3 research outputs found

    Time series forecasting of application resource usage applying deep learning methods

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    Improving the efficiency of big cloud providers has become a very difficult task. The great quantity of workloads that are run on the cluster nodes and their wide diversity and heterogeneity extensively complicates it. One of the main issues is the divergence between the requested and the real usage of the workloads. This difference causes the nodes to not efficiently use all of their computing resources. Past works have tried to tackle this problem forecasting the future usage of the workloads and dynamically changing their allocated resources or creating/removing new replicas. However, they have failed to properly predict the correct resource usage during the high intense moments of consumption, i.e., the spikes of usage. These prediction errors can cause heavy problems of resource starvation in the cluster nodes and heavily diminish the quality of service of the cloud provider. Also, the majority of contributions use metrics that are not suited for the specific case of cloud provisioning, that do not not quantify properly the prediction error during the spikes of usage of the workloads. For this reason, in this work, I am proposing mainly two new contributions in this regard. Firstly, a new approach to forecast the future resource consumption of workloads with the help of deep learning models that has demonstrated a good performance in the specific situations of high intensive moments of resource usage. Secondly, a new evaluation that has proven to correctly quantify the quality of the predictions in traces that contain a notable number of spikes. The prior contributions can help in improving the scheduling on the cluster nodes and the good management in the task of sharing resources between multiple workloads, improving the final resource efficiency of the cloud provider

    The holistic perspective of the INCISIVE Project: artificial intelligence in screening mammography

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    Finding new ways to cost-effectively facilitate population screening and improve cancer diagnoses at an early stage supported by data-driven AI models provides unprecedented opportunities to reduce cancer related mortality. This work presents the INCISIVE project initiative towards enhancing AI solutions for health imaging by unifying, harmonizing, and securely sharing scattered cancer-related data to ensure large datasets which are critically needed to develop and evaluate trustworthy AI models. The adopted solutions of the INCISIVE project have been outlined in terms of data collection, harmonization, data sharing, and federated data storage in compliance with legal, ethical, and FAIR principles. Experiences and examples feature breast cancer data integration and mammography collection, indicating the current progress, challenges, and future directions.This research received funding mainly from the European Union鈥檚 Horizon 2020 research and innovation program under grant agreement no 952179. It was also partially funded by the Ministry of Economy, Industry, and Competitiveness of Spain under contracts PID2019-107255GB and 2017-SGR-1414.Peer ReviewedArticle signat per 30 autors/es: Ivan Lazic (1), Ferran Agullo (2), Susanna Ausso (3), Bruno Alves (4), Caroline Barelle (4), Josep Ll. Berral (2), Paschalis Bizopoulos (5), Oana Bunduc (6), Ioanna Chouvarda (7), Didier Dominguez (3), Dimitrios Filos (7), Alberto Gutierrez-Torre (2), Iman Hesso (8), Nik拧a Jakovljevi膰 (1), Reem Kayyali (8), Magdalena Kogut-Czarkowska (9), Alexandra Kosvyra (7), Antonios Lalas (5) , Maria Lavdaniti (10,11), Tatjana Loncar-Turukalo (1),Sara Martinez-Alabart (3), Nassos Michas (4,12), Shereen Nabhani-Gebara (8), Andreas Raptopoulos (6), Yiannis Roussakis (13), Evangelia Stalika (7,11), Chrysostomos Symvoulidis (6,14), Olga Tsave (7), Konstantinos Votis (5) Andreas Charalambous (15) / (1) Faculty of Technical Sciences, University of Novi Sad, 21000 Novi Sad, Serbia; (2) Barcelona Supercomputing Center, 08034 Barcelona, Spain; (3) Fundaci贸 TIC Salut Social, Ministry of Health of Catalonia, 08005 Barcelona, Spain; (4) European Dynamics, 1466 Luxembourg, Luxembourg; (5) Centre for Research and Technology Hellas, 57001 Thessaloniki, Greece; (6) Telesto IoT Solutions, London N7 7PX, UK: (7) School of Medicine, Faculty of Health Sciences, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece; (8) Department of Pharmacy, Kingston University London, London KT1 2EE, UK; (9) Timelex BV/SRL, 1000 Brussels, Belgium; (10) Nursing Department, International Hellenic University, 57400 Thessaloniki, Greece; (11) Hellenic Cancer Society, 11521 Athens, Greece; (12) European Dynamics, 15124 Athens, Greece; (13) German Oncology Center, Department of Medical Physics, Limassol 4108, Cyprus; (14) Department of Digital Systems, University of Piraeus, 18534 Piraeus, Greece; (15) Department of Nursing, Cyprus University of Technology, Limassol 3036, CyprusPostprint (published version
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