Tue 5 Dec 2023 16:00 - 16:15 at Golden Gate C1 - Log Analysis and Debugging Chair(s): Yiming Tang

In distributed systems and microservice applications, tracing is a crucial observability signal employed for comprehending their internal states. To mitigate the overhead associated with distributed tracing, most tracing frameworks utilize a uniform sampling strategy, which retains only a subset of traces. However, this approach is insufficient for preserving system observability. This is primarily attributed to the long-tail distribution of traces in practice, which results in the omission or rarity of minority yet critical traces after sampling. In this study, we introduce an observability-preserving trace sampling method, denoted as STEAM, which aims to retain as much information as possible in the sampled traces. We employ Graph Neural Networks (GNN) for trace representation, while incorporating domain knowledge of trace comparison through logical clauses. Subsequently, we employ a scalable approach to sample traces, emphasizing mutually dissimilar traces. STEAM has been implemented on top of OpenTelemetry, comprising approximately 1.6K lines of Golang code and 2K lines of Python code. Evaluation on four benchmark microservice applications and a production system demonstrates the superior performance of our approach compared to baseline methods. Furthermore, STEAM is capable of processing 15,000 traces in approximately 4 seconds.

Tue 5 Dec

Displayed time zone: Pacific Time (US & Canada) change

16:00 - 18:00
Log Analysis and DebuggingIndustry Papers / Research Papers at Golden Gate C1
Chair(s): Yiming Tang Rochester Institute of Technology
16:00
15m
Talk
[Remote] STEAM: Observability-Preserving Trace Sampling
Industry Papers
Shilin He Microsoft Research, Botao Feng Microsoft, Liqun Li Microsoft Research, Xu Zhang Microsoft Research, Yu Kang Microsoft Research, Qingwei Lin Microsoft, Saravan Rajmohan Microsoft 365, Dongmei Zhang Microsoft Research
DOI Media Attached
16:15
15m
Talk
[Remote] Demystifying Dependency Bugs in Deep Learning Stack
Research Papers
Kaifeng Huang Fudan University, Bihuan Chen Fudan University, Susheng Wu Fudan University, Junming Cao Fudan University, Lei Ma The University of Tokyo / University of Alberta, Xin Peng Fudan University
Media Attached
16:30
15m
Talk
From Point-wise to Group-wise: A Fast and Accurate Microservice Trace Anomaly Detection Approach
Industry Papers
Zhe Xie Tsinghua University, Changhua Pei Computer Network Information Center at Chinese Academy of Sciences, Wanxue Li eBay, USA, Huai Jiang eBay, USA, Liangfei Su eBay, USA, Jianhui Li Computer Network Information Center at Chinese Academy of Sciences, Gaogang Xie Computer Network Information Center at Chinese Academy of Sciences, Dan Pei Tsinghua University
DOI Media Attached
16:45
15m
Talk
Semantic Debugging
Research Papers
Martin Eberlein Humboldt University of Berlin, Marius Smytzek CISPA Helmholtz Center for Information Security, Dominic Steinhöfel CISPA Helmholtz Center for Information Security, Lars Grunske Humboldt-Universität zu Berlin, Andreas Zeller CISPA Helmholtz Center for Information Security
Media Attached
17:00
7m
Talk
Analyzing Microservice Connectivity with Kubesonde
Industry Papers
Jacopo Bufalino Aalto University, Mario Di Francesco Eficode; Aalto University, Tuomas Aura Aalto University
DOI Media Attached
17:08
15m
Talk
[Remote] Hue: A User-Adaptive Parser for Hybrid Logs
Research Papers
Junjielong Xu Chinese University of Hong Kong, Shenzhen, Qiuai Fu Huawei Cloud Computing Technologies CO., LTD., Zhouruixing Zhu Chinese University of Hong Kong, Shenzhen, Yutong Cheng Chinese University of Hong Kong, Shenzhen, zhijing li , Yuchi Ma Huawei Cloud Computing Technologies CO., LTD., Pinjia He The Chinese University of Hong Kong, Shenzhen
Media Attached
17:23
15m
Talk
[Remote] Log Parsing with Generalization Ability under New Log Types
Research Papers
Siyu Yu Guangxi University, Yifan Wu Peking University, Zhijing Li The Chinese University of Hong Kong, Shenzhen, Pinjia He The Chinese University of Hong Kong, Shenzhen, Ningjiang Chen Guangxi University, Changjian Liu Guangxi University
Media Attached