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onnx-web/api/onnx_web/chain/source_txt2img.py

142 lines
4.1 KiB
Python

from logging import getLogger
from typing import List, Optional, Tuple
import numpy as np
import torch
from PIL import Image
from ..diffusers.load import load_pipeline
from ..diffusers.utils import (
encode_prompt,
get_latents_from_seed,
get_tile_latents,
parse_prompt,
slice_prompt,
)
from ..params import ImageParams, Size, SizeChart, StageParams
from ..server import ServerContext
from ..worker import ProgressCallback, WorkerContext
from .stage import BaseStage
logger = getLogger(__name__)
class SourceTxt2ImgStage(BaseStage):
max_tile = SizeChart.unlimited
def run(
self,
worker: WorkerContext,
server: ServerContext,
stage: StageParams,
params: ImageParams,
sources: List[Image.Image],
*,
dims: Tuple[int, int, int] = None,
size: Size,
callback: Optional[ProgressCallback] = None,
latents: Optional[np.ndarray] = None,
prompt_index: Optional[int] = None,
**kwargs,
) -> Image.Image:
params = params.with_args(**kwargs)
size = size.with_args(**kwargs)
# multi-stage prompting
if prompt_index is not None:
params = params.with_args(prompt=slice_prompt(params.prompt, prompt_index))
logger.info(
"generating image using txt2img, %s steps: %s", params.steps, params.prompt
)
if len(sources):
logger.info(
"source images were passed to a source stage, new images will be appended"
)
prompt_pairs, loras, inversions, (prompt, negative_prompt) = parse_prompt(
params
)
if params.is_xl():
tile_size = max(stage.tile_size, params.tiles)
else:
tile_size = params.tiles
# this works for panorama as well, because tile_size is already max(tile_size, *size)
latent_size = size.min(tile_size, tile_size)
# generate new latents or slice existing
if latents is None:
latents = get_latents_from_seed(int(params.seed), latent_size, params.batch)
else:
latents = get_tile_latents(latents, int(params.seed), latent_size, dims)
pipe_type = params.get_valid_pipeline("txt2img")
pipe = load_pipeline(
server,
params,
pipe_type,
worker.get_device(),
inversions=inversions,
loras=loras,
)
if params.is_lpw():
logger.debug("using LPW pipeline for txt2img")
rng = torch.manual_seed(params.seed)
result = pipe.text2img(
prompt,
height=latent_size.height,
width=latent_size.width,
generator=rng,
guidance_scale=params.cfg,
latents=latents,
negative_prompt=negative_prompt,
num_images_per_prompt=params.batch,
num_inference_steps=params.steps,
eta=params.eta,
callback=callback,
)
else:
# encode and record alternative prompts outside of LPW
prompt_embeds = encode_prompt(
pipe, prompt_pairs, params.batch, params.do_cfg()
)
if not params.is_xl():
pipe.unet.set_prompts(prompt_embeds)
rng = np.random.RandomState(params.seed)
result = pipe(
prompt,
height=latent_size.height,
width=latent_size.width,
generator=rng,
guidance_scale=params.cfg,
latents=latents,
negative_prompt=negative_prompt,
num_images_per_prompt=params.batch,
num_inference_steps=params.steps,
eta=params.eta,
callback=callback,
)
output = list(sources)
output.extend(result.images)
return output
def steps(
self,
params: ImageParams,
size: Size,
) -> int:
return params.steps
def outputs(
self,
params: ImageParams,
sources: int,
) -> int:
return sources + 1