QKSA: Quantum Knowledge Seeking Agent -- resource-optimized reinforcement learning using quantum process tomography
Aritra Sarkar, Zaid Al-Ars, Harshitta Gandhi, Koen Bertels

TL;DR
This paper introduces QKSA, a resource-optimized quantum reinforcement learning agent that uses quantum process tomography and evolutionary strategies to model environmental dynamics and accelerate quantum algorithms.
Contribution
It presents the first framework resembling classical URL models for quantum environments, integrating resource-aware quantum process tomography with evolutionary agent design.
Findings
QKSA can accelerate quantum variational algorithms.
It models environmental dynamics using quantum process tomography.
The framework demonstrates resource trade-offs in quantum learning agents.
Abstract
In this research, we extend the universal reinforcement learning (URL) agent models of artificial general intelligence to quantum environments. The utility function of a classical exploratory stochastic Knowledge Seeking Agent, KL-KSA, is generalized to distance measures from quantum information theory on density matrices. Quantum process tomography (QPT) algorithms form the tractable subset of programs for modeling environmental dynamics. The optimal QPT policy is selected based on a mutable cost function based on algorithmic complexity as well as computational resource complexity. Instead of Turing machines, we estimate the cost metrics on a high-level language to allow realistic experimentation. The entire agent design is encapsulated in a self-replicating quine which mutates the cost function based on the predictive value of the optimal policy choosing scheme. Thus, multiple agents…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Advanced Thermodynamics and Statistical Mechanics · Quantum Information and Cryptography
