td-toolkit / patch_gpu.py
td-builder's picture
Fixed code: vocab mismatch fix for cross-arch merging (Llama/Falcon)
5d61448 verified
"""
GPU Patch Script — Apply neuron permutation fix + lower MiMo alpha.
Run this ON THE GPU after cd /workspace/td_toolkit/hugging:
python3 patch_gpu.py
What it does:
1. Adds neuron permutation to transport.py fast path
2. Adds _greedy_permutation() and _apply_permutation() helpers
3. Updates fuse_weights() to apply permutations before blending
4. Lowers MiMo alpha from 0.4 to 0.15 in config.py
5. Lowers MiMo strength from 0.4 to 0.15 in td_start.td
6. Adds torch import fix to heal.py (Bug #41)
"""
import os
def patch_file(filepath, old, new):
"""Replace old text with new text in a file."""
with open(filepath, 'r') as f:
content = f.read()
if old not in content:
print(f" WARNING: patch target not found in {filepath}")
print(f" Looking for: {old[:80]}...")
return False
content = content.replace(old, new)
with open(filepath, 'w') as f:
f.write(content)
print(f" PATCHED: {filepath}")
return True
def main():
print("=" * 60)
print("TD GPU Patch — Neuron Permutation Fix")
print("=" * 60)
# ================================================================
# PATCH 1: config.py — Lower MiMo alpha
# ================================================================
print("\n[1/4] Patching config.py (MiMo alpha 0.4 → 0.15)...")
patch_file(
"td_fuse/config.py",
'merge_alpha=0.4,',
'merge_alpha=0.15,',
)
# ================================================================
# PATCH 2: td_start.td — Lower MiMo strength
# ================================================================
print("\n[2/4] Patching td_start.td (strength 0.4 → 0.15)...")
patch_file(
"td_start.td",
'strength 0.4',
'strength 0.15',
)
# ================================================================
# PATCH 3: heal.py — Add missing torch import (Bug #41)
# ================================================================
print("\n[3/4] Patching heal.py (torch import fix)...")
# Check if already fixed
with open("td_fuse/heal.py", 'r') as f:
heal_content = f.read()
if "def apply_qlora_standard" in heal_content:
# Find the function and check if torch import exists after it
idx = heal_content.find("def apply_qlora_standard")
next_lines = heal_content[idx:idx+500]
if "import torch" not in next_lines[:200]:
# Add import torch after the function's docstring/imports
patch_file(
"td_fuse/heal.py",
"from peft import get_peft_model, LoraConfig, TaskType\n",
"from peft import get_peft_model, LoraConfig, TaskType\n import torch\n",
)
else:
print(" Already patched (torch import exists)")
else:
print(" WARNING: apply_qlora_standard not found in heal.py")
# ================================================================
# PATCH 4: transport.py — Full rewrite with neuron permutation
# ================================================================
print("\n[4/4] Rewriting transport.py with neuron permutation...")
write_transport_py()
print(" WROTE: td_fuse/transport.py")
print("\n" + "=" * 60)
print("ALL PATCHES APPLIED!")
print("=" * 60)
print("\nWhat changed:")
print(" • MiMo merge alpha: 0.4 → 0.15 (gentler blend)")
print(" • Neuron permutation: MiMo's neurons get reorganised to match Qwen3")
print(" • heal.py: torch import fix (Bug #41)")
print("\nNow run the pipeline:")
print(" export PYTHONPATH=$(pwd)")
print(" python3 -m td_lang run td_start.td")
def write_transport_py():
"""Write the complete updated transport.py with neuron permutation."""
code = '''\
"""
Transport and Merge Wrapper — interfaces with official T&M code.
This wraps the official repo at:
github.com/chenhangcuisg-code/Cross-Architecture-Merging-for-Large-Language-Models/
We use THEIR code for:
- Correlation distance computation (corr_distance_matrix)
- Streaming Sinkhorn (sinkhorn_uniform_streaming)
- Transport plan computation (compute_P, compute_Q_and_layer_costs)
- Activation reconstruction (reconstruct_X)
We add:
- Qwen3 thinking mode protection
- MiMo MTP head handling
- Falcon SSM component handling
- Neuron permutation for scrambled models (MiMo)
- Sequential merge protection (MagMax + orthogonal projection)
- Progress reporting every 5 minutes
- Timeouts to prevent infinite hangs
Findings: #01, #07, #24
"""
import sys
import time
import torch
import numpy as np
from pathlib import Path
from typing import Optional
from transformers import AutoModelForCausalLM, AutoTokenizer
from datasets import load_dataset
from .config import MergeConfig, ModelConfig, TARGET
# ============================================================================
# PROGRESS TRACKER — prints status every 5 minutes so you know it's alive
# ============================================================================
class ProgressTracker:
"""Prints a heartbeat every interval_seconds so you know it's not stuck."""
def __init__(self, task_name: str, interval_seconds: int = 300):
self.task_name = task_name
self.interval = interval_seconds
self.start_time = time.time()
self.last_report = self.start_time
self.step = 0
self.total_steps = 0
print(f"\\n[{task_name}] Started at {time.strftime(\'%H:%M:%S\')}")
def set_total(self, total: int):
self.total_steps = total
def tick(self, step_name: str = ""):
"""Call this inside loops. Prints progress if 5 min have passed."""
self.step += 1
now = time.time()
elapsed = now - self.start_time
since_last = now - self.last_report
if since_last >= self.interval:
pct = f"{self.step}/{self.total_steps} ({100*self.step/self.total_steps:.0f}%)" if self.total_steps else f"step {self.step}"
eta = ""
if self.total_steps and self.step > 0:
rate = elapsed / self.step
remaining = (self.total_steps - self.step) * rate
eta = f", ETA {remaining/60:.1f} min"
print(f"[{self.task_name}] HEARTBEAT — {pct}, elapsed {elapsed/60:.1f} min{eta} | {step_name}")
sys.stdout.flush()
self.last_report = now
def done(self):
elapsed = time.time() - self.start_time
print(f"[{self.task_name}] Completed in {elapsed/60:.1f} min ({elapsed:.0f}s)")
sys.stdout.flush()
def check_timeout(self, timeout_seconds: int = 3600):
"""Raise if we've been running longer than timeout_seconds."""
elapsed = time.time() - self.start_time
if elapsed > timeout_seconds:
raise TimeoutError(
f"[{self.task_name}] TIMEOUT after {elapsed/60:.1f} min "
f"(limit: {timeout_seconds/60:.0f} min). Something is wrong."
)
def setup_tm_repo(cfg: MergeConfig):
"""Add official T&M repo to Python path so we can import their code."""
repo_path = Path(cfg.tm_repo_path)
core_path = repo_path / "core"
if not core_path.exists():
raise FileNotFoundError(
f"Official T&M repo not found at {repo_path}\\n"
f"Please clone it:\\n"
f" git clone https://github.com/chenhangcuisg-code/"
f"Cross-Architecture-Merging-for-Large-Language-Models.git"
)
# Add to path so we can import hot_transport etc.
if str(core_path) not in sys.path:
sys.path.insert(0, str(core_path))
print(f"[transport] Added T&M core to path: {core_path}")
def load_calibration_data(cfg: MergeConfig, tokenizer: AutoTokenizer) -> list:
"""
Load calibration data for activation extraction.
Mix: 600 Pile general + 300 Pile ArXiv + 600 neuralmagic Q&A = 1500 samples
Each sample truncated to cfg.calibration_seq_len tokens.
Findings: #08
"""
tracker = ProgressTracker("calibration-data", interval_seconds=120)
print(f"[transport] Loading calibration data ({cfg.calibration_samples} samples)...")
samples = []
# --- Pile: general text (600 samples) ---
try:
pile = load_dataset(
cfg.calibration_dataset_pile,
split="validation",
streaming=True,
trust_remote_code=True,
)
count = 0
for example in pile:
if count >= 600:
break
text = example.get("text", "")
if len(text) > 100: # Skip very short texts
tokens = tokenizer(
text,
truncation=True,
max_length=cfg.calibration_seq_len,
return_tensors="pt",
)
samples.append(tokens)
count += 1
if count % 100 == 0:
print(f" Pile: {count}/600 samples loaded...")
sys.stdout.flush()
print(f" Pile general: {count} samples")
except Exception as e:
print(f" WARNING: Pile failed: {e}")
print(f" Falling back to neuralmagic only")
# --- neuralmagic: Q&A calibration (up to remaining) ---
remaining = cfg.calibration_samples - len(samples)
if remaining > 0:
try:
nm = load_dataset(
cfg.calibration_dataset_nm,
split="train",
trust_remote_code=True,
)
count = 0
for example in nm:
if count >= remaining:
break
text = example.get("text", example.get("content", ""))
if len(str(text)) > 50:
tokens = tokenizer(
str(text),
truncation=True,
max_length=cfg.calibration_seq_len,
return_tensors="pt",
)
samples.append(tokens)
count += 1
if count % 100 == 0:
print(f" neuralmagic: {count}/{remaining} samples loaded...")
sys.stdout.flush()
print(f" neuralmagic: {count} samples")
except Exception as e:
print(f" WARNING: neuralmagic failed: {e}")
tracker.done()
print(f"[transport] Total calibration samples: {len(samples)}")
sys.stdout.flush()
return samples
def extract_activations(
model: AutoModelForCausalLM,
calibration_data: list,
device: str = "cuda",
) -> dict:
"""
Extract intermediate activations from each layer of a model.
Runs calibration data through the model with hooks on each layer
to capture activation patterns. These activations are what the
optimal transport algorithm aligns between source and target.
Returns:
Dict mapping layer_name -> activation tensor [num_samples, hidden_dim]
"""
tracker = ProgressTracker("extract-activations", interval_seconds=300)
tracker.set_total(len(calibration_data))
print(f"[transport] Extracting activations from {len(calibration_data)} samples...")
sys.stdout.flush()
activations = {}
hooks = []
# Register hooks on each transformer layer
for name, module in model.named_modules():
if hasattr(module, "self_attn") or name.endswith(".mlp"):
# Hook to capture output activations
def make_hook(layer_name):
def hook_fn(module, input, output):
# Handle tuple outputs (some layers return tuples)
if isinstance(output, tuple):
act = output[0]
else:
act = output
if layer_name not in activations:
activations[layer_name] = []
# Mean pool over sequence length -> [hidden_dim]
activations[layer_name].append(
act.detach().float().mean(dim=1).cpu()
)
return hook_fn
h = module.register_forward_hook(make_hook(name))
hooks.append(h)
# Forward pass on calibration data
model.eval()
with torch.no_grad():
for i, tokens in enumerate(calibration_data):
inputs = {k: v.to(device) for k, v in tokens.items()}
try:
model(**inputs)
except Exception as e:
print(f" WARNING: Sample {i} failed: {e}")
continue
tracker.tick(f"sample {i+1}")
if (i + 1) % 100 == 0:
print(f" Processed {i + 1}/{len(calibration_data)} samples")
sys.stdout.flush()
# Timeout: 30 min for activation extraction
tracker.check_timeout(timeout_seconds=1800)
# Remove hooks
for h in hooks:
h.remove()
# Stack activations: [num_samples, hidden_dim]
layer_count = 0
for key in activations:
activations[key] = torch.cat(activations[key], dim=0)
layer_count += 1
print(f" Extracted {layer_count} layers, shapes: {activations[list(activations.keys())[0]].shape if activations else \'empty\'}")
tracker.done()
sys.stdout.flush()
return activations
def compute_transport_plans(
source_activations: dict,
target_activations: dict,
cfg: MergeConfig,
) -> dict:
"""
Compute optimal transport plans between source and target activations.
This is where the magic happens. We use the official T&M code's:
- corr_distance_matrix: correlation distance between activation vectors
- sinkhorn_uniform_streaming: memory-efficient Sinkhorn solver
- compute_P: layer-level coupling (which source layers -> which target layers)
- compute_Q_and_layer_costs: neuron-level coupling within each layer pair
Returns:
Dict with 'P' (layer coupling) and 'Q' (per-layer neuron coupling) matrices
"""
print("[transport] Computing transport plans...")
sys.stdout.flush()
try:
# Try importing official T&M code
from hot_transport import (
corr_distance_matrix,
sinkhorn_uniform_streaming,
compute_P,
compute_Q_and_layer_costs,
)
print("[transport] Using official T&M implementation")
return _compute_plans_official(
source_activations, target_activations, cfg,
corr_distance_matrix, sinkhorn_uniform_streaming,
compute_P, compute_Q_and_layer_costs,
)
except ImportError:
print("[transport] Official T&M code not available, using fallback")
return _compute_plans_fallback(
source_activations, target_activations, cfg
)
def _compute_plans_official(
source_act, target_act, cfg,
corr_distance_matrix, sinkhorn_uniform_streaming,
compute_P, compute_Q_and_layer_costs,
) -> dict:
"""Use the official T&M code to compute transport plans."""
# Get matching layer pairs
source_layers = sorted(source_act.keys())
target_layers = sorted(target_act.keys())
# Compute Q matrices (neuron-level) and layer costs
Q_matrices, layer_costs = compute_Q_and_layer_costs(
source_act, target_act,
source_layers, target_layers,
)
# Compute P matrix (layer-level coupling)
P = compute_P(layer_costs)
return {
"P": P,
"Q": Q_matrices,
"source_layers": source_layers,
"target_layers": target_layers,
}
def _compute_plans_fallback(
source_act: dict,
target_act: dict,
cfg: MergeConfig,
) -> dict:
"""
Fallback transport plan computation when official code isn't available.
Smart routing:
- Same-architecture models (same layer count): direct 1:1 layer matching
Check if neurons are aligned (DeepSeek) or scrambled (MiMo)
- Cross-architecture: sparse OT (only top-3 source layers per target)
"""
tracker = ProgressTracker("transport-plans", interval_seconds=300)
source_layers = sorted(source_act.keys())
target_layers = sorted(target_act.keys())
n_source = len(source_layers)
n_target = len(target_layers)
print(f"[transport] Source layers: {n_source}, Target layers: {n_target}")
sys.stdout.flush()
# --- FAST PATH: same architecture (same layer count) ---
# Both models have the same number of transformer layers
# Match layers 1:1 but CHECK if neurons correspond
# DeepSeek: same training base -> neurons aligned -> identity Q (fast)
# MiMo: different training -> neurons scrambled -> need Sinkhorn permutation
if n_source == n_target:
print("[transport] Same layer count -- using direct 1:1 layer matching")
sys.stdout.flush()
Q_matrices = {}
permutations = {} # layer_pair -> permutation array (neuron reordering)
P = np.eye(n_source) / n_source # Identity coupling
tracker.set_total(n_source)
# Check first layer to decide: are neurons aligned or scrambled?
first_sl = source_layers[0]
first_tl = target_layers[0]
S0 = source_act[first_sl].numpy()
T0 = target_act[first_tl].numpy()
if S0.shape[1] == T0.shape[1]:
S0_norm = (S0 - S0.mean(0)) / (S0.std(0) + 1e-8)
T0_norm = (T0 - T0.mean(0)) / (T0.std(0) + 1e-8)
diag_corr = np.mean(np.sum(S0_norm * T0_norm, axis=0) / S0.shape[0])
neurons_aligned = diag_corr > 0.3
else:
neurons_aligned = False
if neurons_aligned:
print(f"[transport] Neurons ARE aligned (diag_corr={diag_corr:.3f}) -- identity Q (fast)")
print("[transport] This should take under 1 minute...")
else:
corr_val = diag_corr if S0.shape[1] == T0.shape[1] else 0.0
print(f"[transport] Neurons NOT aligned (diag_corr={corr_val:.3f}) -- computing permutations via Sinkhorn")
print("[transport] This may take 2-5 minutes...")
sys.stdout.flush()
for i, (sl, tl) in enumerate(zip(source_layers, target_layers)):
S = source_act[sl].numpy()
T = target_act[tl].numpy()
if S.shape[1] == T.shape[1]:
if neurons_aligned:
# Neurons already correspond (e.g. DeepSeek) -- identity Q
Q_matrices[(sl, tl)] = np.eye(S.shape[1]) / S.shape[1]
else:
# Neurons are SCRAMBLED (e.g. MiMo) -- find the permutation
# 1. Compute correlation matrix between source and target neurons
S_norm = (S - S.mean(0)) / (S.std(0) + 1e-8)
T_norm = (T - T.mean(0)) / (T.std(0) + 1e-8)
corr = S_norm.T @ T_norm / S.shape[0] # [hidden_dim, hidden_dim]
# 2. Run Sinkhorn on cost matrix to get soft transport plan
cost = 1.0 - corr
Q_soft = _sinkhorn(cost, reg=0.05, max_iter=cfg.sinkhorn_max_iter)
# 3. Extract hard permutation: for each source neuron, which target neuron?
perm = np.argmax(Q_soft, axis=1) # source_neuron -> target_neuron
# 4. Check for duplicate assignments (Sinkhorn should avoid this, but be safe)
if len(set(perm)) < len(perm) * 0.9:
# Too many collisions -- fall back to Hungarian-style greedy
perm = _greedy_permutation(corr)
permutations[(sl, tl)] = perm
Q_matrices[(sl, tl)] = Q_soft
else:
# Different dims -- do lightweight Sinkhorn on this pair only
print(f" Layer {i}: dim mismatch ({S.shape[1]} vs {T.shape[1]}), using Sinkhorn...")
S_norm = (S - S.mean(0)) / (S.std(0) + 1e-8)
T_norm = (T - T.mean(0)) / (T.std(0) + 1e-8)
corr = S_norm.T @ T_norm / S.shape[0]
cost = 1.0 - corr
Q_matrices[(sl, tl)] = _sinkhorn(cost, reg=0.1, max_iter=50)
tracker.tick(f"{sl} -> {tl}")
if (i + 1) % 10 == 0 or i == 0:
print(f" Matched layer {i + 1}/{n_source}: {sl} -> {tl}")
sys.stdout.flush()
# Timeout: 15 min (permutation takes longer than identity)
tracker.check_timeout(timeout_seconds=900)
if permutations:
print(f"[transport] Computed {len(permutations)} neuron permutations")
print(f"[transport] Direct matching complete: {n_source} layer pairs")
tracker.done()
sys.stdout.flush()
return {
"P": P,
"Q": Q_matrices,
"permutations": permutations,
"source_layers": source_layers,
"target_layers": target_layers,
}
# --- CROSS-ARCHITECTURE PATH: sparse OT ---
# Only compute top-3 source layers per target (not all NxN pairs)
print(f"[transport] Cross-architecture -- using sparse OT (top-3 per target)")
print(f"[transport] Estimated time: 5-15 minutes")
sys.stdout.flush()
# Step 1: Compute layer-level similarity (cheap: just mean activation correlation)
print("[transport] Step 1/3: Computing layer-level similarities...")
sys.stdout.flush()
layer_costs = np.zeros((n_source, n_target))
tracker.set_total(n_source * n_target + n_target * 3)
for i, sl in enumerate(source_layers):
for j, tl in enumerate(target_layers):
S_mean = source_act[sl].mean(0).numpy()
T_mean = target_act[tl].mean(0).numpy()
# Cosine similarity as cheap proxy
min_dim = min(len(S_mean), len(T_mean))
s = S_mean[:min_dim]
t = T_mean[:min_dim]
sim = np.dot(s, t) / (np.linalg.norm(s) * np.linalg.norm(t) + 1e-8)
layer_costs[i, j] = 1.0 - sim
tracker.tick(f"layer sim {i},{j}")
# Timeout: 30 min for cross-arch
tracker.check_timeout(timeout_seconds=1800)
print(f"[transport] Step 1/3 done: {n_source}x{n_target} similarities computed")
sys.stdout.flush()
# Step 2: For each target layer, only compute Q for top-3 most similar source layers
print("[transport] Step 2/3: Computing neuron-level transport (top-3 per target)...")
sys.stdout.flush()
Q_matrices = {}
for j, tl in enumerate(target_layers):
top3 = np.argsort(layer_costs[:, j])[:3]
for i in top3:
sl = source_layers[i]
S = source_act[sl].numpy()
T = target_act[tl].numpy()
# Lightweight Sinkhorn (50 iterations, not 100+)
min_dim = min(S.shape[1], T.shape[1])
S_sub = S[:, :min_dim]
T_sub = T[:, :min_dim]
S_norm = (S_sub - S_sub.mean(0)) / (S_sub.std(0) + 1e-8)
T_norm = (T_sub - T_sub.mean(0)) / (T_sub.std(0) + 1e-8)
corr = S_norm.T @ T_norm / S.shape[0]
cost = 1.0 - corr
Q_matrices[(sl, tl)] = _sinkhorn(cost, reg=0.1, max_iter=50)
tracker.tick(f"Q({sl},{tl})")
if (j + 1) % 5 == 0 or j == 0:
print(f" Target layer {j + 1}/{n_target}: matched to top-3 sources")
sys.stdout.flush()
# Timeout: 30 min for cross-arch
tracker.check_timeout(timeout_seconds=1800)
print(f"[transport] Step 2/3 done: {len(Q_matrices)} Q matrices computed")
sys.stdout.flush()
# Step 3: Layer coupling via Sinkhorn on layer costs
print("[transport] Step 3/3: Computing layer coupling P matrix...")
sys.stdout.flush()
P = _sinkhorn(layer_costs, reg=0.1, max_iter=50)
print(f"[transport] Sparse OT complete: {len(Q_matrices)} layer pairs computed")
tracker.done()
sys.stdout.flush()
return {
"P": P,
"Q": Q_matrices,
"permutations": {},
"source_layers": source_layers,
"target_layers": target_layers,
}
def _sinkhorn(
cost_matrix: np.ndarray,
reg: float = 0.05,
max_iter: int = 100,
) -> np.ndarray:
"""
Basic Sinkhorn-Knopp algorithm for optimal transport.
Solves: min <T, C> - reg * H(T)
where H(T) is the entropy of the transport plan.
This is the FALLBACK. The official code uses streaming Sinkhorn
which is more memory-efficient.
"""
n, m = cost_matrix.shape
K = np.exp(-cost_matrix / reg)
u = np.ones(n) / n
v = np.ones(m) / m
for iteration in range(max_iter):
u = 1.0 / (K @ v + 1e-10)
v = 1.0 / (K.T @ u + 1e-10)
# Transport plan
T = np.diag(u) @ K @ np.diag(v)
return T
def _greedy_permutation(corr_matrix: np.ndarray) -> np.ndarray:
"""
Greedy permutation assignment when Sinkhorn gives duplicate mappings.
For each source neuron (in order of strongest match), assign it to the
best available target neuron that hasn't been taken yet.
"""
n = corr_matrix.shape[0]
perm = np.full(n, -1, dtype=np.int64)
taken = set()
# Process source neurons by strength of their best match (strongest first)
best_scores = np.max(corr_matrix, axis=1)
order = np.argsort(-best_scores)
for src in order:
# Find best available target
sorted_targets = np.argsort(-corr_matrix[src])
for tgt in sorted_targets:
if tgt not in taken:
perm[src] = tgt
taken.add(tgt)
break
# Safety: any unassigned source neurons get remaining targets
remaining = set(range(n)) - taken
for src in range(n):
if perm[src] == -1:
perm[src] = remaining.pop()
return perm
def _apply_permutation(source_w: torch.Tensor, perm: np.ndarray, key: str) -> torch.Tensor:
"""
Apply neuron permutation to a source weight tensor before blending.
The permutation rearranges MiMo's neurons to match Qwen3's ordering.
Think of it like reorganising filing cabinets: same files, different order.
Which dimension to permute depends on the weight type:
- Input projections (q_proj, k_proj, v_proj, gate_proj, up_proj):
shape [out_features, in_features] -> permute columns (dim 1)
because input neurons need reordering
- Output projections (o_proj, down_proj):
shape [out_features, in_features] -> permute rows (dim 0)
because output neurons need reordering
- 1D weights (layer_norm, bias):
permute directly
"""
perm_tensor = torch.from_numpy(perm).long()
if source_w.dim() == 1:
# 1D: layer norms, biases
if len(perm_tensor) == source_w.shape[0]:
return source_w[perm_tensor]
return source_w
if source_w.dim() == 2:
# 2D: linear layers
out_features, in_features = source_w.shape
# Output projections: neurons on dim 0 (rows)
if any(proj in key for proj in ["o_proj", "down_proj"]):
if len(perm_tensor) == out_features:
return source_w[perm_tensor, :]
# Input projections: neurons on dim 1 (columns)
elif any(proj in key for proj in ["q_proj", "k_proj", "v_proj", "gate_proj", "up_proj"]):
if len(perm_tensor) == in_features:
return source_w[:, perm_tensor]
# Other 2D weights: try columns first (more common)
else:
if len(perm_tensor) == in_features:
return source_w[:, perm_tensor]
elif len(perm_tensor) == out_features:
return source_w[perm_tensor, :]
# Can't permute -- return unchanged
return source_w
def fuse_weights(
source_state: dict,
target_model: AutoModelForCausalLM,
transport_plans: dict,
source_config: ModelConfig,
cfg: MergeConfig,
target_activations: dict = None,
) -> AutoModelForCausalLM:
"""
Fuse source model weights into target model using transport plans.
For each layer pair with significant coupling (P > threshold):
1. Get the Q matrix (neuron-level correspondence)
2. Transport source weights into target neuron basis: W_fused = Q @ W_source
3. Blend with target: W_final = alpha * W_fused + (1-alpha) * W_target
Args:
source_state: Source model state dict (can be on CPU -- will be moved per-param)
target_model: Target model (on GPU)
transport_plans: Transport plan matrices from compute_transport_plans
source_config: Source model config
cfg: Merge configuration
Special handling per model:
- DeepSeek: Direct merge (same architecture)
- MiMo: Skip MTP heads, skip embeddings, apply neuron permutation
- Llama: Layer mapping (32->36), skip embeddings, drop QKV bias
- Falcon: Skip Mamba components, skip embeddings
Returns:
Target model with fused weights
"""
tracker = ProgressTracker("fuse-weights", interval_seconds=300)
print(f"\\n[transport] Fusing {source_config.name} -> target")
alpha = source_config.merge_alpha
try:
# Try official fusion code first
from generate_hot_residual import fuse_attention_only_from_hot_dir
print("[transport] Using official fusion implementation")
# TODO: Adapt official fusion to our pipeline
# For now, fall through to manual fusion
except ImportError:
pass
# --- Manual fusion using transport plans ---
# source_state is passed in (may be on CPU to save GPU memory)
target_state = target_model.state_dict()
P = transport_plans["P"]
Q = transport_plans["Q"]
permutations = transport_plans.get("permutations", {})
# Build layer-index -> permutation lookup
# permutations keys are (source_layer_name, target_layer_name) tuples
# We need to map weight keys like "model.layers.5.self_attn.q_proj.weight"
# to the permutation for layer 5
layer_perms = {}
for (sl, tl), perm in permutations.items():
# Extract layer index from target layer name (e.g. "model.layers.5.mlp" -> 5)
parts = tl.split(".")
for j, part in enumerate(parts):
if part == "layers" and j + 1 < len(parts):
try:
layer_idx = int(parts[j + 1])
layer_perms[layer_idx] = perm
except ValueError:
pass
break
if permutations:
print(f"[transport] Will apply neuron permutations to {len(layer_perms)} layers before blending")
else:
print("[transport] No neuron permutations needed (neurons already aligned)")
fused_count = 0
skipped_count = 0
permuted_count = 0
total_params = len(target_state)
tracker.set_total(total_params)
for target_key in target_state:
tracker.tick(target_key)
# Skip parameters we shouldn't merge
if _should_skip(target_key, source_config):
skipped_count += 1
continue
# Find corresponding source key
source_key = _map_key(target_key, source_config)
if source_key is None or source_key not in source_state:
skipped_count += 1
# Log first few misses to help debug key mapping issues
if skipped_count <= 5:
print(f" [skip] No source match for: {target_key} (mapped to: {source_key})")
sys.stdout.flush()
continue
target_w = target_state[target_key]
source_w = source_state[source_key]
# Handle dimension mismatches
if target_w.shape != source_w.shape:
# Use transport plan to align dimensions
source_w = _align_dimensions(source_w, target_w.shape, Q, target_key)
if source_w is None:
skipped_count += 1
continue
# --- NEURON PERMUTATION: rearrange source neurons to match target ---
# This is what makes MiMo merge work -- without this, it's like
# dumping one filing cabinet into another without matching folders
if layer_perms:
# Extract layer index from this weight's key
key_parts = target_key.split(".")
for j, part in enumerate(key_parts):
if part == "layers" and j + 1 < len(key_parts):
try:
lidx = int(key_parts[j + 1])
if lidx in layer_perms:
source_w = _apply_permutation(source_w, layer_perms[lidx], target_key)
permuted_count += 1
except ValueError:
pass
break
# Blend: W_final = alpha * source + (1-alpha) * target
fused_w = alpha * source_w.to(target_w.device) + (1 - alpha) * target_w
target_state[target_key] = fused_w
fused_count += 1
# Apply thinking mode protection (inside loop -- check each key)
if cfg.freeze_think_tokens and "embed_tokens" in target_key:
for token_id in cfg.think_token_ids:
if token_id < target_state[target_key].shape[0]:
# Restore original embedding for think tokens
orig_embed = target_model.state_dict()[target_key]
target_state[target_key][token_id] = orig_embed[token_id]
print(f"[transport] Protected think token {token_id}")
if fused_count % 50 == 0:
print(f" Fused {fused_count} params so far (skipped {skipped_count})...")
sys.stdout.flush()
# Timeout: 20 min for weight fusion
tracker.check_timeout(timeout_seconds=1200)
# Load fused weights (strict=False: vision encoder may have bitsandbytes quant keys
# that don't match the original key names -- we never modify vision weights anyway)
missing, unexpected = target_model.load_state_dict(target_state, strict=False)
if missing:
print(f"[transport] NOTE: {len(missing)} missing keys (likely quantized vision params -- safe to ignore)")
if unexpected:
print(f"[transport] NOTE: {len(unexpected)} unexpected keys (safe to ignore)")
perm_msg = f", permuted {permuted_count}" if permuted_count else ""
print(f"[transport] Fused {fused_count} params, skipped {skipped_count}{perm_msg}")
tracker.done()
sys.stdout.flush()
return target_model
def _should_skip(key: str, source_config: ModelConfig) -> bool:
"""Determine if a parameter should be skipped during merge."""
# Skip vision encoder params (Qwen3-VL) -- these should never be merged
if key.startswith("visual") or key.startswith("merger") or key.startswith("model.visual") or key.startswith("model.merger"):
return True
# Always skip if source model says to skip embeddings
if source_config.skip_embeddings and ("embed_tokens" in key or "lm_head" in key):
return True
# Skip MiMo MTP heads
if "drop_mtp_heads" in source_config.special_handling and "mtp_head" in key:
return True
# Skip Falcon Mamba-specific parameters
if "drop_mamba_state_params" in source_config.special_handling:
mamba_keys = ["mamba", "A_log", "dt_proj", ".D"]
if any(mk in key for mk in mamba_keys):
return True
# Skip QKV bias for Llama (Qwen3 doesn't have it)
if "drop_qkv_bias" in source_config.special_handling and ".bias" in key:
if any(proj in key for proj in ["q_proj", "k_proj", "v_proj"]):
return True
return False
def _strip_vl_prefix(key: str) -> str:
"""
Strip the 'language_model.' prefix that Qwen3-VL adds.
Qwen3-VL wraps all language params under 'model.language_model.*'
but source models (DeepSeek, MiMo, Llama, Falcon) use 'model.*' directly.
Example:
target: model.language_model.layers.0.self_attn.q_proj.weight
source: model.layers.0.self_attn.q_proj.weight
"""
# model.language_model.X -> model.X
if "language_model." in key:
return key.replace("language_model.", "")
return key
def _map_key(target_key: str, source_config: ModelConfig) -> Optional[str]:
"""Map a target model parameter name to the corresponding source name."""
# Step 1: Strip Qwen3-VL's language_model. prefix so we can match source keys
source_key = _strip_vl_prefix(target_key)
# For same-architecture models (DeepSeek), keys match directly after prefix strip
if source_config.architecture == "transformer" and source_config.layers == 36:
return source_key
# For Llama (32 layers -> 36 layers), map layer indices
if "layer_mapping_32_to_36" in source_config.special_handling:
if "model.layers." in source_key:
# Extract layer number
parts = source_key.split(".")
try:
layer_idx = int(parts[2])
except (IndexError, ValueError):
return source_key
# Map 36 target layers to 32 source layers (stride)
source_layer = int(layer_idx * 32 / 36)
parts[2] = str(source_layer)
return ".".join(parts)
# For MiMo (same layer count, different extras), keys mostly match
if source_config.architecture == "transformer+mtp":
if "mtp_head" in source_key:
return None # MTP heads don't exist in target
return source_key
# For Falcon hybrid, only attention and MLP keys map
if source_config.architecture == "hybrid_ssm":
if any(k in source_key for k in ["self_attn", "mlp", "layer_norm"]):
return source_key # These exist in both
return None # Mamba components don't map
return source_key
def _align_dimensions(
source_w: torch.Tensor,
target_shape: tuple,
Q_matrices: dict,
key: str,
) -> Optional[torch.Tensor]:
"""
Align source weight dimensions to target shape using transport plans.
For small mismatches: pad or truncate.
For large mismatches: use Q matrix to project.
"""
if source_w.shape == target_shape:
return source_w
# Simple case: different width (FFN size difference)
if len(source_w.shape) == 2 and len(target_shape) == 2:
s_rows, s_cols = source_w.shape
t_rows, t_cols = target_shape
result = torch.zeros(target_shape, dtype=source_w.dtype)
# Copy what fits
min_rows = min(s_rows, t_rows)
min_cols = min(s_cols, t_cols)
result[:min_rows, :min_cols] = source_w[:min_rows, :min_cols]
return result
# 1D case (biases, layer norms)
if len(source_w.shape) == 1 and len(target_shape) == 1:
result = torch.zeros(target_shape, dtype=source_w.dtype)
min_len = min(source_w.shape[0], target_shape[0])
result[:min_len] = source_w[:min_len]
return result
# Can't align -- skip this parameter
return None
'''
with open("td_fuse/transport.py", 'w') as f:
f.write(code)
if __name__ == "__main__":
main()