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Main Authors: Aghayev, Tamerlan, Elkael, Maxime, Polese, Michele, Nguyen, Minh Dat, Gemmi, Gabriele, Lacava, Andrea, Saeizadeh, Ali, Prasad, Reshma, Testolina, Paolo, Feraudo, Angelo, Nanda, Soumendra, Johari, Pedram, D'Oro, Salvatore, Melodia, Tommaso
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.27360
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author Aghayev, Tamerlan
Elkael, Maxime
Polese, Michele
Nguyen, Minh Dat
Gemmi, Gabriele
Lacava, Andrea
Saeizadeh, Ali
Prasad, Reshma
Testolina, Paolo
Feraudo, Angelo
Nanda, Soumendra
Johari, Pedram
D'Oro, Salvatore
Melodia, Tommaso
author_facet Aghayev, Tamerlan
Elkael, Maxime
Polese, Michele
Nguyen, Minh Dat
Gemmi, Gabriele
Lacava, Andrea
Saeizadeh, Ali
Prasad, Reshma
Testolina, Paolo
Feraudo, Angelo
Nanda, Soumendra
Johari, Pedram
D'Oro, Salvatore
Melodia, Tommaso
contents Cellular research and development (R&D) is throttled by six structural processes that each consume months of manual engineering work per iteration: (i) synthesizing new features from standards or research papers into production code; (ii) conformance and interoperability testing; (iii) hardening against field anomalies and diverse deployment environments; (iv) data-driven optimization of network functionalities; (v) discovering and prototyping novel waveforms, functionalities, and capabilities for future standards; and (vi) securing the stack against vulnerabilities. Although Large Language Models (LLMs) have compressed comparable R&D work in general software engineering from days to minutes, their known pitfalls worsen on Radio Access Network (RAN) use cases: they hallucinate Application Programming Interfaces (APIs) and mis-read specifications, which kills interoperability of RAN components at the first mistake, and they heavily rely on simulations for designing algorithms, which is notorious for breaking when transferred to real hardware. To address these challenges, we present GENESIS, an agentic Artificial Intelligence (AI) framework that converts intents (e.g., a specification clause, a telemetry anomaly, or a research hypothesis) into solutions validated with over-the-air experiments, fed back into a persistent knowledge base. GENESIS is built on three composable primitives (agents, skills, hooks) and a knowledge layer (SYNAPSE) that doubles as the source of ground truth and the recipient of every artifact the framework produces, making capabilities compound across runs.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27360
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GENESIS: Harnessing AI Agents for Autonomous 6G RAN Synthesis, Research, and Testing
Aghayev, Tamerlan
Elkael, Maxime
Polese, Michele
Nguyen, Minh Dat
Gemmi, Gabriele
Lacava, Andrea
Saeizadeh, Ali
Prasad, Reshma
Testolina, Paolo
Feraudo, Angelo
Nanda, Soumendra
Johari, Pedram
D'Oro, Salvatore
Melodia, Tommaso
Networking and Internet Architecture
Artificial Intelligence
Cellular research and development (R&D) is throttled by six structural processes that each consume months of manual engineering work per iteration: (i) synthesizing new features from standards or research papers into production code; (ii) conformance and interoperability testing; (iii) hardening against field anomalies and diverse deployment environments; (iv) data-driven optimization of network functionalities; (v) discovering and prototyping novel waveforms, functionalities, and capabilities for future standards; and (vi) securing the stack against vulnerabilities. Although Large Language Models (LLMs) have compressed comparable R&D work in general software engineering from days to minutes, their known pitfalls worsen on Radio Access Network (RAN) use cases: they hallucinate Application Programming Interfaces (APIs) and mis-read specifications, which kills interoperability of RAN components at the first mistake, and they heavily rely on simulations for designing algorithms, which is notorious for breaking when transferred to real hardware. To address these challenges, we present GENESIS, an agentic Artificial Intelligence (AI) framework that converts intents (e.g., a specification clause, a telemetry anomaly, or a research hypothesis) into solutions validated with over-the-air experiments, fed back into a persistent knowledge base. GENESIS is built on three composable primitives (agents, skills, hooks) and a knowledge layer (SYNAPSE) that doubles as the source of ground truth and the recipient of every artifact the framework produces, making capabilities compound across runs.
title GENESIS: Harnessing AI Agents for Autonomous 6G RAN Synthesis, Research, and Testing
topic Networking and Internet Architecture
Artificial Intelligence
url https://arxiv.org/abs/2605.27360