A simple lower bound for the complexity of estimating partition functions on a quantum computer

We study the complexity of estimating the partition function for a Gibbs distribution characterized by the Hamiltonian . We provide a simple and natural lower bound for quantum algorithms that solve this task by relying on reflections through the coherent encoding of Gibbs states. Our primary contribution is a lower bound for the number of reflections needed to estimate the partition function with a quantum algorithm. The proof is based on a reduction from the problem of estimating the Hamming weight of an unknown binary string.
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