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基於sparksql調用shell腳本運行SQL

cor when ota round columns cat 基於 exec url

[Author]: kwu

基於sparksql調用shell腳本運行SQL,sparksql提供了類似hive中的 -e , -f ,-i的選項


1、定時調用腳本

#!/bin/sh  
# upload logs to hdfs  
  
yesterday=`date --date=‘1 days ago‘ +%Y%m%d`  

/opt/modules/spark/bin/spark-sql -i /opt/bin/spark_opt/init.sql --master spark://10.130.2.20:7077 --executor-memory 6g --total-executor-cores 45 --conf spark.ui.port=4075   -e "insert overwrite table st.stock_realtime_analysis PARTITION (DTYPE=‘01‘ )
  select t1.stockId as stockId,
         t1.url as url,
         t1.clickcnt as clickcnt,
         0,
         round((t1.clickcnt / (case when t2.clickcntyesday is null then   0 else t2.clickcntyesday end) - 1) * 100, 2) as LPcnt,
         ‘01‘ as type,
         t1.analysis_date as analysis_date,
         t1.analysis_time as analysis_time
    from (select stock_code stockId,
                 concat(‘http://stockdata.stock.hexun.com/‘, stock_code,‘.shtml‘) url,
                 count(1) clickcnt,
                 substr(from_unixtime(unix_timestamp(),‘yyyy-MM-dd HH:mm:ss‘),1,10) analysis_date,
                 substr(from_unixtime(unix_timestamp(),‘yyyy-MM-dd HH:mm:ss‘),12,8) analysis_time
            from dms.tracklog_5min
           where stock_type = ‘STOCK‘
             and day =
                 substr(from_unixtime(unix_timestamp(), ‘yyyyMMdd‘), 1, 8)
           group by stock_code
           order by clickcnt desc limit 20) t1
    left join (select stock_code stockId, count(1) clickcntyesday
                 from dms.tracklog_5min a
                where stock_type = ‘STOCK‘
                  and substr(datetime, 1, 10) = date_sub(from_unixtime(unix_timestamp(),‘yyyy-MM-dd HH:mm:ss‘),1)
                  and substr(datetime, 12, 5) <substr(from_unixtime(unix_timestamp(),‘yyyy-MM-dd HH:mm:ss‘), 12, 5)
                  and day = ‘${yesterday}‘
                group by stock_code) t2
      on t1.stockId = t2.stockId;
  "  
sqoop export  --connect jdbc:mysql://10.130.2.245:3306/charts   --username guojinlian  --password Abcd1234  --table stock_realtime_analysis  --fields-terminated-by ‘\001‘ --columns "stockid,url,clickcnt,splycnt,lpcnt,type" --export-dir /dw/st/stock_realtime_analysis/dtype=01; 

init.sql內容為載入udf:

add jar /opt/bin/UDF/hive-udf.jar;
create temporary function udtf_stockidxfund as ‘com.hexun.hive.udf.stock.UDTFStockIdxFund‘;
create temporary function udf_getbfhourstime as ‘com.hexun.hive.udf.time.UDFGetBfHoursTime‘;
create temporary function udf_getbfhourstime2 as ‘com.hexun.hive.udf.time.UDFGetBfHoursTime2‘;
create temporary function udf_stockidxfund as ‘com.hexun.hive.udf.stock.UDFStockIdxFund‘;
create temporary function udf_md5 as ‘com.hexun.hive.udf.common.HashMD5UDF‘;
create temporary function udf_murhash as ‘com.hexun.hive.udf.common.HashMurUDF‘;
create temporary function udf_url as ‘com.hexun.hive.udf.url.UDFUrl‘;
create temporary function url_host as ‘com.hexun.hive.udf.url.UDFHost‘;
create temporary function udf_ip as ‘com.hexun.hive.udf.url.UDFIP‘;
create temporary function udf_site as ‘com.hexun.hive.udf.url.UDFSite‘;
create temporary function udf_UrlDecode as ‘com.hexun.hive.udf.url.UDFUrlDecode‘;
create temporary function udtf_url as ‘com.hexun.hive.udf.url.UDTFUrl‘;
create temporary function udf_ua as ‘com.hexun.hive.udf.useragent.UDFUA‘;
create temporary function udf_ssh as ‘com.hexun.hive.udf.useragent.UDFSSH‘;
create temporary function udtf_ua as ‘com.hexun.hive.udf.useragent.UDTFUA‘;
create temporary function udf_kw as ‘com.hexun.hive.udf.url.UDFKW‘;
create temporary function udf_chdecode as ‘com.hexun.hive.udf.url.UDFChDecode‘;

設置ui的port

--conf spark.ui.port=4075 

默覺得4040,會與其它正在跑的任務沖突,這裏改動為4075


設定任務使用的內存與CPU資源

--executor-memory 6g --total-executor-cores 45



原來的語句是用hive -e 運行的,改動為spark後速度大加快了。

原來為15min,提升速度後為 45s.




基於sparksql調用shell腳本運行SQL