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import contextlib
import gc
import inspect
import io
import json
import os
import re
import tempfile
import unittest
import uuid
from typing import Callable, Union
import numpy as np
import PIL
import torch
from huggingface_hub import delete_repo
from transformers import CLIPTextConfig, CLIPTextModel, CLIPTokenizer
import diffusers
from diffusers import AutoencoderKL, DDIMScheduler, DiffusionPipeline, StableDiffusionPipeline, UNet2DConditionModel
from diffusers.image_processor import VaeImageProcessor
from diffusers.schedulers import KarrasDiffusionSchedulers
from diffusers.utils import logging
from diffusers.utils.import_utils import is_accelerate_available, is_accelerate_version, is_xformers_available
from diffusers.utils.testing_utils import (
CaptureLogger,
require_torch,
torch_device,
)
from ..others.test_utils import TOKEN, USER, is_staging_test
def to_np(tensor):
if isinstance(tensor, torch.Tensor):
tensor = tensor.detach().cpu().numpy()
return tensor
def check_same_shape(tensor_list):
shapes = [tensor.shape for tensor in tensor_list]
return all(shape == shapes[0] for shape in shapes[1:])
class PipelineLatentTesterMixin:
"""
This mixin is designed to be used with PipelineTesterMixin and unittest.TestCase classes.
It provides a set of common tests for PyTorch pipeline that has vae, e.g.
equivalence of different input and output types, etc.
"""
@property
def image_params(self) -> frozenset:
raise NotImplementedError(
"You need to set the attribute `image_params` in the child test class. "
"`image_params` are tested for if all accepted input image types (i.e. `pt`,`pil`,`np`) are producing same results"
)
@property
def image_latents_params(self) -> frozenset:
raise NotImplementedError(
"You need to set the attribute `image_latents_params` in the child test class. "
"`image_latents_params` are tested for if passing latents directly are producing same results"
)
def get_dummy_inputs_by_type(self, device, seed=0, input_image_type="pt", output_type="np"):
inputs = self.get_dummy_inputs(device, seed)
def convert_to_pt(image):
if isinstance(image, torch.Tensor):
input_image = image
elif isinstance(image, np.ndarray):
input_image = VaeImageProcessor.numpy_to_pt(image)
elif isinstance(image, PIL.Image.Image):
input_image = VaeImageProcessor.pil_to_numpy(image)
input_image = VaeImageProcessor.numpy_to_pt(input_image)
else:
raise ValueError(f"unsupported input_image_type {type(image)}")
return input_image
def convert_pt_to_type(image, input_image_type):
if input_image_type == "pt":
input_image = image
elif input_image_type == "np":
input_image = VaeImageProcessor.pt_to_numpy(image)
elif input_image_type == "pil":
input_image = VaeImageProcessor.pt_to_numpy(image)
input_image = VaeImageProcessor.numpy_to_pil(input_image)
else:
raise ValueError(f"unsupported input_image_type {input_image_type}.")
return input_image
for image_param in self.image_params:
if image_param in inputs.keys():
inputs[image_param] = convert_pt_to_type(
convert_to_pt(inputs[image_param]).to(device), input_image_type
)
inputs["output_type"] = output_type
return inputs
def test_pt_np_pil_outputs_equivalent(self, expected_max_diff=1e-4):
self._test_pt_np_pil_outputs_equivalent(expected_max_diff=expected_max_diff)
def _test_pt_np_pil_outputs_equivalent(self, expected_max_diff=1e-4, input_image_type="pt"):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
output_pt = pipe(
**self.get_dummy_inputs_by_type(torch_device, input_image_type=input_image_type, output_type="pt")
)[0]
output_np = pipe(
**self.get_dummy_inputs_by_type(torch_device, input_image_type=input_image_type, output_type="np")
)[0]
output_pil = pipe(
**self.get_dummy_inputs_by_type(torch_device, input_image_type=input_image_type, output_type="pil")
)[0]
max_diff = np.abs(output_pt.cpu().numpy().transpose(0, 2, 3, 1) - output_np).max()
self.assertLess(
max_diff, expected_max_diff, "`output_type=='pt'` generate different results from `output_type=='np'`"
)
max_diff = np.abs(np.array(output_pil[0]) - (output_np * 255).round()).max()
self.assertLess(max_diff, 2.0, "`output_type=='pil'` generate different results from `output_type=='np'`")
def test_pt_np_pil_inputs_equivalent(self):
if len(self.image_params) == 0:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
out_input_pt = pipe(**self.get_dummy_inputs_by_type(torch_device, input_image_type="pt"))[0]
out_input_np = pipe(**self.get_dummy_inputs_by_type(torch_device, input_image_type="np"))[0]
out_input_pil = pipe(**self.get_dummy_inputs_by_type(torch_device, input_image_type="pil"))[0]
max_diff = np.abs(out_input_pt - out_input_np).max()
self.assertLess(max_diff, 1e-4, "`input_type=='pt'` generate different result from `input_type=='np'`")
max_diff = np.abs(out_input_pil - out_input_np).max()
self.assertLess(max_diff, 1e-2, "`input_type=='pt'` generate different result from `input_type=='np'`")
def test_latents_input(self):
if len(self.image_latents_params) == 0:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe.image_processor = VaeImageProcessor(do_resize=False, do_normalize=False)
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
out = pipe(**self.get_dummy_inputs_by_type(torch_device, input_image_type="pt"))[0]
vae = components["vae"]
inputs = self.get_dummy_inputs_by_type(torch_device, input_image_type="pt")
generator = inputs["generator"]
for image_param in self.image_latents_params:
if image_param in inputs.keys():
inputs[image_param] = (
vae.encode(inputs[image_param]).latent_dist.sample(generator) * vae.config.scaling_factor
)
out_latents_inputs = pipe(**inputs)[0]
max_diff = np.abs(out - out_latents_inputs).max()
self.assertLess(max_diff, 1e-4, "passing latents as image input generate different result from passing image")
@require_torch
class PipelineKarrasSchedulerTesterMixin:
"""
This mixin is designed to be used with unittest.TestCase classes.
It provides a set of common tests for each PyTorch pipeline that makes use of KarrasDiffusionSchedulers
equivalence of dict and tuple outputs, etc.
"""
def test_karras_schedulers_shape(self):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
# make sure that PNDM does not need warm-up
pipe.scheduler.register_to_config(skip_prk_steps=True)
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
inputs["num_inference_steps"] = 2
if "strength" in inputs:
inputs["num_inference_steps"] = 4
inputs["strength"] = 0.5
outputs = []
for scheduler_enum in KarrasDiffusionSchedulers:
if "KDPM2" in scheduler_enum.name:
inputs["num_inference_steps"] = 5
scheduler_cls = getattr(diffusers, scheduler_enum.name)
pipe.scheduler = scheduler_cls.from_config(pipe.scheduler.config)
output = pipe(**inputs)[0]
outputs.append(output)
if "KDPM2" in scheduler_enum.name:
inputs["num_inference_steps"] = 2
assert check_same_shape(outputs)
@require_torch
class PipelineTesterMixin:
"""
This mixin is designed to be used with unittest.TestCase classes.
It provides a set of common tests for each PyTorch pipeline, e.g. saving and loading the pipeline,
equivalence of dict and tuple outputs, etc.
"""
# Canonical parameters that are passed to `__call__` regardless
# of the type of pipeline. They are always optional and have common
# sense default values.
required_optional_params = frozenset(
[
"num_inference_steps",
"num_images_per_prompt",
"generator",
"latents",
"output_type",
"return_dict",
"callback",
"callback_steps",
]
)
# set these parameters to False in the child class if the pipeline does not support the corresponding functionality
test_attention_slicing = True
test_xformers_attention = True
def get_generator(self, seed):
device = torch_device if torch_device != "mps" else "cpu"
generator = torch.Generator(device).manual_seed(seed)
return generator
@property
def pipeline_class(self) -> Union[Callable, DiffusionPipeline]:
raise NotImplementedError(
"You need to set the attribute `pipeline_class = ClassNameOfPipeline` in the child test class. "
"See existing pipeline tests for reference."
)
def get_dummy_components(self):
raise NotImplementedError(
"You need to implement `get_dummy_components(self)` in the child test class. "
"See existing pipeline tests for reference."
)
def get_dummy_inputs(self, device, seed=0):
raise NotImplementedError(
"You need to implement `get_dummy_inputs(self, device, seed)` in the child test class. "
"See existing pipeline tests for reference."
)
@property
def params(self) -> frozenset:
raise NotImplementedError(
"You need to set the attribute `params` in the child test class. "
"`params` are checked for if all values are present in `__call__`'s signature."
" You can set `params` using one of the common set of parameters defined in `pipeline_params.py`"
" e.g., `TEXT_TO_IMAGE_PARAMS` defines the common parameters used in text to "
"image pipelines, including prompts and prompt embedding overrides."
"If your pipeline's set of arguments has minor changes from one of the common sets of arguments, "
"do not make modifications to the existing common sets of arguments. I.e. a text to image pipeline "
"with non-configurable height and width arguments should set the attribute as "
"`params = TEXT_TO_IMAGE_PARAMS - {'height', 'width'}`. "
"See existing pipeline tests for reference."
)
@property
def batch_params(self) -> frozenset:
raise NotImplementedError(
"You need to set the attribute `batch_params` in the child test class. "
"`batch_params` are the parameters required to be batched when passed to the pipeline's "
"`__call__` method. `pipeline_params.py` provides some common sets of parameters such as "
"`TEXT_TO_IMAGE_BATCH_PARAMS`, `IMAGE_VARIATION_BATCH_PARAMS`, etc... If your pipeline's "
"set of batch arguments has minor changes from one of the common sets of batch arguments, "
"do not make modifications to the existing common sets of batch arguments. I.e. a text to "
"image pipeline `negative_prompt` is not batched should set the attribute as "
"`batch_params = TEXT_TO_IMAGE_BATCH_PARAMS - {'negative_prompt'}`. "
"See existing pipeline tests for reference."
)
def tearDown(self):
# clean up the VRAM after each test in case of CUDA runtime errors
super().tearDown()
gc.collect()
torch.cuda.empty_cache()
def test_save_load_local(self, expected_max_difference=5e-4):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
output = pipe(**inputs)[0]
logger = logging.get_logger("diffusers.pipelines.pipeline_utils")
logger.setLevel(diffusers.logging.INFO)
with tempfile.TemporaryDirectory() as tmpdir:
pipe.save_pretrained(tmpdir, safe_serialization=False)
with CaptureLogger(logger) as cap_logger:
pipe_loaded = self.pipeline_class.from_pretrained(tmpdir)
for name in pipe_loaded.components.keys():
if name not in pipe_loaded._optional_components:
assert name in str(cap_logger)
pipe_loaded.to(torch_device)
pipe_loaded.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
output_loaded = pipe_loaded(**inputs)[0]
max_diff = np.abs(to_np(output) - to_np(output_loaded)).max()
self.assertLess(max_diff, expected_max_difference)
def test_pipeline_call_signature(self):
self.assertTrue(
hasattr(self.pipeline_class, "__call__"), f"{self.pipeline_class} should have a `__call__` method"
)
parameters = inspect.signature(self.pipeline_class.__call__).parameters
optional_parameters = set()
for k, v in parameters.items():
if v.default != inspect._empty:
optional_parameters.add(k)
parameters = set(parameters.keys())
parameters.remove("self")
parameters.discard("kwargs") # kwargs can be added if arguments of pipeline call function are deprecated
remaining_required_parameters = set()
for param in self.params:
if param not in parameters:
remaining_required_parameters.add(param)
self.assertTrue(
len(remaining_required_parameters) == 0,
f"Required parameters not present: {remaining_required_parameters}",
)
remaining_required_optional_parameters = set()
for param in self.required_optional_params:
if param not in optional_parameters:
remaining_required_optional_parameters.add(param)
self.assertTrue(
len(remaining_required_optional_parameters) == 0,
f"Required optional parameters not present: {remaining_required_optional_parameters}",
)
def test_inference_batch_consistent(self, batch_sizes=[2]):
self._test_inference_batch_consistent(batch_sizes=batch_sizes)
def _test_inference_batch_consistent(
self, batch_sizes=[2], additional_params_copy_to_batched_inputs=["num_inference_steps"]
):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
inputs["generator"] = self.get_generator(0)
logger = logging.get_logger(pipe.__module__)
logger.setLevel(level=diffusers.logging.FATAL)
# prepare batched inputs
batched_inputs = []
for batch_size in batch_sizes:
batched_input = {}
batched_input.update(inputs)
for name in self.batch_params:
if name not in inputs:
continue
value = inputs[name]
if name == "prompt":
len_prompt = len(value)
# make unequal batch sizes
batched_input[name] = [value[: len_prompt // i] for i in range(1, batch_size + 1)]
# make last batch super long
batched_input[name][-1] = 100 * "very long"
else:
batched_input[name] = batch_size * [value]
if "generator" in inputs:
batched_input["generator"] = [self.get_generator(i) for i in range(batch_size)]
if "batch_size" in inputs:
batched_input["batch_size"] = batch_size
batched_inputs.append(batched_input)
logger.setLevel(level=diffusers.logging.WARNING)
for batch_size, batched_input in zip(batch_sizes, batched_inputs):
output = pipe(**batched_input)
assert len(output[0]) == batch_size
def test_inference_batch_single_identical(self, batch_size=3, expected_max_diff=1e-4):
self._test_inference_batch_single_identical(batch_size=batch_size, expected_max_diff=expected_max_diff)
def _test_inference_batch_single_identical(
self,
batch_size=2,
expected_max_diff=1e-4,
additional_params_copy_to_batched_inputs=["num_inference_steps"],
):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for components in pipe.components.values():
if hasattr(components, "set_default_attn_processor"):
components.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
# Reset generator in case it is has been used in self.get_dummy_inputs
inputs["generator"] = self.get_generator(0)
logger = logging.get_logger(pipe.__module__)
logger.setLevel(level=diffusers.logging.FATAL)
# batchify inputs
batched_inputs = {}
batched_inputs.update(inputs)
for name in self.batch_params:
if name not in inputs:
continue
value = inputs[name]
if name == "prompt":
len_prompt = len(value)
batched_inputs[name] = [value[: len_prompt // i] for i in range(1, batch_size + 1)]
batched_inputs[name][-1] = 100 * "very long"
else:
batched_inputs[name] = batch_size * [value]
if "generator" in inputs:
batched_inputs["generator"] = [self.get_generator(i) for i in range(batch_size)]
if "batch_size" in inputs:
batched_inputs["batch_size"] = batch_size
for arg in additional_params_copy_to_batched_inputs:
batched_inputs[arg] = inputs[arg]
output = pipe(**inputs)
output_batch = pipe(**batched_inputs)
assert output_batch[0].shape[0] == batch_size
max_diff = np.abs(output_batch[0][0] - output[0][0]).max()
assert max_diff < expected_max_diff
def test_dict_tuple_outputs_equivalent(self, expected_max_difference=1e-4):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
generator_device = "cpu"
output = pipe(**self.get_dummy_inputs(generator_device))[0]
output_tuple = pipe(**self.get_dummy_inputs(generator_device), return_dict=False)[0]
max_diff = np.abs(to_np(output) - to_np(output_tuple)).max()
self.assertLess(max_diff, expected_max_difference)
def test_components_function(self):
init_components = self.get_dummy_components()
init_components = {k: v for k, v in init_components.items() if not isinstance(v, (str, int, float))}
pipe = self.pipeline_class(**init_components)
self.assertTrue(hasattr(pipe, "components"))
self.assertTrue(set(pipe.components.keys()) == set(init_components.keys()))
@unittest.skipIf(torch_device != "cuda", reason="float16 requires CUDA")
def test_float16_inference(self, expected_max_diff=5e-2):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
components = self.get_dummy_components()
pipe_fp16 = self.pipeline_class(**components)
for component in pipe_fp16.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe_fp16.to(torch_device, torch.float16)
pipe_fp16.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
# Reset generator in case it is used inside dummy inputs
if "generator" in inputs:
inputs["generator"] = self.get_generator(0)
output = pipe(**inputs)[0]
fp16_inputs = self.get_dummy_inputs(torch_device)
# Reset generator in case it is used inside dummy inputs
if "generator" in fp16_inputs:
fp16_inputs["generator"] = self.get_generator(0)
output_fp16 = pipe_fp16(**fp16_inputs)[0]
max_diff = np.abs(to_np(output) - to_np(output_fp16)).max()
self.assertLess(max_diff, expected_max_diff, "The outputs of the fp16 and fp32 pipelines are too different.")
@unittest.skipIf(torch_device != "cuda", reason="float16 requires CUDA")
def test_save_load_float16(self, expected_max_diff=1e-2):
components = self.get_dummy_components()
for name, module in components.items():
if hasattr(module, "half"):
components[name] = module.to(torch_device).half()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
output = pipe(**inputs)[0]
with tempfile.TemporaryDirectory() as tmpdir:
pipe.save_pretrained(tmpdir)
pipe_loaded = self.pipeline_class.from_pretrained(tmpdir, torch_dtype=torch.float16)
for component in pipe_loaded.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe_loaded.to(torch_device)
pipe_loaded.set_progress_bar_config(disable=None)
for name, component in pipe_loaded.components.items():
if hasattr(component, "dtype"):
self.assertTrue(
component.dtype == torch.float16,
f"`{name}.dtype` switched from `float16` to {component.dtype} after loading.",
)
inputs = self.get_dummy_inputs(torch_device)
output_loaded = pipe_loaded(**inputs)[0]
max_diff = np.abs(to_np(output) - to_np(output_loaded)).max()
self.assertLess(
max_diff, expected_max_diff, "The output of the fp16 pipeline changed after saving and loading."
)
def test_save_load_optional_components(self, expected_max_difference=1e-4):
if not hasattr(self.pipeline_class, "_optional_components"):
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
# set all optional components to None
for optional_component in pipe._optional_components:
setattr(pipe, optional_component, None)
generator_device = "cpu"
inputs = self.get_dummy_inputs(generator_device)
output = pipe(**inputs)[0]
with tempfile.TemporaryDirectory() as tmpdir:
pipe.save_pretrained(tmpdir, safe_serialization=False)
pipe_loaded = self.pipeline_class.from_pretrained(tmpdir)
for component in pipe_loaded.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe_loaded.to(torch_device)
pipe_loaded.set_progress_bar_config(disable=None)
for optional_component in pipe._optional_components:
self.assertTrue(
getattr(pipe_loaded, optional_component) is None,
f"`{optional_component}` did not stay set to None after loading.",
)
inputs = self.get_dummy_inputs(generator_device)
output_loaded = pipe_loaded(**inputs)[0]
max_diff = np.abs(to_np(output) - to_np(output_loaded)).max()
self.assertLess(max_diff, expected_max_difference)
@unittest.skipIf(torch_device != "cuda", reason="CUDA and CPU are required to switch devices")
def test_to_device(self):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe.set_progress_bar_config(disable=None)
pipe.to("cpu")
model_devices = [component.device.type for component in components.values() if hasattr(component, "device")]
self.assertTrue(all(device == "cpu" for device in model_devices))
output_cpu = pipe(**self.get_dummy_inputs("cpu"))[0]
self.assertTrue(np.isnan(output_cpu).sum() == 0)
pipe.to("cuda")
model_devices = [component.device.type for component in components.values() if hasattr(component, "device")]
self.assertTrue(all(device == "cuda" for device in model_devices))
output_cuda = pipe(**self.get_dummy_inputs("cuda"))[0]
self.assertTrue(np.isnan(to_np(output_cuda)).sum() == 0)
def test_to_dtype(self):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe.set_progress_bar_config(disable=None)
model_dtypes = [component.dtype for component in components.values() if hasattr(component, "dtype")]
self.assertTrue(all(dtype == torch.float32 for dtype in model_dtypes))
pipe.to(torch_dtype=torch.float16)
model_dtypes = [component.dtype for component in components.values() if hasattr(component, "dtype")]
self.assertTrue(all(dtype == torch.float16 for dtype in model_dtypes))
def test_attention_slicing_forward_pass(self, expected_max_diff=1e-3):
self._test_attention_slicing_forward_pass(expected_max_diff=expected_max_diff)
def _test_attention_slicing_forward_pass(
self, test_max_difference=True, test_mean_pixel_difference=True, expected_max_diff=1e-3
):
if not self.test_attention_slicing:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
generator_device = "cpu"
inputs = self.get_dummy_inputs(generator_device)
output_without_slicing = pipe(**inputs)[0]
pipe.enable_attention_slicing(slice_size=1)
inputs = self.get_dummy_inputs(generator_device)
output_with_slicing = pipe(**inputs)[0]
if test_max_difference:
max_diff = np.abs(to_np(output_with_slicing) - to_np(output_without_slicing)).max()
self.assertLess(max_diff, expected_max_diff, "Attention slicing should not affect the inference results")
if test_mean_pixel_difference:
assert_mean_pixel_difference(output_with_slicing[0], output_without_slicing[0])
@unittest.skipIf(
torch_device != "cuda" or not is_accelerate_available() or is_accelerate_version("<", "0.14.0"),
reason="CPU offload is only available with CUDA and `accelerate v0.14.0` or higher",
)
def test_sequential_cpu_offload_forward_pass(self, expected_max_diff=1e-4):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
generator_device = "cpu"
inputs = self.get_dummy_inputs(generator_device)
output_without_offload = pipe(**inputs)[0]
pipe.enable_sequential_cpu_offload()
inputs = self.get_dummy_inputs(generator_device)
output_with_offload = pipe(**inputs)[0]
max_diff = np.abs(to_np(output_with_offload) - to_np(output_without_offload)).max()
self.assertLess(max_diff, expected_max_diff, "CPU offloading should not affect the inference results")
@unittest.skipIf(
torch_device != "cuda" or not is_accelerate_available() or is_accelerate_version("<", "0.17.0"),
reason="CPU offload is only available with CUDA and `accelerate v0.17.0` or higher",
)
def test_model_cpu_offload_forward_pass(self, expected_max_diff=2e-4):
generator_device = "cpu"
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(generator_device)
output_without_offload = pipe(**inputs)[0]
pipe.enable_model_cpu_offload()
inputs = self.get_dummy_inputs(generator_device)
output_with_offload = pipe(**inputs)[0]
max_diff = np.abs(to_np(output_with_offload) - to_np(output_without_offload)).max()
self.assertLess(max_diff, expected_max_diff, "CPU offloading should not affect the inference results")
@unittest.skipIf(
torch_device != "cuda" or not is_xformers_available(),
reason="XFormers attention is only available with CUDA and `xformers` installed",
)
def test_xformers_attention_forwardGenerator_pass(self):
self._test_xformers_attention_forwardGenerator_pass()
def _test_xformers_attention_forwardGenerator_pass(
self, test_max_difference=True, test_mean_pixel_difference=True, expected_max_diff=1e-4
):
if not self.test_xformers_attention:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
for component in pipe.components.values():
if hasattr(component, "set_default_attn_processor"):
component.set_default_attn_processor()
pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
output_without_offload = pipe(**inputs)[0]
output_without_offload = (
output_without_offload.cpu() if torch.is_tensor(output_without_offload) else output_without_offload
)
pipe.enable_xformers_memory_efficient_attention()
inputs = self.get_dummy_inputs(torch_device)
output_with_offload = pipe(**inputs)[0]
output_with_offload = (
output_with_offload.cpu() if torch.is_tensor(output_with_offload) else output_without_offload
)
if test_max_difference:
max_diff = np.abs(to_np(output_with_offload) - to_np(output_without_offload)).max()
self.assertLess(max_diff, expected_max_diff, "XFormers attention should not affect the inference results")
if test_mean_pixel_difference:
assert_mean_pixel_difference(output_with_offload[0], output_without_offload[0])
def test_progress_bar(self):
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe.to(torch_device)
inputs = self.get_dummy_inputs(torch_device)
with io.StringIO() as stderr, contextlib.redirect_stderr(stderr):
_ = pipe(**inputs)
stderr = stderr.getvalue()
# we can't calculate the number of progress steps beforehand e.g. for strength-dependent img2img,
# so we just match "5" in "#####| 1/5 [00:01<00:00]"
max_steps = re.search("/(.*?) ", stderr).group(1)
self.assertTrue(max_steps is not None and len(max_steps) > 0)
self.assertTrue(
f"{max_steps}/{max_steps}" in stderr, "Progress bar should be enabled and stopped at the max step"
)
pipe.set_progress_bar_config(disable=True)
with io.StringIO() as stderr, contextlib.redirect_stderr(stderr):
_ = pipe(**inputs)
self.assertTrue(stderr.getvalue() == "", "Progress bar should be disabled")
def test_num_images_per_prompt(self):
sig = inspect.signature(self.pipeline_class.__call__)
if "num_images_per_prompt" not in sig.parameters:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
batch_sizes = [1, 2]
num_images_per_prompts = [1, 2]
for batch_size in batch_sizes:
for num_images_per_prompt in num_images_per_prompts:
inputs = self.get_dummy_inputs(torch_device)
for key in inputs.keys():
if key in self.batch_params:
inputs[key] = batch_size * [inputs[key]]
images = pipe(**inputs, num_images_per_prompt=num_images_per_prompt)[0]
assert images.shape[0] == batch_size * num_images_per_prompt
def test_cfg(self):
sig = inspect.signature(self.pipeline_class.__call__)
if "guidance_scale" not in sig.parameters:
return
components = self.get_dummy_components()
pipe = self.pipeline_class(**components)
pipe = pipe.to(torch_device)
pipe.set_progress_bar_config(disable=None)
inputs = self.get_dummy_inputs(torch_device)
inputs["guidance_scale"] = 1.0
out_no_cfg = pipe(**inputs)[0]
inputs["guidance_scale"] = 7.5
out_cfg = pipe(**inputs)[0]
assert out_cfg.shape == out_no_cfg.shape
@is_staging_test
class PipelinePushToHubTester(unittest.TestCase):
identifier = uuid.uuid4()
repo_id = f"test-pipeline-{identifier}"
org_repo_id = f"valid_org/{repo_id}-org"
def get_pipeline_components(self):
unet = UNet2DConditionModel(
block_out_channels=(32, 64),
layers_per_block=2,
sample_size=32,
in_channels=4,
out_channels=4,
down_block_types=("DownBlock2D", "CrossAttnDownBlock2D"),
up_block_types=("CrossAttnUpBlock2D", "UpBlock2D"),
cross_attention_dim=32,
)
scheduler = DDIMScheduler(
beta_start=0.00085,
beta_end=0.012,
beta_schedule="scaled_linear",
clip_sample=False,
set_alpha_to_one=False,
)
vae = AutoencoderKL(
block_out_channels=[32, 64],
in_channels=3,
out_channels=3,
down_block_types=["DownEncoderBlock2D", "DownEncoderBlock2D"],
up_block_types=["UpDecoderBlock2D", "UpDecoderBlock2D"],
latent_channels=4,
)
text_encoder_config = CLIPTextConfig(
bos_token_id=0,
eos_token_id=2,
hidden_size=32,
intermediate_size=37,
layer_norm_eps=1e-05,
num_attention_heads=4,
num_hidden_layers=5,
pad_token_id=1,
vocab_size=1000,
)
text_encoder = CLIPTextModel(text_encoder_config)
with tempfile.TemporaryDirectory() as tmpdir:
dummy_vocab = {"<|startoftext|>": 0, "<|endoftext|>": 1, "!": 2}
vocab_path = os.path.join(tmpdir, "vocab.json")
with open(vocab_path, "w") as f:
json.dump(dummy_vocab, f)
merges = "Ġ t\nĠt h"
merges_path = os.path.join(tmpdir, "merges.txt")
with open(merges_path, "w") as f:
f.writelines(merges)
tokenizer = CLIPTokenizer(vocab_file=vocab_path, merges_file=merges_path)
components = {
"unet": unet,
"scheduler": scheduler,
"vae": vae,
"text_encoder": text_encoder,
"tokenizer": tokenizer,
"safety_checker": None,
"feature_extractor": None,
}
return components
def test_push_to_hub(self):
components = self.get_pipeline_components()
pipeline = StableDiffusionPipeline(**components)
pipeline.push_to_hub(self.repo_id, token=TOKEN)
new_model = UNet2DConditionModel.from_pretrained(f"{USER}/{self.repo_id}", subfolder="unet")
unet = components["unet"]
for p1, p2 in zip(unet.parameters(), new_model.parameters()):
self.assertTrue(torch.equal(p1, p2))
# Reset repo
delete_repo(token=TOKEN, repo_id=self.repo_id)
# Push to hub via save_pretrained
with tempfile.TemporaryDirectory() as tmp_dir:
pipeline.save_pretrained(tmp_dir, repo_id=self.repo_id, push_to_hub=True, token=TOKEN)
new_model = UNet2DConditionModel.from_pretrained(f"{USER}/{self.repo_id}", subfolder="unet")
for p1, p2 in zip(unet.parameters(), new_model.parameters()):
self.assertTrue(torch.equal(p1, p2))
# Reset repo
delete_repo(self.repo_id, token=TOKEN)
def test_push_to_hub_in_organization(self):
components = self.get_pipeline_components()
pipeline = StableDiffusionPipeline(**components)
pipeline.push_to_hub(self.org_repo_id, token=TOKEN)
new_model = UNet2DConditionModel.from_pretrained(self.org_repo_id, subfolder="unet")
unet = components["unet"]
for p1, p2 in zip(unet.parameters(), new_model.parameters()):
self.assertTrue(torch.equal(p1, p2))
# Reset repo
delete_repo(token=TOKEN, repo_id=self.org_repo_id)
# Push to hub via save_pretrained
with tempfile.TemporaryDirectory() as tmp_dir:
pipeline.save_pretrained(tmp_dir, push_to_hub=True, token=TOKEN, repo_id=self.org_repo_id)
new_model = UNet2DConditionModel.from_pretrained(self.org_repo_id, subfolder="unet")
for p1, p2 in zip(unet.parameters(), new_model.parameters()):
self.assertTrue(torch.equal(p1, p2))
# Reset repo
delete_repo(self.org_repo_id, token=TOKEN)
# Some models (e.g. unCLIP) are extremely likely to significantly deviate depending on which hardware is used.
# This helper function is used to check that the image doesn't deviate on average more than 10 pixels from a
# reference image.
def assert_mean_pixel_difference(image, expected_image, expected_max_diff=10):
image = np.asarray(DiffusionPipeline.numpy_to_pil(image)[0], dtype=np.float32)
expected_image = np.asarray(DiffusionPipeline.numpy_to_pil(expected_image)[0], dtype=np.float32)
avg_diff = np.abs(image - expected_image).mean()
assert avg_diff < expected_max_diff, f"Error image deviates {avg_diff} pixels on average"