6 ECTS credits
150 h study time

Offer 1 with catalog number 4020567FNR for all students in the 2nd semester at a (F) Master - specialised level.

Semester
2nd semester
Enrollment based on exam contract
Impossible
Grading method
Grading (scale from 0 to 20)
Can retake in second session
Yes
Enrollment Requirements
Students must have followed ‘ Machine learning’, before they can enroll for ‘Scalable Analytics'.
Taught in
English
Faculty
Faculty of Sciences and Bioengineering Sciences
Department
Computer Science
Educational team
Pieter Libin (course titular)
Activities and contact hours
24 contact hours Lecture
24 contact hours Seminar, Exercises or Practicals
36 contact hours Independent or External Form of Study
Course Content

In this course, we study scalable algorithms to analyze big datasets. We aim to give students a broad overview of the big data ecosystem, yet also make it concrete so that the students understand the algorithms on a fundamental level. Additionally, we will guide the students in applying such algorithms to real-world problems.

We will cover the following aspects:

  • Big Data ecosystem
  • Complexity analysis for scalable computations
  • Distributed supervised/unsupervised machine learning
  • Recommender systems
  • Large graph analysis
  • Scalable deep learning
  • Online learning 
  • Frameworks for distributed computing
Additional info

Expected background knowledge: For this course, we expect the students to have a decent knowledge of basic machine learning algorithms (e.g., Machine learning course) and a good background on statistics, calculus and linear algebra.

Study material: Scientific papers, course slides, book “Mining of Massive Datasets” (freely available at mmds.org), exercise assignments and solutions (theory and Python code) and Canvas notes.

Learning Outcomes

Algemene competenties

  1. The student can explain the big data ecosystem in his/her own words, and reason about the pro and cons of different solutions in the ecosystem.
  2. The student can implement, explain (in his/her own words) and mathematically analyze core scalable algorithms.
  3. The student can tailor existing scalable algorithms for functional or technical objectives. 
  4. The student can independently learn, evaluate, and apply previously unseen algorithms from research literature, with a critical mindset. This will prepare the student to keep up with algorithmic and computational advances, and to prepare for lifelong learning.
  5. The student can apply frameworks for distributed computing and devise architectures based on distributed computing components.
  6. The student can implement and apply scalable algorithms to real-world problems, and derive and report insights from it, in collaboration with peers.
  7. The student can consider and discuss with peers, the many ethical, social, and economical challenges that big data has relevance to, when developing new applications.

Grading

The final grade is composed based on the following categories:
Written Exam determines 50% of the final mark.
Practical Exam determines 50% of the final mark.

Within the Written Exam category, the following assignments need to be completed:

  • written exam with a relative weight of 1 which comprises 50% of the final mark.

    Note: Written exam: 50% of the final grade.

Within the Practical Exam category, the following assignments need to be completed:

  • personel project with a relative weight of 1 which comprises 50% of the final mark.

    Note: Personal project: 50% of the final grade.

Additional info regarding evaluation

Written exam: 50% of the final grade.

Personal project: 50% of the final grade.

To be eligible to take part in the written exam, the student is expected to register for the project.

Allowed unsatisfactory mark
The supplementary Teaching and Examination Regulations of your faculty stipulate whether an allowed unsatisfactory mark for this programme unit is permitted.

Academic context

This offer is part of the following study plans:
Master in Applied Sciences and Engineering: Computer Science: Artificial Intelligence (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Multimedia (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Software Languages and Software Engineering (only offered in Dutch)
Master in Applied Sciences and Engineering: Computer Science: Data Management and Analytics (only offered in Dutch)
Master of Applied Sciences and Engineering: Computer Science: Artificial Intelligence
Master of Applied Sciences and Engineering: Computer Science: Multimedia
Master of Applied Sciences and Engineering: Computer Science: Software Languages and Software Engineering
Master of Applied Sciences and Engineering: Computer Science: Data Management and Analytics