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facefusion-labs/embedding_converter/README.md
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Embedding Converter
===================
> Convert face embeddings between various models.
![License](https://img.shields.io/badge/license-OpenRAIL--MS-green)
Preview
-------
![Preview](https://raw.githubusercontent.com/facefusion/facefusion-labs/next/.github/previews/embedding_converter.png?sanitize=true)
Installation
------------
```
pip install -r requirements.txt
```
Setup
-----
This `config.ini` utilizes the MegaFace dataset to train the Embedding Converter for SimSwap.
```
[training.dataset]
file_pattern = .datasets/megaface/**/*.jpg
```
```
[training.loader]
batch_size = 256
num_workers = 8
split_ratio = 0.95
```
```
[training.model]
source_path = .models/arcface_w600k_r50.pt
target_path = .models/arcface_simswap.pt
```
```
[training.trainer]
learning_rate = 0.001
max_epochs = 4096
precision = 16-mixed
```
```
[training.output]
directory_path = .outputs
file_pattern = arcface_converter_simswap_{epoch}_{step}
resume_path = .outputs/last.ckpt
```
```
[exporting]
directory_path = .exports
source_path = .outputs/last.ckpt
target_path = .exports/arcface_converter_simswap.onnx
ir_version = 10
opset_version = 15
```
Training
--------
Train the Embedding Converter model.
```
python train.py
```
Launch the TensorBoard to monitor the training.
```
tensorboard --logdir=.logs
```
Exporting
---------
Export the model to ONNX.
```
python export.py
```