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.


hive json 값 다루기

총관리자 2014.04.17 10:26 조회 수 : 1222

1. json형식의 data파일 생성

hadoop@bigdata-host:~/hadoop/working$ vi simple.json
{"Foo":"ABC","Bar":"20090101100000","Quux":{"QuuxId":1234,"QuuxName":"Sam"}}

2. data를 담을 table 생성

create table json_table (json string);

 

3. data파일을 table에 입력

hive> load data local inpath '/home/hadoop/hadoop/working/simple.json' into table json_table;
Copying data from file:/home/hadoop/hadoop/working/simple.json
Copying file: file:/home/hadoop/hadoop/working/simple.json
Loading data to table default.json_table
Table default.json_table stats: [num_partitions: 0, num_files: 1, num_rows: 0, total_size: 77, raw_data_size: 0]
OK

4. table내용 확인

hive> select * from json_table;
OK
{"Foo":"ABC","Bar":"20090101100000","Quux":{"QuuxId":1234,"QuuxName":"Sam"}}

 

5. json을 컬럼 형태로 query하기(get_json_object이용)

select get_json_object(json_table.json, '$.Foo') as foo,

          get_json_object(json_table.json, '$.Bar') as bar,

          get_json_object(json_table.json, '$.Quux.QuuxId') as qid,

          get_json_object(json_table.json, '$.Quux.QuuxName') as qname

from json_table;

-------------------------->

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_201404170922_0003, Tracking URL = http://localhost:50030/jobdetails.jsp?jobid=job_201404170922_0003
Kill Command = /home/hadoop/hadoop-1.2.1/libexec/../bin/hadoop job  -kill job_201404170922_0003
Hadoop job information for Stage-1: number of mappers: 1; number of reducers: 0
2014-04-17 10:30:42,028 Stage-1 map = 0%,  reduce = 0%
2014-04-17 10:30:48,109 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.87 sec
2014-04-17 10:30:49,128 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.87 sec
2014-04-17 10:30:50,146 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.87 sec
2014-04-17 10:30:51,162 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.87 sec
2014-04-17 10:30:52,175 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.87 sec
2014-04-17 10:30:53,206 Stage-1 map = 100%,  reduce = 100%, Cumulative CPU 1.87 sec
MapReduce Total cumulative CPU time: 1 seconds 870 msec
Ended Job = job_201404170922_0003
MapReduce Jobs Launched:
Job 0: Map: 1   Cumulative CPU: 1.87 sec   HDFS Read: 295 HDFS Write: 28 SUCCESS
Total MapReduce CPU Time Spent: 1 seconds 870 msec
OK
ABC 20090101100000 1234 Sam
Time taken: 19.411 seconds, Fetched: 1 row(s)

6. json을 컬럼 형태로 query하기(json_tuple이용)

select v.foo, v.bar, v.quux, v.qid

from json_table jt

 lateral view json_tuple(jt.json, 'Foo', 'Bar', 'Quux', 'Quux.QuuxId') v

    as foo, bar, quux, qid;

------------>

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_201404170922_0004, Tracking URL = http://localhost:50030/jobdetails.jsp?jobid=job_201404170922_0004
Kill Command = /home/hadoop/hadoop-1.2.1/libexec/../bin/hadoop job  -kill job_201404170922_0004
Hadoop job information for Stage-1: number of mappers: 1; number of reducers: 0
2014-04-17 10:36:41,978 Stage-1 map = 0%,  reduce = 0%
2014-04-17 10:36:49,125 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.53 sec
2014-04-17 10:36:50,156 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.53 sec
2014-04-17 10:36:51,170 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.53 sec
2014-04-17 10:36:52,193 Stage-1 map = 100%,  reduce = 0%, Cumulative CPU 1.53 sec
2014-04-17 10:36:53,219 Stage-1 map = 100%,  reduce = 100%, Cumulative CPU 1.53 sec
MapReduce Total cumulative CPU time: 1 seconds 530 msec
Ended Job = job_201404170922_0004
MapReduce Jobs Launched:
Job 0: Map: 1   Cumulative CPU: 1.53 sec   HDFS Read: 295 HDFS Write: 55 SUCCESS
Total MapReduce CPU Time Spent: 1 seconds 530 msec
OK
foo bar quux qid
ABC 20090101100000 {"QuuxId":1234,"QuuxName":"Sam"} NULL
Time taken: 26.494 seconds, Fetched: 1 row(s)

 

번호 제목 글쓴이 날짜 조회 수
30 Query 1234:1234 expired due to client inactivity(timeout is 5m)및 invalid query handle gooper 2022.06.10 81
29 파일끝에 붙는 ^M 일괄 지우기(linux, unix(AIX)) 혹은 파일내에 있는 ^M지우기 총관리자 2016.09.24 78
28 How-to: Tune Your Apache Spark Jobs (Part 2) file 총관리자 2016.10.31 77
27 Query Status: Sender xxx.xxx.xxx.xxx timed out waiting for receiver fragment instance: 1234:cdsf, dest node: 10 의 오류 원인및 대응방안 총관리자 2021.11.03 77
26 small file 한개 파일로 만들기(text file 혹은 parquet file의 테이블) gooper 2022.07.04 76
25 kudu hms check 사용법(예시) 총관리자 2021.10.22 69
24 Scala를 이용한 Streaming예제 총관리자 2018.03.08 69
23 Scala버젼 변경 혹은 상황에 맞게 Spark소스 컴파일하기 총관리자 2016.05.31 67
22 [impala]쿼리 수행중 발생하는 오류(due to memory pressure: the memory usage of this transaction, Failed to write to server) gooper 2022.10.05 67
21 [TLS/SSL]Kudu Master 설정하기 총관리자 2022.05.13 61
20 [Impala jdbc]CDP7.1.7환경에서 java프로그램을 이용하여 kerberized impala cluster에 접근하여 SQL을 수행하는 방법 gooper 2023.08.22 58
19 [hive] hive.tbls테이블의 owner컬럼값은 hadoop.security.auth_to_local에 의해서 filtering된다. 총관리자 2022.04.14 55
18 spark 온라인 책자링크 (제목 : mastering-apache-spark) 총관리자 2016.05.25 51
17 [CDP7.1.7]impala-shell을 이용하여 kudu table에 insert/update수행시 발생하는 오류(Transport endpoint is not connected (error 107)) 발생시 확인할 내용 gooper 2023.11.30 45
16 spark에서 hive table을 읽어 출력하는 예제 소스 총관리자 2017.03.09 37
15 [KUDU] kudu tablet server여러가지 원인에 의해서 corrupted상태가 된 경우 복구방법 gooper 2023.03.28 37
14 spark에서 hive table을 읽어 출력하는 예제 소스 총관리자 2017.03.09 35
13 [TLS/SSL]Kudu Tablet Server설정 총관리자 2022.05.13 35
12 AnalysisException: Incomplatible return type 'DECIMAL(38,0)' and 'DECIMAL(38,5)' of exprs가 발생시 조치 총관리자 2021.07.26 34
11 Failed to write to server: (no server available): 총관리자 2022.01.17 32

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