Generate fine-tuning samples & Fine-tuning the model & Generate samples by transferring Note On

Related tags

Deep LearningUPMT
Overview

UPMT

Generate fine-tuning samples & Fine-tuning the model & Generate samples by transferring Note On

See main.py as an example:

from model import PopMusicTransformer
import argparse
import tensorflow as tf
import os
import pickle
import numpy as np
from glob import glob
parser = argparse.ArgumentParser(description='')
parser.add_argument('--prompt_path', dest='prompt_path', default='./test/prompt/test_input.mid', help='path of prompt')
parser.add_argument('--output_path', dest='output_path', default='./test/output/test_generate.mid', help='path of the output')
parser.add_argument('--favorite_path', dest='favorite_path', default='./test/favorite/test_favorite.mid', help='path of favorite')
parser.add_argument('--trainingdata_path', dest='trainingdata_path', default='./test/data/training.pickle', help='path of favorite training data')
parser.add_argument('--output_checkpoint_folder', dest='output_checkpoint_folder', default='./test/checkpoint/', help='path of favorite')
parser.add_argument('--alpha', default=0.1, help='weight of events')
parser.add_argument('--temperature', default=300, help='sampling temperature')
parser.add_argument('--topk', default=5, help='sampling topk')
parser.add_argument('--smpi', default=[-2,-2,-1,-2,-2,2,2,5], help='signature music pattern interval')

parser.add_argument('--type', dest='type', default='generateno', help='generateno or pretrain or prepare')

args = parser.parse_args()


def main(_):

    tfconfig = tf.ConfigProto(allow_soft_placement=True)
    with tf.Session(config=tfconfig) as sess:
        if args.type == 'prepare':
            midi_paths = glob('./test/favorite'+'/*.mid')
            model = PopMusicTransformer(
                checkpoint='./test/model',
                is_training=False)
            model.prepare_data(
                        midi_paths=midi_paths)    
        elif args.type == 'generateno':
            model = PopMusicTransformer(
                checkpoint='./test/model',
                is_training=False)
            model.generate_noteon(
                        temperature=float(args.temperature),
                        topk=int(args.topk),
                        output_path=args.output_path,  
                        smpi= np.array(args.smpi),
                        prompt=args.prompt_path)
        elif args.type =='pretrain':
            training_data = pickle.load(open(args.trainingdata_path,"rb"))
            if not os.path.exists(args.output_checkpoint_folder):
                os.mkdir(args.output_checkpoint_folder)
            model = PopMusicTransformer(
                checkpoint='./test/model',
                is_training=True)
            model.finetune(
                training_data=training_data,
                alpha=float(args.alpha),
                favoritepath=args.favorite_path,
                output_checkpoint_folder=args.output_checkpoint_folder)

if __name__ == '__main__':
    tf.app.run()

Thanks https://github.com/YatingMusic/remi for the open source.

A modular application for performing anomaly detection in networks

Deep-Learning-Models-for-Network-Annomaly-Detection The modular app consists for mainly three annomaly detection algorithms. The system supports model

Shivam Patel 1 Dec 09, 2021
Pytorch Lightning 1.2k Jan 06, 2023
A large-scale video dataset for the training and evaluation of 3D human pose estimation models

ASPset-510 (Australian Sports Pose Dataset) is a large-scale video dataset for the training and evaluation of 3D human pose estimation models. It contains 17 different amateur subjects performing 30

Aiden Nibali 25 Jun 20, 2021
A curated list of programmatic weak supervision papers and resources

A curated list of programmatic weak supervision papers and resources

Jieyu Zhang 118 Jan 02, 2023
https://arxiv.org/abs/2102.11005

LogME LogME: Practical Assessment of Pre-trained Models for Transfer Learning How to use Just feed the features f and labels y to the function, and yo

THUML: Machine Learning Group @ THSS 149 Dec 19, 2022
Pytorch domain adaptation package

DomainAdaptation This package is created to tackle the problem of domain shifts when dealing with two domains of different feature distributions. In d

Institute of Computational Perception 7 Oct 22, 2022
PyTorch implementation for paper "Full-Body Visual Self-Modeling of Robot Morphologies".

Full-Body Visual Self-Modeling of Robot Morphologies Boyuan Chen, Robert Kwiatkowskig, Carl Vondrick, Hod Lipson Columbia University Project Website |

Boyuan Chen 32 Jan 02, 2023
Perturb-and-max-product: Sampling and learning in discrete energy-based models

Perturb-and-max-product: Sampling and learning in discrete energy-based models This repo contains code for reproducing the results in the paper Pertur

Vicarious 2 Mar 14, 2022
This repository contains notebook implementations of the following Neural Process variants: Conditional Neural Processes (CNPs), Neural Processes (NPs), Attentive Neural Processes (ANPs).

The Neural Process Family This repository contains notebook implementations of the following Neural Process variants: Conditional Neural Processes (CN

DeepMind 892 Dec 28, 2022
Read number plates with https://platerecognizer.com/

HASS-plate-recognizer Read vehicle license plates with https://platerecognizer.com/ which offers free processing of 2500 images per month. You will ne

Robin 69 Dec 30, 2022
A Kaggle competition: discriminate gender based on handwriting

Gender discrimination based on handwriting See http://fastml.com/gender-discrimination/ for description. prep_data.py - a first step chunk_by_authors.

Zygmunt Zając 22 Jul 20, 2022
Alfred-Restore-Iterm-Arrangement - An Alfred workflow to restore iTerm2 window Arrangements

Alfred-Restore-Iterm-Arrangement This alfred workflow will list avaliable iTerm2

7 May 10, 2022
Tool for working with Y-chromosome data from YFull and FTDNA

ycomp ycomp is a tool for working with Y-chromosome data from YFull and FTDNA. Run ycomp -h for information on how to use the program. Installation Th

Alexander Regueiro 2 Jun 18, 2022
A hifiasm fork for metagenome assembly using Hifi reads.

hifiasm_meta - de novo metagenome assembler, based on hifiasm, a haplotype-resolved de novo assembler for PacBio Hifi reads.

44 Jul 10, 2022
Using python and scikit-learn to make stock predictions

MachineLearningStocks in python: a starter project and guide EDIT as of Feb 2021: MachineLearningStocks is no longer actively maintained MachineLearni

Robert Martin 1.3k Dec 29, 2022
Scalable machine learning based time series forecasting

mlforecast Scalable machine learning based time series forecasting. Install PyPI pip install mlforecast Optional dependencies If you want more functio

Nixtla 145 Dec 24, 2022
A 35mm camera, based on the Canonet G-III QL17 rangefinder, simulated in Python.

c is for Camera A 35mm camera, based on the Canonet G-III QL17 rangefinder, simulated in Python. The purpose of this project is to explore and underst

Daniele Procida 146 Sep 26, 2022
Convert onnx models to pytorch.

onnx2torch onnx2torch is an ONNX to PyTorch converter. Our converter: Is easy to use – Convert the ONNX model with the function call convert; Is easy

ENOT 264 Dec 30, 2022
Official implementation of CrossViT: Cross-Attention Multi-Scale Vision Transformer for Image Classification

CrossViT This repository is the official implementation of CrossViT: Cross-Attention Multi-Scale Vision Transformer for Image Classification. ArXiv If

International Business Machines 168 Dec 29, 2022
The software associated with a paper accepted at EMNLP 2021 titled "Open Knowledge Graphs Canonicalization using Variational Autoencoders".

Open-KG-canonicalization The software associated with a paper accepted at EMNLP 2021 titled "Open Knowledge Graphs Canonicalization using Variational

International Business Machines 13 Nov 11, 2022