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Archaeological Data Science (ARCL0160)

Key information

Faculty
Faculty of Social and Historical Sciences
Teaching department
Institute of Archaeology
Credit value
15
Restrictions
Students should check with the module coordinator to ensure that they have sufficient background knowledge for this module
Timetable

Alternative credit options

There are no alternative credit options available for this module.

Description

This module introduces principles of information and data science along with its application to archaeology.

The areas covered include database management and design, handling unstructured and structured data, text retrieval and web scraping and analysis, machine and deep learning, computer vision, and broader concepts. The module is intended to provide a basic understanding in core principles and practical application on how emerging technologies and methods can be applied to archaeological problems. Python will be used to teach basic concepts in applied methods, but the techniques taught can be applied to other software languages and tools. In addition to covering the basics of computing techniques, lectures will cover how these techniques have been used in archaeology and other fields, including benefits and limitations. The module will also utilize hands on training and practicals to reinforce methods and techniques taught.

Aims and Objectives

The aim is to introduce students to key concepts in data/information science as they apply to archaeology. With increased use of technologies and increasing availability of data and data repositories, archaeologists need techniques and methods to understand how to promote their work in a modern format to other researchers and the public, while also utilizing information to make insights into archaeological problems. This includes being aware of current computational tools that are available as well as enabling students to begin to produce their own tools to solve problems of interest.

Learning Outcomes

By the end of the module, students will have:

a basic understanding of fundamentals in data management, text and web data retrieval and analysis, handling of unstructured and structured data, experience with computer vision, and awareness of machine and deep learning

and knowledge on how the variety of tools and methods apply to archaeology and other related fields

Teaching Methods

The module will be delivered via lectures and seminars, while practicals will also be used as a means to give examples of the key contents taught. The practical time will be used to create scripts, programs, and use software to address issues raised in lectures and seminars. Students will be asked to create a final research project assignment that will emphasize a more elaborate version of concepts taught in the module. All software will be open source, allowing students to use methods and technologies long after they leave ¹û¶³Ó°Ôº.

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Module deliveries for 2024/25 academic year

Intended teaching term: Term 1 ÌýÌýÌý Postgraduate (FHEQ Level 7)

Teaching and assessment

Mode of study
In person
Methods of assessment
100% Coursework
Mark scheme
Numeric Marks

Other information

Number of students on module in previous year
6
Module leader
Dr Mark Altaweel
Who to contact for more information
m.altaweel@ucl.ac.uk

Last updated

This module description was last updated on 8th April 2024.

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