Raphaël Meudec: tf explain: Interpretability for Tensorflow 2. 0, Py Data New York 2019
Deep learning models now emerge in multiple domains. The question data scientists and users always ask is Why does it work . Explaining decisions from neural networks is vital for model improvements and analysis, and users adoption. In this talk, I will explain interpretability methods implementations with TF2. 0 and introduce tfexplain, a TF2. 0 library for interpretability. PyData is an educational program of NumFOCUS, a 501(c)3 nonprofit organization in the United States. PyData provi
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