LEADER 02714nam 2200361 450 001 9910637699103321 005 20230830143742.0 035 $a(CKB)5720000000119632 035 $a(NjHacI)995720000000119632 035 $a(EXLCZ)995720000000119632 100 $a20230830d2022 uy 0 101 0 $aeng 135 $aur||||||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aNativeNI '22 $eproceedings of the 1st International Workshop on Native Network Intelligence : December 9, 2022, Rome, Italy /$fAlessandro Finamore, Marco Fiore, Carlee Joe-Wong 210 1$aNew York, New York :$cAssociation for Computing Machinery,$d2022. 215 $a1 online resource (38 pages) $cillustrations 311 $a1-4503-9887-1 330 $aIn recent years we witnessed a growing interest towards leveraging Artificial Intelligence (AI) tools to innovate network operations at all layers, domains and planes. Yet, if, what and where we need to integrate intelligence in networks and how to (re)design networks for the native support of AI is still largely under debate. This is due to the multi-faceted nature of the challenges behind such integration: on the one hand, network architectures must be updated to accommodate AI models and their lifecycle by design (e.g., collecting and provisioning data in real-time, balancing centralized versus distributed computing approaches, empowering low latency requirements for fast closed-loop decision-making and network function automation); on the other hand, the design of AI models shall improve to better align with the myriad of requirements of production network systems (e.g., inference latency, computational complexity, trustworthiness of AI decisions); finally, operational procedures in research must be enhanced for verifiabilty, reproducibility and real-world deployment (e.g., establishing reference datasets or sharing trained models without sacrificing model explainability, robustness or safety). Pragmatic answers to all these points are paramount to enable a transition of the current large body of literature on AI for networking from academic exercises to solutions integrated in production systems. This workshop aims to bringing together researchers from academia and industry who are committed to making AI in networks a reality. 606 $aComputer networks$vCongresses 615 0$aComputer networks 676 $a004.6 700 $aFinamore$b Alessandro$01409678 702 $aFiore$b Marco 702 $aJoe-Wong$b Carlee 801 0$bNjHacI 801 1$bNjHacl 906 $aBOOK 912 $a9910637699103321 996 $aNativeNI '22$93496730 997 $aUNINA