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Ep 3: Applying ML to Cybersecurity, with Yihua Liao

Building Things with Machine Learning

Release Date: 10/06/2022

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Ep 3: Applying ML to Cybersecurity, with Yihua Liao show art Ep 3: Applying ML to Cybersecurity, with Yihua Liao

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Yihua Liao is Head of Data Science at Netskope, a next-generation cybersecurity firm. Yihua talks about using both CV and NLP to create novel cybersecurity features. Yihua Liao’s PhD research was on security and machine learning, and he previously worked at Microsoft, Facebook, Uber, and his own startup. For more information about this podcast, visit .   Show Notes:  00:24 - How Netskope addresses cybersecurity. 00:57 - Netskope’s unique approach to cybersecurity through network traffic routing. 02:51 - The prior approach to cybersecurity: a focus on the physical perimeter and...

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Trailer show art Trailer

Building Things with Machine Learning

Welcome to the Building Things with Machine Learning Podcast.  Every episode, I’ll be interviewing someone who building really interesting products using machine learning.  Our focus is really on applications: Medical diagnostics Autonomous vehicles  & advanced driver assistance systems (ADAS) Geospatial analytics Media and Content analysis Manufacturing Logistics And AEC, Architecture / Engineering / Construction What you won’t get are coding tips or research papers. Although ML developers are definitely part of our audience, so are product managers and marketers and...

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More Episodes

Yihua Liao is Head of Data Science at Netskope, a next-generation cybersecurity firm. Yihua talks about using both CV and NLP to create novel cybersecurity features. Yihua Liao’s PhD research was on security and machine learning, and he previously worked at Microsoft, Facebook, Uber, and his own startup.

For more information about this podcast, visit https://yaoshiang.com/podcast.html.

 

Show Notes: 

00:24 - How Netskope addresses cybersecurity.

00:57 - Netskope’s unique approach to cybersecurity through network traffic routing.

02:51 - The prior approach to cybersecurity: a focus on the physical perimeter and firewalls.

03:44 - A unique application of Image Classification in cybersecurity: identifying sensitive documents like driver’s licenses so CISOs (chief information security officer) can set security rules for them.

07:45 - Challenges of building Image Classifiers #1: High quality data.

08:45 - Challenges of building Image Classifiers #2: Managing false positive and false negatives (recall and precision).

09:15 - Challenges of building Image Classifiers #3: Managing latency (15 ms) for a real-time use case.

10:38 - An application of NLP (natural language processing) in cybersecurity: classifying phishing websites.

13:46 - Optimizing LLMs (Large Language Models) through quantization and distillation.

14:45 - How Yihua got into ML. 16:10 - How ML has evolved over the past 15 years.

Notes: https://www.netskope.com/ https://www.netskope.com/blog/enhancing-security-with-ai-ml

A video version of this episode is available at https://www.youtube.com/watch?v=F3e0UPqenwo