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A PyTorch Lightning NNUE model for chess engines – train and quantize with ease!

Project description

NNUE Trainer

Installation

To install the library, use the following command:

pip install nnue-trainer

Additionally, the nnue-parser library is required for parsing training data:

pip install nnue-parser

Usage

A simple example for training an NNUE model:

from nnue_trainer import train_nnue

if __name__ == "__main__":
    train_nnue(
        train_file="train.bin",
        val_file="val.bin",
        epochs=10,
        batch_size=4096,
        device="gpu",
        num_workers=5,
        quantize=True
    )

Parameter Description:

Parameter Description
train_file Path to the training file in .bin format
val_file Path to the validation file in .bin format
epochs Number of training iterations
batch_size Batch size for processing
device Choose "cpu" or "gpu" to specify the device
num_workers Number of parallel processes for data loading
quantize If True, the model will be quantized

Creating .bin Training Files

The .bin training files can be generated using the following tool:
FireFather/sf-nnue-aio

Use the following command:

gensfen depth 8 loop 100000

This command generates SFEN data with a search depth of 8 over 100,000 iterations.

Parsing the .jnn File

After training, the final .jnn model file can be parsed using the nnue-parser library:

from nnue_parser import parse_nnue

parsed_data = parse_nnue("model.jnn")

This allows you to inspect and analyze the trained NNUE model.

Troubleshooting / Common Errors

TypeError: devices selected with CPUAccelerator should be an int > 0.

Solution: Ensure that devices in train_nnue() is not None or 0. If training on CPU, explicitly set:

train_nnue(..., device="cpu", num_workers=1)

RuntimeError: CUDA out of memory

Solution: If your GPU memory is insufficient, reduce the batch_size:

train_nnue(..., batch_size=1024)

Acknowledgments

A big thank you to the repository TensorFlowNNUE for the model.

License

This project is released under an open-source license. See the LICENSE file for more details.

Release Information

This is the first and final release of NNUE Trainer.

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