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Abstract
In this report, we compare the performance of our UltraGroth-based
zero-knowledge machine learning framework Bionetta to other tools of similar
purpose such as EZKL, Lagrange's deep-prove, or zkml. The results show a
significant boost in the proving time for custom-crafted neural networks: they
can be proven even on mobile devices, enabling numerous client-side proving
applications. While our scheme increases the cost of one-time preprocessing
steps, such as circuit compilation and generating trusted setup, our approach
is, to the best of our knowledge, the only one that is deployable on the native
EVM smart contracts without overwhelming proof size and verification overheads.