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PyTorch implementation of Bezier simplex fitting

Project description

pytorch-bsf

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A PyTorch implementation of Bezier simplex fitting.

The Bezier simplex is a high-dimensional generalization of the Bezier curve. It enables us to model a complex-shaped point cloud as a parametric hyper-surface in high-dimensional spaces. This package provides an algorithm to fit a Bezier simplex to given data points. To process terabyte-scale data, this package supports distributed training, realtime progress reporting, and checkpointing on top of PyTorch Lightning and MLflow.

A Bezier simplex and its control pointsA Bezier simplex that fits to a dataset

See the following papers for technical details.

  • Kobayashi, K., Hamada, N., Sannai, A., Tanaka, A., Bannai, K., & Sugiyama, M. (2019). Bézier Simplex Fitting: Describing Pareto Fronts of´ Simplicial Problems with Small Samples in Multi-Objective Optimization. Proceedings of the AAAI Conference on Artificial Intelligence, 33(01), 2304-2313. https://doi.org/10.1609/aaai.v33i01.33012304
  • Tanaka, A., Sannai, A., Kobayashi, K., & Hamada, N. (2020). Asymptotic Risk of Bézier Simplex Fitting. Proceedings of the AAAI Conference on Artificial Intelligence, 34(03), 2416-2424. https://doi.org/10.1609/aaai.v34i03.5622

Requirements

Python >=3.10, <3.14.

Quickstart

Download the latest Miniconda and install it. Then, install MLflow on your conda environment:

conda install -c conda-forge mlflow

Prepare data:

cat <<EOS > params.csv
1.00, 0.00
0.75, 0.25
0.50, 0.50
0.25, 0.75
0.00, 1.00
EOS
cat <<EOS > values.csv
0.00, 1.00
3.00, 2.00
4.00, 5.00
7.00, 6.00
8.00, 9.00
EOS

Run the following command:

mlflow run https://github.com/NaokiHamada/pytorch-bsf \
  -P params=params.csv \
  -P values=values.csv \
  -P meshgrid=params.csv \
  -P degree=3

which automatically sets up the environment and runs an experiment:

  1. Download the latest pytorch-bsf into a temporary directory.
  2. Create a new conda environment and install dependencies in it.
  3. Run an experiment on the temporary directory and environment.
Parameter Type Default Description
params path required The parameter data file, which contains input observations for training a Bezier simplex. The file must be of CSV (.csv) or TSV (.tsv). Each line in the file represents an input observation, corresponding to an output observation in the same line in the value data file.
values path required The value data file, which contains output observations for training a Bezier simplex. The file must be of CSV (.csv) or TSV (.tsv). Each line in the file represents an output observation, corresponding to an input observation in the same line in the parameter data file.
init path None Load initial control points from a file. The file must be of pickled PyTorch (.pt), CSV (.csv), TSV (.tsv), JSON (.json), or YAML (.yml or .yaml). Either this option or --degree must be specified, but not both.
degree int $(x \ge 1)$ None Generate initial control points at random with specified degree. Either this option or --init must be specified, but not both.
fix list[list[int]] None Indices of control points to exclude from training. By default, all control points are trained.
header int $(x \ge 0)$ 0 The number of header lines in params/values files.
normalize "max", "std", "quantile" None The data normalization: "max" scales each feature as the minimum is 0 and the maximum is 1, suitable for uniformly distributed data; "std" does as the mean is 0 and the standard deviation is 1, suitable for nonuniformly distributed data; "quantile" does as 5-percentile is 0 and 95-percentile is 1, suitable for data containing outliers; None does not perform any scaling, suitable for pre-normalized data.
split_ratio float $(0 < x < 1)$ 0.5 The ratio of training data against validation data.
batch_size int $(x \ge 0)$ 0 The size of minibatch. The default uses all records in a single batch.
max_epochs int $(x \ge 1)$ 1000 The number of epochs to stop training.
accelerator "auto", "cpu", "gpu", etc. "auto" Accelerator to use. See PyTorch Lightning documentation.
strategy "auto", "dp", "ddp", etc. "auto" Distributed strategy. See PyTorch Lightning documentation.
devices int $(x \ge -1)$ "auto" The number of accelerators to use. By default, use all available devices. See PyTorch Lightning documentation.
num_nodes int $(x \ge 1)$ 1 The number of compute nodes to use. See PyTorch Lightning documentation.
precision "64", "32", "16", "bf16" "32" The precision of floating point numbers.
loglevel int $(0 \le x \le 2)$ 2 What objects to be logged. 0: nothing; 1: metrics; 2: metrics and models.
enable_checkpointing bool False With this flag, model files will be stored every epoch during training.
log_every_n_steps int $(x \ge 1)$ 1 The interval of training steps when training loss is logged.

Installation

pip install pytorch-bsf

Fitting via CLI

This package provides a command line interface to train a Bezier simplex with a dataset file.

Execute the torch_bsf module:

python -m torch_bsf \
  --params=params.csv \
  --values=values.csv \
  --meshgrid=params.csv \
  --degree=3

Fitting via Script

Train a model by fit(), and call the model to predict.

import torch
import torch_bsf

# Prepare training data
ts = torch.tensor(  # parameters on a simplex
    [
        [8 / 8, 0 / 8],
        [7 / 8, 1 / 8],
        [6 / 8, 2 / 8],
        [5 / 8, 3 / 8],
        [4 / 8, 4 / 8],
        [3 / 8, 5 / 8],
        [2 / 8, 6 / 8],
        [1 / 8, 7 / 8],
        [0 / 8, 8 / 8],
    ]
)
xs = 1 - ts * ts  # values corresponding to the parameters

# Train a model
bs = torch_bsf.fit(params=ts, values=xs, degree=3)

# Predict by the trained model
t = [
    [0.2, 0.8],
    [0.7, 0.3],
]
x = bs(t)
print(f"{t} -> {x}")

Documents

See documents for more details. https://NaokiHamada.github.io/pytorch-bsf/

Author

FUJITSU LIMITED and Naoki Hamada

License

MIT

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