Lehrveranstaltungen in Stud.IP

aktuelles Semester
link to course in Stud.IP Studip_icon
Exercise Cybersecurity Data Science (PBL)
Subtitle:
This course is part of the module: Cybersecurity Data Science
Semester:
SoSe 24
Course type:
PBL -Projekt-/problembasierte Lehrveranstaltung (Lehre)
Course number:
lv2915_s24
Lecturer:
Riccardo Scandariato, Ina Weigl, Dr. Nicolás Díaz Ferreyra, Catherine Tony, Quang Cuong Bui, Torge Hinrichs, Emanuele Iannone
Description:

Theoretical Foundations:

  • Introduction to data science
  • Supervised and unsupervised learning
  • Data science methods (e.g., clustering, decision trees, artificial neural networks)
  • Performance metrics

Cybersecutrity Applications:

  • Spam detection
  • Phishing detection
  • Intrusion detection
  • Access-control prediction
  • Denial of Service (DoS) prediction
  • Vulnerability/malware prediction
  • Adversarial machine learning
Performance accreditation:
m1773-2022 - Cybersecurity Data Science<ul><li>p1760-2022 - Cybersecurity Data Science: Klausur schriftlich</li></ul><br>m1773-2023 - Cybersecurity Data Science<ul><li>p1760-2022 - Cybersecurity Data Science: Klausur schriftlich</li><li>vl440-2023 - Voluntary Course Work Cybersecurity Data Science - Subject theoretical and practical work: Subject theoretical and practical work</li></ul>
ECTS credit points:
3
Stud.IP informationen about this course:
Home institute: Institut für Software Security (E-22)
Registered participants in Stud.IP: 127
Documents: 6
voriges Semester
link to course in Stud.IP Studip_icon
Exercise Cybersecurity Data Science (PBL)
Subtitle:
This course is part of the module: Cybersecurity Data Science
Semester:
SoSe 24
Course type:
PBL -Projekt-/problembasierte Lehrveranstaltung (Lehre)
Course number:
lv2915_s24
Lecturer:
Riccardo Scandariato, Ina Weigl, Dr. Nicolás Díaz Ferreyra, Catherine Tony, Quang Cuong Bui, Torge Hinrichs, Emanuele Iannone
Description:

Theoretical Foundations:

  • Introduction to data science
  • Supervised and unsupervised learning
  • Data science methods (e.g., clustering, decision trees, artificial neural networks)
  • Performance metrics

Cybersecutrity Applications:

  • Spam detection
  • Phishing detection
  • Intrusion detection
  • Access-control prediction
  • Denial of Service (DoS) prediction
  • Vulnerability/malware prediction
  • Adversarial machine learning
Performance accreditation:
m1773-2022 - Cybersecurity Data Science<ul><li>p1760-2022 - Cybersecurity Data Science: Klausur schriftlich</li></ul><br>m1773-2023 - Cybersecurity Data Science<ul><li>p1760-2022 - Cybersecurity Data Science: Klausur schriftlich</li><li>vl440-2023 - Voluntary Course Work Cybersecurity Data Science - Subject theoretical and practical work: Subject theoretical and practical work</li></ul>
ECTS credit points:
3
Stud.IP informationen about this course:
Home institute: Institut für Software Security (E-22)
Registered participants in Stud.IP: 127
Documents: 6

Lehrveranstaltungen

Informationen zu den Lehrveranstaltungen und Modulen entnehmen Sie bitte dem aktuellen Vorlesungsverzeichnis und dem Modulhandbuch Ihres Studienganges.

Modul / Lehrveranstaltung Zeitraum ECTS Leistungspunkte
Modul: Elektrische Energiesysteme I: Einführung in elektrische Energiesysteme WiSe 6
Modul: Elektrische Energiesysteme II: Betrieb und Informationssysteme elektrischer Energienetze WiSe 6
Modul: Elektrische Energiesysteme III: Dynamik und Stabilität elektrischer Energiesysteme SoSe 6
Modul: Elektrotechnik II: Wechselstromnetzwerke und grundlegende Bauelemente SoSe 6
Modul: Elektrotechnisches Projektpraktikum SoSe 6
Modul: Prozessmesstechnik SoSe 4
Modul: Smart-Grid-Technologien WiSe, SoSe 6

Lehrveranstaltung: Seminar zu Elektromagnetischer Verträglichkeit und Elektrischer Energiesystemtechnik

weitere Information

WiSe, SoSe 2

SoSe: Sommersemester
WiSe: Wintersemester