Magika is a novel AI powered file type detection tool that rely on the recent advance of deep learning to provide accurate detection. Under the hood, Magika employs a custom, highly optimized Keras model that only weighs about 1MB, and enables precise file identification within milliseconds, even when running on a single CPU.
In an evaluation with over 1M files and over 100 content types (covering both binary and textual file formats), Magika achieves 99%+ precision and recall. Magika is used at scale to help improve Google users’ safety by routing Gmail, Drive, and Safe Browsing files to the proper security and content policy scanners.
You can try Magika without anything by using our web demo, which runs locally in your browser!
Here is an example of what Magika command line output look like:
For more context you can read our initial announcment post on Google'S OSS blog
- Available as a Python command line, a Python API, and an experimental TFJS version (which powers our web demo).
- Trained on a dataset of over 25M files across more than 100 content types.
- On our evaluation, Magika achieves 99%+ average precision and recall, outperforming existing approaches.
- More than 100 content types (see full list).
- After the model is loaded (this is a one-off overhead), the inference time is about 5ms per file.
- Batching: You can pass to the command line and API multiple files at the same time, and Magika will use batching to speed up the inference time. You can invoke Magika with even thousands of files at the same time. You can also use
-r
for recursively scanning a directory. - Near-constant inference time independently from the file size; Magika onlys use a limited subset of the file's bytes.
- Magika uses a per-content-type threshold system that determines whether to "trust" the prediction for the model, or whether to return a generic label, such as "Generic text document" or "Unknown binary data".
- Support three different prediction modes, which tweak the tolerance to errors:
high-confidence
,medium-confidence
, andbest-guess
. - It's open source! (And more is yet to come.)
For more details, see the documentation for the python package (dev docs) and for the js package (dev docs).
- Getting Started
- Development Setup
- Known Limitations & Contributing
- Frequently Asked Questions
- Additional Resources
- Citation
- License
- Disclaimer
Magika is available as magika
on PyPI:
$ pip install magika
Examples:
$ magika -r tests_data/
tests_data/README.md: Markdown document (text)
tests_data/basic/code.asm: Assembly (code)
tests_data/basic/code.c: C source (code)
tests_data/basic/code.css: CSS source (code)
tests_data/basic/code.js: JavaScript source (code)
tests_data/basic/code.py: Python source (code)
tests_data/basic/code.rs: Rust source (code)
...
tests_data/mitra/7-zip.7z: 7-zip archive data (archive)
tests_data/mitra/bmp.bmp: BMP image data (image)
tests_data/mitra/bzip2.bz2: bzip2 compressed data (archive)
tests_data/mitra/cab.cab: Microsoft Cabinet archive data (archive)
tests_data/mitra/elf.elf: ELF executable (executable)
tests_data/mitra/flac.flac: FLAC audio bitstream data (audio)
...
$ magika code.py --json
[
{
"path": "code.py",
"dl": {
"ct_label": "python",
"score": 0.9940916895866394,
"group": "code",
"mime_type": "text/x-python",
"magic": "Python script",
"description": "Python source"
},
"output": {
"ct_label": "python",
"score": 0.9940916895866394,
"group": "code",
"mime_type": "text/x-python",
"magic": "Python script",
"description": "Python source"
}
}
]
$ cat doc.ini | magika -
-: INI configuration file (text)
$ magika -h
Usage: magika [OPTIONS] [FILE]...
Magika - Determine type of FILEs with deep-learning.
Options:
-r, --recursive When passing this option, magika scans every
file within directories, instead of
outputting "directory"
--json Output in JSON format.
--jsonl Output in JSONL format.
-i, --mime-type Output the MIME type instead of a verbose
content type description.
-l, --label Output a simple label instead of a verbose
content type description. Use --list-output-
content-types for the list of supported
output.
-c, --compatibility-mode Compatibility mode: output is as close as
possible to `file` and colors are disabled.
-s, --output-score Output the prediction score in addition to
the content type.
-m, --prediction-mode [best-guess|medium-confidence|high-confidence]
--batch-size INTEGER How many files to process in one batch.
--no-dereference This option causes symlinks not to be
followed. By default, symlinks are
dereferenced.
--colors / --no-colors Enable/disable use of colors.
-v, --verbose Enable more verbose output.
-vv, --debug Enable debug logging.
--generate-report Generate report useful when reporting
feedback.
--version Print the version and exit.
--list-output-content-types Show a list of supported content types.
--model-dir DIRECTORY Use a custom model.
-h, --help Show this message and exit.
Magika version: "0.5.0"
Default model: "standard_v1"
Send any feedback to magika-dev@google.com or via GitHub issues.
See ./python/DOCS.md
for detailed documentation.
Examples:
>>> from magika import Magika
>>> m = Magika()
>>> res = m.identify_bytes(b"# Example\nThis is an example of markdown!")
>>> print(res.output.ct_label)
markdown
See ./python/DOCS.md
for detailed documentation.
We also provide Magika as an experimental package for people interested in using in a web app. Note that Magika JS implementation performance is significantly slower and you should expect to spend 100ms+ per file.
See js documentation for the details.
We use poetry for development and packaging:
$ git clone https://github.com/google/magika
$ cd magika/python
$ poetry shell && poetry install
$ magika -r ../tests_data
To run the tests:
$ cd magika/python
$ poetry shell
$ pytest tests/
Magika significantly improves over the state of the art, but there's always room for improvement! More work can be done to increase detection accuracy, support for additional content types, bindings for more languages, etc.
This initial release is not targeting polyglot detection, and we're looking forward to seeing adversarial examples from the community. We would also love to hear from the community about encountered problems, misdetections, features requests, need for support for additional content types, etc.
Check our open GitHub issues to see what is on our roadmap and please report misdetections or feature requests by either opening GitHub issues (preferred) or by emailing us at magika-dev@google.com.
When reporting misdetections, you may want to use $ magika --generate-report <path>
to generate a report with debug information, which you can include in your github issue.
NOTE: Do NOT send reports about files that may contain PII, the report contains (a small) part of the file content!
See CONTRIBUTING.md
for details.
Because we needed to start from somewhere. Magika is based on a new approach, and at first we did not know whether it would work not. It was prohibitively complex to aim to support all content types from the very beginning, and we aimed at selecting at least 100 content types (we settled with 110+). Which ones? The ones that seemed most relevant for most use cases (but, still, we miss many more!). Now that we know this approach works, we will be looking at improving content types coverage for the next iterations.
See previous question.
But please open GitHub issues on what you want! Getting this sort of feedback was one main reason to open source an early version.
The main client we expect people to use for this release is the Python client and Python API. The javascript package, based on a TFJS version of the same model, was developed for our web demo, which allows users to test Magika and report feedback without installing anything. The demo also showcases on-device capabilities. The javascript package could also be useful for integrations that require javascript bindings. For now it is not envisioned to be used as a standalone command line (the model loading phase is quite slow), but it could be useful for those deployments where you can load the model once, and keep using it for many inferences.
We are releasing a paper later this year detailing how the Magika model was trained and the specifics about the model itself. We will also open source other components of this project (e.g., the keras model Python code). Stay tuned!
Yes, but this is because the Python CLI needs to load the Python interpreter and various libraries, plus the model. For the future, we are considering other options (e.g., a Rust client).
In the meantime, we believe the current release is already good enough for many use cases, including scanning thousands of files: you can pass them all as arguments in one single invocation, and the Python client (and API) will internally load the model only once and use batching to achieve fast inference speeds.
- Google's OSS blog post about Magika announcement.
- Web demo: web demo.
If you use this software for your research, please cite it as:
@software{magika,
author = {Fratantonio, Yanick and Bursztein, Elie and Invernizzi, Luca and Zhang, Marina and Metitieri, Giancarlo and Kurt, Thomas and Galilee, Francois and Petit-Bianco, Alexandre and Farah, Loua and Albertini, Ange},
title = {{Magika content-type scanner}},
url = {https://github.com/google/magika}
}
Apache 2.0; see LICENSE
for details.
This project is not an official Google project. It is not supported by Google and Google specifically disclaims all warranties as to its quality, merchantability, or fitness for a particular purpose.