Lehre/Seminar Knowledge Discovery and Data Mining: Unterschied zwischen den Versionen
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{{Lehrveranstaltung | {{Lehrveranstaltung | ||
− | |Lehrveranstaltungstype= | + | |Lehrveranstaltungstype=Seminar |
− | |Titel DE=Knowledge Discovery and Data | + | |Titel DE=Knowledge Discovery and Data Mining |
− | |Titel EN=Knowledge Discovery and Data | + | |Titel EN=Knowledge Discovery and Data Mining |
|Forschungsgruppe=Web Science | |Forschungsgruppe=Web Science | ||
− | |Dozent= | + | |Dozent=Michael Färber |
− | |Übungsleiter= | + | |Übungsleiter=Tarek Saier; Kristian Noullet; Nicholas Popovic |
|Fach=Künstliche Intelligenz; Maschinelles Lernen; Data Science | |Fach=Künstliche Intelligenz; Maschinelles Lernen; Data Science | ||
|Semester=SS | |Semester=SS | ||
|LinkVVZ=http://ilias.studium.kit.edu | |LinkVVZ=http://ilias.studium.kit.edu | ||
|LinkStudierendenportal=https://campus.studium.kit.edu | |LinkStudierendenportal=https://campus.studium.kit.edu | ||
− | |Inhalt=This seminar will be given in English and will be provided by the group | + | |Inhalt=This seminar will be given in English and will be provided by the research group "Web Science" (Institute AIFB; Dr. Michael Färber). |
− | |||
− | The | + | The aim of the Seminar "Knowledge Discovery and Data Science" is the implementation of a data science project. This includes the data preparation, modeling, computation, and scientific evaluation of the developed system. |
− | |||
− | Potential topics are located in the field of | + | The following aspects will be taken into consideration for the grade: (1) design and development of the system; (2) actual practical implementation (software engineering & development); (3) the final presentation; (4) the written report (Seminararbeit), which should also contain the necessary theoretical foundations for explaining the software project and the implemented system. |
− | + | ||
− | + | ||
− | * | + | Note that this seminar focuses on the design and implementation of a research prototype system. Thus, all participating students should have good programming skills (backend and/or frontend) and some experience in data processing. Please indicate in the motivation letter when applying for this seminar, which skills you can bring in and extend in the frame of the seminar's project. |
− | * | + | |
+ | |||
+ | At the first meeting at the start of the semester, a selection of projects will be presented, together with an overview of the tasks to be solved and the data sets which can be used. Then, groups of 2-3 people will be formed and each group will work on one project. | ||
+ | |||
+ | |||
+ | Potential topics are located in the field of data science, machine learning, natural language processing, and semantic web. One can imagine topics like | ||
+ | |||
+ | * building a recommender system which can recommend which publications to read and to cite; | ||
+ | * building a recommender system which can recommend which machine learning approach to use and why; | ||
+ | * extracting information from texts and modeling it semantically for a semantic search system; | ||
+ | * building a knowledge graph for product recommendation; | ||
+ | * automatically determining the bias of news articles; | ||
+ | * automatically determining based on news articles which city is affected by the coronavirus; | ||
+ | * ... | ||
+ | |||
+ | |||
+ | All students will be given the chance to write a scientific publication together with the supervisor based on the project's outcomes (i.e., seminar report). In this way, students will gain international visibility in the area of data science and machine learning, which might be beneficial for future applications and career paths. We particularly encourage female students to apply for this seminar. | ||
+ | |||
+ | |||
+ | The kick-off event will take place in April 2022 (probably online). | ||
+ | |||
+ | '''Interested? Then apply here:''' | ||
+ | * https://portal.wiwi.kit.edu/ys/5607 (for Master students) | ||
+ | * https://portal.wiwi.kit.edu/ys/5608 (for Bachelor students) | ||
+ | |Literatur=Relevant literature will be given after project assignment. | ||
}} | }} | ||
[[Kategorie:Aktive_Lehrveranstaltung]] | [[Kategorie:Aktive_Lehrveranstaltung]] |
Aktuelle Version vom 8. März 2022, 17:17 Uhr
Seminar Knowledge Discovery and Data Mining
Dozent(en) | Michael Färber |
Übungsleiter | Tarek Saier, Kristian Noullet, Nicholas Popovic |
Fach (Gebiet) | Künstliche Intelligenz, Maschinelles Lernen, Data Science |
Leistungspunkte | ECTS |
Erfolgskontrolle | |
Semester | SS |
Aktuelle und ergänzende Informationen, sowie Zeiten und Räume der Lehrveranstaltung finden Sie im Vorlesungsverzeichnis der Universität.
Link zum Vorlesungsverzeichnis
Link zum Studierendenportal
This seminar will be given in English and will be provided by the research group "Web Science" (Institute AIFB; Dr. Michael Färber).
The aim of the Seminar "Knowledge Discovery and Data Science" is the implementation of a data science project. This includes the data preparation, modeling, computation, and scientific evaluation of the developed system.
The following aspects will be taken into consideration for the grade: (1) design and development of the system; (2) actual practical implementation (software engineering & development); (3) the final presentation; (4) the written report (Seminararbeit), which should also contain the necessary theoretical foundations for explaining the software project and the implemented system.
Note that this seminar focuses on the design and implementation of a research prototype system. Thus, all participating students should have good programming skills (backend and/or frontend) and some experience in data processing. Please indicate in the motivation letter when applying for this seminar, which skills you can bring in and extend in the frame of the seminar's project.
At the first meeting at the start of the semester, a selection of projects will be presented, together with an overview of the tasks to be solved and the data sets which can be used. Then, groups of 2-3 people will be formed and each group will work on one project.
Potential topics are located in the field of data science, machine learning, natural language processing, and semantic web. One can imagine topics like
- building a recommender system which can recommend which publications to read and to cite;
- building a recommender system which can recommend which machine learning approach to use and why;
- extracting information from texts and modeling it semantically for a semantic search system;
- building a knowledge graph for product recommendation;
- automatically determining the bias of news articles;
- automatically determining based on news articles which city is affected by the coronavirus;
- ...
All students will be given the chance to write a scientific publication together with the supervisor based on the project's outcomes (i.e., seminar report). In this way, students will gain international visibility in the area of data science and machine learning, which might be beneficial for future applications and career paths. We particularly encourage female students to apply for this seminar.
The kick-off event will take place in April 2022 (probably online).
Interested? Then apply here:
- https://portal.wiwi.kit.edu/ys/5607 (for Master students)
- https://portal.wiwi.kit.edu/ys/5608 (for Bachelor students)
Relevant literature will be given after project assignment.