Fast, insightful and highly customizable Git history analysis.

Vadim Markovtsev e8b7a0633d Fix the build with the most recent go-git 7 年之前
cmd e8b7a0633d Fix the build with the most recent go-git 7 年之前
contrib 797a31712f Improve the churn plot 7 年之前
doc e2f9ebffae Add some docs on pipeline items 7 年之前
pb 2a2394b065 Run go fmt ./... 7 年之前
rbtree c4630dcf5a Move rbtree.go to rbtree package 7 年之前
test_data 4104aa64c4 Add a test blob obj 7 年之前
toposort 2a2394b065 Run go fmt ./... 7 年之前
yaml 6530890fcd Rename stdout -> yaml 7 年之前
.gitignore dda6b7c03f Add the churn plugin example 7 年之前
.travis.yml dda6b7c03f Add the churn plugin example 7 年之前
Dockerfile 9b8e7ca5e4 Remove man packages in docker image 7 年之前
LICENSE 9c734b3c57 Change the license: MIT -> AL2 7 年之前
Makefile e2cc91d491 Generate pb.pb.go automatically 7 年之前
PLUGINS.md dda6b7c03f Add the churn plugin example 7 年之前
README.md e2f9ebffae Add some docs on pipeline items 7 年之前
blob_cache.go dcc0342e93 Refactor cmdline args 7 年之前
blob_cache_test.go a34ee7e9ec Add tests for BlobCache and BurndownAnalysis 7 年之前
burndown.go 6530890fcd Rename stdout -> yaml 7 年之前
burndown_test.go 2af3d8d964 Add some UAST tests, fix others 7 年之前
couples.go 6530890fcd Rename stdout -> yaml 7 年之前
couples_test.go 6c8700eefa Add RenameAnalysis tests 7 年之前
day.go 31c9f752f9 Round day0 by 24h 7 年之前
day_test.go 31c9f752f9 Round day0 by 24h 7 年之前
diff.go d2a2093e49 Make CountLines() and BlobToString() public 7 年之前
diff_refiner.go dcc0342e93 Refactor cmdline args 7 年之前
diff_test.go d2a2093e49 Make CountLines() and BlobToString() public 7 年之前
doc.go 7ea921f6a7 Add some CouplesAnaysis tests 7 年之前
dummies.go d2a2093e49 Make CountLines() and BlobToString() public 7 年之前
dummies_test.go d2a2093e49 Make CountLines() and BlobToString() public 7 年之前
file.go 063f1d9349 Add `go vet` to CI and fix complaints 7 年之前
file_test.go 063f1d9349 Add `go vet` to CI and fix complaints 7 年之前
fix_yaml_unicode.py 3c44f04c8a Make labours.py runnable 7 年之前
identity.go 527224b1f3 Fix the duplication in Pipeline.DeployItem 7 年之前
identity_test.go 9cda4a93ee Run `go fmt` 7 年之前
labours.py 3d3060c101 Increase the number of epochs on the extremely small scale 7 年之前
mailmap.go 7aa35d12e4 Fix broken mailmap parsing 7 年之前
mailmap_test.go 7aa35d12e4 Fix broken mailmap parsing 7 年之前
pipeline.go 9cda4a93ee Run `go fmt` 7 年之前
pipeline_test.go 9cda4a93ee Run `go fmt` 7 年之前
renames.go 9cda4a93ee Run `go fmt` 7 年之前
renames_test.go 6c8700eefa Add RenameAnalysis tests 7 年之前
requirements.txt 76bb20f32c Test labours.py in Travis 7 年之前
swivel.py 763ead8089 Add Tensorflow Projector visualisation of couples 7 年之前
tree_diff.go dcc0342e93 Refactor cmdline args 7 年之前
tree_diff_test.go 2af3d8d964 Add some UAST tests, fix others 7 年之前
uast.go 27312cb4b8 Add UASTChangesSaver tests 7 年之前
uast_test.go 27312cb4b8 Add UASTChangesSaver tests 7 年之前
version.go 81ccc42ca2 Change cmdline into git hash of the project 7 年之前

README.md

Hercules Build Status codecov

Amazingly fast and highly customizable Git repository analysis engine written in Go. Batteries included. Powered by go-git and Babelfish.

There are two tools: hercules and labours.py. The first is the program written in Go which takes a Git repository and runs a Directed Acyclic Graph (DAG) of analysis tasks. The second is the Python script which draws some predefined plots. These two tools are normally used together through a pipe. It is possible to write custom analyses using the plugin system.

Hercules DAG of Burndown analysis

The DAG of burndown and couples analyses with UAST diff refining. Generated with hercules -burndown -burndown-people -couples -feature=uast -dry-run -dump-dag doc/dag.dot https://github.com/src-d/hercules

git/git image

torvalds/linux line burndown (granularity 30, sampling 30, resampled by year)

There is an option to resample the bands inside labours.py, so that you can define a very precise distribution and visualize it different ways. Besides, resampling aligns the bands across periodic boundaries, e.g. months or years. Unresampled bands are apparently not aligned and start from the project's birth date.

There is a presentation available.

Installation

You are going to need Go (>= v1.8) and Python 2 or 3.

go get -d gopkg.in/src-d/hercules.v3/cmd/hercules
cd $GOPATH/src/gopkg.in/hercules.v3/cmd/hercules
make

Windows

Numpy and SciPy are requirements. Install the correct version by downloading the wheel from http://www.lfd.uci.edu/~gohlke/pythonlibs/#scipy. Couples analysis also needs Tensorflow.

Usage

# Use "memory" go-git backend and display the burndown plot. "memory" is the fastest but the repository's git data must fit into RAM.
hercules -burndown https://github.com/src-d/go-git | python3 labours.py -m project --resample month
# Use "file system" go-git backend and print some basic information about the repository.
hercules /path/to/cloned/go-git
# Use "file system" go-git backend, cache the cloned repository to /tmp/repo-cache, use Protocol Buffers and display the burndown plot without resampling.
hercules -burndown -pb https://github.com/git/git /tmp/repo-cache | python3 labours.py -m project -f pb --resample raw

# Now something fun
# Get the linear history from git rev-list, reverse it
# Pipe to hercules, produce burndown snapshots for every 30 days grouped by 30 days
# Save the raw data to cache.yaml, so that later is possible to python3 labours.py -i cache.yaml
# Pipe the raw data to labours.py, set text font size to 16pt, use Agg matplotlib backend and save the plot to output.png
git rev-list HEAD | tac | hercules -commits - -burndown https://github.com/git/git | tee cache.yaml | python3 labours.py -m project --font-size 16 --backend Agg --output git.png

labours.py -i /path/to/yaml allows to read the output from hercules which was saved on disk.

Caching

It is possible to store the cloned repository on disk. The subsequent analysis can run on the corresponding directory instead of cloning from scratch:

# First time - cache
hercules https://github.com/git/git /tmp/repo-cache

# Second time - use the cache
hercules -some-analysis /tmp/repo-cache

Docker image

docker run --rm srcd/hercules hercules -burndown -pb https://github.com/git/git | docker run --rm -i -v $(pwd):/io srcd/hercules labours.py -f pb -m project -o /io/git_git.png

Built-in analyses

Project burndown

hercules -burndown
python3 labours.py -m project

Line burndown statistics for the whole repository. Exactly the same what git-of-theseus does but much faster. Blaming is performed efficiently and incrementally using a custom RB tree tracking algorithm, and only the last modification date is recorded while running the analysis.

All burndown analyses depend on the values of granularity and sampling. Granularity is the number of days each band in the stack consists of. Sampling is the frequency with which the burnout state is snapshotted. The smaller the value, the more smooth is the plot but the more work is done.

Files

hercules -burndown -burndown-files
python3 labours.py -m files

Burndown statistics for every file in the repository which is alive in the latest revision.

People

hercules -burndown -burndown-people [-people-dict=/path/to/identities]
python3 labours.py -m person

Burndown statistics for the repository's contributors. If -people-dict is not specified, the identities are discovered by the following algorithm:

  1. We start from the root commit towards the HEAD. Emails and names are converted to lower case.
  2. If we process an unknown email and name, record them as a new developer.
  3. If we process a known email but unknown name, match to the developer with the matching email, and add the unknown name to the list of that developer's names.
  4. If we process an unknown email but known name, match to the developer with the matching name, and add the unknown email to the list of that developer's emails.

If -people-dict is specified, it should point to a text file with the custom identities. The format is: every line is a single developer, it contains all the matching emails and names separated by |. The case is ignored.

Churn matrix

Wireshark top 20 churn matrix

Wireshark top 20 devs - churn matrix

hercules -burndown -burndown-people [-people-dict=/path/to/identities]
python3 labours.py -m churn_matrix

Besides the burndown information, -people collects the added and deleted line statistics per developer. It shows how many lines written by developer A are removed by developer B. The format is the matrix with N rows and (N+2) columns, where N is the number of developers.

  1. First column is the number of lines the developer wrote.
  2. Second column is how many lines were written by the developer and deleted by unidentified developers (if -people-dict is not specified, it is always 0).
  3. The rest of the columns show how many lines were written by the developer and deleted by identified developers.

The sequence of developers is stored in people_sequence YAML node.

Code ownership

Ember.js top 20 code ownership

Ember.js top 20 devs - code ownership

hercules -burndown -burndown-people [-people-dict=/path/to/identities]
python3 labours.py -m ownership

-people also allows to draw the code share through time stacked area plot. That is, how many lines are alive at the sampled moments in time for each identified developer.

Couples

Linux kernel file couples

torvalds/linux files' coupling in Tensorflow Projector

hercules -couples [-people-dict=/path/to/identities]
python3 labours.py -m couples -o <name> [--couples-tmp-dir=/tmp]

Important: it requires Tensorflow to be installed, please follow official instuctions.

The files are coupled if they are changed in the same commit. The developers are coupled if they change the same file. hercules records the number of couples throught the whole commti history and outputs the two corresponding co-occurrence matrices. labours.py then trains Swivel embeddings - dense vectors which reflect the co-occurrence probability through the Euclidean distance. The training requires a working Tensorflow installation. The intermediate files are stored in the system temporary directory or --couples-tmp-dir if it is specified. The trained embeddings are written to the current working directory with the name depending on -o. The output format is TSV and matches Tensorflow Projector so that the files and people can be visualized with t-SNE implemented in TF Projector.

Everything in a single pass

hercules -burndown -burndown-files -burndown-people -couples [-people-dict=/path/to/identities]
python3 labours.py -m all

Plugins

Hercules has a plugin system and allows to run custom analyses. See PLUGINS.md.

Bad unicode errors

YAML does not support the whole range of Unicode characters and the parser on labours.py side may raise exceptions. Filter the output from hercules through fix_yaml_unicode.py to discard such offending characters.

hercules -burndown -burndown-people https://github.com/... | python3 fix_yaml_unicode.py | python3 labours.py -m people

Plotting

These options affects all plots:

python3 labours.py [--style=white|black] [--backend=] [--size=Y,X]

--style changes the background to be either white ("black" foreground) or black ("white" foreground). --backend chooses the Matplotlib backend. --size sets the size of the figure in inches. The default is 12,9.

(required in macOS) you can pin the default Matplotlib backend with

echo "backend: TkAgg" > ~/.matplotlib/matplotlibrc

These options are effective in burndown charts only:

python3 labours.py [--text-size] [--relative]

--text-size changes the font size, --relative activate the stretched burndown layout.

Custom plotting backend

It is possible to output all the information needed to draw the plots in JSON format. Simply append .json to the output (-o) and you are done. The data format is not fully specified and depends on the Python code which generates it. Each JSON file should contain "type" which reflects the plot kind.

Caveats

  1. Currently, go-git's file system storage backend is considerably slower than the in-memory one, so you should clone repos instead of reading them from disk whenever possible. Please note that the in-memory storage may require much RAM, for example, the Linux kernel takes over 200GB in 2017.
  2. Parsing YAML in Python is slow when the number of internal objects is big. hercules' output for the Linux kernel in "couples" mode is 1.5 GB and takes more than an hour / 180GB RAM to be parsed. However, most of the repositories are parsed within a minute. Try using Protocol Buffers instead (hercules -pb and labours.py -f pb).
  3. To speed-up yaml parsing ```

    Debian, Ubuntu

    apt install libyaml-dev

    macOS

    brew install yaml-cpp libyaml

# you might need to re-install pyyaml for changes to make effect pip uninstall pyyaml pip --no-cache-dir install pyyaml ```

License

Apache 2.0.