194.125 AI/ML in the Era of Climate Change
Diese Lehrveranstaltung ist in allen zugeordneten Curricula Teil der STEOP.
Diese Lehrveranstaltung ist in mindestens einem zugeordneten Curriculum Teil der STEOP.

2023W, VU, 3.0h, 4.0EC
TUWEL

Merkmale

  • Semesterwochenstunden: 3.0
  • ECTS: 4.0
  • Typ: VU Vorlesung mit Übung
  • Format der Abhaltung: Präsenz

Lernergebnisse

Nach positiver Absolvierung der Lehrveranstaltung sind Studierende in der Lage (Beschreibung in Englisch):

This course focuses on two aspects: (1) Sustainable AI  (2) AI for Sustainablity. 

(1) Sustainable AI: Impact on sustainability by AI models

  • Introduction: Hardware advancements, data explosion, and its energy impacts

  • Energy Challenge of AI models: Cost of Training and Inference

  •  Large Language Models  and their energy consumption

  • A path forward: Methods to address energy consumption of AI models

Goal:

  • Understand, apply, and engineer large-scale geographically distributed ML/AL applications

  • Understand resource efficient  mechanisms for ML/AL applications with strict latency and/or data quality constraints

  • Understand Geographically distributed inference and learning in Ai/ML 

(2) AI for sustainability: Using AI to combat the climate change issues

  • AI-driven Smart ICT management (data centre optimizations, chip architecture)

  • AI-driven renewable energy and grid energy management

  • AI for climate change modelling use cases

Goal:

  • Understand the common AI/ML applications used for combating climate change (e.g., sensing of water pollution, flood sensing, etc.)

  • Facilitate computation and communication in rural and uninhabited areas

  • Understand how to apply different ML/AI methods for the implementation of applications combating climate change 

Inhalt der Lehrveranstaltung

The theoretical concepts are presented and discussed on the basis of slides and scientific literature. Practical tasks are carried out in the laboratory on the basis of these concepts. There will be two practical projects.

Methoden

The theoretical concepts are presented and discussed on the basis of slides and scientific literature. Practical tasks are carried out in the laboratory on the basis of these concepts. There will be two practical projects.

Prüfungsmodus

Mündlich

Vortragende Personen

Institut

LVA Termine

TagZeitDatumOrtBeschreibung
Mi.12:00 - 14:0004.10.2023 - 24.01.2024FAV Hörsaal 2 Vorlesung
AI/ML in the Era of Climate Change - Einzeltermine
TagDatumZeitOrtBeschreibung
Mi.04.10.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.11.10.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.18.10.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.25.10.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.08.11.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.22.11.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.29.11.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.06.12.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.13.12.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.20.12.202312:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.10.01.202412:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.17.01.202412:00 - 14:00FAV Hörsaal 2 Vorlesung
Mi.24.01.202412:00 - 14:00FAV Hörsaal 2 Vorlesung

Leistungsnachweis

Mündliche Prüfung am Semesterende

LVA-Anmeldung

Von Bis Abmeldung bis
22.09.2023 10:00 13.10.2023 10:00 22.10.2023 10:00

Curricula

StudienkennzahlVerbindlichkeitSemesterAnm.Bed.Info
066 645 Data Science Gebundenes Wahlfach

Literatur

Es wird kein Skriptum zur Lehrveranstaltung angeboten.

Vorkenntnisse

Knwoldge about Machine Learning 

Ability to understand neural network, training the models and deploying in runtime

Sprache

Englisch