Derivative Pricing using Quantum Signal Processing

Abstract

Pricing financial derivatives on quantum computers typically includes quantum arithmetic components which contribute heavily to the quantum resources required by the corresponding circuits. In this manuscript, we introduce a method based on Quantum Signal Processing (QSP) to encode financial derivative payoffs directly into quantum amplitudes, alleviating the quantum circuits from the burden of costly quantum arithmetic. Compared to current state-of-the-art approaches in the literature, we find that for derivative contracts of practical interest, the application of QSP significantly reduces the required resources across all metrics considered, most notably the total number of T-gates by 16x and the number of logical qubits by 4x. Additionally, we estimate that the logical clock rate needed for quantum advantage is also reduced by a factor of 5x. Overall, we find that quantum advantage will require 4.7k logical qubits, and quantum devices that can execute 109 T-gates at a rate of 45MHz. While in this work we focus specifically on the payoff component of the derivative pricing process where the method we present is most readily applicable, similar techniques can be employed to further reduce the resources in other applications, such as state preparation.

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