【最佳实践】MongoDB导出导入数据

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云原生多模数据库 Lindorm,多引擎 多规格 0-4节点
云数据库 Redis 版,社区版 2GB
推荐场景:
搭建游戏排行榜
云数据库 MongoDB,通用型 2核4GB
简介: 【最佳实践】MongoDB导出导入数据

首先说一下这个3节点MongoDB集群各个维度的数据规模:
1、dataSize: 1.9T
2、storageSize: 600G
3、全量备份-加压缩开关:186G,耗时 8h
4、全量备份-不加压缩开关:1.8T,耗时 4h27m
具体导出的语法比较简单,此处不再赘述,本文重点描述导入的优化过程,最后给出导入的最佳实践。

■ 2023-09-13T20:00 第1次4并发导入测试

mongorestore --port=20000 -uadmin -p'passwd' --authenticationDatabase=admin --numInsertionWorkersPerCollection=4 --bypassDocumentValidation -d likingtest /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest >> 10.2.2.2.log 2>&1 &
tail -100f /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/10.2.2.2.log
以上导入:
2023-09-13T21:59:55.452+0800    The --db and --collection flags are deprecated for this use-case; please use --nsInclude instead, i.e. with --nsInclude=${DATABASE}.${COLLECTION}
2023-09-13T21:59:55.452+0800    building a list of collections to restore from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest dir
2023-09-13T21:59:55.466+0800    reading metadata for likingtest.oprceConfiguration from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/oprceConfiguration.metadata.json
2023-09-13T21:59:55.478+0800    reading metadata for likingtest.oprceDataObj from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/oprceDataObj.metadata.json
2023-09-13T21:59:55.491+0800    reading metadata for likingtest.oprcesDataObjInit from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/oprcesDataObjInit.metadata.json
2023-09-13T21:59:55.503+0800    reading metadata for likingtest.role from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/role.metadata.json
2023-09-13T21:59:55.508+0800    reading metadata for likingtest.activityConfiguration from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/activityConfiguration.metadata.json
2023-09-13T21:59:55.511+0800    reading metadata for likingtest.history_task from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/history_task.metadata.json
2023-09-13T21:59:55.512+0800    reading metadata for likingtest.resOutRelDataSnapshot from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/resOutRelDataSnapshot.metadata.json
2023-09-13T21:59:55.520+0800    reading metadata for likingtest.snapshotResource from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/snapshotResource.metadata.json
2023-09-13T21:59:55.524+0800    reading metadata for likingtest.oprceDataObjDraft from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/oprceDataObjDraft.metadata.json
2023-09-13T21:59:55.526+0800    reading metadata for likingtest.oprceDataObjInit from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/oprceDataObjInit.metadata.json
2023-09-13T21:59:55.761+0800    restoring likingtest.snapshotResource from /u01/nfs/xxxxx_mongodb/10.1.1.1/20230913/likingtest/snapshotResource.bson
...
2023-09-13T22:00:01.451+0800    [........................]      likingtest.oprceDataObj   408MB/1205GB    (0.0%)
...
2023-09-13T21:59:58.323+0800    finished restoring likingtest.oprceDataObjDraft (1559 documents, 0 failures)
2023-09-13T22:00:01.034+0800    finished restoring likingtest.resOutRelDataSnapshot (34426 documents, 0 failures)
2023-09-13T22:00:01.559+0800    finished restoring likingtest.history_task (3629 documents, 0 failures)
2023-09-13T22:00:02.086+0800    finished restoring likingtest.activityConfiguration (974 documents, 0 failures)
2023-09-13T22:00:02.293+0800    finished restoring likingtest.oprceConfiguration (162 documents, 0 failures)
2023-09-13T22:00:02.529+0800    finished restoring likingtest.oprcesDataObjInit (4 documents, 0 failures)
2023-09-13T22:00:02.857+0800    finished restoring likingtest.role (10 documents, 0 failures)
2023-09-13T22:00:29.153+0800    [########################]  likingtest.snapshotResource  2.04GB/2.04GB  (100.0%)
2023-09-13T22:00:29.155+0800    finished restoring likingtest.snapshotResource (50320 documents, 0 failures)
...
2023-09-14T00:18:58.451+0800    [############............]      likingtest.oprceDataObj  651GB/1205GB   (54.0%)
2023-09-14T00:18:59.857+0800    [########################]  likingtest.oprceDataObjInit  635GB/635GB  (100.0%)
2023-09-14T00:18:59.888+0800    finished restoring likingtest.oprceDataObjInit (43776648 documents, 0 failures)
...
2023-09-14T02:05:58.904+0800    [########################]      likingtest.oprceDataObj  1205GB/1205GB  (100.0%)
2023-09-14T02:05:58.937+0800    finished restoring likingtest.oprceDataObj (53311330 documents, 0 failures)
2023-09-14T02:05:58.945+0800    no indexes to restore for collection likingtest.activityConfiguration
2023-09-14T02:05:58.945+0800    no indexes to restore for collection likingtest.history_task
2023-09-14T02:05:58.945+0800    restoring indexes for collection likingtest.oprcesDataObjInit from metadata
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"flowId_1_activityConfiguration.activityNameEn_1", "ns":"likingtest.oprcesDataObjInit", "v":2}, Key:primitive.D{primitive.E{Key:"flowId", Value:1}, primitive.E{Key:"activityConfiguration.activityNameEn", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"oprceInfo.oprceInstID_1_activityInfo.activityInstID_1_workitemInfo.workItemID_1", "ns":"likingtest.oprcesDataObjInit", "v":2}, Key:primitive.D{primitive.E{Key:"oprceInfo.oprceInstID", Value:1}, primitive.E{Key:"activityInfo.activityInstID", Value:1}, primitive.E{Key:"workitemInfo.workItemID", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    no indexes to restore for collection likingtest.role
2023-09-14T02:05:58.976+0800    no indexes to restore for collection likingtest.snapshotResource
2023-09-14T02:05:58.976+0800    no indexes to restore for collection likingtest.oprceDataObjDraft
2023-09-14T02:05:58.976+0800    restoring indexes for collection likingtest.oprceDataObjInit from metadata
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"oprceInfo.oprceInstID_1_activityInfo.activityInstID_1_workitemInfo.workItemID_1", "ns":"likingtest.oprceDataObjInit", "v":2}, Key:primitive.D{primitive.E{Key:"oprceInfo.oprceInstID", Value:1}, primitive.E{Key:"activityInfo.activityInstID", Value:1}, primitive.E{Key:"workitemInfo.workItemID", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"flowNo_1", "ns":"likingtest.oprceDataObjInit", "v":2}, Key:primitive.D{primitive.E{Key:"flowNo", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    no indexes to restore for collection likingtest.oprceConfiguration
2023-09-14T02:05:58.976+0800    no indexes to restore for collection likingtest.resOutRelDataSnapshot
2023-09-14T02:05:58.976+0800    restoring indexes for collection likingtest.oprceDataObj from metadata
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"flowId_1_activityConfiguration.activityNameEn_1", "ns":"likingtest.oprceDataObj", "v":2}, Key:primitive.D{primitive.E{Key:"flowId", Value:1}, primitive.E{Key:"activityConfiguration.activityNameEn",Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"flowNo_1", "ns":"likingtest.oprceDataObj", "v":2}, Key:primitive.D{primitive.E{Key:"flowNo", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"oprceInfo.oprceInstID_1_activityInfo.activityInstID_1_workitemInfo.workItemID_1", "ns":"likingtest.oprceDataObj", "v":2}, Key:primitive.D{primitive.E{Key:"oprceInfo.oprceInstID", Value:1}, primitive.E{Key:"activityInfo.activityInstID", Value:1}, primitive.E{Key:"workitemInfo.workItemID", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T02:05:58.976+0800    index: &idx.IndexDocument{Options:primitive.M{"name":"flowId_1_activityConfiguration.activityNameEn_1", "ns":"likingtest.oprceDataObjInit", "v":2}, Key:primitive.D{primitive.E{Key:"flowId", Value:1}, primitive.E{Key:"activityConfiguration.activityNameEn", Value:1}}, PartialFilterExpression:primitive.D(nil)}
2023-09-14T03:45:47.152+0800    97179062 document(s) restored successfully. 0 document(s) failed to restore.

可见:
1、配置并发参数 --numInsertionWorkersPerCollection=4 和 检查参数 bypassDocumentValidation 后,restore速度大大提升,1.2T 的一个大集合 oprceDataObj,由原来默认restore方式约 12h,降为:4h
2、restore完所有数据以后,最后再restore索引,restore索引还是需要一定的时间,本次耗时:1h40m【注:实际没有成功,索引并未生效】
3、新版本的 -d -c 参数需统一修改为:--nsInclude --nsFrom= --nsTo=

■ 2023-09-14T10:40 第2次8并发导入测试

mongorestore --port=20000 -uadmin -p'passwd' --authenticationDatabase=admin --numInsertionWorkersPerCollection=8 --bypassDocumentValidation -d likingtest /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914/likingtest >> 10.2.2.2.log 2>&1 &
tail -100f /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914/10.2.2.2.log
---
2023-09-14T10:40:45.492+0800    The --db and --collection flags are deprecated for this use-case; please use --nsInclude instead, i.e. with --nsInclude=${DATABASE}.${COLLECTION}
...
2023-09-14T10:40:48.493+0800    [........................]       likingtest.oprceDataObj   112MB/1208GB    (0.0%)
...
2023-09-14T12:57:34.859+0800    [########################]       likingtest.oprceDataObj  1208GB/1208GB  (100.0%)
2023-09-14T12:57:34.867+0800    finished restoring likingtest.oprceDataObj (53413481 documents, 0 failures)

可见:
1、配置并发参数 --numInsertionWorkersPerCollection=8 和 检查参数 --bypassDocumentValidation 后,restore速度再次大大提升,1.2T的一个大集合 oprceDataObj,由原来默认restore方式约 12h,降为:2h17m
2、本次恢复采用nfs备份恢复,一台8C的虚机,8并发恢复时cpu占用约40%,网络接收速度300MB/s左右,本地磁盘写入速度在30-200MB/s左右,可见网络带段不是瓶颈。可以预见,如果采用更高的主机配置,尤其是IO更好的磁盘,resotore时间必将更少。

■ 2023-09-14T16:10 第3次12并发导入测试

【注意】由于新版本mongorestore摒弃了-d -c参数,虽然可用但使用不够灵活,因此需使用新参数--nsInclude,对于该参数的使用,摸索了多次才找到使用的限制条件,即 directory 必须为数据库备份的根目录/上一级目录,而不是 数据库目录!即类似 dumpdir/20230914,而不是 dumpdir/20230914/database!这是一个巨大的坑,切记!当然,这个目录下一定不能有其他不可识别的文件,否则也会报错。

mongorestore --port=20000 -uadmin -p'passwd' --authenticationDatabase=admin --numInsertionWorkersPerCollection=12 --bypassDocumentValidation --nsInclude="likingtest.*" /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914 > 20230914.10.2.2.2-3.log 2>&1 &
tail -100f /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914.10.2.2.2-3.log
---
2023-09-14T16:10:19.245+0800    preparing collections to restore from
...
2023-09-14T18:18:18.996+0800    [########################]  likingtest.oprceDataObj  1208GB/1208GB  (100.0%)
2023-09-14T18:18:19.014+0800    finished restoring likingtest.oprceDataObj (53413481 documents, 0 failures)

可见:
1、并发由 8 增至 12 并无效率提升,结论是 6-8 个并发就可以,这一点与oracle的并发导入设置为 6 基本是最佳实践类似。
2、本次恢复采用nfs备份恢复,一台8C的虚机,12并发恢复时cpu占用约60%,网络接收速度300MB/s左右,本地磁盘写入速度在30-500MB/s左右,可见网络带段不是瓶颈。可以预见,如果采用更高的主机配置,尤其是IO更好的磁盘,resotore时间必将更少。
3、关于索引的restore,restore时首先恢复数据,最后再创建索引,比较大的集合的索引创建还是需要较多的时间:

      currentOpTime: '2023-09-14T20:23:59.435+08:00',
...
      command: {
        createIndexes: 'oprceDataObj',
        indexes: [
          {
            key: { flowId: 1, 'activityConfiguration.activityNameEn': 1 },
            name: 'flowId_1_activityConfiguration.activityNameEn_1',
            ns: 'likingtest.oprceDataObj'
          },
          {
            key: { flowNo: 1 },
            name: 'flowNo_1',
            ns: 'likingtest.oprceDataObj'
          },
          {
            key: {
              'oprceInfo.oprceInstID': 1,
              'activityInfo.activityInstID': 1,
              'workitemInfo.workItemID': 1
            },
            name: 'oprceInfo.oprceInstID_1_activityInfo.activityInstID_1_workitemInfo.workItemID_1',
            ns: 'likingtest.oprceDataObj'
          }
        ],
.....
      currentOpTime: '2023-09-14T20:23:59.489+08:00',
...
      command: {
        createIndexes: 'oprcesDataObjInit',
        indexes: [
          {
            key: { flowId: 1, 'activityConfiguration.activityNameEn': 1 },
            name: 'flowId_1_activityConfiguration.activityNameEn_1',
            ns: 'likingtest.oprcesDataObjInit'
          },
          {
            key: {
              'oprceInfo.oprceInstID': 1,
              'activityInfo.activityInstID': 1,
              'workitemInfo.workItemID': 1
            },
            name: 'oprceInfo.oprceInstID_1_activityInfo.activityInstID_1_workitemInfo.workItemID_1',
            ns: 'likingtest.oprcesDataObjInit'
          }
        ],
......第二天再看,还没创建完索引:
      currentOpTime: '2023-09-15T09:16:16.460+08:00',
      effectiveUsers: [ { user: 'admin', db: 'admin' } ],
      runBy: [ { user: '__system', db: 'local' } ],
      threaded: true,
      opid: 'shard1:11312917',
      lsid: {
        id: new UUID("e78379ff-9664-46b1-9e87-2bdd4abc5c5f"),
        uid: Binary.createFromBase64("O0CMtIVItQN4IsEOsJdrPL8s7jv5xwh5a/A5Qfvs2A8=", 0)
      },
      secs_running: Long("53877"),
      microsecs_running: Long("53877330742"),
      op: 'command',
      ns: 'likingtest.oprcesDataObjInit',
      redacted: false,
      command: {
        createIndexes: 'oprcesDataObjInit',
......第二天满24h,还没创建完索引:
      currentOpTime: '2023-09-15T18:55:16.877+08:00',
      effectiveUsers: [ { user: 'admin', db: 'admin' } ],
      runBy: [ { user: '__system', db: 'local' } ],
      threaded: true,
      opid: 'shard1:11312917',
      lsid: {
        id: new UUID("e78379ff-9664-46b1-9e87-2bdd4abc5c5f"),
        uid: Binary.createFromBase64("O0CMtIVItQN4IsEOsJdrPL8s7jv5xwh5a/A5Qfvs2A8=", 0)
      },
      secs_running: Long("88617"),
      microsecs_running: Long("88617747875"),
      op: 'command',
      ns: 'likingtest.oprcesDataObjInit',
      redacted: false,
      command: {
        createIndexes: 'oprcesDataObjInit',
        indexes: [
          {
            key: { flowId: 1, 'activityConfiguration.activityNameEn': 1 },
            name: 'flowId_1_activityConfiguration.activityNameEn_1',
            ns: 'likingtest.oprcesDataObjInit'
          },

以上可见,mongorestore 导入数据库的数据效率目前是基本可控、可接受的,至少对于1.2T的大集合是可以接受的,但是最后的索引创建实在过于缓慢,且没有找到合适的解决办法:索引需多并发执行创建,且确保索引生效,本次索引创建最后并未生效

■ 2023-09-15T19:02 第4次10并发导入测试,不恢复索引

mongorestore --port=20000 -uadmin -p'passwd' --authenticationDatabase=admin --numInsertionWorkersPerCollection=10 --bypassDocumentValidation --nsInclude="likingtest.*" --nsFrom="likingtest.*" --nsTo="likingtest.*" --noIndexRestore /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914 > 20230914.10.2.2.2-4.log 2>&1 &
tail -100f /u01/nfs/xxxxx_mongodb/10.1.1.1/20230914.10.2.2.2-4.log
2023-09-15T19:02:59.747+0800    preparing collections to restore from
...
2023-09-15T21:24:36.145+0800    [########################]  likingtest.oprceDataObj  1208GB/1208GB  (100.0%)
2023-09-15T21:24:36.161+0800    finished restoring likingtest.oprceDataObj (53413481 documents, 0 failures)
2023-09-15T21:24:36.165+0800    97367732 document(s) restored successfully. 0 document(s) failed to restore.

以上可见,耗时:2h22m

结论

1、restore 时需设置大数据量 collection 多并发导入:--numInsertionWorkersPerCollection=8
2、不恢复索引:--noIndexRestore
3、数据恢复后,后台创建索引:本站搜索"MongoDB 重建索引"

相关实践学习
MongoDB数据库入门
MongoDB数据库入门实验。
快速掌握 MongoDB 数据库
本课程主要讲解MongoDB数据库的基本知识,包括MongoDB数据库的安装、配置、服务的启动、数据的CRUD操作函数使用、MongoDB索引的使用(唯一索引、地理索引、过期索引、全文索引等)、MapReduce操作实现、用户管理、Java对MongoDB的操作支持(基于2.x驱动与3.x驱动的完全讲解)。 通过学习此课程,读者将具备MongoDB数据库的开发能力,并且能够使用MongoDB进行项目开发。   相关的阿里云产品:云数据库 MongoDB版 云数据库MongoDB版支持ReplicaSet和Sharding两种部署架构,具备安全审计,时间点备份等多项企业能力。在互联网、物联网、游戏、金融等领域被广泛采用。 云数据库MongoDB版(ApsaraDB for MongoDB)完全兼容MongoDB协议,基于飞天分布式系统和高可靠存储引擎,提供多节点高可用架构、弹性扩容、容灾、备份回滚、性能优化等解决方案。 产品详情: https://www.aliyun.com/product/mongodb
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