DeepMind’s Upgraded Hierarchical Perceiver Is Faster, Scales to Larger Data Without Preprocessing, and Delivers Higher Resolution and Accuracy | Synced

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/outp...

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Source: Synced | AI Technology & Industry Review

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.