用python简单实现mysql数据同步到ElasticSearch

之前博客有用logstash-input-jdbc同步mysql数据到ElasticSearch,但是由于同步时间最少是一分钟一次,无法满足线上业务,所以只能自己实现一个,但是时间比较紧,所以简单实现一个

思路:

网上有很多思路用什么mysql的binlog功能什么的,但是我对mysql了解实在有限,所以用一个很呆板的办法查询mysql得到数据,再插入es,因为数据量不大,而且10秒间隔同步一次,效率还可以,为了避免服务器之间的时间差和mysql更新和查询产生的时间差,所以在查询更新时间条件时是和上一次同步开始时间比较,这样不管数据多少,更新耗时多少都不会少数据,因为原则是同步不漏掉任何数据,也可以程序多开将时间差和间隔时间差异化,因为用mysql中一个id当作es中的id,也避免了重复数据


使用:

只需要按照escongif.py写配置文件,然后写sql文件,最后直接执行mstes.py就可以了,我这个也是参考logstash-input-jdbc的配置形式


MsToEs

|----esconfig.py(配置文件)

|----mstes.py(同步程序)

|----sql_manage.py(数据库管理)

|----aa.sql(需要用到sql文件)

|----bb.sql(需要用到sql文件)


sql_manage.py:

# -*-coding:utf-8 -*-
__author__ = "ZJL"

from sqlalchemy.pool import QueuePool
from sqlalchemy import create_engine
from sqlalchemy.orm import sessionmaker, scoped_session
import traceback
import esconfig


# 用于不需要回滚和提交的操作
def find(func):
    def wrapper(self, *args, **kwargs):
        try:
            return func(self, *args, **kwargs)
        except Exception as e:
            print(traceback.format_exc())
            print(str(e))
            return traceback.format_exc()
        finally:
            self.session.close()

    return wrapper


class MysqlManager(object):
    def __init__(self):
        mysql_connection_string = esconfig.mysql.get("mysql_connection_string")

        self.engine = create_engine('mysql+pymysql://'+mysql_connection_string+'?charset=utf8', poolclass=QueuePool,
                                    pool_recycle=3600)
        # self.DB_Session = sessionmaker(bind=self.engine)
        # self.session = self.DB_Session()
        self.DB_Session = sessionmaker(bind=self.engine, autocommit=False, autoflush=True, expire_on_commit=False)
        self.db = scoped_session(self.DB_Session)
        self.session = self.db()

    @find
    def select_all_dict(self, sql, keys):
        a = self.session.execute(sql)
        a = a.fetchall()
        lists = []
        for i in a:
            if len(keys) == len(i):
                data_dict = {}
                for k, v in zip(keys, i):
                    data_dict[k] = v
                lists.append(data_dict)
            else:
                return False
        return lists

    # 关闭
    def close(self):
        self.session.close()




aa.sql:

select
  CONVERT(c.`id`,CHAR)              as id, 
  c.`code`           as code, 
  c.`project_name`    as project_name, 
  c.`name`            as name,
  date_format(c.`update_time`,'%Y-%m-%dT%H:%i:%s')     as update_time,
from `cc` c
where date_format(c.`update_time`,'%Y-%m-%dT%H:%i:%s')>='::datetime_now';

bb.sql:

select
  CONVERT(c.`id`,CHAR)             as id,
  CONVERT(c.`age`,CHAR)             as age,
  c.`code`           as code,
  c.`name`           as name,
  c.`project_name`   as project_name,
  date_format(c.`update_time`,'%Y-%m-%dT%H:%i:%s')    as update_time,
from `bb` c
where date_format(c.`update_time`,'%Y-%m-%dT%H:%i:%s')>='::datetime_now';


esconfig.py:

# -*- coding: utf-8 -*-
#__author__="ZJL"


# sql 文件名与es中的type名一致
mysql = {
    # mysql连接信息
    "mysql_connection_string": "root:[email protected]:3306/xxx",
    # sql文件信息
    "statement_filespath":[
        # sql对应的es索引和es类型
        {
          "index":"a1",
          "sqlfile":"aa.sql",
          "type":"aa"
        },
        {
          "index":"a1",
          "sqlfile":"bb.sql",
          "type":"bb"
        },
    ],
}

# es的ip和端口
elasticsearch = {
    "hosts":"127.0.0.1:9200",
}

# 字段顺序与sql文件字段顺序一致,这是存进es中的字段名,这里用es的type名作为标识
db_field = {
        "aa":
            ("id",
          "code",
          "name",
          "project_name",
          "update_time",
          ),

    "bb":
        ("id",
         "code",
         "age",
         "project_name",
         "name",
         "update_time",
         ),
}


es_config = {
    # 间隔多少秒同步一次
    "sleep_time":10,
    # 为了解决服务器之间时间差问题
    "time_difference":3,
    # show_json 用来展示导入的json格式数据,
    "show_json":False,
}

mstes.py:

# -*- coding: utf-8 -*-
#__author__="ZJL"

from sql_manage import MysqlManager
from esconfig import mysql,elasticsearch,db_field,es_config
from elasticsearch import Elasticsearch
from elasticsearch import helpers
import traceback
import time


class TongBu(object):

    def __init__(self):
        try:
            # 是否展示json数据在控制台
            self.show_json = es_config.get("show_json")
            # 间隔多少秒同步一次
            self.sleep_time = es_config.get("sleep_time")
            # 为了解决同步时数据更新产生的误差
            self.time_difference = es_config.get("time_difference")
            # 当前时间,留有后用
            self.datetime_now = ""
            # es的ip和端口
            es_host = elasticsearch.get("hosts")
            # 连接es
            self.es = Elasticsearch(es_host)
            # 连接mysql
            self.mm = MysqlManager()
        except :
            print(traceback.format_exc())
    def tongbu_es_mm(self):
        try:
            # 同步开始时间
            start_time = time.time()
            print("start..............",time.strftime("%Y-%m-%d %H:%M:%S", time.localtime(start_time)))
            # 这个list用于批量插入es
            actions = []
            # 获得所有sql文件list
            statement_filespath = mysql.get("statement_filespath",[])
            if self.datetime_now:
                # 当前时间加上时间差(间隔时间加上执行同步用掉的时间,等于上一次同步开始时间)再字符串格式化
                # sql中格式化时间时年月日和时分秒之间不能空格,不然导入es时报解析错误,所以这里的时间格式化也统一中间加一个T
                self.datetime_now = time.strftime("%Y-%m-%dT%H:%M:%S", time.localtime(time.time()-(self.sleep_time+self.time_difference)))
            else:
                self.datetime_now = "1999-01-01T00:00:00"
            if statement_filespath:
                for filepath in statement_filespath:
                    # sql文件
                    sqlfile = filepath.get("sqlfile")
                    # es的索引
                    es_index = filepath.get("index")
                    # es的type
                    es_type = filepath.get("type")
                    # 读取sql文件内容
                    with open(sqlfile,"r") as opf:
                        sqldatas = opf.read()
                        # ::datetime_now是一个自定义的特殊字符串用于增量更新
                        if "::datetime_now" in sqldatas:
                            sqldatas = sqldatas.replace("::datetime_now",self.datetime_now)
                        else:
                            sqldatas = sqldatas
                        # es和sql字段的映射
                        dict_set = db_field.get(es_type)
                        # 访问mysql,得到一个list,元素都是字典,键是字段名,值是数据
                        db_data_list = self.mm.select_all_dict(sqldatas, dict_set)
                        if db_data_list:
                            # 将数据拼装成es的格式
                            for db_data in db_data_list:
                                action = {
                                    "_index": es_index,
                                    "_type": es_type,
                                    "@timestamp": time.strftime("%Y-%m-%dT%H:%M:%S", time.localtime(time.time())),
                                    "_source": db_data
                                }
                                # 如果没有id字段就自动生成
                                es_id = db_data.get("id", "")
                                if es_id:
                                    action["_id"] = es_id
                                # 是否显示json再终端
                                if self.show_json:
                                    print(action)
                                # 将拼装好的数据放进list中
                                actions.append(action)
            # list不为空就批量插入数据到es中
            if len(actions) > 0 :
                helpers.bulk(self.es, actions)

        except Exception as e:
            print(traceback.format_exc())
        else:
            end_time = time.time()
            print("end...................",time.strftime("%Y-%m-%d %H:%M:%S", time.localtime(start_time)))
            self.time_difference = end_time-start_time

        finally:
            # 报错就关闭数据库
            self.mm.close()

def main():
    tb = TongBu()
    # 间隔多少秒同步一次
    sleep_time = tb.sleep_time
    # 死循环执行导入数据,加上时间间隔
    while True:
        tb.tongbu_es_mm()
        time.sleep(sleep_time)

if __name__ == '__main__':
    main()







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