• 【MongoDB】MongoDB 性能优化


    最全的Java后端知识体系 https://www.pdai.tech, 每天更新中...

    在BI服务中通过查询聚合语句分析定位慢查询/聚合分析,小结如下:

    • 慢查询定位:
      通过Profile分析慢查询

    • 对于查询优化
      通过添加相应索引提升查询速度;

    • 对于聚合大数据方案:
      首先要说明的一个问题是,对于OLAP型的操作,期望不应该太高。毕竟是对于大量数据的操作,光从IO就已经远超通常的OLTP操作,所以要求达到OLTP操作的速度和并发是不现实的,也是没有意义的。但并不是说一点优化空间也没有。

    这样优化之后预计在可以提升一部分查询性能,但是并不能解决。原因开头说了,对OLAP就不能期望这么高,应该从源头入手,考虑:

    1) 每次eventType字段和insertTime有更新或插入时就做好计数
    
    2) 每隔一段时间做一次完整的统计,缓存统计结果,查询的时候直接展现给用户
    

    问题描述

    执行BI服务的接口, 发现返回一天的记录需要10s左右,这明显是有问题:

    问题定位

    定位慢查询

    为了定位查询,需要查看当前mongo profile的级别, profile的级别有0|1|2,分别代表意思:0代表关闭,1代表记录慢命令,2代表全部

    db.getProfilingLevel()
    

    显示为0, 表示默认下是没有记录的。

    设置profile级别,设置为记录慢查询模式, 所有超过1000ms的查询语句都会被记录下来

    db.setProfilingLevel(1, 1000)
    

    再次执行BI一天的查询接口,查看Profile, 发现确实记录了这条慢查询:

    分析慢查询语句

    通过view document查看慢查询的profile记录

    {
        "op" : "command",
        "ns" : "standalone.application_alert",
        "command" : {
            "aggregate" : "application_alert",
            "pipeline" : [ 
                {
                    "$match" : {
                        "factoryId" : "10001",
                        "$and" : [ 
                            {
                                "insertTime" : {
                                    "$gte" : ISODate("2018-03-25T16:00:00.000Z"),
                                    "$lte" : ISODate("2018-03-26T09:04:20.288Z")
                                }
                            }
                        ]
                    }
                }, 
                {
                    "$project" : {
                        "eventType" : 1,
                        "date" : {
                            "$concat" : [ 
                                {
                                    "$substr" : [ 
                                        {
                                            "$year" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        4
                                    ]
                                }, 
                                "-", 
                                {
                                    "$substr" : [ 
                                        {
                                            "$month" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        2
                                    ]
                                }, 
                                "-", 
                                {
                                    "$substr" : [ 
                                        {
                                            "$dayOfMonth" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        2
                                    ]
                                }
                            ]
                        }
                    }
                }, 
                {
                    "$group" : {
                        "_id" : {
                            "date" : "$date",
                            "eventType" : "$eventType"
                        },
                        "count" : {
                            "$sum" : 1
                        }
                    }
                }
            ]
        },
        "keysExamined" : 0,
        "docsExamined" : 2636052,
        "numYield" : 20651,
        "locks" : {
            "Global" : {
                "acquireCount" : {
                    "r" : NumberLong(41310)
                }
            },
            "Database" : {
                "acquireCount" : {
                    "r" : NumberLong(20655)
                }
            },
            "Collection" : {
                "acquireCount" : {
                    "r" : NumberLong(20654)
                }
            }
        },
        "nreturned" : 0,
        "responseLength" : 196,
        "protocol" : "op_query",
        "millis" : 9484,
        "planSummary" : "COLLSCAN",
        "ts" : ISODate("2018-03-26T08:44:51.322Z"),
        "client" : "10.11.0.118",
        "allUsers" : [ 
            {
                "user" : "standalone",
                "db" : "standalone"
            }
        ],
        "user" : "standalone@standalone"
    }
    

    从上面profile中可以看到我们执行的BI 查询接口对应到Mongo执行了一个pipleline:

    • 第一步: match 工厂ID是10001的记录,时间段是当前一天
         {
                "$match" : {
                    "factoryId" : "10001",
                    "$and" : [ 
                        {
                            "insertTime" : {
                                "$gte" : ISODate("2018-03-25T16:00:00.000Z"),
                                "$lte" : ISODate("2018-03-26T09:04:20.288Z")
                            }
                        }
                    ]
                }
            },
    
    • 第二步: 字段映射,project:
              {
                    "$project" : {
                        "eventType" : 1,
                        "date" : {
                            "$concat" : [ 
                                {
                                    "$substr" : [ 
                                        {
                                            "$year" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        4
                                    ]
                                }, 
                                "-", 
                                {
                                    "$substr" : [ 
                                        {
                                            "$month" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        2
                                    ]
                                }, 
                                "-", 
                                {
                                    "$substr" : [ 
                                        {
                                            "$dayOfMonth" : [ 
                                                "$insertTime"
                                            ]
                                        }, 
                                        0, 
                                        2
                                    ]
                                }
                            ]
                        }
                    }
                }, 
    

    可以看到除了对event_type做了简单的project外,还对insertTime字段做了拼接,拼接为yyyy-MM-dd格式,并且project为date字段。

    • 第三步: group操作
                {
                    "$group" : {
                        "_id" : {
                            "date" : "$date",
                            "eventType" : "$eventType"
                        },
                        "count" : {
                            "$sum" : 1
                        }
                    }
    

    对#2中的date和event_type进行group,统计不同日期和事件类型所对应的事件数量(count).

    对应的其它字段:

    • Mills: 花了9484毫秒返回查询结果
    • ts:命令执行时间
    • info:命令的内容
    • query:代表查询
    • ns: standalone.application_alert 代表查询的库与集合
    • nreturned:返回记录数及用时
    • reslen:返回的结果集大小,byte数
    • nscanned:扫描记录数量

    如果发现9484毫秒时间比较长,那么就需要作优化。

    通常来说,经验上可以对这些指标做参考:

    • 比如nscanned数很大,或者接近记录总数,那么可能没有用到索引查询。
    • reslen很大,有可能返回没必要的字段。
    • nreturned很大,那么有可能查询的时候没有加限制。

    查看DB/Server/Collection的状态

    • DB status

    • 查看Server状态

    由于server 状态指标众多,我这边只列出来一部分。

    {
        "host" : "OPASTORMON", #主机名 
        "version" : "3.4.1", #版本号
        "process" : "mongod", #进程名  
        "pid" : NumberLong(1462), #进程ID  
        "uptime" : 10111875.0, #运行时间 
        "uptimeMillis" : NumberLong(10111875602), #运行时间 
        "uptimeEstimate" : NumberLong(10111875), #运行时间 
        "localTime" : ISODate("2018-03-26T09:14:13.679Z"), #当前时间 
        "asserts" : {
            "regular" : 0,
            "warning" : 0,
            "msg" : 0,
            "user" : 26549,
            "rollovers" : 0
        },
        "connections" : {
            "current" : 104, #当前链接数  
            "available" : 715, #可用链接数
            "totalCreated" : 11275
        },
        "extra_info" : {
            "note" : "fields vary by platform",
            "page_faults" : 49
        },
        "globalLock" : {
            "totalTime" : NumberLong(10111875549000), #总运行时间(ns)
            "currentQueue" : {
                "total" : 0, #当前需要执行的队列
                "readers" : 0, #读队列
                "writers" : 0 #写队列
            },
            "activeClients" : {
                "total" : 110, #当前客户端执行的链接数  
                "readers" : 0, #读链接数  
                "writers" : 0 #写链接数 
            }
        },
        "locks" : {
            "Global" : {
                "acquireCount" : {
                    "r" : NumberLong(8457368136),
                    "w" : NumberLong(1025512487),
                    "W" : NumberLong(7)
                },
                "acquireWaitCount" : {
                    "r" : NumberLong(2)
                },
                "timeAcquiringMicros" : {
                    "r" : NumberLong(94731)
                }
            },
            "Database" : {
                "acquireCount" : {
                    "r" : NumberLong(3715927334),
                    "w" : NumberLong(1025512452),
                    "R" : NumberLong(194),
                    "W" : NumberLong(69)
                },
                "acquireWaitCount" : {
                    "r" : NumberLong(13),
                    "w" : NumberLong(5),
                    "R" : NumberLong(6),
                    "W" : NumberLong(3)
                },
                "timeAcquiringMicros" : {
                    "r" : NumberLong(530972),
                    "w" : NumberLong(426173),
                    "R" : NumberLong(3207),
                    "W" : NumberLong(1321)
                }
            },
            "Collection" : {
                "acquireCount" : {
                    "r" : NumberLong(3715046899),
                    "w" : NumberLong(1025512453)
                }
            },
            "Metadata" : {
                "acquireCount" : {
                    "w" : NumberLong(1),
                    "W" : NumberLong(3)
                }
            }
        },
        "network" : {
            "bytesIn" : NumberLong(373939915493), #输入数据(byte)
            "bytesOut" : NumberLong(961227224728), #输出数据(byte)
            "physicalBytesIn" : NumberLong(373939915493),#物理输入数据(byte)
            "physicalBytesOut" : NumberLong(961054421482),#物理输入数据(byte)
            "numRequests" : NumberLong(3142377739) #请求数  
        },
        "opLatencies" : {
            "reads" : {
                "latency" : NumberLong(3270742192035),
                "ops" : NumberLong(540111914)
            },
            "writes" : {
                "latency" : NumberLong(261946981235),
                "ops" : NumberLong(1024301418)
            },
            "commands" : {
                "latency" : NumberLong(458086641),
                "ops" : NumberLong(6776702)
            }
        },
        "opcounters" : {
            "insert" : 6846448, #插入操作数  
            "query" : 248443106, #查询操作数
            "update" : 1018594976, #更新操作数  
            "delete" : 1830, #删除操作数
            "getmore" : 162213, #获取更多的操作数
            "command" : 298306448 #其他命令操作数
        },
        "opcountersRepl" : {
            "insert" : 0,
            "query" : 0,
            "update" : 0,
            "delete" : 0,
            "getmore" : 0,
            "command" : 0
        },
        "storageEngine" : {
            "name" : "wiredTiger",
            "supportsCommittedReads" : true,
            "readOnly" : false,
            "persistent" : true
        },
        "tcmalloc" : {
            "generic" : {
                "current_allocated_bytes" : NumberLong(3819325752),
                "heap_size" : NumberLong(6959509504)
            },
            "tcmalloc" : {
                "pageheap_free_bytes" : 199692288,
                "pageheap_unmapped_bytes" : NumberLong(2738442240),
                "max_total_thread_cache_bytes" : NumberLong(1073741824),
                "current_total_thread_cache_bytes" : 35895120,
                "total_free_bytes" : 202049224,
                "central_cache_free_bytes" : 165650360,
                "transfer_cache_free_bytes" : 503744,
                "thread_cache_free_bytes" : 35895120,
                "aggressive_memory_decommit" : 0,
                "formattedString" : "------------------------------------------------
    MALLOC:     3819325752 ( 3642.4 MiB) Bytes in use by application
    MALLOC: +    199692288 (  190.4 MiB) Bytes in page heap freelist
    MALLOC: +    165650360 (  158.0 MiB) Bytes in central cache freelist
    MALLOC: +       503744 (    0.5 MiB) Bytes in transfer cache freelist
    MALLOC: +     35895120 (   34.2 MiB) Bytes in thread cache freelists
    MALLOC: +     40001728 (   38.1 MiB) Bytes in malloc metadata
    MALLOC:   ------------
    MALLOC: =   4261068992 ( 4063.7 MiB) Actual memory used (physical + swap)
    MALLOC: +   2738442240 ( 2611.6 MiB) Bytes released to OS (aka unmapped)
    MALLOC:   ------------
    MALLOC: =   6999511232 ( 6675.3 MiB) Virtual address space used
    MALLOC:
    MALLOC:         521339              Spans in use
    MALLOC:            115              Thread heaps in use
    MALLOC:           4096              Tcmalloc page size
    ------------------------------------------------
    Call ReleaseFreeMemory() to release freelist memory to the OS (via madvise()).
    Bytes released to the OS take up virtual address space but no physical memory.
    "
            }
        },
        "mem" : {
            "bits" : 64, #64位系统  
            "resident" : 4103, #占有物理内存数  
            "virtual" : 7045, #占有虚拟内存  
            "supported" : true, #是否支持扩展内存  
            "mapped" : 0,
            "mappedWithJournal" : 0
        },
        "ok" : 1.0
    }
    
    • 查看application_alert这个collection的状态
    {
        "ns" : "standalone.application_alert",
        "size" : 783852548,
        "count" : 2638262,
        "avgObjSize" : 297,
        "storageSize" : 189296640,
        "capped" : false,
        "wiredTiger" : {
            "metadata" : {
                "formatVersion" : 1
            },
            "creationString" : "allocation_size=4KB,app_metadata=(formatVersion=1),block_allocation=best,block_compressor=snappy,cache_resident=false,checksum=on,colgroups=,collator=,columns=,dictionary=0,encryption=(keyid=,name=),exclusive=false,extractor=,format=btree,huffman_key=,huffman_value=,ignore_in_memory_cache_size=false,immutable=false,internal_item_max=0,internal_key_max=0,internal_key_truncate=true,internal_page_max=4KB,key_format=q,key_gap=10,leaf_item_max=0,leaf_key_max=0,leaf_page_max=32KB,leaf_value_max=64MB,log=(enabled=true),lsm=(auto_throttle=true,bloom=true,bloom_bit_count=16,bloom_config=,bloom_hash_count=8,bloom_oldest=false,chunk_count_limit=0,chunk_max=5GB,chunk_size=10MB,merge_max=15,merge_min=0),memory_page_max=10m,os_cache_dirty_max=0,os_cache_max=0,prefix_compression=false,prefix_compression_min=4,source=,split_deepen_min_child=0,split_deepen_per_child=0,split_pct=90,type=file,value_format=u",
            "type" : "file",
            "uri" : "statistics:table:collection-4-6040851502998278747",
            "LSM" : {
                "bloom filter false positives" : 0,
                "bloom filter hits" : 0,
                "bloom filter misses" : 0,
                "bloom filter pages evicted from cache" : 0,
                "bloom filter pages read into cache" : 0,
                "bloom filters in the LSM tree" : 0,
                "chunks in the LSM tree" : 0,
                "highest merge generation in the LSM tree" : 0,
                "queries that could have benefited from a Bloom filter that did not exist" : 0,
                "sleep for LSM checkpoint throttle" : 0,
                "sleep for LSM merge throttle" : 0,
                "total size of bloom filters" : 0
            },
            "block-manager" : {
                "allocations requiring file extension" : 31543,
                "blocks allocated" : 346110,
                "blocks freed" : 124238,
                "checkpoint size" : 189259776,
                "file allocation unit size" : 4096,
                "file bytes available for reuse" : 20480,
                "file magic number" : 120897,
                "file major version number" : 1,
                "file size in bytes" : 189296640,
                "minor version number" : 0
            },
            "btree" : {
                "btree checkpoint generation" : 165242,
                "column-store fixed-size leaf pages" : 0,
                "column-store internal pages" : 0,
                "column-store variable-size RLE encoded values" : 0,
                "column-store variable-size deleted values" : 0,
                "column-store variable-size leaf pages" : 0,
                "fixed-record size" : 0,
                "maximum internal page key size" : 368,
                "maximum internal page size" : 4096,
                "maximum leaf page key size" : 2867,
                "maximum leaf page size" : 32768,
                "maximum leaf page value size" : 67108864,
                "maximum tree depth" : 3,
                "number of key/value pairs" : 0,
                "overflow pages" : 0,
                "pages rewritten by compaction" : 0,
                "row-store internal pages" : 0,
                "row-store leaf pages" : 0
            },
            "cache" : {
                "bytes currently in the cache" : 1014702364,
                "bytes read into cache" : 0,
                "bytes written from cache" : 1888143292.0,
                "checkpoint blocked page eviction" : 0,
                "data source pages selected for eviction unable to be evicted" : 0,
                "hazard pointer blocked page eviction" : 0,
                "in-memory page passed criteria to be split" : 224,
                "in-memory page splits" : 112,
                "internal pages evicted" : 0,
                "internal pages split during eviction" : 0,
                "leaf pages split during eviction" : 0,
                "modified pages evicted" : 2,
                "overflow pages read into cache" : 0,
                "overflow values cached in memory" : 0,
                "page split during eviction deepened the tree" : 0,
                "page written requiring lookaside records" : 0,
                "pages read into cache" : 0,
                "pages read into cache requiring lookaside entries" : 0,
                "pages requested from the cache" : 49191856,
                "pages written from cache" : 217176,
                "pages written requiring in-memory restoration" : 0,
                "unmodified pages evicted" : 0
            },
            "cache_walk" : {
                "Average difference between current eviction generation when the page was last considered" : 0,
                "Average on-disk page image size seen" : 0,
                "Clean pages currently in cache" : 0,
                "Current eviction generation" : 0,
                "Dirty pages currently in cache" : 0,
                "Entries in the root page" : 0,
                "Internal pages currently in cache" : 0,
                "Leaf pages currently in cache" : 0,
                "Maximum difference between current eviction generation when the page was last considered" : 0,
                "Maximum page size seen" : 0,
                "Minimum on-disk page image size seen" : 0,
                "On-disk page image sizes smaller than a single allocation unit" : 0,
                "Pages created in memory and never written" : 0,
                "Pages currently queued for eviction" : 0,
                "Pages that could not be queued for eviction" : 0,
                "Refs skipped during cache traversal" : 0,
                "Size of the root page" : 0,
                "Total number of pages currently in cache" : 0
            },
            "compression" : {
                "compressed pages read" : 0,
                "compressed pages written" : 83604,
                "page written failed to compress" : 0,
                "page written was too small to compress" : 133572,
                "raw compression call failed, additional data available" : 0,
                "raw compression call failed, no additional data available" : 0,
                "raw compression call succeeded" : 0
            },
            "cursor" : {
                "bulk-loaded cursor-insert calls" : 0,
                "create calls" : 78758,
                "cursor-insert key and value bytes inserted" : 795578636,
                "cursor-remove key bytes removed" : 8857,
                "cursor-update value bytes updated" : 0,
                "insert calls" : 2642785,
                "next calls" : 5850718215.0,
                "prev calls" : 3,
                "remove calls" : 4460,
                "reset calls" : 48942545,
                "restarted searches" : 0,
                "search calls" : 10229,
                "search near calls" : 46285468,
                "truncate calls" : 0,
                "update calls" : 0
            },
            "reconciliation" : {
                "dictionary matches" : 0,
                "fast-path pages deleted" : 0,
                "internal page key bytes discarded using suffix compression" : 7946666,
                "internal page multi-block writes" : 60010,
                "internal-page overflow keys" : 0,
                "leaf page key bytes discarded using prefix compression" : 0,
                "leaf page multi-block writes" : 64250,
                "leaf-page overflow keys" : 0,
                "maximum blocks required for a page" : 253,
                "overflow values written" : 0,
                "page checksum matches" : 10496129,
                "page reconciliation calls" : 189077,
                "page reconciliation calls for eviction" : 1,
                "pages deleted" : 7
            },
            "session" : {
                "object compaction" : 0,
                "open cursor count" : 35
            },
            "transaction" : {
                "update conflicts" : 0
            }
        },
        "nindexes" : 1,
        "totalIndexSize" : 24420352,
        "indexSizes" : {
            "_id_" : 24420352
        },
        "ok" : 1.0
    }
    

    性能优化

    性能优化 - 索引

    通过上述的指标,需要优化的话,第一考虑的是查看是否对该collection创建了索引:

    • 查看是否有相关索引

    • 增加相关字段的搜索索引
      发现只有对id的索引,所以接下来对application_alert创建event_type和factory_id,timeStamp字段的索引
    db.application_alert.ensureIndex({"insertTime": 1, "eventType": 1});
    db.application_alert.ensureIndex({"insertTime": 1});
    db.application_alert.ensureIndex({"eventType": 1});
    db.application_alert.ensureIndex({"factoryId": 1});
    

    查看增加index后查询一天的数据聚合需要424ms, 基本可以接受。

    • 查询20天,看时间仍然需要20s

    • 通过增加索引小结
      到这里我们基本可以看到添加查询index对BI接口的影响,索引的添加只是解决了针对索引字段查询的效率,但是并不能解决查询之后数据的聚合问题。对一天而言由于数据量的少,查询速度提升显著,但是对大量数据做聚合仍然不合适。

    我们通过增加索引解决了什么问题?

    在没有索引的前提下,找出100万条{eventType: "abnormal"}需要多少时间?全表扫描COLLSCAN从700w条数据中找出600w条,跟从1亿条数据中找出600w条显然是两个概念。命中索引IXSCAN,这个差异就会小很多,几乎可以忽略。索引的添加只是解决了针对索引字段查询的效率,但是并不能解决查询之后数据的聚合问题。顺便应该提一下看效率是否有差异应该看执行计划,不要看执行时间,时间是不准确的。

    性能优化 - 聚合大量数据

    那问题是,如何解决这种查询聚合大量数据的问题呢?

    首先要说明的一个问题是,对于OLAP型的操作,期望不应该太高。毕竟是对于大量数据的操作,光从IO就已经远超通常的OLTP操作,所以要求达到OLTP操作的速度和并发是不现实的,也是没有意义的。但并不是说一点优化空间也没有。

    这样优化之后预计在可以提升一部分查询性能,但是并不能解决。原因开头说了,对OLAP就不能期望这么高。如果你真有这方面的需求,就应该从源头入手,考虑:

    • 每次info字段有更新或插入时就做好计数
    • 每隔一段时间做一次完整的统计,缓存统计结果,查询的时候直接展现给用户
  • 相关阅读:
    轻松背后的N+疲惫——系统日志
    Wcf实现IServiceBehavior拓展机制
    一个迭代小算法,根据指定的个数对下标进行分组
    SqlServer 游标用法
    DataView RowFilter
    Asp.net Repeater 排序
    asp.net 导出Excel
    C# 导出Excel(csv )
    C# 上传图片
    C# 调用外部.exe文件
  • 原文地址:https://www.cnblogs.com/pengdai/p/9185905.html
Copyright © 2020-2023  润新知