Files
InvokeAI/invokeai/backend/flux/denoise.py
2024-09-03 14:04:16 -04:00

57 lines
1.6 KiB
Python

from typing import Callable
import torch
from tqdm import tqdm
from invokeai.backend.flux.inpaint_extension import InpaintExtension
from invokeai.backend.flux.model import Flux
from invokeai.backend.stable_diffusion.diffusers_pipeline import PipelineIntermediateState
def denoise(
model: Flux,
# model input
img: torch.Tensor,
img_ids: torch.Tensor,
txt: torch.Tensor,
txt_ids: torch.Tensor,
vec: torch.Tensor,
# sampling parameters
timesteps: list[float],
step_callback: Callable[[PipelineIntermediateState], None],
guidance: float,
inpaint_extension: InpaintExtension | None,
):
step = 0
# guidance_vec is ignored for schnell.
guidance_vec = torch.full((img.shape[0],), guidance, device=img.device, dtype=img.dtype)
for t_curr, t_prev in tqdm(list(zip(timesteps[:-1], timesteps[1:], strict=True))):
t_vec = torch.full((img.shape[0],), t_curr, dtype=img.dtype, device=img.device)
pred = model(
img=img,
img_ids=img_ids,
txt=txt,
txt_ids=txt_ids,
y=vec,
timesteps=t_vec,
guidance=guidance_vec,
)
preview_img = img - t_curr * pred
img = img + (t_prev - t_curr) * pred
if inpaint_extension is not None:
img = inpaint_extension.merge_intermediate_latents_with_init_latents(img, t_prev)
step_callback(
PipelineIntermediateState(
step=step,
order=1,
total_steps=len(timesteps),
timestep=int(t_curr),
latents=preview_img,
),
)
step += 1
return img