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analyze-generative-diffusion-model

pjt222
更新于 6 days ago
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关于

This skill analyzes pre-trained generative diffusion models like Stable Diffusion by computing quality metrics (FID, CLIP score), visualizing attention maps, and probing latent spaces. Use it to evaluate model output, compare noise schedules, or analyze cross-attention patterns for text-conditioned generation. It provides advanced diagnostics for model performance and interpretability.

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Claude Code

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npx skills add pjt222/agent-almanac -a claude-code
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/plugin add https://github.com/pjt222/agent-almanac
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git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/analyze-generative-diffusion-model

在 Claude Code 中复制并粘贴此命令以安装该技能

技能文档

析生擴散模

評預訓生擴散模:質量、噪表、注意圖、潛空。

  • 以標量評預訓生擴散模出之質→用
  • 算 FID、IS、CLIP 分、精召於生圖→用
  • 視比噪表(線、餘、學)以 SNR 曲→用
  • 取交注意圖以解文圖標域配→用
  • 於潛碼間插或發潛空語向→用
  • 察擴散模管線之分外入→用

  • :預訓模識或檢點路(如 stabilityai/stable-diffusion-2-1
  • :析模——metricsscheduleattentionlatent 之一或多
  • :度算之參數(真圖或集名)
  • :注意析之文提(默:模適測提)
  • :度算之生樣數(默 10000)
  • :器設(默:cuda 若可,否 cpu

一:量評

對參集算標生質度。

  1. 設評管:
import torch
from diffusers import StableDiffusionPipeline
from torchmetrics.image.fid import FrechetInceptionDistance
from torchmetrics.image.inception import InceptionScore

device = "cuda" if torch.cuda.is_available() else "cpu"
pipe = StableDiffusionPipeline.from_pretrained(
    "stabilityai/stable-diffusion-2-1", torch_dtype=torch.float16
).to(device)

fid = FrechetInceptionDistance(feature=2048, normalize=True).to(device)
inception = InceptionScore(normalize=True).to(device)
  1. 真圖入度累:
from torch.utils.data import DataLoader

for batch in DataLoader(real_dataset, batch_size=64):
    imgs = (batch * 255).byte().to(device)
    fid.update(imgs, real=True)
  1. 生樣累偽計:
prompts = load_evaluation_prompts("prompts.txt")  # one prompt per line
n_generated = 0
while n_generated < 10000:
    prompt_batch = prompts[n_generated:n_generated + 8]
    images = pipe(prompt_batch, num_inference_steps=50).images
    tensors = torch.stack([to_tensor(img) for img in images]).to(device)
    byte_imgs = (tensors * 255).byte()
    fid.update(byte_imgs, real=False)
    inception.update(byte_imgs)
    n_generated += len(images)
  1. 算 CLIP 分為文圖配:
from torchmetrics.multimodal.clip_score import CLIPScore

clip_metric = CLIPScore(model_name_or_path="openai/clip-vit-large-patch14").to(device)
for prompt, image_tensor in zip(sampled_prompts, sampled_tensors):
    clip_metric.update(image_tensor.unsqueeze(0), [prompt])

print(f"FID: {fid.compute():.2f}")
print(f"IS:  {inception.compute()[0]:.2f} +/- {inception.compute()[1]:.2f}")
print(f"CLIP: {clip_metric.compute():.2f}")
  1. 算精召為模覆:
from torchmetrics.image import FrechetInceptionDistance

# Precision: fraction of generated images near real manifold
# Recall: fraction of real images near generated manifold
# Use improved precision/recall (Kynkaanniemi et al., 2019) via
# feature embeddings from the Inception network

得:訓善 SD 模於標基 FID <30。ImageNet 類提 IS >50。文條模 CLIP >25。精召皆 >0.6。

敗:FID >100→驗真生圖同分辨同正規。CLIP 低而 FID 可→模生似像不配文,察文編。為穩 FID 至少 10000 樣。

二:察噪表

視比正反噪表。

  1. 自模取表參:
scheduler = pipe.scheduler
betas = torch.tensor(scheduler.betas) if hasattr(scheduler, 'betas') else None
alphas_cumprod = torch.tensor(scheduler.alphas_cumprod)
timesteps = torch.arange(len(alphas_cumprod))
  1. 算信噪比曲:
import numpy as np
import matplotlib.pyplot as plt

snr = alphas_cumprod / (1 - alphas_cumprod)
log_snr = torch.log(snr)

fig, axes = plt.subplots(1, 3, figsize=(18, 5))
axes[0].plot(timesteps.numpy(), alphas_cumprod.numpy())
axes[0].set_xlabel("Timestep"); axes[0].set_ylabel("alpha_cumprod")
axes[0].set_title("Cumulative Signal Retention")

axes[1].plot(timesteps.numpy(), log_snr.numpy())
axes[1].set_xlabel("Timestep"); axes[1].set_ylabel("log(SNR)")
axes[1].set_title("Log Signal-to-Noise Ratio")

if betas is not None:
    axes[2].plot(timesteps.numpy(), betas.numpy())
    axes[2].set_xlabel("Timestep"); axes[2].set_ylabel("beta")
    axes[2].set_title("Beta Schedule")
fig.tight_layout()
fig.savefig("noise_schedule.png", dpi=150)
  1. 比多表類:
from diffusers import DDPMScheduler

schedules = {
    "linear": DDPMScheduler(beta_schedule="linear", num_train_timesteps=1000),
    "cosine": DDPMScheduler(beta_schedule="squaredcos_cap_v2", num_train_timesteps=1000),
}

fig, ax = plt.subplots(figsize=(10, 6))
for name, sched in schedules.items():
    ac = torch.tensor(sched.alphas_cumprod)
    snr = torch.log(ac / (1 - ac))
    ax.plot(snr.numpy(), label=name)
ax.set_xlabel("Timestep"); ax.set_ylabel("log(SNR)")
ax.set_title("Schedule Comparison"); ax.legend()
fig.savefig("schedule_comparison.png", dpi=150)

得:餘表中時較線漸 SNR 減。log-SNR 曲應自約 +10(清)至 -10(純噪)。學表應單調減。

敗:alphas_cumprod 非單調減→表設誤。值常→察解以模設正初。客解須驗 set_timesteps() 已呼。

三:析注意圖

於文條模取繪交注意。

  1. 於 U-Net 交注意層註鉤:
attention_maps = {}

def hook_fn(name):
    def fn(module, input, output):
        # Cross-attention: Q from image, K/V from text
        if hasattr(module, 'processor'):
            attention_maps[name] = output.detach().cpu()
    return fn

for name, module in pipe.unet.named_modules():
    if 'attn2' in name and hasattr(module, 'processor'):
        module.register_forward_hook(hook_fn(name))
  1. 行推而於定時收注意:
prompt = "a red car parked next to a blue house"
timestep_attention = {}

# Custom callback to capture attention at specific timesteps
def callback_fn(pipe, step_index, timestep, callback_kwargs):
    if step_index in [5, 15, 30, 45]:
        timestep_attention[int(timestep)] = {
            k: v.clone() for k, v in attention_maps.items()
        }
    return callback_kwargs

output = pipe(prompt, num_inference_steps=50, callback_on_step_end=callback_fn)
  1. 視標域配:
tokenizer = pipe.tokenizer
tokens = tokenizer.encode(prompt)
token_strings = [tokenizer.decode([t]) for t in tokens]

# Select a mid-resolution attention layer
layer_key = [k for k in attention_maps if 'mid' in k or 'up.1' in k][0]
attn = attention_maps[layer_key]  # shape: (batch, heads, hw, seq_len)
attn_avg = attn.mean(dim=1)  # average across heads
res = int(attn_avg.shape[1] ** 0.5)
attn_map = attn_avg[0].reshape(res, res, -1)

fig, axes = plt.subplots(2, min(len(token_strings), 6), figsize=(18, 6))
for idx, token in enumerate(token_strings[:6]):
    for row, (ts, ts_attn) in enumerate(list(timestep_attention.items())[:2]):
        a = ts_attn[layer_key].mean(dim=1)[0]
        a_res = int(a.shape[0] ** 0.5)
        axes[row, idx].imshow(a[:, idx].reshape(a_res, a_res), cmap="hot")
        axes[row, idx].set_title(f"t={ts}: '{token}'")
        axes[row, idx].axis("off")
fig.suptitle("Cross-Attention Maps by Token and Timestep")
fig.tight_layout()
fig.savefig("attention_maps.png", dpi=150)

得:內標(「車」、「屋」)激局空。色標(「紅」、「藍」)激物相疊域。早時(高噪)注散;晚時注銳局。

敗:注皆均→鉤或捕自注非交,驗層名含 attn2(交)非 attn1(自)。捕注而維誤→察出張索符層頭數與空辨。

四:探潛空

以插與向發探潛空構。

  1. 編參圖入潛空:
from diffusers import AutoencoderKL
from PIL import Image
import torchvision.transforms as T

vae = pipe.vae
transform = T.Compose([T.Resize(512), T.CenterCrop(512), T.ToTensor(),
                       T.Normalize([0.5], [0.5])])

def encode_image(image_path):
    img = transform(Image.open(image_path).convert("RGB")).unsqueeze(0).to(device)
    with torch.no_grad():
        latent = vae.encode(img.half()).latent_dist.sample() * vae.config.scaling_factor
    return latent

z1 = encode_image("image_a.png")
z2 = encode_image("image_b.png")
  1. 球面線插(slerp):
def slerp(z1, z2, alpha):
    """Spherical linear interpolation between two latent codes."""
    z1_flat = z1.flatten()
    z2_flat = z2.flatten()
    omega = torch.acos(torch.clamp(
        torch.dot(z1_flat, z2_flat) / (z1_flat.norm() * z2_flat.norm()), -1, 1
    ))
    if omega.abs() < 1e-6:
        return (1 - alpha) * z1 + alpha * z2
    return (torch.sin((1 - alpha) * omega) * z1 + torch.sin(alpha * omega) * z2) / torch.sin(omega)

alphas = torch.linspace(0, 1, 8)
interpolated = [slerp(z1, z2, a.item()) for a in alphas]
decoded = []
for z in interpolated:
    with torch.no_grad():
        img = vae.decode(z / vae.config.scaling_factor).sample
    decoded.append(img.cpu())
  1. 由提對差發語向:
def get_text_embedding(prompt):
    tokens = pipe.tokenizer(prompt, return_tensors="pt", padding="max_length",
                            max_length=77, truncation=True).input_ids.to(device)
    with torch.no_grad():
        emb = pipe.text_encoder(tokens).last_hidden_state
    return emb

pos_emb = get_text_embedding("a happy person smiling")
neg_emb = get_text_embedding("a sad person frowning")
direction = pos_emb - neg_emb  # semantic direction in text embedding space
  1. 察分外潛:
# Compute latent space statistics from a reference set
ref_latents = torch.stack([encode_image(p) for p in reference_paths])
ref_mean = ref_latents.mean(dim=0)
ref_std = ref_latents.std(dim=0)

def ood_score(z):
    """Mahalanobis-like OOD score (higher = more unusual)."""
    deviation = ((z - ref_mean) / (ref_std + 1e-6)).flatten()
    return deviation.norm().item()

test_z = encode_image("test_image.png")
score = ood_score(test_z)
print(f"OOD score: {score:.2f} (reference mean: {np.mean([ood_score(r) for r in ref_latents]):.2f})")

得:插圖滑、語有意、無偽。語向加多樣潛碼致一致屬變。分內 OOD 分聚緊;外者顯高。

敗:插中模或亂→用 slerp 非線插——線插穿高維潛空之低密。語向無見效→增向值或驗文編同訓所用。

  • FID 算於至少 10000 生樣與配真樣
  • CLIP 分用訓所用之 CLIP 模(若可)
  • 噪表視示 alphas_cumprod 單調減
  • log-SNR 跨全時約 +10 至 -10
  • 注意圖於中辨層解標空激
  • 注由早(散)至晚(局)銳
  • 潛插滑、無突跳或偽
  • OOD 察基立於至少 100 參樣

  • FID 於不配辨:真生圖入 Inception 前須同辨。同一調整或 FID 漲
  • 忘 torchmetrics 正規FrechetInceptionDistance(normalize=True) 期 [0,1] 浮張。normalize=False 期 [0,255] uint8。混則無意 FID
  • 鉤自注非交注:U-Net 名 attn1 為自注(圖對圖)。用 attn2 為交(文對圖)。混致無資均圖
  • 高維線插:兩高維高斯間線插穿低密殼。潛空插恆用 slerp
  • 忽 VAE 縮係:SD 潛經編後縮以 vae.config.scaling_factor。忘加減致解圖亂
  • 精召樣太少:每集少於 5000 之精召估不可靠。為穩用至少 10000

  • implement-diffusion-network — 建此技所評之擴散模
  • analyze-diffusion-dynamics — 此察之噪程之數基
  • fit-drift-diffusion-model — 共 SDE 基之他擴散模族

GitHub 仓库

pjt222/agent-almanac
路径: i18n/wenyan-ultra/skills/analyze-generative-diffusion-model
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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