메뉴 건너뛰기

Bigdata, Semantic IoT, Hadoop, NoSQL

Bigdata, Hadoop ecosystem, Semantic IoT등의 프로젝트를 진행중에 습득한 내용을 정리하는 곳입니다.
필요한 분을 위해서 공개하고 있습니다. 문의사항은 gooper@gooper.com로 메일을 보내주세요.


1. hive table(file을 바라보고 있으며 hbase table(아래의 hbase_mytable)에 값을 넣기 위한 src table) 을  external로  table 생성

CREATE EXTERNAL TABLE IF NOT EXISTS external_file
     (
     FOO STRING,
     BAR STRING
     )
     COMMENT 'TEST TABLE OF EMP_IP_TABLE'
     ROW FORMAT DELIMITED FIELDS TERMINATED BY ','
     STORED AS TEXTFILE LOCATION '/data';

 

* /data에 들어 있는 파일 내용

hadoop@bigdata-host:~/hive/conf$ hadoop fs -cat /data/external_file.txt
a,b
a1,b1
a2,b2
a3,b3

2.hive table( hbase  table을 바라보는 테이블)생성

CREATE EXTERNAL TABLE hbase_mytable(table_id string, foo string, bar string)
STORED BY 'org.apache.hadoop.hive.hbase.HBaseStorageHandler'
WITH SERDEPROPERTIES ("hbase.columns.mapping" = ":key,cf:foo,cf:bar")
TBLPROPERTIES("hbase.table.name" = "mytable");

 

3. hive기동시 아래와 같이 jar를 포함해준다.

adoop@bigdata-host:~/hive/bin$ hive --auxpath /home/hadoop/hive/lib/hbase-0.94.6.1.jar,/home/hadoop/hive/lib/zookeeper-3.4.3.jar,/home/hadoop/hive/lib/hive-hbase-handler-0.11.0.jar,/home/hadoop/hive/lib/guava-11.0.2.jar,/home/hadoop/hive/lib/hive-contrib-0.11.0.jar -hiveconf hbase.master=localhost:60000

4. hive에 들어가서.. table을 생성한 후 hbase table에 입력 실행결과......

hive> insert into table hbase_mytable select foo, foo, bar from external_file;
Total MapReduce jobs = 1
Launching Job 1 out of 1
Number of reduce tasks is set to 0 since there's no reduce operator
Starting Job = job_201404111158_0008, Tracking URL = http://localhost:50030/jobdetails.jsp?jobid=job_201404111158_0008
Kill Command = /home/hadoop/hadoop-1.2.1/libexec/../bin/hadoop job  -kill job_201404111158_0008
Hadoop job information for Stage-0: number of mappers: 1; number of reducers: 0
2014-04-11 13:56:49,322 Stage-0 map = 0%,  reduce = 0%
2014-04-11 13:56:55,482 Stage-0 map = 100%,  reduce = 0%, Cumulative CPU 1.74 sec
2014-04-11 13:56:56,500 Stage-0 map = 100%,  reduce = 0%, Cumulative CPU 1.74 sec
2014-04-11 13:56:57,518 Stage-0 map = 100%,  reduce = 0%, Cumulative CPU 1.74 sec
2014-04-11 13:56:58,541 Stage-0 map = 100%,  reduce = 0%, Cumulative CPU 1.74 sec
2014-04-11 13:56:59,561 Stage-0 map = 100%,  reduce = 0%, Cumulative CPU 1.74 sec
2014-04-11 13:57:00,587 Stage-0 map = 100%,  reduce = 100%, Cumulative CPU 1.74 sec
MapReduce Total cumulative CPU time: 1 seconds 740 msec
Ended Job = job_201404111158_0008
4 Rows loaded to hbase_mytable
MapReduce Jobs Launched:
Job 0: Map: 1   Cumulative CPU: 1.74 sec   HDFS Read: 220 HDFS Write: 0 SUCCESS
Total MapReduce CPU Time Spent: 1 seconds 740 msec
OK
Time taken: 34.565 seconds

5. hbase_mytable의 값  확인(기존에 있던 값하고 새로 추가된 값이 같이 보인다.)

hive> select * from hbase_mytable;                                           
OK
2.5 1.3 NULL
a a b
a1 a1 b1
a2 a2 b2
a3 a3 b3
second 3 NULL
third NULL 3.14159
Time taken: 1.315 seconds, Fetched: 7 row(s)

6. hbase shell에서 확인

hbase(main):001:0> scan 'mytable'
ROW                        COLUMN+CELL                                                               
 2.5                       column=cf:foo, timestamp=1397112248576, value=1.3                         
 a                         column=cf:bar, timestamp=1397192214568, value=b                           
 a                         column=cf:foo, timestamp=1397192214568, value=a                           
 a1                        column=cf:bar, timestamp=1397192214568, value=b1                          
 a1                        column=cf:foo, timestamp=1397192214568, value=a1                          
 a2                        column=cf:bar, timestamp=1397192214568, value=b2                          
 a2                        column=cf:foo, timestamp=1397192214568, value=a2                          
 a3                        column=cf:bar, timestamp=1397192214568, value=b3                          
 a3                        column=cf:foo, timestamp=1397192214568, value=a3                          
 first                     column=cf:message, timestamp=1397109873612, value=hellp Hbase             
 second                    column=cf:foo, timestamp=1397112803662, value=3                           
 second2                   column=cf:foo2, timestamp=1397112883691, value=3                          
 third                     column=cf:bar, timestamp=1397109940598, value=3.14159                     
9 row(s) in 1.8090 seconds

 

 

번호 제목 글쓴이 날짜 조회 수
130 insert hbase by hive ... error occured after 5 hours..HMaster가 뜨지 않는 장애에 대한 복구 방법 총관리자 2014.04.29 7129
129 hive 2.0.1 설치및 mariadb로 metastore 설정 총관리자 2016.06.03 5184
128 Hive Query Examples from test code (2 of 2) 총관리자 2014.03.26 5005
127 Spark에서 Serializable관련 오류및 조치사항 총관리자 2017.04.21 4901
126 의사분산모드에서 presto설치하기 총관리자 2014.03.31 3050
125 Hive 사용법 및 쿼리 샘플코드 구퍼 2013.03.07 2991
124 spark-sql실행시 Caused by: java.lang.NumberFormatException: For input string: "0s" 오류발생시 조치사항 총관리자 2016.06.09 2802
123 Hive+mysql 설치 및 환경구축하기 file 구퍼 2013.03.07 2722
122 banana pi에 hive 0.13.1+mysql(metastore)설치 file 총관리자 2014.09.09 2406
121 Hive java connection 설정 file 구퍼 2013.04.01 2013
120 VisualVM 1.3.9을 이용한 spark-submit JVM 모니터링을 위한 설정및 spark-submit실행 옵션 총관리자 2016.10.28 1891
119 Spark 2.1.1 clustering(5대) 설치(YARN기반) 총관리자 2016.04.22 1882
» hive에서 생성된 external table에서 hbase의 table에 값 insert하기 총관리자 2014.04.11 1748
117 index생성, 삭제, 활용 총관리자 2014.04.25 1702
116 java.lang.RuntimeException: org.apache.hadoop.hive.ql.metadata.HiveException: Hive Runtime Error: Unable to deserialize reduce input key from...오류해결방법 총관리자 2015.06.16 1692
115 impald에서 idle_query_timeout 와 idle_session_timeout 구분 총관리자 2021.05.20 1630
114 FAILED: IllegalStateException Variable substitution depth too large: 40 오류발생시 조치사항 총관리자 2014.08.19 1520
113 hiverserver2기동시 connection refused가 발생하는 경우 조치방법 총관리자 2014.05.22 1471
112 json 값 다루기 총관리자 2014.04.17 1222
111 schema설정없이 hive를 최초에 실행했을때 발생하는 오류메세지및 처리방법 총관리자 2016.09.25 1222

A personal place to organize information learned during the development of such Hadoop, Hive, Hbase, Semantic IoT, etc.
We are open to the required minutes. Please send inquiries to gooper@gooper.com.

위로