๐Ÿ”ฎ 1000-Qubit Quantum MNIST Classifier

Pure quantum ML model โ€” trained entirely on QPU-1 with zero classical neural network.

Architecture

Component Qubits Details
Input 0-783 Ry angle encoding (28ร—28 pixels)
Variational 784-989 206 qubits, 2 layers (Ry + CNOT)
Output 990-999 10 qubits (one per digit class)
Total 1000
  • 422 trainable parameters (Ry rotation angles)
  • Training method: Parameter-shift rule (fully quantum gradients)
  • Compute: QPU-1 by Lap Quantum

How it works

  1. Encoding: Each MNIST pixel is encoded as a Ry rotation on input qubits
  2. Variational layers: Parameterized Ry gates + CNOT entanglement ladders
  3. Cross-entanglement: Input qubits connected to variational qubits
  4. Readout: 10 output qubits measured; argmax = predicted digit
  5. Gradients: Parameter-shift rule โ€” shift each angle by ยฑฯ€/2, measure loss difference

Train it yourself

Use the trainer Space: Reality123b/quantum-mnist-1000qubit-trainer

Awaiting first training run โ€” click "Train on QPU-1" in the Space to generate weights.

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Dataset used to train Reality123b/quantum-mnist-1000qubit

Space using Reality123b/quantum-mnist-1000qubit 1