最近有个SQL运行时长超过两个小时,所以准备优化下
首先查看hive sql 产生job的counter数据发现
总的CPU time spent 过高估计100.4319973小时
每个map的CPU time spent
排第一的耗了2.0540889小时
建议设置如下参数:
1、mapreduce.input.fileinputformat.split.maxsize现在是256000000 往下调增加map数(此招立竿见影,我设为32000000产生了500+的map,最后任务由原先的2小时提速到47分钟就完成)
2、优化UDF getPageID getSiteId getPageValue (这几个方法用了很多正则表达式的文本匹配)
2.1 正则表达式处理优化可以参考
http://www.fasterj.com/articles/regex1.shtml
http://www.fasterj.com/articles/regex2.shtml
2.2 UDF优化见
1 Also you should use class level privatete members to save on object incantation and garbage collection. 2 You also get benefits by matching the args with what you would normally expect from upstream. Hive converts text to string when needed, but if the data normally coming into the method is text you could try and match the argument and see if it is any faster. Exapmle: 优化前: >>>> import org.apache.hadoop.hive.ql.exec.UDF; >>>> import java.net.URLDecoder; >>>> >>>> public final class urldecode extends UDF { >>>> >>>> public String evaluate(final String s) { >>>> if (s == null) { return null; } >>>> return getString(s); >>>> } >>>> >>>> public static String getString(String s) { >>>> String a; >>>> try { >>>> a = URLDecoder.decode(s); >>>> } catch ( Exception e) { >>>> a = ""; >>>> } >>>> return a; >>>> } >>>> >>>> public static void main(String args[]) { >>>> String t = "%E5%A4%AA%E5%8E%9F-%E4%B8%89%E4%BA%9A"; >>>> System.out.println( getString(t) ); >>>> } >>>> }
优化后:
import java.net.URLDecoder; public final class urldecode extends UDF { private Text t = new Text(); public Text evaluate(Text s) { if (s == null) { return null; } try { t.set( URLDecoder.decode( s.toString(), "UTF-8" )); return t; } catch ( Exception e) { return null; } } //public static void main(String args[]) { //String t = "%E5%A4%AA%E5%8E%9F-%E4%B8%89%E4%BA%9A"; //System.out.println( getString(t) ); //} }
3 继承实现GenericUDF
3、如果是Hive 0.14 + 可以开启hive.cache.expr.evaluation UDF Cache功能
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