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Primary repository for the NLP course as part of the CogSci masters program at Aarhus University.

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Natural Language Processing - Autumn 2024

This repository contains all of the code and data related to the module Natural Language Processing taken as part of the MSc in Cognitive Science at Aarhus University.

This repository is in active development, with new material being pushed on a weekly basis. Slides will be uploaded to Brightspace after classes.

Technicalities

For the sake of convenience, I advise that everyone uses UCloud for development purposes. You can then fork this repo and pull any changes that are made on a weekly basis.

For those of you who do not wish to use UCloud, you are of course welcome to use your own machine. However, due to time constraints, we will not be providing any technical support if you choose to go this way.

If you still want to use your own machine, make sure to have at least Python 3.7 installed. Some of the code developed in the classroom will not be backwards compatible with earlier versions of Python.

Repo structure

This repository has been initialised with the following directory structure:

Column Description
classes Instructions for each of the classrooms.
syllabus Containing a markdown file with the course syllabus and readings, as well as a file listing additional resources.
nbs Will contain the solutions to assignments and classes.
data Will contain data we will use for some of the exercises.

Classroom instruction

The general structure for classroom instruction is the following: We will present you with a few exercises, which you can work on solving in class and at home. The week after, we will provide my solution to the exercise, and briefly guide you through it. We can discuss your own solutions in class too, but we will not be able to provide individualized feedback (and assignments will not be graded).

Class times

Lectures take place on Tuesday from 10-12; classroom instruction is on Thursday from 10-12. For security reasons, I'm not going to post the room numbers to Github - you can find this via your AU Timetable.

Course overview and readings

A detailed breakdown of the course structure and the associated readings can be found in the syllabus. Also, be sure to familiarize yourself with the studieordning for the course, especially in relation to examination and academic regulations.

Make sure to read the studieording first if you have any questions relating to the course organisation, exam format, and so forth.

Contact details

Your lecturer for this course will be Kenneth, Sara and Jan. If you have any problems with the course or questions that you want to ask, just get in touch.

All communication to you will be sent via Brightspace.