""" FastAPI server for 4K image generation. """ import asyncio import uuid import time from pathlib import Path import torch from fastapi import FastAPI, BackgroundTasks from fastapi.responses import FileResponse from pydantic import BaseModel import sys sys.path.insert(0, str(Path(__file__).parent)) from inference import load_flux_pipeline, load_sr_model, generate_4k app = FastAPI(title="4K Image Generation API") # Global models (loaded on startup) flux_pipe = None sr_stage2 = None sr_stage3 = None jobs = {} OUTPUT_DIR = Path("/home/adminuser/chungcat/outputs/api") OUTPUT_DIR.mkdir(parents=True, exist_ok=True) class GenerateRequest(BaseModel): prompt: str resolution: str = "4k" # "1k", "2k", "4k" steps: int = 28 guidance_scale: float = 3.5 class JobStatus(BaseModel): job_id: str status: str # "pending", "processing", "completed", "failed" resolution: str elapsed_seconds: float = 0 result_url: str = None error: str = None @app.on_event("startup") async def startup(): global flux_pipe, sr_stage2, sr_stage3 flux_pipe = load_flux_pipeline( "black-forest-labs/FLUX.1-schnell", lora_path=Path("/home/adminuser/chungcat/checkpoints/flux_lora/final"), device="cuda:0", ) sr_stage2 = load_sr_model( "/home/adminuser/chungcat/checkpoints/sr_stage2/final/model.pt", device="cuda:1", ) sr_stage3 = load_sr_model( "/home/adminuser/chungcat/checkpoints/sr_stage3/final/model.pt", device="cuda:1", ) print("All models loaded!") def process_job(job_id: str, request: GenerateRequest): jobs[job_id]["status"] = "processing" t0 = time.time() try: image = generate_4k( prompt=request.prompt, flux_pipe=flux_pipe, sr_stage2=sr_stage2, sr_stage3=sr_stage3, output_path=OUTPUT_DIR / job_id, num_inference_steps=request.steps, guidance_scale=request.guidance_scale, ) jobs[job_id]["status"] = "completed" jobs[job_id]["elapsed_seconds"] = time.time() - t0 stem = request.prompt[:50].replace(" ", "_").replace("/", "_") res_suffix = request.resolution jobs[job_id]["result_url"] = f"/result/{job_id}/{stem}_{res_suffix}.png" except Exception as e: jobs[job_id]["status"] = "failed" jobs[job_id]["error"] = str(e) jobs[job_id]["elapsed_seconds"] = time.time() - t0 @app.post("/generate", response_model=JobStatus) async def generate(request: GenerateRequest, background_tasks: BackgroundTasks): job_id = str(uuid.uuid4())[:8] jobs[job_id] = { "job_id": job_id, "status": "pending", "resolution": request.resolution, "elapsed_seconds": 0, } background_tasks.add_task(process_job, job_id, request) return JobStatus(**jobs[job_id]) @app.get("/status/{job_id}", response_model=JobStatus) async def get_status(job_id: str): if job_id not in jobs: return JobStatus(job_id=job_id, status="not_found", resolution="") return JobStatus(**jobs[job_id]) @app.get("/result/{job_id}/{filename}") async def get_result(job_id: str, filename: str): file_path = OUTPUT_DIR / job_id / filename if not file_path.exists(): return {"error": "File not found"} return FileResponse(file_path, media_type="image/png") @app.get("/health") async def health(): return { "status": "ok", "gpu_0": torch.cuda.get_device_name(0), "gpu_1": torch.cuda.get_device_name(1), "gpu_0_memory_used": f"{torch.cuda.memory_allocated(0) / 1024**3:.1f} GB", "gpu_1_memory_used": f"{torch.cuda.memory_allocated(1) / 1024**3:.1f} GB", } if __name__ == "__main__": import uvicorn uvicorn.run(app, host="0.0.0.0", port=8000)