not rigidly tied to data types.
This topic has been a hot one in the security industry for several years. Many approaches use code coverage or debugging techniques as key inputs for test case generation. Though helpful, these require complete access to the system under test.
This talk will cover the use of evolutionary algorithms in blind security testing, with an emphasis on test case generation and evaluation of test results. The concepts presented can be applied to any application under test, though this presentation will use web applications as the systems under test.
  continue reading

89 episodes

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