Department of Electrical and Computer Engineering

MENUMENU
  • Department
      • Profile
      • Faculty
      • Evaluation
      • Administration
      • Staff
  • Studies
    • Subject Areas
    • Undergraduate Studies
    • Postgraduate Studies
      • MSc Studies in “Science and Technology of ECE”
      • MSc Studies in “Smart Grid Energy Systems”
      • MSc Studies in “Applied Informatics”
    • PhD Studies
    • Course List
      • Undergraduate Courses
      • Postgraduate Courses
        • Science and Technology of ECE
        • Smart Grid Energy Systems
        • Applied Informatics
      • Erasmus
    • ECTS
    • Career Opportunities
    • Practise Training
  • Research
    • Labs
    • Research Projects
    • Postdoc Research
    • Ph.D. Candidates
    • Theses – Technical Reports
    • Active Research Projects

      MLSysOps: Machine Learning for Autonomic System Operation in the Heterogeneous Edge-Cloud Continuum

      Scientific Responsible

      Spyros LalisSpyros Lalis, Professor
      E-mail: lalis@uth.gr

      TitleMLSysOps: Machine Learning for Autonomic System Operation in the Heterogeneous Edge-Cloud Continuum
      Duration2023 – 2025
      Sitehttps://csl.e-ce.uth.gr/projects/mlsysops

      Read More

  • Alumni
    • Ph.D. Graduates
  • Service Offices
    • Secretariat
    • Technical support
  • Announcements
    • General Announcements
    • Academic News
  • Contact
    • Department of Electrical and Computer Engineering
      • Sekeri – Cheiden Str
        Pedion Areos, ECE Building
        383 34 Volos – Greece
      Tel.+30 24210 74967, +30 24210 74934
      e-mailgece ΑΤ uth.gr
      PGS Tel.+30 24210 74933
      PGS e-mailpgsec ΑΤ uth.gr
      URLhttps://www.e-ce.uth.gr/contact-info/?lang=en
  • Login

ECE434 Complex Networks

Home » Studies » Undergraduate Studies » Undergraduate Courses » ECE434 Complex Networks
Subject AreaSoftware and Information System Engineering
SemesterSemester 8 – Spring
TypeElective
Teaching Hours4
ECTS6
Course Sitehttps://courses.e-ce.uth.gr/ECE434/
Course Director

Dimitrios KatsarosDimitrios Katsaros, Associate Professor
E-mail: dkatsar@uth.gr

Course Instructor
  • Dimitrios Katsaros, Associate Professor
    E-mail: dkatsar@uth.gr
  • Description
  • Learning Outcomes

The contents of the course are the following:

  • node, edge, graph theory, power laws, degree distribution
  • random graph, network growth/evolution models, preferential attachment, network dynamics
  • small world, six degrees of separation, scale-free networks
  • degree centrality, closeness centrality, betweenness centrality, flow centrality, spectral centrality
  • communities (overlapping, non-overlapping, graph-theoretic, spectral), modularity, clustering coefficient
  • influence and susceptibility, influential spreaders
  • robustness, temporal complex networks

The course comprises a detailed presentation of the modern field of complex networks investigating issues relevant to the iranalys is at the no delevel,at the group of nodes level, dissemination and spreading of information.

The goal of the course is to offer the knowledge and understanding of concepts, algorithms, and methodologies required for the analysis of large (technological, biological, social) networks.

The students taking this course will:

  • Understand the concepts of Network Science.
    Familiarize themselves with methods for the analysis of large complex networks, especially those methods based on graph theory.
  • Familiarize themselves with networks analysis software.
    Get an introduction to the field of Big Data.

e-Yπηρεσίες

Contact Info

  • Sekeri – Cheiden Str, Pedion Areos, Volos
  • +30 24210 74967
  • +30 24210 74934
  • Email: gece@uth.gr

Announcements

  • Academic News

Find us

  • Facebook
  • Twitter
  • Youtube
  • Linkedin
© Copyright 2025 Department of Electrical and Computer Engineering
We use cookies to ensure that we give you the best experience on our website.OKΠληροφορίες