Brian N. Siegelwax's repositories

784-Dimensional-Quantum-MNIST

Quantum MNIST using amplitude encoding instead of dimensionality reduction.

Language:Jupyter NotebookStargazers:5Issues:2Issues:0

Quantum-MNIST

MNIST classification of handwritten digits on a quantum computing simulator using OpenQASM.

Language:PythonStargazers:4Issues:1Issues:0

Maximum-Quantum-Classification

This was an attempt to push the limits of the IBM cloud quantum computing simulator.

Language:OpenQASMStargazers:2Issues:2Issues:0

Quantum-Classification

Quantum Machine Learning (QML) does not require quantum neural networks. SWAP Tests can be used to easily perform classification tasks.

Quantum-Imperfect-Cloning

NOT cloning quantum states, but trying to get as close as possible.

no-ancilla-MCX

A no-ancilla MCX submission for the 2022 Classiq Coding Competition.

Language:Jupyter NotebookStargazers:1Issues:1Issues:0

Quantum-Classification-of-Amplitudes

This is non-optimized code intended solely to test whether or not quantum classification works with amplitude encoding.

Language:Jupyter NotebookStargazers:1Issues:1Issues:0

Quantum-Clustering-and-Classification

Quantum clustering and classification in one circuit, written exclusively in OpenQASM.

Quantum-Inspired-MNIST

Inspired by quantum classification, this is MNIST with no models, no weights, no activation functions, no optimizers, nor anything else that resembles traditional MNIST implementations.

Language:Jupyter NotebookStargazers:1Issues:1Issues:0

Standard-Deviation-MNIST

"Quantum-Inspired MNIST" achieved 72% accuracy using nothing but means, addition, and subtraction. This experiment adds standard deviations.

Language:Jupyter NotebookStargazers:1Issues:1Issues:0