import torch import time from PIL import Image import numpy as np from lyrasd_model import LyraSdXLControlnetTxt2ImgPipeline import GPUtil # 存放模型文件的路径,应该包含一下结构: # 1. clip 模型 # 2. 转换好的优化后的 unet 模型 # 3. 转换好的优化后的 controlnet 模型 # 4. vae 模型 # 5. scheduler 配置 lib_path = "./lyrasd_model/lyrasd_lib/libth_lyrasd_cu12_sm80.so" model_path = "./models/helloworldSDXL20Fp16" torch.classes.load_library(lib_path) # 构建 Txt2Img 的 Pipeline pipe = LyraSdXLControlnetTxt2ImgPipeline() start = time.perf_counter() pipe.reload_pipe(model_path) print(f"pipeline load cost: {time.perf_counter() - start}") # load Controlnet 模型,最多load 3个 start = time.perf_counter() pipe.load_controlnet_model_v2("canny", "./models/controlnet-canny-sdxl-1.0") print(f"controlnet load cost: {time.perf_counter() - start}") # 可以通过 get_loaded_controlnet 方法获取目前已经load 好的Controlnet list print(pipe.get_loaded_controlnet()) # 可以通过unload_controlnet_model 方法unload Controlnet # pipe.unload_controlnet_model("canny") control_img = Image.open("control_bird_canny.png") # 准备应用的输入和超参数 prompt = "a bird" negative_prompt = "" height, width = 1024, 1024 steps = 20 guidance_scale = 7.5 generator = torch.Generator().manual_seed(123) num_images = 1 guess_mode = False # 可以一次性load 3 个 Controlnets,达到multi Controlnet的效果,这里的参数的长度需要对其 # Controlnet 所输入的img list 长度应该和 controlnet scale 与 Controlnet name 一致,而内部的list长度需要和batch size一致 # 对应的index 可以对其 controlnet_images = [[control_img]] controlnet_scale = [0.5] controlnet_names = ['canny'] # 推理生成,返回结果都是生成好的 PIL.Image for batch in [1]: print(f"cur batch: {batch}") for _ in range(3): start = time.perf_counter() images = pipe(prompt=prompt, height=height, width=width, num_inference_steps=steps, guidance_scale=guidance_scale, negative_prompt=negative_prompt, num_images_per_prompt=batch, generator=generator, controlnet_images=controlnet_images, controlnet_scale=controlnet_scale, controlnet_names=controlnet_names, guess_mode=guess_mode ) print("cur cost: ", time.perf_counter() - start) GPUtil.showUtilization(all=True) # 存储生成的图片 for i, image in enumerate(images): image.save(f"./outputs/res_controlnet_sdxl_txt2img_{i}.png")