Institute of Computer Science
  1. Courses
  2. 2021/22 spring
  3. Pervasive Data Science Seminar (LTAT.06.010)
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Pervasive Data Science Seminar 2021/22 spring

  • 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.

  • 07.02 Introduction to Pervasive Data Science (Slides)
  • 14.02 Lecture "How to conduct a feasibility study?" (Slides)
  • 21.02 Initial Project Understanding (Slides)
  • 28.02 Lecture "Analysis of collected data in testbed" (Slides)
  • 07.03 Lecture "Check-pointing I (Formal presentation) and PhD student presentation" (Slides) (Slides_PhDprojects-part1)
  • 14.03 - Lecture "Check-pointing II (Informal discussion) and PhD student presentation" (Slides) (Slides_PhDprojects-part2)
  • 21.03 - Lecture "Check-pointing III (Formal presentation) and PhD student presentation" (Slides)
  • 28.03 - Lecture "Check-pointing IV (Informal discussion) and PhD student presentation" (Slides) (Slides_PhDprojects-part3)
  • 04.04 - Lecture "Check-pointing V (Formal presentation) and PhD student presentation" (Slides) (Slides_PhDprojects-part4) Δ
  • 11.04 - Lecture "Check-pointing VI (Informal discussion)" (Slides)
  • 18.04 - Free session (please focus on advancing your contributions)
  • 25.04 - Lecture "Check-pointing VII (Informal discussion)" (Slides)
  • 02.05 - Free session (please prepare the initial draft of deliverables)
  • 09.05 - Submission of initial deliverables - Revision through an informal discussion
  • 16.05 - Tuning deliverable session 1 (for whose deliverables that are poor quality)
  • 23.05 - Tuning deliverable session 2 (for whose deliverables that are poor quality)
  • 30.05 Final deliverable submission to huber DOT flores AT ut DOT ee. No deliverables can be re-submitted after this deadline. Final grades are also uploaded to the system.
  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
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