Skip to main content
Search by keyword
Training

Quantum machine learning

The Quantum machine learning course is designed to guide students through the complexities of integrating quantum computing and machine learning. The course containing 8 modules will elucidate the potential advantages and real-world applications of quantum machine learning, preparing learners to identify and leverage quantum computing solutions for complex business challenges. 

Learners will gain hands-on experience with formulating Quantum Unconstrained Binary Optimization (QUBO) and the Quantum Approximate Optimization Algorithm (QAOA), including the use of D-Wave systems for solving optimization problems. They will also learn to implement quantum machine learning models such as Parameterized Quantum Circuits (PQC) and Quantum Support Vector Machines, understanding the nuances of quantum algorithms and their industrial applications in machine learning tasks like classification, regression, and clustering.

Course Structure

  1. Why Quantum Machine Learning?
  2. Optimization Problems (QUBO+Dwave)
  3. Parameterized Quantum Circuit (PQC)
  4. QAOA in Optimization
  5. Quantum Classifiers / Quantum Regression
  6. Kernel method (Quantum Support Vector Machine)
  7. Unsupervised QML (clustering)
  8. Advanced algorithms, available computers and current challenges

Audience

Executives & Strategists, Non-Technical Managers, Engineers & Technicians, Software Developers and Data Scientists, Researchers, students, Quantum Enthusiast
 

Training Offer Details

Target audience
Digital skills for ICT professionals and other digital experts.
Digital technology / specialisation
Digital skill level
Geographic scope - Country
Austria
Belgium
Bulgaria
Cyprus
Industry - field of education and training
Generic programmes and qualifications not further defined
Target language
English
Spanish
Geographical sphere
EU institutional initiative
Typology of training opportunties
Learning activity
e-learning coursework
Assessment type
Training duration
Is this course free
Yes
Is the certificate / credential free
Yes
Effort
Part time light
Credential offered
Generic
Self-paced course
Yes