Notizie
M.Sc. in Data Science
Fundamentals/Foundation of Data Science and Laboratory (FDS) , a.y. 2024-25
Google Classroom:
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The extraordinary session will be held on 11/04/2025 at Lab 16. Book your spot in Infostud. Please note that only Fuoricorso students or student workers (certified by Sapienza) may attend.
Orari di ricevimento
Wednesday, 15:00–16:00 (by appointment)
Curriculum
Indro Spinelli is an Assistant Professor (RTDA) at Sapienza University of Rome, affiliated with the PinLab research group and the ELLIS Society. He is an NVIDIA Academic Grant recipient and Principal Investigator of multiple research initiatives.
He received his Ph.D. in Information and Communication Technologies (2023) and M.Sc. in Artificial Intelligence and Robotics (2019) from Sapienza University of Rome. He was also a visiting researcher at the Arctic University of Norway and the Technical University of Munich.
Dr. Spinelli serves on the committees of top-tier AI conferences (CVPR, ICCV, ECCV, NeurIPS, ICLR), earning the NeurIPS 25 Top Reviewer Award. He is the Associate Editor for The Visual Computer and has chaired several successful workshops, including Beyond Euclidean: Hyperbolic & Hyperspherical Learning for Computer Vision (co-located with ECCV24 and ICCV25). Moreover, he is an Associate Chair for VISAPP and served as Area Chair for both ICIAP25 and NLDL25.
His research has focused on trustworthy representation learning and generative models for human-centered applications. Building on this foundation, his current work integrates AI, 3D vision, and robotics to develop photorealistic simulators from videos. His goal is to close the sim-to-real loop, improving learning, benchmarking, and natural language-based debugging. His long-term goal is to scale these methods to reconstruct entire cities from satellite videos.
Insegnamenti
| Codice insegnamento | Insegnamento | Anno | Semestre | Lingua | Corso | Codice corso | Curriculum |
|---|---|---|---|---|---|---|---|
| AAF1149 | altre conoscenze utili per l'inserimento nel mondo del lavoro | 2º | 2º | ITA | Data Science | 33519 | Curriculum unico |
| 1047224 | Fundamentals of Data Science | 1º | 1º | ENG | Data Science | 33519 | Curriculum unico |
| 1047627 | FOUNDATIONS OF DATA SCIENCE | 1º | 1º | ENG | Computer Science - Informatica | 33508 | Curriculum unico |
| 1047627 | FOUNDATIONS OF DATA SCIENCE | 2º | 1º | ENG | Computer Science - Informatica | 33508 | Curriculum unico |
| 1047627 | FOUNDATIONS OF DATA SCIENCE | 2º | 1º | ENG | Computer Science - Informatica | 33508 | Curriculum unico |
| 1047627 | FOUNDATIONS OF DATA SCIENCE | 1º | 1º | ENG | Computer Science - Informatica | 33508 | Curriculum unico |