MicroCloud Hologram Inc. (NASDAQ: HOLO), (“HOLO” or the "Company"),
a technology service provider, announced the development of a
noise-resistant Deep Quantum Neural Network (DQNN) architecture
aimed at achieving universal quantum computing and optimizing the
training efficiency of quantum learning tasks. This innovation is
not merely a quantum simulation of traditional neural networks but
a deep quantum learning framework capable of processing real
quantum data. By reducing quantum resource demands and enhancing
training stability, this architecture lays the foundation for
future Quantum Artificial Intelligence (Quantum AI) applications.
Deep Neural Networks (DNNs) have demonstrated
remarkable capabilities in various fields such as computer vision,
natural language processing, and autonomous driving. However, with
the rapid advancement of quantum computing, the scientific
community is actively exploring how to leverage quantum computing
to enhance the performance of machine learning models. Traditional
quantum neural networks often borrow structures from classical
neural networks and simulate classical weight update mechanisms
using Parameterized Quantum Circuits (PQCs). However, these
approaches are typically constrained by noise effects, and training
complexity increases significantly as network depth grows.
Against this backdrop, HOLO has proposed a Deep
Quantum Neural Network architecture that uses qubits as neurons and
arbitrary unitary operations as perceptrons. This architecture not
only supports efficient hierarchical training but also effectively
reduces quantum errors, enabling robust learning from noisy data.
This innovation overcomes the previous bottleneck of limited depth
scalability in quantum neural networks, opening new opportunities
for quantum artificial intelligence applications.
The core of this architecture lies in the
construction of quantum neurons. Unlike classical neural networks,
which use scalar values to represent neuron activation states, the
neurons in a quantum neural network are represented by quantum
states. These quantum states can store richer information and
enhance computational power through mechanisms such as quantum
superposition and entanglement.
Each neuron updates its state through unitary
operations, analogous to activation functions in classical neural
networks. These unitary operations preserve the normalization
property of quantum states and ensure that information is not lost
during computation. This perceptron design endows the quantum
neural network with powerful expressive capabilities, enabling it
to adapt to complex quantum data patterns while reducing
computational errors.
To enable efficient training of the quantum
neural network, HOLO employs an optimization strategy based on
fidelity. Fidelity is a key metric that measures the similarity
between two quantum states and is widely used in quantum
information processing. During training, the quantum neural network
aims to maximize the fidelity between the current state and the
desired target state, rather than minimizing a loss function as in
classical neural networks. This strategy allows the quantum neural
network to converge to an optimal solution in fewer training steps,
significantly reducing the quantum resources required for
training.
Moreover, this optimization approach exhibits
strong robustness, effectively handling the inherent noise and
errors in quantum systems. In quantum hardware experiments, HOLO
validated the effectiveness of this optimization method and found
that it maintains stable learning performance even in noisy
environments. This characteristic makes the architecture
practically viable on current Noisy Intermediate-Scale Quantum
(NISQ) computers.
While the depth expansion of classical neural
networks typically leads to an exponential increase in parameters,
quantum neural networks face challenges related to the number of
qubits and the complexity of entanglement during expansion. To
address this, the architecture optimizes the quantum state encoding
method, ensuring that the required number of qubits scales only
with the network’s width rather than its depth.
This innovative design implies that even as the
neural network becomes very deep, the required qubit resources
remain within a manageable range, thereby reducing hardware
demands. This feature enables the deep quantum neural network to be
trained on existing quantum processors and provides a feasible path
for the realization of large-scale quantum machine learning models
in the future.
HOLO conducted several benchmark tests. One key
task involved learning unknown quantum operations, where the
quantum neural network was trained to predict how unknown quantum
operations affect different input states. The results demonstrated
that this architecture not only accurately learns target quantum
operations but also exhibits excellent generalization capabilities.
This means that even with limited training data, the quantum neural
network can still infer reasonable quantum mapping relationships.
Furthermore, even when the training data contains some noise, the
network maintains stable learning performance, further proving its
robustness in noisy environments.
As quantum computing technology continues to
advance, the practical application prospects of deep quantum neural
networks are becoming increasingly broad. The development of HOLO’s
architecture not only advances the field of quantum machine
learning but also opens new possibilities for various industries.
HOLO plans to further optimize this architecture and explore its
potential applications on larger-scale quantum computers. In the
future, with the development of quantum hardware, deep quantum
neural networks are expected to play a critical role in more
real-world scenarios, paving new paths for the integration of
artificial intelligence and quantum computing.
HOLO has successfully developed a
noise-resistant deep quantum neural network architecture that
overcomes the limitations of traditional quantum neural networks,
achieving efficient hierarchical training and quantum computing
optimization. By using fidelity as the optimization target, this
network reduces the demand for computational resources while
maintaining robustness against noisy data. Experimental results
have demonstrated its excellent generalization capabilities and
practical feasibility, laying the foundation for the future
development of quantum artificial intelligence. As quantum
computing technology continues to mature, this innovative
architecture is poised to play a significant role in multiple
industries, ushering artificial intelligence into a new era of
quantum computing.
About MicroCloud Hologram Inc.
MicroCloud is committed to providing leading
holographic technology services to its customers worldwide.
MicroCloud’s holographic technology services include high-precision
holographic light detection and ranging (“LiDAR”) solutions, based
on holographic technology, exclusive holographic LiDAR point cloud
algorithms architecture design, breakthrough technical holographic
imaging solutions, holographic LiDAR sensor chip design and
holographic vehicle intelligent vision technology to service
customers that provide reliable holographic advanced driver
assistance systems (“ADAS”). MicroCloud also provides holographic
digital twin technology services for customers and has built a
proprietary holographic digital twin technology resource library.
MicroCloud’s holographic digital twin technology resource library
captures shapes and objects in 3D holographic form by utilizing a
combination of MicroCloud’s holographic digital twin software,
digital content, spatial data-driven data science, holographic
digital cloud algorithm, and holographic 3D capture technology. For
more information, please visit http://ir.mcholo.com/
Safe Harbor Statement
This press release contains forward-looking
statements as defined by the Private Securities Litigation Reform
Act of 1995. Forward-looking statements include statements
concerning plans, objectives, goals, strategies, future events or
performance, and underlying assumptions and other statements that
are other than statements of historical facts. When the Company
uses words such as “may,” “will,” “intend,” “should,” “believe,”
“expect,” “anticipate,” “project,” “estimate,” or similar
expressions that do not relate solely to historical matters, it is
making forward-looking statements. Forward-looking statements are
not guarantees of future performance and involve risks and
uncertainties that may cause the actual results to differ
materially from the Company’s expectations discussed in the
forward-looking statements. These statements are subject to
uncertainties and risks including, but not limited to, the
following: the Company’s goals and strategies; the Company’s future
business development; product and service demand and acceptance;
changes in technology; economic conditions; reputation and brand;
the impact of competition and pricing; government regulations;
fluctuations in general economic; financial condition and results
of operations; the expected growth of the holographic industry and
business conditions in China and the international markets the
Company plans to serve and assumptions underlying or related to any
of the foregoing and other risks contained in reports filed by the
Company with the Securities and Exchange Commission (“SEC”),
including the Company’s most recently filed Annual Report on Form
10-K and current report on Form 6-K and its subsequent filings. For
these reasons, among others, investors are cautioned not to place
undue reliance upon any forward-looking statements in this press
release. Additional factors are discussed in the Company’s filings
with the SEC, which are available for review at www.sec.gov. The
Company undertakes no obligation to publicly revise these
forward-looking statements to reflect events or circumstances that
arise after the date hereof.
ContactsMicroCloud Hologram Inc.Email:
IR@mcvrar.com
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