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import os
import numpy as np
import random
from pathlib import Path
from PIL import Image
import streamlit as st
from huggingface_hub import InferenceClient, AsyncInferenceClient
from gradio_client import Client, handle_file
import asyncio
MAX_SEED = np.iinfo(np.int32).max
HF_TOKEN = os.environ.get("HF_TOKEN")
HF_TOKEN_UPSCALER = os.environ.get("HF_TOKEN_UPSCALER")
client = AsyncInferenceClient()
llm_client = InferenceClient("mistralai/Mixtral-8x7B-Instruct-v0.1")
DATA_PATH = Path("./data")
DATA_PATH.mkdir(exist_ok=True)
def enable_lora(lora_add, basemodel):
return lora_add if lora_add else basemodel
async def generate_image(combined_prompt, model, width, height, scales, steps, seed):
try:
if seed == -1:
seed = random.randint(0, MAX_SEED)
seed = int(seed)
image = await client.text_to_image(
prompt=combined_prompt, height=height, width=width, guidance_scale=scales,
num_inference_steps=steps, model=model
)
return image, seed
except Exception as e:
return f"Error al generar imagen: {e}", None
def get_upscale_finegrain(prompt, img_path, upscale_factor):
try:
client = Client("finegrain/finegrain-image-enhancer", hf_token=HF_TOKEN_UPSCALER)
result = client.predict(
input_image=handle_file(img_path), prompt=prompt, upscale_factor=upscale_factor
)
return result[1] if isinstance(result, list) and len(result) > 1 else None
except Exception as e:
return None
def save_prompt(prompt_text, seed):
try:
prompt_file_path = DATA_PATH / f"prompt_{seed}.txt"
with open(prompt_file_path, "w") as prompt_file:
prompt_file.write(prompt_text)
return prompt_file_path
except Exception as e:
st.error(f"Error al guardar el prompt: {e}")
return None
async def gen(prompt, basemodel, width, height, scales, steps, seed, upscale_factor, process_upscale, lora_model, process_lora):
model = enable_lora(lora_model, basemodel) if process_lora else basemodel
improved_prompt = await improve_prompt(prompt)
combined_prompt = f"{prompt} {improved_prompt}"
if seed == -1:
seed = random.randint(0, MAX_SEED)
seed = int(seed)
progress_bar = st.progress(0)
image, seed = await generate_image(combined_prompt, model, width, height, scales, steps, seed)
progress_bar.progress(50)
if isinstance(image, str) and image.startswith("Error"):
progress_bar.empty()
return [image, None, combined_prompt]
image_path = save_image(image, seed)
prompt_file_path = save_prompt(combined_prompt, seed)
if process_upscale:
upscale_image_path = get_upscale_finegrain(combined_prompt, image_path, upscale_factor)
if upscale_image_path:
upscale_image = Image.open(upscale_image_path)
upscale_image.save(DATA_PATH / f"upscale_image_{seed}.jpg", format="JPEG")
progress_bar.progress(100)
image_path.unlink()
return [str(DATA_PATH / f"upscale_image_{seed}.jpg"), str(prompt_file_path)]
else:
progress_bar.empty()
return [str(image_path), str(prompt_file_path)]
else:
progress_bar.progress(100)
return [str(image_path), str(prompt_file_path)]
async def improve_prompt(prompt):
try:
instruction = ("With this idea, describe in English a detailed txt2img prompt in 300 characters at most...")
formatted_prompt = f"{prompt}: {instruction}"
response = llm_client.text_generation(formatted_prompt, max_new_tokens=300)
improved_text = response['generated_text'].strip() if 'generated_text' in response else response.strip()
return improved_text[:300] if len(improved_text) > 300 else improved_text
except Exception as e:
return f"Error mejorando el prompt: {e}"
def save_image(image, seed):
try:
image_path = DATA_PATH / f"image_{seed}.jpg"
image.save(image_path, format="JPEG")
return image_path
except Exception as e:
st.error(f"Error al guardar la imagen: {e}")
return None
def get_storage():
files = [{"name": str(file.resolve()), "size": file.stat().st_size} for file in DATA_PATH.glob("*.jpg") if file.is_file()]
usage = sum([f['size'] for f in files])
return [f["name"] for f in files], f"Uso total: {usage/(1024.0 ** 3):.3f}GB"
def get_prompts():
prompt_files = [file for file in DATA_PATH.glob("*.txt") if file.is_file()]
return {file.stem.replace("prompt_", ""): file for file in prompt_files}
def delete_image(image_path):
try:
if Path(image_path).exists():
Path(image_path).unlink()
st.success(f"Imagen {image_path} borrada.")
else:
st.error("El archivo de imagen no existe.")
except Exception as e:
st.error(f"Error al borrar la imagen: {e}")
def main():
st.set_page_config(layout="wide")
st.title("Generador de Imágenes FLUX")
prompt = st.sidebar.text_input("Descripción de la imagen", max_chars=200)
with st.sidebar.expander("Opciones avanzadas", expanded=False):
basemodel = st.selectbox("Modelo Base", ["black-forest-labs/FLUX.1-schnell", "black-forest-labs/FLUX.1-DEV"])
lora_model = st.selectbox("LORA Realismo", ["Shakker-Labs/FLUX.1-dev-LoRA-add-details", "XLabs-AI/flux-RealismLora"])
format_option = st.selectbox("Formato", ["9:16", "16:9"])
process_lora = st.checkbox("Procesar LORA")
process_upscale = st.checkbox("Procesar Escalador")
upscale_factor = st.selectbox("Factor de Escala", [2, 4, 8], index=0)
scales = st.slider("Escalado", 1, 20, 10)
steps = st.slider("Pasos", 1, 100, 20)
seed = st.number_input("Semilla", value=-1)
if format_option == "9:16":
width = 720
height = 1280
else:
width = 1280
height = 720
if st.sidebar.button("Generar Imagen"):
with st.spinner("Mejorando y generando imagen..."):
improved_prompt = asyncio.run(improve_prompt(prompt))
st.session_state.improved_prompt = improved_prompt
prompt_to_use = st.session_state.get('improved_prompt', prompt)
result = asyncio.run(gen(prompt_to_use, basemodel, width, height, scales, steps, seed, upscale_factor, process_upscale, lora_model, process_lora))
image_paths = result[0]
prompt_file = result[1]
st.write(f"Image paths: {image_paths}")
if image_paths:
if Path(image_paths).exists():
st.image(image_paths, caption="Imagen Generada")
else:
st.error("El archivo de imagen no existe.")
if prompt_file and Path(prompt_file).exists():
prompt_text = Path(prompt_file).read_text()
st.write(f"Prompt utilizado: {prompt_text}")
else:
st.write("El archivo del prompt no está disponible.")
files, usage = get_storage()
st.text(usage)
cols = st.columns(6)
prompts = get_prompts()
for idx, file in enumerate(files):
with cols[idx % 6]:
image = Image.open(file)
prompt_file = prompts.get(Path(file).stem.replace("image_", ""), None)
prompt_text = Path(prompt_file).read_text() if prompt_file else "No disponible"
st.image(image, caption=f"Imagen {idx+1}")
st.write(f"Prompt: {prompt_text}")
if st.button(f"Borrar Imagen {idx+1}", key=f"delete_{idx}"):
try:
os.remove(file)
if prompt_file:
os.remove(prompt_file)
st.success(f"Imagen {idx+1} y su prompt fueron borrados.")
except Exception as e:
st.error(f"Error al borrar la imagen o prompt: {e}")
if __name__ == "__main__":
main() |