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Master Lab Course - Machine Learning for Natural Language Processing Applications (IN2106, IN4249)

Course 0000004166 in SS 2023

General Data

Course Type practical training
Semester Weekly Hours 6 SWS
Organisational Unit Informatics 2 - Chair of Formal Languages, Compiler Construction, Software Construction (Prof. Seidl)
Lecturers Miriam Anschütz
Jeremias Bohn
Tobias Eder
Edoardo Mosca
Responsible/Coordination: Georg Groh
Dates 5 singular or moved dates

Assignment to Modules

Further Information

Courses are together with exams the building blocks for modules. Please keep in mind that information on the contents, learning outcomes and, especially examination conditions are given on the module level only – see section "Assignment to Modules" above.

additional remarks People are increasingly using text-based forms of communication, including social media, to exchange impressions of their everyday life or to get ideas for their individual lifestyle. As a result, a large amount of text data is available online, containing a wealth of information on various topics. This results in new use cases, which have implications for research on machine learning in the field of natural language processing. To this end, recent advances in this technical field appear promising, as they mimic human understanding of text by capturing and extracting universal semantic knowledge from large text resources. Therefore, we offer appropriate research literature, based on which students use state-of-the-art methods. These potentially involve neural networks and include semantic embedding, attention mechanisms, transfer learning, clustering algorithms, and unsupervised and supervised approaches. The lab is divided into five different tracks in terms of content and organization (see below in "Teaching and Learning Method") Matching procedure via matching.in.tum.de. Preliminary meeting: February 1st at 4pm at room 01.07.14 - Deregistration deadline: 15 March 2023 Application survey and slides from preliminary-meeting: https://wiki.tum.de/display/socialcomputing/NLP+Lab+Course+SS23
Links Course documents
E-Learning course (e. g. Moodle)
Additional event
TUMonline entry

Equivalent Courses (e. g. in other semesters)

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