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A.3 Conclusiones

A.3.4 Estancia de investigación

Durante la elaboración de esta tesis se ha realizado una estancia de tres meses en Plano, Texas (EEUU), colaborando con GCD RAN Ericsson y AT&TCU en la automatización del análisis de la causa de fallos.

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