license: apache-2.0
tags:
- git
- code
size_categories:
- n<1K
Dataset Summary
GitGoodBench Lite is a subset of 900 samples for evaluating the performance of AI agents in resolving git tasks (see Supported Scenarios). The samples in the dataset are evenly split across the programming languages Python, Java and Kotlin and the sample types merge conflict resolution and file-commit gram. This dataset thus contains 150 samples per sample type and programming language.
All data in this dataset are collected from 479 unique, open-source GitHub repositories with permissive licenses that have >= 1000 stars, >= 5 branches, >= 10 contributors and are not a fork or archived. We collected the initial list of repositories using SEART.
Evaluation is to be performed by exact-match (EM) of diffs for the merge conflict setting and by LLM-as-a-Judge for the file-commit chain setting. For further details see our paper.
Supported Tasks
GitGoodBench Lite contains two types of samples: 'merge' and 'file_commit_chain'. It is important to note that the sample type 'file_commit_chain' can be used for two scenario types: Performing an interactive rebase to clean up the local tree or iteratively generating commits based on the staged, uncommitted changes.
Merge
Merge scenarios are contain one or more merge conflicts that occurred during a merge. All merge conflicts are guaranteed to be in a Python, Java or Kotlin file. There are only merges with exactly two parents in our dataset (no octopus merges).
A merge scenario looks as follows:
{
'merge_commit_hash': '1ce7091bffb09ad7e5123ea995c1f572a83bd375',
'parents': ['5ef9152860a8b0af02e9d5d3635601df963748c9', '8a353cf3392e0c20dc987bc18f4ab93edccf09b3'],
'number_of_files_with_merge_conflict': 1,
'total_number_of_merge_conflicts': 3,
'files_in_merge_conflict': ['src/test/java/net/openhft/chronicle/queue/LastAppendedTest.java']
}
Where merge_commit_hash
contains the ground truth merge commit and the parents
are the commits during the merge of which the conflict(s) in files_in_merge_conflict
occurred.
File-Commit Chain
File-commit chain scenarios consist of two commits, the oldest and newest commit. In all commits between the oldest_commit
and newest_commit
(inclusive) file
was modified.
In total the chain consists of times_seen_consecutively
commits. The intended use-cases of these scenarios are to evaluate the agent's capacity to create meaningful, cohesive commits or
improve the local tree via rebasing. Thus samples of this sample_type
cover two scenario types.
File-commit chains are at least 3 commits long,the file the sample concerns itself with is guaranteed to be of programming_language
(this is not the case for other potential files in the commits of the sample) and no commit is a merge commit.
A file_commit_chain
scenario looks as follows:
{
'file': 'App/Event.py',
'branch': 'origin/20230105',
'times_seen_consecutively': 4,
'purity': 0.78,
'newest_commit': '7547d1877f0af28a67fe0e1ccaefcb0020a89751',
'oldest_commit': 'a0a11bd4de009daae463c77fccdb2de16cfed6c4'
}
purity
indicates the relative amount of changes in the chain that occurred solely in file
and is a heuristic for the difficulty of the scenario. We expect noisier scenarios to be more difficult.
Dataset Structure
The following table provides per-field details. Columns marked “Yes” under Is Metadata? are those that provide contextual or descriptive information but are not essential to the primary scenario logic.
Field | Type | Description | Is Metadata? |
---|---|---|---|
id | string | A unique identifier for the dataset entry: -- | No |
name | string | The repository name, in “owner/repository” format. | No |
default_branch | string | The primary or default branch for the repository. | No |
license | string | Repository license. | Yes |
stargazers | integer | The number of stars on GitHub. | Yes |
created_at | string | The repository creation date. | Yes |
topics | string | A semicolon-delimited list of topics or tags associated with the repository. | Yes |
programming_language | string | The programming language of the sample. Possible values: "java," "python," or "kotlin." | No |
scenario | string | A JSON string describing specific scenario data (e.g., merge-conflict details, parent commits). | No |
sample_type | string | The type of sample. Possible values: "merge" or "file_commit_chain." | No |
project_size | string | Estimated size based on lines of code. Possible values: "tiny," "small," "medium," "large," or "huge." | Yes |
difficulty | string | The complexity level of the scenario. Possible values: "easy," "medium," or "hard." | Yes |
Note:
- Fields marked as Is Metadata? = Yes provide contextual information (e.g., project stats, licensing) rather than forming the core logic of a scenario.
- Fields marked No represent the primary data for the scenario. Use them to inform or categorize the scenario type and project details.
Dataset statistics
We provide some statistics on the diversity of our dataset with respect to repositories and merge conflict resolution samples.
Dataset Skew
We note that our dataset is skewed towards the top four repositories especially, however skew flattens quickly.
Distribution Statistics
- Total number of repositories (count): 479
- Average (mean) samples per repository: 1.87
- Standard deviation (std): 2.8
- Minimum (min): 1
- 25th percentile (25%): 1
- Median (50%): 1
- 75th percentile (75%): 2
- Maximum (max): 46
Top-10 Repositories by Sample Count
Repository | Percentage of Total Samples |
---|---|
oss-review-toolkit/ort | 5.11% |
stripe/stripe-android | 3.22% |
element-hq/element-android | 2.44% |
jetbrains/compose-multiplatform | 1.22% |
kotlin/dokka | 1.00% |
jetbrains/ideavim | 0.89% |
wikimedia/apps-android-wikipedia | 0.78% |
android/nowinandroid | 0.78% |
coil-kt/coil | 0.78% |
jetbrains/exposed | 0.78% |
Difficulty Distribution for "merge" Scenarios
Difficulty | Percentage |
---|---|
easy | 41.33 |
medium | 24.44 |
hard | 34.22 |
Languages We note that the text data in this dataset consists mostly of: commit messages, comments and is primarily in English. We do however not filter for any human languages explcitly.