Sort by
Refine Your Search
-
Employer
-
Field
-
Symbolic AI, Neuro-Symbolic AI, Agentic AI, Neural Networks for code vulnerability detection (Senanayake et al. 2024), SBOM tools, prompt vulnerability detectors, and static/dynamic analysis tools could
-
Energy Storage Technologies RESTORATIVE is a pioneering Marie Skłodowska-Curie Actions (MSCA) Doctoral Network dedicated to accelerating the green transition through Thermo-Mechanical Grid-Scale Energy
-
within a Research Infrastructure? No Offer Description Neural networks are known to be universal approximants for any function in an arbitrary number of variables. This property has been exploited in
-
collaborative IoT scenarios; ii) strategies for efficient and adaptive learning on-device or across a network of heterogeneous nodes while minimizing energy consumption and bandwidth usage; iii) investigating how
-
of offers available1Company/InstituteFondazione Bruno KesslerCountryItalyGeofield Contact State/Province Trento City Trento Website https://www.fbk.eu/it/ Street Via Santa Croce 77 Postal Code 38122 STATUS
-
methods, complemented by simulations of beta-decay chains relevant to post-fission energy release. Neural networks and other machine learning techniques will accelerate the discovery of radiation-resistant
-
/InstituteUniversità degli Studi di Firenze - University of Florence (UNIFI)CountryEuropean UnionGeofield Contact City Firenze Website http://www.unifi.it Street Piazza San Marco 4 Postal Code 50121 STATUS: EXPIRED X
-
Skłodowska-Curie Actions Doctoral Network. The project brings together leading universities, research centers, and industry partners to pioneer next-generation electrified chemical processes. At its core
-
Agency under action HORIZON MSCA Doctoral Networks. Supervisor: Angelo Giuseppe Landi, Politecnico di Milano - IT (academics) Co-Supervisor: Chiara Bertolin, NTNU (academics) Mentor: Chiara Bondioni, Musei
-
/InstituteInternational Centre for Genetic Engineering and BiotechnologyCountryItalyCityTriesteGeofield Contact City Pisa Website https://www.biologia.unipi.it/ Street Via Ghini, 13 Postal Code 56123 E-Mail amministrazione