implement-diffusion-network
정보
이 스킬은 노이즈 스케줄링, U-Net 아키텍처, 학습/샘플링 루프를 포함한 완전한 생성형 디퓨전 모델(DDPM/점수 기반)을 구현합니다. 이미지/오디오 합성을 위한 맞춤형 디퓨전 모델을 구축하거나, 논문을 구현하거나, 프로덕션 프레임워크로 확장하기 전에 프로토타입을 만들 필요가 있을 때 사용하세요. DDIM 가속화와 같은 핵심 구성 요소를 제공하며, 맞춤형 조건 설정이나 노이즈 스케줄도 지원합니다.
빠른 설치
Claude Code
추천npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/implement-diffusion-networkClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Diffusionsnetzwerk implementieren
Erstellen a denoising diffusion probabilistic model (DDPM) or score-based generative model from scratch, einschliesslich the forward noising process, U-Net denoiser, training objective, reverse sampling procedure, and accelerated inference via DDIM or DPM-Solver.
Wann verwenden
- Building a generative model for image, audio, or molecular synthesis
- Implementing DDPM or score-based diffusion from a research paper
- Adding a custom noise schedule or conditioning mechanism to a diffusion pipeline
- Replacing a GAN-based generator with a diffusion-based alternative
- Prototyping a diffusion model vor scaling to production with frameworks like diffusers
Eingaben
- Erforderlich: Training dataset (images, spectrograms, point clouds, or other continuous data)
- Erforderlich: Target resolution and number of channels
- Erforderlich: Berechnen budget (GPU type and count, training time limit)
- Optional: Noise schedule type (default: cosine)
- Optional: Number of diffusion timesteps T (default: 1000)
- Optional: Conditioning signal (class labels, text embeddings, or other guidance)
- Optional: Sampling acceleration method (default: DDIM with 50 steps)
Vorgehensweise
Schritt 1: Definieren the Forward Verarbeiten (Noise Schedule)
Konfigurieren the variance schedule that controls how data is progressively noised.
- Definieren the beta schedule (linear, cosine, or learned):
import torch
import numpy as np
def cosine_beta_schedule(timesteps, s=0.008):
"""Cosine schedule from Nichol & Dhariwal (2021)."""
steps = timesteps + 1
t = torch.linspace(0, timesteps, steps) / timesteps
alphas_cumprod = torch.cos((t + s) / (1 + s) * np.pi / 2) ** 2
alphas_cumprod = alphas_cumprod / alphas_cumprod[0]
betas = 1 - (alphas_cumprod[1:] / alphas_cumprod[:-1])
return torch.clip(betas, 0.0001, 0.9999)
def linear_beta_schedule(timesteps, beta_start=1e-4, beta_end=0.02):
"""Original DDPM linear schedule."""
return torch.linspace(beta_start, beta_end, timesteps)
- Pre-compute the derived quantities used waehrend training and sampling:
class DiffusionSchedule:
def __init__(self, betas):
self.betas = betas
self.alphas = 1.0 - betas
self.alphas_cumprod = torch.cumprod(self.alphas, dim=0)
self.alphas_cumprod_prev = torch.cat([torch.tensor([1.0]), self.alphas_cumprod[:-1]])
self.sqrt_alphas_cumprod = torch.sqrt(self.alphas_cumprod)
self.sqrt_one_minus_alphas_cumprod = torch.sqrt(1.0 - self.alphas_cumprod)
self.posterior_variance = (
betas * (1.0 - self.alphas_cumprod_prev) / (1.0 - self.alphas_cumprod)
)
- Implementieren the forward noising function (q-sample):
def q_sample(self, x_0, t, noise=None):
"""Add noise to x_0 at timestep t: q(x_t | x_0)."""
if noise is None:
noise = torch.randn_like(x_0)
sqrt_alpha = self.sqrt_alphas_cumprod[t].reshape(-1, 1, 1, 1)
sqrt_one_minus_alpha = self.sqrt_one_minus_alphas_cumprod[t].reshape(-1, 1, 1, 1)
return sqrt_alpha * x_0 + sqrt_one_minus_alpha * noise
- Verifizieren the schedule visually:
schedule = DiffusionSchedule(cosine_beta_schedule(1000))
print(f"alpha_cumprod at t=0: {schedule.alphas_cumprod[0]:.4f}") # ~1.0 (clean)
print(f"alpha_cumprod at t=500: {schedule.alphas_cumprod[500]:.4f}") # ~0.5 (half noise)
print(f"alpha_cumprod at t=999: {schedule.alphas_cumprod[999]:.4f}") # ~0.0 (pure noise)
Erwartet: alphas_cumprod decreases monotonically from near 1.0 to near 0.0. The cosine schedule should decrease more gradually than linear in the middle timesteps.
Bei Fehler: If alphas_cumprod nicht reach near zero at t=T, das Modell will not learn to generate from pure noise. Increase T or adjust the schedule. If values go negative, check the clipping bounds on betas.
Schritt 2: Entwerfen the Denoising Network Architecture
Erstellen a U-Net with time conditioning that predicts noise given a noisy input.
- Definieren the time embedding module:
import torch.nn as nn
import math
class SinusoidalTimeEmbedding(nn.Module):
def __init__(self, dim):
super().__init__()
self.dim = dim
def forward(self, t):
half_dim = self.dim // 2
emb = math.log(10000) / (half_dim - 1)
emb = torch.exp(torch.arange(half_dim, device=t.device) * -emb)
emb = t[:, None].float() * emb[None, :]
return torch.cat([emb.sin(), emb.cos()], dim=-1)
- Definieren a residual block with time conditioning:
class ResBlock(nn.Module):
def __init__(self, in_ch, out_ch, time_dim):
super().__init__()
self.conv1 = nn.Conv2d(in_ch, out_ch, 3, padding=1)
self.conv2 = nn.Conv2d(out_ch, out_ch, 3, padding=1)
self.time_mlp = nn.Linear(time_dim, out_ch)
self.norm1 = nn.GroupNorm(8, out_ch)
self.norm2 = nn.GroupNorm(8, out_ch)
self.skip = nn.Conv2d(in_ch, out_ch, 1) if in_ch != out_ch else nn.Identity()
def forward(self, x, t_emb):
h = self.norm1(torch.nn.functional.silu(self.conv1(x)))
h = h + self.time_mlp(torch.nn.functional.silu(t_emb))[:, :, None, None]
h = self.norm2(torch.nn.functional.silu(self.conv2(h)))
return h + self.skip(x)
- Assemble the U-Net with encoder, bottleneck, and decoder:
class UNet(nn.Module):
def __init__(self, in_channels=3, base_channels=64, channel_mults=(1, 2, 4, 8)):
super().__init__()
time_dim = base_channels * 4
self.time_embed = nn.Sequential(
SinusoidalTimeEmbedding(base_channels),
nn.Linear(base_channels, time_dim),
nn.SiLU(),
nn.Linear(time_dim, time_dim)
)
# Encoder, bottleneck, and decoder built from ResBlocks
# with skip connections between encoder and decoder stages
# (full implementation depends on resolution and channel config)
- Verifizieren the architecture accepts inputs of das Ziel resolution:
model = UNet(in_channels=3, base_channels=64)
x_test = torch.randn(2, 3, 64, 64)
t_test = torch.randint(0, 1000, (2,))
out = model(x_test, t_test)
assert out.shape == x_test.shape, f"Output shape {out.shape} != input shape {x_test.shape}"
print(f"Model parameters: {sum(p.numel() for p in model.parameters()):,}")
Erwartet: The model outputs a tensor with the same shape as die Eingabe (predicting noise of matching dimensions). Parameter count sollte proportional to resolution: ungefaehr 30-60M for 64x64, 100-300M for 256x256.
Bei Fehler: Shape mismatches normalerweise indicate incorrect downsampling/upsampling ratios. Sicherstellen, dass each encoder stage halves spatial dimensions and each decoder stage doubles them. GroupNorm requires channels to be divisible by the group count.
Schritt 3: Implementieren the Training Loop
Trainieren the denoiser to predict the noise added at each timestep.
- Einrichten the training objective (simplified DDPM loss):
def training_loss(model, schedule, x_0):
batch_size = x_0.shape[0]
t = torch.randint(0, len(schedule.betas), (batch_size,), device=x_0.device)
noise = torch.randn_like(x_0)
x_t = schedule.q_sample(x_0, t, noise)
predicted_noise = model(x_t, t)
loss = torch.nn.functional.mse_loss(predicted_noise, noise)
return loss
- Konfigurieren the optimizer and learning rate schedule:
optimizer = torch.optim.AdamW(model.parameters(), lr=1e-4, weight_decay=0.01)
scheduler = torch.optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=100000)
- Ausfuehren the training loop with logging:
from torch.utils.data import DataLoader
dataloader = DataLoader(dataset, batch_size=64, shuffle=True, num_workers=4, pin_memory=True)
for epoch in range(num_epochs):
model.train()
epoch_loss = 0.0
for batch_idx, x_0 in enumerate(dataloader):
x_0 = x_0.to(device)
loss = training_loss(model, schedule, x_0)
optimizer.zero_grad()
loss.backward()
torch.nn.utils.clip_grad_norm_(model.parameters(), 1.0)
optimizer.step()
scheduler.step()
epoch_loss += loss.item()
avg_loss = epoch_loss / len(dataloader)
print(f"Epoch {epoch}: loss={avg_loss:.4f}, lr={scheduler.get_last_lr()[0]:.6f}")
- Speichern checkpoints periodically:
if (epoch + 1) % 10 == 0:
torch.save({
"epoch": epoch,
"model_state": model.state_dict(),
"optimizer_state": optimizer.state_dict(),
"loss": avg_loss
}, f"checkpoint_epoch_{epoch+1}.pt")
Erwartet: Loss decreases steadily over training. For image data normalized to [-1, 1], initial loss sollte near 1.0 (predicting random noise). After convergence, loss sollte in the range 0.01-0.10 abhaengig von data complexity.
Bei Fehler: If loss plateaus early (> 0.5), check: (a) data normalization (muss [-1, 1] or [0, 1] with matching final activation), (b) learning rate (try 3e-4 or 5e-5), (c) gradient clipping (1.0 is standard). If loss is NaN, reduce learning rate and check for division by zero in the schedule.
Schritt 4: Implementieren Sampling (Reverse Process)
Generieren new samples by iteratively denoising from pure Gaussian noise.
- Implementieren the standard DDPM sampling loop:
@torch.no_grad()
def ddpm_sample(model, schedule, shape, device):
"""Sample via the full DDPM reverse process (T steps)."""
x = torch.randn(shape, device=device)
T = len(schedule.betas)
for t in reversed(range(T)):
t_batch = torch.full((shape[0],), t, device=device, dtype=torch.long)
predicted_noise = model(x, t_batch)
alpha = schedule.alphas[t]
alpha_cumprod = schedule.alphas_cumprod[t]
beta = schedule.betas[t]
mean = (1 / torch.sqrt(alpha)) * (
x - (beta / torch.sqrt(1 - alpha_cumprod)) * predicted_noise
)
if t > 0:
noise = torch.randn_like(x)
sigma = torch.sqrt(schedule.posterior_variance[t])
x = mean + sigma * noise
else:
x = mean
return x
- Generieren and visualize samples:
samples = ddpm_sample(model, schedule, shape=(16, 3, 64, 64), device=device)
samples = (samples.clamp(-1, 1) + 1) / 2 # rescale to [0, 1]
Erwartet: Generated samples show recognizable structure (not pure noise or uniform color). At 64x64 resolution with 100K+ training steps, outputs should visually resemble the training distribution.
Bei Fehler: If samples are blurry, train longer or increase model capacity. If samples are noisy, the reverse process may have a bug -- verify that the schedule indexing matches training. If all samples look identical, check for mode collapse (try different random seeds).
Schritt 5: Hinzufuegen Sampling Acceleration
Reduzieren the number of sampling steps using DDIM or DPM-Solver.
- Implementieren DDIM sampling (deterministic, fewer steps):
@torch.no_grad()
def ddim_sample(model, schedule, shape, device, num_steps=50, eta=0.0):
"""DDIM sampling with configurable step count and stochasticity."""
T = len(schedule.betas)
step_indices = torch.linspace(0, T - 1, num_steps, dtype=torch.long)
x = torch.randn(shape, device=device)
for i in reversed(range(len(step_indices))):
t = step_indices[i]
t_batch = torch.full((shape[0],), t, device=device, dtype=torch.long)
predicted_noise = model(x, t_batch)
alpha_t = schedule.alphas_cumprod[t]
alpha_prev = schedule.alphas_cumprod[step_indices[i - 1]] if i > 0 else torch.tensor(1.0)
predicted_x0 = (x - torch.sqrt(1 - alpha_t) * predicted_noise) / torch.sqrt(alpha_t)
predicted_x0 = predicted_x0.clamp(-1, 1)
sigma = eta * torch.sqrt((1 - alpha_prev) / (1 - alpha_t) * (1 - alpha_t / alpha_prev))
direction = torch.sqrt(1 - alpha_prev - sigma**2) * predicted_noise
x = torch.sqrt(alpha_prev) * predicted_x0 + direction
if i > 0 and eta > 0:
x = x + sigma * torch.randn_like(x)
return x
- Vergleichen sample quality across step counts:
for n_steps in [10, 25, 50, 100, 250]:
samples = ddim_sample(model, schedule, shape=(16, 3, 64, 64), device=device, num_steps=n_steps)
print(f"DDIM {n_steps} steps: generated {samples.shape[0]} samples")
# Save grid for visual comparison
- Benchmark sampling speed:
import time
for method, n_steps in [("DDPM", 1000), ("DDIM-50", 50), ("DDIM-25", 25)]:
start = time.time()
_ = ddim_sample(model, schedule, (1, 3, 64, 64), device, num_steps=n_steps if "DDIM" in method else 1000)
elapsed = time.time() - start
print(f"{method}: {elapsed:.2f}s per sample")
Erwartet: DDIM with 50 steps produces samples visually comparable to DDPM with 1000 steps at 20x speed improvement. Quality degrades gracefully down to ungefaehr 20-25 steps.
Bei Fehler: If DDIM samples are worse than DDPM at the same step count, verify the alpha indexing. DDIM uses alphas_cumprod directly, not alphas. If samples at low step counts are very noisy, try eta=0.0 (fully deterministic) first.
Schritt 6: Bewerten Sample Quality
Quantify generation quality using standard metrics.
- Berechnen FID (Frechet Inception Distance):
from torchmetrics.image.fid import FrechetInceptionDistance
fid_metric = FrechetInceptionDistance(feature=2048, normalize=True)
# Add real images
for batch in real_dataloader:
fid_metric.update(batch.to(device), real=True)
# Add generated images
n_generated = 0
while n_generated < 10000:
samples = ddim_sample(model, schedule, (64, 3, 64, 64), device, num_steps=50)
samples = ((samples.clamp(-1, 1) + 1) / 2 * 255).byte()
fid_metric.update(samples, real=False)
n_generated += samples.shape[0]
fid_score = fid_metric.compute()
print(f"FID: {fid_score:.2f}")
- Bewerten sample diversity (check for mode collapse):
# Compute pairwise LPIPS distances among generated samples
from torchmetrics.image.lpip import LearnedPerceptualImagePatchSimilarity
lpips = LearnedPerceptualImagePatchSimilarity(net_type="alex")
n_pairs = 50
diversity_scores = []
for i in range(n_pairs):
s1 = ddim_sample(model, schedule, (1, 3, 64, 64), device, num_steps=50)
s2 = ddim_sample(model, schedule, (1, 3, 64, 64), device, num_steps=50)
score = lpips(s1.clamp(-1, 1), s2.clamp(-1, 1))
diversity_scores.append(score.item())
print(f"Mean pairwise LPIPS: {np.mean(diversity_scores):.4f} (higher = more diverse)")
- Log results:
results = {
"fid": fid_score.item(),
"mean_lpips_diversity": float(np.mean(diversity_scores)),
"sampling_method": "DDIM-50",
"training_epochs": num_epochs,
"model_params": sum(p.numel() for p in model.parameters())
}
print("Evaluation results:", results)
Erwartet: FID unter 50 for a well-trained model on standard benchmarks (CIFAR-10, CelebA). LPIPS diversity ueber 0.4 indicates no mode collapse. State-of-the-art models achieve FID 2-10 on CIFAR-10.
Bei Fehler: High FID (>100) indicates training issues or insufficient epochs. Low diversity (LPIPS < 0.2) suggests mode collapse -- increase model capacity, check data augmentation, or train longer. Berechnen FID on mindestens 10K samples for stable estimates.
Validierung
- Forward process produces pure noise at t=T (visual check and numeric: mean near 0, std near 1)
- U-Net output shape matches input shape for all target resolutions
- Training loss decreases monotonically over the first 1000 steps
- DDPM sampling produces recognizable outputs nach sufficient training
- DDIM with 50 steps produces quality comparable to DDPM with 1000 steps
- FID score is unter 50 on das Ziel dataset (adjust threshold for domain)
- Sample diversity (LPIPS) confirms no mode collapse
- Checkpoints are saved and loadable ohne errors
Haeufige Stolperfallen
- Wrong data normalization: DDPM assumes data in [-1, 1]. If your images are in [0, 255], the loss wird enormous and training will diverge. Normalize vor training and denormalize nach sampling.
- Planen indexing off by one: The forward process uses
alphas_cumprod[t]for the noised sample at step t. Off-by-one errors in sampling (using t+1 or t-1) produce visibly degraded samples. - Forgetting gradient clipping: Without
clip_grad_norm_(1.0), training is unstable for large models. This is besonders critical in the early epochs. - Too few sampling steps for DDIM: Below 20 steps, DDIM quality degrades rapidly. Use mindestens 25 steps for acceptable results; 50 steps for near-DDPM quality.
- Evaluating FID on too few samples: FID estimates are biased with small sample sizes. Use mindestens 10,000 generated images and 10,000 real images for stable FID computation.
- Ignoring EMA: Exponential moving average of model weights erheblich improves sample quality. Use a decay rate of 0.9999 and sample from the EMA model, not the training model.
Verwandte Skills
analyze-diffusion-dynamics- mathematical foundations of the diffusion SDE that DDPM discretizesfit-drift-diffusion-model- a different application of diffusion processes to cognitive modelingsetup-gpu-training- configuring GPU environments for diffusion model trainingcontainerize-application- packaging diffusion inference pipelines in Docker
GitHub 저장소
연관 스킬
content-collections
메타이 스킬은 콘텐츠 콜렉션(Content Collections)을 위한 프로덕션 검증된 설정을 제공합니다. 콘텐츠 콜렉션은 Markdown/MDX 파일을 Zod 검증이 포함된 타입 안전한 데이터 콜렉션으로 변환해주는 TypeScript 최우선 도구입니다. 블로그, 문서 사이트 또는 콘텐츠 중심의 Vite + React 애플리케이션을 구축할 때 타입 안전성과 자동 콘텐츠 검증을 보장하기 위해 사용하세요. Vite 플러그인 구성과 MDX 컴파일부터 배포 최적화 및 스키마 검증에 이르기까지 모든 것을 다룹니다.
polymarket
메타이 스킬은 개발자들이 Polymarket 예측 시장 플랫폼을 활용한 애플리케이션을 구축할 수 있도록 지원하며, 거래 및 시장 데이터를 위한 API 통합 기능을 포함합니다. 또한 WebSocket을 통한 실시간 데이터 스트리밍을 제공하여 실시간 거래와 시장 활동을 모니터링할 수 있습니다. 이를 통해 거래 전략을 구현하거나 실시간 시장 업데이트를 처리하는 도구를 생성하는 데 활용할 수 있습니다.
creating-opencode-plugins
메타이 스킬은 개발자들이 명령어, 파일, LSP 작업 등 25개 이상의 이벤트 유형에 연결되는 OpenCode 플러그인을 만들 수 있도록 돕습니다. JavaScript/TypeScript 모듈을 위한 플러그인 구조, 이벤트 API 명세, 구현 패턴을 제공합니다. OpenCode AI 어시스턴트의 라이프사이클을 사용자 정의 이벤트 기반 로직으로 가로채거나, 모니터링하거나, 확장해야 할 때 사용하세요.
sglang
메타SGLang은 RadixAttention 프리픽스 캐싱을 활용하여 JSON, 정규식, 에이전트 워크플로우를 위한 고속 구조화 생성에 특화된 고성능 LLM 서빙 프레임워크입니다. 특히 반복되는 프리픽스가 있는 작업에서 상당히 빠른 추론 속도를 제공하여 복잡한 구조화 출력 및 다중 턴 대화에 이상적입니다. 제약 디코딩이 필요하거나 광범위한 프리픽스 공유가 있는 애플리케이션을 구축할 때는 vLLM과 같은 대안보다 SGLang을 선택하십시오.
