MicroCloud Hologram Inc. Announces Breakthrough in Optimizing Digital Simulated Quantum Computing Using the DeepSeek Model

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SHENZHEN, China, Feb. 13, 2025 /PRNewswire/ -- MicroCloud Hologram Inc. (NASDAQ: HOLO), ("HOLO" or the "Company"), a technology service provider, announced that by introducing the DeepSeek model, they have successfully achieved a major breakthrough in the field of digital simulated quantum computing. This breakthrough not only enhances the simulation efficiency of quantum computing but also provides new insights for the design and optimization of future quantum algorithms. Especially in the context where hardware implementation is not yet mature, digital simulated quantum computing has become an important tool for researching and developing quantum algorithms.

Quantum computing utilizes the superposition and entanglement properties of quantum bits (qubits) to achieve exponential speedup in computation for certain specific problems. However, the hardware implementation of quantum computers still faces numerous technical challenges, such as qubit stability and error rate control. As a result, digital simulated quantum computing has become an important tool for researching and developing quantum algorithms.

Digital simulated quantum computing uses classical computers to simulate the behavior of quantum systems, helping researchers understand and design quantum algorithms. However, as the scale of quantum systems increases, the computational resources required for simulation grow exponentially, making it extremely difficult to simulate large-scale quantum systems. HOLO, through the DeepSeek model, focuses on optimizing the simulation and prediction of complex systems. Its powerful computational optimization capabilities and flexible architecture make it an ideal tool for optimizing digital simulated quantum computing.

The state of a quantum system can be described by a wave function, which is a complex vector that exists in Hilbert space. For a system containing n qubits, the size of its wave function is 2^n, which makes directly simulating large-scale quantum systems extremely difficult.

To reduce the computational resources required for simulating quantum systems, the Tensor Network method has been introduced. Tensor networks effectively reduce computational complexity by decomposing high-dimensional tensors into products of lower-dimensional tensors. However, traditional tensor network methods still face challenges when dealing with large-scale quantum systems. HOLO, using the DeepSeek model and deep learning technology, has optimized the construction and updating process of tensor networks. By leveraging neural networks in the DeepSeek model to automatically learn the structure and parameters of the tensor network, it significantly reduces the consumption of computational resources while ensuring simulation accuracy.