Files
wehub-resource-sync 498b235461
Build and test / Build and test AMD64 Ubuntu 22.04 (push) Failing after 0s
Publish Builder / amazonlinux2023 (push) Failing after 1s
Build and test / UT for Go (push) Has been skipped
Publish KRTE Images / KRTE (push) Failing after 1s
Build and test / Integration Test (push) Has been skipped
Build and test / Upload Code Coverage (push) Has been skipped
Publish Builder / rockylinux9 (push) Failing after 1s
Publish Builder / ubuntu22.04 (push) Failing after 0s
Publish Builder / ubuntu24.04 (push) Failing after 0s
Publish Gpu Builder / publish-gpu-builder (push) Failing after 1s
Publish Test Images / PyTest (push) Failing after 0s
Build and test / UT for Cpp (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:31:17 +08:00

556 lines
23 KiB
Go

// Licensed to the LF AI & Data foundation under one
// or more contributor license agreements. See the NOTICE file
// distributed with this work for additional information
// regarding copyright ownership. The ASF licenses this file
// to you under the Apache License, Version 2.0 (the
// "License"); you may not use this file except in compliance
// with the License. You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
// Tests in this file mirror the L0 (smoke / must-pass) cases from
// tests/python_client/milvus_client/test_milvus_client_struct_array.py.
// Each Go test function is named after the original Python test it ports.
package testcases
import (
"context"
"fmt"
"math/rand"
"strings"
"testing"
"time"
"github.com/stretchr/testify/require"
"github.com/milvus-io/milvus/client/v2/column"
"github.com/milvus-io/milvus/client/v2/entity"
"github.com/milvus-io/milvus/client/v2/index"
client "github.com/milvus-io/milvus/client/v2/milvusclient"
"github.com/milvus-io/milvus/tests/go_client/base"
"github.com/milvus-io/milvus/tests/go_client/common"
hp "github.com/milvus-io/milvus/tests/go_client/testcases/helper"
)
const structArrayTestNb = 200 // shrunk from python's default_nb=3000 for faster Go SDK runs
// canonicalStructArrayCollection creates the canonical schema (id + normal_vector + clips with
// clip_str/clip_embedding1/clip_embedding2), inserts numRows of random data, builds indexes on
// normal_vector and the two struct sub-vectors, and loads the collection.
//
// Returns the collection name, struct schema (needed for WithStructArrayColumn), and the
// generated test data so callers can run further assertions.
func canonicalStructArrayCollection(t *testing.T, ctx CtxT, mc MC, numRows int) (string, *entity.StructSchema, hp.StructArrayTestData) {
collName := common.GenRandomString(hp.StructArrayPrefix, 6)
opt := hp.DefaultStructArraySchemaOption(collName)
schema, structSchema := hp.CreateStructArraySchema(opt)
err := mc.CreateCollection(ctx, client.NewCreateCollectionOption(collName, schema).
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
data := hp.GenerateStructArrayData(numRows, opt)
insertOpt := client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", data.IDs).
WithFloatVectorColumn("normal_vector", data.Dim, data.NormalVectors).
WithStructArrayColumn("clips", structSchema, data.ClipsRows)
_, err = mc.Insert(ctx, insertOpt)
common.CheckErr(t, err, true)
_, err = mc.Flush(ctx, client.NewFlushOption(collName))
common.CheckErr(t, err, true)
indexAndLoad(t, ctx, mc, collName, data.Dim)
return collName, structSchema, data
}
// indexAndLoad builds the canonical 3 indexes (normal_vector + 2 sub-vectors) and loads.
func indexAndLoad(t *testing.T, ctx CtxT, mc MC, collName string, dim int) {
_, err := mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "normal_vector",
index.NewIvfFlatIndex(entity.L2, 128)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding1]",
index.NewHNSWIndex(entity.MaxSimCosine, 16, 200)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding2]",
index.NewHNSWIndex(entity.MaxSimCosine, 16, 200)))
common.CheckErr(t, err, true)
loadTask, err := mc.LoadCollection(ctx, client.NewLoadCollectionOption(collName))
common.CheckErr(t, err, true)
common.CheckErr(t, loadTask.Await(ctx), true)
}
// type aliases to keep test signatures readable
type (
CtxT = context.Context
MC = *base.MilvusClient
)
// TestStructArrayCreateWithClipEmbedding1 ports test_create_struct_array_with_clip_embedding1.
func TestStructArrayCreateWithClipEmbedding1(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName := common.GenRandomString(hp.StructArrayPrefix+"_basic", 6)
schema, _ := hp.CreateStructArraySchema(hp.DefaultStructArraySchemaOption(collName))
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
has, err := mc.HasCollection(ctx, client.NewHasCollectionOption(collName))
common.CheckErr(t, err, true)
require.True(t, has)
}
// TestStructArrayCreateWithScalarFields ports test_create_struct_array_with_scalar_fields.
func TestStructArrayCreateWithScalarFields(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName := common.GenRandomString(hp.StructArrayPrefix+"_basic", 6)
dim := hp.StructArrayDefaultDim
structSchema := entity.NewStructSchema().
WithField(entity.NewField().WithName("int_field").WithDataType(entity.FieldTypeInt64)).
WithField(entity.NewField().WithName("float_field").WithDataType(entity.FieldTypeFloat)).
WithField(entity.NewField().WithName("string_field").WithDataType(entity.FieldTypeVarChar).WithMaxLength(512)).
WithField(entity.NewField().WithName("bool_field").WithDataType(entity.FieldTypeBool))
schema := entity.NewSchema().WithName(collName).
WithField(entity.NewField().WithName("id").WithDataType(entity.FieldTypeInt64).WithIsPrimaryKey(true)).
WithField(entity.NewField().WithName("normal_vector").WithDataType(entity.FieldTypeFloatVector).WithDim(int64(dim))).
WithField(entity.NewField().WithName("metadata").
WithDataType(entity.FieldTypeArray).
WithElementType(entity.FieldTypeStruct).
WithMaxCapacity(int64(hp.StructArrayDefaultCapacity)).
WithStructSchema(structSchema))
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
has, err := mc.HasCollection(ctx, client.NewHasCollectionOption(collName))
common.CheckErr(t, err, true)
require.True(t, has)
}
// TestStructArrayInsertBasic ports test_insert_struct_array_basic.
func TestStructArrayInsertBasic(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName := common.GenRandomString(hp.StructArrayPrefix+"_basic", 6)
opt := hp.DefaultStructArraySchemaOption(collName)
schema, structSchema := hp.CreateStructArraySchema(opt)
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
data := hp.GenerateStructArrayData(structArrayTestNb, opt)
res, err := mc.Insert(ctx, client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", data.IDs).
WithFloatVectorColumn("normal_vector", data.Dim, data.NormalVectors).
WithStructArrayColumn("clips", structSchema, data.ClipsRows))
common.CheckErr(t, err, true)
require.EqualValues(t, structArrayTestNb, res.InsertCount)
}
// TestStructArrayCreateEmbListHNSWIndexCosine ports test_create_emb_list_hnsw_index_cosine.
func TestStructArrayCreateEmbListHNSWIndexCosine(t *testing.T) {
runEmbListHNSWIndex(t, entity.MaxSimCosine)
}
// TestStructArrayCreateEmbListHNSWIndexIp ports test_create_emb_list_hnsw_index_ip.
// Python test name says _ip but the body actually uses MAX_SIM_COSINE; we mirror that.
func TestStructArrayCreateEmbListHNSWIndexIp(t *testing.T) {
runEmbListHNSWIndex(t, entity.MaxSimCosine)
}
func runEmbListHNSWIndex(t *testing.T, metric entity.MetricType) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName := common.GenRandomString(hp.StructArrayPrefix+"_index", 6)
opt := hp.DefaultStructArraySchemaOption(collName)
schema, structSchema := hp.CreateStructArraySchema(opt)
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
data := hp.GenerateStructArrayData(structArrayTestNb, opt)
_, err := mc.Insert(ctx, client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", data.IDs).
WithFloatVectorColumn("normal_vector", data.Dim, data.NormalVectors).
WithStructArrayColumn("clips", structSchema, data.ClipsRows))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "normal_vector",
index.NewIvfFlatIndex(entity.L2, 128)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding1]",
index.NewHNSWIndex(metric, 16, 200)))
common.CheckErr(t, err, true)
}
// TestStructArraySearchVectorSingle ports test_search_struct_array_vector_single.
// Original uses EmbeddingList with one vector — we use entity.FloatVectorArray with one element.
func TestStructArraySearchVectorSingle(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, _, data := canonicalStructArrayCollection(t, ctx, mc, structArrayTestNb)
// baseline: search normal vector field
queryVec := hp.RandFloatVector(data.Dim)
normalRS, err := mc.Search(ctx, client.NewSearchOption(collName, 10,
[]entity.Vector{entity.FloatVector(queryVec)}).
WithANNSField("normal_vector").
WithSearchParam("nprobe", "10").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.Greater(t, normalRS[0].ResultCount, 0)
// MAX_SIM search on struct sub-vector with EmbList(=FloatVectorArray) of one vector
embList := entity.FloatVectorArray{entity.FloatVector(queryVec)}
rs, err := mc.Search(ctx, client.NewSearchOption(collName, 10, []entity.Vector{embList}).
WithANNSField("clips[clip_embedding1]").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.Greater(t, rs[0].ResultCount, 0)
}
// TestStructArraySearchVectorMultiple ports test_search_struct_array_vector_multiple.
func TestStructArraySearchVectorMultiple(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, _, data := canonicalStructArrayCollection(t, ctx, mc, structArrayTestNb)
embList := entity.FloatVectorArray{
entity.FloatVector(hp.RandFloatVector(data.Dim)),
entity.FloatVector(hp.RandFloatVector(data.Dim)),
entity.FloatVector(hp.RandFloatVector(data.Dim)),
}
rs, err := mc.Search(ctx, client.NewSearchOption(collName, 10, []entity.Vector{embList}).
WithANNSField("clips[clip_embedding1]").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.Greater(t, rs[0].ResultCount, 0)
}
// TestStructArrayHybridSearchWithNormalVector ports
// test_hybrid_search_struct_array_with_normal_vector.
func TestStructArrayHybridSearchWithNormalVector(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName := common.GenRandomString(hp.StructArrayPrefix+"_hybrid", 6)
dim := hp.StructArrayDefaultDim
structSchema := entity.NewStructSchema().
WithField(entity.NewField().WithName("clip_str").WithDataType(entity.FieldTypeVarChar).WithMaxLength(65535)).
WithField(entity.NewField().WithName("clip_embedding").WithDataType(entity.FieldTypeFloatVector).WithDim(int64(dim)))
schema := entity.NewSchema().WithName(collName).
WithField(entity.NewField().WithName("pk").WithDataType(entity.FieldTypeVarChar).WithMaxLength(100).WithIsPrimaryKey(true)).
WithField(entity.NewField().WithName("random").WithDataType(entity.FieldTypeDouble)).
WithField(entity.NewField().WithName("embeddings").WithDataType(entity.FieldTypeFloatVector).WithDim(int64(dim))).
WithField(entity.NewField().WithName("clips").
WithDataType(entity.FieldTypeArray).
WithElementType(entity.FieldTypeStruct).
WithMaxCapacity(100).
WithStructSchema(structSchema))
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
const numEntities = 100
pks := make([]string, numEntities)
randoms := make([]float64, numEntities)
embeddings := make([][]float32, numEntities)
rows := make([]map[string]any, numEntities)
for i := 0; i < numEntities; i++ {
pks[i] = fmt.Sprintf("%d", i)
randoms[i] = rand.Float64()
embeddings[i] = hp.RandFloatVector(dim)
count := 2 + rand.Intn(2) // 2 or 3
strs := make([]string, count)
embs := make([][]float32, count)
for j := 0; j < count; j++ {
strs[j] = fmt.Sprintf("item_%d_%d", i, j)
embs[j] = hp.RandFloatVector(dim)
}
rows[i] = map[string]any{"clip_str": strs, "clip_embedding": embs}
}
pkCol := column.NewColumnVarChar("pk", pks)
randomCol := column.NewColumnDouble("random", randoms)
_, err := mc.Insert(ctx, client.NewColumnBasedInsertOption(collName).
WithColumns(pkCol, randomCol).
WithFloatVectorColumn("embeddings", dim, embeddings).
WithStructArrayColumn("clips", structSchema, rows))
common.CheckErr(t, err, true)
_, err = mc.Flush(ctx, client.NewFlushOption(collName))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "embeddings",
index.NewIvfFlatIndex(entity.L2, 128)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding]",
index.NewHNSWIndex(entity.MaxSimL2, 16, 200)))
common.CheckErr(t, err, true)
loadTask, err := mc.LoadCollection(ctx, client.NewLoadCollectionOption(collName))
common.CheckErr(t, err, true)
common.CheckErr(t, loadTask.Await(ctx), true)
queryVec := entity.FloatVector(hp.RandFloatVector(dim))
queryEmbList := entity.FloatVectorArray{entity.FloatVector(hp.RandFloatVector(dim))}
rs, err := mc.HybridSearch(ctx, client.NewHybridSearchOption(collName, 5,
client.NewAnnRequest("embeddings", 5, queryVec),
client.NewAnnRequest("clips[clip_embedding]", 5, queryEmbList),
).WithReranker(client.NewRRFReranker()).WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.GreaterOrEqual(t, len(rs), 1)
require.Greater(t, rs[0].ResultCount, 0)
}
// TestStructArrayQueryAllFields ports test_query_struct_array_all_fields.
func TestStructArrayQueryAllFields(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, _, _ := canonicalStructArrayCollection(t, ctx, mc, structArrayTestNb)
rs, err := mc.Query(ctx, client.NewQueryOption(collName).
WithFilter("id >= 0").WithLimit(10).
WithOutputFields("*").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.Greater(t, rs.ResultCount, 0)
clipsCol := rs.GetColumn("clips")
require.NotNil(t, clipsCol, "clips column must be present in query results")
for i := 0; i < rs.ResultCount; i++ {
v, err := clipsCol.Get(i)
require.NoError(t, err)
_, ok := v.(map[string]any)
require.True(t, ok, "struct array element must decode as map[string]any")
}
}
// TestStructArrayQuerySpecificFields ports test_query_struct_array_specific_fields.
func TestStructArrayQuerySpecificFields(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, _, _ := canonicalStructArrayCollection(t, ctx, mc, structArrayTestNb)
rs, err := mc.Query(ctx, client.NewQueryOption(collName).
WithFilter("id >= 0").WithLimit(10).
WithOutputFields("id", "clips").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.Greater(t, rs.ResultCount, 0)
require.NotNil(t, rs.GetColumn("id"))
require.NotNil(t, rs.GetColumn("clips"))
}
// TestStructArrayUpsertData ports test_upsert_struct_array_data.
// Scaled-down: 200 flushed + 100 growing + 5 upsert per segment, vs python's 2000 + 1000 + 10.
func TestStructArrayUpsertData(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, structSchema, _ := crudCollection(t, ctx, mc)
dim := hp.StructArrayDefaultDim
insertSegment := func(start, count int, label string) {
ids := make([]int64, count)
vecs := make([][]float32, count)
rows := make([]map[string]any, count)
for i := 0; i < count; i++ {
ids[i] = int64(start + i)
vecs[i] = hp.RandFloatVector(dim)
rows[i] = map[string]any{
"clip_embedding1": [][]float32{hp.RandFloatVector(dim)},
"scalar_field": []int64{int64(start + i)},
"label": []string{fmt.Sprintf("%s_%d", label, start+i)},
}
}
_, err := mc.Insert(ctx, client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", ids).
WithFloatVectorColumn("normal_vector", dim, vecs).
WithStructArrayColumn("clips", structSchema, rows))
common.CheckErr(t, err, true)
}
insertSegment(0, 200, "flushed")
_, err := mc.Flush(ctx, client.NewFlushOption(collName))
common.CheckErr(t, err, true)
insertSegment(200, 100, "growing")
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "normal_vector",
index.NewIvfFlatIndex(entity.L2, 128)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding1]",
index.NewHNSWIndex(entity.MaxSimCosine, 16, 200)))
common.CheckErr(t, err, true)
loadTask, err := mc.LoadCollection(ctx, client.NewLoadCollectionOption(collName))
common.CheckErr(t, err, true)
common.CheckErr(t, loadTask.Await(ctx), true)
// Upsert 5 from flushed (ids 0..4) and 5 from growing (200..204).
upsertIDs := []int64{0, 1, 2, 3, 4, 200, 201, 202, 203, 204}
upsertVecs := make([][]float32, len(upsertIDs))
upsertRows := make([]map[string]any, len(upsertIDs))
for i, id := range upsertIDs {
upsertVecs[i] = hp.RandFloatVector(dim)
var prefix string
if id < 200 {
prefix = "updated_flushed"
} else {
prefix = "updated_growing"
}
upsertRows[i] = map[string]any{
"clip_embedding1": [][]float32{hp.RandFloatVector(dim)},
"scalar_field": []int64{id + 10000},
"label": []string{fmt.Sprintf("%s_%d", prefix, id)},
}
}
_, err = mc.Upsert(ctx, client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", upsertIDs).
WithFloatVectorColumn("normal_vector", dim, upsertVecs).
WithStructArrayColumn("clips", structSchema, upsertRows))
common.CheckErr(t, err, true)
// Skip second flush: target instance has flush rate limited at 0.1/s. Rely on Strong
// consistency in the query to see upsert results regardless of segment state.
rs, err := mc.Query(ctx, client.NewQueryOption(collName).
WithFilter("id < 5").WithOutputFields("id", "clips").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.EqualValues(t, 5, rs.ResultCount)
clips := rs.GetColumn("clips")
for i := 0; i < rs.ResultCount; i++ {
v, err := clips.Get(i)
require.NoError(t, err)
m := v.(map[string]any)
labels := m["label"].([]string)
require.Len(t, labels, 1)
require.True(t, strings.Contains(labels[0], "updated_flushed"),
"row %d label=%s does not contain updated_flushed", i, labels[0])
}
rs2, err := mc.Query(ctx, client.NewQueryOption(collName).
WithFilter("id >= 200 and id < 205").WithOutputFields("id", "clips").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.EqualValues(t, 5, rs2.ResultCount)
}
// TestStructArrayDeleteData ports test_delete_struct_array_data.
func TestStructArrayDeleteData(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, structSchema, _ := crudCollection(t, ctx, mc)
dim := hp.StructArrayDefaultDim
insertSegment := func(start, count int, label string) {
ids := make([]int64, count)
vecs := make([][]float32, count)
rows := make([]map[string]any, count)
for i := 0; i < count; i++ {
ids[i] = int64(start + i)
vecs[i] = hp.RandFloatVector(dim)
rows[i] = map[string]any{
"clip_embedding1": [][]float32{hp.RandFloatVector(dim)},
"scalar_field": []int64{int64(start + i)},
"label": []string{fmt.Sprintf("%s_%d", label, start+i)},
}
}
_, err := mc.Insert(ctx, client.NewColumnBasedInsertOption(collName).
WithInt64Column("id", ids).
WithFloatVectorColumn("normal_vector", dim, vecs).
WithStructArrayColumn("clips", structSchema, rows))
common.CheckErr(t, err, true)
}
insertSegment(0, 200, "flushed")
_, err := mc.Flush(ctx, client.NewFlushOption(collName))
common.CheckErr(t, err, true)
insertSegment(200, 100, "growing")
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "normal_vector",
index.NewIvfFlatIndex(entity.L2, 128)))
common.CheckErr(t, err, true)
_, err = mc.CreateIndex(ctx, client.NewCreateIndexOption(collName, "clips[clip_embedding1]",
index.NewHNSWIndex(entity.MaxSimCosine, 16, 200)))
common.CheckErr(t, err, true)
loadTask, err := mc.LoadCollection(ctx, client.NewLoadCollectionOption(collName))
common.CheckErr(t, err, true)
common.CheckErr(t, loadTask.Await(ctx), true)
// delete 5 from flushed (ids 0..4) and 5 from growing (200..204)
_, err = mc.Delete(ctx, client.NewDeleteOption(collName).WithExpr("id in [0,1,2,3,4,200,201,202,203,204]"))
common.CheckErr(t, err, true)
// Skip second flush: target instance has flush rate limited at 0.1/s. Rely on Strong
// consistency in the subsequent query.
rs, err := mc.Query(ctx, client.NewQueryOption(collName).
WithFilter("id in [0,1,2,3,4,200,201,202,203,204]").
WithOutputFields("id").
WithConsistencyLevel(entity.ClStrong))
common.CheckErr(t, err, true)
require.EqualValues(t, 0, rs.ResultCount, "deleted rows should not be returned")
}
// crudCollection creates the CRUD-suite collection (clips with clip_embedding1 + scalar_field +
// label, normal_vector nullable).
func crudCollection(t *testing.T, ctx CtxT, mc MC) (string, *entity.StructSchema, *entity.Schema) {
collName := common.GenRandomString(hp.StructArrayPrefix+"_crud", 6)
dim := hp.StructArrayDefaultDim
structSchema := entity.NewStructSchema().
WithField(entity.NewField().WithName("clip_embedding1").WithDataType(entity.FieldTypeFloatVector).WithDim(int64(dim))).
WithField(entity.NewField().WithName("scalar_field").WithDataType(entity.FieldTypeInt64)).
WithField(entity.NewField().WithName("label").WithDataType(entity.FieldTypeVarChar).WithMaxLength(128))
schema := entity.NewSchema().WithName(collName).
WithField(entity.NewField().WithName("id").WithDataType(entity.FieldTypeInt64).WithIsPrimaryKey(true)).
WithField(entity.NewField().WithName("normal_vector").
WithDataType(entity.FieldTypeFloatVector).WithDim(int64(dim))).
WithField(entity.NewField().WithName("clips").
WithDataType(entity.FieldTypeArray).
WithElementType(entity.FieldTypeStruct).
WithMaxCapacity(100).
WithStructSchema(structSchema))
common.CheckErr(t, mc.CreateCollection(ctx,
client.NewCreateCollectionOption(collName, schema)), true)
return collName, structSchema, schema
}
// TestStructArrayRangeSearchNotSupported ports test_struct_array_range_search_not_supported.
func TestStructArrayRangeSearchNotSupported(t *testing.T) {
ctx := hp.CreateContext(t, time.Second*common.DefaultTimeout)
mc := hp.CreateDefaultMilvusClient(ctx, t)
collName, _, data := canonicalStructArrayCollection(t, ctx, mc, structArrayTestNb)
queryEmb := entity.FloatVectorArray{entity.FloatVector(hp.RandFloatVector(data.Dim))}
// Range params must be embedded in the "params" JSON; the server rejects range search on
// struct sub-vector regardless of metric.
_, err := mc.Search(ctx, client.NewSearchOption(collName, 10, []entity.Vector{queryEmb}).
WithANNSField("clips[clip_embedding1]").
WithSearchParam("params", `{"radius": 0.1, "range_filter": 0.5}`).
WithConsistencyLevel(entity.ClStrong))
require.Error(t, err, "range search on struct sub-vector should be rejected")
require.Contains(t, err.Error(), "range search")
}