Anomaly root cause diagnosis from active and passive measurement analysis
Z. Tlaiss. 2021 33rd International Teletraffic Congress (ITC-33), page 1-3. Avignon, France, (August 2021)
Abstract
Diagnosis demands a deep analysis of data to identify the root cause of an anomaly and still mostly relies on human experts. The increase of Internet traffic combined with the arrival of the encrypted protocol QUIC which invalidates many troubleshooting methods, urges to automate this process. To this effect, both domain familiarity and analysis skills are required. In this work we present our methods and strategies to detect the root cause of anomalies from active and passive network measurement and we share our plan towards an automatic root cause diagnosis. We focus on four root causes : transmission, congestion, application limited and packet delay variation, and present the building blocks of classification methods.
%0 Conference Paper
%1 tla21ITC33
%A Tlaiss, Ziad
%B 2021 33rd International Teletraffic Congress (ITC-33)
%C Avignon, France
%D 2021
%K Congestion_Control_algorithm Industries Internet Machine_learning Machine_learning_algorithms Passive_networks Process_control Protocols QUIC TCP active_probe itc itc33 passive_probe time_series_data troubleshooting
%P 1-3
%T Anomaly root cause diagnosis from active and passive measurement analysis
%U https://gitlab2.informatik.uni-wuerzburg.de/itc-conference/itc-conference-public/-/raw/master/itc33/tla21ITC33.pdf?inline=true
%X Diagnosis demands a deep analysis of data to identify the root cause of an anomaly and still mostly relies on human experts. The increase of Internet traffic combined with the arrival of the encrypted protocol QUIC which invalidates many troubleshooting methods, urges to automate this process. To this effect, both domain familiarity and analysis skills are required. In this work we present our methods and strategies to detect the root cause of anomalies from active and passive network measurement and we share our plan towards an automatic root cause diagnosis. We focus on four root causes : transmission, congestion, application limited and packet delay variation, and present the building blocks of classification methods.
@inproceedings{tla21ITC33,
abstract = {Diagnosis demands a deep analysis of data to identify the root cause of an anomaly and still mostly relies on human experts. The increase of Internet traffic combined with the arrival of the encrypted protocol QUIC which invalidates many troubleshooting methods, urges to automate this process. To this effect, both domain familiarity and analysis skills are required. In this work we present our methods and strategies to detect the root cause of anomalies from active and passive network measurement and we share our plan towards an automatic root cause diagnosis. We focus on four root causes : transmission, congestion, application limited and packet delay variation, and present the building blocks of classification methods.},
added-at = {2022-02-04T14:01:50.000+0100},
address = {Avignon, France},
author = {Tlaiss, Ziad},
biburl = {https://www.bibsonomy.org/bibtex/2d20b5da500dbea1a69b5dc6e394866a6/itc},
booktitle = {2021 33rd International Teletraffic Congress (ITC-33)},
interhash = {952c7db07e7af10feb627d306aa5ede6},
intrahash = {d20b5da500dbea1a69b5dc6e394866a6},
keywords = {Congestion_Control_algorithm Industries Internet Machine_learning Machine_learning_algorithms Passive_networks Process_control Protocols QUIC TCP active_probe itc itc33 passive_probe time_series_data troubleshooting},
month = Aug,
pages = {1-3},
timestamp = {2022-02-04T14:01:50.000+0100},
title = {Anomaly root cause diagnosis from active and passive measurement analysis},
url = {https://gitlab2.informatik.uni-wuerzburg.de/itc-conference/itc-conference-public/-/raw/master/itc33/tla21ITC33.pdf?inline=true},
year = 2021
}