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Course module: 202200021
202200021
Machine Learning for Datatypes
Course info
Course module202200021
Credits (ECTS)3.5
Course typeStudy Unit
Language of instructionEnglish
Contact persondr. F.A. Bukhsh
E-mailf.a.bukhsh@utwente.nl
Lecturer(s)
Examiner
N. Bouali
Contactperson for the course
dr. F.A. Bukhsh
Lecturer
dr. F.A. Bukhsh
Examiner
dr.ir. M. van Keulen
Contactperson for the course
dr.ir. M. van Keulen
Academic year2023
Starting block
1A
RemarksPart of TCS elective module 8E. Minor students: register for the minor!
Application procedureYou apply via OSIRIS Student
Registration using OSIRISYes
Aims
The module’s learning objectives are formulated using Bloom’s taxonomy. The learning objectives are mapped to Programme Intended Learning Outcomes.
  • Understand the data analytics workflow (based on CRISP-DM (Wirth, & Hipp, 2000))
  • Assess data quality and ability to scrape, cleanse, and ethically maintain data
  • Assess and compare the suitability of different data modeling methods/algorithms for optimal performance and evaluate results objectively.
  • Familiarity with infrastructures and distributed systems used to deal with them, such as Hadoop and MapReduce
  • Analyze and apply the most advanced and relevant statistic and mathematical techniques for business purposes, specifically
  • Fundamental algorithms and mathematical models for processing natural language
  • The fundamentals of the neural network as applied to the analysis of images
  • Mathematical methods of decision analysis and modeling ML/AI algorithms
  • Apply new frameworks and advanced fundamental knowledge, reflect on how frameworks work and motivate choice, integrate different parts of ML/AI.
  • Build an automated workflow to scrap, clean, and ethically maintain data and result’s privacy.
Content
Working with data beyond simple structured data such as natural language text, images, and sensor data, as well as different neural network architectures typically used in machine learning for these data types.

Enrolment
B-CS students register via Osiris; others can contact modulesupport-tcs@utwente.nl.
Minor students: please register in Osiris for the minor!
Assumed previous knowledge
It is a prerequisite to have made a serious attempt at module 202000991 Intelligent Interaction Design or 202001031 Intelligent Interaction Design CS/BIT. A ‘serious attempt’ is defined as having participated in at least one test, i.e., one need not have successfully completed the module, but the module expects that the content of one of these modules has been studied.
Previous knowledge can be gained by
All reading materials are accessible online either publicly or through the UT library.
Module
Module 8E
Participating study
Bachelor Technical Computer Science
Participating study
Bachelor Business & IT
Participating study
Bachelor Creative Technology
Required materials
-
Recommended materials
-
Instructional modes
Assessment
Presence dutyYes

Assignment
Presence dutyYes

Lecture

Practical

Presentation(s)
Presence dutyYes

Project supervised

Project unsupervised

Q&A

Tests
Machine Learning for Datatypes

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Kies de Nederlandse taal