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EpgCode for the paper "Evolved Policy Gradients"
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CrossdomainfewshotCross-Domain Few-Shot Classification via Learned Feature-Wise Transformation (ICLR 2020 spotlight)
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Openml PythonPython module to interface with OpenML
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PrompProMP: Proximal Meta-Policy Search
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MzsrMeta-Transfer Learning for Zero-Shot Super-Resolution (CVPR, 2020)
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SavnLearning to Learn how to Learn: Self-Adaptive Visual Navigation using Meta-Learning (https://arxiv.org/abs/1812.00971)
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MfrLearning Meta Face Recognition in Unseen Domains, CVPR, Oral, 2020
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KeitaMy personal toolkit for PyTorch development.
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