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07.11 (2h) Machine vision tutorial (Sofia). Introduction to Anaconda, Jupyter, TensorFlow. Deep learning in practice. | 07.11 (2h) Machine vision tutorial (Sofia). Introduction to Anaconda, Jupyter, TensorFlow. Deep learning in practice. | ||
==== Week 9 : | ==== Week 9 : Project ==== | ||
13.11 (2h) | 13.11 (2h) '''Midterm presentation''' (10%) | ||
14.11 (4h) | 14.11 (4h) Presentation of [[3D modelisations|3D models]], Project development | ||
==== Week 10 : | ==== Week 10 : Knowledge modelling ==== | ||
20.11 (2h) The beauty of Knowledge modelling. Tables. Databases. Semantic web, Ontologies, URI, RDF, CIDOC-CRM, How to code event, places and influence. Metaknowledge | |||
21.11 (4h) (a) Exercise in semantic modelling and inference (Maud). Graph writing. Presentation of some interesting ontologies: SKOS, VIAF, Geonames, TGN, W3C Time Ontology. SPARQL and SPARQL endpoint. Exercice on SPARQL endpoints: DBPedia [http://dbpedia.org/sparql], Talk of Europe [http://linkedpolitics.ops.few.vu.nl/yasgui/index.html], Persée [http://data.persee.fr/explorer/ ], Le Temps ARchive [http://iccluster052.iccluster.epfl.ch:8899/sparql]. (b) Work on project, preparation of presentation | |||
-- Project plan and milestones deliverable on the Wikipage of each project (10%) | |||
=== Part III : Platform management === | === Part III : Platform management === |
Revision as of 12:23, 12 September 2019
Welcome to the wiki of the course Foundation of Digital Humanities (DH-405).
Contact
Professor: Frédéric Kaplan
Assistant: Raphael Barman
Rooms: Wednesday () and Thursday ()
Links
- Time Machine Conference 2018
- Moodle
- Framapad
- Wiki Syntax
- Gallica
- Feature matching tutorial
- Feature matching code
- 3D modelisations
- Projects
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 and services. 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 in particular deep learning approaches (for document analysis and image generation) and knowledge modelling (semantic web, ontologies, graph databases). 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 by engaging in a class-wide collective project.
Plan
Introduction
Week 1 : Structural tensions in Digital Humanities
18.09 (2h) Introduction to the course and Digital Humanities, structure of the course. Introduction to Framapad with a simple exercise. Principle of collective note talking and use in the course. State of the Digital Humanities at EPFL, in Switzerland and in Europe. Structuring tensions 1: Digital Humanities, Digital Studies, Humanities Computing and Studies about Digital Culture. Digital Humanism vs. Digital Humanities. Why digital methods tend to dissolve traditional disciplinary frontiers. A focus on practice. Translation issues.
20.09 (2h) (a) Structuring tensions 2: Big Data Digital Humanities vs Small Data Digital Humanities. The 3 circles. Exercise on relationship between elements in Digital Culture schema. (2h) Practical session: Introduction to MediaWiki. Objective: Learning the basic syntax of MediaWiki. Get a first experience of collaborative editing. Learning to write from a neutral point of view. Creation of a Wikipedia page on the concepts of Linguistic Capitalism, Big data of the past, Crowdsifting and Thick mapping
Week 2 :DH Circle and Hyperdocuments
25.09 (1h) Introduction to the DH circle linking the digitisation of sources, their processing, their analysis, visualisation and the creation of societal value (insight, culture) leading ultimately to the digitisation of new sources. Presentation of some sustainable DH circles (genealogy, image banks). Patrimonial capitalism and the risk of monopolistic companies. Parallelism with the race for sequencing the Human Genome. Introduction to the TIme Machine and mutualised infrastructure approach. (1h) General presentation of the Time Machine pipeline at the Datasquare / ArtLab pavillon.
26.09 (2h) Introduction to Hyperdocuments. Dimension of a document. Intellectual technologies. Conversion of dimensions (2h) Introduction to the the Digitization Process and Pipelines Exercise on Book Scanners typologies. Document digitisation as a problem of conversion of dimensions. Digitisation is logistic optimization. Alienation. Digitisation on demand. Fedorov's notion of optimal experiment.
Part I : Pipelines
Week 3: Documents pipeline
02.10 (2h) (TBD)
03.10 (2h) Pipeline for Written documents. Part I: Standards. Open Annotation Data Model. Shared Canvas. Part 2: Regulated Representations. DHCanvas. (2h) Presentation of the Projects. Research of 5 maps of maps series. Formation of the groups
Week 4: Project bootstrapping
09.10 (2h) -
10.10 (4h) -
Week 5: Artworks Pipeline
16.10 (2h) Pipeline for Artworks photographs. Image banks and phototarchives. Scanning techniques for photographs. Segmentation. Visual similarity vs visual connections.
17.10 (4h) Introduction to deep learning approaches. Exercises with the Replica database and search engine. 5 mn presentation. Work on projects.
Week 6: Maps Pipeline
23.10 (2h) What are cartographic documents. Exercice on ancient maps. History of cartography. Odometry. Triangulation. Coordinate systems. Metric systems. Projection. Cadaster. Aerial photography. Introduction to GIS. Points, Lines, Polygons. Coordinate Sytems.
24.10 (2h) Work on project. Creation of wiki page per group with the map chosen, the element that will be extracted and how they will be reintegrated in another information system (dedicated website or existing platform) (2h) Presentation of the approach chosen by group (ungraded)
Week 7: 3D Pipeline
30.10 (2h) Pipeline for 3D spaces. Modelling vs Sampling : Part I : Modelling. Photogrammety. Demo Sketchup. Model-based Procedural methods. Architectural grammars. Class I and Class II elements. The question of realism.
31.10 (4h) Part II : Sampling. Photogrammetric tutorial (Nils)
Part II : Algorithms
Week 8 : Deep Learning algorithms
06.11 (2h) A panorama of Deep learning methods. Successes. Fundamental principles. Neurons. Receptive Fields. Hierarchical representation / texture. Gradient descent. Credit Assignment Path. Most important architectures. Convolutional neural networks. Recurrent neural networks. Siamese Networks. Word2Vec. Generative Adversarial Networks. Style Transfer. Importance of Deep learning for Digital Humanities. Can Deep Learning networks and Big Data of the Past lead to new forms of Artificial Intelligence ? Machine vision tutorial (Benoit, Sofia). Introduction to Anaconda, Jupyter, TensorFlow. Deep learning in practice.
07.11 (2h) Machine vision tutorial (Sofia). Introduction to Anaconda, Jupyter, TensorFlow. Deep learning in practice.
Week 9 : Project
13.11 (2h) Midterm presentation (10%)
14.11 (4h) Presentation of 3D models, Project development
Week 10 : Knowledge modelling
20.11 (2h) The beauty of Knowledge modelling. Tables. Databases. Semantic web, Ontologies, URI, RDF, CIDOC-CRM, How to code event, places and influence. Metaknowledge
21.11 (4h) (a) Exercise in semantic modelling and inference (Maud). Graph writing. Presentation of some interesting ontologies: SKOS, VIAF, Geonames, TGN, W3C Time Ontology. SPARQL and SPARQL endpoint. Exercice on SPARQL endpoints: DBPedia [1], Talk of Europe [2], Persée [3], Le Temps ARchive [4]. (b) Work on project, preparation of presentation
-- Project plan and milestones deliverable on the Wikipage of each project (10%)
Part III : Platform management
Week 11 : Data Management
27.11 (2h) Work on project
28.11 (4h) Data Management : FAIR principle, Creative Commons, Data Management models, Sustainability, Right to Forgotten. Management of uncertainty, incoherence and errors. Iconographic principle of precaution (2h) Work on project (2h)
Week 12 : User Management
04.12 (2h) User Management : Part I: Persona. Part II: Motivation and onboarding dynamics. Three case studies: Twitter. Quora. Wikipedia. Part III: "Wisdom" of the crowds. Collectivism vs Liberalism. Open source as a form of liberalism for engineering. The ambiguous of fork. Part IV: The "power" of the crowds. Mechanical Turk. Crowdflower. Crowdfunding
05.12 (4h) Bot Management : Three case studies on bot management : Twitter, Wikipedia, Google. (2) Work on project (2)
Week 13 : Work on projects
11.12 (2h) Work on project
12.12 (4h) work on project
Week 14 : Exam
18.12 (2h) Report writing
19.12 (4h) work on project
-- Deadline for GitHub repository (10%)
-- Deadline for Report writing (40%)
18.12 (2h) Final project presentation (20%)
19.12 (2h) ----
References
Assessment and Notation grid
- 2 oral presentations (30%)
- 1 midterm presentation of the project (10%)
- 1 final discussing the project result (20%)
- Written deliverables (Wiki writing) (40%)
- Quality of the project (30%)
2 collective oral presentations (30%)
Midterm presenting the project planning (10%)
Notation grid :
- The presentation contains a planning (4)
- + 0.5 The slides are clear and well presented
- + 0.5 The oral presentation is dynamic and fluid
- + 0.5 The planning is realistic.
- + 0.5 The students answer well to the questions
Final discussing the project result (20%)
10-15' for presentation and 5-10' for questions
Notation grid :
- The presentation presents the results of the project (4)
- + 0.5 The slides are clear and well presented
- + 0.5 The oral presentation is dynamic and fluid
- + 0.5 The results are well discussed
- + 0.5 The students answer well to the questions
Written deliverables (Wiki writing) (40%)
- Projet plan and milestones (10%) (>300 words)
- Historical introduction to the map (5%) (>200 words)
- Detailed description of the methods (10%) (>500 words)
- Quality assessment (10%) (>300 words)
- Motivation and description of the website (5%) (>200 words)
Production (30%)
- Quality of the realisation 20%
- Code deliverable on github 10%