Certified Data Scientist Specialized in Quantum Machine Learning

Quantum Computing and Machine Learning

Quantum computing and machine learning are key technologies that will significantly change our technological landscape in the coming decades, and in some cases are already doing so today. The modules cover topics at the intersection of quantum computing and machine learning and teaches how to put them into practice.

After completing this program, you will...

... know the basic formal concepts of quantum computing (quantum statebit vs. qubitmeasurement).

... know the basic formal concepts of machine learning (objective functionmodel classcross-validationkernel function).

... learn to use ideas and building blocks of quantum algorithms for QML problems.

... can describe the Quantum Support Vector Machine method and use it in application cases.

... be able to formulate the strengthsweaknesses and limitations of current QML methods.

Overview

ORGANIZER

Fraunhofer ITWM

Fraunhofer FOKUS

Fraunhofer IAIS

Fraunhofer IPA

Fraunhofer FIT

EVENT TYPE

Certificate course

venue

Fraunhofer FOKUS

Kaiserin-Augusta-Allee 31

10589 Berlin 

Format

Online + In-Person

LANGUAGE English 
target group
  • Experts in the fields of data science and machine learning
  • Employees of technology companies, such as pharmaceutical and chemical companies
  • Employees of government agencies interested in potential applications in the fields of cryptography and cybersecurity
  • Employees of research institutions and students pursuing a master's degree or doctorate in fields such as computer science, physics, mathematics, or data science who also want to bring themselves up to speed in the field of QML
  • Employees of research institutions and students with previous experience in quantum computing
program details

Online:

  • Unit 1.1: Basics of machine learning/data science
  • Unit 1.2: Basics of quantum computing

Presence:

  • On-Boarding and exercises for Unit 1.1 and 1.2
  • Unit 2: Quantum clustering
  • Unit 3: Parametrized quantum circuits + data encoding
  • Unit 4: Quantum support vector machine
  • Unit 5: Quantum neural networks
admission REQUIREMENT

Previous experience in the field of data science / machine learning or quantum computing or similar previous experience (can also be clarified individually)

content overview
  • Synergy between topics in the fields of data science / machine learning and quantum computing 
  • Hands on and theory on how to cluster or classify using quantum computing
  • Encoding of classical data into quantum circuits
  • Learning how to build parametrized quantum circuits
  • Quantum neural networks and possible advantages

More information on dates and prices can be found on the registration page:

Ali  Moghiseh

Contact Press / Media

Dr. Ali Moghiseh

Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM
Fraunhofer-Platz 1
67663  Kaiserslautern

Phone +49 631 31600-4467

Alexander Geng

Contact Press / Media

Alexander Geng

Fraunhofer-Institut für Techno- und Wirtschaftsmathematik ITWM
Fraunhofer-Platz 1
67663  Kaiserslautern

Phone +49 631 31600-4183