MongoDB中哪几种情况下的索引选择策略

Phylicia ·
更新时间:2024-09-20
· 1095 次阅读

目录

一、MongoDB如何选择索引

二、数据准备

三、正则对index的使用

四、$or从句对索引的利用

五、sort对索引的利用

六、搜索数据对索引命中的影响

总结

一、MongoDB如何选择索引

如果我们在Collection建了5个index,那么当我们查询的时候,MongoDB会根据查询语句的筛选条件、sort排序等来定位可以使用的index作为候选索引;然后MongoDB会创建对应数量的查询计划,并分别使用不同线程执行查询计划,最终会选择一个执行最快的index;但是这个选择也不是一成不变的,后续还会有一段时间根据实际执行情况动态调整;

二、数据准备 for(let i = 0;i<1000000;i++){ db.users.insertOne({ "id":i, "name":'user'+i, "age":Math.floor(Math.random()*120), "created":new Date(ISODate().getTime() - 1000 * 60*i) }); } 三、正则对index的使用

MongoDB支持正则查询,在特定的情况其也是可以利用index获得查询性能的提升;

虽然MongDB执行正则会最大限度的使用index,但是不同的用法还是会影响对index的利用程度的;

执行以下普通正则表达式

从queryPlanner.winningPlan部分的COLLSCAN,可以看到正则表达式默认会进行全表的扫描;

从executionStats.executionStages部分可以看到COLLSCAN共扫描了1000000个文档,并返回1111个文档,总耗时794ms;

db.users.find({ name:/user999/ }).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "winningPlan" : { "stage" : "COLLSCAN", "filter" : { "name" : { "$regex" : "user999" } }, "direction" : "forward" }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1111, "executionTimeMillis" : 909, "totalKeysExamined" : 0, "totalDocsExamined" : 1000000, "executionStages" : { "stage" : "COLLSCAN", "filter" : { "name" : { "$regex" : "user999" } }, "nReturned" : 1111, "executionTimeMillisEstimate" : 794, "works" : 1000002, "advanced" : 1111, "needTime" : 998890, "needYield" : 0, "saveState" : 7830, "restoreState" : 7830, "isEOF" : 1, "invalidates" : 0, "direction" : "forward", "docsExamined" : 1000000 } } }

创建一个包含name的index;

db.users.createIndex({name:1})

再次执行上边的查询,可以看到使用了我们新建的name_1索引;但是从执行状态来看,还是扫描了全体的索引的key,并不能很好的利用index;

{ "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "name" : { "$regex" : "user999" } }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "filter" : { "name" : { "$regex" : "user999" } }, "keyPattern" : { "name" : 1 }, "indexName" : "name_1" } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1111, "executionTimeMillis" : 971, "totalKeysExamined" : 1000000, "totalDocsExamined" : 1111, "executionStages" : { "stage" : "FETCH", "nReturned" : 1111, "executionTimeMillisEstimate" : 887, "docsExamined" : 1111, "alreadyHasObj" : 0, "inputStage" : { "stage" : "IXSCAN", "filter" : { "name" : { "$regex" : "user999" } }, "nReturned" : 1111, "executionTimeMillisEstimate" : 876, "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "keysExamined" : 1000000 } } } }

使用前缀匹配的话可以最大限度的利用index,从执行状态可以看到只检测了1111个index key;

db.users.find({ name:/^user999/ }).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "name" : { "$regex" : "^user999" } }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "name" : 1 }, "indexName" : "name_1" } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1111, "executionTimeMillis" : 2, "totalKeysExamined" : 1111, "totalDocsExamined" : 1111, "executionStages" : { "stage" : "FETCH", "nReturned" : 1111, "executionTimeMillisEstimate" : 0 "docsExamined" : 1111 "inputStage" : { "stage" : "IXSCAN", "nReturned" : 1111, "executionTimeMillisEstimate" : 0, "indexName" : "name_1", "keysExamined" : 1111 } } } }

即使是前缀匹配,如果忽略大小写的话也无法充分利用index了;

db.users.find({ name:/^user999/i }).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "name" : { "$regex" : "user999", "$options" : "i" } }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "filter" : { "name" : { "$regex" : "user999", "$options" : "i" } }, "keyPattern" : { "name" : 1 }, "indexName" : "name_1" } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1111, "executionTimeMillis" : 943, "totalKeysExamined" : 1000000, "totalDocsExamined" : 1111, "executionStages" : { "stage" : "FETCH", "nReturned" : 1111, "executionTimeMillisEstimate" : 833, "works" : 1000001, "inputStage" : { "stage" : "IXSCAN", "filter" : { "name" : { "$regex" : "user999", "$options" : "i" } }, "nReturned" : 1111, "executionTimeMillisEstimate" : 833, "keyPattern" : { "name" : 1 }, "indexName" : "name_1" "keysExamined" : 1000000 } } } } 四、$or从句对索引的利用

MongoDB执行$or从句的时候,会将所有的从句作为逻辑的整体,要不就都使用index,要不就都进行全表扫描;

执行以下的查询语句;

db.users.find({ $or:[ {name:/^user666/}, {age:{$gte:80}} ] }).explain('executionStats')

在只有name_1这个index的时候,我们可以看到MongoDB进行了全表扫描,全表扫描的时候进行$or从句的过滤;

{ "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "$or" : [ { "age" : { "$gte" : 20 } }, { "name" : { "$regex" : "^user666" } } ] }, "winningPlan" : { "stage" : "SUBPLAN", "inputStage" : { "stage" : "COLLSCAN", "filter" : { "$or" : [ { "age" : { "$gte" : 20 } }, { "name" : { "$regex" : "^user666" } } ] }, "direction" : "forward" } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 833995, "executionTimeMillis" : 576, "totalKeysExamined" : 0, "totalDocsExamined" : 1000000, "executionStages" : { "stage" : "SUBPLAN", "nReturned" : 833995, "executionTimeMillisEstimate" : 447, "inputStage" : { "stage" : "COLLSCAN", "filter" : { "$or" : [ { "age" : { "$gte" : 20 } }, { "name" : { "$regex" : "^user666" } } ] }, "nReturned" : 833995, "executionTimeMillisEstimate" : 447, "docsExamined" : 1000000 } } } }

我们对name字段新建一个index;

db.users.createIndex({age:1})

再次执行以上的查询语句,这次可以看到每个从句都利用了index,并且每个从句会单独执行并最终进行or操作;

{ "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "$or" : [ { "age" : { "$gte" : 80 } }, { "name" : { "$regex" : "^user666" } } ] }, "winningPlan" : { "stage" : "SUBPLAN", "inputStage" : { "stage" : "FETCH", "inputStage" : { "stage" : "OR", "inputStages" : [ { "stage" : "IXSCAN", "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "isMultiKey" : false, "multiKeyPaths" : { "name" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "name" : [ "[\"user666\", \"user667\")", "[/^user666/, /^user666/]" ] } }, { "stage" : "IXSCAN", "keyPattern" : { "age" : 1 }, "indexName" : "age_1", "isMultiKey" : false, "multiKeyPaths" : { "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "age" : [ "[80.0, inf.0]" ] } } ] } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 333736, "executionTimeMillis" : 741, "totalKeysExamined" : 334102, "totalDocsExamined" : 333736, "executionStages" : { "stage" : "SUBPLAN", "nReturned" : 333736, "executionTimeMillisEstimate" : 703, "inputStage" : { "stage" : "FETCH", "nReturned" : 333736, "executionTimeMillisEstimate" : 682 "docsExamined" : 333736, "inputStage" : { "stage" : "OR", "nReturned" : 333736, "executionTimeMillisEstimate" : 366, "inputStages" : [ { "stage" : "IXSCAN", "nReturned" : 1111, "executionTimeMillisEstimate" : 0, "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "indexBounds" : { "name" : [ "[\"user666\", \"user667\")", "[/^user666/, /^user666/]" ] }, "keysExamined" : 1112 }, { "stage" : "IXSCAN", "nReturned" : 332990, "executionTimeMillisEstimate" : 212, "keyPattern" : { "age" : 1 }, "indexName" : "age_1", "indexBounds" : { "age" : [ "[80.0, inf.0]" ] }, "keysExamined" : 332990 } ] } } } } } 五、sort对索引的利用

如果sort操作无法利用index,则MongoDB就会在内存中排序数据,并且数据量一大就会报错;

db.users.find().sort({created: -1}).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { }, "winningPlan" : { "stage" : "SORT", "sortPattern" : { "created" : -1 }, "inputStage" : { "stage" : "SORT_KEY_GENERATOR", "inputStage" : { "stage" : "COLLSCAN", "direction" : "forward" } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : false, "errorMessage" : "Exec error resulting in state FAILURE :: caused by :: Sort operation used more than the maximum 33554432 bytes of RAM. Add an index, or specify a smaller limit.", "errorCode" : 96, "nReturned" : 0, "executionTimeMillis" : 959, "totalKeysExamined" : 0, "totalDocsExamined" : 361996, "executionStages" : { "stage" : "SORT", "nReturned" : 0, "executionTimeMillisEstimate" : 922, "sortPattern" : { "created" : -1 }, "memUsage" : 33554518, "memLimit" : 33554432, "inputStage" : { "stage" : "SORT_KEY_GENERATOR", "nReturned" : 361996, "executionTimeMillisEstimate" : 590, "inputStage" : { "stage" : "COLLSCAN", "nReturned" : 361996, "executionTimeMillisEstimate" : 147, "direction" : "forward", "docsExamined" : 361996 } } } } }

如果是单字段index,sort从两个方向都可以充分利用index;可以看到MongoDB直接按照index的顺序返回结果,直接就没有sort阶段了;

db.users.find().sort({name: -1}).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "direction" : "backward", "indexBounds" : { "name" : [ "[MaxKey, MinKey]" ] } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1000000, "executionTimeMillis" : 1317, "totalKeysExamined" : 1000000, "totalDocsExamined" : 1000000, "executionStages" : { "stage" : "FETCH", "nReturned" : 1000000, "executionTimeMillisEstimate" : 1180, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 1000000, "executionTimeMillisEstimate" : 560, "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "isMultiKey" : false, "multiKeyPaths" : { "name" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "name" : [ "[MaxKey, MinKey]" ] }, "keysExamined" : 1000000, "seeks" : 1, "dupsTested" : 0, "dupsDropped" : 0, "seenInvalidated" : 0 } } } }

对于复合索引,sort除了可以从整体上从两个方向利用index,也可以利用index的前缀索引和非前缀局部索引;

新建复合索引

db.users.createIndex({created:-1, name:1, age:1})

按照复合索引的反方向进行整体排序;

db.users.find().sort({created:1, name:-1, age:-1}).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[MinKey, MaxKey]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1000000, "executionTimeMillis" : 1518, "totalKeysExamined" : 1000000, "totalDocsExamined" : 1000000, "executionStages" : { "stage" : "FETCH", "nReturned" : 1000000, "executionTimeMillisEstimate" : 1364, "docsExamined" : 1000000, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 1000000, "executionTimeMillisEstimate" : 816, "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[MinKey, MaxKey]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] }, "keysExamined" : 1000000 } } } }

排序使用索引前缀,也需要保证字段的顺序,但是可以反方向排序;

db.users.find().sort({created:1, name:-1, age:-1}).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[MinKey, MaxKey]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 1000000, "executionTimeMillis" : 1487, "totalKeysExamined" : 1000000, "totalDocsExamined" : 1000000, "executionStages" : { "stage" : "FETCH", "nReturned" : 1000000, "executionTimeMillisEstimate" : 1339, "works" : 1000001, "advanced" : 1000000, "needTime" : 0, "needYield" : 0, "saveState" : 7845, "restoreState" : 7845, "isEOF" : 1, "invalidates" : 0, "docsExamined" : 1000000, "alreadyHasObj" : 0, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 1000000, "executionTimeMillisEstimate" : 769, "works" : 1000001, "advanced" : 1000000, "needTime" : 0, "needYield" : 0, "saveState" : 7845, "restoreState" : 7845, "isEOF" : 1, "invalidates" : 0, "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[MinKey, MaxKey]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] }, "keysExamined" : 1000000, "seeks" : 1, "dupsTested" : 0, "dupsDropped" : 0, "seenInvalidated" : 0 } } } }

排序如果使用的是非前缀的局部字典排序,name需要保证前边的字段是等值筛选操作才行;

db.users.find({created:new Date("2021-10-30T08:17:01.184Z")}).sort({name:-1}).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "created" : { "$eq" : ISODate("2021-10-30T08:17:01.184Z") } }, "winningPlan" : { "stage" : "FETCH", "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[new Date(1635581821184), new Date(1635581821184)]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] } } }, "rejectedPlans" : [ ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 0, "executionTimeMillis" : 0, "totalKeysExamined" : 0, "totalDocsExamined" : 0, "executionStages" : { "stage" : "FETCH", "nReturned" : 0, "executionTimeMillisEstimate" : 0, "works" : 1, "advanced" : 0, "needTime" : 0, "needYield" : 0, "saveState" : 0, "restoreState" : 0, "isEOF" : 1, "invalidates" : 0, "docsExamined" : 0, "alreadyHasObj" : 0, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 0, "executionTimeMillisEstimate" : 0, "works" : 1, "advanced" : 0, "needTime" : 0, "needYield" : 0, "saveState" : 0, "restoreState" : 0, "isEOF" : 1, "invalidates" : 0, "keyPattern" : { "created" : -1, "name" : 1, "age" : 1 }, "indexName" : "created_-1_name_1_age_1", "isMultiKey" : false, "multiKeyPaths" : { "created" : [ ], "name" : [ ], "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "backward", "indexBounds" : { "created" : [ "[new Date(1635581821184), new Date(1635581821184)]" ], "name" : [ "[MaxKey, MinKey]" ], "age" : [ "[MaxKey, MinKey]" ] }, "keysExamined" : 0, "seeks" : 1, "dupsTested" : 0, "dupsDropped" : 0, "seenInvalidated" : 0 } } } } 六、搜索数据对索引命中的影响

MongoDB对index的选择是受到实际场景的数据影响比较大的,即与实际数据的分布规律有关,也跟实际筛选出来的数据有关系;所以我们对索引的优化和测试都需要考虑实际的数据场景才行;

由于name的字段值筛选出来的key太多,不能充分利用index,所以MongoDB拒绝了name_1并选择了age_1;

db.users.find({ name:/^user/, age:{$gte:110} }).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "$and" : [ { "age" : { "$gte" : 110 } }, { "name" : { "$regex" : "^user" } } ] }, "winningPlan" : { "stage" : "FETCH", "filter" : { "name" : { "$regex" : "^user" } }, "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "age" : 1 }, "indexName" : "age_1", "isMultiKey" : false, "multiKeyPaths" : { "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "age" : [ "[110.0, inf.0]" ] } } }, "rejectedPlans" : [ { "stage" : "FETCH", "filter" : { "age" : { "$gte" : 110 } }, "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "isMultiKey" : false, "multiKeyPaths" : { "name" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "name" : [ "[\"user\", \"uses\")", "[/^user/, /^user/]" ] } } } ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 83215, "executionTimeMillis" : 246, "totalKeysExamined" : 83215, "totalDocsExamined" : 83215, "executionStages" : { "stage" : "FETCH", "filter" : { "name" : { "$regex" : "^user" } }, "nReturned" : 83215, "executionTimeMillisEstimate" : 232, "works" : 83216, "advanced" : 83215, "needTime" : 0, "needYield" : 0, "saveState" : 658, "restoreState" : 658, "isEOF" : 1, "invalidates" : 0, "docsExamined" : 83215, "alreadyHasObj" : 0, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 83215, "executionTimeMillisEstimate" : 43, "works" : 83216, "advanced" : 83215, "needTime" : 0, "needYield" : 0, "saveState" : 658, "restoreState" : 658, "isEOF" : 1, "invalidates" : 0, "keyPattern" : { "age" : 1 }, "indexName" : "age_1", "isMultiKey" : false, "multiKeyPaths" : { "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "age" : [ "[110.0, inf.0]" ] }, "keysExamined" : 83215, "seeks" : 1, "dupsTested" : 0, "dupsDropped" : 0, "seenInvalidated" : 0 } } } }

我们修改一下name筛选条件的值,进一步缩小命中的范围,可以看到这次MongoDB选择了name_1;

db.users.find({ name:/^user8888/, age:{$gte:110} }).explain('executionStats') { "queryPlanner" : { "plannerVersion" : 1, "namespace" : "test.users", "indexFilterSet" : false, "parsedQuery" : { "$and" : [ { "age" : { "$gte" : 110 } }, { "name" : { "$regex" : "^user8888" } } ] }, "winningPlan" : { "stage" : "FETCH", "filter" : { "age" : { "$gte" : 110 } }, "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "isMultiKey" : false, "multiKeyPaths" : { "name" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "name" : [ "[\"user8888\", \"user8889\")", "[/^user8888/, /^user8888/]" ] } } }, "rejectedPlans" : [ { "stage" : "FETCH", "filter" : { "name" : { "$regex" : "^user8888" } }, "inputStage" : { "stage" : "IXSCAN", "keyPattern" : { "age" : 1 }, "indexName" : "age_1", "isMultiKey" : false, "multiKeyPaths" : { "age" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "age" : [ "[110.0, inf.0]" ] } } } ] }, "executionStats" : { "executionSuccess" : true, "nReturned" : 10, "executionTimeMillis" : 0, "totalKeysExamined" : 112, "totalDocsExamined" : 111, "executionStages" : { "stage" : "FETCH", "filter" : { "age" : { "$gte" : 110 } }, "nReturned" : 10, "executionTimeMillisEstimate" : 0, "works" : 114, "advanced" : 10, "needTime" : 102, "needYield" : 0, "saveState" : 1, "restoreState" : 1, "isEOF" : 1, "invalidates" : 0, "docsExamined" : 111, "alreadyHasObj" : 0, "inputStage" : { "stage" : "IXSCAN", "nReturned" : 111, "executionTimeMillisEstimate" : 0, "works" : 113, "advanced" : 111, "needTime" : 1, "needYield" : 0, "saveState" : 1, "restoreState" : 1, "isEOF" : 1, "invalidates" : 0, "keyPattern" : { "name" : 1 }, "indexName" : "name_1", "isMultiKey" : false, "multiKeyPaths" : { "name" : [ ] }, "isUnique" : false, "isSparse" : false, "isPartial" : false, "indexVersion" : 2, "direction" : "forward", "indexBounds" : { "name" : [ "[\"user8888\", \"user8889\")", "[/^user8888/, /^user8888/]" ] }, "keysExamined" : 112, "seeks" : 2, "dupsTested" : 0, "dupsDropped" : 0, "seenInvalidated" : 0 } } } } 总结

到此这篇关于MongoDB中哪几种情况下的索引选择策略的文章就介绍到这了,更多相关MongoDB索引选择策略内容请搜索软件开发网以前的文章或继续浏览下面的相关文章希望大家以后多多支持软件开发网!



选择 MongoDB 索引

需要 登录 后方可回复, 如果你还没有账号请 注册新账号