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from __future__ import annotations
import aiohttp
import io
import logging
import mimetypes
from typing import Optional, Union
from comfy.utils import common_upscale
from comfy_api.input_impl import VideoFromFile
from comfy_api.util import VideoContainer, VideoCodec
from comfy_api.input.video_types import VideoInput
from comfy_api.input.basic_types import AudioInput
from comfy_api_nodes.apis.client import (
ApiClient,
ApiEndpoint,
HttpMethod,
SynchronousOperation,
UploadRequest,
UploadResponse,
)
from server import PromptServer
import numpy as np
from PIL import Image
import torch
import math
import base64
import uuid
from io import BytesIO
import av
async def download_url_to_video_output(video_url: str, timeout: int = None) -> VideoFromFile:
"""Downloads a video from a URL and returns a `VIDEO` output.
Args:
video_url: The URL of the video to download.
Returns:
A Comfy node `VIDEO` output.
"""
video_io = await download_url_to_bytesio(video_url, timeout)
if video_io is None:
error_msg = f"Failed to download video from {video_url}"
logging.error(error_msg)
raise ValueError(error_msg)
return VideoFromFile(video_io)
def downscale_image_tensor(image, total_pixels=1536 * 1024) -> torch.Tensor:
"""Downscale input image tensor to roughly the specified total pixels."""
samples = image.movedim(-1, 1)
total = int(total_pixels)
scale_by = math.sqrt(total / (samples.shape[3] * samples.shape[2]))
if scale_by >= 1:
return image
width = round(samples.shape[3] * scale_by)
height = round(samples.shape[2] * scale_by)
s = common_upscale(samples, width, height, "lanczos", "disabled")
s = s.movedim(1, -1)
return s
async def validate_and_cast_response(
response, timeout: int = None, node_id: Union[str, None] = None
) -> torch.Tensor:
"""Validates and casts a response to a torch.Tensor.
Args:
response: The response to validate and cast.
timeout: Request timeout in seconds. Defaults to None (no timeout).
Returns:
A torch.Tensor representing the image (1, H, W, C).
Raises:
ValueError: If the response is not valid.
"""
# validate raw JSON response
data = response.data
if not data or len(data) == 0:
raise ValueError("No images returned from API endpoint")
# Initialize list to store image tensors
image_tensors: list[torch.Tensor] = []
# Process each image in the data array
async with aiohttp.ClientSession(timeout=aiohttp.ClientTimeout(total=timeout)) as session:
for img_data in data:
img_bytes: bytes
if img_data.b64_json:
img_bytes = base64.b64decode(img_data.b64_json)
elif img_data.url:
if node_id:
PromptServer.instance.send_progress_text(f"Result URL: {img_data.url}", node_id)
async with session.get(img_data.url) as resp:
if resp.status != 200:
raise ValueError("Failed to download generated image")
img_bytes = await resp.read()
else:
raise ValueError("Invalid image payload – neither URL nor base64 data present.")
pil_img = Image.open(BytesIO(img_bytes)).convert("RGBA")
arr = np.asarray(pil_img).astype(np.float32) / 255.0
image_tensors.append(torch.from_numpy(arr))
return torch.stack(image_tensors, dim=0)
def validate_aspect_ratio(
aspect_ratio: str,
minimum_ratio: float,
maximum_ratio: float,
minimum_ratio_str: str,
maximum_ratio_str: str,
) -> float:
"""Validates and casts an aspect ratio string to a float.
Args:
aspect_ratio: The aspect ratio string to validate.
minimum_ratio: The minimum aspect ratio.
maximum_ratio: The maximum aspect ratio.
minimum_ratio_str: The minimum aspect ratio string.
maximum_ratio_str: The maximum aspect ratio string.
Returns:
The validated and cast aspect ratio.
Raises:
Exception: If the aspect ratio is not valid.
"""
# get ratio values
numbers = aspect_ratio.split(":")
if len(numbers) != 2:
raise TypeError(
f"Aspect ratio must be in the format X:Y, such as 16:9, but was {aspect_ratio}."
)
try:
numerator = int(numbers[0])
denominator = int(numbers[1])
except ValueError as exc:
raise TypeError(
f"Aspect ratio must contain numbers separated by ':', such as 16:9, but was {aspect_ratio}."
) from exc
calculated_ratio = numerator / denominator
# if not close to minimum and maximum, check bounds
if not math.isclose(calculated_ratio, minimum_ratio) or not math.isclose(
calculated_ratio, maximum_ratio
):
if calculated_ratio < minimum_ratio:
raise TypeError(
f"Aspect ratio cannot reduce to any less than {minimum_ratio_str} ({minimum_ratio}), but was {aspect_ratio} ({calculated_ratio})."
)
elif calculated_ratio > maximum_ratio:
raise TypeError(
f"Aspect ratio cannot reduce to any greater than {maximum_ratio_str} ({maximum_ratio}), but was {aspect_ratio} ({calculated_ratio})."
)
return aspect_ratio
def mimetype_to_extension(mime_type: str) -> str:
"""Converts a MIME type to a file extension."""
return mime_type.split("/")[-1].lower()
async def download_url_to_bytesio(url: str, timeout: int = None) -> BytesIO:
"""Downloads content from a URL using requests and returns it as BytesIO.
Args:
url: The URL to download.
timeout: Request timeout in seconds. Defaults to None (no timeout).
Returns:
BytesIO object containing the downloaded content.
"""
timeout_cfg = aiohttp.ClientTimeout(total=timeout) if timeout else None
async with aiohttp.ClientSession(timeout=timeout_cfg) as session:
async with session.get(url) as resp:
resp.raise_for_status() # Raises HTTPError for bad responses (4XX or 5XX)
return BytesIO(await resp.read())
def bytesio_to_image_tensor(image_bytesio: BytesIO, mode: str = "RGBA") -> torch.Tensor:
"""Converts image data from BytesIO to a torch.Tensor.
Args:
image_bytesio: BytesIO object containing the image data.
mode: The PIL mode to convert the image to (e.g., "RGB", "RGBA").
Returns:
A torch.Tensor representing the image (1, H, W, C).
Raises:
PIL.UnidentifiedImageError: If the image data cannot be identified.
ValueError: If the specified mode is invalid.
"""
image = Image.open(image_bytesio)
image = image.convert(mode)
image_array = np.array(image).astype(np.float32) / 255.0
return torch.from_numpy(image_array).unsqueeze(0)
async def download_url_to_image_tensor(url: str, timeout: int = None) -> torch.Tensor:
"""Downloads an image from a URL and returns a [B, H, W, C] tensor."""
image_bytesio = await download_url_to_bytesio(url, timeout)
return bytesio_to_image_tensor(image_bytesio)
def process_image_response(response_content: bytes | str) -> torch.Tensor:
"""Uses content from a Response object and converts it to a torch.Tensor"""
return bytesio_to_image_tensor(BytesIO(response_content))
def _tensor_to_pil(image: torch.Tensor, total_pixels: int = 2048 * 2048) -> Image.Image:
"""Converts a single torch.Tensor image [H, W, C] to a PIL Image, optionally downscaling."""
if len(image.shape) > 3:
image = image[0]
# TODO: remove alpha if not allowed and present
input_tensor = image.cpu()
input_tensor = downscale_image_tensor(
input_tensor.unsqueeze(0), total_pixels=total_pixels
).squeeze()
image_np = (input_tensor.numpy() * 255).astype(np.uint8)
img = Image.fromarray(image_np)
return img
def _pil_to_bytesio(img: Image.Image, mime_type: str = "image/png") -> BytesIO:
"""Converts a PIL Image to a BytesIO object."""
if not mime_type:
mime_type = "image/png"
img_byte_arr = io.BytesIO()
# Derive PIL format from MIME type (e.g., 'image/png' -> 'PNG')
pil_format = mime_type.split("/")[-1].upper()
if pil_format == "JPG":
pil_format = "JPEG"
img.save(img_byte_arr, format=pil_format)
img_byte_arr.seek(0)
return img_byte_arr
def tensor_to_bytesio(
image: torch.Tensor,
name: Optional[str] = None,
total_pixels: int = 2048 * 2048,
mime_type: str = "image/png",
) -> BytesIO:
"""Converts a torch.Tensor image to a named BytesIO object.
Args:
image: Input torch.Tensor image.
name: Optional filename for the BytesIO object.
total_pixels: Maximum total pixels for potential downscaling.
mime_type: Target image MIME type (e.g., 'image/png', 'image/jpeg', 'image/webp', 'video/mp4').
Returns:
Named BytesIO object containing the image data.
"""
if not mime_type:
mime_type = "image/png"
pil_image = _tensor_to_pil(image, total_pixels=total_pixels)
img_binary = _pil_to_bytesio(pil_image, mime_type=mime_type)
img_binary.name = (
f"{name if name else uuid.uuid4()}.{mimetype_to_extension(mime_type)}"
)
return img_binary
def tensor_to_base64_string(
image_tensor: torch.Tensor,
total_pixels: int = 2048 * 2048,
mime_type: str = "image/png",
) -> str:
"""Convert [B, H, W, C] or [H, W, C] tensor to a base64 string.
Args:
image_tensor: Input torch.Tensor image.
total_pixels: Maximum total pixels for potential downscaling.
mime_type: Target image MIME type (e.g., 'image/png', 'image/jpeg', 'image/webp', 'video/mp4').
Returns:
Base64 encoded string of the image.
"""
pil_image = _tensor_to_pil(image_tensor, total_pixels=total_pixels)
img_byte_arr = _pil_to_bytesio(pil_image, mime_type=mime_type)
img_bytes = img_byte_arr.getvalue()
# Encode bytes to base64 string
base64_encoded_string = base64.b64encode(img_bytes).decode("utf-8")
return base64_encoded_string
def tensor_to_data_uri(
image_tensor: torch.Tensor,
total_pixels: int = 2048 * 2048,
mime_type: str = "image/png",
) -> str:
"""Converts a tensor image to a Data URI string.
Args:
image_tensor: Input torch.Tensor image.
total_pixels: Maximum total pixels for potential downscaling.
mime_type: Target image MIME type (e.g., 'image/png', 'image/jpeg', 'image/webp').
Returns:
Data URI string (e.g., 'data:image/png;base64,...').
"""
base64_string = tensor_to_base64_string(image_tensor, total_pixels, mime_type)
return f"data:{mime_type};base64,{base64_string}"
def text_filepath_to_base64_string(filepath: str) -> str:
"""Converts a text file to a base64 string."""
with open(filepath, "rb") as f:
file_content = f.read()
return base64.b64encode(file_content).decode("utf-8")
def text_filepath_to_data_uri(filepath: str) -> str:
"""Converts a text file to a data URI."""
base64_string = text_filepath_to_base64_string(filepath)
mime_type, _ = mimetypes.guess_type(filepath)
if mime_type is None:
mime_type = "application/octet-stream"
return f"data:{mime_type};base64,{base64_string}"
async def upload_file_to_comfyapi(
file_bytes_io: BytesIO,
filename: str,
upload_mime_type: Optional[str],
auth_kwargs: Optional[dict[str, str]] = None,
) -> str:
"""
Uploads a single file to ComfyUI API and returns its download URL.
Args:
file_bytes_io: BytesIO object containing the file data.
filename: The filename of the file.
upload_mime_type: MIME type of the file.
auth_kwargs: Optional authentication token(s).
Returns:
The download URL for the uploaded file.
"""
if upload_mime_type is None:
request_object = UploadRequest(file_name=filename)
else:
request_object = UploadRequest(file_name=filename, content_type=upload_mime_type)
operation = SynchronousOperation(
endpoint=ApiEndpoint(
path="/customers/storage",
method=HttpMethod.POST,
request_model=UploadRequest,
response_model=UploadResponse,
),
request=request_object,
auth_kwargs=auth_kwargs,
)
response: UploadResponse = await operation.execute()
await ApiClient.upload_file(response.upload_url, file_bytes_io, content_type=upload_mime_type)
return response.download_url
def video_to_base64_string(
video: VideoInput,
container_format: VideoContainer = None,
codec: VideoCodec = None
) -> str:
"""
Converts a video input to a base64 string.
Args:
video: The video input to convert
container_format: Optional container format to use (defaults to video.container if available)
codec: Optional codec to use (defaults to video.codec if available)
"""
video_bytes_io = io.BytesIO()
# Use provided format/codec if specified, otherwise use video's own if available
format_to_use = container_format if container_format is not None else getattr(video, 'container', VideoContainer.MP4)
codec_to_use = codec if codec is not None else getattr(video, 'codec', VideoCodec.H264)
video.save_to(video_bytes_io, format=format_to_use, codec=codec_to_use)
video_bytes_io.seek(0)
return base64.b64encode(video_bytes_io.getvalue()).decode("utf-8")
async def upload_video_to_comfyapi(
video: VideoInput,
auth_kwargs: Optional[dict[str, str]] = None,
container: VideoContainer = VideoContainer.MP4,
codec: VideoCodec = VideoCodec.H264,
max_duration: Optional[int] = None,
) -> str:
"""
Uploads a single video to ComfyUI API and returns its download URL.
Uses the specified container and codec for saving the video before upload.
Args:
video: VideoInput object (Comfy VIDEO type).
auth_kwargs: Optional authentication token(s).
container: The video container format to use (default: MP4).
codec: The video codec to use (default: H264).
max_duration: Optional maximum duration of the video in seconds. If the video is longer than this, an error will be raised.
Returns:
The download URL for the uploaded video file.
"""
if max_duration is not None:
try:
actual_duration = video.duration_seconds
if actual_duration is not None and actual_duration > max_duration:
raise ValueError(
f"Video duration ({actual_duration:.2f}s) exceeds the maximum allowed ({max_duration}s)."
)
except Exception as e:
logging.error(f"Error getting video duration: {e}")
raise ValueError(f"Could not verify video duration from source: {e}") from e
upload_mime_type = f"video/{container.value.lower()}"
filename = f"uploaded_video.{container.value.lower()}"
# Convert VideoInput to BytesIO using specified container/codec
video_bytes_io = io.BytesIO()
video.save_to(video_bytes_io, format=container, codec=codec)
video_bytes_io.seek(0)
return await upload_file_to_comfyapi(video_bytes_io, filename, upload_mime_type, auth_kwargs)
def audio_tensor_to_contiguous_ndarray(waveform: torch.Tensor) -> np.ndarray:
"""
Prepares audio waveform for av library by converting to a contiguous numpy array.
Args:
waveform: a tensor of shape (1, channels, samples) derived from a Comfy `AUDIO` type.
Returns:
Contiguous numpy array of the audio waveform. If the audio was batched,
the first item is taken.
"""
if waveform.ndim != 3 or waveform.shape[0] != 1:
raise ValueError("Expected waveform tensor shape (1, channels, samples)")
# If batch is > 1, take first item
if waveform.shape[0] > 1:
waveform = waveform[0]
# Prepare for av: remove batch dim, move to CPU, make contiguous, convert to numpy array
audio_data_np = waveform.squeeze(0).cpu().contiguous().numpy()
if audio_data_np.dtype != np.float32:
audio_data_np = audio_data_np.astype(np.float32)
return audio_data_np
def audio_ndarray_to_bytesio(
audio_data_np: np.ndarray,
sample_rate: int,
container_format: str = "mp4",
codec_name: str = "aac",
) -> BytesIO:
"""
Encodes a numpy array of audio data into a BytesIO object.
"""
audio_bytes_io = io.BytesIO()
with av.open(audio_bytes_io, mode="w", format=container_format) as output_container:
audio_stream = output_container.add_stream(codec_name, rate=sample_rate)
frame = av.AudioFrame.from_ndarray(
audio_data_np,
format="fltp",
layout="stereo" if audio_data_np.shape[0] > 1 else "mono",
)
frame.sample_rate = sample_rate
frame.pts = 0
for packet in audio_stream.encode(frame):
output_container.mux(packet)
# Flush stream
for packet in audio_stream.encode(None):
output_container.mux(packet)
audio_bytes_io.seek(0)
return audio_bytes_io
async def upload_audio_to_comfyapi(
audio: AudioInput,
auth_kwargs: Optional[dict[str, str]] = None,
container_format: str = "mp4",
codec_name: str = "aac",
mime_type: str = "audio/mp4",
filename: str = "uploaded_audio.mp4",
) -> str:
"""
Uploads a single audio input to ComfyUI API and returns its download URL.
Encodes the raw waveform into the specified format before uploading.
Args:
audio: a Comfy `AUDIO` type (contains waveform tensor and sample_rate)
auth_kwargs: Optional authentication token(s).
Returns:
The download URL for the uploaded audio file.
"""
sample_rate: int = audio["sample_rate"]
waveform: torch.Tensor = audio["waveform"]
audio_data_np = audio_tensor_to_contiguous_ndarray(waveform)
audio_bytes_io = audio_ndarray_to_bytesio(
audio_data_np, sample_rate, container_format, codec_name
)
return await upload_file_to_comfyapi(audio_bytes_io, filename, mime_type, auth_kwargs)
def audio_to_base64_string(
audio: AudioInput, container_format: str = "mp4", codec_name: str = "aac"
) -> str:
"""Converts an audio input to a base64 string."""
sample_rate: int = audio["sample_rate"]
waveform: torch.Tensor = audio["waveform"]
audio_data_np = audio_tensor_to_contiguous_ndarray(waveform)
audio_bytes_io = audio_ndarray_to_bytesio(
audio_data_np, sample_rate, container_format, codec_name
)
audio_bytes = audio_bytes_io.getvalue()
return base64.b64encode(audio_bytes).decode("utf-8")
async def upload_images_to_comfyapi(
image: torch.Tensor,
max_images=8,
auth_kwargs: Optional[dict[str, str]] = None,
mime_type: Optional[str] = None,
) -> list[str]:
"""
Uploads images to ComfyUI API and returns download URLs.
To upload multiple images, stack them in the batch dimension first.
Args:
image: Input torch.Tensor image.
max_images: Maximum number of images to upload.
auth_kwargs: Optional authentication token(s).
mime_type: Optional MIME type for the image.
"""
# if batch, try to upload each file if max_images is greater than 0
download_urls: list[str] = []
is_batch = len(image.shape) > 3
batch_len = image.shape[0] if is_batch else 1
for idx in range(min(batch_len, max_images)):
tensor = image[idx] if is_batch else image
img_io = tensor_to_bytesio(tensor, mime_type=mime_type)
url = await upload_file_to_comfyapi(img_io, img_io.name, mime_type, auth_kwargs)
download_urls.append(url)
return download_urls
def resize_mask_to_image(
mask: torch.Tensor,
image: torch.Tensor,
upscale_method="nearest-exact",
crop="disabled",
allow_gradient=True,
add_channel_dim=False,
):
"""
Resize mask to be the same dimensions as an image, while maintaining proper format for API calls.
"""
_, H, W, _ = image.shape
mask = mask.unsqueeze(-1)
mask = mask.movedim(-1, 1)
mask = common_upscale(
mask, width=W, height=H, upscale_method=upscale_method, crop=crop
)
mask = mask.movedim(1, -1)
if not add_channel_dim:
mask = mask.squeeze(-1)
if not allow_gradient:
mask = (mask > 0.5).float()
return mask
def validate_string(
string: str,
strip_whitespace=True,
field_name="prompt",
min_length=None,
max_length=None,
):
if string is None:
raise Exception(f"Field '{field_name}' cannot be empty.")
if strip_whitespace:
string = string.strip()
if min_length and len(string) < min_length:
raise Exception(
f"Field '{field_name}' cannot be shorter than {min_length} characters; was {len(string)} characters long."
)
if max_length and len(string) > max_length:
raise Exception(
f" Field '{field_name} cannot be longer than {max_length} characters; was {len(string)} characters long."
)
def image_tensor_pair_to_batch(
image1: torch.Tensor, image2: torch.Tensor
) -> torch.Tensor:
"""
Converts a pair of image tensors to a batch tensor.
If the images are not the same size, the smaller image is resized to
match the larger image.
"""
if image1.shape[1:] != image2.shape[1:]:
image2 = common_upscale(
image2.movedim(-1, 1),
image1.shape[2],
image1.shape[1],
"bilinear",
"center",
).movedim(1, -1)
return torch.cat((image1, image2), dim=0)