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#1 Perceiver IO: A General Architecture for Structured Inputs & Outputs [PDF] [Copy] [Kimi1]

Authors: Andrew Jaegle ; Sebastian Borgeaud ; Jean-Baptiste Alayrac ; Carl Doersch ; Catalin Ionescu ; Fengning Ding ; Skanda Koppula ; Daniel Zoran ; Andrew Brock ; Evan Shelhamer ; Olivier Henaff ; Matthew Botvinick ; Andrew Zisserman ; Oriol Vinyals ; Joao Carreira

A central goal of machine learning is the development of systems that can solve many problems in as many data domains as possible. Current architectures, however, cannot be applied beyond a small set of stereotyped settings, as they bake in domain & task assumptions or scale poorly to large inputs or outputs. In this work, we propose Perceiver IO, a general-purpose architecture that handles data from arbitrary settings while scaling linearly with the size of inputs and outputs. Our model augments the Perceiver with a flexible querying mechanism that enables outputs of various sizes and semantics, doing away with the need for task-specific architecture engineering. The same architecture achieves strong results on tasks spanning natural language and visual understanding, multi-task and multi-modal reasoning, and StarCraft II. As highlights, Perceiver IO outperforms a Transformer-based BERT baseline on the GLUE language benchmark despite removing input tokenization and achieves state-of-the-art performance on Sintel optical flow estimation with no explicit mechanisms for multiscale correspondence.