Here are several things to consider:
*Too small files are not recommended - filesystem metadata kept in namenode memory - hardware limits to number of files.
*Default block size on HDFS is 64MB, but 128MB is most common case in production servers.
*HDFS blocks are large by default to have larger transfer times of block when compared to seek times - therefore time to transfer
large files consisting of many blocks operates at disk transfer time.
*MapReduce tasks operate on one block at a time, so if having too few tasks (less then nodes in cluster), your jobs might be slow.
*Putting block size to be near approximate size of your files on HDFS is not good idea, because it increases probability of faulty data. Assume you have 1 file of 1GB and your block size is also 1 GB. Assume also that replication factor is 3 on your cloud(default or most common at least). This means that you would have your entire file as one block on 3 machines. This is different compared to having only some blocks of file replicated on 3 machines.
*If the number of blocks (of input processing files) is fewer than number of tasks you can run concurrently on your environment - this is GOOD - it means you are processing all input data with maximum parallelism, and still have free resources.