194.150 Probabilistic Programming and AI
Diese Lehrveranstaltung ist in allen zugeordneten Curricula Teil der STEOP.
Diese Lehrveranstaltung ist in mindestens einem zugeordneten Curriculum Teil der STEOP.

2024W, VU, 4.0h, 6.0EC

Merkmale

  • Semesterwochenstunden: 4.0
  • ECTS: 6.0
  • Typ: VU Vorlesung mit Übung
  • Format der Abhaltung: Präsenz

Lernergebnisse

Nach positiver Absolvierung der Lehrveranstaltung sind Studierende in der Lage...

  • Understand the basics of generative, probabilistic (Bayesian) modeling and inference

  • Construct probabilistic models via an expressive probabilistic programming language

  • Explain how general purpose programming languages can be extended to support probabilistic constructs

  • Understand standard inference algorithms and their implementations in probabilistic programming languages (MCMC, Variational Inference, etc.)

  • Independently read literature in the probabilistic programming space

Inhalt der Lehrveranstaltung

Probabilistic programming is a general framework to express probabilistic models as programs. It lies at the intersection of machine learning, statistics, and programming languages. While it has classically been seen as mechanization of Bayesian statistical inference, it has recently emerged as a candidate for next-generation AI toolchains.

 

This course will convey both theoretical and practical aspects of using probabilistic AI to express complex probabilistic models as programs and understand the interplay of modeling and inference to efficiently solve real world problems:

 

  • Generative (Bayesian) Models

  • Conditioning and Posterior Sampling, 

  • Programmable Inference for Probabilistic Programming Languages

  • Deep Probabilistic Programs (Bayesian Neural Networks), 

  • Inference Methods: Markov Chain Monte Carlo (MCMC), Hamiltonian Monte Carlo, Variational Inference

  • Applications of Probabilistic Programming

Methoden

  • Regular lectures about theoretical topics

  • Individual assignments in probabilistic programming language 

  • Independent group projects implemented in a probablistic programming language (Gen, Turing, Pyro, PyMC3, etc.) with final presentations

Prüfungsmodus

Prüfungsimmanent

Weitere Informationen

150 hours 

  • 5 x 2h Lecture = 10h

  • 3 x 20h Individual Assignments = 60h

  • 1 x 60h Group Project = 60h

  • Preparing Presentation = 10h

  • Attending Final Presentations = 10h

Vortragende Personen

Institut

Leistungsnachweis

Assignments and independent project with final presentations

LVA-Anmeldung

Von Bis Abmeldung bis
04.09.2024 09:00 07.10.2024 23:55 22.10.2024 23:55

Curricula

StudienkennzahlVerbindlichkeitSemesterAnm.Bed.Info
066 645 Data Science Keine Angabe
066 926 Business Informatics Keine Angabe
066 931 Logic and Computation Keine Angabe
066 937 Software Engineering & Internet Computing Keine Angabe

Literatur

Es wird kein Skriptum zur Lehrveranstaltung angeboten.

Weitere Informationen

Sprache

Englisch