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20.09 Introduction to the course and Digital Humanities, structure of the course | 20.09 (2h) Introduction to the course and Digital Humanities, structure of the course | ||
27.09 Introduction to the DH circle of processing and interpretation (acquisition, processing, analysis, visualisation, UX, interpretation). From data acquisition to new understandings. | 27.09 (2h) Introduction to the DH circle of processing and interpretation (acquisition, processing, analysis, visualisation, UX, interpretation). From data acquisition to new understandings. | ||
Part I : Pipelines | Part I : Pipelines | ||
04.10 Pipeline for Written documents (Printed and Handwritten). Transcription, Named Entities, Semantic modelling,Topic and Document modelling. | 04.10 (2h) Pipeline for Written documents (Printed and Handwritten). Transcription, Named Entities, Semantic modelling,Topic and Document modelling. | ||
11.10 Pipeline for Maps. Vectorization. Alignment. Homologs Points. | 11.10 (2h) Pipeline for Maps. Vectorization. Alignment. Homologs Points. | ||
18.10 Pipeline for Artworks photographs. Segmentation. Features detection. Detail search. | 18.10 (2h) Pipeline for Artworks photographs. Segmentation. Features detection. Detail search. | ||
25.10 Pipeline for 3D spaces. Photogrammety. Diachronic realignment. | 25.10 (2h) Pipeline for 3D spaces. Photogrammety. Diachronic realignment. | ||
Part II : Algorithms | Part II : Algorithms | ||
01.11 Algorithms for Document processing : Document analysis and Deep learning methods | 01.11 (2h) Algorithms for Document processing : Document analysis and Deep learning methods | ||
08.11 Algorithms for Knowledge modelling : Semantic web, ontologies, graph database, homologous points, disambiguation. | 08.11 (2h) Algorithms for Knowledge modelling : Semantic web, ontologies, graph database, homologous points, disambiguation. | ||
15.11 Algorithms for Generative models and simulation : Rule-based inference, Deep learning based generation | 15.11 (2h) Algorithms for Generative models and simulation : Rule-based inference, Deep learning based generation | ||
Part III : Platform management | Part III : Platform management | ||
22.11 Data Management : Computing infrastructure, Data Management models, Sustainability. Apps. Example of Wikipedia and Europeana. | 22.11 (2h) Data Management : Computing infrastructure, Data Management models, Sustainability. Apps. Example of Wikipedia and Europeana. | ||
29.11 User Management : Representation, Rights, Traceability, Vandalism, Motivation, Negotiation spaces | 29.11 (2h) User Management : Representation, Rights, Traceability, Vandalism, Motivation, Negotiation spaces | ||
06.12 Bot Management : Versioning. Open source repositories. | 06.12 (2h) Bot Management : Versioning. Open source repositories. | ||
13.12 Exam | 13.12 Exam |
Revision as of 21:54, 11 September 2017
Welcome to the wiki of the course Foundation of Digital Humanities (DH-405).
Contact
Professor: Frédéric Kaplan
assistants: ...
summary
This course gives an introduction to the fundamental concepts and methods of the Digital Humanities, both from a theoretical and applied point of view. The course introduces the Digital Humanities circle of processing and interpretation, from data acquisition to new understandings. The first part of the course presents the technical pipelines for digitising, analysing and modelling written documents (printed and handwritten), maps, photographs and 3d objects and environments. The second part of the course details the principles of the most important algorithms for document processing (layout analysis, deep learning methods), knowledge modelling (semantic web, ontologies, graph databases) generative models and simulation (rule-based inference, deep learning based generation). The third part of the course focuses on platform management from the points of view of data, users and bots. Students will practise the skills they learn directly analysing and interpreting Cultural Datasets from ongoing large-scale research projects (Venice Time Machine, Swiss newspaper archives).
Plan
20.09 (2h) Introduction to the course and Digital Humanities, structure of the course
27.09 (2h) Introduction to the DH circle of processing and interpretation (acquisition, processing, analysis, visualisation, UX, interpretation). From data acquisition to new understandings.
Part I : Pipelines
04.10 (2h) Pipeline for Written documents (Printed and Handwritten). Transcription, Named Entities, Semantic modelling,Topic and Document modelling.
11.10 (2h) Pipeline for Maps. Vectorization. Alignment. Homologs Points.
18.10 (2h) Pipeline for Artworks photographs. Segmentation. Features detection. Detail search.
25.10 (2h) Pipeline for 3D spaces. Photogrammety. Diachronic realignment.
Part II : Algorithms
01.11 (2h) Algorithms for Document processing : Document analysis and Deep learning methods
08.11 (2h) Algorithms for Knowledge modelling : Semantic web, ontologies, graph database, homologous points, disambiguation.
15.11 (2h) Algorithms for Generative models and simulation : Rule-based inference, Deep learning based generation
Part III : Platform management
22.11 (2h) Data Management : Computing infrastructure, Data Management models, Sustainability. Apps. Example of Wikipedia and Europeana.
29.11 (2h) User Management : Representation, Rights, Traceability, Vandalism, Motivation, Negotiation spaces
06.12 (2h) Bot Management : Versioning. Open source repositories.
13.12 Exam