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  KEYWORD

Integrating design space exploration in modern compilation toolchains

estero Tesi all'estero


Parole chiave ARTIFICIAL INTELLIGENCE, C, COMPILERS, CONVOLUTIONAL NEURAL NETWORKS, DEEP LEARNING, DEEP NEURAL NETWORKS, DESIGN SPACE EXPLORATION, EMBEDDED SYSTEMS, ENERGY EFFICIENCY, FIRMWARE, HARDWARE ACCELERATORS, LOW POWER, MICROCONTROLLERS, SOFTWARE, SOFTWARE ACCELERATION

Riferimenti DANIELE JAHIER PAGLIARI

Riferimenti esterni Alessio Burrello (Politecnico di Torino)
Marian Verhelst (KU Leuven)

Gruppi di ricerca DAUIN - GR-06 - ELECTRONIC DESIGN AUTOMATION - EDA, ELECTRONIC DESIGN AUTOMATION - EDA, GR-06 - ELECTRONIC DESIGN AUTOMATION - EDA

Tipo tesi EXPERIMENTAL, SOFTWARE DEVELOPMENT

Descrizione Modern compilers have shown great advancements in optimizing code deployment, minimizing data transfers and optimize the energy consumption of the target platform.
In the same direction, new design space exploration (DSE) tools have been created to explore the vast space of deep neural network execution and hardware accelerators for their execution. In particular, in modern solutions, there is a missing link between what DSE tools produce and what is deployable on hardware.
In this thesis, the candidate will explore two tools, ZigZag, a powerful DSE tools used for neural network loop ordering and tiling and hardware accelerators-NN schedule co-design and HTVM, a tool for compilation which exploit the open-source TVM tool, integrated with a custom plug-in to produce optimize code for heterogeneous platforms.
The goal of the candidate would be to create an interface between the two tools and allow the deployment of ZigZag produced solution, to enhance the performance of NN execution on edge devices.

Conoscenze richieste Required skills include C and python programming. Further, a basic knowledge of computer architectures and embedded systems is necessary. Desired (but not required) skills include some familiarity with basic machine/deep learning concepts and corresponding models.

Note Thesis in collaboration with Prof. Marian Verhelst’s research group at KU Leuven. The thesis can be carried out either in Torino or in Leuven, Belgium.


Scadenza validita proposta 13/06/2022      PROPONI LA TUA CANDIDATURA




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