A beets plugin for creating and exporting songs matching your running session.
Project description
Going Running (beets plugin)
A beets plugin for insane obsessive-compulsive music geeks.
The beets-goingrunning plugin is for runners. It lets you configure different training activities by filtering songs based on their speed(bpm) and duration and attempts to create a list of songs for that training.
Introduction
I in advance apologize for the following guide. I promise I will explain things a bit better at some point. Until then if something is not clear please use the Issue tracker.
Installation
The plugin can be installed via:
$ pip install beets-goingrunning
Activate the plugin in your configuration file:
plugins:
- goingrunning
# [...]
Check if plugin is loaded with beet version
. It should list 'bpmanalyser' amongst the loaded plugins.
Usage
Invoke the plugin as:
$ beet goingrunning training_name [-lcq] [QUERY...]
There are the following switches available:
- --list [-l]: List all the configured trainings with their attributes. With this switch you do not enter the name of the training, just
beet goingrunning --list
- --count [-c]: Count the number of songs available for a specific training. With
beet goingrunning longrun --count
you can see how many of your songs there are in your library that fit your specs. - --quiet [-q]: Do not display any output from the command.
Configuration
Your default configuration is:
goingrunning:
song_bpm: [90, 150]
song_len: [90, 240]
duration: 60
targets: {}
target: no
clean_target: no
There are two concepts you need to know to configure the plugin: targets and trainings:
- Targets are named destinations on your file system to which you will be copying your songs. The
targets
key allows you to define multiple targets whilst thetarget
key allows you to specify the name of your default player to which the plugin will always copy your songs (if not otherwise specified).
goingrunning:
# [...]
targets:
my_player_1: /mnt/player_1
my_other_player: /media/player_2
target: my_player_1
# [...]
- Trainings are not much more than named queries (for now - but I have some really cool plans) into your library. They
have two attributes by which the plugin will decide which songs to chose (
song_bpm
andsong_len
) and aduration
element (expressed in minutes) for deciding how many songs to select. Thesong_bpm
andsong_len
attributes have two numbers which indicate the lower and the higher limit of that attribute.
A common configuration section will look something like this:
goingrunning:
# [...]
clean_target: no
targets:
my_player_1: /mnt/player_1
my_other_player: /media/player_2
target: my_player_1
trainings:
longrun:
song_bpm: [120, 150]
song_len: [120, 600]
duration: 90
10K:
song_bpm: [150, 180]
song_len: [120, 240]
duration: 90
target: my_other_player
clean_target: yes
# [...]
Once you have created your trainings you will just attach your player to your pc and launch:
$ beet goingrunning 10K
and you will always have your music with you that matches your training.
All the configuration options are looked up in the entire configuration tree. This means that whilst the songs for the the 10K
training will be copied to the my_other_player
target, the longrun
training (which does not declare this attribute), will use that on the root level: my_player_1
. This holds for all attributes.
The clean_target
attribute, when set to yes
will ensure that all songs are removed from the target before copying the new songs.
Examples:
Show all the configured trainings:
$ beet goingrunning --list
Copy your songs to your target based on the longrun
training:
$ beet goingrunning longrun
Do the same as above but today you feel reggae:
$ beet goingrunning longrun genre:Reggae
Final Remarks:
- give feedback
- contribute
- enjoy!
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for beets_goingrunning-1.0.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 4baa2983720bf87360ac0ed86a7b10f658db4acd898e554e51077b94a60e8543 |
|
MD5 | 648bff8998b21fa81ede79308ccdc5aa |
|
BLAKE2b-256 | ac59a82d080e8097a2dd1789d9fab5b23b76dcde20a965f83525c9633d24a052 |