Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

In normal java development, if I want to improve the performance of an application my usual procedure would be to run the program with a profiler attached, or alternatively embed within the application a collection of instrumentation marks. In either case, the immediate goal is to identify the hot spot of the application, and subsequently to be able to measure the effect of the changes that I make.

What is the correct analog when the application is a map/reduce job running in a hadoop cluster?

What options are available for collecting performance data when jobs appear to be running more slowly than you would predict from running equivalent logic in your development sandbox?

share|improve this question
add comment

1 Answer

Map/Reduce Framework

Watch the Job in the Job-Tracker. Here you will see how long the mappers and reducers take. A common example would be if you do too much work in the reducers. In that case you will notice that the mappers finish quite soon while the reducers take forever.
It might also be interesting to see if all your mappers take a similar amount of time. Maybe the job is held up by a few slow tasks? This could indicate a hardware defect in the cluster (in which case speculative execution could be the answer) or the workload is not distributed evenly enough.

The Operating System

Watch the nodes (either with something simple as top or with monitoring such as munin or ganglia) to see if your job is cpu bound or io bound. If for example your reduce phase is io bound you can increase the number of reducers you use.
Something else you might detect here is when your tasks are using to much memory. If the tasktrackers do not have enough RAM increasing the number of tasks per node might actually hurt performance. A monitor system might highlight the resulting swapping.

The Single Tasks

You can run a Mapper/Reducers in isolation for profiling. In this case you can use all the tools you already know.
If you think the performance problem appears only when the job is executed in the cluster you can measure the time of relevant portions of the code with System.nanoTime() and use System.outs to output some rough performance numbers.
Of course there is also the option of adding JVM-Parameters to the child JVMs and connecting a profiler remotely.

share|improve this answer
add comment

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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