Skip to main content

Ultra-fast and very well fitted solo Piano music transformer

Project description

Monster Piano Transformer

Ultra-fast and very well fitted solo Piano music transformer

Monster-Piano-Logo


In the heart of a grand piano black and blue,  
A fuzzy monster with eyes of yellow hue,  
Its fingers dance upon the ivory keys,  
Weaving melodies that soothe and please.  

Musical notes float like leaves on breeze,  
Harmony fills the air with gentle ease,  
Each key stroke a word in a song unsung,  
A symphony of joy that sets the heart alight, free and light.  

The monster plays with such delight,  
Lost in the rhythm, lost in the light,  
Its fur a blur as it moves with grace,  
A pianist born from a whimsical place.  

Monster Piano, a title it bears,  
A fusion of art and melodic airs,  
Where creativity and music blend,  
In this magical concert that never ends.  

Let the monster's music fill the air,  
And wash away our every care,  
For in its song, we find repose,  
And in its rhythm, our spirits glow.

Install

pip install monsterpianotransformer

(Optional) FluidSynth for MIDI to Audio functinality

Ubuntu or Debian
sudo apt-get install fluidsynth
Windows (with Chocolatey)
choco install fluidsynth

Gradio app

# pip package includes a demo Gradio app without audio output

# Please refer to monsterpianotransformer/gradio/app_full.py
# for a full version with fluidsynth audio output

monsterpianotransformer-gradio

Quick-start use example

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model()

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path, encode_velocity=False)

# Generate seed MIDI continuation
output_tokens = mpt.generate(model, input_tokens, num_gen_tokens=600, return_prime=True)

# Save output batch # 0 to MIDI
mpt.tokens_to_midi(output_tokens[0])

Main features use examples

Long auto-continuation generation

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model()

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path, encode_velocity=False)

# Generate long seed MIDI auto-continuation
output_tokens = mpt.generate_long(model, input_tokens, return_prime=True)

# Save output batch 0 to MIDI
mpt.tokens_to_midi(output_tokens[0])

Pitches inpainting

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model()

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path, encode_velocity=False)

# Inpaint pitches
output_tokens = mpt.inpaint_pitches(model, input_tokens)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Simple velocities inpainting

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model(model_name='with velocity - 3 epochs')

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path, encode_velocity=True)

# Inpaint velocities
output_tokens = mpt.inpaint_velocities_simple(model, input_tokens)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Seq2Seq velocities inpainting

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model(model_name='velocity inpainting - 2 epochs')

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path, encode_velocity=True)

# Inpaint velocities
output_tokens = mpt.inpaint_velocities_seq2seq(model, input_tokens, verbose=True)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Timings inpainting

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model('timings inpainting - 2 epochs')

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path)

# Inpaint timings
output_tokens = mpt.inpaint_timings(model, input_tokens)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Bridge inpainting

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model('bridge inpainting - 2 epochs')

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[11][1]

# Load seed MIDI
input_tokens = mpt.midi_to_tokens(sample_midi_path)

# Inpaint bridge
output_tokens = mpt.inpaint_bridge(model, input_tokens)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Single chord generation

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model()

# Generate single chord
output_tokens = mpt.generate_chord(model)

Chords progressions

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model('chords progressions - 3 epochs')

# Prime chord(s) as a list of lists of semitones and/or pitches
prime_chords = [
                [0],
                [0, 2],
                [0, 2, 4],
                [60],
                [60, 62]
               ]

# Convert chords to chords tokens
chords_tokens = mpt.chords_to_chords_tokens(prime_chords)

# Generate chord progression continuation
output_tokens = mpt.generate(model, chords_tokens, num_gen_tokens=32, return_prime=True)

# Convert output tokens batch # 0 back to the chords list
chords_list = mpt.chords_tokens_to_chords(output_tokens[0])

print(chords_list)

Chords texturing

# Import Monster Piano Transformer as mpt
import monsterpianotransformer as mpt

# Load desired Monster Piano Transformer model
# There are several to choose from...
model = mpt.load_model('chords texturing - 3 epochs')

# Get sample seed MIDI path
sample_midi_path = mpt.get_sample_midi_files()[6][1]

# Convert MIDI to chords list
chords_list = mpt.midi_to_chords(sample_midi_path)

# Texture chords
output_tokens = mpt.texture_chords(model, chords_list)

# Save output to MIDI
mpt.tokens_to_midi(output_tokens)

Project Los Angeles

Tegridy Code 2025

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

monsterpianotransformer-25.1.75.tar.gz (737.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

monsterpianotransformer-25.1.75-py3-none-any.whl (747.7 kB view details)

Uploaded Python 3

File details

Details for the file monsterpianotransformer-25.1.75.tar.gz.

File metadata

File hashes

Hashes for monsterpianotransformer-25.1.75.tar.gz
Algorithm Hash digest
SHA256 35478424f978488e61f3423bcfd8147141b159e0b69a5f958af23f6ec94fc559
MD5 165a424d19627ed3ba7f7d799859f5b4
BLAKE2b-256 a8bd9ce13e7122185c8175c7be1a377f185e5eba068c613d78fb2b75531f5e08

See more details on using hashes here.

File details

Details for the file monsterpianotransformer-25.1.75-py3-none-any.whl.

File metadata

File hashes

Hashes for monsterpianotransformer-25.1.75-py3-none-any.whl
Algorithm Hash digest
SHA256 67705b58c317af8a068a216e0b62d9980b996efe756dcd382a2c9a078f264fe9
MD5 d9d2d59dd8d3eb894cce901d3a8b46d5
BLAKE2b-256 9214c3aa84b5c2c8763e45ab76866cc03c55f346cf63d4e92c1a2fa9325645e2

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page