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predict.py
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predict.py
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# An example of how to convert a given API workflow into its own Replicate model
# Replace predict.py with this file when building your own workflow
import os
import mimetypes
import json
import random
from PIL import Image, ExifTags
from typing import List, Iterator
from cog import BasePredictor, Input, Path
from comfyui import ComfyUI
from safety_checker import SafetyChecker
from cog_model_helpers import optimise_images
from cog_model_helpers import seed as seed_helper
OUTPUT_DIR = "/tmp/outputs"
INPUT_DIR = "/tmp/inputs"
COMFYUI_TEMP_OUTPUT_DIR = "ComfyUI/temp"
ALL_DIRECTORIES = [OUTPUT_DIR, INPUT_DIR, COMFYUI_TEMP_OUTPUT_DIR]
MAX_HEADSHOTS = 14
MAX_POSES = 30
POSE_PATH = f"{INPUT_DIR}/poses"
mimetypes.add_type("image/webp", ".webp")
# Save your example JSON to the same directory as predict.py
api_json_file = "workflow_api.json"
class Predictor(BasePredictor):
def setup(self):
self.comfyUI = ComfyUI("127.0.0.1:8188")
self.comfyUI.start_server(OUTPUT_DIR, INPUT_DIR)
self.safetyChecker = SafetyChecker()
# Give a list of weights filenames to download during setup
with open(api_json_file, "r") as file:
workflow = json.loads(file.read())
self.comfyUI.handle_weights(
workflow,
weights_to_download=[],
)
# Download pose images
self.comfyUI.weights_downloader.download(
"pose_images.tar",
"https://weights.replicate.delivery/default/fofr/character/pose_images.tar",
f"{INPUT_DIR}/poses",
)
self.headshots = self.list_pose_filenames(type="headshot")
self.poses = self.list_pose_filenames(type="pose")
self.all = self.headshots + self.poses
def get_filenames(
self, filenames: List[str], length: int, use_random: bool = True
) -> List[str]:
if length > len(filenames):
length = len(filenames)
print(f"Using {length} as the max number of files.")
if use_random:
random.shuffle(filenames)
return filenames[:length]
def list_pose_filenames(self, type="headshot"):
if type == "headshot":
max_value = MAX_HEADSHOTS
prefix = "headshot"
elif type == "pose":
max_value = MAX_POSES
prefix = "pose"
else:
raise ValueError("Invalid type specified. Use 'headshot' or 'pose'.")
return [
{
"kps": f"{POSE_PATH}/{prefix}_kps_{str(i).zfill(5)}_.png",
"openpose": f"{POSE_PATH}/{prefix}_open_pose_{str(i).zfill(5)}_.png",
"dwpose": f"{POSE_PATH}/{prefix}_dw_pose_{str(i).zfill(5)}_.png",
}
for i in range(1, max_value + 1)
]
def get_poses(self, number_of_outputs, is_random, type):
if type == "Headshot poses":
return self.get_filenames(self.headshots, number_of_outputs, is_random)
elif type == "Half-body poses":
return self.get_filenames(self.poses, number_of_outputs, is_random)
else:
return self.get_filenames(self.all, number_of_outputs, is_random)
def handle_input_file(
self,
input_file: Path,
filename: str = "image.png",
check_orientation: bool = True,
):
image = Image.open(input_file)
if check_orientation:
try:
for orientation in ExifTags.TAGS.keys():
if ExifTags.TAGS[orientation] == "Orientation":
break
exif = dict(image._getexif().items())
if exif[orientation] == 3:
image = image.rotate(180, expand=True)
elif exif[orientation] == 6:
image = image.rotate(270, expand=True)
elif exif[orientation] == 8:
image = image.rotate(90, expand=True)
except (KeyError, AttributeError):
# EXIF data does not have orientation
# Do not rotate
pass
image.save(os.path.join(INPUT_DIR, filename))
# Update nodes in the JSON workflow to modify your workflow based on the given inputs
def update_workflow(self, workflow, **kwargs):
positive_prompt = workflow["9"]["inputs"]
positive_prompt["text"] = kwargs["prompt"]
negative_prompt = workflow["10"]["inputs"]
negative_prompt["text"] = (
f"(nsfw:2), nipple, nude, naked, {kwargs['negative_prompt']}, lowres, two people, child, bad anatomy, bad hands, text, error, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality, normal quality, jpeg artifacts, signature, watermark, username, blurry, multiple view, reference sheet, mutated, poorly drawn, mutation, deformed, ugly, bad proportions, gross proportions, malformed limbs, missing arms, missing legs, extra arms, extra legs, fused fingers, too many fingers, long neck, amateur drawing, odd eyes, uneven eyes, unnatural face, uneven nostrils, crooked mouth, bad teeth, crooked teeth, gross, ugly, very long body, duplicate, morbid, mutilated, extra fingers, mutated hands, poorly drawn eyes"
)
sampler = workflow["11"]["inputs"]
sampler["seed"] = kwargs["seed"]
empty_latent_image = workflow["29"]["inputs"]
empty_latent_image["batch_size"] = kwargs["number_of_images_per_pose"]
kps_input_image = workflow["94"]["inputs"]
kps_input_image["image"] = kwargs["pose"]["kps"]
dwpose_input_image = workflow["95"]["inputs"]
dwpose_input_image["image"] = kwargs["pose"]["dwpose"]
def predict(
self,
prompt: str = Input(
default="A headshot photo",
description="Describe the subject. Include clothes and hairstyle for more consistency.",
),
negative_prompt: str = Input(
description="Things you do not want to see in your image",
default="",
),
subject: Path = Input(
description="An image of a person. Best images are square close ups of a face, but they do not have to be.",
default=None,
),
# type: str = Input(
# description="The type of images to generate, headshots, half-body poses or both.",
# choices=[
# "Both headshots and half-body poses",
# "Headshot poses",
# "Half-body poses",
# ],
# default="Both headshots and half-body poses",
# ),
number_of_outputs: int = Input(
description="The number of images to generate.", default=3, ge=1, le=20
),
number_of_images_per_pose: int = Input(
description="The number of images to generate for each pose.",
default=1,
ge=1,
le=4,
),
randomise_poses: bool = Input(
description="Randomise the poses used.", default=True
),
output_format: str = optimise_images.predict_output_format(),
output_quality: int = optimise_images.predict_output_quality(),
seed: int = seed_helper.predict_seed(),
disable_safety_checker: bool = Input(
description="Disable safety checker for generated images.", default=False
),
) -> Iterator[Path]:
"""Run a single prediction on the model"""
self.comfyUI.cleanup(ALL_DIRECTORIES)
# Headshot poses are not coming out consistently good
type = "Half-body poses"
using_fixed_seed = bool(seed)
seed = seed_helper.generate(seed)
self.handle_input_file(subject, filename="subject.png")
poses = self.get_poses(number_of_outputs, randomise_poses, type)
with open(api_json_file, "r") as file:
workflow = json.loads(file.read())
self.comfyUI.connect()
if using_fixed_seed:
self.comfyUI.reset_execution_cache()
returned_files = []
has_any_nsfw_content = False
has_yielded_safe_content = False
for pose in poses:
self.update_workflow(
workflow,
prompt=prompt,
negative_prompt=negative_prompt,
seed=seed,
type=type,
number_of_outputs=number_of_outputs,
number_of_images_per_pose=number_of_images_per_pose,
randomise_poses=randomise_poses,
pose=pose,
)
self.comfyUI.run_workflow(workflow)
all_output_files = self.comfyUI.get_files(OUTPUT_DIR)
new_files = [
file
for file in all_output_files
if file.name.rsplit(".", 1)[0] not in returned_files
]
optimised_images = optimise_images.optimise_image_files(
output_format, output_quality, new_files
)
for image in optimised_images:
if not disable_safety_checker:
has_nsfw_content = self.safetyChecker.run(
[image], error_on_all_nsfw=False
)
if any(has_nsfw_content):
has_any_nsfw_content = True
print(f"Not returning image {image} as it has NSFW content.")
else:
yield Path(image)
has_yielded_safe_content = True
else:
yield Path(image)
has_yielded_safe_content = True
returned_files.extend(
[file.name.rsplit(".", 1)[0] for file in all_output_files]
)
if has_any_nsfw_content and not has_yielded_safe_content:
raise Exception(
"NSFW content detected in all outputs. Try running it again, or try a different prompt."
)