Anuket Project

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Attendees

Sridhar Rao

Beth Cohen

Akanksha Singh

Rohit Singh Rathaur

Kanak Raj

Jahanvi Ojha

Girish

Timo

Vidyashre

Renuka

Hemashree

Al Morton

Ildiko

Sandra Jackson (Deactivated)



Sl. No.TopicPresenterNotes
1AlgoSelector Update

Supervised Learning:

Started with the implementation. Request for Feedback.

Goal For Next Week: Unsupervised Learning. 

2Failure Emulation Update

No Breakthrough Yet.

Still Trying with stress-ng (interrupts, system-calls, ...)

3FP Model Development Update

Documentation: Pending

Demo

models/failure_prediction/ *.ipynb, models/failure_prediction/static_htmls, models/failure_prediction/data_preprocessing.

Rohit presented his work as part of the 'Final-Presentation' of his Internship.

Beth: Were the results expected? 

Girish/Rohit: 

Steve: Out of 26 features, only 6 features are used. This choice is based on?

Girish/Rohit:

Girish: Going ahead, we will try with better data and improve these models.

Rohit: Continue to contribute to Thoth.

Target date for Whitepaper: October 20th.

4Data Extraction Tool StatusStuck at Prometheus (tested), Elasticsearch(untested).
5Synthetic Data Generation - GANs

Girish et. al.,

Generate Monitoring/logging data using GANs.  This is a new project to create synthetic data for testing of operational ML algorithms.  The idea is to create this data set to be used across the industry as a reference data set.

Hemashree, Vidyashree, Renuka

6Exploration: Openstack Log Analysis

Openstack Logs: 

Existing Approaches: ELK - Kibana + Alarms.

Analysis: Common approach is using NLP.

Approach:  Google's BERT model for Openstack Logs.

Problems: Anomaly Detection + Pattern Analysis

Deekshita and Rakshita - NLP, Try with Openstack Logs (??)

Data: https://github.com/logpai/loghub/tree/master/OpenStack

Use of NLP for Openstack Logs has already been tried: https://www.cs.utah.edu/~lifeifei/papers/deeplog.pdf .  This work will be used as a reference.

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