reFlow / experiment.py
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import sys
import os
import torch
import torch.nn.functional as F
import tiktoken
import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns
import matplotlib.ticker as ticker
from sklearn.decomposition import PCA
from sklearn.metrics import silhouette_score
from scipy.cluster.hierarchy import linkage, leaves_list
from scipy.spatial.distance import squareform
try:
from adjustText import adjust_text
except ImportError:
print("[WARNING] 未安装 adjustText,PCA图表的文本可能会重叠。建议运行: pip install adjustText")
adjust_text = lambda texts, **kwargs: None
plt.style.use('seaborn-v0_8-whitegrid')
sns.set_context("paper", font_scale=1.2)
def load_setup_and_model():
if len(sys.argv) != 2:
print("[ERROR] 必须指定配置文件!\n用法: python experiment.py <config_file>")
sys.exit(1)
config_file = sys.argv[1]
if not os.path.exists(config_file):
print(f"[ERROR] 找不到配置文件: {config_file}")
sys.exit(1)
print(f"\n[INFO] 正在加载配置: {config_file}")
config_dict = {}
with open(config_file, encoding='utf-8') as f:
exec(f.read(), config_dict)
out_dir = config_dict.get('out_dir', 'out/reflow-1')
model_config = config_dict.get('model_config', 'reflow')
with open(f"models/{model_config}.py", encoding='utf-8') as f:
exec(f.read(), globals())
device = 'cuda' if torch.cuda.is_available() else 'cpu'
report_dir = os.path.join(out_dir, 'audit_reports')
os.makedirs(report_dir, exist_ok=True)
print(f"[INFO] 正在从 {out_dir} 加载 reFlow 模型 (Device: {device})...")
ckpt_path = os.path.join(out_dir, 'ckpt.pt')
if not os.path.exists(ckpt_path):
print(f"[ERROR] 找不到权重文件: {ckpt_path}")
sys.exit(1)
checkpoint = torch.load(ckpt_path, map_location=device, weights_only=False)
model = globals()['GPT'](globals()['GPTConfig'](**checkpoint['model_args']))
state_dict = checkpoint['model']
for k in list(state_dict.keys()):
if k.startswith('_orig_mod.'): state_dict[k[10:]] = state_dict.pop(k)
model.load_state_dict(state_dict)
model.eval().to(device)
enc = tiktoken.get_encoding("gpt2")
return model, enc, device, report_dir
def _embed(model, ids):
"""兼容 wte() 返回值:reflow-topk 返回元组,其他返回单张量"""
result = model.transformer.wte(ids)
return result[0] if isinstance(result, tuple) else result
def _get_vocab_signals(model):
"""获取有效 vocab→signals 权重,topk 版本会应用稀疏化"""
wte = model.transformer.wte
if hasattr(wte, '_apply_sparsity'):
return wte._apply_sparsity(wte.vocab_to_signals.weight.data)
return wte.vocab_to_signals.weight.data
def _forward_through_layers(model, ids):
"""通过所有 transformer 层,返回最终隐藏状态。"""
with torch.no_grad():
x = _embed(model, ids)
freqs_cis = model.freqs_cis[:ids.size(1)]
for block in model.transformer.h:
x = block(x, freqs_cis)
return x
def _get_logits_from_hidden(model, x_norm):
"""从 layer-normed 隐藏状态计算 logits。"""
vocab_matrix = model.transformer.wte.get_dynamic_vocab_matrix()
return F.linear(x_norm, vocab_matrix)
def exp_1_recipe_atlas(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 1] 配方空间图谱 (Recipe Atlas)")
print("="*60)
W_v2s = _get_vocab_signals(model)
real_vocab = 50257
W = W_v2s[:real_vocab]
probe_words = [
"China", "France", "Japan", "Germany", "India", "Russia",
"Paris", "London", "Tokyo", "Berlin", "Beijing", "Rome",
"cat", "dog", "fish", "bird", "horse", "bear", "wolf",
"red", "blue", "green", "black", "white", "yellow",
"happy", "sad", "angry", "love", "fear", "hate", "joy",
"one", "two", "three", "four", "five", "ten", "hundred",
"run", "walk", "think", "eat", "write", "read", "speak",
"big", "small", "hot", "cold", "fast", "slow", "good", "bad",
"king", "queen", "man", "woman", "boy", "girl",
"water", "fire", "earth", "light", "dark", "sun", "moon",
]
probe_ids, probe_labels = [], []
for w in probe_words:
tids = enc.encode(" " + w)
if tids and tids[0] < real_vocab:
probe_ids.append(tids[0])
probe_labels.append(w)
probe_recipes = W[probe_ids]
probe_normed = F.normalize(probe_recipes, dim=1)
sim_matrix = (probe_normed @ probe_normed.t()).cpu().numpy()
sim_matrix_no_diag = sim_matrix.copy()
np.fill_diagonal(sim_matrix_no_diag, 0)
n_probe = len(probe_labels)
pairs = []
for i in range(n_probe):
for j in range(i + 1, n_probe):
pairs.append((sim_matrix_no_diag[i, j], probe_labels[i], probe_labels[j]))
pairs.sort(reverse=True)
print("\n 配方空间最近邻词对 (Top-20):")
print(" " + "-"*50)
for rank, (sim, w1, w2) in enumerate(pairs[:20]):
print(f" #{rank+1:2d} | {w1:>10s}{w2:<10s} | cos={sim:.4f}")
W_normed = F.normalize(W, dim=1)
print("\n 全词表配方近邻 (每词 Top-5):")
print(" " + "-"*60)
nn_table = []
for idx, (tid, label) in enumerate(zip(probe_ids[:20], probe_labels[:20])):
sims = (W_normed[tid] @ W_normed.t())
sims[tid] = -1
top_vals, top_ids = torch.topk(sims, 5)
neighbors = []
for v, nid in zip(top_vals, top_ids):
try:
nw = enc.decode([nid.item()]).strip()
neighbors.append(f"{nw}({v:.3f})")
except Exception:
neighbors.append(f"[{nid.item()}]({v:.3f})")
nn_str = ", ".join(neighbors)
print(f" {label:>10s}{nn_str}")
nn_table.append((label, neighbors))
sig_var = W.var(dim=0).cpu().numpy()
top_var_idx = np.argsort(sig_var)[::-1][:20]
bottom_var_idx = np.argsort(sig_var)[:20]
print(f"\n 信号方差分析:")
print(f" > 最高方差信号 (最具区分力): {top_var_idx[:10].tolist()}")
print(f" > 最低方差信号 (近似常数): {bottom_var_idx[:10].tolist()}")
print(f" > 方差 Gini 系数: {_gini(sig_var):.4f}")
fig = plt.figure(figsize=(20, 14))
gs = fig.add_gridspec(2, 2, height_ratios=[1.2, 1])
ax1 = fig.add_subplot(gs[0, :])
dist_matrix = np.clip(1 - sim_matrix, 0, None)
np.fill_diagonal(dist_matrix, 0)
Z = linkage(squareform(dist_matrix), method='ward')
order = leaves_list(Z)
sim_ordered = sim_matrix[np.ix_(order, order)]
labels_ordered = [probe_labels[i] for i in order]
im = ax1.imshow(sim_ordered, cmap='RdBu_r', vmin=-1, vmax=1, aspect='auto')
ax1.set_xticks(range(n_probe))
ax1.set_xticklabels(labels_ordered, rotation=90, fontsize=7)
ax1.set_yticks(range(n_probe))
ax1.set_yticklabels(labels_ordered, fontsize=7)
plt.colorbar(im, ax=ax1, fraction=0.02)
ax1.set_title("Recipe Cosine Similarity (hierarchical clustering order)", fontsize=12, fontweight='bold')
ax2 = fig.add_subplot(gs[1, 0])
sorted_var = np.sort(sig_var)[::-1]
ax2.bar(range(len(sorted_var)), sorted_var, color='steelblue', alpha=0.7, width=1.0)
ax2.set_title("Signal Variance Across Vocabulary (sorted)", fontsize=11, fontweight='bold')
ax2.set_xlabel("Signal (sorted by variance)")
ax2.set_ylabel("Variance")
ax2.axhline(y=np.mean(sig_var), color='red', linestyle='--', label=f'Mean: {np.mean(sig_var):.4f}')
ax2.legend()
ax3 = fig.add_subplot(gs[1, 1])
ax3.axis('off')
table_data = []
for label, neighbors in nn_table[:15]:
nn_short = ", ".join(n.split("(")[0] for n in neighbors[:4])
table_data.append([label, nn_short])
table = ax3.table(cellText=table_data, colLabels=["Word", "Top-4 Recipe Neighbors"],
loc='center', cellLoc='left')
table.auto_set_font_size(False)
table.set_fontsize(9)
table.scale(1.0, 1.5)
for (row, col), cell in table.get_celld().items():
if row == 0:
cell.set_facecolor('#4472C4')
cell.set_text_props(color='white', fontweight='bold')
elif row % 2 == 0:
cell.set_facecolor('#D9E2F3')
ax3.set_title("Vocabulary Recipe Nearest Neighbors", fontsize=11, fontweight='bold', pad=15)
plt.suptitle("reFlow Recipe Atlas — Signal Recipe Space Structure", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.96])
save_path = os.path.join(report_dir, "recipe_atlas.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f"\n > 图表已保存: {save_path}")
def _gini(arr):
"""计算 Gini 系数,衡量分布不均匀度。0=完全均匀,1=完全集中。"""
arr = np.sort(np.abs(arr))
n = len(arr)
if n == 0 or np.sum(arr) == 0:
return 0.0
index = np.arange(1, n + 1)
return (2 * np.sum(index * arr) / (n * np.sum(arr))) - (n + 1) / n
def exp_2_sparsity_profile(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 2] 信号稀疏性分析 (Sparsity Profile)")
print("="*60)
W_v2s = _get_vocab_signals(model)
real_vocab = 50257
W = W_v2s[:real_vocab]
vocab_size, n_signals = W.shape
is_topk = hasattr(model.transformer.wte, '_apply_sparsity')
if is_topk:
nonzero_mask = W.abs() > 0
active_per_word = nonzero_mask.sum(dim=1).float()
k = int(active_per_word.median().item())
print(f" > 检测到 TopK 稀疏模式,固定 k={k}")
nonzero_vals = W[nonzero_mask].abs().cpu().numpy()
active_per_signal = nonzero_mask.sum(dim=0).cpu().numpy()
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(14, 5))
ax1.hist(nonzero_vals, bins=80, color='teal', alpha=0.7, edgecolor='black')
ax1.set_title(f"Active Signal Amplitude Distribution (k={k})")
ax1.set_xlabel("Absolute Amplitude")
ax1.set_ylabel("Frequency")
ax2.bar(range(n_signals), active_per_signal, color='coral', alpha=0.7, width=1.0)
ax2.set_title("Signal Utilization (# words activating each signal)")
ax2.set_xlabel("Signal Index")
ax2.set_ylabel("# Words")
ax2.axhline(y=np.mean(active_per_signal), color='red', linestyle='--',
label=f'Mean: {np.mean(active_per_signal):.0f}')
ax2.legend()
else:
mean_val = W.abs().mean().item()
std_val = W.abs().std().item()
threshold = mean_val + std_val
active_mask = W.abs() > threshold
active_per_word = active_mask.sum(dim=1).cpu().numpy()
active_per_signal = active_mask.sum(dim=0).cpu().numpy()
print(f" > 活跃阈值: {threshold:.4f} (mean + std)")
print(f" > 平均每词活跃信号: {np.mean(active_per_word):.1f} / {n_signals}")
print(f" > 全局激活率: {active_mask.float().mean().item():.2%}")
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(14, 5))
int_bins = np.arange(active_per_word.min(), active_per_word.max() + 2) - 0.5
ax1.hist(active_per_word, bins=int_bins, color='teal', alpha=0.7, edgecolor='black')
ax1.axvline(x=np.mean(active_per_word), color='red', linestyle='--',
label=f'Mean: {np.mean(active_per_word):.1f}')
ax1.set_title("Per-Word Sparsity (# Active Signals)")
ax1.set_xlabel("Number of Active Signals")
ax1.set_ylabel("Frequency")
ax1.legend()
ax2.bar(range(n_signals), active_per_signal, color='coral', alpha=0.7, width=1.0)
ax2.set_title("Signal Utilization (# words activating each signal)")
ax2.set_xlabel("Signal Index")
ax2.set_ylabel("# Words")
ax2.axhline(y=np.mean(active_per_signal), color='red', linestyle='--',
label=f'Mean: {np.mean(active_per_signal):.0f}')
ax2.legend()
plt.suptitle("reFlow Sparsity Profile", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "sparsity_profile.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
# === 输出论文绘图所需的数据 ===
print("\n" + "="*60)
print(" [论文数据导出] 用于 TikZ/PGFPlots 绘图")
print("="*60)
if is_topk:
active_per_word_np = active_per_word.cpu().numpy()
else:
active_per_word_np = active_per_word
# --- 图1: 每词活跃信号数直方图数据 ---
hist_min = int(active_per_word_np.min())
hist_max = int(active_per_word_np.max())
hist_bins = np.arange(hist_min, hist_max + 2)
hist_counts, hist_edges = np.histogram(active_per_word_np, bins=hist_bins)
print(f"\n [直方图] 每词活跃信号数分布 (bin_start, count):")
print(f" mean={np.mean(active_per_word_np):.1f}, min={hist_min}, max={hist_max}")
print(" ---BEGIN_HISTOGRAM_DATA---")
for i in range(len(hist_counts)):
if hist_counts[i] > 0:
print(f" {int(hist_edges[i])} {hist_counts[i]}")
print(" ---END_HISTOGRAM_DATA---")
# --- 图2: 信号利用率数据(按利用率排序) ---
sorted_utilization = np.sort(active_per_signal)[::-1]
print(f"\n [柱状图] 信号利用率 (按降序排列, signal_rank, n_words):")
print(f" mean={np.mean(active_per_signal):.0f}, min={np.min(active_per_signal)}, max={np.max(active_per_signal)}")
print(" ---BEGIN_UTILIZATION_DATA---")
for i, val in enumerate(sorted_utilization):
print(f" {i} {val}")
print(" ---END_UTILIZATION_DATA---")
def exp_3_basis_geometry(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 3] 信号基底几何结构 (Signal Basis Geometry)")
print("="*60)
W_basis = model.transformer.wte.signal_basis.data.cpu().float()
n_signals, n_embd = W_basis.shape
U, S, Vt = torch.linalg.svd(W_basis, full_matrices=False)
S_np = S.numpy()
s_norm = S_np / S_np.sum()
effective_rank = np.exp(-np.sum(s_norm * np.log(s_norm + 1e-12)))
random_mat = torch.randn_like(W_basis)
_, S_rand, _ = torch.linalg.svd(random_mat, full_matrices=False)
S_rand_np = S_rand.numpy()
s_rand_norm = S_rand_np / S_rand_np.sum()
effective_rank_rand = np.exp(-np.sum(s_rand_norm * np.log(s_rand_norm + 1e-12)))
print(f" > Signal basis shape: ({n_signals}, {n_embd})")
print(f" > Effective rank (learned): {effective_rank:.1f} / {min(n_signals, n_embd)}")
print(f" > Effective rank (random): {effective_rank_rand:.1f} / {min(n_signals, n_embd)}")
show_n = min(64, n_signals)
W_show = W_basis[:show_n]
W_normed = F.normalize(W_show, dim=1)
cos_sim = (W_normed @ W_normed.t()).numpy()
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(15, 6))
ax1.plot(S_np / S_np[0], 'b-', lw=2, label='Learned Basis')
ax1.plot(S_rand_np / S_rand_np[0], 'r--', lw=1.5, label='Random Gaussian')
ax1.set_title(f"Singular Value Spectrum\n(Eff. rank: learned={effective_rank:.0f}, random={effective_rank_rand:.0f})")
ax1.set_xlabel("Component Index")
ax1.set_ylabel("Normalized Singular Value")
ax1.set_yscale('log')
ax1.legend()
ax1.grid(True, alpha=0.3)
im = ax2.imshow(cos_sim, cmap='RdBu_r', vmin=-1, vmax=1, aspect='auto')
ax2.set_title(f"Cosine Similarity (first {show_n} signals)")
ax2.set_xlabel("Signal Index")
ax2.set_ylabel("Signal Index")
plt.colorbar(im, ax=ax2, fraction=0.046)
plt.suptitle("reFlow Signal Basis Geometry", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "basis_geometry.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_4_semantic_galaxy(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 4] 语义星空图 PCA (Semantic Galaxy)")
print("="*60)
W_v2s = _get_vocab_signals(model).cpu().numpy()
real_vocab = 50257
clusters = {
"Countries": ["China", "France", "Germany", "Japan", "India", "Russia"],
"Animals": ["cat", "dog", "fish", "bird", "horse", "bear"],
"Numbers": ["one", "two", "three", "four", "five", "ten"],
"Colors": ["red", "blue", "green", "black", "white", "yellow"],
"Emotions": ["happy", "sad", "angry", "love", "fear", "hate"],
}
recipes, labels, words = [], [], []
for cat, wl in clusters.items():
for w in wl:
tids = enc.encode(" " + w)
if tids and tids[0] < real_vocab:
recipes.append(W_v2s[tids[0]])
labels.append(cat)
words.append(w)
recipes_arr = np.array(recipes)
coords = PCA(n_components=2).fit_transform(recipes_arr)
label_ids = [list(clusters.keys()).index(l) for l in labels]
sil = silhouette_score(recipes_arr, label_ids)
print(f" > Silhouette Score: {sil:.4f}")
plt.figure(figsize=(12, 9))
color_map = dict(zip(clusters.keys(), sns.color_palette("Set2", len(clusters))))
texts = []
for i, w in enumerate(words):
plt.scatter(coords[i, 0], coords[i, 1], color=color_map[labels[i]],
s=150, alpha=0.7, edgecolors='white', linewidths=0.5)
texts.append(plt.text(coords[i, 0], coords[i, 1], w, fontsize=11))
if adjust_text.__name__ != '<lambda>':
adjust_text(texts, arrowprops=dict(arrowstyle="-", color='gray'))
handles = [plt.Line2D([0], [0], marker='o', color='w',
markerfacecolor=color_map[l], markersize=12, label=l) for l in clusters]
plt.legend(handles=handles, title="Clusters", fontsize=10)
plt.title(f"reFlow Semantic Galaxy (PCA)\nSilhouette Score = {sil:.4f}",
fontsize=14, fontweight='bold')
plt.xlabel("PC1")
plt.ylabel("PC2")
save_path = os.path.join(report_dir, "semantic_galaxy.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_5_semantic_algebra(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 5] 语义代数运算 (Semantic Algebra)")
print("="*60)
W_v2s = _get_vocab_signals(model)
W_valid = W_v2s[:50257]
test_cases = [
(["Paris", "China"], ["France"], "Beijing"),
(["king", "woman"], ["man"], "queen"),
(["walked", "running"], ["walking"], "ran"),
]
results = []
for pos_words, neg_words, expected in test_cases:
expr = " + ".join(pos_words) + " - " + " - ".join(neg_words)
target_vec = torch.zeros(model.config.n_signals, device=device)
exclude_ids = set()
for w in pos_words:
tid = enc.encode(" " + w)[0]
target_vec += W_v2s[tid]
exclude_ids.add(tid)
for w in neg_words:
tid = enc.encode(" " + w)[0]
target_vec -= W_v2s[tid]
exclude_ids.add(tid)
sims = F.cosine_similarity(target_vec.unsqueeze(0), W_valid)
for tid in exclude_ids:
sims[tid] = -1.0
top_vals, top_ids = torch.topk(sims, 20)
expected_tid = enc.encode(" " + expected)[0]
expected_rank = -1
hit_words = []
for i in range(len(top_ids)):
try:
w = enc.decode([top_ids[i].item()]).strip()
if len(w) >= 2:
hit_words.append((w, top_vals[i].item()))
if top_ids[i].item() == expected_tid:
expected_rank = i + 1
except Exception:
continue
if expected_rank == -1:
all_sims = sims.clone()
sorted_ids = torch.argsort(all_sims, descending=True)
for rank_i, sid in enumerate(sorted_ids[:500]):
if sid.item() == expected_tid:
expected_rank = rank_i + 1
break
results.append((expr, expected, expected_rank, hit_words[:5]))
print(f"\n {expr} → 期望: '{expected}'")
if expected_rank > 0:
marker = "HIT!" if expected_rank <= 10 else ""
print(f" > '{expected}' 排名: #{expected_rank} {marker}")
else:
print(f" > '{expected}' 未在 top-500 中找到")
print(f" > Top-5: {', '.join(f'{w}({s:.3f})' for w, s in hit_words[:5])}")
fig, ax = plt.subplots(figsize=(14, 4 + len(results)))
ax.axis('off')
table_data = []
for expr, expected, rank, hits in results:
rank_str = f"#{rank}" if rank > 0 else "Not found"
hit_str = ", ".join(w for w, _ in hits[:4])
table_data.append([expr, expected, rank_str, hit_str])
table = ax.table(
cellText=table_data,
colLabels=["Expression", "Expected", "Rank", "Top Hits"],
loc='center', cellLoc='left'
)
table.auto_set_font_size(False)
table.set_fontsize(10)
table.scale(1.0, 1.8)
for (row, col), cell in table.get_celld().items():
if row == 0:
cell.set_facecolor('#4472C4')
cell.set_text_props(color='white', fontweight='bold')
ax.set_title("reFlow Semantic Algebra Results", fontsize=14, fontweight='bold', pad=20)
save_path = os.path.join(report_dir, "semantic_algebra.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f"\n > 图表已保存: {save_path}")
def exp_6_typo_resilience(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 6] 拼写鲁棒性 (Typo Resilience)")
print("="*60)
sent_normal = "The scientist is very intelligent"
sent_typo = "The scientsit is vary intellgent"
sent_diff = "The dog runs in the park"
W_basis = model.transformer.wte.signal_basis.data
def get_deep_signal(text):
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
with torch.no_grad():
x = _forward_through_layers(model, ids)
x_norm = model.transformer.ln_f(x[0, -1, :])
return x_norm @ W_basis.t()
sig_normal = get_deep_signal(sent_normal)
sig_typo = get_deep_signal(sent_typo)
sig_diff = get_deep_signal(sent_diff)
sim_typo = F.cosine_similarity(sig_normal.unsqueeze(0), sig_typo.unsqueeze(0)).item()
sim_diff = F.cosine_similarity(sig_normal.unsqueeze(0), sig_diff.unsqueeze(0)).item()
sim_self = 1.0
print(f" > 正常: '{sent_normal}'")
print(f" > 拼错: '{sent_typo}'")
print(f" > 无关: '{sent_diff}'")
print(f"\n [正常 vs 拼错] 深层语义相似度: \033[93m{sim_typo:.4f}\033[0m")
print(f" [正常 vs 无关] 深层语义相似度: {sim_diff:.4f}")
print(f" > 鲁棒性指标 (差值): {sim_typo - sim_diff:.4f}")
fig, ax = plt.subplots(figsize=(8, 5))
categories = ['Self\n(baseline)', 'Normal vs Typo\n(same meaning)', 'Normal vs Different\n(different meaning)']
values = [sim_self, sim_typo, sim_diff]
colors = ['#2ecc71', '#f39c12', '#e74c3c']
bars = ax.bar(categories, values, color=colors, alpha=0.8, edgecolor='black', width=0.5)
for bar, val in zip(bars, values):
ax.text(bar.get_x() + bar.get_width()/2, bar.get_height() + 0.01,
f'{val:.4f}', ha='center', fontsize=11, fontweight='bold')
ax.set_ylim(0, 1.15)
ax.set_ylabel("Cosine Similarity")
ax.set_title("reFlow Typo Resilience — Deep Signal Similarity", fontsize=13, fontweight='bold')
ax.grid(axis='y', alpha=0.3)
save_path = os.path.join(report_dir, "typo_resilience.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_7_layer_evolution(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 7] 层级概率演化 (Layer Probability Evolution)")
print("="*60)
prompts = [
"The capital of France is",
"The cat sat on the",
"The sun is very",
]
vocab_matrix = model.transformer.wte.get_dynamic_vocab_matrix()
real_vocab = 50257
n_layers = len(model.transformer.h)
fig, axes = plt.subplots(len(prompts), 2, figsize=(18, 5 * len(prompts)),
gridspec_kw={'width_ratios': [1.3, 1]})
if len(prompts) == 1:
axes = axes[np.newaxis, :]
for pi, text in enumerate(prompts):
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
layer_probs = []
layer_entropies = []
with torch.no_grad():
x = _embed(model, ids)
freqs_cis = model.freqs_cis[:ids.size(1)]
for block in model.transformer.h:
x = block(x, freqs_cis)
x_norm = model.transformer.ln_f(x[0, -1, :])
probs = F.softmax(_get_logits_from_hidden(model, x_norm), dim=-1)
layer_probs.append(probs.cpu().numpy())
entropy = -torch.sum(probs * torch.log(probs + 1e-9)).item()
layer_entropies.append(entropy)
final_probs = layer_probs[-1][:real_vocab]
top_idx = np.argsort(final_probs)[-6:]
prob_flow = np.array([[p[i] for i in top_idx] for p in layer_probs])
layers = np.arange(1, n_layers + 1)
ax_prob = axes[pi, 0]
colors = sns.color_palette("husl", len(top_idx))
for i, idx in enumerate(top_idx):
label = repr(enc.decode([idx])).strip("'")
ax_prob.plot(layers, prob_flow[:, i], label=label, lw=2.5, color=colors[i])
ax_prob.set_title(f"Probability Evolution: '{text}'", fontsize=11, fontweight='bold')
ax_prob.set_xlabel("Layer")
ax_prob.set_ylabel("Probability")
ax_prob.yaxis.set_major_formatter(ticker.PercentFormatter(xmax=1.0, decimals=0))
ax_prob.legend(fontsize=8, loc='upper left')
ax_prob.grid(True, alpha=0.3)
ax_ent = axes[pi, 1]
ax_ent.plot(layers, layer_entropies, color='#FF6B35', lw=2.5, marker='o', markersize=3)
ax_ent.set_title(f"Entropy Decay: '{text}'", fontsize=11, fontweight='bold')
ax_ent.set_xlabel("Layer")
ax_ent.set_ylabel("Entropy (nats)")
ax_ent.grid(True, alpha=0.3)
predicted = enc.decode([np.argmax(final_probs)])
print(f" > Prompt: '{text}' → Prediction: '{predicted}' (p={final_probs.max():.2%})")
plt.suptitle("reFlow Layer Probability Evolution", fontsize=15, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.96])
save_path = os.path.join(report_dir, "layer_evolution.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_8_signal_flow(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 8] 信号流追踪 (Signal Flow Tracking)")
print("="*60)
text = "The capital of France is"
W_basis = model.transformer.wte.signal_basis.data
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
n_layers = len(model.transformer.h)
tokens = [repr(enc.decode([t])).strip("'") for t in ids[0].tolist()]
layer_signals_last_token = []
final_layer_all_tokens = None
with torch.no_grad():
x = _embed(model, ids)
freqs_cis = model.freqs_cis[:ids.size(1)]
for li, block in enumerate(model.transformer.h):
x = block(x, freqs_cis)
x_norm = model.transformer.ln_f(x[0])
sigs = (x_norm @ W_basis.t()).cpu().numpy()
layer_signals_last_token.append(sigs[-1])
if li == n_layers - 1:
final_layer_all_tokens = sigs
sig_arr = np.array(layer_signals_last_token)
var_across_layers = np.var(sig_arr, axis=0)
top_layer_sig_idx = np.argsort(var_across_layers)[-15:][::-1]
var_across_tokens = np.var(final_layer_all_tokens, axis=0)
top_time_sig_idx = np.argsort(var_across_tokens)[-20:][::-1]
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(20, 8), gridspec_kw={'width_ratios': [1.2, 1]})
layer_data = sig_arr[:, top_layer_sig_idx].T
sns.heatmap(layer_data, cmap='RdBu_r', center=0, ax=ax1,
xticklabels=np.arange(1, n_layers + 1),
yticklabels=[f"Sig {i}" for i in top_layer_sig_idx])
ax1.set_title("Signal Flow Across Layers (last token)", fontsize=11, fontweight='bold')
ax1.set_xlabel("Layer")
ax1.set_ylabel("Signal (by layer variance)")
time_data = final_layer_all_tokens[:, top_time_sig_idx].T
sns.heatmap(time_data, cmap='mako', ax=ax2,
xticklabels=tokens,
yticklabels=[f"Sig {i}" for i in top_time_sig_idx])
ax2.set_title("Signal Activation Across Tokens (final layer)", fontsize=11, fontweight='bold')
ax2.set_xlabel("Token")
ax2.set_ylabel("Signal (by token variance)")
plt.setp(ax2.get_xticklabels(), rotation=45, ha='right')
plt.suptitle(f"reFlow Signal Flow — '{text}'", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "signal_flow.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_9_causal_ablation(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 9] 因果消融曲线 (Causal Ablation Curve)")
print("="*60)
W_basis = model.transformer.wte.signal_basis.data
W_v2s = _get_vocab_signals(model)
prompts = [
"The capital of France is",
"The cat sat on the",
"The sun is very",
]
ablation_steps = [1, 2, 4, 8, 16, 32, 64, 128]
all_results = []
codebook_info = []
for text in prompts:
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
with torch.no_grad():
x = _forward_through_layers(model, ids)
x_norm = model.transformer.ln_f(x[0, -1, :])
sig_acts = x_norm @ W_basis.t()
logits_base = sig_acts @ W_v2s[:50257].t()
probs_base = F.softmax(logits_base, dim=-1)
pred_id = torch.argmax(probs_base).item()
pred_word = enc.decode([pred_id])
pred_prob = probs_base[pred_id].item()
contribs = sig_acts * W_v2s[pred_id]
sorted_sig_ids = torch.argsort(contribs, descending=True)
result = {'text': text, 'pred': pred_word, 'base_prob': pred_prob,
'steps': [], 'probs': [], 'new_preds': []}
for n_ablate in ablation_steps:
if n_ablate > len(sorted_sig_ids):
break
ablated = sig_acts.clone()
ablated[sorted_sig_ids[:n_ablate]] = 0.0
logits_abl = ablated @ W_v2s[:50257].t()
probs_abl = F.softmax(logits_abl, dim=-1)
new_pred_id = torch.argmax(probs_abl).item()
result['steps'].append(n_ablate)
result['probs'].append(probs_abl[pred_id].item())
result['new_preds'].append(enc.decode([new_pred_id]))
all_results.append(result)
top_sig = sorted_sig_ids[0].item()
col = W_v2s[:50257, top_sig]
top_vals, top_ids = torch.topk(col, 8)
cb_words = []
for tid in top_ids:
try:
cb_words.append(enc.decode([tid.item()]).strip())
except Exception:
cb_words.append(f"[{tid.item()}]")
codebook_info.append((text, top_sig, cb_words))
print(f"\n Prompt: '{text}'")
print(f" > 基线预测: '{pred_word}' (p={pred_prob:.2%})")
print(f" > 关键信号 #{top_sig} codebook: {', '.join(cb_words[:6])}")
for step, prob, new in zip(result['steps'], result['probs'], result['new_preds']):
print(f" 消融 {step:3d} 信号 → p('{pred_word}')={prob:.2%}, 新预测='{new}'")
n_prompts = len(all_results)
fig, axes = plt.subplots(2, n_prompts + 1, figsize=(5.5 * (n_prompts + 1), 9),
gridspec_kw={'width_ratios': [1] * n_prompts + [0.8]})
for i, res in enumerate(all_results):
ax = axes[0][i]
ax.plot(res['steps'], [max(p, 1e-8) for p in res['probs']],
'o-', color='#e74c3c', lw=2.5, markersize=6)
ax.axhline(y=res['base_prob'], color='blue', linestyle='--', alpha=0.5,
label=f"Baseline: {res['base_prob']:.1%}")
ax.set_title(f"'{res['text']}'\nPrediction: '{res['pred']}'", fontsize=10, fontweight='bold')
ax.set_xlabel("# Signals Ablated")
ax.set_ylabel("P(original prediction)")
ax.set_yscale('log')
ax.yaxis.set_major_formatter(ticker.PercentFormatter(xmax=1.0, decimals=2))
ax.set_xscale('log', base=2)
ax.legend(fontsize=8)
ax.grid(True, alpha=0.3)
for i, res in enumerate(all_results):
ax = axes[1][i]
retention = [p / res['base_prob'] * 100 for p in res['probs']]
ax.plot(res['steps'], [max(r, 1e-4) for r in retention],
's-', color='#2ecc71', lw=2.5, markersize=6)
ax.axhline(y=100, color='blue', linestyle='--', alpha=0.5, label="Baseline: 100%")
ax.set_title(f"Retention rate", fontsize=10)
ax.set_xlabel("# Signals Ablated")
ax.set_ylabel("% of baseline probability retained")
ax.set_yscale('log')
ax.set_xscale('log', base=2)
ax.legend(fontsize=8)
ax.grid(True, alpha=0.3)
for row in range(2):
ax_cb = axes[row][-1]
ax_cb.axis('off')
ax_cb = axes[0][-1]
cb_text = "Critical Signal Codebook\n" + "="*30
for text, sig_id, words in codebook_info:
short = text[:25] + "..." if len(text) > 25 else text
cb_text += f"\n\n'{short}'\n Key Sig #{sig_id}:\n {', '.join(words[:6])}"
ax_cb.text(0.05, 0.95, cb_text, transform=ax_cb.transAxes, fontsize=9,
verticalalignment='top', fontfamily='monospace',
bbox=dict(boxstyle='round', facecolor='lightyellow', alpha=0.8))
plt.suptitle("reFlow Causal Ablation Curve", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "ablation_curve.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f"\n > 图表已保存: {save_path}")
def exp_10_emotion_surgery(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 10] 情绪手术 (Emotion Surgery)")
print("="*60)
W_v2s = _get_vocab_signals(model)
W_basis = model.transformer.wte.signal_basis.data
pos_words = ["excellent", "wonderful", "amazing", "great", "good"]
neg_words = ["terrible", "awful", "horrible", "bad", "poor"]
pos_vec = torch.stack([W_v2s[enc.encode(" " + w)[0]] for w in pos_words]).mean(dim=0)
neg_vec = torch.stack([W_v2s[enc.encode(" " + w)[0]] for w in neg_words]).mean(dim=0)
steer_vec = pos_vec - neg_vec
text = "The food was absolutely terrible and the service was "
n_layers = len(model.transformer.h)
scan_layers = list(range(0, n_layers, max(1, n_layers // 6)))
if scan_layers[-1] != n_layers - 1:
scan_layers.append(n_layers - 1)
scan_alphas = [0.0, 1.0, 3.0, 5.0, 8.0, 12.0]
def trace_emotion(intercept_layer=None, alpha=0.0):
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
pos_acts, neg_acts = [], []
with torch.no_grad():
x = _embed(model, ids)
freqs_cis = model.freqs_cis[:ids.size(1)]
for i, block in enumerate(model.transformer.h):
x = block(x, freqs_cis)
sig = model.transformer.ln_f(x[0, -1, :]) @ W_basis.t()
pos_acts.append(torch.dot(sig, pos_vec).item())
neg_acts.append(torch.dot(sig, neg_vec).item())
if intercept_layer is not None and i >= intercept_layer:
x[:, -1, :] += (steer_vec * alpha) @ W_basis
x_norm = model.transformer.ln_f(x[0, -1, :])
probs = F.softmax(_get_logits_from_hidden(model, x_norm), dim=-1)
pred_word = enc.decode([torch.argmax(probs).item()])
return pred_word, pos_acts, neg_acts
word_base, p_base, n_base = trace_emotion()
print(f" > [基线] '{text}' → '{word_base}'")
grid_results = {}
for layer in scan_layers:
for alpha in scan_alphas:
if alpha == 0.0:
grid_results[(layer, alpha)] = word_base
else:
word, _, _ = trace_emotion(intercept_layer=layer, alpha=alpha)
grid_results[(layer, alpha)] = word
if alpha == 5.0:
print(f" > [Layer {layer:2d}, α={alpha}] → '{word}'")
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(16, 6), gridspec_kw={'width_ratios': [1.2, 1]})
layers_x = range(n_layers)
ax1.plot(layers_x, n_base, 'r--', lw=2, label='Negative (base)')
ax1.plot(layers_x, p_base, 'b--', lw=2, label='Positive (base)')
best_layer = scan_layers[len(scan_layers) // 2]
_, p_hack, n_hack = trace_emotion(intercept_layer=best_layer, alpha=5.0)
ax1.plot(layers_x, n_hack, 'r', lw=2.5, label=f'Negative (L{best_layer}, α=5)')
ax1.plot(layers_x, p_hack, 'b', lw=2.5, label=f'Positive (L{best_layer}, α=5)')
ax1.axvline(best_layer, color='green', linestyle=':', lw=2, label=f'Surgery @ Layer {best_layer}')
ax1.set_title("Emotion Signal Flow", fontsize=11, fontweight='bold')
ax1.set_xlabel("Layer")
ax1.set_ylabel("Dot Product with Emotion Vector")
ax1.legend(fontsize=8)
ax1.grid(True, alpha=0.3)
ax2.axis('off')
table_data = []
for layer in scan_layers:
row = [f"L{layer}"]
for alpha in scan_alphas:
row.append(grid_results.get((layer, alpha), "?"))
table_data.append(row)
col_labels = ["Layer"] + [f"α={a}" for a in scan_alphas]
table = ax2.table(cellText=table_data, colLabels=col_labels, loc='center', cellLoc='center')
table.auto_set_font_size(False)
table.set_fontsize(8)
table.scale(1.0, 1.6)
for (row, col), cell in table.get_celld().items():
if row == 0:
cell.set_facecolor('#4472C4')
cell.set_text_props(color='white', fontweight='bold')
ax2.set_title("Intervention Grid (predicted next word)", fontsize=11, fontweight='bold', pad=20)
plt.suptitle(f"reFlow Emotion Surgery\n'{text}'", fontsize=13, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.92])
save_path = os.path.join(report_dir, "emotion_surgery.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_11_concept_inception(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 11] 概念注入 (Concept Inception)")
print("="*60)
W_basis = model.transformer.wte.signal_basis.data
W_v2s = _get_vocab_signals(model)
test_cases = [
("The capital of France is", "London"),
("The cat sat on the", "moon"),
("The sun is very", "cold"),
]
all_curves = []
for text, target in test_cases:
tid = enc.encode(" " + target)[0]
target_recipe = W_v2s[tid]
ids = torch.tensor(enc.encode(text), device=device).unsqueeze(0)
with torch.no_grad():
x = _forward_through_layers(model, ids)
x_norm = model.transformer.ln_f(x[0, -1, :])
base_sig = x_norm @ W_basis.t()
logits_base = base_sig @ W_v2s[:50257].t()
probs_base = F.softmax(logits_base, dim=-1)
orig_word = enc.decode([torch.argmax(probs_base).item()])
orig_prob = probs_base[tid].item()
lo, hi = 0.0, 200.0
critical_alpha = None
probs_hi = F.softmax((base_sig + hi * target_recipe) @ W_v2s[:50257].t(), dim=-1)
if torch.argmax(probs_hi).item() == tid:
for _ in range(20):
mid = (lo + hi) / 2
probs_mid = F.softmax((base_sig + mid * target_recipe) @ W_v2s[:50257].t(), dim=-1)
if torch.argmax(probs_mid).item() == tid:
hi = mid
else:
lo = mid
critical_alpha = hi
alphas = np.linspace(0, min(200, (critical_alpha or 200) * 1.5), 50)
target_probs = []
for a in alphas:
probs = F.softmax((base_sig + a * target_recipe) @ W_v2s[:50257].t(), dim=-1)
target_probs.append(probs[tid].item())
all_curves.append({
'text': text, 'target': target, 'orig': orig_word,
'critical_alpha': critical_alpha, 'alphas': alphas,
'target_probs': target_probs, 'orig_prob': orig_prob
})
if critical_alpha:
print(f" > '{text}' → '{target}': 临界 α={critical_alpha:.1f} (原: '{orig_word}')")
else:
print(f" > '{text}' → '{target}': 在 α≤200 范围内未突破 (原: '{orig_word}')")
fig, axes = plt.subplots(1, len(all_curves), figsize=(6 * len(all_curves), 5))
if len(all_curves) == 1:
axes = [axes]
for i, curve in enumerate(all_curves):
ax = axes[i]
ax.plot(curve['alphas'], curve['target_probs'], 'o-', color='#9b59b6',
lw=2, markersize=3)
if curve['critical_alpha']:
ax.axvline(curve['critical_alpha'], color='red', linestyle='--',
label=f"Critical α={curve['critical_alpha']:.1f}")
ax.axhline(y=curve['orig_prob'], color='gray', linestyle=':', alpha=0.5,
label=f"Baseline P('{curve['target']}')={curve['orig_prob']:.1e}")
ax.set_title(f"'{curve['text']}'\n'{curve['orig']}' → '{curve['target']}'",
fontsize=10, fontweight='bold')
ax.set_xlabel("Steering Strength (α)")
ax.set_ylabel(f"P('{curve['target']}')")
ax.yaxis.set_major_formatter(ticker.PercentFormatter(xmax=1.0, decimals=0))
ax.legend(fontsize=8)
ax.grid(True, alpha=0.3)
plt.suptitle("reFlow Concept Inception — Steering Curves", fontsize=14, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "concept_inception.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(f" > 图表已保存: {save_path}")
def exp_12_genetic_hijack(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 12] 基因库篡改 (Genetic Hijack)")
print("="*60)
W_v2s_eff = _get_vocab_signals(model)
W_v2s_raw = model.transformer.wte.vocab_to_signals.weight.data
pos_words = ["excellent", "perfect", "wonderful", "amazing"]
neg_words = ["terrible", "bad", "disgusting", "awful"]
pos_rec = torch.stack([W_v2s_eff[enc.encode(" " + w)[0]] for w in pos_words]).mean(dim=0)
neg_rec = torch.stack([W_v2s_eff[enc.encode(" " + w)[0]] for w in neg_words]).mean(dim=0)
def gen(prompt, max_tokens=15):
x = torch.tensor(enc.encode(prompt), device=device).unsqueeze(0)
with torch.no_grad():
for _ in range(max_tokens):
idx = x if x.size(1) <= model.config.block_size else x[:, -model.config.block_size:]
logits, _ = model(idx)
probs = F.softmax(logits[:, -1, :], dim=-1)
next_id = torch.argmax(probs, dim=-1).unsqueeze(0)
x = torch.cat((x, next_id), dim=1)
return enc.decode(x[0].tolist())
prompt = "The food was disgusting."
text_control = gen(prompt)
print(f" [对照组] 自然生成:")
print(f" \033[90m{text_control}\033[0m")
orig_W = W_v2s_raw.clone()
alpha = 1.5
print(f" * 注入积极基因, 抹除消极基因 (Alpha={alpha})...")
W_v2s_raw.add_(alpha * pos_rec - alpha * neg_rec)
try:
text_hijacked = gen(prompt)
print(f" [干预组] 篡改后生成:")
print(f" \033[92m{text_hijacked}\033[0m")
finally:
W_v2s_raw.copy_(orig_W)
print(" * 基因库已恢复原状,防止污染后续实验。")
print(f"\n > 实验完成。对照组与干预组的文本对比即为结果。")
def exp_13_task_crystallization_shift(model, enc, device, report_dir):
print("\n" + "="*60)
print(" [实验 13] 任务类型与结晶边界偏移 (Context-Dependent Crystallization)")
print("="*60)
W_basis = model.transformer.wte.signal_basis.data
W_v2s = _get_vocab_signals(model)
n_layers = len(model.transformer.h)
# 严谨的控制变量:短上下文(迅速结晶) vs 长上下文定语(延迟结晶)
# 试图将常识强行扭转到一个荒谬的概念上,测量模型在什么层级彻底拒绝扭转
task_groups = {
"Shallow (Short Context)": [
("The capital of France is", "London"),
("The cat sat on the", "moon"),
("The sky is", "red"),
("Open the door with a", "car")
],
"Deep (Long Context / Clauses)": [
("When the geography teacher asked the students, they answered that the capital of France is", "London"),
("After carefully reviewing all the evidence presented in court, the judge decided that the defendant was", "guilty"),
("When you look outside the window at the beautiful nature, the color of the clear sky is", "red"),
("I was locked out of my house yesterday, and to open the locked door, you need a", "car")
],
"Code (Structured Logic)": [
("def add(a, b): return a +", "None"),
("x = 1 + 2\ny =", "None"),
("for i in range(10):\n print(", "None"),
("if x > 0:\n result =", "None")
]
}
def continuous_steer(prompt, target_tid, base_tid, alpha, intercept_layer):
# 提取方向向量:目标概念 - 原生概念
steer_vec = W_v2s[target_tid] - W_v2s[base_tid]
ids = torch.tensor(enc.encode(prompt), device=device).unsqueeze(0)
with torch.no_grad():
x = _embed(model, ids)
# 如果从第 0 层就开始干预
if intercept_layer == 0:
x[:, -1, :] += (alpha * steer_vec) @ W_basis
freqs_cis = model.freqs_cis[:ids.size(1)]
for i, block in enumerate(model.transformer.h):
x = block(x, freqs_cis)
# 关键修复:从 intercept_layer 开始,随后每一层都持续施加概念挟持
if intercept_layer is not None and i + 1 >= intercept_layer:
x[:, -1, :] += (alpha * steer_vec) @ W_basis
x_norm = model.transformer.ln_f(x[0, -1, :])
logits = _get_logits_from_hidden(model, x_norm)
probs = F.softmax(logits, dim=-1)
pred_id = torch.argmax(logits).item()
return probs[target_tid].item(), enc.decode([pred_id]).strip(), pred_id
results = {"Shallow (Short Context)": [], "Deep (Long Context / Clauses)": [], "Code (Structured Logic)": []}
print(" 开始执行层级连续干预扫描 (Continuous Intervention Sweep)...\n")
for group_name, tasks in task_groups.items():
print(f" [{group_name}]")
for prompt, target in tasks:
target_clean = target.strip()
target_tid = enc.encode(" " + target)[0]
# 1. 获取自然基线预测
_, base_pred, base_tid = continuous_steer(prompt, target_tid, target_tid, 0.0, None)
if base_pred == target_clean:
print(f" [Skip] '{prompt[:20]}...' 自然预测已是 '{target_clean}'。")
continue
# 2. 寻找浅层 (Layer 0) 能够成功扭转的温和临界 Alpha
working_alpha = None
for a in np.arange(2.0, 50.0, 2.0):
_, pred, _ = continuous_steer(prompt, target_tid, base_tid, a, 0)
if pred == target_clean:
working_alpha = a
break
if working_alpha is None:
print(f" [Skip] '{prompt[:20]}...': Alpha在50内无法干预,跳过。")
continue
# 增加 20% 裕量,保证挟持稳定性
final_alpha = working_alpha * 1.2
# 3. 逐层推迟注入时间点,寻找结晶边界
layer_probs = []
c_layer = n_layers
for L in range(n_layers):
p_target, pred, _ = continuous_steer(prompt, target_tid, base_tid, final_alpha, L)
layer_probs.append(p_target)
# 如果从第 L 层开始持续按着方向盘,模型依然跑偏,说明第 L 层时语义已彻底结晶
if pred != target_clean and c_layer == n_layers:
c_layer = L
results[group_name].append({
'prompt': prompt,
'target': target_clean,
'alpha': final_alpha,
'base_pred': base_pred,
'c_layer': c_layer,
'layer_probs': layer_probs
})
short_prompt = prompt[:35] + "..." if len(prompt) > 35 else prompt
print(f" - '{short_prompt}' (原预测: '{base_pred}')")
print(f" -> 持续注入 '{target_clean}' (α={final_alpha:.1f}) | 结晶失效边界: \033[96mLayer {c_layer}\033[0m")
print()
# ================= 绘制图表 =================
fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(16, 6), gridspec_kw={'width_ratios': [2, 1]})
layers_x = np.arange(0, n_layers)
colors = {"Shallow (Short Context)": "#2ecc71", "Deep (Long Context / Clauses)": "#9b59b6", "Code (Structured Logic)": "#e67e22"}
c_layers_shallow = []
c_layers_deep = []
c_layers_code = []
for group_name, res_list in results.items():
color = colors[group_name]
for i, res in enumerate(res_list):
if "Shallow" in group_name:
c_layers_shallow.append(res['c_layer'])
elif "Deep" in group_name:
c_layers_deep.append(res['c_layer'])
elif "Code" in group_name:
c_layers_code.append(res['c_layer'])
label = group_name if i == 0 else "_nolegend_"
ax1.plot(layers_x, res['layer_probs'], color=color, alpha=0.6, lw=2.5, label=label)
c_idx = res['c_layer']
if c_idx < n_layers:
ax1.scatter(c_idx, res['layer_probs'][c_idx], color=color, s=120, marker='X', edgecolors='black', zorder=5)
ax1.set_title("Target Concept Viability vs. Injection Delay", fontsize=12, fontweight='bold')
ax1.set_xlabel("Intervention Start Layer (Later start = Context already crystallized)")
ax1.set_ylabel("Final Probability of Injected Concept")
ax1.yaxis.set_major_formatter(ticker.PercentFormatter(xmax=1.0, decimals=0))
ax1.legend(fontsize=10)
ax1.grid(True, alpha=0.3)
box_data = []
box_labels = []
box_colors_list = []
if c_layers_shallow:
box_data.append(c_layers_shallow)
box_labels.append("Shallow\n(Short)")
box_colors_list.append(colors["Shallow (Short Context)"])
if c_layers_deep:
box_data.append(c_layers_deep)
box_labels.append("Deep\n(Long)")
box_colors_list.append(colors["Deep (Long Context / Clauses)"])
if c_layers_code:
box_data.append(c_layers_code)
box_labels.append("Code\n(Structured)")
box_colors_list.append(colors["Code (Structured Logic)"])
if len(box_data) >= 2:
bplot = ax2.boxplot(box_data, patch_artist=True, widths=0.5)
ax2.set_xticks(range(1, len(box_data) + 1))
ax2.set_xticklabels(box_labels)
for patch, c in zip(bplot['boxes'], box_colors_list):
patch.set_facecolor(c)
patch.set_alpha(0.6)
for idx, (data, c) in enumerate(zip(box_data, box_colors_list)):
ax2.scatter(np.random.normal(idx + 1, 0.05, len(data)), data, color=c, alpha=0.9, s=50)
ax2.set_title("Crystallization Boundary Distribution", fontsize=12, fontweight='bold')
ax2.set_ylabel("Crystallization Layer (Point of No Return)")
ax2.set_ylim(-1, n_layers + 2)
ax2.yaxis.set_major_locator(ticker.MaxNLocator(integer=True))
ax2.grid(True, axis='y', alpha=0.3)
plt.suptitle("reFlow Causal Audit: Context Type Affects Information Crystallization", fontsize=15, fontweight='bold')
plt.tight_layout(rect=[0, 0, 1, 0.95])
save_path = os.path.join(report_dir, "task_crystallization_shift.png")
plt.savefig(save_path, bbox_inches='tight', dpi=200)
plt.close()
print(" ================= 实验结论 =================")
if c_layers_shallow:
avg_shallow = np.mean(c_layers_shallow)
print(f" > 短上下文 (浅层任务) 平均结晶边界: Layer {avg_shallow:.1f}")
if c_layers_deep:
avg_deep = np.mean(c_layers_deep)
print(f" > 长上下文 (深层任务) 平均结晶边界: Layer {avg_deep:.1f}")
if c_layers_code:
avg_code = np.mean(c_layers_code)
print(f" > 代码 (结构化逻辑) 平均结晶边界: Layer {avg_code:.1f}")
if c_layers_shallow and c_layers_deep:
print(f" > 短→长 边界延迟量: \033[93m{np.mean(c_layers_deep) - np.mean(c_layers_shallow):+.1f} Layers\033[0m")
if c_layers_shallow and c_layers_code:
print(f" > 短→代码 边界延迟量: \033[93m{np.mean(c_layers_code) - np.mean(c_layers_shallow):+.1f} Layers\033[0m")
print(f" > 实验表明:不同任务类型的上下文复杂度影响模型内部表征的结晶边界,")
print(f" 更复杂的上下文倾向于在更深层级保持内部表征的流动性。")
print(f" > 图表已保存: {save_path}")
def main_menu():
model, enc, device, report_dir = load_setup_and_model()
experiments = {
'1': ("配方空间图谱 (Recipe Atlas)", exp_1_recipe_atlas),
'2': ("信号稀疏性分析 (Sparsity Profile)", exp_2_sparsity_profile),
'3': ("信号基底几何 (Basis Geometry)", exp_3_basis_geometry),
'4': ("语义星空图 PCA (Semantic Galaxy)", exp_4_semantic_galaxy),
'5': ("语义代数运算 (Semantic Algebra)", exp_5_semantic_algebra),
'6': ("拼写鲁棒性 (Typo Resilience)", exp_6_typo_resilience),
'7': ("层级概率演化 (Layer Evolution)", exp_7_layer_evolution),
'8': ("信号流追踪 (Signal Flow)", exp_8_signal_flow),
'9': ("因果消融曲线 (Causal Ablation)", exp_9_causal_ablation),
'10': ("情绪手术 (Emotion Surgery)", exp_10_emotion_surgery),
'11': ("概念注入 (Concept Inception)", exp_11_concept_inception),
'12': ("基因库篡改 (Genetic Hijack)", exp_12_genetic_hijack),
'13': ("任务结晶边界偏移 (Task Shift)", exp_13_task_crystallization_shift),
}
while True:
print("\n" + "#"*60)
print(" reFlow 可解释性实验套件 (Interpretability Suite)".center(56))
print("#"*60)
for k, v in experiments.items():
print(f" [{k.rjust(2)}] {v[0]}")
print(" [all] 运行所有实验")
print(" [ q ] 退出系统")
print("#"*60)
choice = input("请输入要运行的实验编号 (空格分隔, 如 '1 3 5'): ").strip().lower()
if choice == 'q' or choice == 'quit':
print("退出系统。")
break
selected_keys = list(experiments.keys()) if choice == 'all' else choice.split()
for k in selected_keys:
if k in experiments:
func = experiments[k][1]
try:
func(model, enc, device, report_dir)
except Exception as e:
print(f"\n [ERROR] 实验 {k} 运行失败: {e}")
import traceback
traceback.print_exc()
else:
print(f"[忽略] 无效的选项: {k}")
if selected_keys:
print(f"\n[INFO] 当前批次实验已完成。图表报告保存在: {report_dir}")
if __name__ == "__main__":
main_menu()