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From model training to model raising

Publikationstyp
Journal Article
Date Issued
2026-01-28
Sprache
English
Author(s)
Aydin, Roland  
Machine Learning in Virtual Materials Design M-EXK5  
Cyron, Christian J.  
Kontinuums- und Werkstoffmechanik M-15  
Bachelor, Steve
Anderson, Ashton  
West, Robert M.  
TORE-URI
https://hdl.handle.net/11420/61513
Journal
Communications of the ACM  
Volume
69
Issue
2
Start Page
24
End Page
27
Citation
Communications of the ACM 69 (2): 24-27 (2026)
Publisher DOI
10.1145/3748645
Scopus ID
2-s2.0-105029081138
Publisher
Association for Computing Machinery
A call to reform AI model-training paradigms from post hoc alignment to intrinsic, identity-based development. Current AI training methods align models with human values only after their core capabilities have been established, resulting in models that are easily misaligned and lack deep-rooted value systems. We propose a paradigm shift from “model training” to “model raising,” in which alignment is woven into a model’s development from the start. We identify several key components for this paradigm, all centered around redesigning the training corpus: reframing training data from a first-person perspective, recontextualizing information as lived experience, simulating social interactions, and scaffolding the ordering of training data. We expect that this redesign of the training corpus will lead to an early commitment to values from the first training token onward, such that knowledge, skills, and values are intrinsically much harder to separate. In an ecosystem in which large language model capabilities start overtaking human capabilities in many tasks, this seems to us like a critical need.
DDC Class
620: Engineering
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