refiners/tests/foundationals/latent_diffusion/test_solvers.py

146 lines
5.6 KiB
Python
Raw Permalink Normal View History

2023-08-04 13:28:41 +00:00
from typing import cast
2023-09-21 09:47:11 +00:00
from warnings import warn
import pytest
2024-01-10 10:43:08 +00:00
from torch import Tensor, allclose, device as Device, equal, isclose, randn
2023-12-04 14:08:34 +00:00
from refiners.fluxion import manual_seed
2024-01-30 16:47:06 +00:00
from refiners.foundationals.latent_diffusion.solvers import DDIM, DDPM, DPMSolver, Euler, NoiseSchedule
def test_ddpm_diffusers():
from diffusers import DDPMScheduler # type: ignore
diffusers_scheduler = DDPMScheduler(beta_schedule="scaled_linear", beta_start=0.00085, beta_end=0.012)
diffusers_scheduler.set_timesteps(1000)
refiners_scheduler = DDPM(num_inference_steps=1000)
assert equal(diffusers_scheduler.timesteps, refiners_scheduler.timesteps)
2023-08-04 13:28:41 +00:00
2024-01-18 13:30:13 +00:00
@pytest.mark.parametrize("n_steps, last_step_first_order", [(5, False), (5, True), (30, False), (30, True)])
def test_dpm_solver_diffusers(n_steps: int, last_step_first_order: bool):
2023-08-04 13:28:41 +00:00
from diffusers import DPMSolverMultistepScheduler as DiffuserScheduler # type: ignore
manual_seed(0)
2024-01-18 13:30:13 +00:00
diffusers_scheduler = DiffuserScheduler(
beta_schedule="scaled_linear",
beta_start=0.00085,
beta_end=0.012,
lower_order_final=False,
euler_at_final=last_step_first_order,
)
diffusers_scheduler.set_timesteps(n_steps)
refiners_scheduler = DPMSolver(num_inference_steps=n_steps, last_step_first_order=last_step_first_order)
2023-08-04 13:28:41 +00:00
sample = randn(1, 3, 32, 32)
predicted_noise = randn(1, 3, 32, 32)
2023-08-04 13:28:41 +00:00
for step, timestep in enumerate(diffusers_scheduler.timesteps):
diffusers_output = cast(Tensor, diffusers_scheduler.step(predicted_noise, timestep, sample).prev_sample) # type: ignore
refiners_output = refiners_scheduler(x=sample, predicted_noise=predicted_noise, step=step)
assert allclose(diffusers_output, refiners_output, rtol=0.01), f"outputs differ at step {step}"
2023-08-04 13:28:41 +00:00
2023-12-12 16:18:29 +00:00
def test_ddim_diffusers():
2023-08-04 13:28:41 +00:00
from diffusers import DDIMScheduler # type: ignore
2023-12-12 16:18:29 +00:00
manual_seed(0)
2023-08-04 13:28:41 +00:00
diffusers_scheduler = DDIMScheduler(
beta_end=0.012,
beta_schedule="scaled_linear",
beta_start=0.00085,
num_train_timesteps=1000,
steps_offset=1,
clip_sample=False,
)
diffusers_scheduler.set_timesteps(30)
refiners_scheduler = DDIM(num_inference_steps=30)
sample = randn(1, 4, 32, 32)
predicted_noise = randn(1, 4, 32, 32)
2023-08-04 13:28:41 +00:00
for step, timestep in enumerate(diffusers_scheduler.timesteps):
diffusers_output = cast(Tensor, diffusers_scheduler.step(predicted_noise, timestep, sample).prev_sample) # type: ignore
refiners_output = refiners_scheduler(x=sample, predicted_noise=predicted_noise, step=step)
2023-08-04 13:28:41 +00:00
assert allclose(diffusers_output, refiners_output, rtol=0.01), f"outputs differ at step {step}"
2023-09-21 09:47:11 +00:00
2024-01-10 10:32:40 +00:00
def test_euler_diffusers():
2024-01-10 10:45:19 +00:00
from diffusers import EulerDiscreteScheduler # type: ignore
2024-01-10 10:32:40 +00:00
manual_seed(0)
diffusers_scheduler = EulerDiscreteScheduler(
beta_end=0.012,
beta_schedule="scaled_linear",
beta_start=0.00085,
num_train_timesteps=1000,
steps_offset=1,
timestep_spacing="linspace",
use_karras_sigmas=False,
)
diffusers_scheduler.set_timesteps(30)
refiners_scheduler = Euler(num_inference_steps=30)
2024-01-10 10:32:40 +00:00
sample = randn(1, 4, 32, 32)
predicted_noise = randn(1, 4, 32, 32)
2024-01-10 10:32:40 +00:00
ref_init_noise_sigma = diffusers_scheduler.init_noise_sigma # type: ignore
assert isinstance(ref_init_noise_sigma, Tensor)
assert isclose(ref_init_noise_sigma, refiners_scheduler.init_noise_sigma), "init_noise_sigma differ"
2024-01-10 10:32:40 +00:00
for step, timestep in enumerate(diffusers_scheduler.timesteps):
diffusers_output = cast(Tensor, diffusers_scheduler.step(predicted_noise, timestep, sample).prev_sample) # type: ignore
refiners_output = refiners_scheduler(x=sample, predicted_noise=predicted_noise, step=step)
2024-01-10 10:32:40 +00:00
assert allclose(diffusers_output, refiners_output, rtol=0.01), f"outputs differ at step {step}"
def test_scheduler_remove_noise():
from diffusers import DDIMScheduler # type: ignore
2023-12-12 16:18:29 +00:00
manual_seed(0)
diffusers_scheduler = DDIMScheduler(
beta_end=0.012,
beta_schedule="scaled_linear",
beta_start=0.00085,
num_train_timesteps=1000,
steps_offset=1,
clip_sample=False,
)
diffusers_scheduler.set_timesteps(30)
refiners_scheduler = DDIM(num_inference_steps=30)
sample = randn(1, 4, 32, 32)
noise = randn(1, 4, 32, 32)
for step, timestep in enumerate(diffusers_scheduler.timesteps):
2024-01-10 10:41:47 +00:00
diffusers_output = cast(Tensor, diffusers_scheduler.step(noise, timestep, sample).pred_original_sample) # type: ignore
refiners_output = refiners_scheduler.remove_noise(x=sample, noise=noise, step=step)
assert allclose(diffusers_output, refiners_output, rtol=0.01), f"outputs differ at step {step}"
2023-09-21 09:47:11 +00:00
def test_scheduler_device(test_device: Device):
if test_device.type == "cpu":
warn("not running on CPU, skipping")
pytest.skip()
scheduler = DDIM(num_inference_steps=30, device=test_device)
x = randn(1, 4, 32, 32, device=test_device)
noise = randn(1, 4, 32, 32, device=test_device)
noised = scheduler.add_noise(x, noise, scheduler.first_inference_step)
2023-09-21 09:47:11 +00:00
assert noised.device == test_device
2024-01-30 16:47:06 +00:00
@pytest.mark.parametrize("noise_schedule", [NoiseSchedule.UNIFORM, NoiseSchedule.QUADRATIC, NoiseSchedule.KARRAS])
def test_scheduler_noise_schedules(noise_schedule: NoiseSchedule, test_device: Device):
scheduler = DDIM(num_inference_steps=30, device=test_device, noise_schedule=noise_schedule)
assert len(scheduler.scale_factors) == 1000
assert scheduler.scale_factors[0] == 1 - scheduler.initial_diffusion_rate
assert scheduler.scale_factors[-1] == 1 - scheduler.final_diffusion_rate