Following papers describes how heterogeneous cluster affect the performance of hadoop map-reduce:
In a heterogeneous cluster, the computing capacities of nodes may vary
significantly. A high-speed node can finish processing data stored in a
local disk of the node faster than low-speed counterparts. After a
fast node complete the processing of its local input data, the node
must support load sharing by handling unprocessed data located in one
or more remote slow nodes. When the amount of transferred data due to
load sharing is very large, the overhead of moving unprocessed data
from slow nodes to fast nodes becomes a critical issue affecting
Hadoop’s performance.
Following references has more details:
- http://computerresearch.org/stpr/index.php/gjcst/article/view/749/658
- http://www.usenix.org/event/osdi08/tech/full_papers/zaharia/zaharia.pdf
It also provides ways in which you could improve the performance on heterogeneous cluster or avoid this performance penalty.
It is wisely suggested that you have homogenous machines on your cluster but if these machines do not have wildly different specifications and performance difference, you should carry on with building your cluster.
For production systems, you should suggest for homogenous machines. For development, performance is not critical.
How ever, you should be able to benchmark your Hadoop cluster after you have built it.