import tempfile import unittest import torch from diffusers import BlockRefinementScheduler class BlockRefinementSchedulerTest(unittest.TestCase): def get_scheduler(self, **kwargs): config = { "block_length": 32, "num_inference_steps": 8, "threshold": 0.95, "editing_threshold": None, "minimal_topk": 1, } config.update(kwargs) return BlockRefinementScheduler(**config) def _make_logits_from_probs(self, target_probs: torch.Tensor, vocab_size: int = 100) -> torch.Tensor: """Create logits where softmax of the target token has approximately the given probability.""" batch_size, block_length = target_probs.shape logits = torch.zeros(batch_size, block_length, vocab_size) # Set token 0 as the "predicted" token with a logit proportional to desired probability for b in range(batch_size): for t in range(block_length): p = target_probs[b, t].item() if p > 0: logits[b, t, t % (vocab_size - 1)] = 10.0 * p return logits def test_set_timesteps(self): scheduler = self.get_scheduler() scheduler.set_timesteps(8) self.assertEqual(scheduler.num_inference_steps, 8) self.assertEqual(len(scheduler.timesteps), 8) self.assertEqual(scheduler.timesteps[0].item(), 7) self.assertEqual(scheduler.timesteps[-1].item(), 0) def test_set_timesteps_invalid(self): scheduler = self.get_scheduler() with self.assertRaises(ValueError): scheduler.set_timesteps(0) def test_get_num_transfer_tokens_even(self): scheduler = self.get_scheduler() schedule = scheduler.get_num_transfer_tokens(block_length=32, num_inference_steps=8) self.assertEqual(schedule.sum().item(), 32) self.assertEqual(len(schedule), 8) self.assertTrue((schedule == 4).all().item()) def test_get_num_transfer_tokens_remainder(self): scheduler = self.get_scheduler() schedule = scheduler.get_num_transfer_tokens(block_length=10, num_inference_steps=3) self.assertEqual(schedule.sum().item(), 10) self.assertEqual(len(schedule), 3) self.assertEqual(schedule[0].item(), 4) self.assertEqual(schedule[1].item(), 3) self.assertEqual(schedule[2].item(), 3) def test_transfer_schedule_created_on_set_timesteps(self): scheduler = self.get_scheduler(block_length=16) scheduler.set_timesteps(4) self.assertIsNotNone(scheduler._transfer_schedule) self.assertEqual(scheduler._transfer_schedule.sum().item(), 16) def test_save_load_config_round_trip(self): scheduler = self.get_scheduler(block_length=64, threshold=0.8, editing_threshold=0.5, minimal_topk=2) with tempfile.TemporaryDirectory() as tmpdir: scheduler.save_config(tmpdir) loaded = BlockRefinementScheduler.from_pretrained(tmpdir) self.assertEqual(loaded.config.block_length, 64) self.assertEqual(loaded.config.threshold, 0.8) self.assertEqual(loaded.config.editing_threshold, 0.5) self.assertEqual(loaded.config.minimal_topk, 2) def test_from_config(self): scheduler = self.get_scheduler(block_length=16, threshold=0.7) new_scheduler = BlockRefinementScheduler.from_config(scheduler.config) self.assertEqual(new_scheduler.config.block_length, 16) self.assertEqual(new_scheduler.config.threshold, 0.7) def test_step_commits_tokens(self): """Verify that step() commits mask tokens based on confidence.""" scheduler = self.get_scheduler(block_length=8) scheduler.set_timesteps(2) batch_size, block_length, vocab_size = 1, 8, 32 mask_id = 31 sample = torch.full((batch_size, block_length), mask_id, dtype=torch.long) # Create logits where confidence decreases with position logits = torch.zeros(batch_size, block_length, vocab_size) for i in range(block_length): logits[0, i, i] = 10.0 - i # decreasing confidence out = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=mask_id, temperature=0.0, threshold=0.95, return_dict=True, ) # With 8 tokens and 2 steps, first step should commit 4 tokens committed = out.transfer_index[0].sum().item() self.assertEqual(committed, 4) def test_step_no_editing_by_default(self): """Without editing_threshold, no non-mask tokens should be changed.""" scheduler = self.get_scheduler(block_length=4) scheduler.set_timesteps(2) vocab_size = 32 sample = torch.tensor([[10, 20, 31, 31]], dtype=torch.long) logits = torch.zeros(1, 4, vocab_size) logits[0, :, 15] = 10.0 # predict token 15 for all positions out = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=31, temperature=0.0, editing_threshold=None, return_dict=True, ) self.assertFalse(out.editing_transfer_index.any().item()) self.assertFalse(out.transfer_index[0, 0].item()) self.assertFalse(out.transfer_index[0, 1].item()) def test_step_editing_replaces_tokens(self): """With editing_threshold, non-mask tokens with high confidence and different prediction get replaced.""" scheduler = self.get_scheduler(block_length=4) scheduler.set_timesteps(2) vocab_size = 32 sample = torch.tensor([[10, 20, 31, 31]], dtype=torch.long) logits = torch.zeros(1, 4, vocab_size) # Token 0: predict 50 (different from 10) with very high logit logits[0, 0, 15] = 20.0 # Token 1: predict 20 (same as current) logits[0, 1, 20] = 20.0 # Mask tokens logits[0, 2, 5] = 5.0 logits[0, 3, 6] = 5.0 out = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=31, temperature=0.0, editing_threshold=0.5, return_dict=True, ) # Token 0 should be edited (different prediction, high confidence) self.assertTrue(out.editing_transfer_index[0, 0].item()) # Token 1 should NOT be edited (same prediction) self.assertFalse(out.editing_transfer_index[0, 1].item()) def test_step_prompt_mask_prevents_editing(self): """Prompt positions should never be edited even with editing enabled.""" scheduler = self.get_scheduler(block_length=4) scheduler.set_timesteps(2) vocab_size = 32 sample = torch.tensor([[10, 20, 31, 31]], dtype=torch.long) logits = torch.zeros(1, 4, vocab_size) logits[0, :, 15] = 20.0 prompt_mask = torch.tensor([True, True, False, False]) out = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=31, temperature=0.0, editing_threshold=0.5, prompt_mask=prompt_mask, return_dict=True, ) self.assertFalse(out.editing_transfer_index[0, 0].item()) self.assertFalse(out.editing_transfer_index[0, 1].item()) def test_step_return_tuple(self): """Verify tuple output when return_dict=False.""" scheduler = self.get_scheduler(block_length=4) scheduler.set_timesteps(2) vocab_size = 32 sample = torch.full((1, 4), 31, dtype=torch.long) logits = torch.randn(1, 4, vocab_size) result = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=31, temperature=0.0, return_dict=False, ) self.assertIsInstance(result, tuple) self.assertEqual(len(result), 5) def test_step_batched(self): """Verify step works with batch_size > 1.""" scheduler = self.get_scheduler(block_length=4) scheduler.set_timesteps(2) batch_size, vocab_size = 3, 32 mask_id = 31 sample = torch.full((batch_size, 4), mask_id, dtype=torch.long) logits = torch.randn(batch_size, 4, vocab_size) out = scheduler.step( model_output=logits, timestep=0, sample=sample, mask_token_id=mask_id, temperature=0.0, return_dict=True, ) self.assertEqual(out.prev_sample.shape, (batch_size, 4)) self.assertEqual(out.transfer_index.shape, (batch_size, 4)) def test_check_block_should_continue_finished(self): scheduler = self.get_scheduler() scheduler.set_timesteps(8) finished = torch.tensor([True, True]) result = scheduler.check_block_should_continue( step_idx=0, masks_remaining=True, editing_enabled=False, editing_transfer_index=torch.zeros(2, 32, dtype=torch.bool), post_steps=0, max_post_steps=16, finished=finished, ) self.assertFalse(result) def test_check_block_should_continue_no_masks_no_edits(self): scheduler = self.get_scheduler() scheduler.set_timesteps(8) finished = torch.tensor([False]) result = scheduler.check_block_should_continue( step_idx=5, masks_remaining=False, editing_enabled=True, editing_transfer_index=torch.zeros(1, 32, dtype=torch.bool), post_steps=1, max_post_steps=16, finished=finished, ) self.assertFalse(result) def test_check_block_should_continue_steps_exhausted(self): scheduler = self.get_scheduler() scheduler.set_timesteps(8) finished = torch.tensor([False]) result = scheduler.check_block_should_continue( step_idx=8, masks_remaining=True, editing_enabled=False, editing_transfer_index=torch.zeros(1, 32, dtype=torch.bool), post_steps=0, max_post_steps=16, finished=finished, ) self.assertFalse(result) def test_check_eos_finished_marks_batch(self): """When EOS is committed and all tokens before it are unmasked, mark batch as finished.""" mask_id, eos_id, prompt_length = 99, 2, 2 # cur_x: [prompt, prompt, token, eos, mask, mask] cur_x = torch.tensor([[10, 11, 5, eos_id, mask_id, mask_id]], dtype=torch.long) sampled_tokens = torch.tensor([[0, 0, 0, eos_id]], dtype=torch.long) final_transfer = torch.tensor([[False, False, False, True]]) finished = torch.tensor([False]) finished = BlockRefinementScheduler.check_eos_finished( cur_x=cur_x, sampled_tokens=sampled_tokens, final_transfer=final_transfer, finished=finished, eos_token_id=eos_id, mask_token_id=mask_id, prompt_length=prompt_length, ) self.assertTrue(finished[0].item()) def test_check_eos_finished_ignores_when_masks_before_eos(self): """If there are still mask tokens between prompt and EOS, don't mark as finished.""" mask_id, eos_id, prompt_length = 99, 2, 2 # cur_x: [prompt, prompt, mask, eos] — mask before EOS cur_x = torch.tensor([[10, 11, mask_id, eos_id]], dtype=torch.long) sampled_tokens = torch.tensor([[0, 0]], dtype=torch.long) final_transfer = torch.tensor([[False, True]]) finished = torch.tensor([False]) finished = BlockRefinementScheduler.check_eos_finished( cur_x=cur_x, sampled_tokens=sampled_tokens, final_transfer=final_transfer, finished=finished, eos_token_id=eos_id, mask_token_id=mask_id, prompt_length=prompt_length, ) self.assertFalse(finished[0].item()) def test_check_eos_finished_already_finished(self): """Already-finished batches should stay finished.""" mask_id, eos_id = 99, 2 cur_x = torch.tensor([[10, 11, 5, 6]], dtype=torch.long) sampled_tokens = torch.tensor([[0, 0]], dtype=torch.long) final_transfer = torch.tensor([[False, False]]) finished = torch.tensor([True]) finished = BlockRefinementScheduler.check_eos_finished( cur_x=cur_x, sampled_tokens=sampled_tokens, final_transfer=final_transfer, finished=finished, eos_token_id=eos_id, mask_token_id=mask_id, prompt_length=2, ) self.assertTrue(finished[0].item()) def test_add_noise(self): scheduler = self.get_scheduler(block_length=4) input_ids = torch.tensor([[1, 2, 3, 4, 5, 6, 7, 8]], dtype=torch.long) attention_mask = torch.ones_like(input_ids) mask_token_id = 99 gen = torch.Generator().manual_seed(42) noisy, noisy_rev, masked, masked_rev = scheduler.add_noise( input_ids, attention_mask, prompt_length=2, block_length=4, mask_token_id=mask_token_id, generator=gen, ) # Prompt positions should never be masked self.assertFalse(masked[0, 0].item()) self.assertFalse(masked[0, 1].item()) self.assertFalse(masked_rev[0, 0].item()) self.assertFalse(masked_rev[0, 1].item()) # Noisy should have mask_token_id where masked is True self.assertTrue((noisy[masked] == mask_token_id).all().item()) self.assertTrue((noisy_rev[masked_rev] == mask_token_id).all().item()) # masked and masked_rev should be complementary within valid non-prompt positions non_prompt = torch.zeros_like(masked) non_prompt[0, 2:] = True combined = masked | masked_rev self.assertTrue((combined[0, 2:] == non_prompt[0, 2:]).all().item()) class TestTopPFiltering(unittest.TestCase): def test_top_p_filtering(self): logits = torch.tensor([[1.0, 2.0, 3.0, 4.0]]) filtered = BlockRefinementScheduler._top_p_filtering(logits, top_p=0.5) self.assertTrue((filtered > torch.finfo(filtered.dtype).min).any()) self.assertTrue((filtered == torch.finfo(filtered.dtype).min).any()) def test_top_p_filtering_none(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) result = BlockRefinementScheduler._top_p_filtering(logits, top_p=None) self.assertTrue(torch.equal(result, logits)) def test_top_p_filtering_one(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) result = BlockRefinementScheduler._top_p_filtering(logits, top_p=1.0) self.assertTrue(torch.equal(result, logits)) class TestTopKFiltering(unittest.TestCase): def test_top_k_filtering(self): logits = torch.tensor([[1.0, 4.0, 2.0, 3.0]]) filtered = BlockRefinementScheduler._top_k_filtering(logits, top_k=2) self.assertAlmostEqual(filtered[0, 1].item(), 4.0) self.assertAlmostEqual(filtered[0, 3].item(), 3.0) self.assertEqual(filtered[0, 0].item(), torch.finfo(filtered.dtype).min) self.assertEqual(filtered[0, 2].item(), torch.finfo(filtered.dtype).min) def test_top_k_filtering_none(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) result = BlockRefinementScheduler._top_k_filtering(logits, top_k=None) self.assertTrue(torch.equal(result, logits)) def test_top_k_filtering_zero(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) result = BlockRefinementScheduler._top_k_filtering(logits, top_k=0) self.assertTrue(torch.equal(result, logits)) def test_top_k_filtering_large_k(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) result = BlockRefinementScheduler._top_k_filtering(logits, top_k=100) self.assertTrue(torch.equal(result, logits)) class TestSampleFromLogits(unittest.TestCase): def test_greedy_sampling(self): logits = torch.tensor([[1.0, 5.0, 2.0]]) tokens, probs = BlockRefinementScheduler._sample_from_logits( logits, temperature=0.0, top_k=None, top_p=None, generator=None, use_multinomial=False, ) self.assertEqual(tokens.item(), 1) self.assertEqual(tokens.shape, (1,)) self.assertEqual(probs.shape, (1,)) def test_multinomial_sampling(self): logits = torch.tensor([[0.0, 100.0, -100.0]]) gen = torch.Generator().manual_seed(42) tokens, probs = BlockRefinementScheduler._sample_from_logits( logits, temperature=1.0, top_k=None, top_p=None, generator=gen, use_multinomial=True, ) self.assertEqual(tokens.item(), 1) def test_temperature_scaling(self): logits = torch.tensor([[1.0, 2.0, 3.0]]) tokens, _ = BlockRefinementScheduler._sample_from_logits( logits, temperature=0.01, top_k=None, top_p=None, generator=None, use_multinomial=False, ) self.assertEqual(tokens.item(), 2) def test_negative_temperature_raises(self): logits = torch.tensor([[1.0, 2.0]]) with self.assertRaises(ValueError): BlockRefinementScheduler._sample_from_logits( logits, temperature=-1.0, top_k=None, top_p=None, generator=None, use_multinomial=False, ) if __name__ == "__main__": unittest.main()