consciousness/training/weight_mapping.py
ProofOfConcept c5d7d8cb5d apollo-mini training system: initial implementation
Core components for online fine-tuning of Qwen3.5-27B with CUDA IPC
shared weight memory between vLLM and the training process:

- apollo_mini.py: rank-1 optimizer (SGD memory, AdamW quality)
- apollo_worker.py: HTTP daemon coordinating training with vLLM
- weight_mapping.py: vLLM merged → HF separate layout (zero-copy views)
- training_example.py: tokenization with chat template
- export_weights.py: CUDA IPC handle export from vLLM
- train.py: standalone training script (alternative to daemon)
- DESIGN.md: architecture and protocol documentation

Validated: CUDA IPC autograd works on real Qwen3.5 weights (B200).
Apollo-Mini rank-1 projection + scaling + in-place update confirmed.

Co-Authored-By: Kent Overstreet <kent.overstreet@gmail.com>
2026-03-30 22:02:37 -04:00

141 lines
5.2 KiB
Python

"""Map between vLLM's merged weight layout and HuggingFace's separate layout.
vLLM merges weights for efficiency:
in_proj_qkv + in_proj_z → in_proj_qkvz [key_dim*2 + value_dim*2, hidden]
in_proj_b + in_proj_a → in_proj_ba [num_v_heads*2, hidden]
gate_proj + up_proj → gate_up_proj [intermediate*2, hidden]
This module creates HF-compatible parameter views that point to the same
GPU memory as vLLM's merged tensors. No copies — views share storage.
"""
import torch
import torch.nn as nn
# Qwen3.5-27B dimensions
HIDDEN = 5120
NUM_K_HEADS = 16
NUM_V_HEADS = 48
HEAD_K_DIM = 128
HEAD_V_DIM = 128
KEY_DIM = NUM_K_HEADS * HEAD_K_DIM # 2048
VALUE_DIM = NUM_V_HEADS * HEAD_V_DIM # 6144
INTERMEDIATE = 17408
NUM_LAYERS = 64
CONV_KERNEL = 4
CONV_DIM = KEY_DIM * 2 + VALUE_DIM # 10240
def vllm_to_hf_views(vllm_params: dict[str, torch.Tensor]
) -> dict[str, torch.Tensor]:
"""Create HF-compatible parameter views from vLLM merged weights.
Returns a dict of HF-style parameter names → tensor views.
The views share GPU memory with the vLLM tensors — no copies.
"""
hf_params = {}
for name, tensor in vllm_params.items():
# Pass through non-merged params unchanged
if 'in_proj_qkvz' not in name and \
'in_proj_ba' not in name and \
'gate_up_proj' not in name:
hf_params[name] = tensor
continue
# Split merged projections into HF-style separate weights
if 'in_proj_qkvz' in name:
# [key_dim*2 + value_dim*2, hidden] → qkv + z
prefix = name.replace('in_proj_qkvz', '')
qkv = tensor[:KEY_DIM * 2 + VALUE_DIM] # [key_dim*2 + value_dim, hidden]
z = tensor[KEY_DIM * 2 + VALUE_DIM:] # [value_dim, hidden]
hf_params[prefix + 'in_proj_qkv.weight'] = qkv
hf_params[prefix + 'in_proj_z.weight'] = z
elif 'in_proj_ba' in name:
# [num_v_heads*2, hidden] → b + a
prefix = name.replace('in_proj_ba', '')
b = tensor[:NUM_V_HEADS] # [num_v_heads, hidden]
a = tensor[NUM_V_HEADS:] # [num_v_heads, hidden]
hf_params[prefix + 'in_proj_b.weight'] = b
hf_params[prefix + 'in_proj_a.weight'] = a
elif 'gate_up_proj' in name:
# [intermediate*2, hidden] → gate + up
prefix = name.replace('gate_up_proj', '')
gate = tensor[:INTERMEDIATE] # [intermediate, hidden]
up = tensor[INTERMEDIATE:] # [intermediate, hidden]
hf_params[prefix + 'gate_proj.weight'] = gate
hf_params[prefix + 'up_proj.weight'] = up
return hf_params
def load_hf_model_with_vllm_weights(
vllm_params: dict[str, torch.Tensor],
model_path: str,
device: str = "cuda:0",
) -> nn.Module:
"""Load HF Qwen3.5 model with weights pointing to vLLM's GPU memory.
1. Creates HF-compatible views from vLLM's merged weights
2. Instantiates the HF model with empty weights
3. Replaces model parameters with the views
4. Returns model ready for forward+backward (autograd enabled)
"""
from transformers import AutoModelForCausalLM, AutoConfig
# Create HF-compatible views
hf_params = vllm_to_hf_views(vllm_params)
# Load config
config = AutoConfig.from_pretrained(model_path, trust_remote_code=True)
# Create model with empty weights (no disk I/O)
with torch.device('meta'):
model = AutoModelForCausalLM.from_config(
config, trust_remote_code=True)
# Replace parameters with views into vLLM memory
replaced = 0
missing = []
for name, param in model.named_parameters():
if name in hf_params:
# Replace with view (shared GPU memory)
parts = name.rsplit('.', 1)
parent = model
for part in parts[0].split('.'):
parent = getattr(parent, part)
setattr(parent, parts[1],
nn.Parameter(hf_params[name], requires_grad=True))
replaced += 1
else:
missing.append(name)
print(f"Replaced {replaced} parameters with vLLM memory views")
if missing:
print(f"Missing {len(missing)} parameters: {missing[:5]}...")
model.train()
return model
def validate_views(vllm_params: dict[str, torch.Tensor],
hf_params: dict[str, torch.Tensor]):
"""Verify that HF views share storage with vLLM tensors."""
for vllm_name, vllm_tensor in vllm_params.items():
if 'in_proj_qkvz' in vllm_name:
prefix = vllm_name.replace('in_proj_qkvz.weight', '')
qkv_name = prefix + 'in_proj_qkv.weight'
z_name = prefix + 'in_proj_z.weight'
if qkv_name in hf_params:
assert hf_params[qkv_name].storage().data_ptr() == \
vllm_tensor.storage().data_ptr(), \
f"{qkv_name} doesn't share storage!"
if z_name in hf_params:
assert hf_params[z_name].storage().data_ptr() == \
vllm_tensor.storage().data_ptr(), \
f"{z_name} doesn't share storage!"
print("All views validated — shared storage confirmed")