--- title: Dance Classifier emoji: 💃 colorFrom: blue colorTo: yellow sdk: gradio python_version: 3.10.8 sdk_version: 3.15.0 app_file: app.py pinned: false --- # Dance Classifier Classifies the dance style that best accompanies a provided song. Users record or upload an audio clip and the model provides a list of matching dance styles. ## Getting Started 1. Download dependencies: `conda env create --file environment.yml` 2. Open environment: `conda activate dancer-net` 3. Start the demo application: `python app.py` ## Training You can update and train models with the `train.py` script. The specific logic for training each model can be found in training functions located in the [models folder](./models/). You can customize and parameterize these training loops by directing the training script towards a custom [yaml config file](./models/config/). ```bash # Train a model using a custom configuration python train.py --config models/config/train_local.yaml ``` The training loops output the weights into either the `models/weights` or `lightning_logs` directories depending on the training script. You can then reference these pretrained weights for inference. ### Model Configuration The YAML configuration files for training are located in [`models/config`](./models/config/). They specify the training environment, data, architecture, and hyperparameters of the model. ## Testing See tests in the `tests` folder. Use Pytest to run the tests. ```bash pytest ```