wikipedia-ja-20231030 / embs_to_faiss.py
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from __future__ import annotations
from dataclasses import dataclass
import numpy as np
from tqdm import tqdm
import argparse
from pathlib import Path
import faiss
parser = argparse.ArgumentParser(description="Convert datasets to embeddings")
parser.add_argument(
"-t",
"--target",
type=str,
required=True,
choices=["data", "chunked"],
help="target dataset, data or chunked",
)
parser.add_argument(
"-i",
"--input_name",
type=str,
required=True,
help="input dir name",
)
# m
parser.add_argument(
"-m",
"--m",
type=int,
required=False,
default=8,
help="faiss param: m, subvector",
)
# mbit
parser.add_argument(
"-b",
"--mbit",
type=int,
required=False,
default=8,
help="faiss param: mbit, bits_per_idx",
)
# nlist
parser.add_argument(
"-n",
"--nlist",
type=int,
required=False,
default=None,
help="faiss param: nlist, None is auto calc, sqrt(len(ds)))",
)
# use_gpu
parser.add_argument(
"-g",
"--use_gpu",
action="store_true",
help="use gpu",
)
# no quantization
parser.add_argument(
"--no_quantization",
action="store_true",
help="no quantization",
)
# force override
parser.add_argument(
"--force",
action="store_true",
help="force override existing index file",
)
args = parser.parse_args()
@dataclass
class FaissConfig:
m: int = 8 # subvector
mbit: int = 8 # bits_per_idx
nlist: int | None = None # nlist, None is auto calc, sqrt(len(ds)))
quantization: bool = True
args = parser.parse_args()
target_local_ds = args.target
faiss_config = FaissConfig(
m=args.m,
mbit=args.mbit,
nlist=args.nlist,
quantization=not args.no_quantization,
)
embs_dir = "embs"
input_embs_path = Path("/".join(["embs", args.input_name, target_local_ds]))
input_embs_npz = list(input_embs_path.glob("*.npz"))
input_embs_npz.sort(key=lambda x: int(x.stem))
if len(input_embs_npz) == 0:
print(f"input embs not found: {input_embs_path}")
exit(1)
else:
print(f"input {len(input_embs_npz)} embs(*.npz) found: {input_embs_path}")
def gen_index_filename(config: FaissConfig, target_local_ds: str) -> str:
default_faiss_config = FaissConfig()
if (
config.m == default_faiss_config.m
and config.mbit == default_faiss_config.mbit
and config.nlist == default_faiss_config.nlist
and config.quantization == default_faiss_config.quantization
):
return f"{target_local_ds}.faiss"
elif not config.quantization:
return f"{target_local_ds}_no_quantization.faiss"
else:
return f"{target_local_ds}_m{config.m}_mbit{config.mbit}_nlist_{config.nlist}.faiss"
def gen_faiss_index(config: FaissConfig, dim: str, use_gpu: bool):
if use_gpu and config.m > 48:
return gen_faiss_index_f16_lookup(config, dim, use_gpu)
# quantizer = faiss.IndexFlatL2(dim)
if not config.quantization:
faiss_index = faiss.IndexFlatL2(dim)
else:
# faiss_index = faiss.IndexHNSWSQ(dim, faiss.ScalarQuantizer.QT_8bit, 16)
# faiss_index.hnsw.efConstruction = 512
# index.hnsw.efSearch = 128
# quantizer = faiss.IndexHNSWFlat(dim, 32)
quantizer = faiss.IndexFlatL2(dim)
faiss_index = faiss.IndexIVFPQ(
quantizer,
dim,
config.nlist,
config.m,
config.mbit,
)
# faiss_index = faiss.IndexIVFFlat(quantizer, dim, 16384)
# faiss_index.cp.min_points_per_centroid = 5 # quiet warning
# faiss_index.quantizer_trains_alone = 2
if use_gpu and getattr(faiss, "StandardGpuResources", None):
gpu_res = faiss.StandardGpuResources()
faiss_index = faiss.index_cpu_to_gpu(gpu_res, 0, faiss_index)
return faiss_index
else:
return faiss_index
def gen_faiss_index_f16_lookup(config: FaissConfig, dim: str, use_gpu: bool):
# use float16 lookup tables
gpu_resource = faiss.StandardGpuResources() # GPUリソースの初期化
gpu_index_config = faiss.GpuIndexIVFPQConfig() # IVFPQインデックスの設定用オブジェクト
gpu_index_config.useFloat16LookupTables = True # Float16ルックアップテーブルを使用する
quantizer = faiss.IndexFlatL2(dim) # 量子化器の定義
index = faiss.GpuIndexIVFPQ(
gpu_resource,
# quantizer,
dim,
config.nlist,
config.m,
config.mbit,
faiss.METRIC_L2,
gpu_index_config, # IVFPQインデックスの設定用オブジェクト
) # GPU上のIVFPQインデックスの作成
return index
output_faiss_path = Path(
"/".join(
[
"faiss_indexes",
args.input_name,
gen_index_filename(faiss_config, target_local_ds),
]
)
)
output_faiss_path.parent.mkdir(parents=True, exist_ok=True)
# output_faiss_path がすでにある場合
if output_faiss_path.exists():
if args.force:
print("force override existing index file")
print(f"[found] -> {output_faiss_path}")
else:
print("index file already exists, skip")
print(f"[found] -> {output_faiss_path}")
exit(0)
# pbar = tqdm(total=len(input_embs_npz))
# emb_total = 0
all_embs = []
for idx, npz_file in enumerate(tqdm(input_embs_npz)):
with np.load(npz_file) as data:
e = data["embs"].astype("float16")
all_embs.append(e)
embs: np.ndarray = np.concatenate(all_embs, axis=0, dtype="float32")
del all_embs
# if idx == 0:
dim = embs.shape[1]
if faiss_config.nlist is None:
faiss_config.nlist = int(np.sqrt(len(embs) * (len(input_embs_npz) - 1)))
if faiss_config.nlist < 1:
faiss_config.nlist = 100
print(f"faiss_config: {faiss_config}")
if args.use_gpu:
print("use gpu for faiss index")
faiss_index = gen_faiss_index(faiss_config, dim, args.use_gpu)
print(f"start training faiss index, shape: {embs.shape}")
faiss_index.train(embs) # type: ignore
print(f"start adding embs to faiss index")
faiss_index.add(embs) # type: ignore
# pbar.update(1)
print(f"added embs: {embs.shape[0]}")
# pbar.set_description(f"added embs: {emb_total}")
# pbar.close()
faiss_index.nprobe = 10 # type: ignore
if args.use_gpu:
faiss_index = faiss.index_gpu_to_cpu(faiss_index) # type: ignore
faiss.write_index(faiss_index, str(output_faiss_path)) # type: ignore
print("output faiss index file:", output_faiss_path)
# output_faiss_path のファイルサイズを MB で表示
print(
"output faiss index file size (MB):",
int(output_faiss_path.stat().st_size / 1024 / 1024),
)