Member-only story

Math Needed for Quantum Computing

Shaila Nasrin
2 min readOct 21, 2024

--

source

Linear Algebra

  • Vectors and Matrices: Understanding vector spaces, basis vectors, and matrix operations (addition, multiplication).
  • Eigenvalues and Eigenvectors: Crucial for understanding quantum measurements.
  • Hermitian and Unitary Matrices: Quantum gates are represented by unitary matrices, and observables by Hermitian matrices.
  • Tensor Products: For working with multi-qubit systems.
  • Matrix Decompositions: Concepts like the singular value decomposition (SVD) are important for certain quantum algorithms.

Probability Theory

  • Random Variables and Probability Distributions: Quantum measurements result in probabilities.
  • Expectation Values: Related to the measurement outcomes.
  • Bayesian Inference: Can be useful in quantum algorithms and error correction.
  • Markov Chains: Useful in some quantum algorithms (e.g., Grover’s algorithm).

Complex Numbers

  • Complex Arithmetic: Understanding operations on complex numbers (addition, multiplication, conjugates).
  • Euler’s Formula: Understanding the relationship between complex exponentials and trigonometric functions.

--

--

No responses yet