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arxiv:2112.10638

Latte: Cross-framework Python Package for Evaluation of Latent-Based Generative Models

Published on Dec 20, 2021

Abstract

Latte evaluates latent-based generative models in disentanglement learning and controllable generation with framework-agnostic, reproducible metrics.

AI-generated summary

Latte (for LATent Tensor Evaluation) is a Python library for evaluation of latent-based generative models in the fields of disentanglement learning and controllable generation. Latte is compatible with both PyTorch and TensorFlow/Keras, and provides both functional and modular APIs that can be easily extended to support other deep learning frameworks. Using NumPy-based and framework-agnostic implementation, Latte ensures reproducible, consistent, and deterministic metric calculations regardless of the deep learning framework of choice.

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