Quantum kernel estimation with backend-matched IBM noise modeling, plus reproducible “Wigner’s friend” branch-transfer coherence-witness experiments executed on superconducting quantum hardware.
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Updated
Mar 15, 2026 - Python
Quantum kernel estimation with backend-matched IBM noise modeling, plus reproducible “Wigner’s friend” branch-transfer coherence-witness experiments executed on superconducting quantum hardware.
Verification harness for quantum ML. A reproducible lab for stress-testing quantum models where predictive accuracy, identifiability, curvature, and robustness under noise can diverge.
Hands-on quantum computing for machine learning, built from scratch in NumPy then bridged to PennyLane. 6-week course: qubits & gates, entanglement & CHSH, quantum algorithms (Deutsch–Jozsa, Grover, QFT), variational circuits & VQE, quantum ML classifiers, and quantum kernels.
COMP47950: compare classical ML, simulated QML (VQC & QSVM), and IBM Quantum inference-only evaluation on Nim classification.
Entangled group-invariant quantum kernels for visual symmetry and anomaly experiments.
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