AI 용어집
인공지능 완전 사전
Transversality Barrier
Theoretical principle limiting the ability of quantum codes to universally implement non-Clifford logical gates, impacting the design of quantum algorithms for AI.
Quantum Simulation of Molecular Dynamics
Application of quantum computers to model electronic interactions in molecules with exponentially improved precision, crucial for AI-assisted drug discovery.
Quantum Entanglement for Feature Mapping
Use of entangled states between qubits to create highly non-linear feature representations, inaccessible to classical kernel trick methods.
Quantum Amplitude Amplification for Learning (QAML)
Application of the amplitude amplification algorithm to accelerate the evaluation of decision functions in supervised classification models.
Quantum Observable Measurement
Final process of a quantum circuit where measurement of a Hermitian operator (observable) produces a classical value serving as output or prediction in a quantum AI model.
Quantum Gibbs State
Quantum state describing a system in thermodynamic equilibrium, whose efficient preparation is essential for quantum learning algorithms of the Boltzmann Machine type.
NISQ-aware Optimization
Training strategies for quantum AI models specifically designed to operate on noisy intermediate-scale quantum (NISQ) processors, including error mitigation.
Quantum Simulation of Stochastic Processes
Use of quantum circuits to model the evolution of probabilistic systems, enabling acceleration for training AI models on temporal data.
Topological Quantum Code for AI
Application of topological error-correcting codes (e.g., surface code) to protect quantum AI computations against decoherence, essential for deep models.
Asynchronous Hybrid Quantum-Classical
Architecture paradigm where quantum and classical processors operate in a decoupled manner, optimizing workflow for large-scale simulation and training tasks.