Skip to content

CompPhysics/QuantumComputingMachineLearning

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

1,318 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Quantum Computing and Quantum Machine Learning

The first part of the course (project 1 and till mid march) has its focus on studies of quantum-mechanical many-particle systems using quantum computing algorithms and quantum computers. The second part is optional and depends on the interests and backgrounds of the participants. Two main themes can be covered:

  • Quantum machine learning algorithms, implementations and studies
  • Realization and studies of entanglement in physical systems
  • Advanced VQE and hamiltonian systems

Possible textbooks:

Interesting online courses and software:

Time: Each Wednesday at 1015am-12pm CET and exercise sessions 815-10am (The lecture sessions will be recorded)

-Permanent Zoom link for the whole semester is https://uio.zoom.us/my/mortenhj

January 19-23, 2026. Overview of first week, Basic Notions of Quantum Mechanics

January 26 - January 30, 2026. Composite Systems and Tensor Products

February 2-6, 2026. Density matrices and Measurements

February 9-13, 2026. Entanglement and entropies

February 16-20, 2026. Getting started with the VQE algorithm

February 23-27, 2026. Implementing the VQE with measurements and evaluation of gradients

March 2-6, 2026. VQE for two-qubit systems and the Lipkin model

March 9-13, 2026. Solving quantum mechanical problems

March 16-20, 2026. Discussions of project 1 and work on the VQE

March 23-27, 2026

March 30 - April 3, 2026, Public holiday in Norway no classes

Note that the topics for the coming weeks may change!

April 6-10, 2026

  • Discrete Fourier transforms (DFTs, reminder from last week) ) and the fast Fourier Transform (FFT)
  • Reading recommendation Hundt, Quantum Computing for Programmers, sections 6.1-6.4 on QFT and QPE.

April 13-17, 2026

  • Basics of quantum machine learning and discussion of support vector machines
  • Quantum phase estimation algorithm (QPE)
  • Reading recommendation Hundt, Quantum Computing for Programmers, sections 6.1-6.4 on QFT and QPE.

April 20-24, 2026 Quantum Machine Learning

  • Basics of quantum machine learning and discussion of support vector machines

April 27-May 1, 2026 Quantum machine learning

  • Classical Support Vector Machines, reminder from last week
  • Classical Kernels and transition to Quantum Kernels
  • Quantum Support Vector Machines

May 4-8, 2026 Quantum Machine Learning

  • Quantum support vector machines, theory and code examples
  • Quantum neural networks, theory and code examples

May 11-15, 2026

  • Quantum neural networks, theory and code examples, contn from last week
  • Quantum and classical Boltzmann machines

May 18-22, 2026

  • Summary of course and discussion of project 2

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors