Optimal quantum sampling on distributed databases
By: Longyun Chen, Jingcheng Liu, Penghui Yao
Potential Business Impact:
Lets many computers work together to sample data.
Quantum sampling, a fundamental subroutine in numerous quantum algorithms, involves encoding a given probability distribution in the amplitudes of a pure state. Given the hefty cost of large-scale quantum storage, we initiate the study of quantum sampling in a distributed setting. Specifically, we assume that the data is distributed among multiple machines, and each machine solely maintains a basic oracle that counts the multiplicity of individual elements. Given a quantum sampling task, which is to sample from the joint database, a coordinator can make oracle queries to all machines. We focus on the oblivious communication model, where communications between the coordinator and the machines are predetermined. We present both sequential and parallel algorithms: the sequential algorithm queries the machines sequentially, while the parallel algorithm allows the coordinator to query all machines simultaneously. Furthermore, we prove that both algorithms are optimal in their respective settings.
Similar Papers
The power of quantum circuits in sampling
Quantum Physics
Quantum computers solve problems impossible for regular computers.
Optimized Amplitude Amplification for Quantum State Preparation
Quantum Physics
Speeds up quantum computers for big problems.
Distributed Variational Quantum Algorithm with Many-qubit for Optimization Challenges
Quantum Physics
Solves hard problems much faster using quantum computers.