I am trying to profile which functions consume the most time for a TeraSort Hadoop job. for my test system, I am using a basic 1-node pseudo-distributed setup. This means that the NameNode, DataNode, Tasktracker, and Jobtracker JVMs all run on the same machine.
I first generate ~9GB of data using TeraGen and then run the TeraSort on it. While the JVMs execute, I sample their execution using VisualVM. I know this is not the most accurate profiler out there, but it's free and easy to use! I use the latest version of Apache hadoop distribution, and my experiments are run on an Intel Atom based system.
When I look at the Self time (CPU) for Hot Spots-Methods in VisualVM, I see java.util.zip.CRC32.update() function taking up nearly 40% of total time. When I look at this function in the call tree, it's invoked by the main() function of the mapper, specifically when the IdentityMapper.map() is reading input files from the HDFS. The function that actually makes the call to CRC32.update() function is org.apache.hadoop.fs.FSInputChecker.readChecksumChunk()
I have a three questions regarding this:
Why is CRC32 checksum being updated for blocks being read from the HDFS? If I understand correctly, once a block is read, a simple comparison of the data read from the disk with the block's CRC should be the only operation, not generating and updating the blocks CRC value.
I looked up the source for the update function, and it's implemented by the java.util.zip.CRC32.java file. The specific function called is the overloaded update() method with three arguments. Since this function is implemented in Java, is it possible that multiple layers of abstraction (Hadoop, JVM, CPU instructions) are reducing the native efficiency of CRC calculation?
Finally, is there something grossly wrong with my VisualVM instrumentation methodology, or interpretation of the sampling results?