Главная
Study mode:
on
1
Intro
2
Disclaimer
3
Malware Happens
4
Stopping Malware
5
Domain Generation Algorithms (DGA)
6
Combatting DGAS
7
Algorithmically Generated Text Stands Out
8
The Problem Statement
9
Project Alphabet Soup
10
The Models
11
Bigram Collocation
12
Collocation Results
13
Deep Learning Data
14
Model Architecture
15
Translating a Domain for ML
16
Embedding Layer
17
Character Embedding
18
LSTM Layer
19
Neural Networks for Sequential Input
20
Long Short-Term Memory Networks
21
LSTM Neurons Take Sequential Inputs
22
LSTMs Capture Temporal Dependencies
23
LSTMs Maintain State
24
Basics of CNN
25
Convolutional Neural Network
26
CNN for Text Analysis
27
Hidden Layer
28
The Output
29
Understanding Scoring
30
Investigation
31
Findings
32
Anatomy of a C&C network
33
Other Suspicious Activity
34
Trojan?
35
Deployment
36
Model as a Service
37
Wrapping Up
38
Questions?
39
LSTM Architecture
40
Detailed Ensemble Arch
Description:
Explore a comprehensive conference talk on using deep learning for real-time malware detection, focusing on Domain Generation Algorithm (DGA) malware. Learn about an ensemble model combining convolutional neural networks, long short-term memory networks, and natural language processing to analyze domains and identify potentially malicious machine-generated addresses. Discover how these deep learning models, built with Keras and TensorFlow, can capture complex patterns without manual feature engineering and resist reverse engineering attempts. Gain insights into the system's ability to process enterprise-scale network traffic in real-time, make predictions, and alert cybersecurity analysts. Understand the speakers' backgrounds in data engineering, computer science, and cybersecurity, and explore the talk's detailed syllabus covering various aspects of malware detection, deep learning architectures, and practical applications in cybersecurity.

Deep Learning for Realtime Malware Detection

0xdade
Add to list
0:00 / 0:00