🐛 fix: skip GQA buffer allocation in XAttention offload mode

In offload mode, GQA expansion buffers (_k_expanded, _v_expanded) are not
needed since compute_chunked_prefill() handles GQA inline. Previously,
these buffers were always allocated based on max_model_len, causing OOM
on 24GB GPUs (e.g., RTX 3090) when max_model_len=1M (16GB buffer).

Changes:
- Add enable_cpu_offload parameter to alloc_policy_metadata() in base class
- Skip GQA buffer allocation when enable_cpu_offload=True in XAttentionBSAPolicy
- Pass enable_cpu_offload from model_runner to policy

Memory savings: ~16GB for 1M seq, ~1.1GB for 72K seq

Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
This commit is contained in:
Zijie Tian
2026-02-05 02:57:18 +08:00
parent af4da454ba
commit 11a867f6fb
4 changed files with 59 additions and 7 deletions

View File

@@ -167,3 +167,43 @@ GPULIST=0 ./scripts/run_ruler.sh glm4-9b-xattn-nanovllm synthetic xattn --task n
## 优先级
**High** - 阻塞 9B+ 模型在 24GB 显存 GPU 上使用 XAttention + Offload 模式
---
## 修复状态
**✅ 已修复** (2026-02-05)
### 修复内容
采用方案 1在 offload 模式下跳过 GQA buffer 分配:
1. `nanovllm/kvcache/sparse/policy.py`: 基类添加 `enable_cpu_offload` 参数
2. `nanovllm/kvcache/sparse/xattn_bsa.py`: 实现 offload 模式检查,跳过 GQA buffer
3. `nanovllm/engine/model_runner.py`: 传入 `enable_cpu_offload` 参数
### 验证结果
```bash
# 64K offload 测试
CUDA_VISIBLE_DEVICES=0 PYTHONPATH=/home/zijie/Code/nano-vllm:$PYTHONPATH \
python tests/test_ruler.py \
--model ~/models/Llama-3.1-8B-Instruct \
--data-dir tests/data/ruler_64k \
--datasets niah_single_1 \
--num-samples 1 \
--max-model-len 72000 \
--enable-offload \
--sparse-policy XATTN_BSA
```
- ✅ 日志显示: `[XAttn] Offload mode: skipping GQA expansion buffers`
- ✅ 测试通过: 100% 准确率
- ✅ 内存节省: ~16 GB (for 1M max_seq_len)
### 内存对比
| 配置 | 修复前 | 修复后 |
|------|--------|--------|
| max_model_len=72K | +1.1 GB | 0 GB |
| max_model_len=1M | +16 GB | 0 GB |