Feb. 24, 2022, 5:55 p.m. | Synced

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DeepMind researchers propose Hierarchical Perceiver (HiP), a model that retains the original Perceiver’s ability to process arbitrary modalities but is faster, can scale up to even more inputs/outputs, reduces the need for input engineering, and improves both efficiency and accuracy on classical computer vision benchmarks.


The post DeepMind’s Upgraded Hierarchical Perceiver Is Faster, Scales to Larger Data Without Preprocessing, and Delivers Higher Resolution and Accuracy first appeared on Synced.

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