import torch from PIL import Image import struct import numpy as np from comfy.cli_args import args, LatentPreviewMethod from comfy.taesd.taesd import TAESD import comfy.model_management import folder_paths import comfy.utils import logging MAX_PREVIEW_RESOLUTION = 512 class LatentPreviewer: def decode_latent_to_preview(self, x0): pass def decode_latent_to_preview_image(self, preview_format, x0): preview_image = self.decode_latent_to_preview(x0) return ("JPEG", preview_image, MAX_PREVIEW_RESOLUTION) class TAESDPreviewerImpl(LatentPreviewer): def __init__(self, taesd): self.taesd = taesd def decode_latent_to_preview(self, x0): x_sample = self.taesd.decode(x0[:1])[0].detach() x_sample = 255. * torch.clamp((x_sample + 1.0) / 2.0, min=0.0, max=1.0) x_sample = np.moveaxis(x_sample.to(device="cpu", dtype=torch.uint8, non_blocking=comfy.model_management.device_supports_non_blocking(x_sample.device)).numpy(), 0, 2) preview_image = Image.fromarray(x_sample) return preview_image class Latent2RGBPreviewer(LatentPreviewer): def __init__(self, latent_rgb_factors): self.latent_rgb_factors = torch.tensor(latent_rgb_factors, device="cpu") def decode_latent_to_preview(self, x0): self.latent_rgb_factors = self.latent_rgb_factors.to(dtype=x0.dtype, device=x0.device) latent_image = x0[0].permute(1, 2, 0) @ self.latent_rgb_factors latents_ubyte = (((latent_image + 1) / 2) .clamp(0, 1) # change scale from -1..1 to 0..1 .mul(0xFF) # to 0..255 ).to(device="cpu", dtype=torch.uint8, non_blocking=comfy.model_management.device_supports_non_blocking(latent_image.device)) return Image.fromarray(latents_ubyte.numpy()) def get_previewer(device, latent_format): previewer = None method = args.preview_method if method != LatentPreviewMethod.NoPreviews: # TODO previewer methods taesd_decoder_path = None if latent_format.taesd_decoder_name is not None: taesd_decoder_path = next( (fn for fn in folder_paths.get_filename_list("vae_approx") if fn.startswith(latent_format.taesd_decoder_name)), "" ) taesd_decoder_path = folder_paths.get_full_path("vae_approx", taesd_decoder_path) if method == LatentPreviewMethod.Auto: method = LatentPreviewMethod.Latent2RGB if method == LatentPreviewMethod.TAESD: if taesd_decoder_path: taesd = TAESD(None, taesd_decoder_path).to(device) previewer = TAESDPreviewerImpl(taesd) else: logging.warning("Warning: TAESD previews enabled, but could not find models/vae_approx/{}".format(latent_format.taesd_decoder_name)) if previewer is None: if latent_format.latent_rgb_factors is not None: previewer = Latent2RGBPreviewer(latent_format.latent_rgb_factors) return previewer def prepare_callback(model, steps, x0_output_dict=None): preview_format = "JPEG" if preview_format not in ["JPEG", "PNG"]: preview_format = "JPEG" previewer = get_previewer(model.load_device, model.model.latent_format) pbar = comfy.utils.ProgressBar(steps) def callback(step, x0, x, total_steps): if x0_output_dict is not None: x0_output_dict["x0"] = x0 preview_bytes = None if previewer: preview_bytes = previewer.decode_latent_to_preview_image(preview_format, x0) pbar.update_absolute(step + 1, total_steps, preview_bytes) return callback