Master's Theses / Projects at PGI-15

Master's Thesis: Power Law Scaling of Foundational Models using Local Learning

The goal of this Master’s thesis is to explore the power law scaling (Cherti et al. 2023) of neuromorphic algorithms and hardware by replacing conventional global backpropagation with biologically inspired local learning rules.

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The goal of this Master’s thesis is to explore the power law scaling (Cherti et al. 2023) of neuromorphic algorithms and hardware by replacing conventional global backpropagation with biologically inspired local learning rules.

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Last Modified: 15.05.2024