1

I started playing with hadoop 2.6.0, and set up a pseudo-distributed single-node system according to the official documentation.

When I run the simple Map Reduce (MR1) example (see "Pseudo-Distributed Operation -> Execution"), then the overall execution time is approx. 7 sec. More precise, bash's time gives:

real 0m6.769s
user 0m7.375s
sys 0m0.400s

When I run the same example via Yarn (MR2) (see "Pseudo-Distributed Operation -> YARN on Single Node"), then the overall execution time is approx. 100 sec , hence extremely slower. bash's time gives:

real 1m38.422s
user 0m4.798s
sys 0m0.319s

Hence, there is (for some reason) a large overhead outside userspace. But why?

Both examples were executed via

bin/hadoop jar share/hadoop/mapreduce/hadoop-mapreduce-examples-2.6.0.jar grep input output 'dfs[a-z.]+'

Here more details for pure Map Reduce (MR1):

(...)
15/04/10 21:12:17 INFO mapreduce.Job: Counters: 38
    File System Counters
        FILE: Number of bytes read=125642
        FILE: Number of bytes written=1009217
        FILE: Number of read operations=0
        FILE: Number of large read operations=0
        FILE: Number of write operations=0
        HDFS: Number of bytes read=154548
        HDFS: Number of bytes written=1071
        HDFS: Number of read operations=157
        HDFS: Number of large read operations=0
        HDFS: Number of write operations=16
    Map-Reduce Framework
        Map input records=11
        Map output records=11
        Map output bytes=263
        Map output materialized bytes=291
        Input split bytes=129
        Combine input records=0
        Combine output records=0
        Reduce input groups=5
        Reduce shuffle bytes=291
        Reduce input records=11
        Reduce output records=11
        Spilled Records=22
        Shuffled Maps =1
        Failed Shuffles=0
        Merged Map outputs=1
        GC time elapsed (ms)=0
        CPU time spent (ms)=0
        Physical memory (bytes) snapshot=0
        Virtual memory (bytes) snapshot=0
        Total committed heap usage (bytes)=1062207488
    Shuffle Errors
        BAD_ID=0
        CONNECTION=0
        IO_ERROR=0
        WRONG_LENGTH=0
        WRONG_MAP=0
        WRONG_REDUCE=0
    File Input Format Counters 
        Bytes Read=437
    File Output Format Counters 
        Bytes Written=197

real    0m6.769s
user    0m7.375s
sys 0m0.400s

Here more details for Yarn (MR2):

(...)
15/04/10 21:20:31 INFO mapreduce.Job: Counters: 49
    File System Counters
        FILE: Number of bytes read=291
        FILE: Number of bytes written=211001
        FILE: Number of read operations=0
        FILE: Number of large read operations=0
        FILE: Number of write operations=0
        HDFS: Number of bytes read=566
        HDFS: Number of bytes written=197
        HDFS: Number of read operations=7
        HDFS: Number of large read operations=0
        HDFS: Number of write operations=2
    Job Counters 
        Launched map tasks=1
        Launched reduce tasks=1
        Data-local map tasks=1
        Total time spent by all maps in occupied slots (ms)=2411
        Total time spent by all reduces in occupied slots (ms)=2717
        Total time spent by all map tasks (ms)=2411
        Total time spent by all reduce tasks (ms)=2717
        Total vcore-seconds taken by all map tasks=2411
        Total vcore-seconds taken by all reduce tasks=2717
        Total megabyte-seconds taken by all map tasks=2468864
        Total megabyte-seconds taken by all reduce tasks=2782208
    Map-Reduce Framework
        Map input records=11
        Map output records=11
        Map output bytes=263
        Map output materialized bytes=291
        Input split bytes=129
        Combine input records=0
        Combine output records=0
        Reduce input groups=5
        Reduce shuffle bytes=291
        Reduce input records=11
        Reduce output records=11
        Spilled Records=22
        Shuffled Maps =1
        Failed Shuffles=0
        Merged Map outputs=1
        GC time elapsed (ms)=68
        CPU time spent (ms)=1160
        Physical memory (bytes) snapshot=432250880
        Virtual memory (bytes) snapshot=1719066624
        Total committed heap usage (bytes)=353370112
    Shuffle Errors
        BAD_ID=0
        CONNECTION=0
        IO_ERROR=0
        WRONG_LENGTH=0
        WRONG_MAP=0
        WRONG_REDUCE=0
    File Input Format Counters 
        Bytes Read=437
    File Output Format Counters 
        Bytes Written=197

real    1m38.422s
user    0m4.798s
sys 0m0.319s

Can anybody explain this performance gap and how to fix it?

1

YARN comes handy if you have a very huge cluster and you want to use the same cluster for different applications like hadoop, Spark, Kafka e.t.c. It is designed to support many platforms . I think you are able to see that time difference because of dafault configuration, tuning the cluster would give better performance i guess.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.