Lizhi Liao

Orcid: 0000-0001-9920-5855

Affiliations:
  • Memorial University of Newfoundland, St. John's, NL, Canada


According to our database1, Lizhi Liao authored at least 10 papers between 2020 and 2025.

Collaborative distances:
  • Dijkstra number2 of five.
  • Erdős number3 of four.

Timeline

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Bibliography

2025
LTB25: 13th International Workshop on Load Testing and Benchmarking of Software Systems.
Proceedings of the Companion of the 16th ACM/SPEC International Conference on Performance Engineering, 2025

Early Detection of Performance Regressions by Bridging Local Performance Data and Architectural Models.
Proceedings of the 47th IEEE/ACM International Conference on Software Engineering, 2025

2024
Reducing the Length of Field-Replay Based Load Testing.
IEEE Trans. Software Eng., August, 2024

Towards a Robust Waiting Strategy for Web GUI Testing for an Industrial Software System.
Proceedings of the 39th IEEE/ACM International Conference on Automated Software Engineering, 2024

2023
Adapting Performance Analytic Techniques in a Real-World Database-Centric System: An Industrial Experience Report.
Proceedings of the 31st ACM Joint European Software Engineering Conference and Symposium on the Foundations of Software Engineering, 2023

Addressing Performance Regressions in DevOps: Can We Escape from System Performance Testing?
Proceedings of the 45th IEEE/ACM International Conference on Software Engineering: ICSE 2023 Companion Proceedings, 2023

2022
Locating Performance Regression Root Causes in the Field Operations of Web-Based Systems: An Experience Report.
IEEE Trans. Software Eng., 2022

An Empirical Study of the Impact of Hyperparameter Tuning and Model Optimization on the Performance Properties of Deep Neural Networks.
ACM Trans. Softw. Eng. Methodol., 2022

A case study on the stability of performance tests for serverless applications.
J. Syst. Softw., 2022

2020
Using black-box performance models to detect performance regressions under varying workloads: an empirical study.
Empir. Softw. Eng., 2020


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