By default, Hadoop splits the files to be processed by a Mapper on the file's block boundaries. That is, that's what the FileInputFormat implementation does for getSplits(). Hadoop then makes sure that the blocks to be processed by a Mapper are replicated on the Datanode the Mapper runs on.
Now I'm wondering, if I need to read outside of this InputSplit (in a RecordReader, but that's irrelevant), what does this cost me as opposed to reading inside the InputSplit - Assuming that the data outside of it is not present on the reading Datanode?
In other words: I am a RecordReader and have been assigned an InputSplit that spans one file block. I have a local copy of this file block (rather, the datanode I'm running on does), but not the rest of the file. Now I do need to read outside of this InputSplit, because I need to read the file header which is at the very beginning. Then I need to skip across records in the file (by reading just the records headers which tells me how long each record is and than skipping that amount of bytes). I need to do this until I encounter the first record that's inside the InputSplit. Then I can start reading the actual records within my InputSplit. That is the only way to make sure that I will start at a valid record boundary.
Question: When I do read outside of the InputSplit, when is the data from the non-local file blocks copied? Is this done one byte at a time (i.e. once per call of InputStream.read()), or is the entire file block (of the current InputStream position) copied to my local datanode once I call InputStream.read() until I encounter the next non-local file block, etc? I need to know this so I can estimate how much overhead will be produced by skipping through the file.