Hey Dave,

You got some things right and some things wrong. In security, most problems are 
not image classification related and do not benefit at the same level from the 
recent advances in Convolutional Neural Networks. Also, TensorFlow is not the 
first freely available Deep Learning library nor is it the first freely 
available Machine Learning classification library by a long shot. Take a look 
at e.g. some of the presentations that the MLSec Project made available, ML has 
been in security products for decades (and I worked on shipping products with 
it back in the day working at CipherTrust before people cared what technology 
stopped the threats as long as they were stopped). What’s new is that Machine 
Learning now also appears on marketing materials. So the question one should 
ask oneself is whether you still have a product once the ML hype wore off.

Best,
-Sven

-- 
Sven Krasser, Ph.D.
Chief Scientist, CrowdStrike, Inc.
http://www.crowdstrike.com | http://tinyurl.com/cs-svenk

From:  <[email protected]> on behalf of dave aitel 
<[email protected]>
Date:  Wednesday, March 30, 2016 at 5:56 AM
To:  "[email protected]" <[email protected]>
Subject:  [Dailydave] AI

There are only a few real computers in the world, and I think we are just 
beginning to feel their influence. For example, here is a sample project I am 
working on now that image classification is a solved problem.

Like many of you on this list, I dabble in brazilian jiu jitsu. In fact, in a 
week we are doing an open mat at INFILTRATE for both newcomers who've always 
wanted to try to choke me out, to people in the community who are already very 
good at choking people.

Like many sports, BJJ is typically scored according to a ruleset based on the 
different positions you end up in. Being on top is usually better. Being able 
to get on top after you are on the bottom is worth 2 points. Being able to 
completely mount someone is worth three points. Getting on their back is four 
points. Generally a tournament will hire judges and they will award points 
based on their understanding of the rules and their personal feelings towards 
the contestants and whatever other factors are floating in their heads.

What I'm working on is collecting a set of images of BJJ, then annotating them 
as to what positions the different people are in. This essentially maps every 
image into a vector space - and after training a neural network using modern 
techniques you can have a program that looks at an image and then outputs "Blue 
is in top mount". 

Part of the key here is that you don't have to tell it that the picture is BJJ. 
Every picture that program sees is two people doing BJJ. All it has to do is 
output what positions they are in.

And in the end, by assigning point values to transitions between positions, you 
will have an automatic BJJ judge. I've applied for a TensorFlow API key from 
Google since although this is not a hard problem by ML standards I want to do 
it the right way and get good scalable results on video later.

And of course, the same thing is true for the process information El Jefe will 
give you. All those "behavioral analysis machine learning intrusion detection" 
startups are about to be crushed by simple open source projects that use Google 
and MS and Amazon's exported Machine Learning APIs. 

-dave



Attachment: smime.p7s
Description: S/MIME cryptographic signature

_______________________________________________
Dailydave mailing list
[email protected]
https://lists.immunityinc.com/mailman/listinfo/dailydave

Reply via email to