STOCK TITAN

WiMi Researches Quantum Linear Solvers, A Resource-Efficient Quantum Algorithm for Linear Systems of Equations

Rhea-AI Impact
(Low)
Rhea-AI Sentiment
(Neutral)
Tags

WiMi Hologram Cloud (NASDAQ: WIMI) announced the development of the Holographic Quantum Linear Solver (HQLS), a new quantum algorithm for solving linear systems of equations. The HQLS combines Variational Quantum Algorithms (VQA) with the classical shadow framework to overcome hardware resource limitations of traditional quantum solvers.

The algorithm reduces quantum bit requirements and gate complexity compared to traditional methods like the HHL algorithm, making it more suitable for current noisy intermediate-scale quantum (NISQ) computers. HQLS operates through a process of initialization, parameterized quantum circuit design, iterative optimization, shadow framework approximation, and convergence checking.

The technology shows promise for applications in climate modeling, quantum chemistry, machine learning, and financial modeling, with potential for integration with other quantum algorithms for complex problem-solving.

WiMi Hologram Cloud (NASDAQ: WIMI) ha annunciato lo sviluppo del Holographic Quantum Linear Solver (HQLS), un nuovo algoritmo quantistico per risolvere sistemi lineari di equazioni. L'HQLS combina Algoritmi Quantistici Variazionali (VQA) con il framework classico dello shadow per superare le limitazioni delle risorse hardware dei risolutori quantistici tradizionali.

L'algoritmo riduce i requisiti di qubit quantistici e la complessità dei gate rispetto ai metodi tradizionali come l'algoritmo HHL, rendendolo più adatto per i computer quantistici attuali a scala intermedia rumorosa (NISQ). L'HQLS funziona attraverso un processo di inizializzazione, progettazione di circuiti quantistici parametrizzati, ottimizzazione iterativa, approssimazione del framework shadow e verifica della convergenza.

La tecnologia mostra promettenti applicazioni nella modellizzazione climatica, chimica quantistica, apprendimento automatico e modellizzazione finanziaria, con potenziale integrazione con altri algoritmi quantistici per la risoluzione di problemi complessi.

WiMi Hologram Cloud (NASDAQ: WIMI) anunció el desarrollo del Holographic Quantum Linear Solver (HQLS), un nuevo algoritmo cuántico para resolver sistemas lineales de ecuaciones. El HQLS combina Algoritmos Cuánticos Variacionales (VQA) con el marco clásico de shadow para superar las limitaciones de recursos de hardware de los solucionadores cuánticos tradicionales.

El algoritmo reduce los requisitos de qubits cuánticos y la complejidad de puertas en comparación con métodos tradicionales como el algoritmo HHL, haciéndolo más adecuado para las computadoras cuánticas intermedias ruidosas actuales (NISQ). El HQLS opera a través de un proceso de inicialización, diseño de circuitos cuánticos parametrizados, optimización iterativa, aproximación del marco shadow y verificación de convergencia.

La tecnología muestra promesas para aplicaciones en modelado climático, química cuántica, aprendizaje automático y modelado financiero, con potencial para integrarse con otros algoritmos cuánticos para la resolución de problemas complejos.

WiMi 홀로그램 클라우드 (NASDAQ: WIMI)는 선형 방정식 시스템을 해결하기 위한 새로운 양자 알고리즘인 홀로그램 양자 선형 해결기 (HQLS)의 개발을 발표했습니다. HQLS는 변분 양자 알고리즘 (VQA)와 전통적인 양자 해결기의 하드웨어 자원 제한을 극복하기 위해 고전적인 그림자 프레임워크와 결합됩니다.

이 알고리즘은 전통적인 방법인 HHL 알고리즘에 비해 양자 비트 요구 사항과 게이트 복잡성을 줄여, 현재의 소음 중간 규모 양자(NISQ) 컴퓨터에 더 적합합니다. HQLS는 초기화, 매개변수화된 양자 회로 설계, 반복 최적화, 그림자 프레임워크 근사 및 수렴 검사 과정을 통해 작동합니다.

이 기술은 기후 모델링, 양자 화학, 기계 학습 및 금융 모델링에서의 응용 가능성을 보여주며, 복잡한 문제 해결을 위한 다른 양자 알고리즘과의 통합 가능성도 내포하고 있습니다.

WiMi Hologram Cloud (NASDAQ: WIMI) a annoncé le développement du Holographic Quantum Linear Solver (HQLS), un nouvel algorithme quantique pour résoudre des systèmes d'équations linéaires. Le HQLS combine Algorithmes Quantiques Variationnels (VQA) avec le cadre classique de l'ombre pour surmonter les limitations des ressources matérielles des solveurs quantiques traditionnels.

L'algorithme réduit les exigences en bits quantiques et la complexité des portes par rapport aux méthodes traditionnelles comme l'algorithme HHL, le rendant plus adapté aux ordinateurs quantiques actuels à échelle intermédiaire et bruitée (NISQ). HQLS fonctionne à travers un processus d'initialisation, de conception de circuits quantiques paramétrés, d'optimisation itérative, d'approximation du cadre d'ombre et de vérification de la convergence.

La technologie montre un potentiel prometteur pour des applications dans la modélisation climatique, la chimie quantique, l'apprentissage automatique et la modélisation financière, avec un potentiel d'intégration avec d'autres algorithmes quantiques pour la résolution de problèmes complexes.

WiMi Hologram Cloud (NASDAQ: WIMI) hat die Entwicklung des Holographic Quantum Linear Solver (HQLS) angekündigt, eines neuen quantenmechanischen Algorithmus zur Lösung linearer Gleichungssysteme. Der HQLS kombiniert Variational Quantum Algorithms (VQA) mit dem klassischen Schatten-Framework, um die Hardware-Ressourcenschwächen herkömmlicher quantenmechanischer Lösungsverfahren zu überwinden.

Der Algorithmus reduziert die Anforderungen an Quantenbits und die Komplexität der Tore im Vergleich zu traditionellen Methoden wie dem HHL-Algorithmus, was ihn geeigneter für aktuelle, rauschende Quantencomputer im mittleren Maßstab (NISQ) macht. HQLS funktioniert durch einen Prozess der Initialisierung, des Designs parametrisierter quantenmechanischer Schaltkreise, iterativer Optimierung, der Schattensynthese und der Konvergenzprüfung.

Die Technologie zeigt vielversprechende Anwendungen in der Klimamodellierung, Quantenchemie, Maschinenlernen und Finanzmodellierung und hat Potenzial zur Integration mit anderen quantenmechanischen Algorithmen zur Lösung komplexer Probleme.

Positive
  • Development of resource-efficient quantum algorithm (HQLS) that reduces computational complexity
  • Successfully demonstrated lower quantum resource consumption and faster convergence in experiments
  • Potential applications in multiple high-value sectors including quantum chemistry and financial modeling
Negative
  • Current experiments still face challenges of quantum noise and errors
  • Technology requires further validation on larger-scale quantum computers
  • Dependent on future advancements in quantum error correction techniques

Insights

The research into quantum linear solvers represents an incremental technical advancement but lacks immediate commercial viability or revenue potential. While the HQLS algorithm shows theoretical improvements in quantum computing efficiency, several critical limitations exist: 1) The technology remains experimental and requires significant development before practical implementation, 2) The current quantum computing hardware infrastructure is insufficient for meaningful real-world applications and 3) No clear monetization strategy or customer demand is presented. The research, while academically interesting, appears to be primarily a PR effort to demonstrate R&D capabilities rather than a meaningful business development. The company's market cap of <money>105M</money> and focus on early-stage quantum computing research suggests this announcement will have minimal impact on near-term financial performance or stock value.

BEIJING, Dec. 19, 2024 /PRNewswire/ -- WiMi Hologram Cloud Inc. (NASDAQ: WiMi) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, today announced the research of a new quantum algorithm—the Holographic Quantum Linear Solver (HQLS), which aims to provide a more efficient and resource-efficient quantum algorithm for solving the Quantum Linear System Problem (QLSP). This algorithm is based on a combination of Variational Quantum Algorithms (VQA) and the classical shadow framework, overcoming the hardware resource bottlenecks of traditional quantum linear solver algorithms.

QLSP refers to the problem of solving linear systems of equations using quantum computing. Solutions to the QLSP often rely on the quantumization of classical linear algebra algorithms used in quantum computing. The most famous quantum linear system solving algorithm is the Harrow-Hassidim-Lloyd (HHL) algorithm, which accelerates the solution of linear systems through quantum superposition and interference. In theory, it can reduce the time complexity from the classical polynomial level to the logarithmic level of quantum computing. However, the HHL algorithm requires the use of large-scale controlled gate operations on quantum hardware, making it difficult to implement on existing quantum computers.

VQAs are a class of algorithms that combine quantum computing with classical optimization methods. VQAs solve problems by implementing parameterized quantum circuits in quantum computing and optimizing the parameters of the quantum circuit using classical optimizers. VQAs are widely applied in fields such as quantum machine learning, quantum chemistry, and quantum linear equation solving.

The core advantage of VQAs lies in their relatively low resource requirements. By using the variational method, VQAs avoid the need to perform complex global operations in quantum circuits, instead optimizing circuit parameters within local spaces. This reduces the number of qubits and quantum gates required.

The classical shadow framework is a strategy used for approximate computations, typically playing a role in scenarios that combine quantum and classical computing. The shadow method obtains approximations by simulating certain computational processes and is widely used in model training in machine learning and algorithm design in quantum computing.

The advantage of the shadow framework is its ability to make efficient estimates with a small number of samples, significantly reducing the need for computational resources. Therefore, combining the shadow framework with quantum computing holds the potential to create more efficient quantum algorithms.

WiMi's HQLS combines the ideas of VQAs and the classical shadow framework. It aims to solve linear systems by optimizing the parameters of the quantum circuit, while avoiding the need for large controlled units. The core idea of the algorithm is to optimize the parameters of the quantum circuit using VQA, and to approximate the computation results at each iteration by combining the classical shadow framework, thus effectively reducing the computational complexity of the algorithm.

The basic process of WiMi's HQLS can be divided into the following steps:

Initialization: Initialize the quantum system and preprocess the linear system using classical algorithms to generate the parameterized quantum circuit.

Parameterized Quantum Circuit: Design the quantum circuit using VQA and initialize the parameters of the circuit.

Iterative Optimization: Optimize the parameters of the quantum circuit using a classical optimizer, and after each optimization, obtain an approximate solution through quantum computation.

Shadow Framework Approximate Calculation: At each parameter update, use the classical shadow framework to approximate the output of the quantum circuit, thereby avoiding high quantum resource consumption.

Convergence Check: Calculate the error between the current solution and the true solution to determine whether the algorithm has converged.

Result Output: Output the solution vector X of the solved system of linear equations.

WiMi's HQLS resource optimization mainly focuses on two aspects:

Quantum Bit Count: Traditional quantum linear system solving algorithms require a large number of quantum bits to represent the different dimensions of the problem. With the introduction of VQAs, HQLS only requires quantum bits that scale logarithmically with the size of the problem, significantly reducing the number of quantum bits needed.

Quantum Gate Complexity: The optimization of the quantum circuit can significantly reduce the number of quantum gates, thereby lowering the complexity of quantum circuit execution. By combining with the classical shadow framework, HQLS avoids the need to perform large-scale controlled operations, making the quantum circuit more compact and efficient.

As a resource-efficient quantum algorithm, WiMi's HQLS successfully overcomes the challenges of solving linear systems under the current limitations of quantum hardware. By combining VQAs and the classical shadow framework, HQLS not only operates efficiently with fewer quantum bits and quantum gates, but also demonstrates significant advantages in experiments involving the solution of multiple linear systems.

In traditional quantum linear solving algorithms (such as the HHL algorithm), the resource requirements are often quite high, particularly in terms of the number of quantum bits and the complexity of quantum gates, making it difficult to implement them on current noisy intermediate-scale quantum (NISQ) computers. However, HQLS significantly reduces the resource requirements for quantum hardware by innovatively introducing the framework of Variational Quantum Algorithms (VQA). Additionally, with the assistance of the classical shadow framework, the computational complexity is further reduced, enabling efficient solutions on practical quantum hardware.

We have verified the effectiveness of WiMi's HQLS through experiments on multiple linear systems (such as solving high-dimensional matrices and discretized Laplace equation problems). The experimental results demonstrate that HQLS excels in both solution accuracy and computational efficiency. In particular, when compared to other quantum linear system solving methods, it shows lower quantum resource consumption and faster convergence.

Currently, the experiments of HQLS still rely on noisy intermediate-scale quantum computers for validation, and thus face the challenges of quantum noise and errors. In the future, the combination of quantum error correction (QEC) techniques and noise suppression algorithms will improve the stability and robustness of HQLS on practical quantum hardware. By introducing quantum fault-tolerant technologies, HQLS will be able to scale to larger quantum computers and operate stably in high-noise environments.

In the future, with the continuous optimization of quantum computing hardware and the increase in the number of quantum bits, HQLS can undergo larger-scale validation on practical quantum computers. Particularly with advancements in error correction techniques and improvements in quantum bit quality, it is expected that the efficiency and accuracy of HQLS will be further enhanced.

In various application scenarios of quantum computing, HQLS can not only be applied independently but also combined with other quantum algorithms to form more complex hybrid quantum algorithms. For example, HQLS can be combined with quantum optimization algorithms, such as the Quantum Approximate Optimization Algorithm (QAOA), to tackle more complex optimization problems. Furthermore, HQLS can be integrated with quantum simulation algorithms to solve large-scale linear systems involved in modeling physical processes.

HQLS has significant application potential, especially in areas like large-scale data processing, physical simulations, and optimization problems. As quantum computing capabilities improve, HQLS could be used to solve more complex linear system problems in fields such as climate modeling, quantum chemistry, machine learning, and financial modeling. For instance, in quantum chemistry, HQLS could be used to solve the electronic structure of molecular orbitals, providing more efficient simulation results; in machine learning, it can accelerate the solution of linear regression and least-squares problems.

WiMi's HQLS, as an interdisciplinary quantum algorithm, is expected to integrate more deeply with other fields (such as quantum information, quantum machine learning, quantum chemistry, etc.) in the future. In particular, in the application of quantum machine learning, HQLS could provide a more efficient computational tool for training large-scale machine learning models. Moreover, with the exploration of emerging fields like quantum consciousness research and quantum neural networks, HQLS may also become a foundational tool for solving complex problems in these areas.

The introduction of WiMi's Holographic Quantum Linear Solver (HQLS) opens up new avenues for the application of quantum computing in solving linear system problems. By combining Variational Quantum Algorithms (VQA) with the classical shadow framework, HQLS effectively reduces the resource requirements for quantum hardware, enabling efficient solutions on current quantum computers. Looking ahead, with continuous advancements in quantum hardware and further optimization of algorithms, HQLS is expected to see widespread application in multiple fields, driving the maturation of quantum computing technology and offering new solutions for solving complex problems in modern science and engineering.

About WiMi Hologram Cloud

WiMi Hologram Cloud, Inc. (NASDAQ:WiMi) is a holographic cloud comprehensive technical solution provider that focuses on professional areas including holographic AR automotive HUD software, 3D holographic pulse LiDAR, head-mounted light field holographic equipment, holographic semiconductor, holographic cloud software, holographic car navigation and others. Its services and holographic AR technologies include holographic AR automotive application, 3D holographic pulse LiDAR technology, holographic vision semiconductor technology, holographic software development, holographic AR advertising technology, holographic AR entertainment technology, holographic ARSDK payment, interactive holographic communication and other holographic AR technologies.

Safe Harbor Statements

This press release contains "forward-looking statements" within the Private Securities Litigation Reform Act of 1995. These forward-looking statements can be identified by terminology such as "will," "expects," "anticipates," "future," "intends," "plans," "believes," "estimates," and similar statements. Statements that are not historical facts, including statements about the Company's beliefs and expectations, are forward-looking statements. Among other things, the business outlook and quotations from management in this press release and the Company's strategic and operational plans contain forward−looking statements. The Company may also make written or oral forward−looking statements in its periodic reports to the US Securities and Exchange Commission ("SEC") on Forms 20−F and 6−K, in its annual report to shareholders, in press releases, and other written materials, and in oral statements made by its officers, directors or employees to third parties. Forward-looking statements involve inherent risks and uncertainties. Several factors could cause actual results to differ materially from those contained in any forward−looking statement, including but not limited to the following: the Company's goals and strategies; the Company's future business development, financial condition, and results of operations; the expected growth of the AR holographic industry; and the Company's expectations regarding demand for and market acceptance of its products and services.

Further information regarding these and other risks is included in the Company's annual report on Form 20-F and the current report on Form 6-K and other documents filed with the SEC. All information provided in this press release is as of the date of this press release. The Company does not undertake any obligation to update any forward-looking statement except as required under applicable laws.

 

Cision View original content:https://www.prnewswire.com/news-releases/wimi-researches-quantum-linear-solvers-a-resource-efficient-quantum-algorithm-for-linear-systems-of-equations-302336179.html

SOURCE WiMi Hologram Cloud Inc.

FAQ

What is WiMi's HQLS technology and how does it improve quantum computing?

HQLS (Holographic Quantum Linear Solver) is a quantum algorithm that combines VQA and classical shadow framework to solve linear systems more efficiently. It reduces quantum bit requirements and gate complexity compared to traditional methods, making it more practical for current quantum computers.

What are the main advantages of WIMI's HQLS over traditional quantum algorithms?

HQLS offers lower resource requirements, fewer quantum bits, reduced gate complexity, and faster convergence compared to traditional algorithms like HHL. It's specifically designed to work with current NISQ computers.

What are the current limitations of WIMI's HQLS technology?

The technology faces challenges with quantum noise and errors in current NISQ computers, requires further validation on larger quantum computers, and needs advancement in quantum error correction techniques for optimal performance.

What industries could benefit from WIMI's HQLS technology?

HQLS has potential applications in climate modeling, quantum chemistry, machine learning, financial modeling, and can be integrated with other quantum algorithms for complex problem-solving in various scientific and engineering fields.

WiMi Hologram Cloud Inc. American Depositary Share

NASDAQ:WIMI

WIMI Rankings

WIMI Latest News

WIMI Stock Data

106.06M
88.15M
1.11%
0.79%
Advertising Agencies
Communication Services
Link
United States of America
Beijing