automatic/pipelines/model_meissonic.py

57 lines
2.2 KiB
Python

import transformers
import diffusers
def load_meissonic(checkpoint_info, diffusers_load_config={}):
from modules import shared, devices, modelloader, sd_models, shared_items
from pipelines.meissonic.transformer import Transformer2DModel as TransformerMeissonic
from pipelines.meissonic.scheduler import Scheduler as MeissonicScheduler
from pipelines.meissonic.pipeline import Pipeline as PipelineMeissonic
from pipelines.meissonic.pipeline_img2img import Img2ImgPipeline as PipelineMeissonicImg2Img
from pipelines.meissonic.pipeline_inpaint import InpaintPipeline as PipelineMeissonicInpaint
shared_items.pipelines['Meissonic'] = PipelineMeissonic
modelloader.hf_login()
fn = sd_models.path_to_repo(checkpoint_info.path)
cache_dir = shared.opts.diffusers_dir
diffusers_load_config['variant'] = 'fp16'
diffusers_load_config['trust_remote_code'] = True
model = TransformerMeissonic.from_pretrained(
fn,
subfolder="transformer",
cache_dir=cache_dir,
**diffusers_load_config,
)
vqvae = diffusers.VQModel.from_pretrained(
fn,
subfolder="vqvae",
cache_dir=cache_dir,
**diffusers_load_config,
)
text_encoder = transformers.CLIPTextModelWithProjection.from_pretrained(
fn,
subfolder="text_encoder",
cache_dir=cache_dir,
)
tokenizer = transformers.CLIPTokenizer.from_pretrained(
fn,
subfolder="tokenizer",
cache_dir=cache_dir,
)
scheduler = MeissonicScheduler.from_pretrained(fn, subfolder="scheduler", cache_dir=cache_dir)
pipe = PipelineMeissonic(
vqvae=vqvae.to(devices.dtype),
text_encoder=text_encoder.to(devices.dtype),
transformer=model.to(devices.dtype),
tokenizer=tokenizer,
scheduler=scheduler,
)
diffusers.pipelines.auto_pipeline.AUTO_TEXT2IMAGE_PIPELINES_MAPPING["meissonic"] = PipelineMeissonic
diffusers.pipelines.auto_pipeline.AUTO_IMAGE2IMAGE_PIPELINES_MAPPING["meissonic"] = PipelineMeissonicImg2Img
diffusers.pipelines.auto_pipeline.AUTO_INPAINT_PIPELINES_MAPPING["meissonic"] = PipelineMeissonicInpaint
devices.torch_gc(force=True)
return pipe