utils.py 23.9 KB
Newer Older
1 2
import os
import sys
J
JinHai-CN 已提交
3
import random
4
import pdb
J
JinHai-CN 已提交
5 6
import string
import struct
G
groot 已提交
7
import logging
J
JinHai-CN 已提交
8 9 10
import time, datetime
import copy
import numpy as np
11
from sklearn import preprocessing
12
from milvus import Milvus, DataType
J
JinHai-CN 已提交
13

14
port = 19530
15
epsilon = 0.000001
D
del-zhenwu 已提交
16 17
default_flush_interval = 1
big_flush_interval = 1000
18
dimension = 128
19 20
nb = 6000
top_k = 10
21
segment_row_count = 5000
22 23
default_float_vec_field_name = "float_vector"
default_binary_vec_field_name = "binary_vector"
24

25
# TODO:
D
del-zhenwu 已提交
26
all_index_types = [
27 28 29 30 31 32 33 34 35 36
    "FLAT",
    "IVF_FLAT",
    "IVF_SQ8",
    "IVF_SQ8_HYBRID",
    "IVF_PQ",
    "HNSW",
    # "NSG",
    "ANNOY",
    "BIN_FLAT",
    "BIN_IVF_FLAT"
D
del-zhenwu 已提交
37 38
]

39 40 41 42 43 44 45 46 47 48 49 50
default_index_params = [
    {"nlist": 1024},
    {"nlist": 1024},
    {"nlist": 1024},
    {"nlist": 1024},
    {"nlist": 1024, "m": 16},
    {"M": 48, "efConstruction": 500},
    # {"search_length": 50, "out_degree": 40, "candidate_pool_size": 100, "knng": 50},
    {"n_trees": 4},
    {"nlist": 1024},
    {"nlist": 1024}
]
51

J
JinHai-CN 已提交
52

53 54
def index_cpu_not_support():
    return ["IVF_SQ8_HYBRID"]
D
del-zhenwu 已提交
55 56


57 58
def binary_support():
    return ["BIN_FLAT", "BIN_IVF_FLAT"]
D
del-zhenwu 已提交
59 60


61 62
def delete_support():
    return ["FLAT", "IVF_FLAT", "IVF_SQ8", "IVF_SQ8_HYBRID", "IVF_PQ"]
J
JinHai-CN 已提交
63

G
groot 已提交
64

65 66
def ivf():
    return ["FLAT", "IVF_FLAT", "IVF_SQ8", "IVF_SQ8_HYBRID", "IVF_PQ"]
J
JinHai-CN 已提交
67 68


69 70 71 72 73 74
def l2(x, y):
    return np.linalg.norm(np.array(x) - np.array(y))


def ip(x, y):
    return np.inner(np.array(x), np.array(y))
G
groot 已提交
75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94


def jaccard(x, y):
    x = np.asarray(x, np.bool)
    y = np.asarray(y, np.bool)
    return 1 - np.double(np.bitwise_and(x, y).sum()) / np.double(np.bitwise_or(x, y).sum())


def hamming(x, y):
    x = np.asarray(x, np.bool)
    y = np.asarray(y, np.bool)
    return np.bitwise_xor(x, y).sum()


def tanimoto(x, y):
    x = np.asarray(x, np.bool)
    y = np.asarray(y, np.bool)
    return -np.log2(np.double(np.bitwise_and(x, y).sum()) / np.double(np.bitwise_or(x, y).sum()))


D
del-zhenwu 已提交
95 96 97 98 99 100 101 102 103 104 105 106
def substructure(x, y):
    x = np.asarray(x, np.bool)
    y = np.asarray(y, np.bool)
    return 1 - np.double(np.bitwise_and(x, y).sum()) / np.count_nonzero(y)


def superstructure(x, y):
    x = np.asarray(x, np.bool)
    y = np.asarray(y, np.bool)
    return 1 - np.double(np.bitwise_and(x, y).sum()) / np.count_nonzero(x)


107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132
def get_milvus(host, port, uri=None, handler=None, **kwargs):
    if handler is None:
        handler = "GRPC"
    try_connect = kwargs.get("try_connect", True)
    if uri is not None:
        milvus = Milvus(uri=uri, handler=handler, try_connect=try_connect)
    else:
        milvus = Milvus(host=host, port=port, handler=handler, try_connect=try_connect)
    return milvus


def disable_flush(connect):
    connect.set_config("storage", "auto_flush_interval", big_flush_interval)


def enable_flush(connect):
    # reset auto_flush_interval=1
    connect.set_config("storage", "auto_flush_interval", default_flush_interval)
    config_value = connect.get_config("storage", "auto_flush_interval")
    assert config_value == str(default_flush_interval)


def gen_inaccuracy(num):
    return num / 255.0


133
def gen_vectors(num, dim, is_normal=True):
134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154
    vectors = [[random.random() for _ in range(dim)] for _ in range(num)]
    vectors = preprocessing.normalize(vectors, axis=1, norm='l2')
    return vectors.tolist()


# def gen_vectors(num, dim, seed=np.random.RandomState(1234), is_normal=False):
#     xb = seed.rand(num, dim).astype("float32")
#     xb = preprocessing.normalize(xb, axis=1, norm='l2')
#     return xb.tolist()


def gen_binary_vectors(num, dim):
    raw_vectors = []
    binary_vectors = []
    for i in range(num):
        raw_vector = [random.randint(0, 1) for i in range(dim)]
        raw_vectors.append(raw_vector)
        binary_vectors.append(bytes(np.packbits(raw_vector, axis=-1).tolist()))
    return raw_vectors, binary_vectors


155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175
def gen_binary_sub_vectors(vectors, length):
    raw_vectors = []
    binary_vectors = []
    dim = len(vectors[0])
    for i in range(length):
        raw_vector = [0 for i in range(dim)]
        vector = vectors[i]
        for index, j in enumerate(vector):
            if j == 1:
                raw_vector[index] = 1
        raw_vectors.append(raw_vector)
        binary_vectors.append(bytes(np.packbits(raw_vector, axis=-1).tolist()))
    return raw_vectors, binary_vectors


def gen_binary_super_vectors(vectors, length):
    raw_vectors = []
    binary_vectors = []
    dim = len(vectors[0])
    for i in range(length):
        cnt_1 = np.count_nonzero(vectors[i])
176
        raw_vector = [1 for i in range(dim)]
177 178 179 180
        raw_vectors.append(raw_vector)
        binary_vectors.append(bytes(np.packbits(raw_vector, axis=-1).tolist()))
    return raw_vectors, binary_vectors

J
JinHai-CN 已提交
181

Y
yukun 已提交
182 183 184
def gen_int_attr(row_num):
    return [random.randint(0, 255) for _ in range(row_num)]

185

Y
yukun 已提交
186 187
def gen_float_attr(row_num):
    return [random.uniform(0, 255) for _ in range(row_num)]
J
JinHai-CN 已提交
188 189


Z
zhenwu 已提交
190
def gen_unique_str(str_value=None):
J
JinHai-CN 已提交
191
    prefix = "".join(random.choice(string.ascii_letters + string.digits) for _ in range(8))
192
    return "test_" + prefix if str_value is None else str_value + "_" + prefix
J
JinHai-CN 已提交
193 194


195 196 197
def gen_single_filter_fields():
    fields = []
    for data_type in DataType:
D
del-zhenwu 已提交
198
        if data_type in [DataType.INT32, DataType.INT64, DataType.FLOAT, DataType.DOUBLE]:
199 200 201 202 203 204
            fields.append({"field": data_type.name, "type": data_type})
    return fields


def gen_single_vector_fields():
    fields = []
205 206 207
    for data_type in [DataType.FLOAT_VECTOR, DataType.BINARY_VECTOR]:
        field = {"field": data_type.name, "type": data_type, "params": {"dim": dimension}}
        fields.append(field)
208 209 210
    return fields


211
def gen_default_fields(auto_id=True):
212 213 214 215
    default_fields = {
        "fields": [
            {"field": "int64", "type": DataType.INT64},
            {"field": "float", "type": DataType.FLOAT},
216
            {"field": default_float_vec_field_name, "type": DataType.FLOAT_VECTOR, "params": {"dim": dimension}},
217
        ],
218
        "segment_row_count": segment_row_count,
219
        "auto_id" : auto_id 
220
    }
D
del-zhenwu 已提交
221 222 223
    return default_fields


224
def gen_binary_default_fields(auto_id=True):
D
del-zhenwu 已提交
225 226 227 228 229 230
    default_fields = {
        "fields": [
            {"field": "int64", "type": DataType.INT64},
            {"field": "float", "type": DataType.FLOAT},
            {"field": default_binary_vec_field_name, "type": DataType.BINARY_VECTOR, "params": {"dim": dimension}}
        ],
231 232
        "segment_row_count": segment_row_count,
        "auto_id" : auto_id 
D
del-zhenwu 已提交
233
    }
234 235 236 237 238 239
    return default_fields


def gen_entities(nb, is_normal=False):
    vectors = gen_vectors(nb, dimension, is_normal)
    entities = [
240 241
        {"field": "int64", "type": DataType.INT64, "values": [i for i in range(nb)]},
        {"field": "float", "type": DataType.FLOAT, "values": [float(i) for i in range(nb)]},
242
        {"field": default_float_vec_field_name, "type": DataType.FLOAT_VECTOR, "values": vectors}
243 244 245 246 247 248 249
    ]
    return entities


def gen_binary_entities(nb):
    raw_vectors, vectors = gen_binary_vectors(nb, dimension)
    entities = [
250 251
        {"field": "int64", "type": DataType.INT64, "values": [i for i in range(nb)]},
        {"field": "float", "type": DataType.FLOAT, "values": [float(i) for i in range(nb)]},
252
        {"field": default_binary_vec_field_name, "type": DataType.BINARY_VECTOR, "values": vectors}
253 254 255 256 257 258 259
    ]
    return raw_vectors, entities


def gen_entities_by_fields(fields, nb, dimension):
    entities = []
    for field in fields:
D
del-zhenwu 已提交
260
        if field["type"] in [DataType.INT32, DataType.INT64]:
261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276
            field_value = [1 for i in range(nb)]
        elif field["type"] in [DataType.FLOAT, DataType.DOUBLE]:
            field_value = [3.0 for i in range(nb)]
        elif field["type"] == DataType.BINARY_VECTOR:
            field_value = gen_binary_vectors(nb, dimension)[1]
        elif field["type"] == DataType.FLOAT_VECTOR:
            field_value = gen_vectors(nb, dimension)
        field.update({"values": field_value})
        entities.append(field)
    return entities


def assert_equal_entity(a, b):
    pass


277
def gen_query_vectors(field_name, entities, top_k, nq, search_params={"nprobe": 10}, rand_vector=False,
278
                      metric_type="L2"):
279 280 281 282 283 284
    if rand_vector is True:
        dimension = len(entities[-1]["values"][0])
        query_vectors = gen_vectors(nq, dimension)
    else:
        query_vectors = entities[-1]["values"][:nq]
    must_param = {"vector": {field_name: {"topk": top_k, "query": query_vectors, "params": search_params}}}
285
    must_param["vector"][field_name]["metric_type"] = metric_type
286 287
    query = {
        "bool": {
288
            "must": [must_param]
289 290 291 292 293
        }
    }
    return query, query_vectors


294 295 296 297 298 299 300 301 302
def update_query_expr(src_query, keep_old=True, expr=None):
    tmp_query = copy.deepcopy(src_query)
    if expr is not None:
        tmp_query["bool"].update(expr)
    if keep_old is not True:
        tmp_query["bool"].pop("must")
    return tmp_query


D
del-zhenwu 已提交
303 304 305 306
def gen_default_vector_expr(default_query):
    return default_query["bool"]["must"][0]


307
def gen_default_term_expr(keyword="term", values=None):
308
    if values is None:
D
del-zhenwu 已提交
309
        values = [i for i in range(nb // 2)]
310
    expr = {keyword: {"int64": {"values": values}}}
311 312 313
    return expr


314
def gen_default_range_expr(keyword="range", ranges=None):
315
    if ranges is None:
D
del-zhenwu 已提交
316
        ranges = {"GT": 1, "LT": nb // 2}
317
    expr = {keyword: {"int64": {"ranges": ranges}}}
318 319 320
    return expr


321 322
def gen_invalid_range():
    range = [
Y
yukun 已提交
323 324 325
        {"range": 1},
        {"range": {}},
        {"range": []},
326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360
        {"range": {"range": {"int64": {"ranges": {"GT": 0, "LT": nb//2}}}}}
    ]
    return range


def gen_invalid_ranges():
    ranges = [
        {"GT": nb, "LT": 0},
        {"GT": nb},
        {"LT": 0},
        {"GT": 0.0, "LT": float(nb)}
    ]
    return ranges


def gen_valid_ranges():
    ranges = [
        {"GT": 0, "LT": nb//2},
        {"GT": nb, "LT": nb*2},
        {"GT": 0},
        {"LT": nb},
        {"GT": -1, "LT": top_k},
    ]
    return ranges


def gen_invalid_term():
    terms = [
        {"term": 1},
        {"term": []},
        {"term": {"term": {"int64": {"values": [i for i in range(nb//2)]}}}}
    ]
    return terms


361 362 363 364 365 366 367 368 369 370 371
def add_field_default(default_fields, type=DataType.INT64, field_name=None):
    tmp_fields = copy.deepcopy(default_fields)
    if field_name is None:
        field_name = gen_unique_str()
    field = {
        "field": field_name,
        "type": type
    }
    tmp_fields["fields"].append(field)
    return tmp_fields

372

373
def add_field(entities, field_name=None):
374
    nb = len(entities[0]["values"])
375 376 377
    tmp_entities = copy.deepcopy(entities)
    if field_name is None:
        field_name = gen_unique_str()
378
    field = {
379 380 381
        "field": field_name,
        "type": DataType.INT64,
        "values": [i for i in range(nb)]
382
    }
383 384
    tmp_entities.append(field)
    return tmp_entities
385 386 387 388 389 390


def add_vector_field(entities, is_normal=False):
    nb = len(entities[0]["values"])
    vectors = gen_vectors(nb, dimension, is_normal)
    field = {
391
        "field": gen_unique_str(),
392 393 394 395 396 397 398
        "type": DataType.FLOAT_VECTOR,
        "values": vectors
    }
    entities.append(field)
    return entities


399 400 401 402 403 404 405 406
# def update_fields_metric_type(fields, metric_type):
#     tmp_fields = copy.deepcopy(fields)
#     if metric_type in ["L2", "IP"]:
#         tmp_fields["fields"][-1]["type"] = DataType.FLOAT_VECTOR
#     else:
#         tmp_fields["fields"][-1]["type"] = DataType.BINARY_VECTOR
#     tmp_fields["fields"][-1]["params"]["metric_type"] = metric_type
#     return tmp_fields
407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448


def remove_field(entities):
    del entities[0]
    return entities


def remove_vector_field(entities):
    del entities[-1]
    return entities


def update_field_name(entities, old_name, new_name):
    for item in entities:
        if item["field"] == old_name:
            item["field"] = new_name
    return entities


def update_field_type(entities, old_name, new_name):
    for item in entities:
        if item["field"] == old_name:
            item["type"] = new_name
    return entities


def update_field_value(entities, old_type, new_value):
    for item in entities:
        if item["type"] == old_type:
            for i in item["values"]:
                item["values"][i] = new_value
    return entities


def add_vector_field(nb, dimension=dimension):
    field_name = gen_unique_str()
    field = {
        "field": field_name,
        "type": DataType.FLOAT_VECTOR,
        "values": gen_vectors(nb, dimension)
    }
    return field_name
449

450

451
def gen_segment_row_counts():
452
    sizes = [
453 454 455 456
        1,
        2,
        1024,
        4096
457 458
    ]
    return sizes
J
JinHai-CN 已提交
459 460 461 462


def gen_invalid_ips():
    ips = [
463 464 465 466 467 468 469 470 471 472 473 474 475 476
        # "255.0.0.0",
        # "255.255.0.0",
        # "255.255.255.0",
        # "255.255.255.255",
        "127.0.0",
        # "123.0.0.2",
        "12-s",
        " ",
        "12 s",
        "BB。A",
        " siede ",
        "(mn)",
        "中文",
        "a".join("a" for _ in range(256))
J
JinHai-CN 已提交
477 478 479 480 481 482 483
    ]
    return ips


def gen_invalid_uris():
    ip = None
    uris = [
484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505
        " ",
        "中文",
        # invalid protocol
        # "tc://%s:%s" % (ip, port),
        # "tcp%s:%s" % (ip, port),

        # # invalid port
        # "tcp://%s:100000" % ip,
        # "tcp://%s: " % ip,
        # "tcp://%s:19540" % ip,
        # "tcp://%s:-1" % ip,
        # "tcp://%s:string" % ip,

        # invalid ip
        "tcp:// :19530",
        # "tcp://123.0.0.1:%s" % port,
        "tcp://127.0.0:19530",
        # "tcp://255.0.0.0:%s" % port,
        # "tcp://255.255.0.0:%s" % port,
        # "tcp://255.255.255.0:%s" % port,
        # "tcp://255.255.255.255:%s" % port,
        "tcp://\n:19530",
J
JinHai-CN 已提交
506 507 508 509
    ]
    return uris


510 511
def gen_invalid_strs():
    strings = [
512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527
        1,
        [1],
        None,
        "12-s",
        " ",
        # "",
        # None,
        "12 s",
        "BB。A",
        "c|c",
        " siede ",
        "(mn)",
        "pip+",
        "=c",
        "中文",
        "a".join("a" for i in range(256))
J
JinHai-CN 已提交
528
    ]
529
    return strings
J
JinHai-CN 已提交
530 531


532 533
def gen_invalid_field_types():
    field_types = [
534 535 536 537 538 539
        # 1,
        "=c",
        # 0,
        None,
        "",
        "a".join("a" for i in range(256))
J
JinHai-CN 已提交
540
    ]
541
    return field_types
J
JinHai-CN 已提交
542 543


544 545
def gen_invalid_metric_types():
    metric_types = [
546 547 548 549 550 551
        1,
        "=c",
        0,
        None,
        "",
        "a".join("a" for i in range(256))
J
JinHai-CN 已提交
552
    ]
553
    return metric_types
J
JinHai-CN 已提交
554 555


556 557 558
# TODO:
def gen_invalid_ints():
    top_ks = [
559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575
        # 1.0,
        None,
        "stringg",
        [1, 2, 3],
        (1, 2),
        {"a": 1},
        " ",
        "",
        "String",
        "12-s",
        "BB。A",
        " siede ",
        "(mn)",
        "pip+",
        "=c",
        "中文",
        "a".join("a" for i in range(256))
J
JinHai-CN 已提交
576
    ]
577
    return top_ks
J
JinHai-CN 已提交
578 579


580 581
def gen_invalid_params():
    params = [
582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597
        9999999999,
        -1,
        # None,
        [1, 2, 3],
        (1, 2),
        {"a": 1},
        " ",
        "",
        "String",
        "12-s",
        "BB。A",
        " siede ",
        "(mn)",
        "pip+",
        "=c",
        "中文"
J
JinHai-CN 已提交
598
    ]
599
    return params
J
JinHai-CN 已提交
600 601 602 603


def gen_invalid_vectors():
    invalid_vectors = [
604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624
        "1*2",
        [],
        [1],
        [1, 2],
        [" "],
        ['a'],
        [None],
        None,
        (1, 2),
        {"a": 1},
        " ",
        "",
        "String",
        "12-s",
        "BB。A",
        " siede ",
        "(mn)",
        "pip+",
        "=c",
        "中文",
        "a".join("a" for i in range(256))
J
JinHai-CN 已提交
625 626 627 628
    ]
    return invalid_vectors


629
def gen_invaild_search_params():
D
del-zhenwu 已提交
630
    invalid_search_key = 100
631
    search_params = []
D
del-zhenwu 已提交
632
    for index_type in all_index_types:
633
        if index_type == "FLAT":
D
del-zhenwu 已提交
634
            continue
635 636
        search_params.append({"index_type": index_type, "search_params": {"invalid_key": invalid_search_key}})
        if index_type in delete_support():
637
            for nprobe in gen_invalid_params():
638
                ivf_search_params = {"index_type": index_type, "search_params": {"nprobe": nprobe}}
639
                search_params.append(ivf_search_params)
640
        elif index_type == "HNSW":
641
            for ef in gen_invalid_params():
642
                hnsw_search_param = {"index_type": index_type, "search_params": {"ef": ef}}
643
                search_params.append(hnsw_search_param)
644
        elif index_type == "NSG":
D
del-zhenwu 已提交
645
            for search_length in gen_invalid_params():
646
                nsg_search_param = {"index_type": index_type, "search_params": {"search_length": search_length}}
D
del-zhenwu 已提交
647
                search_params.append(nsg_search_param)
648 649
            search_params.append({"index_type": index_type, "search_params": {"invalid_key": 100}})
        elif index_type == "ANNOY":
D
del-zhenwu 已提交
650 651 652
            for search_k in gen_invalid_params():
                if isinstance(search_k, int):
                    continue
653
                annoy_search_param = {"index_type": index_type, "search_params": {"search_k": search_k}}
D
del-zhenwu 已提交
654
                search_params.append(annoy_search_param)
655 656 657 658
    return search_params


def gen_invalid_index():
J
JinHai-CN 已提交
659
    index_params = []
660 661
    for index_type in gen_invalid_strs():
        index_param = {"index_type": index_type, "params": {"nlist": 1024}}
662 663
        index_params.append(index_param)
    for nlist in gen_invalid_params():
664
        index_param = {"index_type": "IVF_FLAT", "params": {"nlist": nlist}}
665 666
        index_params.append(index_param)
    for M in gen_invalid_params():
667
        index_param = {"index_type": "HNSW", "params": {"M": M, "efConstruction": 100}}
J
JinHai-CN 已提交
668
        index_params.append(index_param)
669
    for efConstruction in gen_invalid_params():
670
        index_param = {"index_type": "HNSW", "params": {"M": 16, "efConstruction": efConstruction}}
J
JinHai-CN 已提交
671
        index_params.append(index_param)
D
del-zhenwu 已提交
672
    for search_length in gen_invalid_params():
673 674
        index_param = {"index_type": "NSG",
                       "params": {"search_length": search_length, "out_degree": 40, "candidate_pool_size": 50,
675
                                  "knng": 100}}
D
del-zhenwu 已提交
676 677
        index_params.append(index_param)
    for out_degree in gen_invalid_params():
678 679
        index_param = {"index_type": "NSG",
                       "params": {"search_length": 100, "out_degree": out_degree, "candidate_pool_size": 50,
680
                                  "knng": 100}}
D
del-zhenwu 已提交
681 682
        index_params.append(index_param)
    for candidate_pool_size in gen_invalid_params():
683
        index_param = {"index_type": "NSG", "params": {"search_length": 100, "out_degree": 40,
684 685
                                                       "candidate_pool_size": candidate_pool_size,
                                                       "knng": 100}}
D
del-zhenwu 已提交
686
        index_params.append(index_param)
687 688 689 690
    index_params.append({"index_type": "IVF_FLAT", "params": {"invalid_key": 1024}})
    index_params.append({"index_type": "HNSW", "params": {"invalid_key": 16, "efConstruction": 100}})
    index_params.append({"index_type": "NSG",
                         "params": {"invalid_key": 100, "out_degree": 40, "candidate_pool_size": 300,
691
                                    "knng": 100}})
D
del-zhenwu 已提交
692
    for invalid_n_trees in gen_invalid_params():
693
        index_params.append({"index_type": "ANNOY", "params": {"n_trees": invalid_n_trees}})
D
del-zhenwu 已提交
694

J
JinHai-CN 已提交
695 696 697
    return index_params


698 699 700 701 702 703 704 705 706 707
def gen_index():
    nlists = [1, 1024, 16384]
    pq_ms = [128, 64, 32, 16, 8, 4]
    Ms = [5, 24, 48]
    efConstructions = [100, 300, 500]
    search_lengths = [10, 100, 300]
    out_degrees = [5, 40, 300]
    candidate_pool_sizes = [50, 100, 300]
    knngs = [5, 100, 300]

J
JinHai-CN 已提交
708
    index_params = []
D
del-zhenwu 已提交
709
    for index_type in all_index_types:
710
        if index_type in ["FLAT", "BIN_FLAT", "BIN_IVF_FLAT"]:
711
            index_params.append({"index_type": index_type, "index_param": {"nlist": 1024}})
712
        elif index_type in ["IVF_FLAT", "IVF_SQ8", "IVF_SQ8_HYBRID"]:
713 714 715
            ivf_params = [{"index_type": index_type, "index_param": {"nlist": nlist}} \
                          for nlist in nlists]
            index_params.extend(ivf_params)
716 717
        elif index_type == "IVF_PQ":
            IVFPQ_params = [{"index_type": index_type, "index_param": {"nlist": nlist, "m": m}} \
718 719
                            for nlist in nlists \
                            for m in pq_ms]
720 721
            index_params.extend(IVFPQ_params)
        elif index_type == "HNSW":
722 723 724 725
            hnsw_params = [{"index_type": index_type, "index_param": {"M": M, "efConstruction": efConstruction}} \
                           for M in Ms \
                           for efConstruction in efConstructions]
            index_params.extend(hnsw_params)
726
        elif index_type == "NSG":
D
del-zhenwu 已提交
727 728 729 730 731 732 733 734
            nsg_params = [{"index_type": index_type,
                           "index_param": {"search_length": search_length, "out_degree": out_degree,
                                           "candidate_pool_size": candidate_pool_size, "knng": knng}} \
                          for search_length in search_lengths \
                          for out_degree in out_degrees \
                          for candidate_pool_size in candidate_pool_sizes \
                          for knng in knngs]
            index_params.extend(nsg_params)
J
JinHai-CN 已提交
735

736
    return index_params
J
JinHai-CN 已提交
737 738


739
def gen_simple_index():
J
JinHai-CN 已提交
740
    index_params = []
D
del-zhenwu 已提交
741
    for i in range(len(all_index_types)):
742 743
        if all_index_types[i] in binary_support():
            continue
744
        dic = {"index_type": all_index_types[i], "metric_type": "L2"}
745
        dic.update({"params": default_index_params[i]})
746 747 748 749 750 751 752 753 754
        index_params.append(dic)
    return index_params


def gen_binary_index():
    index_params = []
    for i in range(len(all_index_types)):
        if all_index_types[i] in binary_support():
            dic = {"index_type": all_index_types[i]}
755
            dic.update({"params": default_index_params[i]})
756
            index_params.append(dic)
757
    return index_params
J
JinHai-CN 已提交
758 759


760
def get_search_param(index_type):
761
    search_params = {"metric_type": "L2"}
762
    if index_type in ivf() or index_type in binary_support():
763
        search_params.update({"nprobe": 32})
764
    elif index_type == "HNSW":
765
        search_params.update({"ef": 64})
766
    elif index_type == "NSG":
767
        search_params.update({"search_length": 100})
768
    elif index_type == "ANNOY":
769
        search_params.update({"search_k": 100})
770
    else:
771 772 773
        logging.getLogger().error("Invalid index_type.")
        raise Exception("Invalid index_type.")
    return search_params
J
JinHai-CN 已提交
774

775

776 777 778 779 780
def assert_equal_vector(v1, v2):
    if len(v1) != len(v2):
        assert False
    for i in range(len(v1)):
        assert abs(v1[i] - v2[i]) < epsilon
781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826 827 828 829 830 831 832


def restart_server(helm_release_name):
    res = True
    timeout = 120
    from kubernetes import client, config
    client.rest.logger.setLevel(logging.WARNING)

    namespace = "milvus"
    # service_name = "%s.%s.svc.cluster.local" % (helm_release_name, namespace)
    config.load_kube_config()
    v1 = client.CoreV1Api()
    pod_name = None
    # config_map_names = v1.list_namespaced_config_map(namespace, pretty='true')
    # body = {"replicas": 0}
    pods = v1.list_namespaced_pod(namespace)
    for i in pods.items:
        if i.metadata.name.find(helm_release_name) != -1 and i.metadata.name.find("mysql") == -1:
            pod_name = i.metadata.name
            break
            # v1.patch_namespaced_config_map(config_map_name, namespace, body, pretty='true')
    # status_res = v1.read_namespaced_service_status(helm_release_name, namespace, pretty='true')
    # print(status_res)
    if pod_name is not None:
        try:
            v1.delete_namespaced_pod(pod_name, namespace)
        except Exception as e:
            logging.error(str(e))
            logging.error("Exception when calling CoreV1Api->delete_namespaced_pod")
            res = False
            return res
        time.sleep(5)
        # check if restart successfully
        pods = v1.list_namespaced_pod(namespace)
        for i in pods.items:
            pod_name_tmp = i.metadata.name
            if pod_name_tmp.find(helm_release_name) != -1:
                logging.debug(pod_name_tmp)
                start_time = time.time()
                while time.time() - start_time > timeout:
                    status_res = v1.read_namespaced_pod_status(pod_name_tmp, namespace, pretty='true')
                    if status_res.status.phase == "Running":
                        break
                    time.sleep(1)
                if time.time() - start_time > timeout:
                    logging.error("Restart pod: %s timeout" % pod_name_tmp)
                    res = False
                    return res
    else:
        logging.error("Pod: %s not found" % helm_release_name)
        res = False
    return res