Practical QC for Scientists 2022.02.24
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Hands-on session 5¶

Session Recording¶

Lab book¶

Jupyter notebook

  • Quantum models as Fourier series
    • Background
    • Goal of this demonstration
    • Part I: Fitting Fourier series with serial Pauli-rotation encoding
      • Define a target function
      • Define the serial quantum model
      • Fit the model to the target
    • Part II: Fitting Fourier series with parallel Pauli-rotation encoding
      • Define the parallel quantum model
    • Send it after class: Training the model
    • Part III: Sampling Fourier coefficients
      • Define your quantum model
      • Send it after class
    • Continuous-variable model
      • Send it after class
  • Data-reuploading classifier
    • Background
    • Transforming quantum states using unitary operations
    • Data loading using unitaries
    • Model parameters with data re-uploading
    • The cost function and “nonlinear collapse”
    • Multiple qubits, entanglement and Deep Neural Networks
    • “Talk is cheap. Show me the code.” - Linus Torvalds
      • Simple classifier with data reloading and fidelity loss
      • Utility functions for testing and creating batches
      • Train a quantum classifier on the circle dataset
      • Results
    • Send it after class
    • References

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