QAOA in Quantum Datacenters: Parallelization, Simulation, and Orchestration
- URL: http://arxiv.org/abs/2503.06233v1
- Date: Sat, 08 Mar 2025 14:30:00 GMT
- Title: QAOA in Quantum Datacenters: Parallelization, Simulation, and Orchestration
- Authors: Amana Liaqat, Ahmed Darwish, Adrian Roman, Stephen DiAdamo,
- Abstract summary: We present a massively parallelized, automated QAOA workflow that automates problem decomposition, job generation, and high-performance simulation.<n>Our framework simulator selection, optimize execution across distributed, heterogeneous resources, and provides a cloud-based infrastructure.<n>We find that QAOA does not significantly degrade optimization performance and often outperforms classical solvers.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Scaling quantum computing requires networked systems, leveraging HPC for distributed simulation now and quantum networks in the future. Quantum datacenters will be the primary access point for users, but current approaches demand extensive manual decisions and hardware expertise. Tasks like algorithm partitioning, job batching, and resource allocation divert focus from quantum program development. We present a massively parallelized, automated QAOA workflow that integrates problem decomposition, batch job generation, and high-performance simulation. Our framework automates simulator selection, optimizes execution across distributed, heterogeneous resources, and provides a cloud-based infrastructure, enhancing usability and accelerating quantum program development. We find that QAOA partitioning does not significantly degrade optimization performance and often outperforms classical solvers. We introduce our software components -- Divi, Maestro, and our cloud platform -- demonstrating ease of use and superior performance over existing methods.
Related papers
- Building a Software Stack for Quantum-HPC Integration [0.9360388224886863]
We propose a hardware-agnostic software framework that supports both current intermediate-scale quantum devices and future fault-tolerant quantum computers.<n>The architecture includes a quantum gateway interface, standardized APIs for resource management, and robust scheduling mechanisms.<n>Key innovations include: (1) a unified resource management system that efficiently coordinates quantum and classical resources, (2) a flexible quantum programming interface that abstracts hardware-specific details, and (4) a comprehensive tool chain for quantum circuit optimization and execution.
arXiv Detail & Related papers (2025-03-03T18:18:45Z) - QuSplit: Achieving Both High Fidelity and Throughput via Job Splitting on Noisy Quantum Computers [6.46676684248918]
We develop a Genetic Algorithm-based scheduling framework that incorporates job splitting to optimize fidelity and throughput.
Experimental results demonstrate that our approach consistently maintains high fidelity across all jobs while significantly enhancing system throughput.
arXiv Detail & Related papers (2025-01-21T20:43:32Z) - Pilot-Quantum: A Quantum-HPC Middleware for Resource, Workload and Task Management [1.381966718755792]
Pilot-Quantum is designed to provide unified application-level management of resources and workloads across hybrid quantum-classical environments.<n>It implements the Pilot Abstraction conceptual model, originally developed for HPC, to manage resources, workloads, and tasks.
arXiv Detail & Related papers (2024-12-24T15:55:46Z) - Ecosystem-Agnostic Standardization of Quantum Runtime Architecture: Accelerating Utility in Quantum Computing [0.0]
This research covers all layers of Quantum Computing Optimization Middleware (QCOM)
It requires execution on real quantum hardware (QH)
There is a need for a widely adopted runtime platform (RP) driven by the open-source community.
arXiv Detail & Related papers (2024-09-26T16:43:07Z) - Quantum Computing Enhanced Service Ecosystem for Simulation in Manufacturing [56.61654656648898]
We propose a framework for a quantum computing-enhanced service ecosystem for simulation in manufacturing.
We analyse two high-value use cases with the aim of a quantitative evaluation of these new computing paradigms for industrially-relevant settings.
arXiv Detail & Related papers (2024-01-19T11:04:14Z) - Generative AI-enabled Quantum Computing Networks and Intelligent
Resource Allocation [80.78352800340032]
Quantum computing networks execute large-scale generative AI computation tasks and advanced quantum algorithms.
efficient resource allocation in quantum computing networks is a critical challenge due to qubit variability and network complexity.
We introduce state-of-the-art reinforcement learning (RL) algorithms, from generative learning to quantum machine learning for optimal quantum resource allocation.
arXiv Detail & Related papers (2024-01-13T17:16:38Z) - Elastic Entangled Pair and Qubit Resource Management in Quantum Cloud
Computing [73.7522199491117]
Quantum cloud computing (QCC) offers a promising approach to efficiently provide quantum computing resources.
The fluctuations in user demand and quantum circuit requirements are challenging for efficient resource provisioning.
We propose a resource allocation model to provision quantum computing and networking resources.
arXiv Detail & Related papers (2023-07-25T00:38:46Z) - DQC$^2$O: Distributed Quantum Computing for Collaborative Optimization
in Future Networks [54.03701670739067]
We propose an adaptive distributed quantum computing approach to manage quantum computers and quantum channels for solving optimization tasks in future networks.
Based on the proposed approach, we discuss the potential applications for collaborative optimization in future networks, such as smart grid management, IoT cooperation, and UAV trajectory planning.
arXiv Detail & Related papers (2022-09-16T02:44:52Z) - Accelerating variational quantum algorithms with multiple quantum
processors [78.36566711543476]
Variational quantum algorithms (VQAs) have the potential of utilizing near-term quantum machines to gain certain computational advantages.
Modern VQAs suffer from cumbersome computational overhead, hampered by the tradition of employing a solitary quantum processor to handle large data.
Here we devise an efficient distributed optimization scheme, called QUDIO, to address this issue.
arXiv Detail & Related papers (2021-06-24T08:18:42Z) - Quantum circuit architecture search for variational quantum algorithms [88.71725630554758]
We propose a resource and runtime efficient scheme termed quantum architecture search (QAS)
QAS automatically seeks a near-optimal ansatz to balance benefits and side-effects brought by adding more noisy quantum gates.
We implement QAS on both the numerical simulator and real quantum hardware, via the IBM cloud, to accomplish data classification and quantum chemistry tasks.
arXiv Detail & Related papers (2020-10-20T12:06:27Z) - Intel Quantum Simulator: A cloud-ready high-performance simulator of
quantum circuits [0.0]
We introduce the latest release of Intel Quantum Simulator (IQS), formerly known as qHiPSTER.
The high-performance computing capability of the software allows users to leverage the available hardware resources.
IQS allows to subdivide the computational resources to simulate a pool of related circuits in parallel.
arXiv Detail & Related papers (2020-01-28T19:00:25Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.