Torchmeta: A Meta-Learning library for PyTorch

14 Sep 2019Tristan DeleuTobias WürflMandana SamieiJoseph Paul CohenYoshua Bengio

The constant introduction of standardized benchmarks in the literature has helped accelerating the recent advances in meta-learning research. They offer a way to get a fair comparison between different algorithms, and the wide range of datasets available allows full control over the complexity of this evaluation... (read more)

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