Aprendiendo Recurrent Neural Networks (Parte 2): Dándole "memoria" a nuestra red y logrando un MAE de 10.05
En la Parte 1 de esta serie, comenzamos nuestro viaje para predecir la falla de turbinas aeroespaciales de la NASA. Logramos limpiar nuestros datos, eliminar los sensores "muertos", normalizar las lecturas y, lo más importante, aplicar el Piecewise Linear RUL topando la vida útil a 125 ciclos. Tenía
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