MSc · General Background · Skills Development

Fundamentals of AI and Machine Learning
for Byzantine Studies II

Postgraduate Programme — Level 7

10 ECTS Credits
3 hrs / week
English Language
Open to Erasmus
None Prerequisites

LEARNING OUTCOMES

Upon completion, students will be able to:

1)

Select appropriate AI-assisted methods for different kinds of Byzantine research questions while recognizing when a method is unsuitable.

2)

Use simple workflows to explore textual, visual, spatial, and structured humanities data.

3)

Compare the outputs of different AI tools and document differences in reliability, coverage, bias, and failure modes.

4)

Apply basic principles of prompt design, source verification, and citation checking when using generative AI for research support tasks.

5)

Understand the foundational logic of text analysis, image analysis, spatial analysis, network thinking, and knowledge representation without duplicating the specialized technical courses.

6)

Design a transparent AI-assisted workflow including data source, method choice, tool use, verification protocol, ethical considerations, and limitations.

7)

Communicate AI-assisted research results responsibly to academic and non-specialist audiences, distinguishing evidence from interpretation and speculation.

8)

Reflect critically on legal, ethical, cultural, and epistemological issues in AI-assisted Byzantine Studies.

COURSE SYLLABUS

13 Modules

Week 01 | From AI concepts to research workflows

Recap of Course I; the research workflow from question formulation to evidence, method, verification, interpretation, and communication.

Matching research questions to data types and methods. Tool suitability, data availability, pilot testing, negative results, and when not to use AI.

Prompt design for summaries, checklists, translation triage, comparison, and brainstorming. Verification requirements and documentation of AI assistance.

What text analysis can reveal: frequency, keywords, similarity, and entity extraction as concepts. Brief demonstrations with prepared examples; detailed NLP implementation is reserved for the dedicated NLP course.

Images as data; classification, detection, similarity, and restoration as concepts. Byzantine icons, seals, coins, manuscripts, and mosaics as examples; detailed 3D/MR practice is reserved for the Mixed Reality course.

What GIS and timelines can contribute to Byzantine Studies. Places, uncertainty, movement, territories, and change over time. Full QGIS practice is reserved for the GIS course.

Persons, places, offices, texts, events, and objects as linked entities. Introductory network and knowledge-graph thinking without formal modelling requirements.

Qualitative and quantitative evaluation of AI-assisted workflows. Error typologies, false confidence, bias, missing data, domain mismatch, and scholarly usefulness.

Workflow documentation, versioning, data dictionaries, tool logs, model/tool version notes, rights statements, and transparent reporting of uncertainty.

Copyright, digitized sources, privacy, cultural sensitivity, hallucinated references, AI attribution, publication policies, and responsible use in teaching and research.

How to present AI-supported findings in papers, posters, presentations, digital outputs, and public-facing cultural heritage contexts without overclaiming.

Students design or refine an AI-assisted Byzantine Studies workflow. Peer and instructor feedback focuses on feasibility, evidence, ethics, and verification.

Presentation of capstone workflows and reflection on how students may proceed into specialized electives or thesis work.

ASSESSMENT

Student Evaluation

40%

Writtent Assignments

40%

Final Project

20%

Oral presentation and participation

Workload — ECTS Distribution

250 Hours Total

Lectures

39

Guided exercises / workshops

30

Written assignments / coursework

40

Project development (individual or group)

55

Study of bibliography and course material

40

Independent study

26

Preparation for presentation

20

Course Total

250

Recommended Bibliography

Suggested bibliography:

  • Mitchell, M. Artificial Intelligence: A Guide for Thinking Humans. Farrar, Straus and Giroux, 2019.
  • Karsdorp, F., Kestemont, M., and Riddell, A. Humanities Data Analysis: Case Studies with Python. Princeton University Press, 2021.
  • Moretti, F. Distant Reading. Verso, 2013.
  • Burdick, A., Drucker, J., Lunenfeld, P., Presner, T., and Schnapp, J. Digital_Humanities. MIT Press, 2012.
  • Drucker, J. The Digital Humanities Coursebook. Routledge, 2021.
  • Baca, M. (ed.). Introduction to Metadata. Getty Research Institute, selected chapters.
  • The Programming Historian. Selected beginner-friendly lessons on data literacy, OCR, text analysis, and digital humanities methods.
  • European Commission. Ethics Guidelines for Trustworthy AI, 2019.
  • UNESCO. Recommendation on the Ethics of Artificial Intelligence, 2021.

Related academic journals:

  • International Journal of Digital Humanities (Springer)
  • Journal on Computing and Cultural Heritage (ACM)
  • Digital Scholarship in the Humanities (Oxford University Press)
  • Journal of Open Humanities Data
  • Journal of Cultural Heritage
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