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Quantum annealing
Simulating Quantum Field Theory with a Quantum Computer
Quantum Machine Learning: Benefits and Practical Examples
Clustering by Quantum Annealing on the Three–Level Quantum El- Ements Qutrits V
An Introduction to Quantum Computing
Using Machine Learning for Quantum Annealing Accuracy Prediction
Thermally Assisted Quantum Annealing of a 16-Qubit Problem
An Introduction to Quantum Annealing
Benchmarking Adiabatic Quantum Optimization for Complex Network Analysis
Quantum Annealing: the Fastest Route to Quantum Computation?
Complex Networks from Classical to Quantum
High Energy Physics Quantum Information Science Awards Abstracts
Realisation of Qudits in Coupled Potential Wells Ariel Landau Tel Aviv University
Machine Learning of a Higgs Decay Classifier Via Quantum Annealing
Applications of Quantum Annealing in Statistics Arxiv:1904.06819V2 [Stat
Snell Tomography for Net-To-Gross Estimation Using Quantum Annealing
High Coherence Quantum Annealing and Fast, High- Fidelity Flux Qubit Readout
Supercomputer Simulations of Transmon Quantum Computers Quantum Simulations of Transmon Supercomputer
Adiabatic Algorithm
Top View
Notes on Adiabatic Quantum Computers
Superconducting Qubits: Current State of Play Arxiv:1905.13641V3
Sequences of Selective Rotation Operators to Engineer Interactions for Quantum Annealing on Three Qutrits V.E
D-Wave Quantum Annealer
Quantum Cryptography: a Comprehensive Survey
Trusted, Third-Party Authenticated, Quantum Key Distribution By
Graph Partitioning Using Quantum Annealing on the D-Wave System
An Overview of Approaches to Modernize Quantum Annealing Using Local Searches
Simulation of Electronic Structure Hamiltonians Using Quantum Computers
Quantum Annealing and D-Wave
Classification with Quantum Machine Learning: a Survey
Finding Hadamard Matrices by a Quantum Annealing Machine Andriyan Bayu Suksmono1 & Yuichiro Minato2
Adiabatic Quantum Computation Applied to Deep Learning Networks
Qudits and High-Dimensional Quantum Computing
Quantum Annealing for Clustering
A Cross-Disciplinary Introduction to Quantum Annealing-Based Algorithms
Quantum Annealing
QUANTUM COMPUTATION for ELECTRONIC STRUCTURE CALCULATIONS by Rongxin Xia
Quantum Annealing Assisted Deep Learning for Lung Cancer Detection
Leveraging Quantum Annealing for Large MIMO Processing in Centralized Radio Access Networks
Quantum Cryptography: Quantum Mechanics As Foundation for Theoretically Unconditional Security in Communication
Programmable Quantum Annealing Architectures with Ising Quantum Wires
Quantum Annealing NSF/DOE Quantum Science Summer School
A Review of Machine Learning Classification Using Quantum Annealing for Real-World Applications
24日 9:00 Opening 9:10 Quantum Or Classical ? Qubits Measurement
Quantum Annealing
Development of Quantum Applications
Reduction of the Molecular Hamiltonian Matrix Using Quantum Community Detection Susan M
A Hybrid Quantum-Classical Paradigm to Mitigate Embedding Costs in Quantum Annealing—Abridged Version*
Quantum Information Science in High Energy Physics
Feature Selection for Recommender Systems with Quantum Computing
Quantum Computing (CST Part II) Lecture 15: Adiabatic Quantum Computing
Quantum Supremacy Through the Quantum Approximate Optimization Algorithm
Design, Fabrication and Test of a Four Superconducting Quantum-Bit Processor Vivien Schmitt
Problems on a Quantum Computer
Quantum Computing at NASA: Current Status
Algorithms for Solving Combinatorial Optimization Problems
Quantum Chemistry on Quantum Annealers
Perspectives of Quantum Annealing: Methods and Implementations
Quantum Annealing for Problems with Ground-State Degeneracy
Solving Vehicle Routing Problem Using Quantum Annealing
Practical Annealing-Based Quantum Computing.” IEEE Computer Magazine
Flux-Tunable Superconducting Transmons for Quantum Information Processing
Benchmarks and Controls for Optimization with Quantum Annealing
Superconducting Flux Qubits for High-Connectivity Quantum Annealing Without Lossy Dielectrics
QUBO Formulations for Training Machine Learning Models Prasanna Date1*, Davis Arthur2 & Lauren Pusey‑Nazzaro3
Comparison and Analysis of BB84 and E91 Quantum Cryptography Protocols Security Strengths