English

DeepMerge: Learning to Merge Programs

Software Engineering 2021-09-08 v3

Abstract

In collaborative software development, program merging is the mechanism to integrate changes from multiple programmers. Merge algorithms in modern version control systems report a conflict when changes interfere textually. Merge conflicts require manual intervention and frequently stall modern continuous integration pipelines. Prior work found that, although costly, a large majority of resolutions involve re-arranging text without writing any new code. Inspired by this observation we propose the first data-driven approach to resolve merge conflicts with a machine learning model. We realize our approach in a tool DeepMerge that uses a novel combination of (i) an edit-aware embedding of merge inputs and (ii) a variation of pointer networks, to construct resolutions from input segments. We also propose an algorithm to localize manual resolutions in a resolved file and employ it to curate a ground-truth dataset comprising 8,719 non-trivial resolutions in JavaScript programs. Our evaluation shows that, on a held out test set, DeepMerge can predict correct resolutions for 37% of non-trivial merges, compared to only 4% by a state-of-the-art semistructured merge technique. Furthermore, on the subset of merges with upto 3 lines (comprising 24% of the total dataset), DeepMerge can predict correct resolutions with 78% accuracy.

Keywords

Cite

@article{arxiv.2105.07569,
  title  = {DeepMerge: Learning to Merge Programs},
  author = {Elizabeth Dinella and Todd Mytkowicz and Alexey Svyatkovskiy and Christian Bird and Mayur Naik and Shuvendu K. Lahiri},
  journal= {arXiv preprint arXiv:2105.07569},
  year   = {2021}
}

Comments

11 pages

R2 v1 2026-06-24T02:09:47.760Z