InvokeAI/invokeai/app/invocations/latent.py

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# Copyright (c) 2023 Kyle Schouviller (https://github.com/kyle0654)
from typing import Literal, Optional
from pydantic import BaseModel, Field
from torch import Tensor
import torch
from ...backend.model_management.model_manager import ModelManager
from ...backend.util.devices import choose_torch_device, torch_dtype
from ...backend.stable_diffusion.diffusion.shared_invokeai_diffusion import PostprocessingSettings
from ...backend.image_util.seamless import configure_model_padding
from ...backend.prompting.conditioning import get_uc_and_c_and_ec
from ...backend.stable_diffusion.diffusers_pipeline import ConditioningData, StableDiffusionGeneratorPipeline
from .baseinvocation import BaseInvocation, BaseInvocationOutput, InvocationContext
import numpy as np
from accelerate.utils import set_seed
from ..services.image_storage import ImageType
from .baseinvocation import BaseInvocation, InvocationContext
from .image import ImageField, ImageOutput
from ...backend.generator import Generator
from ...backend.stable_diffusion import PipelineIntermediateState
from ...backend.util.util import image_to_dataURL
from diffusers.schedulers import SchedulerMixin as Scheduler
import diffusers
from diffusers import DiffusionPipeline
class LatentsField(BaseModel):
"""A latents field used for passing latents between invocations"""
latents_name: Optional[str] = Field(default=None, description="The name of the latents")
class LatentsOutput(BaseInvocationOutput):
"""Base class for invocations that output latents"""
#fmt: off
type: Literal["latent_output"] = "latent_output"
latents: LatentsField = Field(default=None, description="The output latents")
#fmt: on
class NoiseOutput(BaseInvocationOutput):
"""Invocation noise output"""
#fmt: off
type: Literal["noise_output"] = "noise_output"
noise: LatentsField = Field(default=None, description="The output noise")
#fmt: on
# TODO: this seems like a hack
scheduler_map = dict(
ddim=diffusers.DDIMScheduler,
dpmpp_2=diffusers.DPMSolverMultistepScheduler,
k_dpm_2=diffusers.KDPM2DiscreteScheduler,
k_dpm_2_a=diffusers.KDPM2AncestralDiscreteScheduler,
k_dpmpp_2=diffusers.DPMSolverMultistepScheduler,
k_euler=diffusers.EulerDiscreteScheduler,
k_euler_a=diffusers.EulerAncestralDiscreteScheduler,
k_heun=diffusers.HeunDiscreteScheduler,
k_lms=diffusers.LMSDiscreteScheduler,
plms=diffusers.PNDMScheduler,
)
SAMPLER_NAME_VALUES = Literal[
tuple(list(scheduler_map.keys()))
]
def get_scheduler(scheduler_name:str, model: StableDiffusionGeneratorPipeline)->Scheduler:
scheduler_class = scheduler_map.get(scheduler_name,'ddim')
scheduler = scheduler_class.from_config(model.scheduler.config)
# hack copied over from generate.py
if not hasattr(scheduler, 'uses_inpainting_model'):
scheduler.uses_inpainting_model = lambda: False
return scheduler
def get_noise(width:int, height:int, device:torch.device, seed:int = 0, latent_channels:int=4, use_mps_noise:bool=False, downsampling_factor:int = 8):
# limit noise to only the diffusion image channels, not the mask channels
input_channels = min(latent_channels, 4)
use_device = "cpu" if (use_mps_noise or device.type == "mps") else device
generator = torch.Generator(device=use_device).manual_seed(seed)
x = torch.randn(
[
1,
input_channels,
height // downsampling_factor,
width // downsampling_factor,
],
dtype=torch_dtype(device),
device=use_device,
generator=generator,
).to(device)
# if self.perlin > 0.0:
# perlin_noise = self.get_perlin_noise(
# width // self.downsampling_factor, height // self.downsampling_factor
# )
# x = (1 - self.perlin) * x + self.perlin * perlin_noise
return x
class NoiseInvocation(BaseInvocation):
"""Generates latent noise."""
type: Literal["noise"] = "noise"
# Inputs
seed: int = Field(default=0, ge=0, le=np.iinfo(np.uint32).max, description="The seed to use", )
width: int = Field(default=512, multiple_of=64, gt=0, description="The width of the resulting noise", )
height: int = Field(default=512, multiple_of=64, gt=0, description="The height of the resulting noise", )
def invoke(self, context: InvocationContext) -> NoiseOutput:
device = torch.device(choose_torch_device())
noise = get_noise(self.width, self.height, device, self.seed)
name = f'{context.graph_execution_state_id}__{self.id}'
context.services.latents.set(name, noise)
return NoiseOutput(
noise=LatentsField(latents_name=name)
)
# Text to image
class TextToLatentsInvocation(BaseInvocation):
"""Generates latents from a prompt."""
type: Literal["t2l"] = "t2l"
# Inputs
# TODO: consider making prompt optional to enable providing prompt through a link
# fmt: off
prompt: Optional[str] = Field(description="The prompt to generate an image from")
seed: int = Field(default=-1,ge=-1, le=np.iinfo(np.uint32).max, description="The seed to use (-1 for a random seed)", )
noise: Optional[LatentsField] = Field(description="The noise to use")
steps: int = Field(default=10, gt=0, description="The number of steps to use to generate the image")
width: int = Field(default=512, multiple_of=64, gt=0, description="The width of the resulting image", )
height: int = Field(default=512, multiple_of=64, gt=0, description="The height of the resulting image", )
cfg_scale: float = Field(default=7.5, gt=0, description="The Classifier-Free Guidance, higher values may result in a result closer to the prompt", )
scheduler: SAMPLER_NAME_VALUES = Field(default="k_lms", description="The scheduler to use" )
seamless: bool = Field(default=False, description="Whether or not to generate an image that can tile without seams", )
seamless_axes: str = Field(default="", description="The axes to tile the image on, 'x' and/or 'y'")
model: str = Field(default="", description="The model to use (currently ignored)")
progress_images: bool = Field(default=False, description="Whether or not to produce progress images during generation", )
# fmt: on
# TODO: pass this an emitter method or something? or a session for dispatching?
def dispatch_progress(
self, context: InvocationContext, sample: Tensor, step: int
) -> None:
# TODO: only output a preview image when requested
image = Generator.sample_to_lowres_estimated_image(sample)
(width, height) = image.size
width *= 8
height *= 8
dataURL = image_to_dataURL(image, image_format="JPEG")
context.services.events.emit_generator_progress(
context.graph_execution_state_id,
self.id,
{
"width": width,
"height": height,
"dataURL": dataURL
},
step,
self.steps,
)
def get_model(self, model_manager: ModelManager) -> StableDiffusionGeneratorPipeline:
model_info = model_manager.get_model(self.model)
model_name = model_info['model_name']
model_hash = model_info['hash']
model: StableDiffusionGeneratorPipeline = model_info['model']
model.scheduler = get_scheduler(
model=model,
scheduler_name=self.scheduler
)
if isinstance(model, DiffusionPipeline):
for component in [model.unet, model.vae]:
configure_model_padding(component,
self.seamless,
self.seamless_axes
)
else:
configure_model_padding(model,
self.seamless,
self.seamless_axes
)
return model
def get_conditioning_data(self, model: StableDiffusionGeneratorPipeline) -> ConditioningData:
uc, c, extra_conditioning_info = get_uc_and_c_and_ec(self.prompt, model=model)
conditioning_data = ConditioningData(
uc,
c,
self.cfg_scale,
extra_conditioning_info,
postprocessing_settings=PostprocessingSettings(
threshold=0.0,#threshold,
warmup=0.2,#warmup,
h_symmetry_time_pct=None,#h_symmetry_time_pct,
v_symmetry_time_pct=None#v_symmetry_time_pct,
),
).add_scheduler_args_if_applicable(model.scheduler, eta=None)#ddim_eta)
return conditioning_data
def invoke(self, context: InvocationContext) -> LatentsOutput:
noise = context.services.latents.get(self.noise.latents_name)
def step_callback(state: PipelineIntermediateState):
self.dispatch_progress(context, state.latents, state.step)
model = self.get_model(context.services.model_manager)
conditioning_data = self.get_conditioning_data(model)
# TODO: Verify the noise is the right size
result_latents, result_attention_map_saver = model.latents_from_embeddings(
latents=torch.zeros_like(noise, dtype=torch_dtype(model.device)),
noise=noise,
num_inference_steps=self.steps,
conditioning_data=conditioning_data,
callback=step_callback
)
# https://discuss.huggingface.co/t/memory-usage-by-later-pipeline-stages/23699
torch.cuda.empty_cache()
name = f'{context.graph_execution_state_id}__{self.id}'
context.services.latents.set(name, result_latents)
return LatentsOutput(
latents=LatentsField(latents_name=name)
)
class LatentsToLatentsInvocation(TextToLatentsInvocation):
"""Generates latents using latents as base image."""
type: Literal["l2l"] = "l2l"
# Inputs
latents: Optional[LatentsField] = Field(description="The latents to use as a base image")
strength: float = Field(default=0.5, description="The strength of the latents to use")
def invoke(self, context: InvocationContext) -> LatentsOutput:
noise = context.services.latents.get(self.noise.latents_name)
latent = context.services.latents.get(self.latents.latents_name)
def step_callback(state: PipelineIntermediateState):
self.dispatch_progress(context, state.latents, state.step)
model = self.get_model(context.services.model_manager)
conditioning_data = self.get_conditioning_data(model)
# TODO: Verify the noise is the right size
initial_latents = latent if self.strength < 1.0 else torch.zeros_like(
latent, device=model.device, dtype=latent.dtype
)
timesteps, _ = model.get_img2img_timesteps(
self.steps,
self.strength,
device=model.device,
)
result_latents, result_attention_map_saver = model.latents_from_embeddings(
latents=initial_latents,
timesteps=timesteps,
noise=noise,
num_inference_steps=self.steps,
conditioning_data=conditioning_data,
callback=step_callback
)
# https://discuss.huggingface.co/t/memory-usage-by-later-pipeline-stages/23699
torch.cuda.empty_cache()
name = f'{context.graph_execution_state_id}__{self.id}'
context.services.latents.set(name, result_latents)
return LatentsOutput(
latents=LatentsField(latents_name=name)
)
# Latent to image
class LatentsToImageInvocation(BaseInvocation):
"""Generates an image from latents."""
type: Literal["l2i"] = "l2i"
# Inputs
latents: Optional[LatentsField] = Field(description="The latents to generate an image from")
model: str = Field(default="", description="The model to use")
@torch.no_grad()
def invoke(self, context: InvocationContext) -> ImageOutput:
latents = context.services.latents.get(self.latents.latents_name)
# TODO: this only really needs the vae
model_info = context.services.model_manager.get_model(self.model)
model: StableDiffusionGeneratorPipeline = model_info['model']
with torch.inference_mode():
np_image = model.decode_latents(latents)
image = model.numpy_to_pil(np_image)[0]
image_type = ImageType.RESULT
image_name = context.services.images.create_name(
context.graph_execution_state_id, self.id
)
context.services.images.save(image_type, image_name, image)
return ImageOutput(
image=ImageField(image_type=image_type, image_name=image_name)
)