Conference Agenda

Overview and details of the sessions of this conference. Please select a date or location to show only sessions at that day or location. Please select a single session for detailed view (with abstracts and downloads if available).

Please note that all times are shown in the time zone of the conference. The current conference time is: 14th June 2025, 06:31:08pm WEST

 
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Session Overview
Session
Keynote: Automating the past: Artificial Intelligence and the next frontiers of Digital History. Javier Cha (The University of Hong Kong)
Time:
Tuesday, 15/July/2025:
6:15pm - 7:00pm

Location: Aud B1 (TB)

182 places

Session Abstract

This keynote explores the impact that transformer-based machine learning brings to the interpretive work of historians. As historians increasingly encounter vast amounts of digitized and born-digital sources, the challenge has shifted to developing strategies for making sense of large, complex collections with the nuance that historical inquiry demands. The discussion begins with an earlier phase of my research, which aimed to engage in digitally mediated multiscale exploration (“digital (re)reading”) through graph queries and data reuse. Using structured and relatively unambiguous sources, such as biographical data modeled in Neo4j, this phase underscored the potential of digital historical research to uncover latent structures and reveal surprising connections in a manner that preserves the historian’s interpretive agency.

Building on this foundation, I then turn to the present, where my team and I are focused on leveraging large language models (LLMs) and vision-language models (VLMs) to assist with “algorithmic reading” across heterogeneous and semantically complex corpora. This next phase of inquiry explores the affordances of LLMs and VLMs for conducting semantic, stylistic, sentiment, and multimodal analysis, moving decisively beyond the limitations of keyword-based search and frequentist approaches. Whereas the earlier digital macroscopes allowed users to zoom in and out of structured datasets, transformers enable engagement with more affectively and rhetorically rich sources, such as memorials, petitions, contracts, philosophical treatises, ritual guidelines, and poetry.

Finally, I introduce the modular artificial intelligence (AI) framework developed in the DeepPast project, which promotes the use of pluggable, task-specific components running on low-power hardware rather than a hyperscale, monolithic, general-purpose system. The DeepPast architecture supports varying interpretive modes in a flexible environment where the historian purposefully engages in conversation with an AI assistant and research partner—one capable of offering critique, reframing questions, and proposing alternative perspectives. The lecture concludes with a set of guiding principles designed not only to keep the human in the loop but also to produce AI-assisted historical research marked by greater interpretive sophistication.




 
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