Order of the day

1587552158 / AE500422


  • 10:00 - 10:15 :: Digitales Ankommen

  • Introduction

  • Course overview

  • Machine-learning intro

  • Jupyter intro

  • Warm-up exercise (in break-out rooms ??)

  • Discussion

  • Warm-up exercise (in break-out rooms ??)

  • Discussion

Who am I ? (Daniel)

/

  • founder of oldest Slovak digital community kyberia.sk
  • Bc. in humanities (Charles University in Prague) and Bc. in linguistics (Universite de Nice Sophia-Antipolis)
  • MSc. in cognitive sciences (Ecole Pratique des Hautes Etudes, Paris)
  • PhDs. in psychology (Universite Paris 8) and cybernetics (Slovak University of Technology)
  • ex IT-Admin of UdK's Medienhaus
  • Digital Education juniorprofessor (Einstein Center Digital Future / UdK)

Who am I ? (Nik)

1587552444 / AE500422

  • Artist and Electrical Engineer
  • Studentische Hilfskraft von Daniel
  • BA in Electrical Engineering / KuM Absolvent(Almost)

Who am I ? (Paul)

1587552424 / AE500422

  • Artist and Programmer
  • Wissenschaftlicher Mitarbeiter von Daniel
  • BA in Visuelle Kommunikation
  • plsdlr.net

M.O.D.E.A #4 : (Machine) learning and data (science)

/

In this course, we are going to follow some nice O'Reilly data science manual and, line by line, learn about meaning of terms like "feature", "multi-class classification", "training" and "cross validation" and, while doing so, acquire all necessary prerequisities of "the most sexy job of 22nd century".

We start this Friday (24th April) at 10:00 am

What is this course NOT about ?

1587715880 / AE500424

it is not about neural networks *


it is not about "regression"


 


* well, it will be also about neural networks, but just a little bit ;)

What is this course about ?

1587715747 / AE500424

about learning


about classification


about main machine learning concepts: true positive / true negative / false positive / false negative / feature, feature extraction, classifier, accuracy etc.