查看原文
其他

卢安娜的飓风-Flink实时维度表Join方式合集

小飞牛 大数据真好玩 2021-10-22

点击上方蓝色字体,选择“设为星标”

回复”资源“获取更多惊喜

大数据技术与架构点击右侧关注,大数据开发领域最强公众号!

大数据真好玩点击右侧关注,大数据真好玩!

背景

在我们日常工作中,经常会有一些实时的需求,这些需求往往都是一些拉宽的需求,为了给实时数仓来进行OLAP对来进行Ad-hoc查询。

但是我们工作中一些维度表的数据是会发生变化的,可能是缓慢变化维度,那么这个时候就需要进行flink连接其他数据源来进行查询,这个时候我们肯定可以想到就是来一条查一次,这个是肯定可以做到的。

但是在大数据场景下,我们是不是会觉得有点慢呢,我们是否有更好的解决方案,就像我写代码的时候 有时候就会思考有没有更好的解决方案,但是针对于要进行交付给用户,所以我们并没有那么多的时间进行思考来进行,因为产品一直都在催你哦。

那么我们就来看看有几种解决方案。

假设上图 是一个实时架构图,当然我们公司已经引入了clickhouse 实时数仓这些已经不是我们所追求的了,但是并不妨碍我们的需求,下面我们就来看一下数据。

{"dt":"2019-11-19 20:33:39","countryCode":"TW","data": [{"type":"s1","score":0.8,"level":"D"},{"type":"s2","score":0.1,"level":"B"}]}
{"dt":"2019-11-19 20:33:41","countryCode":"KW","data": [{"type":"s2","score":0.2,"level":"A"},{"type":"s1","score":0.2,"level":"D"}]}
{"dt":"2019-11-19 20:33:43","countryCode":"HK","data": [{"type":"s5","score":0.5,"level":"C"},{"type":"s2","score":0.8,"level":"B"}]}
{"dt":"2019-11-19 20:33:39","countryCode":"TW","data": [{"type":"s1","score":0.8,"level":"D"},{"type":"s2","score":0.1,"level":"B"}]}

当然之上是我们的模拟数据,接下来我们看看 业务人员需要什么数据

"dt":"2019-11-19 20:33:39","countryCode":"AREA_CT","type":"s1","score":0.8,"level":"D"
"dt":"2019-11-19 20:33:39","countryCode":"AREA_CT","type":"s2","score":0.1,"level":"B"

那么这个时候我们可以发现了,其实就是把国家 换成大区,这样入仓之后可以进行 大区的olap实时的一些分析,例如实时的绩效考核等。还有一些营销活动等,我们就不细细考量了,因为毕竟都是假数据。

那么我们看到原始数据和结果数据,我们发现,是进行了拆解,例如 一条记录中带有多个 type 也就是直播平台,但是结果数据拆成了两个,这个不是udtf吗?同时将国家编码转化为大区编码,那么我们这时候假定大区编码会有变化,因为组织的重构问题,或者组织的架构演进等,那么我们思考一下有几种解决方案呢。

解决方案

直接查库定时更新
static class SimpleFlatMapFunction extends RichFlatMapFunction<String,OutData>{


private transient ConcurrentHashMap<String, String> hashMap = null;


@Override
public void open(Configuration parameters) throws Exception {
super.open(parameters);
Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
System.out.println("更新缓存");

hashMap = new ConcurrentHashMap<>();
for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s, key);
}
}
jedisCluster.close();
ScheduledExecutorService scheduledExecutorService = Executors.newScheduledThreadPool(1);
scheduledExecutorService.scheduleAtFixedRate(new Runnable() {
@Override
public void run() {
System.out.println("更新缓存");
Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
hashMap = new ConcurrentHashMap<>();
for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s, key);
}
}
jedisCluster.close();
}
}, 0, 3, TimeUnit.SECONDS);

}

@Override
public void flatMap(String s, Collector<OutData> collector) throws Exception {
OriginData originData = JSONObject.parseObject(s, OriginData.class);
String countryCode = originData.countryCode;
ArrayList<Data> data = originData.data;
String dt = originData.dt;
String coutryCode = hashMap.get(countryCode);
for (Data datum : data) {
OutData of = OutData.of(dt, coutryCode, datum.type, datum.score, datum.level);
collector.collect(of);
}
}
}
异步IO
static class SimpaleAsyncIoFunction extends RichAsyncFunction<String,OutData> {
private transient RedisClient redisClient;
@Override
public void open(Configuration parameters) throws Exception {
super.open(parameters);
super.open(parameters);
RedisOptions config = new RedisOptions();
config.setHost("hadoop01");
config.setPort(6379);

VertxOptions vo = new VertxOptions();
vo.setEventLoopPoolSize(10);
vo.setWorkerPoolSize(20);

Vertx vertx = Vertx.vertx(vo);

redisClient = RedisClient.create(vertx, config);
}

@Override
public void close() throws Exception {
super.close();
super.close();
if(redisClient!=null){
redisClient.close(null);
}
}
@Override
public void asyncInvoke(String s, ResultFuture<OutData> resultFuture) throws Exception {
OriginData originData = JSONObject.parseObject(s, OriginData.class);
String countryCode = originData.countryCode;

redisClient.hscan("areas", "0", ScanOptions.NONE, new Handler<AsyncResult<JsonArray>>() {
@Override
public void handle(AsyncResult<JsonArray> result) {
if (result.succeeded()){
JsonArray result1 = result.result();
if (result1 == null){
resultFuture.complete(null);
return;
}
JsonArray jsonArray = result1.getJsonArray(1);
// ["AREA_US","US","AREA_CT","TW,HK","AREA_AR","PK,KW,SA,XX","AREA_IN","IN"]
HashMap<String,String> ss = new HashMap<>();
ArrayList<String> keys = new ArrayList<>();
ArrayList<String> values = new ArrayList<>();

for (int i = 0; i <jsonArray.size() ; i++) {
if (i % 2 == 0){
keys.add(jsonArray.getString(i));
}else {
values.add(jsonArray.getString(i));
}
}

for (int i = 0; i < keys.size(); i++) {
String s1 = keys.get(i);
String s2 = values.get(i);
String[] split = s2.split(",");
for (String s3 : split) {
ss.put(s3,s1);
}
}
String dt = originData.dt;
String country = ss.get(countryCode);

for (Data datum : originData.data) {
OutData outData = OutData.of(dt, country, datum.type, datum.score, datum.level);
resultFuture.complete(Collections.singleton(outData));
}

} else if(result.failed()){
resultFuture.complete(null);
return;
}

}
});
}
}
Broadcast的方式
static class BroadcastSourceFunction extends RichSourceFunction<String>{

@Override
public void run(SourceContext<String> sourceContext) throws Exception {
while (true){

Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
HashMap<String, String> hashMap = new HashMap<>();

for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s,key);

}
}

sourceContext.collect(JSON.toJSONString(hashMap));
jedisCluster.close();

TimeUnit.SECONDS.sleep(3);
}
}
@Override
public void cancel() {
}
}
异步io结合Cache

我相信各位会了基础的 这个很简单也就不写了,有点累了,有时间可以补上。

无非就是制定缓存淘汰算法,然后缓存有 就拿缓存的,没有就异步去redis拿而已。

完整代码

package com.bigdata.dim.join;

import com.alibaba.fastjson.JSON;
import com.alibaba.fastjson.JSONObject;
import io.vertx.core.AsyncResult;
import io.vertx.core.Handler;
import io.vertx.core.Vertx;
import io.vertx.core.VertxOptions;
import io.vertx.core.json.JsonArray;
import io.vertx.redis.RedisClient;
import io.vertx.redis.RedisOptions;
import io.vertx.redis.op.ScanOptions;
import org.apache.flink.api.common.functions.MapFunction;
import org.apache.flink.api.common.functions.RichFlatMapFunction;
import org.apache.flink.api.common.restartstrategy.RestartStrategies;
import org.apache.flink.api.common.state.BroadcastState;
import org.apache.flink.api.common.state.MapStateDescriptor;
import org.apache.flink.api.common.state.ReadOnlyBroadcastState;
import org.apache.flink.configuration.Configuration;
import org.apache.flink.streaming.api.CheckpointingMode;
import org.apache.flink.streaming.api.TimeCharacteristic;
import org.apache.flink.streaming.api.datastream.BroadcastStream;
import org.apache.flink.streaming.api.datastream.DataStreamSource;
import org.apache.flink.streaming.api.datastream.SingleOutputStreamOperator;
import org.apache.flink.streaming.api.environment.CheckpointConfig;
import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
import org.apache.flink.streaming.api.functions.async.ResultFuture;
import org.apache.flink.streaming.api.functions.async.RichAsyncFunction;
import org.apache.flink.streaming.api.functions.co.BroadcastProcessFunction;
import org.apache.flink.streaming.api.functions.source.RichSourceFunction;
import org.apache.flink.util.Collector;
import org.slf4j.Logger;
import org.slf4j.LoggerFactory;
import redis.clients.jedis.HostAndPort;
import redis.clients.jedis.Jedis;
import redis.clients.jedis.ScanResult;

import java.text.SimpleDateFormat;
import java.util.*;
import java.util.concurrent.ConcurrentHashMap;
import java.util.concurrent.Executors;
import java.util.concurrent.ScheduledExecutorService;
import java.util.concurrent.TimeUnit;

/**
* Copyright (c) 2019 bigdata ALL Rights Reserved
* Project: learning
* Package: com.bigdata.dim.join
* Version: 1.0
*
* @author qingzhi.wu 2020/11/8 11:12
*/
public class Main {
private static final int RESTART_ATTEMPTS = 5;
private static final int RESTART_INTERVAL = 20;
private static Logger logger = LoggerFactory.getLogger(Main.class);

public static void main(String[] args) throws Exception {
StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();

env.setStreamTimeCharacteristic(TimeCharacteristic.EventTime);
//设置Stage策略
CheckpointConfig checkpointConfig = env.getCheckpointConfig();
env.enableCheckpointing(5000L);
checkpointConfig.setCheckpointingMode(CheckpointingMode.EXACTLY_ONCE);
checkpointConfig.setMaxConcurrentCheckpoints(1);
checkpointConfig.setCheckpointTimeout(100000L);
checkpointConfig.setFailOnCheckpointingErrors(true);
checkpointConfig.enableExternalizedCheckpoints(CheckpointConfig.ExternalizedCheckpointCleanup.RETAIN_ON_CANCELLATION);
//测试环境不需要设置 backend
// FsStateBackend fsStateBackend = new FsStateBackend(CheckpointUtils.getCheckpointDir());
// env.setStateBackend(fsStateBackend);
// 延迟时间间隔
env.setRestartStrategy(RestartStrategies.fixedDelayRestart(
RESTART_ATTEMPTS, // 尝试重启次数
org.apache.flink.api.common.time.Time.of(RESTART_INTERVAL, TimeUnit.SECONDS)
));


//自定义source 生成数据
DataStreamSource<String> dataStreamSource = env.addSource(new DataSource());
//1、采用直接用redis的方式
SingleOutputStreamOperator<OutData> outDataSingleOutputStreamOperator = dataStreamSource.flatMap(new SimpleFlatMapFunction());
//2.asynio
// SingleOutputStreamOperator<OutData> outDataSingleOutputStreamOperator =
// AsyncDataStream.unorderedWait(dataStreamSource, new SimpaleAsyncIoFunction(), 2000, TimeUnit.MILLISECONDS);
//
final MapStateDescriptor<String, String> broadcastDes = new MapStateDescriptor<>(
"broadcast",
String.class,
String.class );
BroadcastStream<String> broadcast = env.addSource(new BroadcastSourceFunction()).broadcast(broadcastDes);

SingleOutputStreamOperator<OutData> outDataSingleOutputStreamOperator = dataStreamSource.connect(broadcast).process(new BroadcastProcessFunction<String, String, OutData>() {
@Override
public void processElement(String s, ReadOnlyContext readOnlyContext, Collector<OutData> collector) throws Exception {
ReadOnlyBroadcastState<String, String> broadcastState = readOnlyContext.getBroadcastState(broadcastDes);
String broadcastState1 = broadcastState.get("broadcastState");
HashMap<String,String> data = JSONObject.parseObject(broadcastState1, HashMap.class);
OriginData originData = JSONObject.parseObject(s, OriginData.class);
String countryCode = originData.countryCode;
ArrayList<Data> datas = originData.data;
String dt = originData.dt;
String coutryCode = data.get(countryCode);
for (Data datum : datas) {
OutData of = OutData.of(dt, coutryCode, datum.type, datum.score, datum.level);
collector.collect(of);
}

}

@Override
public void processBroadcastElement(String s , Context context, Collector<OutData> collector) throws Exception {
BroadcastState<String, String> broadcastState = context.getBroadcastState(broadcastDes);
broadcastState.remove("broadcastState");
broadcastState.put("broadcastState",s);
}
});


SingleOutputStreamOperator<String> map = outDataSingleOutputStreamOperator.map(new MapFunction<OutData, String>() {

@Override
public String map(OutData outData) throws Exception {
return JSON.toJSONString(outData);
}
});
map.print();
env.execute();

}

static class SimpleFlatMapFunction extends RichFlatMapFunction<String,OutData>{


private transient ConcurrentHashMap<String, String> hashMap = null;


@Override
public void open(Configuration parameters) throws Exception {
super.open(parameters);
Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
System.out.println("更新缓存");

hashMap = new ConcurrentHashMap<>();
for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s, key);
}
}
jedisCluster.close();
ScheduledExecutorService scheduledExecutorService = Executors.newScheduledThreadPool(1);
scheduledExecutorService.scheduleAtFixedRate(new Runnable() {
@Override
public void run() {
System.out.println("更新缓存");
Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
hashMap = new ConcurrentHashMap<>();
for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s, key);
}
}
jedisCluster.close();
}
}, 0, 3, TimeUnit.SECONDS);

}

@Override
public void flatMap(String s, Collector<OutData> collector) throws Exception {
OriginData originData = JSONObject.parseObject(s, OriginData.class);
String countryCode = originData.countryCode;
ArrayList<Data> data = originData.data;
String dt = originData.dt;
String coutryCode = hashMap.get(countryCode);
for (Data datum : data) {
OutData of = OutData.of(dt, coutryCode, datum.type, datum.score, datum.level);
collector.collect(of);
}
}
}
static class SimpaleAsyncIoFunction extends RichAsyncFunction<String,OutData> {
private transient RedisClient redisClient;
@Override
public void open(Configuration parameters) throws Exception {
super.open(parameters);
super.open(parameters);
RedisOptions config = new RedisOptions();
config.setHost("hadoop01");
config.setPort(6379);

VertxOptions vo = new VertxOptions();
vo.setEventLoopPoolSize(10);
vo.setWorkerPoolSize(20);

Vertx vertx = Vertx.vertx(vo);

redisClient = RedisClient.create(vertx, config);
}

@Override
public void close() throws Exception {
super.close();
super.close();
if(redisClient!=null){
redisClient.close(null);
}
}
@Override
public void asyncInvoke(String s, ResultFuture<OutData> resultFuture) throws Exception {
OriginData originData = JSONObject.parseObject(s, OriginData.class);
String countryCode = originData.countryCode;

redisClient.hscan("areas", "0", ScanOptions.NONE, new Handler<AsyncResult<JsonArray>>() {
@Override
public void handle(AsyncResult<JsonArray> result) {
if (result.succeeded()){
JsonArray result1 = result.result();
if (result1 == null){
resultFuture.complete(null);
return;
}
JsonArray jsonArray = result1.getJsonArray(1);
// ["AREA_US","US","AREA_CT","TW,HK","AREA_AR","PK,KW,SA,XX","AREA_IN","IN"]
HashMap<String,String> ss = new HashMap<>();
ArrayList<String> keys = new ArrayList<>();
ArrayList<String> values = new ArrayList<>();

for (int i = 0; i <jsonArray.size() ; i++) {
if (i % 2 == 0){
keys.add(jsonArray.getString(i));
}else {
values.add(jsonArray.getString(i));
}
}

for (int i = 0; i < keys.size(); i++) {
String s1 = keys.get(i);
String s2 = values.get(i);
String[] split = s2.split(",");
for (String s3 : split) {
ss.put(s3,s1);
}
}
String dt = originData.dt;
String country = ss.get(countryCode);

for (Data datum : originData.data) {
OutData outData = OutData.of(dt, country, datum.type, datum.score, datum.level);
resultFuture.complete(Collections.singleton(outData));
}

} else if(result.failed()){
resultFuture.complete(null);
return;
}

}
});

}
}
static class BroadcastSourceFunction extends RichSourceFunction<String>{

@Override
public void run(SourceContext<String> sourceContext) throws Exception {
while (true){

Jedis jedisCluster = RedisFactory.getJedisCluster();

ScanResult<Map.Entry<String, String>> areas = jedisCluster.hscan("areas", "0");
List<Map.Entry<String, String>> result = areas.getResult();
HashMap<String, String> hashMap = new HashMap<>();

for (Map.Entry<String, String> stringStringEntry : result) {
String key = stringStringEntry.getKey();
String[] split = stringStringEntry.getValue().split(",");
for (String s : split) {
hashMap.put(s,key);

}
}

sourceContext.collect(JSON.toJSONString(hashMap));
jedisCluster.close();

TimeUnit.SECONDS.sleep(3);
}




}

@Override
public void cancel() {

}
}

static class RedisFactory {
private static Jedis jedisCluster = null;

private RedisFactory() {
}

public static Jedis getJedisCluster() {


jedisCluster = new Jedis(new HostAndPort("hadoop01", Integer.parseInt("6379")));


return jedisCluster;
}
}


static class OriginData {
public String dt;
public String countryCode;
public ArrayList<Data> data;

public OriginData() {
}

public OriginData(String dt, String countryCode, ArrayList<Data> data) {
this.dt = dt;
this.countryCode = countryCode;
this.data = data;
}

public static OriginData of(String dt, String countryCode, ArrayList<Data> data) {
return new OriginData(dt, countryCode, data);
}
}

static class Data {
public String type;
public Double score;
public String level;

public Data() {
}

public Data(String type, Double score, String level) {
this.type = type;
this.score = score;
this.level = level;
}

public static Data of(String type, Double score, String level) {
return new Data(type, score, level);
}
}

static class OutData {
public String dt;
public String countryCode;
public String type;
public Double score;
public String level;

public OutData() {
}

public OutData(String dt, String countryCode, String type, Double score, String level) {
this.dt = dt;
this.countryCode = countryCode;
this.type = type;
this.score = score;
this.level = level;
}

public static OutData of(String dt, String countryCode, String type, Double score, String level) {
return new OutData(dt, countryCode, type, score, level);
}
}

static class DataSource extends RichSourceFunction<String> {
private static final String YYYYMMDDHHMMSS = "yyyy-MM-dd HH:mm:ss";
private static Random random = new Random();
private static SimpleDateFormat simpleDateFormat = new SimpleDateFormat(YYYYMMDDHHMMSS);
private static String[] countryCodes = {"US","TW","HK","PK","KW","SA","XX","IN"};
private static String[] users = {"s1","s2","s3","s4","s5","s6","s7","s8","s9","s10","s11","s12","s13","s14","s15","s16"};
private static String[] levels = {"A","B","C","D"};

@Override
public void run(SourceContext<String> sourceContext) throws Exception {
while (true){
int i = random.nextInt(4);
long time = System.currentTimeMillis()+ 1000*i;
String resDate = simpleDateFormat.format(time);
i = random.nextInt(users.length);
String user1 = users[i];
Double score1 = Double.valueOf(String.format("%.1f", random.nextDouble()));

String countCode1 = countryCodes[i%countryCodes.length];
String level1 = levels[i%levels.length];
i = random.nextInt(users.length);
String user2 = users[i];
String countCode2 = countCode1;
String level2 = levels[i%levels.length];

Double score2 = Double.valueOf(String.format("%.1f", random.nextDouble()));

Data data1 = Data.of(user1, score1, level1);
Data data2 = Data.of(user2, score2, level2);
ArrayList<Data> datas = new ArrayList<>();
datas.add(data1);
datas.add(data2);
OriginData originData = OriginData.of(resDate, countCode1, datas);
String s = JSON.toJSONString(originData);
sourceContext.collect(s);
TimeUnit.SECONDS.sleep(1);
}
}

@Override
public void cancel() {
}
}
}

Flink实战 - Binlog日志并对接Kafka实战


Flink系列 - 实时数仓之电商订单支付实时对账


Flink系列 - 实时数仓之CEP预警实战


版权声明:

本文为《大数据真好玩》整理,原作者独家授权。未经原作者允许转载追究侵权责任。

责编 | 大数据真好玩

插画 | 大数据真好玩

微信公众号 | 大数据真好玩

原文链接 | https://blog.csdn.net/weixin_43704599


欢迎点赞+收藏+转发朋友圈素质三连

文章不错?点个【在看】吧! 👇

: . Video Mini Program Like ,轻点两下取消赞 Wow ,轻点两下取消在看

您可能也对以下帖子感兴趣

文章有问题?点此查看未经处理的缓存