MSc · Special Background · Skills Development

AI as a Research Partner
in Byzantine Studies

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)

Use AI tools as bounded research support partners while maintaining scholarly responsibility

2)

Design effective prompts for source exploration, summarisation, multilingual triage, and lesson planning

3)

Locate, compare, and verify scholarly material produced or retrieved with AI tools

4)

Create AI-assisted educational resources adapted to Byzantine Studies topics

5)

Evaluate AI outputs for accuracy, bias, anachronism, and hallucinated references

6)

Apply usability and learner-experience evaluation principles to AI-supported outputs

7)

Document AI use transparently through prompt logs and source-verification notes

8)

Design and present a complete AI-assisted research or teaching workflow

COURSE SYLLABUS

13 Modules

Week 01 | AI as a Research and Teaching Partner

Introduction to AI tools as assistants in Byzantine Studies, humanities research, and education. Students map research, teaching, and communication workflows, distinguishing support from automation, and begin a reflective AI-use log.

Prompt design as a scholarly skill. Practise prompts for explanation, summarisation, comparison, classification, research-question refinement, and cautious historical interpretation, with emphasis on iteration and evidence.

Use of AI-assisted tools to locate literature, identify keywords, and navigate unfamiliar fields, compared with traditional databases. Emphasis on citation verification, fabricated references, and triangulation.

Use of AI tools for first-pass reading, argument mapping, glossary building, and translation support. Students verify outputs against original sources, especially for Byzantine Greek, Latin, and specialist terminology.

Introduction to precision, recall, hallucination, unsupported inference, and domain drift. Students apply a simple evaluation protocol to decide when AI outputs can be used, checked, or rejected.

Guest session applying the evaluation framework to AI failures in texts, images, and structured reasoning — fabricated manuscripts, iconographic errors, invented artifact details, and implausible prosopographical links.

AI-supported creation of lesson plans, learning objectives, 5E structures, rubrics, quizzes, worksheets, and explanatory texts for Byzantine history, art, archaeology, and cultural heritage.

Use of AI-supported tools for teaching slides, conference-style presentations, outreach posters, and public-facing summaries for complex Byzantine Studies content.

Introductory use of text-to-image, text-to-speech, and text-to-video tools for cultural heritage communication, focusing on historical accuracy, anachronism, copyright, and responsible labelling.

Basic usability and accessibility principles for AI-supported educational resources. Students evaluate a learning object using a SUS-inspired checklist, inclusive design criteria, and peer feedback.

Use of AI tools to refine research questions, hypotheses, interview guides, questionnaires, coding categories, and analysis plans for humanities education projects.

Students assemble a research-support dossier including research question, verified bibliography, source summaries, glossary, prompt log, and tool-use statement on a Byzantine Studies topic.

Academic integrity, disclosure of AI assistance, copyright, licensing, privacy, bias, and EU/UNESCO policy context for AI in education and research. Students draft an AI-use statement.

ASSESSMENT

Student Evaluation

40%

Writtent Assignments
Weekly practical tasks & reflections

40%

Final Project
AI-assisted research dossier

20%

Oral Presentation
Final presentation & participation

Workload — ECTS Distribution

250 Hours Total

Lectures

39

Guided lab practice with web-based AI tools

36

Weekly practical assignments

45

Study of bibliography & tool documentation

40

AI-assisted research portfolio development

55

Preparation of final presentation & report

35

Course Total

250

Recommended Bibliography

Suggested bibliography:

  • Mitchell, M. Artificial Intelligence: A Guide for Thinking Humans. Farrar, Straus and Giroux, 2019.
  • Russell, S. Human Compatible: Artificial Intelligence and the Problem of Control. Viking, 2019.
  • Kelleher, J. D. Deep Learning. MIT Press, 2019.
  • Karsdorp, F., Kestemont, M., and Riddell, A. Humanities Data Analysis: Case Studies with Python. Princeton University Press, 2021.
  • Flanders, J., and Jannidis, F. (eds.). The Shape of Data in Digital Humanities. Routledge, 2019.
  • 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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