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The ARTEMIS project
ENThis resource introduces the pillar concepts of the ARTEMIS project: the Heritage Digital Twin (HDT), the ARTEMIS ontology, the Knowledge Base (KB) and the Reactive Heritage Digital twin (RHDT).Retrieving Context, Re-centring Interpretation: AI Hermeneutics and the Democratisation of Reading
ENIn digital humanities, retrieval technologies have always mediated how we read, from concordances to search engines. This talk introduces AI hermeneutics, an approach that treats retrieval-augmented generation (RAG) not as automation but as interpretive infrastructure, opening up an opportunity to integrate AI into the existing reading experience.Digitization in Heritage: for conservation, risk prevention and simulation
ENThis resource discusses the risks that cultural heritage faces at the moments and the needs that digital technologies must meet to prevent those risks. The course presents frameworks, guidelines and policies that surround heritage risk management and best practices.Heritage Digital Twins: A Semantic Approach to Cultural Knowledge
ENThis resource explores how a digital twin can represent, connect, and reason about entities of the real world through structured knowledge. It defines a semantically grounded approach to knowledge integration, management, and reasoning in the Cultural Heritage domain.Semantic and Interoperable Digital Models: Enabling the Reactive Heritage Digital Twin Framework
ENThis resource is an introduction to building semantic and interoperable digital models for Reactive Heritage Digital Twins (RHDTs). It show how the respective ontology and CIDOC-CRM aligned modules enable interoperability across domains and support reasoning within the ARTEMIS Knowledge Base.Fostering Data Sharing in the Humanities with Open-source software
ENIncentives and advocacy of open science principles have spread for more than two decades in the social sciences and humanities. In this presentation, taking archaeology as a case study, the underlying principles of the “archeoViz” ecosystem will be presented and illustrated, to fuel a more general discussion about the advocacy of open science principles in the social sciences and humanities.Introduction to Linked Open Data
ENThis resource provides an introduction to Linked Open Data and SPARQL. It explains how LOD is used to publish structured data on the web and basic concepts like RDF, ontologies and using URIs. Practical exercises using SPARQL queries and SPARQL endpoints in the SPARQL playground and the CLSCor Catalogue complete the course.Introduction to Network Analysis in the Humanities
ENThis online workshop is organised within the framework of the Computational Literary Studies Infrastructure (CLS INFRA) project. The event introduces the fundamentals of network analysis for humanities scholars, combining historical and literary case studies with hands-on practice. Participants will explore networks of literary characters, letter correspondence, and historical actors, and learn to visualise and interpret these structures using accessible tools like Gephi and EzLinaVis.Born-Digital Research in the Humanities Course
ENBorn-digital culture refers to materials, environments and practices that originate in a digital form. In the 21st century these have rapidly expanded, with many of our contemporary cultural practices increasingly mediated in some way by digital media and technologies. In this course, designed by the Digital Humanities Research Hub at the School of Advanced Study, University of London, you will explore key concepts associated with digital culture and archives, ethical issues, and how to collect and analyse born-digital materials.Digital Approaches to Textual Analysis Course
ENThis free online course provides a practical introduction to working with digital texts and applying some of the tools available to digitise and interrogate them. It will help you to decide whether to use digital approaches to textual analysis and to select the correct tools for your research project.R you Ready? Data analysis in R
ENUsing the reader survey R package LitRiddle, this resource offers a gentle introduction to tabular data analysis in Rstudio. Following along the code examples, students will learn about Rstudio, Markdown files, and how to explore, analyse and transform quantitative data in R.Thinking With Machines: How Academics Can Use Generative AI Thoughtfully and Ethically
ENThe emergence of ChatGPT and other generative AI tools presents both opportunities and challenges for academia. While these technologies offer powerful capabilities to support scholarship, their thoughtless adoption could undermine the very foundations of academic work. This talk from Dr. Mark Carrigan, presented as part of the DARIAH Friday Frontiers webinar series, introduces a framework for incorporating generative AI into academic practice in ways that enhance rather than replace human thought.Performing Arts Studies and Digital Humanities
ENWhat connects analysing the creative process of a performance using 20,000 collected digital documents, reconstructing an artist's career from programme data, and preserving a touring show? Following a state-of-the-art review of research in performing arts and digital humanities (literature, history, and representation analysis), this Friday Frontiers webinar addresses current challenges, including data modelling, multimodal analysis, and artificial intelligence.When Applied and Critical Digital Humanities Meets Democracy: the KT4D Project
ENThis webinar from Prof. Jennifer Edmond and Dr. Eleonora Lima at Trinity College Dublin discusses the Knowledge Technologies for Democracy (KT4D) project and its investigation into how democracy and civic participation can be better facilitated in the face of rapidly changing knowledge technologies, namely Artificial Intelligence (AI) and Big Data.Visualising Knowledge: 3D Digital Editions and Their Scholarly Potential
ENScholarship in three dimensions can transcend the limitations of traditional two-dimensional representations of objects that exist in the physical world in three dimensions. This presentation showcases the scholarly potential of 3D digital scholarly editions, advocating for their adoption as a new tool in the DH toolkit for new formats for the dissemination and interrogation of knowledge.ExploreCor - Using Programmable Corpora in Computational Literary Studies
ENThis three-day training school organised by the CLS INFRA project focused on dynamic collections of literary texts manipulated programmatically. Learners will learn to find, evaluate, and select corpora using tools like CLSCor and DraCor, and gain skills in Python, Jupyter Notebooks, API querying, Linked Open Data, and Digital Literary Network Analysis. The training addresses reproducibility using Docker, promoting transparent, replicable research in Computational Literary Studies.Automatic Text Recognition Made Easy
ENExplore this curriculum on Automatic Text Recognition (ATR) and learn how to efficiently extract full text from heritage material images. Perfectly tailored for researchers, librarians, and archivists, these resources not only enhance your archival research and preservation efforts but also unlock the potential for computational analysis of your sources.Gold, Green, Diamond: What You Should Know About Open Access Publishing Models
ENThis tutorial examines the evolution of Open Access by tracing its historical developments and unpacking the terminology and concepts that continue to shape the movement.Analyzing Multilingual French and Russian Text using NLTK, spaCy, and Stanza
ENThis lesson covers tokenization, part-of-speech tagging, and lemmatization, as well as automatic language detection, for non-English and multilingual text. You'll learn how to use the Python packages NLTK, spaCy, and Stanza to analyze a multilingual Russian and French text.Facial Recognition in Historical Photographs with Artificial Intelligence in Python
ENIn this lesson, you'll learn computer vision and machine learning principles for object recognition, and how to apply these principles using Python to recognize and classify smiling faces in historical photographs.Text Mining YouTube Comment Data with Wordfish in R
ENIn this lesson, you will learn how to download YouTube video comments and use the R programming language to analyze the dataset with Wordfish, an algorithm designed to identify opposing ideological perspectives within a corpus.Automatic Text Recognition (ATR) - End Formats and Reusability
ENIncrease the visibility of your ATR output while fostering Open Science.Automatic Text Recognition (ATR) - Layout Analysis
ENDiscover the subtleties of region and line segmentation and learn about the purpose of layout analysis for Automatic Text Recognition!Automatic Text Recognition (ATR) - Text Recognition and Post-ATR Correction
ENDive into the fine-tuning of Automatic Text Recognition outputs!