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dc.description.abstract | The transition to 6G presents many barriers to be
overcome, as well as opportunities for innovation. The integration
of Network Intelligence (NI) is pivotal in optimizing network
performance, enhancing security, and improving resource allo-
cation. The ORIGAMI project identifies 8 critical barriers to 6G
deployment and proposes both architectural and NI innovations
to overcome them. This paper discusses the standardization
potential of such innovations, which respond to 10 different use
cases, each with diverse necessity and impact on the associated
components, and across multiple network domains. We present in
detail three key architectural innovations, namely the Compute
Continuum Layer (CCL), the Zero Trust Layer (ZTL), and
the Global Service-Based Architecture (GSBA), are leveraged to
ensure dynamic adaptation and zero-trust business models; we
then discuss two representative NI innovations targeting energy
efficiency and infrastructure management. Overall, this paper
shows how ORIGAMI’s comprehensive approach to innovation
aligns with and impacts ongoing standardization efforts. | es |