fix: bench.py 只保留测试用户数据(流式过滤+磁盘缓存),解决 OOM 与 16min 重载

不同用户被因果mask隔离,过滤非测试用户对测试样本AUC/PCOC零影响。
流式加载只持有测试用户记录,避免 CTRTestSeqDataset 构造期 OOM;
过滤结果缓存到 bench_filtered_cache.pt,后续秒级复用。

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
This commit is contained in:
OwnerSunshine530
2026-06-14 21:12:15 +08:00
parent 8c1d1cbaa5
commit c0c23ad224
+117 -31
View File
@@ -1,46 +1,128 @@
"""本地测量闭环:设置 infer.CONFIG,跑推理,同步计时,打印 AUC/PCOC/延迟/总分。 """本地测量闭环:设置 infer.CONFIG,跑推理,同步计时,打印 AUC/PCOC/延迟/总分。
不进提交包。在 AI Studio notebook(带 dataset/ 与 ckpt.pt)里运行 不进提交包。**以子进程方式运行**AI Studio 内核禁止 import torch
%cd /home/aistudio/code %cd /home/aistudio/code
!python bench.py # 默认配置基准 !python bench.py --smoke 50 # 冒烟:只跑前 50 batch
!python bench.py # 默认基线
!python bench.py --fp32 # FP32 天花板(Task 3
!python bench.py --rebuild # 强制重建过滤缓存
或在 notebook cell 里逐配置扫描 关键设计——只保留“测试用户”的数据
不同用户被因果 mask 完全隔离,非测试用户的前向输出不参与打分;过滤掉它们
import bench 对测试样本的 AUC/PCOC 没有任何影响,却能把数据量从 924 万条降到一小部分,
bench.run_once({"fp16": False, "expert_merge": False}) # FP32 参考跑 避免 CTRTestSeqDataset 构造时 OOM。过滤后的数据缓存到磁盘,后续秒级复用。
bench.run_once({"signid_mode": "modulo"}) # 取模 vs clamp
""" """
import os import os
import sys import sys
import time import time
from collections import defaultdict
from pathlib import Path from pathlib import Path
# baseline 把依赖装在 --target 目录(非默认 site-packages),在 kernel 里 import # baseline 把依赖装在 --target 目录(非默认 site-packages),import 前先加 sys.path
# 之前必须先把它加到 sys.path,否则 import torch 会 ModuleNotFoundError。
for _p in ("/home/aistudio/external-libraries", "/home/aistudio/libraries", for _p in ("/home/aistudio/external-libraries", "/home/aistudio/libraries",
os.path.abspath("../libraries"), os.path.abspath("./libraries")): os.path.abspath("../libraries"), os.path.abspath("./libraries")):
if os.path.isdir(_p) and _p not in sys.path: if os.path.isdir(_p) and _p not in sys.path:
sys.path.insert(0, _p) sys.path.insert(0, _p)
import numpy as np
import torch import torch
from torch.utils.data import DataLoader from torch.utils.data import DataLoader
import infer # 同目录 import infer # 同目录
def run_once(config_override=None, batch_size=50, max_batches=None, max_feasign_per_slot=None): def _test_user_ids(test_csv):
"""跑一次本地推理并打分。 """从 test.csv 读出所有测试用户 id(第 2 列 userid)。"""
users = set()
with open(test_csv) as f:
for line in f:
line = line.strip()
if not line:
continue
parts = line.split(",")
if len(parts) >= 2:
users.add(int(parts[1]))
return users
Args:
config_override: 覆盖 infer.CONFIG 的字典(如 {"fp16": False} def _load_filtered(history_dir, test_csv, test_users):
batch_size: DataLoader 的 batch 大小(本地参考;评测端可能自有设定) """流式读取所有文件,只保留 userid ∈ test_users记录(不持有完整字典,防 OOM)。
max_batches: 只跑前 N 个 batch(快速冒烟用),None=全量
max_feasign_per_slot: 传给 CTRTestSeqDataset 的截断字典,None=不截断; 解析逻辑与 infer.load_sample_files 完全一致,只是多了一道用户过滤。
默认沿用 baseline 的 {1: 2}
Returns:
infer._cal_score 的结果 dict
""" """
files = (sorted(history_dir.glob("*.csv")) if history_dir.exists() else []) + [test_csv]
print(f"[BENCH] 流式过滤加载 {len(files)} 个文件(仅保留 {len(test_users)} 个测试用户)...")
item_dict = {}
user_logs = defaultdict(list)
for fp in files:
has_clk = infer._detect_has_clk(fp)
min_parts = 5 if has_clk else 4
kept = 0
with open(fp) as f:
for line in f:
line = line.strip()
if not line:
continue
parts = line.split(",")
if len(parts) < min_parts:
continue
userid = int(parts[1])
if userid not in test_users:
continue
logid = int(parts[0])
adid = int(parts[2])
if has_clk:
clk = int(parts[3])
timestamp = int(parts[4])
fs = 5
else:
clk = 0
timestamp = int(parts[3])
fs = 4
signs, slots = [], []
for pair in parts[fs:]:
if ":" in pair:
s, sl = pair.split(":", 1)
signs.append(int(s))
slots.append(int(sl))
item_dict[logid] = {
"logid": logid, "userid": userid, "adid": adid,
"clk": clk, "timestamp": timestamp,
"signs": np.array(signs, dtype=np.int64),
"slots": np.array(slots, dtype=np.int64),
}
user_logs[userid].append((timestamp, logid))
kept += 1
print(f" {fp.name}: has_clk={has_clk}, kept={kept}")
user_seq = {}
for u, logs in user_logs.items():
logs.sort(key=lambda x: x[0])
user_seq[u] = [lid for _, lid in logs]
print(f"[BENCH] 过滤后:{len(item_dict)} 条记录,{len(user_seq)} 个用户")
return item_dict, user_seq
def _get_data(cur, ref, rebuild=False):
"""取过滤后的 (item_dict, user_seq),优先读磁盘缓存。"""
cache = cur / "bench_filtered_cache.pt"
test_csv = ref / "test.csv"
history = ref / "history"
if cache.exists() and not rebuild:
print(f"[BENCH] 读取过滤缓存:{cache}")
d = torch.load(cache, weights_only=False)
return d["item_dict"], d["user_seq"]
test_users = _test_user_ids(test_csv)
item_dict, user_seq = _load_filtered(history, test_csv, test_users)
torch.save({"item_dict": item_dict, "user_seq": user_seq}, cache)
print(f"[BENCH] 已缓存 -> {cache}")
return item_dict, user_seq
def run_once(config_override=None, batch_size=50, max_batches=None,
max_feasign_per_slot=None, rebuild=False):
"""跑一次本地推理并打分。返回 infer._cal_score 的结果 dict。"""
if config_override is None: if config_override is None:
config_override = {} config_override = {}
if max_feasign_per_slot is None: if max_feasign_per_slot is None:
@@ -51,20 +133,15 @@ def run_once(config_override=None, batch_size=50, max_batches=None, max_feasign_
cur = Path(__file__).parent cur = Path(__file__).parent
ref = cur / "dataset" ref = cur / "dataset"
history = ref / "history"
test_csv = ref / "test.csv" test_csv = ref / "test.csv"
label_file = ref / "label_data.txt" label_file = ref / "label_data.txt"
# ----- 加载数据 ----- # ----- 取数据(过滤+缓存)-----
files = (sorted(history.glob("*.csv")) if history.exists() else []) + [test_csv] item_dict, user_seq = _get_data(cur, ref, rebuild=rebuild)
item_dict, user_seq = infer.load_sample_files(files)
test_logids = infer.load_logids_from_file(test_csv) test_logids = infer.load_logids_from_file(test_csv)
ds = infer.CTRTestSeqDataset( ds = infer.CTRTestSeqDataset(
test_logids_ordered=list(test_logids), test_logids_ordered=list(test_logids), item_dict=item_dict,
item_dict=item_dict, user_seq=user_seq, max_feasign_per_slot=max_feasign_per_slot, max_ctx_len=None,
user_seq=user_seq,
max_feasign_per_slot=max_feasign_per_slot,
max_ctx_len=None,
) )
loader = DataLoader( loader = DataLoader(
ds, batch_size=batch_size, shuffle=False, num_workers=0, ds, batch_size=batch_size, shuffle=False, num_workers=0,
@@ -76,6 +153,11 @@ def run_once(config_override=None, batch_size=50, max_batches=None, max_feasign_
if max_batches is not None and len(batches) >= max_batches: if max_batches is not None and len(batches) >= max_batches:
break break
# 释放构造期内存,降低推理峰值
del item_dict, user_seq, ds, loader
import gc
gc.collect()
# ----- 加载模型 ----- # ----- 加载模型 -----
model, dev = infer.load_model(ckpt_path=None) model, dev = infer.load_model(ckpt_path=None)
@@ -100,10 +182,13 @@ def run_once(config_override=None, batch_size=50, max_batches=None, max_feasign_
# ----- 按 test.csv 顺序写 predict.txt 并打分 ----- # ----- 按 test.csv 顺序写 predict.txt 并打分 -----
order = [int(l.split(",")[0]) for l in open(test_csv) if l.strip()] order = [int(l.split(",")[0]) for l in open(test_csv) if l.strip()]
missing = [lid for lid in order if lid not in logid2p]
if missing:
print(f"[BENCH][WARN] {len(missing)} 个测试 logid 没预测到(前几个 {missing[:5]}")
pred_path = cur / "predict.txt" pred_path = cur / "predict.txt"
with open(pred_path, "w") as f: with open(pred_path, "w") as f:
for lid in order: for lid in order:
f.write(f"{logid2p[lid]}\n") f.write(f"{logid2p.get(lid, 0.0)}\n")
res = infer._cal_score(pred_path, label_file, default_latency=t_sum) res = infer._cal_score(pred_path, label_file, default_latency=t_sum)
print( print(
@@ -117,7 +202,7 @@ def run_once(config_override=None, batch_size=50, max_batches=None, max_feasign_
def _parse_args(): def _parse_args():
import argparse import argparse
ap = argparse.ArgumentParser(description="CTI 推理测量闭环(子进程方式跑:!python bench.py ...") ap = argparse.ArgumentParser(description="CTI 推理测量闭环(子进程跑:!python bench.py ...")
ap.add_argument("--smoke", type=int, default=None, help="只跑前 N 个 batch(冒烟)") ap.add_argument("--smoke", type=int, default=None, help="只跑前 N 个 batch(冒烟)")
ap.add_argument("--bs", type=int, default=50, help="batch_size(本地参考)") ap.add_argument("--bs", type=int, default=50, help="batch_size(本地参考)")
ap.add_argument("--fp32", action="store_true", help="FP32 天花板 = 关 fp16 + 关 expert 合并") ap.add_argument("--fp32", action="store_true", help="FP32 天花板 = 关 fp16 + 关 expert 合并")
@@ -129,6 +214,7 @@ def _parse_args():
help="逗号分隔的 keep_fp32_modules,如 linear,rep_encoder.input_norm") help="逗号分隔的 keep_fp32_modules,如 linear,rep_encoder.input_norm")
ap.add_argument("--feasign-none", action="store_true", ap.add_argument("--feasign-none", action="store_true",
help="不截断特征(max_feasign_per_slot=None") help="不截断特征(max_feasign_per_slot=None")
ap.add_argument("--rebuild", action="store_true", help="强制重建过滤缓存")
return ap.parse_args() return ap.parse_args()
@@ -149,4 +235,4 @@ if __name__ == "__main__":
if a.keep is not None: if a.keep is not None:
cfg["keep_fp32_modules"] = tuple(x for x in a.keep.split(",") if x) cfg["keep_fp32_modules"] = tuple(x for x in a.keep.split(",") if x)
mf = None if a.feasign_none else {1: 2} mf = None if a.feasign_none else {1: 2}
run_once(cfg, batch_size=a.bs, max_batches=a.smoke, max_feasign_per_slot=mf) run_once(cfg, batch_size=a.bs, max_batches=a.smoke, max_feasign_per_slot=mf, rebuild=a.rebuild)