Treffer: Data Fusion of Observability Signals to Detect Anomalies and Failures in Microservices

Title:
Data Fusion of Observability Signals to Detect Anomalies and Failures in Microservices
Contributors:
Universidade Federal do Ceará = Federal University of Ceará (UFC)
Source:
12th International Workshop on ADVANCEs in ICT Infrastructures and Services (ADVANCE 2025). :52-59
Publisher Information:
CCSD, 2025.
Publication Year:
2025
Collection:
collection:UNIV-EVRY
collection:ADVANCE2025
Subject Geographic:
Original Identifier:
HAL: hal-05308564
Document Type:
Konferenz conferenceObject<br />Conference papers
Language:
English
Relation:
https://univ-evry.hal.science/hal-05194679; info:eu-repo/semantics/altIdentifier/doi/10.48545/advance2025-fullpapers-3_2
DOI:
10.48545/advance2025-fullpapers-3_2
Rights:
info:eu-repo/semantics/OpenAccess
Accession Number:
edshal.hal.05308564v1
Database:
HAL

Weitere Informationen

Microservices have become a reality, with large companies adopting this architecture due to its advantages, such as development agility, decoupling, scalability, resilience, and operational efficiency. However, this approach has drawbacks, such as the need for complex cloud infrastructure and communication between microservices through protocols. In organizations with hundreds of microservices, any failure in one of them can trigger cascading effects, resulting in more failures. Identifying failures in microservices is not a trivial task. The proposed work focuses on data fusion for detecting failures and anomalies in microservices, combining two pillars of observability: distributed tracing and metrics, with the help of OpenTelemetry. This fusion aims to provide faster and more efficient failure detection, as well as the identification of anomalies in metrics. This allows problems to be detected and addressed more quickly, improving the overall stability and reliability of the system.