Calendar
12
December
Thesis defense: 3D Integration Technology and Near-Memory Computing for Edge AI
Arturo Prieto defends his thesis "3D Integration Technology and Near-Memory Computing for Edge AI".
Link to thesis in LU Research Portal.
Zoom link.
Zoom ID: 66847927874.
Higher performance through increased technology integration has focused on scaling transistor dimensions. However, the manufacturing process is increasingly expensive and faces technical challenges in the development of new breakthroughs. Evaluation of the third dimension has emerged as a promising alternative to scaling, which enables stacking of semiconductor components with 3D interconnections. Different technologies present different integration strategies, where 3D sequential integration (3DSI) enables small pitch for 3D contacts, allowing for high-integration circuits. A library of standard cells has been designed and characterized according to 3DSI, enhancing the high-integration capabilities of the technology for digital designs. This library compiles the required predefined logic cells that can be used in the design of a digital integrated circuit (IC).
The design of ICs as a foundation for edge AI is focused on enhancing memory and computing resources to improve the processing capabilities of such platforms. Computing architectures are traditionally based on the concept of von Neumann architecture, which distinguishes computing and memory units as two independent entities. However, near-memory computing (NMC) is presented as a viable alternative to the von Neumann architecture that brings computation closer to memory. NMC is non-intrusive to the conventional low-level structure of SRAM and enhances memory bandwidth for hardware acceleration. The integration of accelerators into resource-constrained platforms has been evaluated, expanding the functionality with custom hardware tailored for computation-intensive AI workloads. Furthermore, flexibility has been achieved by providing modularity to the design architecture.
The proposed architectures are evaluated by programs that highlight the performance of integrated AI hardware accelerators into edge devices, emphasizing the importance of software and hardware co-design. The contributions of this thesis focus on 3DSI technology circuit design and NMC architectures evaluating performance, energy and area efficiency.
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2025-12-12 09:15
to
14:00
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Kontakt
arturo [dot] prieto [at] eit [dot] lth [dot] se