Thursday, August 3, 2017

2017-026-Machine_Learning-Market Hype, or infosec's blue team's newest weapon?


Direct Link: http://traffic.libsyn.com/brakeingsecurity/2017-026-Ally_miller_machine-learning-AI.mp3

Ally Miller (@selenakyle) joined us this week to discuss Machine Learning and #Artificial #Intelligence. It seems like every new security product employs one or both of these terms. She did the keynote at Bsides Las Vegas on topics of #Machine #Learning and #Behavioral #Economics.

We asked Ms. Miller to join us here to discuss what ML and AI are, how algorithms work to analyze the data to come to the right conclusion. What is required to get a useful algorithm, and how much or little human interaction is required?

We also discuss a bit of history with her, how IDS/IPS were just dumber versions of machine learning, with 'tweaks' being new Yara or snort rules to tell the machine what to allow/disallow. 

Finally, we discussed how people who are doing our 2017 DerbyCon CTF, instructions on how to win are in the show, so please take a listen.

 

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show notes

 

what is the required amount of data required to properly train the algorithms

 

how do you ensure that the training data is clean (or perhaps how do you determine what causes a false positive or negative)

 

Xoke Soru: "why are you trying to make skynet and kill us all?  Do you hate humanity?"

 

Who will ML replace? Who in security?

 

Ask why people get confused between AI and Machine learning, and where the fine line is between the two or is one actually a subset of the other.

 

Basically.. "in what way/how do you see ML being used in an offensive capacity in the future (or now)"

 

https://en.wikipedia.org/wiki/Artificial_neural_network

 

https://en.wikipedia.org/wiki/Machine_learning

 

https://en.wikipedia.org/wiki/Portal:Machine_learning

 

https://www.slideshare.net/allyslideshare/something-wicked-78511887

 

https://www.slideshare.net/allyslideshare/201209-a-million-mousetraps-using-big-data-and-little-loops-to-build-better-defenses

 

https://conferences.oreilly.com/velocity/vl-ca/public/schedule/detail/61751

 

O’Reilly Conference 31 October

 

Mick douglas class

Derbycon CTF

Book club

 

Patreon

slack


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