# Copyright 2022-2023 The Alibaba Fundamental Vision Team Authors. All rights reserved. import os import shutil import tempfile import unittest from modelscope.metainfo import Trainers from modelscope.msdatasets import MsDataset from modelscope.trainers import build_trainer from modelscope.utils.constant import DownloadMode from modelscope.utils.test_utils import test_level class TestEfficientDiffusionTuningTrainer(unittest.TestCase): def setUp(self): print(('Testing %s.%s' % (type(self).__name__, self._testMethodName))) self.train_dataset = MsDataset.load( 'controlnet_dataset_condition_fill50k', namespace='damo', split='train', download_mode=DownloadMode.FORCE_REDOWNLOAD).to_hf_dataset( # noqa ).select(range(100)) # noqa self.eval_dataset = MsDataset.load( 'controlnet_dataset_condition_fill50k', namespace='damo', split='validation', download_mode=DownloadMode.FORCE_REDOWNLOAD).to_hf_dataset( # noqa ).select(range(20)) # noqa self.max_epochs = 1 self.tmp_dir = tempfile.TemporaryDirectory().name if not os.path.exists(self.tmp_dir): os.makedirs(self.tmp_dir) def tearDown(self): shutil.rmtree(self.tmp_dir) super().tearDown() @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') def test_efficient_diffusion_tuning_lora_train(self): model_id = 'damo/multi-modal_efficient-diffusion-tuning-lora' model_revision = 'v1.0.2' def cfg_modify_fn(cfg): cfg.train.max_epochs = self.max_epochs cfg.train.lr_scheduler.T_max = self.max_epochs cfg.model.inference = False return cfg kwargs = dict( model=model_id, model_revision=model_revision, work_dir=self.tmp_dir, train_dataset=self.train_dataset, eval_dataset=self.eval_dataset, cfg_modify_fn=cfg_modify_fn) trainer = build_trainer( name=Trainers.efficient_diffusion_tuning, default_args=kwargs) trainer.train() result = trainer.evaluate() print(f'Efficient-diffusion-tuning-lora train output: {result}.') results_files = os.listdir(self.tmp_dir) self.assertIn(f'{trainer.timestamp}.log.json', results_files) for i in range(self.max_epochs): self.assertIn(f'epoch_{i+1}.pth', results_files) @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') def test_efficient_diffusion_tuning_lora_eval(self): model_id = 'damo/multi-modal_efficient-diffusion-tuning-lora' model_revision = 'v1.0.2' def cfg_modify_fn(cfg): cfg.model.inference = False return cfg kwargs = dict( model=model_id, model_revision=model_revision, work_dir=self.tmp_dir, train_dataset=None, eval_dataset=self.eval_dataset, cfg_modify_fn=cfg_modify_fn) trainer = build_trainer( name=Trainers.efficient_diffusion_tuning, default_args=kwargs) result = trainer.evaluate() print(f'Efficient-diffusion-tuning-lora eval output: {result}.') @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') def test_efficient_diffusion_tuning_control_lora_train(self): model_id = 'damo/multi-modal_efficient-diffusion-tuning-control-lora' model_revision = 'v1.0.2' def cfg_modify_fn(cfg): cfg.train.max_epochs = self.max_epochs cfg.train.lr_scheduler.T_max = self.max_epochs cfg.model.inference = False return cfg kwargs = dict( model=model_id, model_revision=model_revision, work_dir=self.tmp_dir, train_dataset=self.train_dataset, eval_dataset=self.eval_dataset, cfg_modify_fn=cfg_modify_fn) trainer = build_trainer( name=Trainers.efficient_diffusion_tuning, default_args=kwargs) trainer.train() result = trainer.evaluate() print( f'Efficient-diffusion-tuning-control-lora train output: {result}.') results_files = os.listdir(self.tmp_dir) self.assertIn(f'{trainer.timestamp}.log.json', results_files) for i in range(self.max_epochs): self.assertIn(f'epoch_{i+1}.pth', results_files) @unittest.skipUnless(test_level() >= 1, 'skip test in current test level') def test_efficient_diffusion_tuning_control_lora_eval(self): model_id = 'damo/multi-modal_efficient-diffusion-tuning-control-lora' model_revision = 'v1.0.2' def cfg_modify_fn(cfg): cfg.model.inference = False return cfg kwargs = dict( model=model_id, model_revision=model_revision, work_dir=self.tmp_dir, train_dataset=None, eval_dataset=self.eval_dataset, cfg_modify_fn=cfg_modify_fn) trainer = build_trainer( name=Trainers.efficient_diffusion_tuning, default_args=kwargs) result = trainer.evaluate() print( f'Efficient-diffusion-tuning-control-lora eval output: {result}.') if __name__ == '__main__': unittest.main()