between agents. The heuristic algorithms are used
primarily for deciding the most suitable node to
collaborate with, and secondly, for the agent that
receives a request for negotiation to decide whether
or not to choose if it wants/can to collaborate.
Results show that the mechanism has an average
effectiveness of 0,84 and an average efficiency of
0,81. Therefore, this mechanism ensures an
agreement in negotiation in a short period of time.
Although this method has not yet been tested in a
real CDE, it has been designed to be suitable for real
environments. In fact the validation carried out to
presently demonstrate that this method could be
extended to real scenarios in CDE with no problems.
We are currently working on testing this method
in real CDE as well as using this strategy in grid and
cloud computing environments.
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