Assignments (Each student finishes each assignment alone)
1. Data processing and visualization: 10%
2. System TroubleShooting: 15%
Project (A team of 2-3 students finishes the project together)
3. KPI Anomaly Detection 65%
Syllabus:
Week | Date | Topic, Papers, Slides and Reading List | Algorithms & Techniques |
1 | Feb 22 (7:20 pm-9:45pm) | Course Introduction | |
2 | Mar 1 (7:20 pm-9:45pm) | Video streaming | Data Visualization
Correlation, Regression, Information gain, Decision trees, Regression trees
|
3 | Mar 8 (7:20 pm-9:45pm) | ||
4 | Mar 15 (7:20 pm-9:45pm) | ||
5 | Mar 22 (7:20 pm-9:45pm) | KPI Anomaly detection | Time series Algorithms.
Deep Generative Models (VAE & GAN)
|
6 | Mar 29 (7:20 pm-9:45pm) | ||
7 | Apr 5 (University Holiday, No class) | ||
8 | Apr 12(7:20 pm-9:45pm) | KPI Anomaly Localization | Similarity |
9 | Apr 19 (7:20 pm-9:45pm) | ||
10 | Apr 26 (7:20 pm-9:45pm) | Log Anomaly Detection | |
11 | May 7th (Staturday) (7:20 pm-9:45pm) | ||
12 | May 10 (7:20 pm-9:45pm) | Trace Anomaly Detection and Localization | Random Walk |
13 | May 17 (7:20 pm-9:45pm) | Incident Management | Multi-Instance-Learning |
14 | May 24 (7:20 pm-9:45pm) | Resource Management | |
15 | May 31 (7:20 pm-9:45pm) | Signatureless Security | Neural Machine Translation |
16 | Jun 7 (7:20 pm-9:45pm) | Project Presentation |