Turnitin
降AI改写
早检测系统
早降重系统
Turnitin-UK版
万方检测-期刊版
维普编辑部版
Grammarly检测
Paperpass检测
checkpass检测
PaperYY检测
Quantumnas: Noise-adaptive search for robust quantum circuits
Quantum noise is the key challenge in Noisy Intermediate-Scale Quantum (NISQ)
computers. Previous work for mitigating noise has primarily focused on gate-level or pulse …
computers. Previous work for mitigating noise has primarily focused on gate-level or pulse …
Quantumnat: quantum noise-aware training with noise injection, quantization and normalization
Parameterized Quantum Circuits (PQC) are promising towards quantum advantage on near-
term quantum hardware. However, due to the large quantum noises (errors), the …
term quantum hardware. However, due to the large quantum noises (errors), the …
Variational quantum pulse learning
Quantum computing is among the most promising emerging techniques to solve problems
that are computationally intractable on classical hardware. A large body of existing works …
that are computationally intractable on classical hardware. A large body of existing works …
Qoc: quantum on-chip training with parameter shift and gradient pruning
Parameterized Quantum Circuits (PQC) are drawing increasing research interest thanks to
its potential to achieve quantum advantages on near-term Noisy Intermediate Scale …
its potential to achieve quantum advantages on near-term Noisy Intermediate Scale …
Quest: Graph transformer for quantum circuit reliability estimation
Among different quantum algorithms, PQC for QML show promises on near-term devices. To
facilitate the QML and PQC research, a recent python library called TorchQuantum has been …
facilitate the QML and PQC research, a recent python library called TorchQuantum has been …
Hybrid gate-pulse model for variational quantum algorithms
Current quantum programs are mostly synthesized and compiled on the gate-level, where
quantum circuits are composed of quantum gates. The gate-level workflow, however …
quantum circuits are composed of quantum gates. The gate-level workflow, however …
Quantum neural network compression
Model compression, such as pruning and quantization, has been widely applied to optimize
neural networks on resource-limited classical devices. Recently, there are growing interest …
neural networks on resource-limited classical devices. Recently, there are growing interest …
Dgr: Tackling drifted and correlated noise in quantum error correction via decoding graph re-weighting
Quantum hardware suffers from high error rates and noise, which makes directly running
applications on them ineffective. Quantum Error Correction (QEC) is a critical technique …
applications on them ineffective. Quantum Error Correction (QEC) is a critical technique …
Generalization error bound for quantum machine learning in NISQ era—a survey
Despite the mounting anticipation for the quantum revolution, the success of quantum
machine learning (QML) in the noisy intermediate-scale quantum (NISQ) era hinges on a …
machine learning (QML) in the noisy intermediate-scale quantum (NISQ) era hinges on a …
Topgen: Topology-aware bottom-up generator for variational quantum circuits
Variational Quantum Algorithms (VQA) are promising to demonstrate quantum advantages
on near-term devices. Designing ansatz, a variational circuit with parameterized gates, is of …
on near-term devices. Designing ansatz, a variational circuit with parameterized gates, is of …