Quantum Hardware
Quantum hardware research focuses on developing and improving physical quantum computers, primarily to enable faster computation than is possible classically. Current efforts concentrate on enhancing qubit coherence times, mitigating noise through error correction techniques (like measurement-free local error correction), and optimizing quantum circuit design using AI-driven methods (such as quantum architecture search and reinforcement learning). This field is crucial for advancing quantum machine learning, where hybrid classical-quantum models (incorporating variational quantum circuits and quantum neural networks) are being explored for applications in diverse areas like image processing, financial forecasting, and drug discovery.
Papers
Hierarchical Learning for Quantum ML: Novel Training Technique for Large-Scale Variational Quantum Circuits
Hrant Gharibyan, Vincent Su, Hayk Tepanyan
Q-Seg: Quantum Annealing-Based Unsupervised Image Segmentation
Supreeth Mysore Venkatesh, Antonio Macaluso, Marlon Nuske, Matthias Klusch, Andreas Dengel
3D-QAE: Fully Quantum Auto-Encoding of 3D Point Clouds
Lakshika Rathi, Edith Tretschk, Christian Theobalt, Rishabh Dabral, Vladislav Golyanik
Disentangling Quantum and Classical Contributions in Hybrid Quantum Machine Learning Architectures
Michael Kölle, Jonas Maurer, Philipp Altmann, Leo Sünkel, Jonas Stein, Claudia Linnhoff-Popien