
We study how to reach a Nash equilibrium in a load balanc- ing scenario where each task is managed by a selfish agent and attempts to migrate to a machine which will minimize its cost. The cost of a machine is a function of the load on it. The load on a machine is the sum of the weights of the jobs running on it. We prove that Nash equilibria can be learned on that games with incomplete information, using some Lyapunov techniques.
[INFO.INFO-GT] Computer Science [cs]/Computer Science and Game Theory [cs.GT]
[INFO.INFO-GT] Computer Science [cs]/Computer Science and Game Theory [cs.GT]
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