360 lines
11 KiB
Markdown
360 lines
11 KiB
Markdown
# Task Plan: nanovllm CPU Offload 多请求状态污染问题
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## 问题概述
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**重要说明**: nanovllm offload 模式目前**不支持 batch**,只能单个 request 顺序执行。问题出在**请求切换**时的状态清理。
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| 模式 | 测试方式 | 准确率 |
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|------|----------|--------|
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| CPU Offload | 独立进程 (每请求一个进程) | **100%** |
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| CPU Offload | 同进程顺序多请求 | 66% |
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| Non-Offload | 同进程顺序多请求 | 100% |
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**结论**: 单请求推理正确,问题在于**请求切换**时状态清理不完整。
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---
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## Phase 1: 代码分析 (complete)
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### 1.1 识别状态管理组件
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**已分析的关键组件**:
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| 组件 | 文件 | 状态数据 |
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|------|------|----------|
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| `OffloadEngine` | `nanovllm/kvcache/offload_engine.py` | ring buffer, decode buffer, CUDA events |
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| `HybridKVCacheManager` | `nanovllm/kvcache/hybrid_manager.py` | logical blocks, prefilled_blocks, _decode_start_pos, _prefill_len |
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| `LLMEngine` | `nanovllm/engine/llm_engine.py` | generate() 循环,请求生命周期 |
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| `Scheduler` | `nanovllm/engine/scheduler.py` | postprocess() 调用 deallocate() |
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### 1.2 请求生命周期分析
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```
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generate()
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→ 多个请求添加到 scheduler
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→ while not finished:
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→ schedule() 获取下一批 seqs
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→ model_runner.run() 执行推理
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→ postprocess() 处理完成的请求
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→ 如果完成: kvcache_manager.deallocate(seq)
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```
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---
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## Phase 2: 根本原因分析 (complete)
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### 2.1 核心问题: OffloadEngine 缺少 reset() 方法
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**关键发现**: `OffloadEngine` 没有任何重置/清理方法!
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当请求完成时,`HybridKVCacheManager.deallocate()` 被调用,但它只清理:
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- 逻辑块状态 (`block.reset()`)
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- 物理块引用 (`free_cpu_blocks`, `cpu_block_to_logical`)
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- prefilled_blocks 集合
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- _decode_start_pos / _prefill_len 字典
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**未被清理的状态** (存在于 OffloadEngine):
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| 状态 | Shape | 问题 |
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|------|-------|------|
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| `layer_k_cache` | [num_buffers, max_seq_len, kv_heads, head_dim] | 包含旧请求的 KV |
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| `layer_v_cache` | [num_buffers, max_seq_len, kv_heads, head_dim] | 包含旧请求的 KV |
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| `decode_k_buffer` | [num_layers, block_size, kv_heads, head_dim] | 包含旧请求的 decode KV |
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| `decode_v_buffer` | [num_layers, block_size, kv_heads, head_dim] | 包含旧请求的 decode KV |
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### 2.2 具体污染场景
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在 `run_layerwise_offload_decode()` (model_runner.py:867-1057):
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```python
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# 第 969-976 行: 读取之前的 decode KV
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if num_prev_decode_tokens > 0:
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k_decode_prev, v_decode_prev = offload_engine.get_decode_kv(
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layer_id, decode_start_pos, pos_in_block
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)
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ring_k[...].copy_(k_decode_prev) # 可能读取旧请求的数据!
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```
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**场景**:
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1. 请求 A (32K tokens) 完成,decode_buffer 保留其 KV 数据
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2. 请求 B 开始,其 `decode_start_pos` 可能非零(如果继承了旧状态)
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3. 请求 B 在第一个 decode step 时错误地读取了请求 A 的 decode buffer 数据
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### 2.3 潜在问题点
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1. **decode_start_pos 计算错误**:
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- `get_decode_start_pos()` 使用 `id(seq)` 作为 key
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- Python 对象 ID 可能在请求之间重用
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- 如果新 seq 对象的 ID 与旧 seq 相同,可能错误继承旧的 start_pos
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2. **decode buffer 残留数据**:
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- 如果 `pos_in_block` 在新请求中与旧请求重叠
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- `get_decode_kv()` 会返回旧请求的数据
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3. **ring buffer 残留数据**:
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- 虽然每次 decode 会从 CPU 加载,但 decode buffer 的数据会被复制过来
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- 如果 decode buffer 有残留,会污染 ring buffer
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---
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## Phase 3: Debug 方案设计 (complete)
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### 3.1 确认的根本原因
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通过代码分析,确认了两个根本原因:
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**根本原因 1 (主要)**: `deallocate()` 不调用 `clear_decode_tracking()`
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- 位置: `hybrid_manager.py:218-244`
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- 影响: `_decode_start_pos` 和 `_prefill_len` 字典残留
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- 后果: 如果 `id(seq)` 重用,返回错误的 decode 配置
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**根本原因 2 (次要)**: decode_buffer 不清理
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- 位置: `offload_engine.py`
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- 影响: `decode_k_buffer/v_buffer` 保留旧 KV
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- 后果: 可能被根本原因 1 触发读取
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### 3.2 Debug 方案 A: 验证字典残留 (推荐先做)
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**目标**: 验证 `_decode_start_pos` 字典是否有残留
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**诊断代码** (添加到 `hybrid_manager.py`):
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```python
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# 在 get_decode_start_pos() 开头添加
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def get_decode_start_pos(self, seq: Sequence) -> int:
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seq_id = id(seq)
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# DEBUG: 检查是否命中旧值
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if seq_id in self._decode_start_pos:
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logger.warning(f"[DEBUG] get_decode_start_pos: CACHE HIT! seq_id={seq_id}, "
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f"cached_value={self._decode_start_pos[seq_id]}, "
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f"expected={(len(seq) - 1) % self._block_size}")
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# ... 原有逻辑
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```
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**诊断代码** (添加到 `deallocate()` 末尾):
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```python
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def deallocate(self, seq: Sequence) -> None:
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# ... 现有逻辑 ...
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# DEBUG: 打印未清理的状态
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seq_id = id(seq)
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if seq_id in self._decode_start_pos:
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logger.warning(f"[DEBUG] deallocate: _decode_start_pos NOT CLEARED! "
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f"seq_id={seq_id}, value={self._decode_start_pos[seq_id]}")
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```
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### 3.3 Debug 方案 B: 最小复现测试
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**文件**: `tests/test_multi_request_offload_debug.py`
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```python
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"""最小复现批量模式失败"""
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import os
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import sys
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sys.path.insert(0, os.getcwd())
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from nanovllm import LLM
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from nanovllm.sampling import SamplingParams
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# 使用 RULER NIAH 的两个样本
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PROMPTS = [
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# Sample 0 (通常成功)
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"...", # 从 niah_single_1_32k.jsonl 加载
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# Sample 1 (通常失败)
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"...",
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]
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EXPECTED = ["8930103", "4194548"]
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def main():
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llm = LLM(
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"~/models/Llama-3.1-8B-Instruct",
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max_model_len=33792,
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max_num_batched_tokens=33792,
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enable_cpu_offload=True,
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num_gpu_blocks=4,
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kvcache_block_size=1024,
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enforce_eager=True,
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)
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params = SamplingParams(temperature=0.1, max_tokens=50)
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# 连续处理两个请求
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for i, (prompt, expected) in enumerate(zip(PROMPTS, EXPECTED)):
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print(f"\n{'='*60}")
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print(f"Sample {i}: Expected = {expected}")
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# 打印关键状态
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kvm = llm.model_runner.kvcache_manager
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print(f" _decode_start_pos 字典大小: {len(kvm._decode_start_pos)}")
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print(f" _prefill_len 字典大小: {len(kvm._prefill_len)}")
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outputs = llm.generate([prompt], params, use_tqdm=False)
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output_text = outputs[0]["text"]
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passed = expected in output_text
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print(f" Output: {output_text[:100]}...")
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print(f" Status: {'PASS' if passed else 'FAIL'}")
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if __name__ == "__main__":
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main()
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```
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### 3.4 Debug 方案 C: 快速修复验证
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**目标**: 验证修复 `deallocate()` 是否解决问题
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**修改** (`hybrid_manager.py:218-244`):
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```python
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def deallocate(self, seq: Sequence) -> None:
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"""Release all blocks for a sequence."""
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for logical_id in reversed(seq.block_table):
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# ... 现有逻辑 ...
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seq.num_cached_tokens = 0
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seq.block_table.clear()
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# === 新增: 清理 decode tracking ===
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self.clear_decode_tracking(seq)
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```
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**验证命令**:
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```bash
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CUDA_VISIBLE_DEVICES=0 PYTHONPATH=.:$PYTHONPATH python tests/test_ruler_niah.py \
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--model ~/models/Llama-3.1-8B-Instruct \
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--enable-offload \
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--sample-indices 0,1,2,3,4 \
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--verbose
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```
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### 3.5 Debug 方案 D: 添加 OffloadEngine 清理 (防御性)
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**目标**: 进一步隔离请求状态
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**添加方法** (`offload_engine.py`):
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```python
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def on_sequence_finished(self):
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"""清理请求完成后的状态"""
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# 清零 decode buffer (防止残留数据被读取)
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self.decode_k_buffer.zero_()
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self.decode_v_buffer.zero_()
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logger.debug("OffloadEngine: decode buffer cleared")
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```
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**调用点** (`hybrid_manager.py:deallocate` 末尾):
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```python
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# 清理 OffloadEngine 状态
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if self.offload_engine is not None:
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self.offload_engine.on_sequence_finished()
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```
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---
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## Phase 4: 实施计划 (pending)
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### 推荐执行顺序
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1. **Step 4.1**: 实施修复
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- 修改 `hybrid_manager.py:deallocate()` 添加 `clear_decode_tracking(seq)`
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2. **Step 4.2**: 快速验证 (20 样本连续执行)
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- **一次调用** `test_ruler_niah.py`,连续执行 20 个样本
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- **不重启框架**,验证请求切换是否正确
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- 目标: 20/20 全部通过
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3. **Step 4.3**: 完整验证 (100 样本)
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- 运行 100 个样本的 RULER NIAH 测试
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- 目标: 100/100 全部通过 (准确率从 66% → 100%)
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4. **Step 4.4**: 防御性修复 (可选)
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- 添加 `OffloadEngine.on_sequence_finished()` 方法
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- 清零 decode buffer 作为额外保险
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### 具体修改
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**文件 1**: `nanovllm/kvcache/hybrid_manager.py`
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位置: `deallocate()` 方法末尾 (第 244 行后)
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```python
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def deallocate(self, seq: Sequence) -> None:
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"""Release all blocks for a sequence."""
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for logical_id in reversed(seq.block_table):
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# ... 现有逻辑 (218-242 行) ...
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seq.num_cached_tokens = 0
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seq.block_table.clear()
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# ============ 新增: 清理 decode tracking ============
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self.clear_decode_tracking(seq)
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```
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**文件 2** (可选): `nanovllm/kvcache/offload_engine.py`
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位置: 在类末尾添加新方法
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```python
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def on_sequence_finished(self):
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"""清理请求完成后的状态 (防御性清理)"""
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self.decode_k_buffer.zero_()
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self.decode_v_buffer.zero_()
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```
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---
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## 关键文件清单
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| 文件 | 相关行号 | 说明 |
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|------|----------|------|
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| `nanovllm/kvcache/hybrid_manager.py` | 218-244 | `deallocate()` - **需要修改** |
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| `nanovllm/kvcache/hybrid_manager.py` | 538-549 | `clear_decode_tracking()` - 已存在 |
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| `nanovllm/kvcache/hybrid_manager.py` | 485-505 | `get_decode_start_pos()` - 问题读取点 |
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| `nanovllm/kvcache/hybrid_manager.py` | 519-537 | `get_prefill_len()` - 问题读取点 |
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| `nanovllm/kvcache/offload_engine.py` | 40-145 | `__init__` - 状态初始化 |
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| `nanovllm/kvcache/offload_engine.py` | (新增) | `on_sequence_finished()` - 可选防御 |
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| `nanovllm/engine/model_runner.py` | 867-1057 | `run_layerwise_offload_decode()` |
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| `nanovllm/engine/model_runner.py` | 969-976 | decode buffer 读取 (污染点) |
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---
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## 验证命令
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**指定 GPU: 1** (严格限制,不可更改)
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```bash
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# 快速验证 (20 样本连续执行,不重启框架)
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# 目标: 20/20 通过
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CUDA_VISIBLE_DEVICES=1 PYTHONPATH=.:$PYTHONPATH python tests/test_ruler_niah.py \
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--model ~/models/Llama-3.1-8B-Instruct \
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--enable-offload \
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--sample-indices 0-19 \
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--verbose
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# 完整验证 (100 样本)
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# 目标: 100/100 通过 (最终验收)
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CUDA_VISIBLE_DEVICES=1 PYTHONPATH=.:$PYTHONPATH python tests/test_ruler_niah.py \
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--model ~/models/Llama-3.1-8B-Instruct \
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--enable-offload \
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--quiet
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```
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**验收标准**:
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| 测试 | 样本数 | 通过要求 | 说明 |
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|------|--------|----------|------|
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| 快速验证 | 20 | 20/20 (100%) | 一次调用,连续执行,验证请求切换 |
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| 完整验证 | 100 | 100/100 (100%) | 最终验收 |
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---
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## 当前状态
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- [x] Phase 1: 代码分析
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- [x] Phase 2: 根本原因分析
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- [x] Phase 3: Debug 方案设计
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- [x] Phase 4: 实施计划 ✅ 100/100 PASSED
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### 验证结果
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| 测试 | 结果 | 日期 |
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|------|------|------|
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| 20 样本快速验证 | ✅ 20/20 (100%) | 2026-01-13 |
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| 100 样本完整验证 | ✅ 100/100 (100%) | 2026-01-13 |
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