Allows to feed the database of the Dakara server remotely.
This repo is tied with the Dakara server, so you should setup it first:
Other important parts of the project include:
- Python3, to make everything up and running (supported versions: see above);
- ffmpeg, to extract lyrics and extract metadata from files (preferred way);
- MediaInfo, to extract metadata from files (slower, alternative way).
Linux, Windows, and MacOS are supported.
It is strongly recommended to use the Dakara feeder within a virtual environment.
Please ensure you have a recent enough version of setuptools:
pip install --upgrade "setuptools>=46.4.0"Install the package with:
pip install dakarafeederIf you have downloaded the repo, you can install the package directly with:
pip install .The package provides the dakara-feeder feed command for creating data on a running instance of the Dakara server.
Several sub-commands are available.
To begin, dakara-feeder feed songs will find songs in the configured directory, parse them and send their data:
dakara-feeder feed songs
# or
python -m dakara_feeder feed songsOne instance of the Dakara server should be running.
The data extracted from songs are very limited in this package by default, as data can be stored in various ways. You are encouraged to make your own parser (see this section for more details).
Then, dakara-feeder feed tags and dakara-feeder feed work-types will find tags and work types in a YAML file (see this section for more details):
dakara-feeder feed tags path/to/tags.yaml
# or
python -m dakara_feeder feed tags path/to/tags.yamland:
dakara-feeder feed work-types path/to/work_types.yaml
# or
python -m dakara_feeder feed work-types path/to/work_types.yamlAlso, dakara-feeder feed works will find works in a JSON file (see this section for more details):
dakara-feeder feed works path/to/works.json
# or
python -m dakara_feeder feed works path/to/works.jsonFor more help:
dakara-feeder -h
# or
python -m dakara_feeder -hBefore calling any command, you should create a config file with:
dakara-feeder create-config
# or
python -m dakara_feeder create-configand complete it with your values. The file is stored in your user space: ~/.config/dakara on Linux, or $APPDATA\DakaraProject\dakara on Windows.
The configuration is created with the previously cited command. Several aspect of the feeder can be configured with this file. Please check with the file documentation.
Authentication to the server can be done with username and password, or with a token that can be copied from the web client. Please note that only a library manager can use the feeder.
To override the extraction of data from song files, you should create a class derived from dakara_feeder.song.BaseSong. Please refer to the documentation of this class to learn which methods to override, and what attributes and helpers are at your disposal.
Here is a basic example. It considers that the song video file is formatted in the way "title - main artist.ext":
# my_song.py
from dakara_feeder.song import BaseSong
class Song(BaseSong):
def get_title(self):
return self.video_path.stem.split(" - ")[0]
def get_artists(self):
return [{"name": self.video_path.stem.split(" - ")[1]}]To register your customized Song class, you simply indicate it in the configuration file.
You can either indicate an importable module or a file:
custom_song_class: path/to/my_song.py::Song
# or
custom_song_class: my_song.SongNow, dakara-feeder will use your customized Song class instead of the default one.
Whilst data from songs are extracted directly from song files, data from tags and work types are extracted from a YAML file. All data can coexist in the same file.
Tags will be searched in the key tags.
Tags are identified by their name (it will be displayed in upper case, it
should be just one word).
You can provide a color hue (positive integer from 0 to 360):
tags:
- name: PV
color_hue: 162
- name: AMV
color_hue: 140Work types will be searched in the key worktypes
Work types are identified by their query name (hyphenated name, with no special
characters, used as keyword for querying).
You can provide a work type display name (singular and plural) and an icon name (choosen among the
FontAwesome font glyphes):
worktypes:
- query_name: anime
name: Anime
name_plural: Animes
icon_name: television
- query_name: live-action
name: Live action
name_plural: Live actions
icon_name: filmYou can provide more information about works (especially alternative names) from a JSON file. The file should contain a dictionary where keys are work types query name and values lists of works representation:
{
"work_type_1":
[
{
"title": "Work 1",
"subtitle": "Subtitle 1",
"alternative_titles": [
{
"title": "AltTitle 1"
},
{
"title": "AltTitle 2"
}
]
},
{
"title": "Work 2",
"subtitle": "Subtitle 2"
}
],
"work_type_2": []
}Identification with existing works on the server is made with the work type, the title and the subtitle, case insensitively.
Please read the developers documentation.