Skip to content

Latest commit

 

History

History
72 lines (57 loc) · 2.74 KB

README.md

File metadata and controls

72 lines (57 loc) · 2.74 KB

mBERT

mBERT is a mutation testing tool that uses CodeBERT, a pre-trained language model, to generate mutants.

Requirements

  • Maven
  • CodeBERT dependencies:
    • pip install torch
    • pip install transformers

Installation

  1. Run mkdir -p pre-trained/codebert-base-mlm to create the folder where CodeBERT pre-trained model will be saved.
  2. Run python3 download-codebert.py to download CodeBERT pre-trained model.
  3. Try CodeBERT by running: python3 run-codebert.py "int <mask> = b;"

{'score': 0.23396340012550354, 'token': 740, 'token_str': 'c', 'sequence': 'int c= b;'}

{'score': 0.05450829118490219, 'token': 939, 'token_str': 'i', 'sequence': 'int i= b;'}

{'score': 0.05004948750138283, 'token': 741, 'token_str': 'b', 'sequence': 'int b= b;'}

{'score': 0.04164685681462288, 'token': 10, 'token_str': 'a', 'sequence': 'int a= b;'}

{'score': 0.023635799065232277, 'token': 181, 'token_str': 'p', 'sequence': 'int p= b;'}

  1. Compile mBERT: mvn compile.
  2. Done! Try mBERT by running: ./mBERT.sh

Executing mBERT

mBERT provides some flags that you can configure:

  • -in=source_file_name
  • -out=mutants_directory
  • -N=max_num_of_mutants
  • -m=method_name
  • -m=method_name:method_definition_line
  • -l=line_to_mutate

Compile Mutants Generated

You can use script compile-mutants.sh to compile the mutants generated by mBERT.

  • Usage: ./compile-mutants.sh mutants_dir subject_name
  • Information: After compiling the mutants, you will find the details in files mutants_dir/subject_name.csv and mutants_dir/subject_name.log
  • Example: ./compile-mutants.sh examples/generated-mutants/gcd/ gcd

Examples

Forlder examples provide the examples discussed in the paper.

Inside examples/generated-mutants you can find the mutants generated by mBERT.

Cite this paper

If you use mBERT in your research, please cite our paper:

@inproceedings{DBLP:conf/icst/DegiovanniP22,
  author    = {Renzo Degiovanni and
	       Mike Papadakis},
  title     = {{\(\mathrm{\mu}\)}Bert: Mutation Testing using Pre-Trained Language
	       Models},
  booktitle = {15th {IEEE} International Conference on Software Testing, Verification
	       and Validation Workshops {ICST} Workshops 2022, Valencia, Spain, April
	       4-13, 2022},
  pages     = {160--169},
  publisher = {{IEEE}},
  year      = {2022},
  url       = {https://doi.org/10.1109/ICSTW55395.2022.00039},
  doi       = {10.1109/ICSTW55395.2022.00039},
  timestamp = {Mon, 13 Jun 2022 16:53:37 +0200},
  biburl    = {https://dblp.org/rec/conf/icst/DegiovanniP22.bib},
  bibsource = {dblp computer science bibliography, https://dblp.org}
}