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In-context MNIST learning with a gradient optimization on synthetic data

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Synthetic data is generated with a transposed CNN with a short optimization loop on a grouping function. A sequence model such as a transformer can be trained on many batches of synthetic data to instill an in-context learning algorithm which picks up on some of the visual differences in an MNIST binary classification task.

Example synthetic data: batch of randomly generated images

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In-context MNIST learning with a gradient optimization on synthetic data

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