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1
Introduction
2
About Silence
3
About Malware
4
Roadmap
5
Hands
6
Machine Learning
7
Input Data Modalities
8
Labels
9
Feature Engineering
10
Logistic Regression
11
Future Engineering
12
Automatic Captioning
13
Failure Mode
14
Recurrent Neural Network
15
Paul Graham
16
Deep Neural Network
17
Edge Detection
18
Neural Networks
19
Disassembly
20
Takeaways
21
Questions
Description:
Explore deep learning techniques applied to disassembly for malware identification in this 41-minute Black Hat conference talk by Matt Wolff and Andrew Davis. Learn about the pipeline from raw binaries to disassembly data extraction and transformation, and deep learning model training. Discover the effectiveness of these models through presented data and a live demo evaluating them against active malware feeds. Gain insights into topics such as machine learning, input data modalities, feature engineering, logistic regression, recurrent neural networks, and the application of neural networks to disassembly. Understand the potential of treating disassembly as an extension of natural language processing and its implications for malware detection.

Deep Learning on Disassembly

Black Hat
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