# coding=utf-8 # Copyright 2024 HuggingFace Inc. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import copy import gc import os import tempfile import unittest from collections import OrderedDict import torch from huggingface_hub import snapshot_download from parameterized import parameterized from pytest import mark from diffusers import UNet2DConditionModel from diffusers.models.attention_processor import ( CustomDiffusionAttnProcessor, IPAdapterAttnProcessor, IPAdapterAttnProcessor2_0, ) from diffusers.models.embeddings import ImageProjection, IPAdapterFaceIDImageProjection, IPAdapterPlusImageProjection from diffusers.utils import logging from diffusers.utils.import_utils import is_xformers_available from diffusers.utils.testing_utils import ( backend_empty_cache, enable_full_determinism, floats_tensor, is_peft_available, load_hf_numpy, require_peft_backend, require_torch_accelerator, require_torch_accelerator_with_fp16, require_torch_accelerator_with_training, require_torch_gpu, skip_mps, slow, torch_all_close, torch_device, ) from ..test_modeling_common import ModelTesterMixin, UNetTesterMixin if is_peft_available(): from peft import LoraConfig from peft.tuners.tuners_utils import BaseTunerLayer logger = logging.get_logger(__name__) enable_full_determinism() def get_unet_lora_config(): rank = 4 unet_lora_config = LoraConfig( r=rank, lora_alpha=rank, target_modules=["to_q", "to_k", "to_v", "to_out.0"], init_lora_weights=False, use_dora=False, ) return unet_lora_config def check_if_lora_correctly_set(model) -> bool: """ Checks if the LoRA layers are correctly set with peft """ for module in model.modules(): if isinstance(module, BaseTunerLayer): return True return False def create_ip_adapter_state_dict(model): # "ip_adapter" (cross-attention weights) ip_cross_attn_state_dict = {} key_id = 1 for name in model.attn_processors.keys(): cross_attention_dim = ( None if name.endswith("attn1.processor") or "motion_module" in name else model.config.cross_attention_dim ) if name.startswith("mid_block"): hidden_size = model.config.block_out_channels[-1] elif name.startswith("up_blocks"): block_id = int(name[len("up_blocks.")]) hidden_size = list(reversed(model.config.block_out_channels))[block_id] elif name.startswith("down_blocks"): block_id = int(name[len("down_blocks.")]) hidden_size = model.config.block_out_channels[block_id] if cross_attention_dim is not None: sd = IPAdapterAttnProcessor( hidden_size=hidden_size, cross_attention_dim=cross_attention_dim, scale=1.0 ).state_dict() ip_cross_attn_state_dict.update( { f"{key_id}.to_k_ip.weight": sd["to_k_ip.0.weight"], f"{key_id}.to_v_ip.weight": sd["to_v_ip.0.weight"], } ) key_id += 2 # "image_proj" (ImageProjection layer weights) cross_attention_dim = model.config["cross_attention_dim"] image_projection = ImageProjection( cross_attention_dim=cross_attention_dim, image_embed_dim=cross_attention_dim, num_image_text_embeds=4 ) ip_image_projection_state_dict = {} sd = image_projection.state_dict() ip_image_projection_state_dict.update( { "proj.weight": sd["image_embeds.weight"], "proj.bias": sd["image_embeds.bias"], "norm.weight": sd["norm.weight"], "norm.bias": sd["norm.bias"], } ) del sd ip_state_dict = {} ip_state_dict.update({"image_proj": ip_image_projection_state_dict, "ip_adapter": ip_cross_attn_state_dict}) return ip_state_dict def create_ip_adapter_plus_state_dict(model): # "ip_adapter" (cross-attention weights) ip_cross_attn_state_dict = {} key_id = 1 for name in model.attn_processors.keys(): cross_attention_dim = None if name.endswith("attn1.processor") else model.config.cross_attention_dim if name.startswith("mid_block"): hidden_size = model.config.block_out_channels[-1] elif name.startswith("up_blocks"): block_id = int(name[len("up_blocks.")]) hidden_size = list(reversed(model.config.block_out_channels))[block_id] elif name.startswith("down_blocks"): block_id = int(name[len("down_blocks.")]) hidden_size = model.config.block_out_channels[block_id] if cross_attention_dim is not None: sd = IPAdapterAttnProcessor( hidden_size=hidden_size, cross_attention_dim=cross_attention_dim, scale=1.0 ).state_dict() ip_cross_attn_state_dict.update( { f"{key_id}.to_k_ip.weight": sd["to_k_ip.0.weight"], f"{key_id}.to_v_ip.weight": sd["to_v_ip.0.weight"], } ) key_id += 2 # "image_proj" (ImageProjection layer weights) cross_attention_dim = model.config["cross_attention_dim"] image_projection = IPAdapterPlusImageProjection( embed_dims=cross_attention_dim, output_dims=cross_attention_dim, dim_head=32, heads=2, num_queries=4 ) ip_image_projection_state_dict = OrderedDict() keys = [k for k in image_projection.state_dict() if "layers." in k] print(keys) for k, v in image_projection.state_dict().items(): if "2.to" in k: k = k.replace("2.to", "0.to") elif "layers.0.ln0" in k: k = k.replace("layers.0.ln0", "layers.0.0.norm1") elif "layers.0.ln1" in k: k = k.replace("layers.0.ln1", "layers.0.0.norm2") elif "layers.1.ln0" in k: k = k.replace("layers.1.ln0", "layers.1.0.norm1") elif "layers.1.ln1" in k: k = k.replace("layers.1.ln1", "layers.1.0.norm2") elif "layers.2.ln0" in k: k = k.replace("layers.2.ln0", "layers.2.0.norm1") elif "layers.2.ln1" in k: k = k.replace("layers.2.ln1", "layers.2.0.norm2") elif "layers.3.ln0" in k: k = k.replace("layers.3.ln0", "layers.3.0.norm1") elif "layers.3.ln1" in k: k = k.replace("layers.3.ln1", "layers.3.0.norm2") elif "to_q" in k: parts = k.split(".") parts[2] = "attn" k = ".".join(parts) elif "to_out.0" in k: parts = k.split(".") parts[2] = "attn" k = ".".join(parts) k = k.replace("to_out.0", "to_out") else: k = k.replace("0.ff.0", "0.1.0") k = k.replace("0.ff.1.net.0.proj", "0.1.1") k = k.replace("0.ff.1.net.2", "0.1.3") k = k.replace("1.ff.0", "1.1.0") k = k.replace("1.ff.1.net.0.proj", "1.1.1") k = k.replace("1.ff.1.net.2", "1.1.3") k = k.replace("2.ff.0", "2.1.0") k = k.replace("2.ff.1.net.0.proj", "2.1.1") k = k.replace("2.ff.1.net.2", "2.1.3") k = k.replace("3.ff.0", "3.1.0") k = k.replace("3.ff.1.net.0.proj", "3.1.1") k = k.replace("3.ff.1.net.2", "3.1.3") # if "norm_cross" in k: # ip_image_projection_state_dict[k.replace("norm_cross", "norm1")] = v # elif "layer_norm" in k: # ip_image_projection_state_dict[k.replace("layer_norm", "norm2")] = v if "to_k" in k: parts = k.split(".") parts[2] = "attn" k = ".".join(parts) ip_image_projection_state_dict[k.replace("to_k", "to_kv")] = torch.cat([v, v], dim=0) elif "to_v" in k: continue else: ip_image_projection_state_dict[k] = v ip_state_dict = {} ip_state_dict.update({"image_proj": ip_image_projection_state_dict, "ip_adapter": ip_cross_attn_state_dict}) return ip_state_dict def create_ip_adapter_faceid_state_dict(model): # "ip_adapter" (cross-attention weights) # no LoRA weights ip_cross_attn_state_dict = {} key_id = 1 for name in model.attn_processors.keys(): cross_attention_dim = ( None if name.endswith("attn1.processor") or "motion_module" in name else model.config.cross_attention_dim ) if name.startswith("mid_block"): hidden_size = model.config.block_out_channels[-1] elif name.startswith("up_blocks"): block_id = int(name[len("up_blocks.")]) hidden_size = list(reversed(model.config.block_out_channels))[block_id] elif name.startswith("down_blocks"): block_id = int(name[len("down_blocks.")]) hidden_size = model.config.block_out_channels[block_id] if cross_attention_dim is not None: sd = IPAdapterAttnProcessor( hidden_size=hidden_size, cross_attention_dim=cross_attention_dim, scale=1.0 ).state_dict() ip_cross_attn_state_dict.update( { f"{key_id}.to_k_ip.weight": sd["to_k_ip.0.weight"], f"{key_id}.to_v_ip.weight": sd["to_v_ip.0.weight"], } ) key_id += 2 # "image_proj" (ImageProjection layer weights) cross_attention_dim = model.config["cross_attention_dim"] image_projection = IPAdapterFaceIDImageProjection( cross_attention_dim=cross_attention_dim, image_embed_dim=cross_attention_dim, mult=2, num_tokens=4 ) ip_image_projection_state_dict = {} sd = image_projection.state_dict() ip_image_projection_state_dict.update( { "proj.0.weight": sd["ff.net.0.proj.weight"], "proj.0.bias": sd["ff.net.0.proj.bias"], "proj.2.weight": sd["ff.net.2.weight"], "proj.2.bias": sd["ff.net.2.bias"], "norm.weight": sd["norm.weight"], "norm.bias": sd["norm.bias"], } ) del sd ip_state_dict = {} ip_state_dict.update({"image_proj": ip_image_projection_state_dict, "ip_adapter": ip_cross_attn_state_dict}) return ip_state_dict def create_custom_diffusion_layers(model, mock_weights: bool = True): train_kv = True train_q_out = True custom_diffusion_attn_procs = {} st = model.state_dict() for name, _ in model.attn_processors.items(): cross_attention_dim = None if name.endswith("attn1.processor") else model.config.cross_attention_dim if name.startswith("mid_block"): hidden_size = model.config.block_out_channels[-1] elif name.startswith("up_blocks"): block_id = int(name[len("up_blocks.")]) hidden_size = list(reversed(model.config.block_out_channels))[block_id] elif name.startswith("down_blocks"): block_id = int(name[len("down_blocks.")]) hidden_size = model.config.block_out_channels[block_id] layer_name = name.split(".processor")[0] weights = { "to_k_custom_diffusion.weight": st[layer_name + ".to_k.weight"], "to_v_custom_diffusion.weight": st[layer_name + ".to_v.weight"], } if train_q_out: weights["to_q_custom_diffusion.weight"] = st[layer_name + ".to_q.weight"] weights["to_out_custom_diffusion.0.weight"] = st[layer_name + ".to_out.0.weight"] weights["to_out_custom_diffusion.0.bias"] = st[layer_name + ".to_out.0.bias"] if cross_attention_dim is not None: custom_diffusion_attn_procs[name] = CustomDiffusionAttnProcessor( train_kv=train_kv, train_q_out=train_q_out, hidden_size=hidden_size, cross_attention_dim=cross_attention_dim, ).to(model.device) custom_diffusion_attn_procs[name].load_state_dict(weights) if mock_weights: # add 1 to weights to mock trained weights with torch.no_grad(): custom_diffusion_attn_procs[name].to_k_custom_diffusion.weight += 1 custom_diffusion_attn_procs[name].to_v_custom_diffusion.weight += 1 else: custom_diffusion_attn_procs[name] = CustomDiffusionAttnProcessor( train_kv=False, train_q_out=False, hidden_size=hidden_size, cross_attention_dim=cross_attention_dim, ) del st return custom_diffusion_attn_procs class UNet2DConditionModelTests(ModelTesterMixin, UNetTesterMixin, unittest.TestCase): model_class = UNet2DConditionModel main_input_name = "sample" # We override the items here because the unet under consideration is small. model_split_percents = [0.5, 0.3, 0.4] @property def dummy_input(self): batch_size = 4 num_channels = 4 sizes = (16, 16) noise = floats_tensor((batch_size, num_channels) + sizes).to(torch_device) time_step = torch.tensor([10]).to(torch_device) encoder_hidden_states = floats_tensor((batch_size, 4, 8)).to(torch_device) return {"sample": noise, "timestep": time_step, "encoder_hidden_states": encoder_hidden_states} @property def input_shape(self): return (4, 16, 16) @property def output_shape(self): return (4, 16, 16) def prepare_init_args_and_inputs_for_common(self): init_dict = { "block_out_channels": (4, 8), "norm_num_groups": 4, "down_block_types": ("CrossAttnDownBlock2D", "DownBlock2D"), "up_block_types": ("UpBlock2D", "CrossAttnUpBlock2D"), "cross_attention_dim": 8, "attention_head_dim": 2, "out_channels": 4, "in_channels": 4, "layers_per_block": 1, "sample_size": 16, } inputs_dict = self.dummy_input return init_dict, inputs_dict @unittest.skipIf( torch_device != "cuda" or not is_xformers_available(), reason="XFormers attention is only available with CUDA and `xformers` installed", ) def test_xformers_enable_works(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**init_dict) model.enable_xformers_memory_efficient_attention() assert ( model.mid_block.attentions[0].transformer_blocks[0].attn1.processor.__class__.__name__ == "XFormersAttnProcessor" ), "xformers is not enabled" @require_torch_accelerator_with_training def test_gradient_checkpointing(self): # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**init_dict) model.to(torch_device) assert not model.is_gradient_checkpointing and model.training out = model(**inputs_dict).sample # run the backwards pass on the model. For backwards pass, for simplicity purpose, # we won't calculate the loss and rather backprop on out.sum() model.zero_grad() labels = torch.randn_like(out) loss = (out - labels).mean() loss.backward() # re-instantiate the model now enabling gradient checkpointing model_2 = self.model_class(**init_dict) # clone model model_2.load_state_dict(model.state_dict()) model_2.to(torch_device) model_2.enable_gradient_checkpointing() assert model_2.is_gradient_checkpointing and model_2.training out_2 = model_2(**inputs_dict).sample # run the backwards pass on the model. For backwards pass, for simplicity purpose, # we won't calculate the loss and rather backprop on out.sum() model_2.zero_grad() loss_2 = (out_2 - labels).mean() loss_2.backward() # compare the output and parameters gradients self.assertTrue((loss - loss_2).abs() < 1e-5) named_params = dict(model.named_parameters()) named_params_2 = dict(model_2.named_parameters()) for name, param in named_params.items(): self.assertTrue(torch_all_close(param.grad.data, named_params_2[name].grad.data, atol=5e-5)) def test_model_with_attention_head_dim_tuple(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) model.eval() with torch.no_grad(): output = model(**inputs_dict) if isinstance(output, dict): output = output.sample self.assertIsNotNone(output) expected_shape = inputs_dict["sample"].shape self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_model_with_use_linear_projection(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["use_linear_projection"] = True model = self.model_class(**init_dict) model.to(torch_device) model.eval() with torch.no_grad(): output = model(**inputs_dict) if isinstance(output, dict): output = output.sample self.assertIsNotNone(output) expected_shape = inputs_dict["sample"].shape self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_model_with_cross_attention_dim_tuple(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["cross_attention_dim"] = (8, 8) model = self.model_class(**init_dict) model.to(torch_device) model.eval() with torch.no_grad(): output = model(**inputs_dict) if isinstance(output, dict): output = output.sample self.assertIsNotNone(output) expected_shape = inputs_dict["sample"].shape self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_model_with_simple_projection(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() batch_size, _, _, sample_size = inputs_dict["sample"].shape init_dict["class_embed_type"] = "simple_projection" init_dict["projection_class_embeddings_input_dim"] = sample_size inputs_dict["class_labels"] = floats_tensor((batch_size, sample_size)).to(torch_device) model = self.model_class(**init_dict) model.to(torch_device) model.eval() with torch.no_grad(): output = model(**inputs_dict) if isinstance(output, dict): output = output.sample self.assertIsNotNone(output) expected_shape = inputs_dict["sample"].shape self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_model_with_class_embeddings_concat(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() batch_size, _, _, sample_size = inputs_dict["sample"].shape init_dict["class_embed_type"] = "simple_projection" init_dict["projection_class_embeddings_input_dim"] = sample_size init_dict["class_embeddings_concat"] = True inputs_dict["class_labels"] = floats_tensor((batch_size, sample_size)).to(torch_device) model = self.model_class(**init_dict) model.to(torch_device) model.eval() with torch.no_grad(): output = model(**inputs_dict) if isinstance(output, dict): output = output.sample self.assertIsNotNone(output) expected_shape = inputs_dict["sample"].shape self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_model_attention_slicing(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) model.eval() model.set_attention_slice("auto") with torch.no_grad(): output = model(**inputs_dict) assert output is not None model.set_attention_slice("max") with torch.no_grad(): output = model(**inputs_dict) assert output is not None model.set_attention_slice(2) with torch.no_grad(): output = model(**inputs_dict) assert output is not None def test_model_sliceable_head_dim(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) def check_sliceable_dim_attr(module: torch.nn.Module): if hasattr(module, "set_attention_slice"): assert isinstance(module.sliceable_head_dim, int) for child in module.children(): check_sliceable_dim_attr(child) # retrieve number of attention layers for module in model.children(): check_sliceable_dim_attr(module) def test_gradient_checkpointing_is_applied(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model_class_copy = copy.copy(self.model_class) modules_with_gc_enabled = {} # now monkey patch the following function: # def _set_gradient_checkpointing(self, module, value=False): # if hasattr(module, "gradient_checkpointing"): # module.gradient_checkpointing = value def _set_gradient_checkpointing_new(self, module, value=False): if hasattr(module, "gradient_checkpointing"): module.gradient_checkpointing = value modules_with_gc_enabled[module.__class__.__name__] = True model_class_copy._set_gradient_checkpointing = _set_gradient_checkpointing_new model = model_class_copy(**init_dict) model.enable_gradient_checkpointing() EXPECTED_SET = { "CrossAttnUpBlock2D", "CrossAttnDownBlock2D", "UNetMidBlock2DCrossAttn", "UpBlock2D", "Transformer2DModel", "DownBlock2D", } assert set(modules_with_gc_enabled.keys()) == EXPECTED_SET assert all(modules_with_gc_enabled.values()), "All modules should be enabled" def test_special_attn_proc(self): class AttnEasyProc(torch.nn.Module): def __init__(self, num): super().__init__() self.weight = torch.nn.Parameter(torch.tensor(num)) self.is_run = False self.number = 0 self.counter = 0 def __call__(self, attn, hidden_states, encoder_hidden_states=None, attention_mask=None, number=None): batch_size, sequence_length, _ = hidden_states.shape attention_mask = attn.prepare_attention_mask(attention_mask, sequence_length, batch_size) query = attn.to_q(hidden_states) encoder_hidden_states = encoder_hidden_states if encoder_hidden_states is not None else hidden_states key = attn.to_k(encoder_hidden_states) value = attn.to_v(encoder_hidden_states) query = attn.head_to_batch_dim(query) key = attn.head_to_batch_dim(key) value = attn.head_to_batch_dim(value) attention_probs = attn.get_attention_scores(query, key, attention_mask) hidden_states = torch.bmm(attention_probs, value) hidden_states = attn.batch_to_head_dim(hidden_states) # linear proj hidden_states = attn.to_out[0](hidden_states) # dropout hidden_states = attn.to_out[1](hidden_states) hidden_states += self.weight self.is_run = True self.counter += 1 self.number = number return hidden_states # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) processor = AttnEasyProc(5.0) model.set_attn_processor(processor) model(**inputs_dict, cross_attention_kwargs={"number": 123}).sample assert processor.counter == 8 assert processor.is_run assert processor.number == 123 @parameterized.expand( [ # fmt: off [torch.bool], [torch.long], [torch.float], # fmt: on ] ) def test_model_xattn_mask(self, mask_dtype): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**{**init_dict, "attention_head_dim": (8, 16), "block_out_channels": (16, 32)}) model.to(torch_device) model.eval() cond = inputs_dict["encoder_hidden_states"] with torch.no_grad(): full_cond_out = model(**inputs_dict).sample assert full_cond_out is not None keepall_mask = torch.ones(*cond.shape[:-1], device=cond.device, dtype=mask_dtype) full_cond_keepallmask_out = model(**{**inputs_dict, "encoder_attention_mask": keepall_mask}).sample assert full_cond_keepallmask_out.allclose( full_cond_out, rtol=1e-05, atol=1e-05 ), "a 'keep all' mask should give the same result as no mask" trunc_cond = cond[:, :-1, :] trunc_cond_out = model(**{**inputs_dict, "encoder_hidden_states": trunc_cond}).sample assert not trunc_cond_out.allclose( full_cond_out, rtol=1e-05, atol=1e-05 ), "discarding the last token from our cond should change the result" batch, tokens, _ = cond.shape mask_last = (torch.arange(tokens) < tokens - 1).expand(batch, -1).to(cond.device, mask_dtype) masked_cond_out = model(**{**inputs_dict, "encoder_attention_mask": mask_last}).sample assert masked_cond_out.allclose( trunc_cond_out, rtol=1e-05, atol=1e-05 ), "masking the last token from our cond should be equivalent to truncating that token out of the condition" # see diffusers.models.attention_processor::Attention#prepare_attention_mask # note: we may not need to fix mask padding to work for stable-diffusion cross-attn masks. # since the use-case (somebody passes in a too-short cross-attn mask) is pretty esoteric. # maybe it's fine that this only works for the unclip use-case. @mark.skip( reason="we currently pad mask by target_length tokens (what unclip needs), whereas stable-diffusion's cross-attn needs to instead pad by remaining_length." ) def test_model_xattn_padding(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**{**init_dict, "attention_head_dim": (8, 16)}) model.to(torch_device) model.eval() cond = inputs_dict["encoder_hidden_states"] with torch.no_grad(): full_cond_out = model(**inputs_dict).sample assert full_cond_out is not None batch, tokens, _ = cond.shape keeplast_mask = (torch.arange(tokens) == tokens - 1).expand(batch, -1).to(cond.device, torch.bool) keeplast_out = model(**{**inputs_dict, "encoder_attention_mask": keeplast_mask}).sample assert not keeplast_out.allclose(full_cond_out), "a 'keep last token' mask should change the result" trunc_mask = torch.zeros(batch, tokens - 1, device=cond.device, dtype=torch.bool) trunc_mask_out = model(**{**inputs_dict, "encoder_attention_mask": trunc_mask}).sample assert trunc_mask_out.allclose( keeplast_out ), "a mask with fewer tokens than condition, will be padded with 'keep' tokens. a 'discard-all' mask missing the final token is thus equivalent to a 'keep last' mask." def test_custom_diffusion_processors(self): # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) with torch.no_grad(): sample1 = model(**inputs_dict).sample custom_diffusion_attn_procs = create_custom_diffusion_layers(model, mock_weights=False) # make sure we can set a list of attention processors model.set_attn_processor(custom_diffusion_attn_procs) model.to(torch_device) # test that attn processors can be set to itself model.set_attn_processor(model.attn_processors) with torch.no_grad(): sample2 = model(**inputs_dict).sample assert (sample1 - sample2).abs().max() < 3e-3 def test_custom_diffusion_save_load(self): # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) torch.manual_seed(0) model = self.model_class(**init_dict) model.to(torch_device) with torch.no_grad(): old_sample = model(**inputs_dict).sample custom_diffusion_attn_procs = create_custom_diffusion_layers(model, mock_weights=False) model.set_attn_processor(custom_diffusion_attn_procs) with torch.no_grad(): sample = model(**inputs_dict).sample with tempfile.TemporaryDirectory() as tmpdirname: model.save_attn_procs(tmpdirname, safe_serialization=False) self.assertTrue(os.path.isfile(os.path.join(tmpdirname, "pytorch_custom_diffusion_weights.bin"))) torch.manual_seed(0) new_model = self.model_class(**init_dict) new_model.load_attn_procs(tmpdirname, weight_name="pytorch_custom_diffusion_weights.bin") new_model.to(torch_device) with torch.no_grad(): new_sample = new_model(**inputs_dict).sample assert (sample - new_sample).abs().max() < 1e-4 # custom diffusion and no custom diffusion should be the same assert (sample - old_sample).abs().max() < 3e-3 @unittest.skipIf( torch_device != "cuda" or not is_xformers_available(), reason="XFormers attention is only available with CUDA and `xformers` installed", ) def test_custom_diffusion_xformers_on_off(self): # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) torch.manual_seed(0) model = self.model_class(**init_dict) model.to(torch_device) custom_diffusion_attn_procs = create_custom_diffusion_layers(model, mock_weights=False) model.set_attn_processor(custom_diffusion_attn_procs) # default with torch.no_grad(): sample = model(**inputs_dict).sample model.enable_xformers_memory_efficient_attention() on_sample = model(**inputs_dict).sample model.disable_xformers_memory_efficient_attention() off_sample = model(**inputs_dict).sample assert (sample - on_sample).abs().max() < 1e-4 assert (sample - off_sample).abs().max() < 1e-4 def test_pickle(self): # enable deterministic behavior for gradient checkpointing init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) with torch.no_grad(): sample = model(**inputs_dict).sample sample_copy = copy.copy(sample) assert (sample - sample_copy).abs().max() < 1e-4 def test_asymmetrical_unet(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() # Add asymmetry to configs init_dict["transformer_layers_per_block"] = [[3, 2], 1] init_dict["reverse_transformer_layers_per_block"] = [[3, 4], 1] torch.manual_seed(0) model = self.model_class(**init_dict) model.to(torch_device) output = model(**inputs_dict).sample expected_shape = inputs_dict["sample"].shape # Check if input and output shapes are the same self.assertEqual(output.shape, expected_shape, "Input and output shapes do not match") def test_ip_adapter(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) # forward pass without ip-adapter with torch.no_grad(): sample1 = model(**inputs_dict).sample # update inputs_dict for ip-adapter batch_size = inputs_dict["encoder_hidden_states"].shape[0] # for ip-adapter image_embeds has shape [batch_size, num_image, embed_dim] image_embeds = floats_tensor((batch_size, 1, model.config.cross_attention_dim)).to(torch_device) inputs_dict["added_cond_kwargs"] = {"image_embeds": [image_embeds]} # make ip_adapter_1 and ip_adapter_2 ip_adapter_1 = create_ip_adapter_state_dict(model) image_proj_state_dict_2 = {k: w + 1.0 for k, w in ip_adapter_1["image_proj"].items()} cross_attn_state_dict_2 = {k: w + 1.0 for k, w in ip_adapter_1["ip_adapter"].items()} ip_adapter_2 = {} ip_adapter_2.update({"image_proj": image_proj_state_dict_2, "ip_adapter": cross_attn_state_dict_2}) # forward pass ip_adapter_1 model._load_ip_adapter_weights([ip_adapter_1]) assert model.config.encoder_hid_dim_type == "ip_image_proj" assert model.encoder_hid_proj is not None assert model.down_blocks[0].attentions[0].transformer_blocks[0].attn2.processor.__class__.__name__ in ( "IPAdapterAttnProcessor", "IPAdapterAttnProcessor2_0", ) with torch.no_grad(): sample2 = model(**inputs_dict).sample # forward pass with ip_adapter_2 model._load_ip_adapter_weights([ip_adapter_2]) with torch.no_grad(): sample3 = model(**inputs_dict).sample # forward pass with ip_adapter_1 again model._load_ip_adapter_weights([ip_adapter_1]) with torch.no_grad(): sample4 = model(**inputs_dict).sample # forward pass with multiple ip-adapters and multiple images model._load_ip_adapter_weights([ip_adapter_1, ip_adapter_2]) # set the scale for ip_adapter_2 to 0 so that result should be same as only load ip_adapter_1 for attn_processor in model.attn_processors.values(): if isinstance(attn_processor, (IPAdapterAttnProcessor, IPAdapterAttnProcessor2_0)): attn_processor.scale = [1, 0] image_embeds_multi = image_embeds.repeat(1, 2, 1) inputs_dict["added_cond_kwargs"] = {"image_embeds": [image_embeds_multi, image_embeds_multi]} with torch.no_grad(): sample5 = model(**inputs_dict).sample # forward pass with single ip-adapter & single image when image_embeds is not a list and a 2-d tensor image_embeds = image_embeds.squeeze(1) inputs_dict["added_cond_kwargs"] = {"image_embeds": image_embeds} model._load_ip_adapter_weights(ip_adapter_1) with torch.no_grad(): sample6 = model(**inputs_dict).sample assert not sample1.allclose(sample2, atol=1e-4, rtol=1e-4) assert not sample2.allclose(sample3, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample4, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample5, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample6, atol=1e-4, rtol=1e-4) def test_ip_adapter_plus(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() init_dict["block_out_channels"] = (16, 32) init_dict["attention_head_dim"] = (8, 16) model = self.model_class(**init_dict) model.to(torch_device) # forward pass without ip-adapter with torch.no_grad(): sample1 = model(**inputs_dict).sample # update inputs_dict for ip-adapter batch_size = inputs_dict["encoder_hidden_states"].shape[0] # for ip-adapter-plus image_embeds has shape [batch_size, num_image, sequence_length, embed_dim] image_embeds = floats_tensor((batch_size, 1, 1, model.config.cross_attention_dim)).to(torch_device) inputs_dict["added_cond_kwargs"] = {"image_embeds": [image_embeds]} # make ip_adapter_1 and ip_adapter_2 ip_adapter_1 = create_ip_adapter_plus_state_dict(model) image_proj_state_dict_2 = {k: w + 1.0 for k, w in ip_adapter_1["image_proj"].items()} cross_attn_state_dict_2 = {k: w + 1.0 for k, w in ip_adapter_1["ip_adapter"].items()} ip_adapter_2 = {} ip_adapter_2.update({"image_proj": image_proj_state_dict_2, "ip_adapter": cross_attn_state_dict_2}) # forward pass ip_adapter_1 model._load_ip_adapter_weights([ip_adapter_1]) assert model.config.encoder_hid_dim_type == "ip_image_proj" assert model.encoder_hid_proj is not None assert model.down_blocks[0].attentions[0].transformer_blocks[0].attn2.processor.__class__.__name__ in ( "IPAdapterAttnProcessor", "IPAdapterAttnProcessor2_0", ) with torch.no_grad(): sample2 = model(**inputs_dict).sample # forward pass with ip_adapter_2 model._load_ip_adapter_weights([ip_adapter_2]) with torch.no_grad(): sample3 = model(**inputs_dict).sample # forward pass with ip_adapter_1 again model._load_ip_adapter_weights([ip_adapter_1]) with torch.no_grad(): sample4 = model(**inputs_dict).sample # forward pass with multiple ip-adapters and multiple images model._load_ip_adapter_weights([ip_adapter_1, ip_adapter_2]) # set the scale for ip_adapter_2 to 0 so that result should be same as only load ip_adapter_1 for attn_processor in model.attn_processors.values(): if isinstance(attn_processor, (IPAdapterAttnProcessor, IPAdapterAttnProcessor2_0)): attn_processor.scale = [1, 0] image_embeds_multi = image_embeds.repeat(1, 2, 1, 1) inputs_dict["added_cond_kwargs"] = {"image_embeds": [image_embeds_multi, image_embeds_multi]} with torch.no_grad(): sample5 = model(**inputs_dict).sample # forward pass with single ip-adapter & single image when image_embeds is a 3-d tensor image_embeds = image_embeds[:,].squeeze(1) inputs_dict["added_cond_kwargs"] = {"image_embeds": image_embeds} model._load_ip_adapter_weights(ip_adapter_1) with torch.no_grad(): sample6 = model(**inputs_dict).sample assert not sample1.allclose(sample2, atol=1e-4, rtol=1e-4) assert not sample2.allclose(sample3, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample4, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample5, atol=1e-4, rtol=1e-4) assert sample2.allclose(sample6, atol=1e-4, rtol=1e-4) @require_torch_gpu def test_load_sharded_checkpoint_from_hub(self): _, inputs_dict = self.prepare_init_args_and_inputs_for_common() loaded_model = self.model_class.from_pretrained("hf-internal-testing/unet2d-sharded-dummy") loaded_model = loaded_model.to(torch_device) new_output = loaded_model(**inputs_dict) assert loaded_model assert new_output.sample.shape == (4, 4, 16, 16) @require_torch_gpu def test_load_sharded_checkpoint_from_hub_local(self): _, inputs_dict = self.prepare_init_args_and_inputs_for_common() ckpt_path = snapshot_download("hf-internal-testing/unet2d-sharded-dummy") loaded_model = self.model_class.from_pretrained(ckpt_path, local_files_only=True) loaded_model = loaded_model.to(torch_device) new_output = loaded_model(**inputs_dict) assert loaded_model assert new_output.sample.shape == (4, 4, 16, 16) @require_torch_gpu def test_load_sharded_checkpoint_device_map_from_hub(self): _, inputs_dict = self.prepare_init_args_and_inputs_for_common() loaded_model = self.model_class.from_pretrained("hf-internal-testing/unet2d-sharded-dummy", device_map="auto") new_output = loaded_model(**inputs_dict) assert loaded_model assert new_output.sample.shape == (4, 4, 16, 16) @require_torch_gpu def test_load_sharded_checkpoint_device_map_from_hub_local(self): _, inputs_dict = self.prepare_init_args_and_inputs_for_common() ckpt_path = snapshot_download("hf-internal-testing/unet2d-sharded-dummy") loaded_model = self.model_class.from_pretrained(ckpt_path, local_files_only=True, device_map="auto") new_output = loaded_model(**inputs_dict) assert loaded_model assert new_output.sample.shape == (4, 4, 16, 16) @require_peft_backend def test_lora(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**init_dict) model.to(torch_device) # forward pass without LoRA with torch.no_grad(): non_lora_sample = model(**inputs_dict).sample unet_lora_config = get_unet_lora_config() model.add_adapter(unet_lora_config) assert check_if_lora_correctly_set(model), "Lora not correctly set in UNet." # forward pass with LoRA with torch.no_grad(): lora_sample = model(**inputs_dict).sample assert not torch.allclose( non_lora_sample, lora_sample, atol=1e-4, rtol=1e-4 ), "LoRA injected UNet should produce different results." @require_peft_backend def test_lora_serialization(self): init_dict, inputs_dict = self.prepare_init_args_and_inputs_for_common() model = self.model_class(**init_dict) model.to(torch_device) # forward pass without LoRA with torch.no_grad(): non_lora_sample = model(**inputs_dict).sample unet_lora_config = get_unet_lora_config() model.add_adapter(unet_lora_config) assert check_if_lora_correctly_set(model), "Lora not correctly set in UNet." # forward pass with LoRA with torch.no_grad(): lora_sample_1 = model(**inputs_dict).sample with tempfile.TemporaryDirectory() as tmpdirname: model.save_attn_procs(tmpdirname) model.unload_lora() model.load_attn_procs(os.path.join(tmpdirname, "pytorch_lora_weights.safetensors")) assert check_if_lora_correctly_set(model), "Lora not correctly set in UNet." with torch.no_grad(): lora_sample_2 = model(**inputs_dict).sample assert not torch.allclose( non_lora_sample, lora_sample_1, atol=1e-4, rtol=1e-4 ), "LoRA injected UNet should produce different results." assert torch.allclose( lora_sample_1, lora_sample_2, atol=1e-4, rtol=1e-4 ), "Loading from a saved checkpoint should produce identical results." @slow class UNet2DConditionModelIntegrationTests(unittest.TestCase): def get_file_format(self, seed, shape): return f"gaussian_noise_s={seed}_shape={'_'.join([str(s) for s in shape])}.npy" def tearDown(self): # clean up the VRAM after each test super().tearDown() gc.collect() backend_empty_cache(torch_device) def get_latents(self, seed=0, shape=(4, 4, 64, 64), fp16=False): dtype = torch.float16 if fp16 else torch.float32 image = torch.from_numpy(load_hf_numpy(self.get_file_format(seed, shape))).to(torch_device).to(dtype) return image def get_unet_model(self, fp16=False, model_id="CompVis/stable-diffusion-v1-4"): revision = "fp16" if fp16 else None torch_dtype = torch.float16 if fp16 else torch.float32 model = UNet2DConditionModel.from_pretrained( model_id, subfolder="unet", torch_dtype=torch_dtype, revision=revision ) model.to(torch_device).eval() return model @require_torch_gpu def test_set_attention_slice_auto(self): torch.cuda.empty_cache() torch.cuda.reset_max_memory_allocated() torch.cuda.reset_peak_memory_stats() unet = self.get_unet_model() unet.set_attention_slice("auto") latents = self.get_latents(33) encoder_hidden_states = self.get_encoder_hidden_states(33) timestep = 1 with torch.no_grad(): _ = unet(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample mem_bytes = torch.cuda.max_memory_allocated() assert mem_bytes < 5 * 10**9 @require_torch_gpu def test_set_attention_slice_max(self): torch.cuda.empty_cache() torch.cuda.reset_max_memory_allocated() torch.cuda.reset_peak_memory_stats() unet = self.get_unet_model() unet.set_attention_slice("max") latents = self.get_latents(33) encoder_hidden_states = self.get_encoder_hidden_states(33) timestep = 1 with torch.no_grad(): _ = unet(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample mem_bytes = torch.cuda.max_memory_allocated() assert mem_bytes < 5 * 10**9 @require_torch_gpu def test_set_attention_slice_int(self): torch.cuda.empty_cache() torch.cuda.reset_max_memory_allocated() torch.cuda.reset_peak_memory_stats() unet = self.get_unet_model() unet.set_attention_slice(2) latents = self.get_latents(33) encoder_hidden_states = self.get_encoder_hidden_states(33) timestep = 1 with torch.no_grad(): _ = unet(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample mem_bytes = torch.cuda.max_memory_allocated() assert mem_bytes < 5 * 10**9 @require_torch_gpu def test_set_attention_slice_list(self): torch.cuda.empty_cache() torch.cuda.reset_max_memory_allocated() torch.cuda.reset_peak_memory_stats() # there are 32 sliceable layers slice_list = 16 * [2, 3] unet = self.get_unet_model() unet.set_attention_slice(slice_list) latents = self.get_latents(33) encoder_hidden_states = self.get_encoder_hidden_states(33) timestep = 1 with torch.no_grad(): _ = unet(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample mem_bytes = torch.cuda.max_memory_allocated() assert mem_bytes < 5 * 10**9 def get_encoder_hidden_states(self, seed=0, shape=(4, 77, 768), fp16=False): dtype = torch.float16 if fp16 else torch.float32 hidden_states = torch.from_numpy(load_hf_numpy(self.get_file_format(seed, shape))).to(torch_device).to(dtype) return hidden_states @parameterized.expand( [ # fmt: off [33, 4, [-0.4424, 0.1510, -0.1937, 0.2118, 0.3746, -0.3957, 0.0160, -0.0435]], [47, 0.55, [-0.1508, 0.0379, -0.3075, 0.2540, 0.3633, -0.0821, 0.1719, -0.0207]], [21, 0.89, [-0.6479, 0.6364, -0.3464, 0.8697, 0.4443, -0.6289, -0.0091, 0.1778]], [9, 1000, [0.8888, -0.5659, 0.5834, -0.7469, 1.1912, -0.3923, 1.1241, -0.4424]], # fmt: on ] ) @require_torch_accelerator_with_fp16 def test_compvis_sd_v1_4(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="CompVis/stable-diffusion-v1-4") latents = self.get_latents(seed) encoder_hidden_states = self.get_encoder_hidden_states(seed) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == latents.shape output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=1e-3) @parameterized.expand( [ # fmt: off [83, 4, [-0.2323, -0.1304, 0.0813, -0.3093, -0.0919, -0.1571, -0.1125, -0.5806]], [17, 0.55, [-0.0831, -0.2443, 0.0901, -0.0919, 0.3396, 0.0103, -0.3743, 0.0701]], [8, 0.89, [-0.4863, 0.0859, 0.0875, -0.1658, 0.9199, -0.0114, 0.4839, 0.4639]], [3, 1000, [-0.5649, 0.2402, -0.5518, 0.1248, 1.1328, -0.2443, -0.0325, -1.0078]], # fmt: on ] ) @require_torch_accelerator_with_fp16 def test_compvis_sd_v1_4_fp16(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="CompVis/stable-diffusion-v1-4", fp16=True) latents = self.get_latents(seed, fp16=True) encoder_hidden_states = self.get_encoder_hidden_states(seed, fp16=True) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == latents.shape output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=5e-3) @parameterized.expand( [ # fmt: off [33, 4, [-0.4430, 0.1570, -0.1867, 0.2376, 0.3205, -0.3681, 0.0525, -0.0722]], [47, 0.55, [-0.1415, 0.0129, -0.3136, 0.2257, 0.3430, -0.0536, 0.2114, -0.0436]], [21, 0.89, [-0.7091, 0.6664, -0.3643, 0.9032, 0.4499, -0.6541, 0.0139, 0.1750]], [9, 1000, [0.8878, -0.5659, 0.5844, -0.7442, 1.1883, -0.3927, 1.1192, -0.4423]], # fmt: on ] ) @require_torch_accelerator @skip_mps def test_compvis_sd_v1_5(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="runwayml/stable-diffusion-v1-5") latents = self.get_latents(seed) encoder_hidden_states = self.get_encoder_hidden_states(seed) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == latents.shape output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=1e-3) @parameterized.expand( [ # fmt: off [83, 4, [-0.2695, -0.1669, 0.0073, -0.3181, -0.1187, -0.1676, -0.1395, -0.5972]], [17, 0.55, [-0.1290, -0.2588, 0.0551, -0.0916, 0.3286, 0.0238, -0.3669, 0.0322]], [8, 0.89, [-0.5283, 0.1198, 0.0870, -0.1141, 0.9189, -0.0150, 0.5474, 0.4319]], [3, 1000, [-0.5601, 0.2411, -0.5435, 0.1268, 1.1338, -0.2427, -0.0280, -1.0020]], # fmt: on ] ) @require_torch_accelerator_with_fp16 def test_compvis_sd_v1_5_fp16(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="runwayml/stable-diffusion-v1-5", fp16=True) latents = self.get_latents(seed, fp16=True) encoder_hidden_states = self.get_encoder_hidden_states(seed, fp16=True) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == latents.shape output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=5e-3) @parameterized.expand( [ # fmt: off [33, 4, [-0.7639, 0.0106, -0.1615, -0.3487, -0.0423, -0.7972, 0.0085, -0.4858]], [47, 0.55, [-0.6564, 0.0795, -1.9026, -0.6258, 1.8235, 1.2056, 1.2169, 0.9073]], [21, 0.89, [0.0327, 0.4399, -0.6358, 0.3417, 0.4120, -0.5621, -0.0397, -1.0430]], [9, 1000, [0.1600, 0.7303, -1.0556, -0.3515, -0.7440, -1.2037, -1.8149, -1.8931]], # fmt: on ] ) @require_torch_accelerator @skip_mps def test_compvis_sd_inpaint(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="runwayml/stable-diffusion-inpainting") latents = self.get_latents(seed, shape=(4, 9, 64, 64)) encoder_hidden_states = self.get_encoder_hidden_states(seed) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == (4, 4, 64, 64) output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=3e-3) @parameterized.expand( [ # fmt: off [83, 4, [-0.1047, -1.7227, 0.1067, 0.0164, -0.5698, -0.4172, -0.1388, 1.1387]], [17, 0.55, [0.0975, -0.2856, -0.3508, -0.4600, 0.3376, 0.2930, -0.2747, -0.7026]], [8, 0.89, [-0.0952, 0.0183, -0.5825, -0.1981, 0.1131, 0.4668, -0.0395, -0.3486]], [3, 1000, [0.4790, 0.4949, -1.0732, -0.7158, 0.7959, -0.9478, 0.1105, -0.9741]], # fmt: on ] ) @require_torch_accelerator_with_fp16 def test_compvis_sd_inpaint_fp16(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="runwayml/stable-diffusion-inpainting", fp16=True) latents = self.get_latents(seed, shape=(4, 9, 64, 64), fp16=True) encoder_hidden_states = self.get_encoder_hidden_states(seed, fp16=True) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == (4, 4, 64, 64) output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=5e-3) @parameterized.expand( [ # fmt: off [83, 4, [0.1514, 0.0807, 0.1624, 0.1016, -0.1896, 0.0263, 0.0677, 0.2310]], [17, 0.55, [0.1164, -0.0216, 0.0170, 0.1589, -0.3120, 0.1005, -0.0581, -0.1458]], [8, 0.89, [-0.1758, -0.0169, 0.1004, -0.1411, 0.1312, 0.1103, -0.1996, 0.2139]], [3, 1000, [0.1214, 0.0352, -0.0731, -0.1562, -0.0994, -0.0906, -0.2340, -0.0539]], # fmt: on ] ) @require_torch_accelerator_with_fp16 def test_stabilityai_sd_v2_fp16(self, seed, timestep, expected_slice): model = self.get_unet_model(model_id="stabilityai/stable-diffusion-2", fp16=True) latents = self.get_latents(seed, shape=(4, 4, 96, 96), fp16=True) encoder_hidden_states = self.get_encoder_hidden_states(seed, shape=(4, 77, 1024), fp16=True) timestep = torch.tensor([timestep], dtype=torch.long, device=torch_device) with torch.no_grad(): sample = model(latents, timestep=timestep, encoder_hidden_states=encoder_hidden_states).sample assert sample.shape == latents.shape output_slice = sample[-1, -2:, -2:, :2].flatten().float().cpu() expected_output_slice = torch.tensor(expected_slice) assert torch_all_close(output_slice, expected_output_slice, atol=5e-3)