AIOps Spring2023 – Syllabus

 

 



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. Root Cause Localization with Data from AIOps Challenge: 65%

Syllabus:

Week Date Topic, Papers, Slides and Reading List Algorithms & Techniques
1 Feb 21 (7:20 pm-9:45pm) Course Introduction
2 Feb 28 (7:20 pm-9:45pm) Video streaming Data Visualization

Correlation, Regression, Information gain, Decision trees, Regression trees

 

3 Mar 7 (7:20 pm-9:45pm)
4 Mar 14 (7:20 pm-9:45pm)
5 Mar 21 (7:20 pm-9:45pm) KPI Anomaly detection Time series Algorithms.

Random Forests

Deep Generative Models (VAE & GAN)

Deep Sequence Learning

Transformer

6 Mar 28 (7:20 pm-9:45pm)
7 Apr 4 (7:20 pm-9:45pm) KPI Anomaly Localization Similarity

Clustering

KDE

Learning-to-Rank

8 Apr 11(7:20 pm-9:45pm)
9 Apr 18 (7:20 pm-9:45pm)  Log Anomaly Detection

Learning From Text

SVM

PCA

Logistic Regression

Transfer Learning

10 Apr 25 (7:20 pm-9:45pm)
11 May 2 (No class due to school holidays)
12 May 9 (7:20 pm-9:45pm) Trace Anomaly Detection and Localization Random Walk
13 May 16 (7:20 pm-9:45pm) Incident Management Multi-Instance-Learning

Extreme Gradient Boosted Trees

14 May 23 (7:20 pm-9:45pm) Resource Management

Deep Reinforcement Learning

Graph Neural Network

15 May 30 (7:20 pm-9:45pm) Signatureless Security Neural Machine Translation
16 Jun 6 (7:20 pm-9:45pm) Project Presentation

 

 
 
 
Scroll Up