"""Training and evaluation""" from absl import app from absl import flags from ml_collections.config_flags import config_flags import lib.diffusion.trainer as trainer import lib.diffusion.evaler as evaler FLAGS = flags.FLAGS config_flags.DEFINE_config_file( "config", None, "diffusion configs", lock_config=False) flags.DEFINE_enum("mode", None, ["train", "uncond_gen", "cond_gen"], "Running mode") flags.mark_flags_as_required(["config", "mode"]) def main(argv): if FLAGS.mode == 'train': trainer.train(FLAGS.config) elif FLAGS.mode == 'uncond_gen': evaler.uncond_gen(FLAGS.config) elif FLAGS.mode == 'cond_gen': evaler.cond_gen(FLAGS.config) if __name__ == "__main__": app.run(main)