Institute of Computer Science
  1. Courses
  2. 2024/25 fall
  3. Pervasive Data Science Seminar (LTAT.06.010)
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Pervasive Data Science Seminar 2024/25 fall

  • General
  • Lectures
  • Projects
  • Material and Examples
  • Message board

Readings:

  • Pervasive data science
  • Pervasive data science on the edge

Lectures

Lectures are in person (every Monday) - Lectures will be also available online (Zoom link) (Passcode: pds2021)

Lectures will take place following the (tentative) schedule below.

  • 02.09 Introduction to Pervasive Data Science (Slides)
  • 09.09 Project selection (online)
  • 16.09 How to develop a testbed with rapid prototyping equipment"
    • Gregor Rehand - Time series into images for DL (Deep Learning)
    • Joosep Näks - Quality of pedestrian roads using micro-mobility vehicles
  • 30.09 Lecture "Experiences from previous students (Reo Kuchida) and Examples of testbeds of other successful projects (Slides)
  • 07.10 Lecture "PhD student presentation - HIPPO: Pervasive Hand-grip Estimation from Everyday Interactions" - Presentation delivered in ACM UbiComp 2023 (Slides)
  • 14.10 Lecture "Statistical analysis over data''' (Slides)
  • 21.10 Student checking point 2 and Lecture "PhD student presentation - Seamless integration of light sensors with nanodrones for produce quality estimation" - Presentation delivered in ACM IoT 2023 (Slides)
  • 28.10 No-session
  • 04.11 PhD student presentation - Upscaling Fog Computing in Oceans for Underwater Pervasive Data Science using Low-Cost Micro-Clouds - Presentation delivered in ACM SenSys 2023 (Slides) and Lecture "How to present my research in a conference" (Slides)
  • 11.11 Student checking point 2
  • 22.04 Lecture "How to perform a (concise) literature review?" (Slides)
  • 18.11 Student project development (no-session)
  • 25.11 Presentation and agreement of final deliverables (Slides)
  • 02.12 onward - Final presentations

Course is graded Pass or Fail based on deliverable quality (if not possible attending in-person meetings, please contact the lecturer at Room 3045, Delta)

  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
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