Edit model card

Model Card for musicgen-songstarter-v0.1

musicgen-songstarter-v0.1 is a musicgen-melody fine-tuned on a dataset of melody loops from my Splice sample library. It's intended to be used to generate song ideas that are useful for music producers. It generates stereo audio in 32khz.

This is a proof of concept. Hopefully, we will be able to collect more data and train a better models in the future.

Usage

Install audiocraft:

pip install -U git+https://github.com/facebookresearch/audiocraft#egg=audiocraft

Then, you should be able to load this model just like any other musicgen checkpoint here on the Hub:

from audiocraft.models import musicgen

model = musicgen.MusicGen.get_pretrained('nateraw/musicgen-songstarter-v0.1', device='cuda')

To generate and save audio samples, you can do:

from datetime import datetime
from pathlib import Path

from audiocraft.models import musicgen
from audiocraft.data.audio import audio_write
from audiocraft.utils.notebook import display_audio

model = musicgen.MusicGen.get_pretrained('nateraw/musicgen-songstarter-v0.1', device='cuda')

# path to save our samples.
out_dir = Path("./samples")
out_dir.mkdir(exist_ok=True, parents=True)

model.set_generation_params(
    duration=15,
    use_sampling=True,
    temperature=1.0,
    top_k=250,
    cfg_coef=3.0,
)

text = "hip hop, soul, piano, chords, jazz, neo jazz, G# minor, 140 bpm"
N = 4
out = model.generate(
    [text] * N,
    progress=True,
)

# Write to files
dt_str = datetime.now().strftime("%Y-%m-%d_%H-%M-%S")
for i in range(N):
    audio_write(
        out_dir / f"{dt_str}_{i:02d}",
        out[i].cpu(),
        model.sample_rate,
        strategy="loudness",
    )

# Or, if in a notebook, display audio widgets
# display_audio(out, model.sample_rate)

Prompt Format

Follow the following prompt format:

{tag_1}, {tag_1}, ..., {tag_n}, {key}, {bpm} bpm

For example:

hip hop, soul, piano, chords, jazz, neo jazz, G# minor, 140 bpm

The training dataset had the following tags in it:

hip hop
trap
soul
rnb
synth
songstarters
melody
keys
chords
guitar
vocals
dancehall
melodic stack
piano
electric
layered
music
drill
lo-fi hip hop
cinematic
pop
resampled
afropop & afrobeats
strings
leads
dark
african
acoustic
brass & woodwinds
live sounds
reggaeton
boom bap
pads
electric piano
fx
downtempo
wet
electric guitar
lo-fi
caribbean
chops
chillout
riffs
percussion
electronic
bass
choir
arp
uk drill
female
plucks
future bass
processed
future soul
ensemble
mallets
hooks
uk
flute
phrases
drums
atmospheres
jazz
emo
gospel
male
reverse
latin american
trap edm
latin
bells
pitched
ambient
tonal
distorted
moombahton
vinyl
orchestral
dry
psychedelic
edm
funk
neo soul
classical
harmony
adlib
trumpet
high
horns
electronica
violin
808
synthwave
ngoni
house
drones
progressive house
g-funk
hats
trip hop
baile funk
filtered
doo wop
tambourine
kora
stabs
textures
claps
grooves
clean
analog
harp
ambience
smooth
acapella
blues
saxophone
organ
soft
tremolo
chillwave
reverb
electric bass
low
moog
wah
wobble
indie pop
modular
sub
indie dance
glide
k-pop
afrobeat
mid
balafon
bitcrushed
phaser
middle eastern
zither
shakers
delay
tech house
disco
experimental
celesta
cello
drum and bass
trance
rock
rhythm
whistle
sidechained
saw
breakbeat
techno
brazilian
music box
glitch
clarinet
Downloads last month
24
Inference Examples
Inference API (serverless) does not yet support audiocraft models for this pipeline type.

Space using nateraw/musicgen-songstarter-v0.1 1

Collection including nateraw/musicgen-songstarter-v0.1