This is the replication package for the paper "AI-based Fault-proneness Metrics for Source Code Changes", submitted at the IWSM-Mensura '23 conference. The archive is a Docker image file with a fully setup and working environment to re-execute the experiments involved in the manuscript. We pre-loaded all libraries and codeBERT models to ease the replication process and avoid compatibility issues, as the environment cannot be easily managed using Dockerfiles. To run the image, a Docker installation is needed. Once downloaded, from the command line type: docker load -i After the loading process, you can run the container by typing: docker run -it mensura/ai-proneness-replication:1.0 All the source code and the dataset to re-execute the...
This replication package contains a replication package for ASE 2023 paper titled "Personalized Firs...
This is the replication package for the conference paper submission "On the Importance and Shortcomi...
This is a replication package for the paper: "Code Duplication and Reuse in Jupyter Notebooks", whic...
Container Image Inheritance on DockerHub: Empirical Analysis and Insights This repository represent...
This is the replication package for the paper titled: "Revisiting Dockerfiles in Open Source Softwar...
This is the replication package for the paper "Assessing Exception Handling Testing Practices in Ope...
This is the replication package for the article "Machine Learning for the Identification and Classif...
This repository includes all the codes required to replicate the results for the "Explaining CodeBER...
This is the replication package for the analysis done in the paper "An Industrial Study on the Chall...
Replication Package for the paper "Regression Test Prioritization Leveraging Source Code Similarity ...
This repository contains a replication package and experimental results for our study A Configurable...
This is the replication package for our article "A Formal Framework for Measuring Technical Lag in C...
This is the replication package for the paper titled: "Predicting Defective Visual Code Changes in a...
Replication package of the paper "Do Explicit Review Strategies Improve Code Review Performance? Tow...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This replication package contains a replication package for ASE 2023 paper titled "Personalized Firs...
This is the replication package for the conference paper submission "On the Importance and Shortcomi...
This is a replication package for the paper: "Code Duplication and Reuse in Jupyter Notebooks", whic...
Container Image Inheritance on DockerHub: Empirical Analysis and Insights This repository represent...
This is the replication package for the paper titled: "Revisiting Dockerfiles in Open Source Softwar...
This is the replication package for the paper "Assessing Exception Handling Testing Practices in Ope...
This is the replication package for the article "Machine Learning for the Identification and Classif...
This repository includes all the codes required to replicate the results for the "Explaining CodeBER...
This is the replication package for the analysis done in the paper "An Industrial Study on the Chall...
Replication Package for the paper "Regression Test Prioritization Leveraging Source Code Similarity ...
This repository contains a replication package and experimental results for our study A Configurable...
This is the replication package for our article "A Formal Framework for Measuring Technical Lag in C...
This is the replication package for the paper titled: "Predicting Defective Visual Code Changes in a...
Replication package of the paper "Do Explicit Review Strategies Improve Code Review Performance? Tow...
This replication package can be used for replicating results in the paper. It contains 1) a dataset ...
This replication package contains a replication package for ASE 2023 paper titled "Personalized Firs...
This is the replication package for the conference paper submission "On the Importance and Shortcomi...
This is a replication package for the paper: "Code Duplication and Reuse in Jupyter Notebooks", whic...