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Hbase - 自定义Rowkey规则

Hbase - 自定义Rowkey规则

作者: kikiki1 | 来源:发表于2019-07-12 16:42 被阅读0次

在Flink中我们有时候需要分析数据1点到2点的范围,可是经过Region又比较慢,这时候我们就可以定制TableInputFormat来实现我们的需求了,我们还可以采用Flink的DataSet的方式读取,另外下面还有Spark读取的例子。

使用教程

Md5Util.java

import org.apache.commons.codec.binary.Hex;

import java.security.MessageDigest;
import java.security.NoSuchAlgorithmException;
public class Md5Util {
    public static String md5(byte[] key) {
        return md5(key, 0, key.length);
    }

    public static String md5(byte[] key, int offset, int length) {
        try {
            MessageDigest e = MessageDigest.getInstance("MD5");
            e.update(key, offset, length);
            byte[] digest = e.digest();
            return new String(Hex.encodeHex(digest));
        } catch (NoSuchAlgorithmException var5) {
            throw new RuntimeException("Error computing MD5 hash", var5);
        }
    }

    public static String md5(String str) {
        return md5(str.getBytes());
    }
    public static String md5(String str,int offset, int length) {
        return md5(str.getBytes(),offset,length);
    }
}

数据Split方式

private Connection connection;
    private Admin admin;

    @Before
    public void init() throws Exception {
        System.setProperty("java.security.krb5.conf", "/etc/krb5.conf");
        System.setProperty("sun.security.krb5.debug", "false");
        final String user = "hbase/abc.demo.com@DEMO.COM";
        final String keyPath = "/home/dounine/kerberos/lake.keytab";

        Configuration conf = new Configuration();
        conf.addResource("hbase-site.xml");

        UserGroupInformation.setConfiguration(conf);
        UserGroupInformation.loginUserFromKeytab(user, keyPath);

        connection = ConnectionFactory.createConnection(conf);
        admin = connection.getAdmin();
    }

@Test
    public void createTable() throws IOException {
        TableName table = TableName.valueOf("logTable1");
        TableDescriptorBuilder tableDesc = TableDescriptorBuilder.newBuilder(table);
        tableDesc.setValue(TableDescriptorBuilder.SPLIT_POLICY,KeyPrefixRegionSplitPolicy.class.getName());
        tableDesc.setValue(KeyPrefixRegionSplitPolicy.PREFIX_LENGTH_KEY,"2");

        ColumnFamilyDescriptor extCF = ColumnFamilyDescriptorBuilder.newBuilder("ext".getBytes()).build();
        ColumnFamilyDescriptor deviceCF = ColumnFamilyDescriptorBuilder.newBuilder("device".getBytes()).build();
        ColumnFamilyDescriptor locationCF = ColumnFamilyDescriptorBuilder.newBuilder("location".getBytes()).build();
        tableDesc.setColumnFamilies(Arrays.asList(extCF,locationCF,deviceCF));
        try {
            byte[][] splitKeys = new byte[4][];
            splitKeys[0] = Bytes.toBytes("00");
            splitKeys[1] = Bytes.toBytes("40");
            splitKeys[2] = Bytes.toBytes("80");
            splitKeys[3] = Bytes.toBytes("c0");
            admin.createTable(tableDesc.build(),splitKeys);
        } catch (IOException e) {
            e.printStackTrace();
        }
    }

logTable1数据写入方式

public class HbaseKerberos{
    private static final Logger LOGGER = LoggerFactory.getLogger(HbaseKerberos.class);
    private static final DateTimeFormatter dtf = DateTimeFormatter.ofPattern("yyyyMMddHHmmssSSS");
    private static final String TABLE_NAME = "logTable1";

    public void insertDataToHbase1(String appKey,List<Log> hasDatas) throws IOException {
        Table table = HbaseUtils.getTable(TABLE_NAME);
        Long sumCount = 0L;

        /**
         * 常规值
         */
        byte[] extCF = Bytes.toBytes("ext");//CF列族
        Random random = new Random();
        List<Put> rows = new ArrayList<>();
        for (Log logEntity : hasDatas) {
            JSONObject dataJsonObject = logEntity.getData();
            JSONObject extJsonObject = dataJsonObject.getJSONObject("ext");
            String userId = extJsonObject.getString("userId");
            String timeStr = logEntity.getTime().format(dtf);

            String md5Str = Md5Util.md5(userId);
            String rowKey = new StringBuilder()
                    .append(md5Str.substring(0,2))//md5出来的前两位最高为ff,00~ff为256位,后期Region可以增加那么多,足够使用了。
                    .append("|")
                    .append(timeStr)//时间
                    .append("|")
                    .append(CrcUtil.getCrcValue(appKey))
                    .append("|")
                    .append(md5Str.substring(2,8))
                    .append("|")
                    .append(Md5Util.md5(UUID.randomUUID().toString()).substring(0,2))
                    .toString();
            Put row = new Put(Bytes.toBytes(rowKey));

            for(String keyName : extJsonObject.keySet()){
                String value = extJsonObject.getString(keyName);
                if(StringUtils.isNotBlank(value)){
                    row.addColumn(extCF, Bytes.toBytes(keyName), Bytes.toBytes(value));
                }
            }
            row.addColumn(extCF, Bytes.toBytes("time"), Bytes.toBytes(logEntity.getTime().toString()));

            /**
             * 设备信息
             */
            putFieldToRow(logEntity.getData(),"device",row);

            /**
             * 位置信息
             */
            putFieldToRow(logEntity.getData(),"location",row);

            rows.add(row);
        }
        for(Integer[] durtation : LimitUtil.getLimits(rows.size(),1000)){
            Object[] results = new Object[(durtation[1]-durtation[0])];
            try {
                table.batch(rows.subList(durtation[0], durtation[1]),results);
            } catch (InterruptedException e) {
                e.printStackTrace();
            }
            sumCount += (durtation[1]-durtation[0]);
        }
        LOGGER.info("write data count:" + sumCount);
    }
}

logTable1数据

00|20180518203401772|2352356512|4519 column=ext:appKey, timestamp=1533646292389, value=898b7e90-5754-11e8-983c-6b4bcc3b7c2e
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:channelCode, timestamp=1533646292389, value=guanlan-resurrection-002-
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:createDateTime, timestamp=1533646292389, value=1526646836093
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:retain, timestamp=1533646292389, value=17670
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:scene, timestamp=1533646292389, value=1007
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:shareId, timestamp=1533646292389, value=ogJmG5ItE_nBCS3pg5XCvGotGI1c
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:time, timestamp=1533646292389, value=2018-05-18T20:34:01
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:type, timestamp=1533646292389, value=login_in
 f3|f1
 00|20180518203401772|2352356512|4519 column=ext:userId, timestamp=1533646292389, value=ogJmG5KRcIxtyg7UmcRHFCn6YiAQ
 f3|f1
 00|20180518203406167|2352356512|4519 column=ext:appKey, timestamp=1533646347725, value=898b7e90-5754-11e8-983c-6b4bcc3b7c2e
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:channelCode, timestamp=1533646347725, value=guanlan-regular-001-
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:createDateTime, timestamp=1533646347725, value=1526646839075
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:retain, timestamp=1533646347725, value=17670
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:shareId, timestamp=1533646347725, value=ogJmG5KRcIxtyg7UmcRHFCn6YiAQ
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:time, timestamp=1533646347725, value=2018-05-18T20:34:06
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:type, timestamp=1533646347725, value=sharesuccess
 f3|54
 00|20180518203406167|2352356512|4519 column=ext:userId, timestamp=1533646347725, value=ogJmG5KRcIxtyg7UmcRHFCn6YiAQ
 f3|54
 00|20180518203407144|2352356512|5ca1 column=ext:appKey, timestamp=1533646294045, value=898b7e90-5754-11e8-983c-6b4bcc3b7c2e
 c4|bc
 00|20180518203407144|2352356512|5ca1 column=ext:createDateTime, timestamp=1533646294045, value=1526646849745
 c4|bc
 00|20180518203407144|2352356512|5ca1 column=ext:retain, timestamp=1533646294045, value=17670
 c4|bc
 00|20180518203407144|2352356512|5ca1 column=ext:scene, timestamp=1533646294045, value=1037
 c4|bc
 00|20180518203407144|2352356512|5ca1 column=ext:time, timestamp=1533646294045, value=2018-05-18T20:34:07
 c4|bc
 00|20180518203407144|2352356512|5ca1 column=ext:type, timestamp=1533646294045, value=login_in

CustomTableInputFormat.java

import org.apache.commons.lang3.StringUtils;
import org.apache.hadoop.hbase.HRegionLocation;
import org.apache.hadoop.hbase.TableName;
import org.apache.hadoop.hbase.mapreduce.RegionSizeCalculator;
import org.apache.hadoop.hbase.mapreduce.TableInputFormat;
import org.apache.hadoop.hbase.mapreduce.TableSplit;
import org.apache.hadoop.hbase.util.Bytes;
import org.apache.hadoop.hbase.util.Strings;
import org.apache.hadoop.mapreduce.InputSplit;
import org.apache.hadoop.mapreduce.JobContext;
import org.apache.hadoop.net.DNS;

import java.io.IOException;
import java.net.InetAddress;
import java.net.InetSocketAddress;
import java.net.UnknownHostException;
import java.util.ArrayList;
import java.util.HashMap;
import java.util.List;

public class CustomTableInputFormat extends TableInputFormat {

    private HashMap<InetAddress, String> reverseDNSCacheMap =
            new HashMap<>();
    private List<String> keys = new ArrayList<>();

    public CustomTableInputFormat(){
        super();
        for(int i =0;i<256;i++){
            keys.add(StringUtils.substring("00"+Integer.toHexString(i),-2));
        }
    }

    @Override
    public List<InputSplit> getSplits(JobContext context) throws IOException {
        super.initialize(context);
        TableName tableName = super.getTable().getName();
        RegionSizeCalculator sizeCalculator = new RegionSizeCalculator(getRegionLocator(), getAdmin());
        List<InputSplit> splits = new ArrayList<>();

        for (String key : keys) {
            HRegionLocation location = getRegionLocator().getRegionLocation(Bytes.toBytes(key), false);
            InetSocketAddress isa = new InetSocketAddress(location.getHostname(), location.getPort());
            InetAddress regionAddress = isa.getAddress();
            String regionLocation;
            regionLocation = reverseDNS(regionAddress);

            byte[] regionName = location.getRegion().getRegionName();
            String encodedRegionName = location.getRegion().getEncodedName();
            long regionSize = sizeCalculator.getRegionSize(regionName);

            byte[] splitStart = Bytes.add(Bytes.toBytes(key+"|"),this.getScan().getStartRow());
            byte[] splitStop = Bytes.add(Bytes.toBytes(key+"|"),this.getScan().getStopRow());

            TableSplit split = new TableSplit(tableName, this.getScan(),
                    splitStart, splitStop, regionLocation, encodedRegionName, regionSize);
            splits.add(split);
        }
        return splits;
    }

    String reverseDNS(InetAddress ipAddress) throws UnknownHostException {
        String hostName = this.reverseDNSCacheMap.get(ipAddress);
        if (hostName == null) {
            String ipAddressString = null;
            try {
                ipAddressString = DNS.reverseDns(ipAddress, null);
            } catch (Exception e) {
                ipAddressString = InetAddress.getByName(ipAddress.getHostAddress()).getHostName();
            }
            if (ipAddressString == null) throw new UnknownHostException("No host found for " + ipAddress);
            hostName = Strings.domainNamePointerToHostName(ipAddressString);
            this.reverseDNSCacheMap.put(ipAddress, hostName);
        }
        return hostName;
    }
}

Flink例子

static Configuration conf;

    static {
        HadoopKrbLogin.login();
        conf = new Configuration();
        String tableName = "logTable1";
        conf.addResource("hbase-site.xml");

        Scan scan = new Scan();
        scan.setCaching(1000);
        scan.withStartRow("201805182039".getBytes());
        scan.withStopRow("201805182040".getBytes());
        scan.setCacheBlocks(false);
        conf.set(org.apache.hadoop.hbase.mapreduce.TableInputFormat.INPUT_TABLE, tableName);
        ClientProtos.Scan proto = null;
        try {
            proto = ProtobufUtil.toScan(scan);
        } catch (IOException e) {
            e.printStackTrace();
        }
        String ScanToString = Base64.encodeBytes(proto.toByteArray());
        conf.set(org.apache.hadoop.hbase.mapreduce.TableInputFormat.SCAN, ScanToString);
    }

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

        DataSource<Tuple2<ImmutableBytesWritable, Result>> hbase = env.createInput(
                HadoopInputs.createHadoopInput(
                        new CustomTableInputFormat(),
                        ImmutableBytesWritable.class,
                        Result.class,
                        Job.getInstance(conf)
                )
        );

        DataSet<LogEntity> toTuple = hbase.map(
                new MapFunction<Tuple2<ImmutableBytesWritable, Result>, LogEntity>() {
                    public LogEntity map(Tuple2<ImmutableBytesWritable, Result> record) throws Exception {
                        Result result = record.f1;
                        return result2Entity(result);
                    }
                });
}
private static LogEntity result2Entity(Result result) {
        JSONObject root = new JSONObject();
        JSONObject ext = new JSONObject();
        JSONObject device = new JSONObject();
        JSONObject location = new JSONObject();
        for (Cell cell : result.rawCells()) {
            byte[] family = CellUtil.cloneFamily(cell);
            byte[] column = CellUtil.cloneQualifier(cell);
            byte[] value = CellUtil.cloneValue(cell);
            String columnName = Bytes.toString(column);
            if ("ext".equals(Bytes.toString(family))) {
                if ("durationTime".equals(columnName)) {
                    ext.put(columnName, Bytes.toLong(value));
                } else if ("time".equals(columnName)) {
                    root.put(columnName, Bytes.toString(value));
                    root.put("timeLong", DateUtil.getMill(LocalDateTime.parse(Bytes.toString(value))));
                } else {
                    ext.put(columnName, Bytes.toString(value));
                }
            } else if ("device".equals(Bytes.toString(family))) {
                device.put(columnName, Bytes.toString(value));
            } else if ("location".equals(Bytes.toString(family))) {
                location.put(columnName, Bytes.toString(value));
            }
        }
        JSONObject data = new JSONObject();
        if (device.keySet().size() > 0) {
            data.put("device", device);
        }
        if (location.keySet().size() > 0) {
            data.put("location", location);
        }
        data.put("ext", ext);
        root.put("data", data);
        return JSON.parseObject(root.toString(), LogEntity.class);
    }

Spark 例子

public class SimpleApp implements Serializable {
 static Configuration cfg = null;
    static {
        HadoopKrbLogin.login();
        cfg = new Configuration();
        String tableName = "logTable1";

        cfg.addResource("hbase-site.xml");

        Scan scan = new Scan();
        scan.setCaching(1000);
        scan.withStartRow("201805182039".getBytes());
        scan.withStopRow("201805182040".getBytes());
        scan.setCacheBlocks(false);
        cfg.set(TableInputFormat.INPUT_TABLE, tableName);
        ClientProtos.Scan proto = null;
        try {
            proto = ProtobufUtil.toScan(scan);
        } catch (IOException e) {
            e.printStackTrace();
        }
        String ScanToString = Base64.encodeBytes(proto.toByteArray());
        cfg.set(TableInputFormat.SCAN, ScanToString);
    }

public static void main(String[] args) {
SparkConf sparkConf = new SparkConf()
                .setMaster("local")
                .setAppName("HbaseDemo");
        JavaSparkContext jsc = new JavaSparkContext(sparkConf);
        JavaPairRDD<ImmutableBytesWritable, Result> hBaseRDD =
                jsc.newAPIHadoopRDD(cfg, CustomTableInputFormat.class, ImmutableBytesWritable.class, Result.class);

        // do some transformation
        JavaRDD<LogEntity> rdd1 = hBaseRDD.mapPartitions((FlatMapFunction<Iterator<Tuple2<ImmutableBytesWritable, Result>>, LogEntity>)
                tuple2Iterator -> {
                    List<LogEntity> logEntities = new ArrayList<>();
                    while (tuple2Iterator.hasNext()) {
                        Tuple2<ImmutableBytesWritable, Result> tuple = tuple2Iterator.next();
                        Result result = tuple._2;
                        String rowKey = Bytes.toString(result.getRow());
                        logEntities.add(result2Entity(result));
                    }
                    return logEntities.iterator();
                });

}
private static LogEntity result2Entity(Result result) {
        JSONObject root = new JSONObject();
        JSONObject ext = new JSONObject();
        JSONObject device = new JSONObject();
        JSONObject location = new JSONObject();
        for (Cell cell : result.rawCells()) {
            byte[] family = CellUtil.cloneFamily(cell);
            byte[] column = CellUtil.cloneQualifier(cell);
            byte[] value = CellUtil.cloneValue(cell);
            String columnName = Bytes.toString(column);
            if ("ext".equals(Bytes.toString(family))) {
                if ("durationTime".equals(columnName)) {
                    ext.put(columnName, Bytes.toLong(value));
                } else if ("time".equals(columnName)) {
                    root.put(columnName, Bytes.toString(value));
                    root.put("timeLong", DateUtil.getMill(LocalDateTime.parse(Bytes.toString(value))));
                } else {
                    ext.put(columnName, Bytes.toString(value));
                }
            } else if ("device".equals(Bytes.toString(family))) {
                device.put(columnName, Bytes.toString(value));
            } else if ("location".equals(Bytes.toString(family))) {
                location.put(columnName, Bytes.toString(value));
            }
        }
        JSONObject data = new JSONObject();
        if (device.keySet().size() > 0) {
            data.put("device", device);
        }
        if (location.keySet().size() > 0) {
            data.put("location", location);
        }
        data.put("ext", ext);
        root.put("data", data);
        return JSON.parseObject(root.toString(), LogEntity.class);
    }

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