Here you can find a consolidated (a.k.a. slowly updated) list of my publications. A frequently updated (and possibly noisy) list of works is available on my Google Scholar profile.
Please find below a short list of highlight publications for my recent activity.
Lomonaco, Vincenzo; Caro, Valerio De; Gallicchio, Claudio; Carta, Antonio; Sardianos, Christos; Varlamis, Iraklis; Tserpes, Konstantinos; Coppola, Massimo; Marpena, Mina; Politi, Sevasti; Schoitsch, Erwin; Bacciu, Davide AI-Toolkit: a Microservices Architecture for Low-Code Decentralized Machine Intelligence Conference Proceedings of 2023 IEEE International Conference on Acoustics, Speech and Signal Processing, 2023. Semola, Rudy; Lomonaco, Vincenzo; Bacciu, Davide Continual-Learning-as-a-Service (CLaaS): On-Demand Efficient Adaptation of Predictive Models Workshop Proc. of the 1st International Workshop on Pervasive Artificial Intelligence, 2022 IEEE World Congress on Computational Intelligence, 2022. Caro, Valerio De; Bano, Saira; Machumilane, Achilles; Gotta, Alberto; Cassará, Pietro; Carta, Antonio; Sardianos, Christos; Chronis, Christos; Varlamis, Iraklis; Tserpes, Konstantinos; Lomonaco, Vincenzo; Gallicchio, Claudio; Bacciu, Davide AI-as-a-Service Toolkit for Human-Centered Intelligence in Autonomous Driving Conference Proceedings of the 20th International Conference on Pervasive Computing and Communications (PerCom 2022), 2022.@conference{Lomonaco2023,
title = {AI-Toolkit: a Microservices Architecture for Low-Code Decentralized Machine Intelligence},
author = {Vincenzo Lomonaco and Valerio De Caro and Claudio Gallicchio and Antonio Carta and Christos Sardianos and Iraklis Varlamis and Konstantinos Tserpes and Massimo Coppola and Mina Marpena and Sevasti Politi and Erwin Schoitsch and Davide Bacciu},
year = {2023},
date = {2023-06-04},
urldate = {2023-06-04},
booktitle = {Proceedings of 2023 IEEE International Conference on Acoustics, Speech and Signal Processing},
abstract = {Artificial Intelligence and Machine Learning toolkits such as Scikit-learn, PyTorch and Tensorflow provide today a solid starting point for the rapid prototyping of R&D solutions. However, they can be hardly ported to heterogeneous decentralised hardware and real-world production environments. A common practice involves outsourcing deployment solutions to scalable cloud infrastructures such as Amazon SageMaker or Microsoft Azure. In this paper, we proposed an open-source microservices-based architecture for decentralised machine intelligence which aims at bringing R&D and deployment functionalities closer following a low-code approach. Such an approach would guarantee flexible integration of cutting-edge functionalities while preserving complete control over the deployed solutions at negligible costs and maintenance efforts.},
keywords = {},
pubstate = {published},
tppubtype = {conference}
}
@workshop{Semola2022,
title = {Continual-Learning-as-a-Service (CLaaS): On-Demand Efficient Adaptation of Predictive Models},
author = {Rudy Semola and Vincenzo Lomonaco and Davide Bacciu},
url = {https://arxiv.org/pdf/2206.06957.pdf},
year = {2022},
date = {2022-07-18},
urldate = {2022-07-18},
booktitle = {Proc. of the 1st International Workshop on Pervasive Artificial Intelligence, 2022 IEEE World Congress on Computational Intelligence},
abstract = {Predictive machine learning models nowadays are often updated in a stateless and expensive way. The two main future trends for companies that want to build machine learning-based applications and systems are real-time inference and continual updating. Unfortunately, both trends require a mature infrastructure that is hard and costly to realize on-premise. This paper defines a novel software service and model delivery infrastructure termed Continual Learning-as-a-Service (CLaaS) to address these issues. Specifically, it embraces continual machine learning and continuous integration techniques. It provides support for model updating and validation tools for data scientists without an on-premise solution and in an efficient, stateful and easy-to-use manner. Finally, this CL model service is easy to encapsulate in any machine learning infrastructure or cloud system. This paper presents the design and implementation of a CLaaS instantiation, called LiquidBrain, evaluated in two real-world scenarios. The former is a robotic object recognition setting using the CORe50 dataset while the latter is a named category and attribute prediction using the DeepFashion-C dataset in the fashion domain. Our preliminary results suggest the usability and efficiency of the Continual Learning model services and the effectiveness of the solution in addressing real-world use-cases regardless of where the computation happens in the continuum Edge-Cloud.},
howpublished = {CEUR-WS Proceedings},
keywords = {},
pubstate = {published},
tppubtype = {workshop}
}
@conference{decaro2022aiasaservice,
title = {AI-as-a-Service Toolkit for Human-Centered Intelligence in Autonomous Driving},
author = {Valerio De Caro and Saira Bano and Achilles Machumilane and Alberto Gotta and Pietro Cassará and Antonio Carta and Christos Sardianos and Christos Chronis and Iraklis Varlamis and Konstantinos Tserpes and Vincenzo Lomonaco and Claudio Gallicchio and Davide Bacciu},
url = {https://arxiv.org/pdf/2202.01645.pdf, arxiv},
year = {2022},
date = {2022-03-21},
urldate = {2022-03-21},
booktitle = {Proceedings of the 20th International Conference on Pervasive Computing and Communications (PerCom 2022)},
keywords = {},
pubstate = {published},
tppubtype = {conference}
}