hive serde 序列化与反序列化 - 一行数据写入hive表

Hive-0.5中SerDe概述


一、背景

1、当进程在进行远程通信时,彼此可以发送各种类型的数据,无论是什么类型的数据都会以二进制序列的形式在网络上传送。发送方需要把对象转化为字节序列才可在网络上传输,称为对象序列化;接收方则需要把字节序列恢复为对象,称为对象的反序列化

2、Hive的反序列化是对key/value反序列化成hive table的每个列的值

3、Hive可以方便的将数据加载到表中不需要对数据进行转换,这样在处理海量数据时可以节省大量的时间。

二、技术细节

1、SerDe是Serialize/Deserilize的简称,目的是用于序列化和反序列化。

2、用户在建表时可以用自定义的SerDe或使用Hive自带的SerDe,SerDe能为表指定列,且对列指定相应的数据

CREATE [EXTERNAL] TABLE [IF NOT EXISTS] table_name

[(col_name data_type [COMMENT col_comment], ...)]

[COMMENT table_comment]

[PARTITIONED BY (col_name data_type

[COMMENT col_comment], ...)]

[CLUSTERED BY (col_name, col_name, ...)

[SORTED BY (col_name [ASC|DESC], ...)]

INTO num_buckets BUCKETS]

[ROW FORMAT row_format]

[STORED AS file_format]

[LOCATION hdfs_path]

创建指定SerDe表时,使用row format row_format参数,例如:

a、添加jar包。在hive客户端输入:hive>add jar /run/serde_test.jar;

或者在linux shell端执行命令:${HIVE_HOME}/bin/hive -auxpath /run/serde_test.jar

b、建表:create table serde_table row format serde 'hive.connect.TestDeserializer';

3、编写序列化类TestDeserializer。实现Deserializer接口的三个函数:

a)初始化:initialize(Configuration conf, Properties tb1)。

b)反序列化Writable类型返回Object:deserialize(Writable blob)。

c)获取deserialize(Writable blob)返回值Object的inspector:getObjectInspector()。

public interface Deserializer {
/**
* Initialize the HiveDeserializer.
* @param conf System properties
* @param tbl table properties
* @throws SerDeException
*/
public void initialize(Configuration conf, Properties tbl) throws SerDeException;
/**
* Deserialize an object out of a Writable blob.
* In most cases, the return value of this function will be constant since the function
* will reuse the returned object.
* If the client wants to keep a copy of the object, the client needs to clone the
* returned value by calling ObjectInspectorUtils.getStandardObject().
* @param blob The Writable object containing a serialized object
* @return A Java object representing the contents in the blob.
*/
public Object deserialize(Writable blob) throws SerDeException;
/**
* Get the object inspector that can be used to navigate through the internal
* structure of the Object returned from deserialize(...).
*/
public ObjectInspector getObjectInspector() throws SerDeException;
}

实现一行数据

划分成hive表的time,userid,host,path四个字段

的反序列化类。例如:

package hive.connect;

import java.net.MalformedURLException;

import java.net.URL;

import java.util.ArrayList;

import java.util.List;

import java.util.Properties;

import org.apache.hadoop.conf.Configuration;

import org.apache.hadoop.hive.serde2.Deserializer;

import org.apache.hadoop.hive.serde2.SerDeException;

import org.apache.hadoop.hive.serde2.objectinspector.ObjectInspector;

import org.apache.hadoop.hive.serde2.objectinspector.ObjectInspectorFactory;

import org.apache.hadoop.hive.serde2.objectinspector.-

ObjectInspectorFactory.ObjectInspectorOptions;

import org.apache.hadoop.io.Text;

import org.apache.hadoop.io.Writable;


public class TestDeserializer implements Deserializer {

private static List<String> FieldNames = new ArrayList<String>();

private static List<ObjectInspector> FieldNamesObjectInspectors = new ArrayList<ObjectInspector>();

static {

    FieldNames.add("time");

    FieldNamesObjectInspectors.add(ObjectInspectorFactory

        .getReflectionObjectInspector(Long.class,

    ObjectInspectorOptions.JAVA));

    FieldNames.add("userid");

    FieldNamesObjectInspectors.add(ObjectInspectorFactory

        .getReflectionObjectInspector(Integer.class,

    ObjectInspectorOptions.JAVA));

    FieldNames.add("host");

    FieldNamesObjectInspectors.add(ObjectInspectorFactory

        .getReflectionObjectInspector(String.class,

    ObjectInspectorOptions.JAVA));

    FieldNames.add("path");

    FieldNamesObjectInspectors.add(ObjectInspectorFactory

        .getReflectionObjectInspector(String.class,

    ObjectInspectorOptions.JAVA));

}


@Override

public Object deserialize(Writable blob) {

    try {

        if (blob instanceof Text) {

            String line = ((Text) blob).toString();

            if (line == null)

            return null;

            String[] field = line.split("\t");

            if (field.length != 3) {

            return null;

        }


        List<Object> result = new ArrayList<Object>();

        URL url = new URL(field[2]);

        Long time = Long.valueOf(field[0]);

        Integer userid = Integer.valueOf(field[1]);

        //简易地对一行数据进行格式转换。

        result.add(time);

        result.add(userid);

        result.add(url.getHost());

        result.add(url.getPath());

        return result;

        }

    } catch (MalformedURLException e) {

        e.printStackTrace();

    }

    return null;

}



@Override

public ObjectInspector getObjectInspector() throws SerDeException {

    return ObjectInspectorFactory.getStandardStructObjectInspector(

            FieldNames, FieldNamesObjectInspectors);

}


@Override

public void initialize(Configuration arg0, Properties arg1)

    throws SerDeException {

    }

}


测试HDFS上hive表数据,如下为一条测试数据:

1234567891012 123456 http://wiki.apache.org/hadoop/Hive/LanguageManual/UDF

 

hive> add jar /run/jar/merg_hua.jar;

Added /run/jar/merg_hua.jar to class path

hive> create table serde_table row format serde 'hive.connect.TestDeserializer';

Found class for hive.connect.TestDeserializer

OK

Time taken: 0.028 seconds

hive> describe serde_table;

OK

time bigint from deserializer

userid int from deserializer

host string from deserializer

path string from deserializer

Time taken: 0.042 seconds

hive> select * from serde_table;

OK

1234567891012 123456 wiki.apache.org /hadoop/Hive/LanguageManual/UDF

Time taken: 0.039 seconds

三、总结

1、创建Hive表使用序列化时,需要自写一个实现Deserializer的类并且选用create命令的row format参数

2、在处理海量数据的时候,如果数据的格式与表结构吻合,可以用到Hive的反序列化而不需要对数据进行转换,可以节省大量的时间。


你可能感兴趣的:(表,一行数据写入hive)