This article explores the Artificial Turn in European migration governance, where artificial intelligence, digital infrastructures, and dual-use technologies redefine the legal and epistemic boundaries of asylum and border control. Drawing on the aftermath of the 2015 migration crisis and the 2024 New Pact on Migration and Asylum, it examines how algorithmic systems and data extraction practices - particularly those targeting migrants’ biometric and digital data -reshape notions of “safe countries of origin” and transform the relationship between protection and surveillance. Through a pilot comparative study involving GPT-5 and Chat DeepSeek-R1, this paper illustrates how AI systems reproduce inconsistencies and normative ambiguities when classifying countries as “safe” thereby challenging human rights standards and the principle of non-refoulement. The analysis reveals how dual-use technologies blur the boundary between humanitarianism and security, accelerating the automation of credibility and identity assessments while eroding procedural safeguards. The paper calls for a human-rights-based approach to AI deployment at borders—grounded in transparency, judicial oversight, and interpretative accountability—to ensure that the governance of migration in the digital age and datafication process remains faithful to the rule of law and human dignity.

Artificial Turn Migrations and Asylum at the Encounter with Safe Countries of Origin in The Ontologies of Borders and the Epistemologies of Control / M. Buffa. - In: CALUMET. - ISSN 2465-0145. - 2025:23(2025), pp. 230-253.

Artificial Turn Migrations and Asylum at the Encounter with Safe Countries of Origin in The Ontologies of Borders and the Epistemologies of Control

M. Buffa
Primo
2025

Abstract

This article explores the Artificial Turn in European migration governance, where artificial intelligence, digital infrastructures, and dual-use technologies redefine the legal and epistemic boundaries of asylum and border control. Drawing on the aftermath of the 2015 migration crisis and the 2024 New Pact on Migration and Asylum, it examines how algorithmic systems and data extraction practices - particularly those targeting migrants’ biometric and digital data -reshape notions of “safe countries of origin” and transform the relationship between protection and surveillance. Through a pilot comparative study involving GPT-5 and Chat DeepSeek-R1, this paper illustrates how AI systems reproduce inconsistencies and normative ambiguities when classifying countries as “safe” thereby challenging human rights standards and the principle of non-refoulement. The analysis reveals how dual-use technologies blur the boundary between humanitarianism and security, accelerating the automation of credibility and identity assessments while eroding procedural safeguards. The paper calls for a human-rights-based approach to AI deployment at borders—grounded in transparency, judicial oversight, and interpretative accountability—to ensure that the governance of migration in the digital age and datafication process remains faithful to the rule of law and human dignity.
No
English
Artificial Intelligence; Migration Governance; Safe Countries of Origin; Dual-Use Technologies; Human Rights; Non-Refoulement; Data Extraction; Digital Borders; Surveillance Infrastructures, GPT-5; Chat-DeepSeek-R1
Settore GIUR-17/A - Filosofia del diritto
Settore GSPS-07/B - Sociologia del diritto e della devianza
Articolo
Esperti anonimi
Ricerca applicata
Pubblicazione scientifica
   SEcurity and RIghts in the CyberSpace (SERICS)
   SERICS
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   codice identificativo PE00000014
2025
CALUMET
2025
23
230
253
24
Pubblicato
Periodico con rilevanza internazionale
https://calumet-review.com/index.php/category/issues/23-2-sem-2025/
manual
Aderisco
info:eu-repo/semantics/article
Artificial Turn Migrations and Asylum at the Encounter with Safe Countries of Origin in The Ontologies of Borders and the Epistemologies of Control / M. Buffa. - In: CALUMET. - ISSN 2465-0145. - 2025:23(2025), pp. 230-253.
open
Prodotti della ricerca::01 - Articolo su periodico
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262
Article (author)
Periodico senza Impact Factor
M. Buffa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1192197
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