Annif is an automated subject indexing toolkit. It was originally created as a statistical automated indexing tool that used metadata from the Finna.fi discovery interface as a training corpus.
This repo contains a rewritten production version of Annif based on the prototype. It is a work in progress, but already functional for many common tasks.
Finto AI is a service based on Annif; see the source code for Finto AI.
Annif is developed and tested on Linux. If you want to run Annif on Windows or Mac OS, the recommended way is to use Docker (see below) or a Linux virtual machine.
You will need Python 3.8+ to install Annif.
The recommended way is to install Annif from PyPI into a virtual environment.
python3 -m venv annif-venv
source annif-venv/bin/activate
pip install annif
You will also need NLTK data files:
python -m nltk.downloader punkt
Start up the application:
annif
See Getting Started in the wiki for more details.
Annif supports tab-key completion in bash, zsh and fish shells for commands and options and project id, vocabulary id and path parameters.
To enable the completion support in your current terminal session use annif completion
command with the option according to your shell to produce the completion script and
source it. For example, run
source <(annif completion --bash)
To enable the completion support in all new sessions first add the completion script in your home directory:
annif completion --bash > ~/.annif-complete.bash
Then make the script to be automatically sourced for new terminal sessions by adding the
following to your ~/.bashrc
file (or in some alternative startup
file):
source ~/.annif-complete.bash
For details and usage for other shells see Click documentation.
You can use Annif as a pre-built Docker container. Please see the wiki documentation for details.
A development version of Annif can be installed by cloning the GitHub repository. Poetry is used for managing dependencies and virtual environment for the development version.
See CONTRIBUTING.md for information on unit tests, code style, development flow etc. details that are useful when participating in Annif development.
Clone the repository.
Switch into the repository directory.
Install pipx and Poetry if you don't have them. First pipx:
python3 -m pip install --user pipx
python3 -m pipx ensurepath
Open a new shell, and then install Poetry:
pipx install poetry
Poetry can be installed also without pipx: check the Poetry documentation.
Create a virtual environment and install dependencies:
poetry install
By default development dependencies are included. Use option -E
to install dependencies for selected optional features (-E "extra1 extra2"
for multiple extras), or install all of them with --all-extras
. By default the virtual environment directory is not under the project directory, but there is a setting for selecting this.
Enter the virtual environment:
poetry shell
You will also need NLTK data files:
python -m nltk.downloader punkt
Start up the application:
annif
Many resources are available:
- Usage documentation in the wiki
- Annif tutorial for learning to use Annif
- annif-users discussion forum
- Internal API documentation on ReadTheDocs
- annif.org project web site
Two articles about Annif have been published in peer-reviewed Open Access journals. The software itself is also archived on Zenodo and has a citable DOI.
See "Cite this repository" in the details of the repository.
-
Suominen, O.; Inkinen, J.; Lehtinen, M., 2022.
Annif and Finto AI: Developing and Implementing Automated Subject Indexing.
JLIS.It, 13(1), pp. 265–282. URL:
https://www.jlis.it/index.php/jlis/article/view/437
See BibTex
@article{suominen2022annif, title={Annif and Finto AI: Developing and Implementing Automated Subject Indexing}, author={Suominen, Osma and Inkinen, Juho and Lehtinen, Mona}, journal={JLIS.it}, volume={13}, number={1}, pages={265--282}, year={2022}, doi = {10.4403/jlis.it-12740}, url={https://www.jlis.it/index.php/jlis/article/view/437}, }
-
Suominen, O.; Koskenniemi, I, 2022.
Annif Analyzer Shootout: Comparing text lemmatization methods for automated subject indexing.
Code4Lib Journal, (54). URL:
https://journal.code4lib.org/articles/16719
See BibTex
@article{suominen2022analyzer, title={Annif Analyzer Shootout: Comparing text lemmatization methods for automated subject indexing}, author={Suominen, Osma and Koskenniemi, Ilkka}, journal={Code4Lib J.}, number={54}, year={2022}, url={https://journal.code4lib.org/articles/16719}, }
-
Suominen, O., 2019. Annif: DIY automated subject indexing using multiple
algorithms. LIBER Quarterly, 29(1), pp.1–25. DOI:
https://doi.org/10.18352/lq.10285
See BibTex
@article{suominen2019annif, title={Annif: DIY automated subject indexing using multiple algorithms}, author={Suominen, Osma}, journal={{LIBER} Quarterly}, volume={29}, number={1}, pages={1--25}, year={2019}, doi = {10.18352/lq.10285}, url = {https://doi.org/10.18352/lq.10285} }
The code in this repository is licensed under Apache License 2.0, except for the
dependencies included under annif/static/css
and annif/static/js
,
which have their own licenses, see the file headers for details.
Please note that the YAKE library is licended
under GPLv3, while Annif is
licensed under the Apache License 2.0. The licenses are compatible, but
depending on legal interpretation, the terms of the GPLv3 (for example the
requirement to publish corresponding source code when publishing an executable
application) may be considered to apply to the whole of Annif+Yake if you
decide to install the optional Yake dependency.