安装及部署

学习一个新的数据库,当然首先第一步就是要来安装数据库以及部署数据库服务。

  • 安装
  1. 在mongoDB官网下载相关的安装包,就像安装qq一样的安装mongodb。
  2. 我选择在我电脑上以F:\software\mongodb\server此路径来作为mongodb的安装路径。然后在server同级目录下创建data目录,在其下创建两个目录db和log,分别用于存放数据库数据和mongo的日志。如图所示: 
  • 部署运行
  1. 使用命令行在mongo的安装目录下的bin目录中运行如下命令:mongod.exe –dbpath F:\software\mongodb\data\db,指定数据库位置,如果没有输出异常信息,则表示启动mongoDB的服务端成功。这时就可以使用mongoDB了。
  2. 将mongoDB作为windows的服务。使用管理员来运行命令行。依旧进入到mongo的安装目录下的bin目录中,执行如下命令:mongod.exe –logpath “F:\software\mongodb\data\log\mongo.log” –logappend –dbpath “F:\software\mongodb\data\db” –serviceName “myMongo” –install。 
    以上命令解释
  • logpath:日志所在路径
  • logappend:日志追加
  • dbpath:数据库路径
  • serviceName:注册到windows的服务的名称
  • install:安装到windows服务
  1. 当注册为windows服务后,可以在windows服务列表查看到刚刚新添加的服务。由于是在个人电脑上作为学习使用,所以通常我会将这种服务的启动方式设置为手动启动。也就是说,在我需要使用mongoDB的时候,我可以通过命令行命令net start myMongo来启动mongo的服务。这个命令在执行完步骤2的时候也会在日志文件中有所提示。

    至此,mongoDB的安装及部署就完成了。

问题:

  • 在刚开始安装运行的时候,可能会出现如下图所示的情况: 

    这是由于关闭了mongo的服务端,又去创建新的连接所导致的。 
    所以要么一直开着mongod,要么将其注册为windows的服务。只要服务一直在,mongoDB就在。

MongoDB的相关概念

下面的表格对关系型数据库mysql和非关系型数据库MongoDB做了相关概念的对比。

mysql

MongoDB

解释

database

database

数据库

table

collection

mysql称之为表,mongoDB称之为集合

row

document

mysql称之为数据行,mongoDB称之为数据文档

colunm

field

mysql称之为数据列,mongoDB称之为字段

primary key

primary key

mysql需要设置主键,mongoDB自动维护主键_id

下面是mongoDB常用的命令。

命令

解释

show dbs

显示所有的数据库名称

show collections

显示当前数据库中的所有集合

show users

显示当前数据库中的所有用户

show logs

显示可以访问的所有日志的名称

show log [name]

输出指定的日志,默认name为global

use [db_name]

使用给定的数据库,如果没有,则为创建

MongoDB的使用

  1. 数据库的新增与删除
  • 新增:使用下面的命令来新增数据库。当执行了use命令后,调用show dbs并不能看到刚刚新增的数据库,那是因为数据库中没有数据,所以咱们通过命令

db.集合名.insert

  • 向新增的数据库中新建一个集合并为其插入一条数据,之后再使用show dbs命令时就可以看到刚刚新建的数据库了。
> use earltest
switched to db earltest
> db
earltest
> show dbs
local  0.000GB
> db.mongotest.insert({"name":"练习"})
WriteResult({ "nInserted" : 1 })
> show dbs
earltest  0.000GB
local     0.000GB
  • 删除:使用

db.集合名.drop()

  • 来删除当前数据库下的指定的集合。使用

db.dropDatabase()

  • 来删除当前使用的数据库。删除之后,调用

show dbs

  • 就显示数据库已经被删除了。
> use local
switched to db local
> db.test.drop()
true
> db.dropDatabase()
{ "dropped" : "local", "ok" : 1 }
> show dbs
>

  1. 集合的新增与删除
  • 新增 
    通过使用命令

db.createCollect(集合名)

  • 来创建一个新的集合,例如:
> show dbs
earltest  0.000GB
> db.createCollection("student")
{ "ok" : 1 }
> show collections
student

以上语句相当于SQL的建表语句create table student(...),只是没有在建表时定义表结构,这就是关系型数据库与非关系型数据库最主要的区别。没有表结构的约束,那么mongoDB使用起来就更加灵活。其实可以不用执行创建集合的命令,因为在插入文档时,如果数据库中没有相应的集合,那么mongo会自动创建这个集合,并完成插入操作。

  • 删除 
    通过使用命令

db.集合名.drop()

  • 来删除指定的集合,例如:
> show collections
student
> db.mongotest.drop()
true
> show collections
>

以上语句相当于SQL的删表语句drop table student

  1. 文档的增删改查 
    mongoDB采用的数据结构是一种类似于JSON的BSON格式,即Binary JSON,二进制JSON格式。 
    常见的数据类型有以下这些:

数据类型

解释

String

字符串

Integer

整数类型,有32位和64位两种,分别记为Int32与Int64

Boolean

布尔类型,true还是false

Double

浮点类型

Arrays

数组,可以存放多个某一类型的数据

Object ID

用于存储文档的ID

  • 新增 
    通过命令

db.集合名.insert(document)

  • 来插入一个新的文档,例如:
> db.createCollection("student")
{ "ok" : 1 }
> show collections
student
>db.student.insert({"id":"1","name":"Adam","age":22,"sex":"male","major":"Psychology" })
WriteResult({ "nInserted" : 1 })
> db.student.find()
{ "_id" : ObjectId("57c83abfa33a42f78ac58e64"), "id" : "1", "name" : "Adam", "age" : 22, "sex" : "male", "major" : "Psychology" }

以上语句相当于SQL的向指定的表中插入一条数据,例如insert into student values("1","Adam","22","male","Psychology") 

文章最后附有student集合的初始数据,可供需要练习的读者直接练习使用。

  • 删除 
    通过命令

db.集合名.remove(document)

  • 来删除相关文档,document为过滤条件,例如:
> db.student.find()
{ "_id" : ObjectId("57c83abfa33a42f78ac58e64"), "id" : "1", "name" : "Adam", "age" : 22, "sex" : "male", "major" : "Psychology" }
{ "_id" : ObjectId("57c83cc2a33a42f78ac58e65"), "id" : "2", "name" : "Alax", "age" : 21, "sex" : "male", "major" : "Biology" }
> db.student.remove({"id":"2"})
WriteResult({ "nRemoved" : 1 })
> db.student.find()
{ "_id" : ObjectId("57c83abfa33a42f78ac58e64"), "id" : "1", "name" : "Adam", "age" : 22, "sex" : "male", "major" : "Psychology" }

以上语句相当于SQL的从指定表中删除相关数据delete from student where id="2"

  • 修改 
    通过命令

db.集合名.update(parameter)

  • 来更新相关文档数据。例如:
> db.student.find()
{ "_id" : ObjectId("57c977b3058cb6872afd9e9d"), "id" : "1", "name" : "Adam", "age" : 23, "sex" : "male", "major" : "Psychology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9e"), "id" : "2", "name" : "Alex", "age" : 21, "sex" : "male", "major" : "Biology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9f"), "id" : "3", "name" : "Andy", "age" : 19, "sex" : "male", "major" : "Chemistry" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea0"), "id" : "4", "name" : "Bill", "age" : 20, "sex" : "male", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea1"), "id" : "5", "name" : "Daisy", "age" : 20, "sex" : "female", "major" : "Sociology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea2"), "id" : "6", "name" : "Elizabeth", "age" : 20, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea3"), "id" : "7", "name" : "Emily", "age" : 23, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea4"), "id" : "8", "name" : "Helena", "age" : 24, "sex" : "female", "major" : "Biology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea5"), "id" : "9", "name" : "Julia", "age" : 23, "sex" : "female", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea6"), "id" : "10", "name" : "Simon", "age" : 21, "sex" : "male", "major" : "Chemistry" }
> db.student.update({"age":21},{$set:{"major":"Math"}})
WriteResult({ "nMatched" : 1, "nUpserted" : 0, "nModified" : 1 })
> db.student.find()
{ "_id" : ObjectId("57c977b3058cb6872afd9e9d"), "id" : "1", "name" : "Adam", "age" : 23, "sex" : "male", "major" : "Psychology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9e"), "id" : "2", "name" : "Alex", "age" : 21, "sex" : "male", "major" : "Math" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9f"), "id" : "3", "name" : "Andy", "age" : 19, "sex" : "male", "major" : "Chemistry" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea0"), "id" : "4", "name" : "Bill", "age" : 20, "sex" : "male", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea1"), "id" : "5", "name" : "Daisy", "age" : 20, "sex" : "female", "major" : "Sociology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea2"), "id" : "6", "name" : "Elizabeth", "age" : 20, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea3"), "id" : "7", "name" : "Emily", "age" : 23, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea4"), "id" : "8", "name" : "Helena", "age" : 24, "sex" : "female", "major" : "Biology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea5"), "id" : "9", "name" : "Julia", "age" : 23, "sex" : "female", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea6"), "id" : "10", "name" : "Simon", "age" : 21, "sex" : "male", "major" : "Chemistry" }

以上语句相当于SQL的更新语句update student set major='Math' where age='21',但是可以看到满足age=21的记录有两条,通过mongoDB的update方法更新后,只更新了一条数据。那是因为mongoDB默认更新只更新找到的第一个记录,所以如果需要满足我们的更新需求,那么需要为update方法再传递一个参数,multi,如下所示:

> db.student.update({"age":21},{$set:{"major":"Chinese"}},{multi:true})
WriteResult({ "nMatched" : 2, "nUpserted" : 0, "nModified" : 2 })
> db.student.find()
{ "_id" : ObjectId("57c977b3058cb6872afd9e9d"), "id" : "1", "name" : "Adam", "age" : 23, "sex" : "male", "major" : "Psychology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9e"), "id" : "2", "name" : "Alex", "age" : 21, "sex" : "male", "major" : "Chinese" }
{ "_id" : ObjectId("57c977b3058cb6872afd9e9f"), "id" : "3", "name" : "Andy", "age" : 19, "sex" : "male", "major" : "Chemistry" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea0"), "id" : "4", "name" : "Bill", "age" : 20, "sex" : "male", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea1"), "id" : "5", "name" : "Daisy", "age" : 20, "sex" : "female", "major" : "Sociology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea2"), "id" : "6", "name" : "Elizabeth", "age" : 20, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea3"), "id" : "7", "name" : "Emily", "age" : 23, "sex" : "female", "major" : "Histroy" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea4"), "id" : "8", "name" : "Helena", "age" : 24, "sex" : "female", "major" : "Biology" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea5"), "id" : "9", "name" : "Julia", "age" : 23, "sex" : "female", "major" : "Economics" }
{ "_id" : ObjectId("57c977b3058cb6872afd9ea6"), "id" : "10", "name" : "Simon", "age" : 21, "sex" : "male", "major" : "Chinese" }

update({query},{update},{multi})方法常用参数列表如下:

参数名

解释

query

相当于SQL的where

update

相当于SQL的set

multi

默认只更新找到的第一条记录,设置为true,则更新所有满足条件的记录

  • 查询 
    接下来就是使用最多的查询操作了,对于查询的操作,我们与其来和SQL对比,这样更容易理解。 
    还是利用上面创建的学生表来进行查询。
  1. 查询所有的学生 
    mongoDB:
db.student.find()
1.  
SQL:select * from student
1. 查询所有男生 
mongoDB:db.student.find({"sex":"male"})
1.  
SQL:select * from student where sex='male'
1. 查询年龄小于23岁的所有男生的id,姓名及专业 
mongoDB:db.student.find({"age":{$lt:23}},{id:"",name:"",major:""})
1.  
SQL:select id,name,major from student where age<23
1. 按照年龄降序查询所有学生 
mongoDB:db.student.find().sort({age:-1})
1.  
SQL:select * from student order by age desc
1. 统计学生总数 
mongoDB:db.student.count()
1.  
SQL:select count(*) from student
1. 统计历史专业的学生人数 
mongoDB:db.student.count({"major":"Histroy"})
1.  
SQL:select count(*) from student where major='Histroy'
1. 统计各个专业的人数 
mongoDB:db.student.aggregate([{$group:{_id:"$major","人数":{$sum:1}}}])
1.  
SQL:select count(*) from student group by major
1. 统计每个专业的学生人数,并求他们的平均年龄 
mongoDB:db.student.aggregate([{$group:{_id:"$major","学生人数":{$sum:1},"平均年龄":{$avg:"$age"}}}])
1.  
SQL:select major,count(major) as '学生人数',avg(age) as '平均年龄' from student group by major
1. 查询第二条到第七条的记录 
mongoDB:db.student.find().limit(6).skip(1)
1.  
SQL:select * from student limit 1,6;
1. 查询中文专业的男生学生信息 
mongoDB:db.student.find({$and:[{major:"Chinese"},{sex:"male"}]})
1.  
SQL:select * from student where major='Chinese' and sex='male'
1. 查询中文专业或者男生的学生信息 
mongoDB:db.student.find({$or:[{major:"Chinese"},{sex:"male"}]})
1.  
SQL:select * from student where major='Chinese' or sex='male'
1. 查询男生与女生的平均年龄 
mongoDB:db.student.aggregate([{$group:{_id:"$sex","平均年龄":{$avg:"$age"}}}])
1.  
SQL:select avg(age) as '平均年龄' from student group by age
1. 查询学号是1,3,4,5,6的学生信息 
mongoDB:db.student.find({"id":{$in:["1","3","4","5","6"]}})
1.  
SQL:select * from student where id in("1","3","4","5","6")
1. 查询以A开头学生姓名的学生信息 
mongoDB:db.student.find({"name":/^A/})
1.  
SQL:select * from student where name like 'A%'

总结

以上就是近期对于mongoDB数据库的一点学习小总结。当然这只是简单的查询,还没有涉及到复杂的查询,这主要是针对于刚刚接触NoSQL数据库,对一直以来使用关系型数据库的养成的查询习惯来说,一时间还不是很适应。随着大数据时代的到来,我们将会更多的使用到mongoDB这样的非关系型数据库,所以,在接下来的学习工作中,对于非关系型数据库还是要多多的去了解,学习,使用。

附以student集合初始数据:

db.student.insert(
[{"id":"1","name":"Adam","age":"22","sex":"male","major":"Psychology"},
{"id":"2","name":"Alex","age":"21","sex":"male","major":"Biology"},
{"id":"3","name":"Andy","age":"19","sex":"male","major":"Chemistry"},
{"id":"4","name":"Bill","age":"20","sex":"male","major":"Economics"},
{"id":"5","name":"Daisy","age":"20","sex":"female","major":"Sociology"},
{"id":"6","name":"Elizabeth","age":"20","sex":"female","major":"Histroy"},
{"id":"7","name":"Emily","age":"23","sex":"female","major":"Histroy"},
{"id":"8","name":"Helena","age":"24","sex":"female","major":"Biology"},
{"id":"9","name":"Julia","age":"23","sex":"female","major":"Economics"},
{"id":"10","name":"Simon","age":"21","sex":"male","major":"Chemistry"}
])