Quick start =========== Learn how to use OrcaNet in just 4 simple steps! This assumes you have already installed orcanet. Step 1 ------ Create a directory for your training with an adequate name. E.g.:: mkdir my_first_orcanet_training This directory will contain all the logfiles, plots, checkpoints etc. of this training. Step 2 ------ Create your toml configuration files and move them into your directory. These toml files describe: - The data that will be used (``list.toml``) - The configuration of the training (``config.toml``) - The architecture of the model (``model.toml``) See :ref:`input_page` for more details on these files. Make sure to give them these exact names (``list.toml``, ``config.toml``, ``model.toml``). This allows OrcaNet to automatically discover them in your directory. Step 3 ------ Start the training like this:: orcanet train my_first_orcanet_training You can monitor how the training goes by looking at the summary plot in my_first_orcanet_training/plots/summary_plot.pdf. Or, if you prefer an interactive plot, with this command:: orcanet summarize my_first_orcanet_training To resume a training, just run the train command again. Once the model has fully converged, you can continue with the next step. Step 4 ------ Save the output of the model to hdf5 like this:: orcanet predict my_first_orcanet_training or like this:: orcanet inference my_first_orcanet_training Depending on wether you want to use the validation files or the inference files as an input. The result gets saved to ``my_first_orcanet_training/predictions``. Further Info ------------ If you want to learn how to use the python interface of OrcaNet, you can check out :ref:`orcanet_python`.