Data Science Master Track Tom Heskes and Harmen Prins.

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Data Science Master Track Tom Heskes and Harmen Prins

Transcript of Data Science Master Track Tom Heskes and Harmen Prins.

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Data Science Master TrackTom Heskes and Harmen PrinsScientific questions you will study What is clustering?

What is causality?

Whats the magic behind deep learning?

How can you efficiently search and rank?

How do you build reliable models from complex data?

Why are these questions important?To help and improve our society

iCIS data science groupsProf. Tom Heskesmachine learning theory and applications

Prof. Peter LucasBayesian networks and eHealth

Dr. Elena Marchioricomplex networks and machine learning

Prof. Theo van der Weideinformation systems and retrieval

iCIS data science groupsProf. Wessel Kraaijinformation retrieval and multimedia data analysis

Prof. Mireille Hildebrandtprivacy and legacy aspects of data mining

Prof. Nico Karssemeijercomputer-aided diagnosis and medical imaging

but also: Antal van den Bosch, Bert Kappen, Lutgarde Buydens, Marcel van Gerven, Maurits Kaptein, ...Course outline1st semesterTrack BasisTrack BasisTrack ChoiceTrack ChoiceFree Choice2nd semesterTrack BasisResearch SeminarTrack ChoiceTrack ChoiceFree Choice3rd semesterResearch ProjectCS & SocietyExternal ChoiceExternal choice4th semesterMaster ThesisTrack basis coursesMandatory, key methodological aspects

Machine Learning in Practice (6 ec)Information Retrieval (6 ec)Bayesian Networks (6 ec)Track choice coursesStatistical Machine Learning (6 ec)Natural Computing (6 ec)Theory and ToolsMachine Learning (9 ec)

Computer aided diagnosis in medical imaging(6 ec)Bayesian Neurocognitive Modeling(6 ec)Bioinformatics(3 ec)ApplicationsPattern Recognition for Natural Sciences(3 ec)Text Mining (6 ec)Artificial Intelligence at the Web Scale (6 ec)

Law in Cyberspace (6 ec)Foundations of Information Systems (6 ec)Other aspectsBusiness Rules Specification and Application (3 ec)

Research projectsJoin one of the research groups within iCIS/RU or do an internship at a company

Can Google Trends predict outbreaks of influenza?Nature paper correlating Google searches to influenza outbreaksled to quite some discussion: a fluke or actual predictive power?

What distinguishes an excellent RTS game player from an average one? The SkillCraft data set contains many characteristics of various players that can be mined for actual causal relationships

Master thesis projectsSteffen Janssen developed a tool to predict productivity of software projects based on neural networks for the Dutch tax authorities

Thomas Janssen improved the fitting of hearing aids by machinelearning for the hearing aid company GN ReSound

Louis Onrust studied a novel machine learning method for the extractionof brain structure from neuroimaging data

Master thesis projectsNiels Radstake investigated Bayesian approaches to analyze mammographic images

Jelle Schhmacher came up with a classifier-based method forsearching large document collections

Tom de Ruyter works on his master thesis at Xerox in Grenobleto improve dynamic pricing for parking in LA and other US cities

Do you want to study abroad? Or an internship?For appointments

please mail to:

[email protected]

Room HG 00.508

But first contact your study advisor about the contents of your stay abroad!

Data Science vs Web and Language InteractionOverlap: text mining, information retrieval, machine learning in practice, AI at the web scale

Data Science: broader scope of application domains, slightly more emphasis on methodological aspects

Web and Language Interaction: dive deeper into thepsychological and neurological aspects ofhuman-human and human-computer interaction

Can do both through a joint, double master program:180 ec (3 years) for 2 master degrees!

Job perspectiveStart up your own company in data analytics, become a data analysis specialist or consultant at a larger company, or go for a PhD

Rasa JurgelenaiteQuantitative risk analystat ABN AMROBart BakkerSenior scientistat Philips ResearchKristel RskenBusiness analystat VVV NederlandPavol JancuraSoftware design engineerat ASMLAlex SlatmanDirector at OBI4wanMax Hinne and Wout MegchelenbrinkPhD students

Laurens van de WielData scientist at FlxOneflxone: data driven advertising; obi4wan: social media monitoring

Why Data Science at the Radboud University?Diversity: various aspects and applications of data science

Flexibility: large choice of courses to shapestudent interests

Excellence: students are embedded inresearch groups

Example: Machine Learning in PracticeBasic idea: student teams enter an ongoing machine learning competition

While trying to beat the other teams, studentslearn the ins and outs of challengingmachine learning problems

For example: recognize thousands of planktonby their shape

Example: Statistical Machine LearningTheoretical underpinning of machine learning methodsregressionclassificationneural networkskernel methodsmixture models and EM

Programming and math exercises

Demonstrations on actual data

Example: Text MiningLearn all about the different areas of text mining:Text categorizationSummarizationQuestion answeringTopic modelingSentiment analysisSocial media mining

And do an experiment on one of those topics yourself

Example: Bayesian Neurocognitive ModelingUse machine learning tools to understand our brain

Example: decode fMRI data toreconstruct the image the person islooking at

Pioneered by Gallant's lab at UCB

In the course we implement similartechniques for still images. And thatis just one weekMy impressionsIs it fun?Is it difficult?Can you make a living?Will you have options? Can you reconsider?Study environmentShould you do it?

Pro tips:Have a look at some statistics before starting the coursesAlways ask. Always.Thanks!