基于FLink实现实时安全检测的示例代码

2023-02-24 09:08:36
目录
研发背景场景描述组件版本日志结构技术方案关键代码主入口类mapper算子filter算子keyBy算子窗口函数(核心代码)最后一次map算子ElasticSearch工具类事件实体类消息实体类

研发背景

公司安全部目前针对内部系统的网络访问日志的安全审计,大部分都是T+1时效,每日当天,启动Python编写的定时任务,完成昨日的日志审计和检测,定时任务运行完成后,统一进行企业微信告警推送。这种方案在目前的网络环境和人员规模下,呈现两个痛点,一是面对日益频繁的网络攻击、钓鱼链接,T+1的定时任务,难以及时进行告警,因此也难以有效避免如关键信息泄露等问题,二是目前以Python为主的单机定时任务,针对不同场景的处理时效,从一小时到十几小时不等,效率低下。为解决以上问题,本人协助公司安全部同时对告警采集平台进行改造,由之前的python单机任务处理,切换到基于Flink集群的并行处理,且告警推送时效,由之前的T+1天,提升到秒级实时告警。本次改造涉及网络日志审计的多个常见场景,如端口扫描、黑名单统计、异常流量、连续恶意登录等。本次以一段时间内连续登录失败20次后,下一次登录成功场景来进行介绍。

场景描述

针对一个内部系统,如邮件系统,公司员工的访问行为日志,存放于kafka,我们希望对于一个用户账号在同一个IP下,任意的3分钟时间内,连续登录邮件系统20次失败,下一次登录成功,这种场景能够及时获取并推送到企业微信某个指定的安全接口人。kafka中的数据,能够通过某个关键字,区分当前网络访问是否一次登录事件,且有访问时间(也就是事件时间)。在解析到符合需求的用户账号之后,第一时间进行企业微信告警推送,并将其这段时间内的访问行为,写入下游ElasticSearch。

组件版本

    Flink-1.14.4Java8ElasticSearch-7.3.2Kafka-2.12_2.8.1

    日志结构

    IP和账号皆为测试使用。

    {
       "user": "wangxm",
       "client_ip": "110.68.6.182",
       "source": "login",
       "loginname": "wangxm@test.com",
       "IP": "110.8.148.58",
       "timestamp": "17:58:12",
       "@timestamp": "2022-04-20T09:58:13.647Z",
       "ip": "110.7.231.25",
       "clienttype": "POP3",
       "result": "success",
       "@version": "1"
     }

    技术方案

    上述场景,可考虑使用FlinkCEP及Flink的滑动窗口进行实现。由于本人在采用FlinkCEP的方案进行代码编写调试后,发现并不能满足,因此改用滑动窗口进行实现。

    关键代码

    主入口类

    主入口类,创建了flink环境、设置了基础参数,创建了kafkaSource,接入消息后,进行了映射、过滤,并设置了水位线,进行了分组,之后设置了滑动窗口,在窗口内进行了事件统计,将复合条件的事件收集返回并写入ElasticSearch。

    针对map、filter、keyBy、window等算子,都单独进行了编写,后面会一一列出来。

    package com.data.dev.flink.mailTopic.main;
    
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsgAlarm;
    import com.data.dev.elasticsearch.ElasticSearchInfo;
    import com.data.dev.elasticsearch.SinkToEs;
    import com.data.dev.flink.FlinkEnv;
    import com.data.dev.flink.mailTopic.OperationForLoginFailCheck.*;
    import com.data.dev.kafka.KafkaSourceBuilder;
    import com.data.dev.key.ConfigurationKey;
    import com.data.dev.utils.TimeUtils;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.common.eventtime.WatermarkStrategy;
    import org.apache.flink.connector.kafka.source.KafkaSource;
    import org.apache.flink.streaming.api.datastream.DataStreamSource;
    import org.apache.flink.streaming.api.datastream.KeyedStream;
    import org.apache.flink.streaming.api.datastream.SingleOutputStreamOperator;
    import org.apache.flink.streaming.api.datastream.WindowedStream;
    import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
    import org.apache.flink.streaming.api.windowing.assigners.SlidingEventTimeWindows;
    import org.apache.flink.streaming.api.windowing.time.Time;
    import org.apache.flink.streaming.api.windowing.windows.TimeWindow;
    
    import java.time.Duration;
    
    
    /**
     * Flink处理在3分钟内连续登录失败20次后登录成功的场景
     * 采用滑动窗口来实现
     * @author wangxiaomin 2022-06-01
     */
    
    @Slf4j
    public class MailMsg extends BaseBean {
    
        /**
         * Flink作业名称
         */
        public static final  String JobName = "告警采集平台——连续登录失败后登录成功告警";
        /**
         * Kafka消息名
         */
        public static final  String KafkaSourceName = "Kafka Source for AlarmPlatform About Mail Topic";
    
        public MailMsg(){
            log.info("初始化滑动窗口场景告警程序");
        }
    
        /**
         * 执行逻辑统计场景,实现告警推送
         */
        public static void execute(){
    
    
            //① 创建Flink执行环境并设置checkpoint等必要的参数
            StreamExecutionEnvironment env = FlinkEnv.getFlinkEnv();
            KafkaSource<String> kafkaSource = KafkaSourceBuilder.getKafkaSource(ConfigurationKey.KAFKA_MAIL_TOPIC_NAME,ConfigurationKey.KAFKA_MAIL_CONSUMER_GROUP_ID) ;
            DataStreamSource<String> kafkaMailMsg = env.fromSource(kafkaSource, WatermarkStrategy.forBoundedOutOfOrderness(Duration.ofMillis(10)), KafkaSourceName);
    
    
            //② 筛选登录消息,创建初始登录事件流
            SingleOutputStreamOperator<com.data.dev.common.javabean.kafkaMailTopic.MailMsg> loginMapDs = kafkaMailMsg.map(new MsgToBeanMapper()).name("Map算子加工");
            SingleOutputStreamOperator<com.data.dev.common.javabean.kafkaMailTopic.MailMsg> loginFilterDs = loginMapDs.filter(new MailMsgForLoginFilter()).name("Filter算子加工");
    
            //③ 设置水位线
            WatermarkStrategy<com.data.dev.common.javabean.kafkaMailTopic.MailMsg> watermarkStrategy = WatermarkStrategy.<com.data.dev.common.javabean.kafkaMailTopic.MailMsg>forBoundedOutOfOrderness(Duration.ofMinutes(1))
                            .withTimestampAssigner((mailMsg, timestamp) -> TimeUtils.switchUTCToBeijingTimestamp(mailMsg.getTimestamp_datetime()));
            SingleOutputStreamOperator<com.data.dev.common.javabean.kafkaMailTopic.MailMsg> loginWmDs = loginFilterDs.assignTimestampsAndWatermarks(watermarkStrategy.withIdleness(Duration.ofMinutes(3))).name("增加水位线");
    
            //④ 设置主键
            KeyedStream<com.data.dev.common.javabean.kafkaMailTopic.MailMsg, String> loginKeyedDs = loginWmDs.keyBy(new LoginKeySelector());
    
            //⑥ 转化为滑动窗口
            WindowedStream<com.data.dev.common.javabean.kafkaMailTopic.MailMsg, String, TimeWindow> loginWindowDs = loginKeyedDs.window(SlidingEventTimeWindows.of(Time.seconds(180L),Time.seconds(90L)));
    
            //⑦ 在窗口内进行逻辑统计
            SingleOutputStreamOperator<MailMsgAlarm> loginWindowsDealDs  = loginWindowDs.process(new WindowProcessFuncImpl()).name("窗口处理逻辑");
    
            //⑧ 将结果转化为通用DataStream<String>格式
            SingleOutputStreamOperator<String> resultDs  = loginWindowsDealDs.map(new AlarmMsgToStringMapper()).name("窗口结果转化为标准格式");
    
            //⑨ 将最终结果写入ES
            resultDs.addSink(SinkToEs.getEsSinkBuilder(ElasticSearchInfo.ES_LOGIN_FAIL_INDEX_NAME,ElasticSearchInfo.ES_INDEX_TYPE_DEFAULT).build());
    
            //⑩ 提交Flink集群进行执行
            FlinkEnv.envExec(env,JobName);
    
        }
    }

    mapper算子

    package com.data.dev.flink.mailTopic.OperationForLoginFailCheck;
    
    import com.alibaba.fastjson.JSON;
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsgAlarm;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.common.functions.MapFunction;
    
    /**
     *  逻辑统计场景告警推送ES消息体
     *  @author wangxiaoming-ghq 2022-06-01
     */
    @Slf4j
    public   class AlarmMsgToStringMapper extends BaseBean implements MapFunction<MailMsgAlarm, String> {
    
        @Override
        public String map(MailMsgAlarm mailMsgAlarm) throws Exception {
            return JSON.toJSONString(mailMsgAlarm);
        }
    }

    filter算子

    package com.data.dev.flink.mailTopic.OperationForLoginFailCheck;
    
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsg;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.common.functions.FilterFunction;
    
    
    /**
     * ② 消费mail主题的消息,过滤其中login的事件
     * @author wangxiaoming-ghq 2022-06-01
     */
    @Slf4j
    public class MailMsgForLoginFilter extends BaseBean implements FilterFunction<MailMsg> {
        @Override
        public boolean filter(MailMsg mailMsg) {
            if("login".equals(mailMsg.getSource())) {
                log.info("筛选原始的login事件:【" + mailMsg + "】");
            }
            return "login".equals(mailMsg.getSource());
        }
    }

    keyBy算子

    package com.data.dev.flink.mailTopic.OperationForLoginFailCheck;
    
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsg;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.java.functions.KeySelector;
    
    /**
     * CEP 编程,需要进行key选取
     */
    @Slf4j
    public class LoginKeySelector extends BaseBean implements KeySelector<MailMsg, String> {
        @Override
        public String getKey(MailMsg mailMsg) {
            return mailMsg.getUser() + "@" + mailMsg.getClient_ip();
        }
    }

    窗口函数(核心代码)

    这里我们主要考虑使用一个事件列表,用来存储每一个窗口期内得到的连续登录,当检测到登陆失败的事件,即存入事件列表中,之后判断下一次登录失败事件,如果检测到登录成功事件,但此时登录失败的次数不足20次,则清空loginEventList,等待下一次检测。一旦符合窗口内连续登录失败超过20次且下一次登录成功这个事件,则清空此时的loginEventList并将当前登录成功的事件进行告警推送。

    package com.data.dev.flink.mailTopic.OperationForLoginFailCheck;
    
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsg;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsgAlarm;
    import com.data.dev.utils.HttpUtils;
    import com.data.dev.utils.IPUtils;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.streaming.api.functions.windowing.ProcessWindowFunction;
    import org.apache.flink.streaming.api.windowing.windows.TimeWindow;
    import org.apache.flink.util.Collector;
    
    import java.io.Serializable;
    import java.util.ArrayList;
    import java.util.List;
    
    /**
     *  滑动窗口内复杂事件解析逻辑实现
     *  @author wangxiaoming-ghq 2022-06-01
     */
    @Slf4j
    public   class WindowProcessFuncImpl extends  ProcessWindowFunction<MailMsg, MailMsgAlarm, String, TimeWindow> implements Serializable {
        @Override
        public void process(String key, ProcessWindowFunction<MailMsg, MailMsgAlarm, String, TimeWindow>.Context context, Iterable<MailMsg> iterable, Collector<MailMsgAlarm> collector) {
    
            List<MailMsg> loginEventList = new ArrayList<>();
            MailMsgAlarm mailMsgAlarm;
            for (MailMsg mailMsg : iterable) {
                log.info("收集到的登录事件【" + mailMsg + "】");
    
                if (mailMsg.getResult().equals("fail")) { //开始检测当前窗口内的事件,并将失败的事件收集到loginEventList
                    log.info("开始检测当前窗口内的事件,并将失败的事件收集到loginEventList");
                    loginEventList.add(mailMsg);
                } else if (mailMsg.getResult().equals("success") && loginEventList.size() < 20) {//如果检测到登录成功事件,但此时登录失败的次数不足20次,则清空loginEventList,等待下一次检测
                    log.info("检测到登录成功事件,但此时登录失败的次数为【" + loginEventList.size() + "】不足20次,清空loginEventList,等待下一次检测");
                    loginEventList.clear();
                } else if (mailMsg.getResult().equals("success") && loginEventList.size() >= 20) {
                    mailMsgAlarm = getMailMsgAlarm(loginEventList,mailMsg);
                    log.info("检测到登录成功的事件,此时窗口内连续登录失败的次数为【" + mailMsgAlarm.getFailTimes() + "】");
    
                    //一旦符合窗口内连续登录失败超过20次且下一次登录成功这个事件,则清空此时的loginEventList并将当前登录成功的事件进行告警推送;
                    loginEventList.clear();
                    doAlarmPush(mailMsgAlarm);
    
                    collector.collect(mailMsgAlarm);//将当前登录成功的事件进行收集上报
                } else {
                    log.info(mailMsg.getUser() + "当前已连续:【" + loginEventList.size() + "】 次登录失败");
                }
            }
        }
    
    
        /**
         * 2022年6月17日15:03:06
         * @param eventList:当前窗口内的事件列表
         * @param eventCurrent:当前登录成功的事件
         * @return mailMsgAlarm:告警消息体
         */
        public static MailMsgAlarm getMailMsgAlarm(List<MailMsg> eventList,MailMsg eventCurrent){
    
            String alarmKey = eventCurrent.getUser() + "@" + eventCurrent.getClient_ip();
            String loginFailStartTime = eventList.get(0).getTimestamp_datetime();
            String loginSuccessTime = eventCurrent.getTimestamp_datetime();
            int loginFailTimes = eventList.size();
    
            MailMsgAlarm mailMsgAlarm = new MailMsgAlarm();
            mailMsgAlarm.setMailMsg(eventCurrent);
            mailMsgAlarm.setAlarmKey(alarmKey);
            mailMsgAlarm.setStartTime(loginFailStartTime);
            mailMsgAlarm.setEndTime(loginSuccessTime);
            mailMsgAlarm.setFailTimes(loginFailTimes);
    
            return mailMsgAlarm;
        }
    
        /**
         * 2022年6月17日14:47:53
         * @param mailMsgAlarm :当前构建的需要告警的事件
         */
        public void doAlarmPush(MailMsgAlarm mailMsgAlarm){
            String userKey = mailMsgAlarm.getAlarmKey();
            String clientIp = mailMsgAlarm.mailMsg.getClient_ip();
            boolean isWhiteListIp = IPUtils.isWhiteListIp(clientIp);
            if(isWhiteListIp){//如果是白名单IP,不告警
                log.info("当前登录用户【" + userKey + "】属于白名单IP");
            }else {
                //IP归属查询结果、企业微信推送告警
                String user = HttpUtils.getUserByClientIp(clientIp);
                HttpUtils.pushAlarmMsgToWechatWork(user,mailMsgAlarm.toString());
            }
        }
    }

    最后一次map算子

    package com.data.dev.flink.mailTopic.OperationForLoginFailCheck;
    
    import com.alibaba.fastjson.JSON;
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.common.javabean.kafkaMailTopic.MailMsgAlarm;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.common.functions.MapFunction;
    
    /**
     *  逻辑统计场景告警推送ES消息体
     *  @author wangxiaoming-ghq 2022-06-01
     */
    @Slf4j
    public   class AlarmMsgToStringMapper extends BaseBean implements MapFunction<MailMsgAlarm, String> {
    
        @Override
        public String map(MailMsgAlarm mailMsgAlarm) throws Exception {
            return JSON.toJSONString(mailMsgAlarm);
        }
    }

    ElasticSearch工具类

    package com.data.dev.elasticsearch;
    
    import com.data.dev.common.javabean.BaseBean;
    import com.data.dev.key.ConfigurationKey;
    import com.data.dev.key.ElasticSearchKey;
    import lombok.extern.slf4j.Slf4j;
    import org.apache.flink.api.common.functions.RuntimeContext;
    import org.apache.flink.streaming.connectors.elasticsearch.ElasticsearchSinkFunction;
    import org.apache.flink.streaming.connectors.elasticsearch.RequestIndexer;
    import org.apache.flink.streaming.connectors.elasticsearch7.ElasticsearchSink;
    import org.apache.flink.streaming.connectors.elasticsearch7.RestClientFactory;
    import org.apache.http.HttpHost;
    import org.apache.http.auth.AuthScope;
    import org.apache.http.auth.UsernamePasswordCredentials;
    import org.apache.http.client.CredentialsProvider;
    import org.apache.http.impl.client.BasicCredentialsProvider;
    import org.elasticsearch.action.index.IndexRequest;
    import org.elasticsearch.client.Requests;
    
    import java.util.ArrayList;
    import java.util.HashMap;
    import java.util.List;
    import java.util.Map;
    
    /**
     * 2022年6月17日15:15:06
     * @author wangxiaoming-ghq
     * Flink流计算结果写入ES公共方法
     */
    @Slf4j
    public class SinkToEs extends BaseBean {
        public static final long serialVersionUID = 2L;
        private static final HashMap<String,String> ES_PROPS_MAP = ConfigurationKey.getApplicationProps();
        private static final String HOST = ES_PROPS_MAP.get(ConfigurationKey.ES_HOST);
        private static final String PASSWORD = ES_PROPS_MAP.get(ConfigurationKey.ES_PASSWORD);
        private static final String USERNAME = ES_PROPS_MAP.get(ConfigurationKey.ES_USERNAME);
        private static final String PORT = ES_PROPS_MAP.get(ConfigurationKey.ES_PORT);
    
        /**
         * 2022年6月17日15:17:55
         * 获取ES连接信息
         * @return esInfoMap:ES连接信息持久化
         */
        public static HashMap<String,String > getElasticSearchInfo(){
            log.info("获取ES连接信息:【 " + "HOST="+HOST + "PORT="+PORT+"USERNAME="+USERNAME+"PASSWORD=********" + " 】");
            HashMap<String,String> esInfoMap = new HashMap<>();
            esInfoMap.put(ElasticSearchKey.HOST,HOST);
            esInfoMap.put(ElasticSearchKey.PASSWORD,PASSWORD);
            esInfoMap.put(ElasticSearchKey.USERNAME,USERNAME);
            esInfoMap.put(ElasticSearchKey.PORT,PORT);
    
            return esInfoMap;
        }
    
        /**
         * @param esIndexName:写入索引名称
         * @param esType:写入索引类型
         * @return ElasticsearchSink.Builder<String>:构建器
         */
        public static ElasticsearchSink.Builder<String> getEsSinkBuilder(String esIndexName,String esType){
            HashMap<String, String> esInfoMap = getElasticSearchInfo();
            List<HttpHost> httpHosts = new ArrayList<>();
            httpHosts.add(new HttpHost(String.valueOf(esInfoMap.get(ElasticSearchKey.HOST)), Integer.parseInt(esInfoMap.get(ElasticSearchKey.PORT)), "http"));
    
            ElasticsearchSink.Builder<String> esSinkBuilder = new ElasticsearchSink.Builder<>(
                    httpHosts,
                    new ElasticsearchSinkFunction<String>() {
    
                        public IndexRequest createIndexRequest() {
                            Map<String, String> json = new HashMap<>();
                            //log.info("写入ES的data:【"+json+"】");
                            IndexRequest index  = Requests.indexRequest()
                                    .index(esIndexName)
                                    .type(esType)
                                    .source(json);
                            return index;
                        }
    
                        @Override
                        public void process(String element, RuntimeContext ctx, RequestIndexer indexer) {
                            indexer.add(createIndexRequest());
                        }
                    }
            );
    
    
            //定义es的连接配置  带用户名密码
            RestClientFactory restClientFactory = restClientBuilder -> {
                CredentialsProvider credentialsProvider = new BasicCredentialsProvider();
                credentialsProvider.setCredentials(
                        AuthScope.ANY,
                        new UsernamePasswordCredentials(
                                String.valueOf(esInfoMap.get(ElasticSearchKey.USERNAME)),
                                String.valueOf(esInfoMap.get(ElasticSearchKey.PASSWORD))
                        )
                );
                restClientBuilder.setHttpClientConfigCallback(httpAsyncClientBuilder -> {
                    httpAsyncClientBuilder.disableAuthCaching();
                    return httpAsyncClientBuilder.setDefaultCredentialsProvider(credentialsProvider);
                });
            };
    
            esSinkBuilder.setRestClientFactory(restClientFactory);
            return esSinkBuilder;
        }
    
    }

    事件实体类

    package com.data.dev.common.javabean.kafkaMailTopic;
    
    import com.data.dev.common.javabean.BaseBean;
    import lombok.Data;
    
    import java.util.Objects;
    
    
    /**
     * @author wangxiaoming-ghq 2022-05-15
     * 逻辑统计场景告警事件
     */
    @Data
    public class MailMsgAlarm extends BaseBean {
    
    
        /**
         * 当前登录成功的事件
         */
       public  MailMsg mailMsg;
    
        /**
         * 当前捕获的告警主键:username@client_ip
         */
       public  String alarmKey;
    
        /**
         * 第一次登录失败的事件时间
         */
       public  String startTime;
    
        /**
         * 连续登录失败后下一次登录成功的事件时间
         */
       public  String endTime;
    
        /**
         * 连续登录失败的次数
         */
       public  int failTimes;
    
        @Override
        public String toString() {
            return "{" +
                    "  'mailMsg_login_success':'" + mailMsg + "'" +
                    ", 'alarmKey':'" + alarmKey + "'" +
                    ", 'start_login_time_in3min':'"  +startTime + "'" +
                    ", 'end_login_time_in3min':'"  +endTime + "'" +
                    ", 'login_fail_times':'"  +failTimes +  "'" +
                    "}";
        }
    
        public MailMsgAlarm() {
        }
    
        @Override
        public boolean equals(Object o) {
            if (this == o) return true;
            if (!(o instanceof MailMsgAlarm)) return false;
            MailMsgAlarm that = (MailMsgAlarm) o;
            return getFailTimes() == that.getFailTimes() && getMailMsg().equals(that.getMailMsg()) && getAlarmKey().equals(that.getAlarmKey()) && getStartTime().equals(that.getStartTime()) && getEndTime().equals(that.getEndTime());
        }
    
        @Override
        public int hashCode() {
            return Objects.hash(getMailMsg(), getAlarmKey(), getStartTime(), getEndTime(), getFailTimes());
        }
    }

    消息实体类

    package com.data.dev.common.javabean.kafkaMailTopic;
    
    import com.data.dev.common.javabean.BaseBean;
    import lombok.Data;
    
    import java.util.Objects;
    
    /**
     * {
     *   "user": "wangxm",
     *   "client_ip": "110.68.6.182",
     *   "source": "login",
     *   "loginname": "wangxm@test.com",
     *   "IP": "110.8.148.58",
     *   "timestamp": "17:58:12",
     *   "@timestamp": "2022-04-20T09:58:13.647Z",
     *   "ip": "110.7.231.25",
     *   "clienttype": "POP3",
     *   "result": "success",
     *   "@version": "1"
     * }
     *
     * user登录用户
     * client_ip 来源ip
     * source 类型
     * loginname 登录用户邮箱地址
     * ip 目标前端ip
     * timestamp 发送时间
     * &#064;timestamp  发送日期时间
     * IP 邮件日志发送来源IP
     * clienttype 客户端登录类型
     * result 登录状态
     */
    
    @Data
    public class MailMsg extends BaseBean {
        public String user;
        public String client_ip;
        public String source;
        public String loginName;
        public String mailSenderSourceIp;
        public String timestamp_time;
        public String timestamp_datetime;
        public String ip;
        public String clientType;
        public String result;
        public String version;
    
        public MailMsg() {
        }
    
        public MailMsg(String user, String client_ip, String source, String loginName, String mailSenderSourceIp, String timestamp_time, String timestamp_datetime, String ip, String clientType, String result, String version) {
            this.user = user;
            this.client_ip = client_ip;
            this.source = source;
            this.loginName = loginName;
            this.mailSenderSourceIp = mailSenderSourceIp;
            this.timestamp_time = timestamp_time;
            this.timestamp_datetime = timestamp_datetime;
            this.ip = ip;
            this.clientType = clientType;
            this.result = result;
            this.version = version;
        }
    
        @Override
        public boolean equals(Object o) {
            if (this == o) return true;
            if (!(o instanceof MailMsg)) return false;
            MailMsg mailMsg = (MailMsg) o;
            return getUser().equals(mailMsg.getUser()) && getClient_ip().equals(mailMsg.getClient_ip()) && getSource().equals(mailMsg.getSource()) && getLoginName().equals(mailMsg.getLoginName()) && getMailSenderSourceIp().equals(mailMsg.getMailSenderSourceIp()) && getTimestamp_time().equals(mailMsg.getTimestamp_time()) && getTimestamp_datetime().equals(mailMsg.getTimestamp_datetime()) && getIp().equals(mailMsg.getIp()) && getClientType().equals(mailMsg.getClientType()) && getResult().equals(mailMsg.getResult()) && getVersion().equals(mailMsg.getVersion());
        }
    
        @Override
        public int hashCode() {
            return Objects.hash(getUser(), getClient_ip(), getSource(), getLoginName(), getMailSenderSourceIp(), getTimestamp_time(), getTimestamp_datetime(), getIp(), getClientType(), getResult(), getVersion());
        }
    
        @Override
        public String toString() {
            return "{" +
                    "  'user':'" + user + "'" +
                    ", 'client_ip':'" + client_ip  + "'" +
                    ", 'source':'" + source  + "'" +
                    ", 'loginName':'" + loginName  + "'" +
                    ", 'IP':'" + mailSenderSourceIp + "'" +
                    ", 'timestamp':'" + timestamp_time + "'" +
                    ", '@timestamp':'" + timestamp_datetime + "'" +
                    ", 'ip':'"  + "'" +
                    ", 'clientType':'" + clientType  + "'" +
                    ", 'result':'" + result  + "'" +
                    ", 'version':'" + version + "'" +
                    "}";
        }
    
    }

    源代码已去掉敏感信息,地址:https://gitee.com/wangxm-2270/alarmCollectByFlink.git

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