Result: TEP-GNN: Accurate Execution Time Prediction of Functional Tests using Graph Neural Networks

Title:
TEP-GNN: Accurate Execution Time Prediction of Functional Tests using Graph Neural Networks
Publisher Information:
2022-08-25
Document Type:
Electronic Resource Electronic Resource
Availability:
Open access content. Open access content
Other Numbers:
COO oai:arXiv.org:2208.11947
1381562385
Contributing Source:
CORNELL UNIV
From OAIsterĀ®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1381562385
Database:
OAIster

Further Information

Predicting the performance of production code prior to actually executing or benchmarking it is known to be highly challenging. In this paper, we propose a predictive model, dubbed TEP-GNN, which demonstrates that high-accuracy performance prediction is possible for the special case of predicting unit test execution times. TEP-GNN uses FA-ASTs, or flow-augmented ASTs, as a graph-based code representation approach, and predicts test execution times using a powerful graph neural network (GNN) deep learning model. We evaluate TEP-GNN using four real-life Java open source programs, based on 922 test files mined from the projects' public repositories. We find that our approach achieves a high Pearson correlation of 0.789, considerable outperforming a baseline deep learning model. However, we also find that more work is needed for trained models to generalize to unseen projects. Our work demonstrates that FA-ASTs and GNNs are a feasible approach for predicting absolute performance values, and serves as an important intermediary step towards being able to predict the performance of arbitrary code prior to execution.