分析MongoDB查询性能是确保应用程序高效运行的关键步骤。MongoDB提供了许多工具和命令,用于详细分析查询的性能表现。以下是详细的步骤和代码示例,展示如何分析MongoDB的查询性能。

explain 命令可以详细描述查询的执行计划,包括使用的索引、扫描的文档数量等。
db.students.find({ studentId: 12345 }).explain("executionStats");{ "queryPlanner": { "plannerVersion": 1, "namespace": "school.students", "indexFilterSet": false, "parsedQuery": { "studentId": { "$eq": 12345 } }, "winningPlan": { "stage": "FETCH", "inputStage": { "stage": "IXSCAN", "keyPattern": { "studentId": 1 }, "indexName": "studentId_1", "direction": "forward", "indexBounds": { "studentId": [ "[12345, 12345]" ] } } }, "rejectedPlans": [] }, "executionStats": { "executionSuccess": true, "nReturned": 1, "executionTimeMillis": 2, "totalKeysExamined": 1, "totalDocsExamined": 1, "executionStages": { "stage": "FETCH", "nReturned": 1, "executionTimeMillisEstimate": 0, "works": 2, "advanced": 1, "needTime": 0, "needYield": 0, "saveState": 0, "restoreState": 0, "isEOF": 1, "invalidates": 0, "docsExamined": 1, "alreadyHasObj": 0, "inputStage": { "stage": "IXSCAN", "nReturned": 1, "executionTimeMillisEstimate": 0, "works": 2, "advanced": 1, "needTime": 0, "needYield": 0, "saveState": 0, "restoreState": 0, "isEOF": 1, "invalidates": 0, "keyPattern": { "studentId": 1 }, "indexName": "studentId_1", "isMultiKey": false, "multiKeyPaths": { "studentId": [] }, "indexBounds": { "studentId": [ "[12345, 12345]" ] }, "keysExamined": 1, "seeks": 1, "dupsTested": 0, "dupsDropped": 0 } } }, "serverInfo": { "host": "localhost", "port": 27017, "version": "4.4.6", "gitVersion": "22c124145fa3bfdaeafb3f6d1b5f3d4e8391fe86" }}关键指标说明:
totalKeysExamined: 扫描的索引键数量。totalDocsExamined: 扫描的文档数量。数字越小越好。executionTimeMillis: 查询执行时间,单位是毫秒。winningPlan: 使用的执行计划,包括使用的索引。MongoDB Profiler 可以记录数据库操作和慢查询的详细信息。
db.setProfilingLevel(2);
db.system.profile.find().sort({ ts: -1 }).limit(1).pretty();db.setProfilingLevel(0);
{ "op": "query", "ns": "school.students", "command": { "find": "students", "filter": { "studentId": 12345 }, "projection": {}, "sort": {} }, "keysExamined": 1, "docsExamined": 1, "cursorExhausted": true, "numYield": 0, "locks": { "Global": { "acquireCount": { "r": 1 } }, "Database": { "acquireCount": { "r": 1 } }, "Collection": { "acquireCount": { "r": 1 } } }, "nreturned": 1, "responseLength": 466, "millis": 2, "ts": ISODate("2021-07-20T14:45:14.467Z"), "client": "127.0.0.1", "appName": "MongoDB Shell", "allUsers": [], "user": ""}关键指标说明:
keysExamined, docsExamined: 这些指标与explain命令的输出类似。millis: 查询执行时间,单位是毫秒。nreturned: 返回的文档数量。db.currentOp() 可以查看当前正在运行的操作。
db.currentOp();
{ "inprog": [ { "opid": 12345, "active": true, "secs_running": 2, "microsecs_running": NumberLong(2000000), "op": "query", "ns": "school.students", "query": { "studentId": 12345 }, "client": "127.0.0.1:50731", "desc": "conn123", "threadId": "0x7fd4e7bfb700", "connectionId": 123, "waitingForLock": false, "lockStats": { "Global": { "acquireCount": { "r": NumberLong(1) } } } } ]}关键指标说明:
secs_running: 查询已运行的时间,单位是秒。op: 当前正在执行的操作类型。query: 正在执行的查询。查看索引的使用情况,识别未使用的索引。
db.students.aggregate([ { $indexStats: {} }]);[ { "name": "studentId_1", "key": { "studentId": 1 }, "host": "localhost:27017", "accesses": { "ops": 123, "since": ISODate("2021-07-01T00:00:00Z") } }]关键指标说明:
name: 索引名称。accesses.ops: 索引的访问次数。accesses.since: 统计开始时间。通过上述方法,您可以详细分析MongoDB查询性能,并识别潜在的瓶颈和优化机会。关键工具和命令包括:
explain 命令,详细描述查询执行计划。db.currentOp() 命令,查看当前正在运行的操作。通过合理使用这些工具和方法,可以有效提高MongoDB查询的性能,从而确保数据库应用程序的高效运行。