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Rendimiento y Escalabilidad

Entrenar modelos grandes de transformadores y desplegarlos en producción presenta varios desafíos. Durante el entrenamiento, el modelo puede requerir más memoria de GPU de la disponible o mostrar una velocidad de entrenamiento lenta. En la fase de implementación, el modelo puede tener dificultades para manejar el rendimiento necesario en un entorno de producción.

Esta documentación tiene como objetivo ayudarte a superar estos desafíos y encontrar la configuración óptima para tu caso de uso. Las guías están divididas en secciones de entrenamiento e inferencia, ya que cada una presenta diferentes desafíos y soluciones. Dentro de cada sección, encontrarás guías separadas para diferentes configuraciones de hardware, como GPU única vs. multi-GPU para el entrenamiento o CPU vs. GPU para la inferencia.

Utiliza este documento como punto de partida para navegar hacia los métodos que se ajusten a tu escenario.

Entrenamiento

Entrenar modelos grandes de transformadores de manera eficiente requiere un acelerador como una GPU o TPU. El caso más común es cuando tienes una GPU única. Los métodos que puedes aplicar para mejorar la eficiencia de entrenamiento en una GPU única también se aplican a otras configuraciones, como múltiples GPU. Sin embargo, también existen técnicas específicas para entrenamiento con múltiples GPU o CPU, las cuales cubrimos en secciones separadas.

Inferencia

Realizar inferencias eficientes con modelos grandes en un entorno de producción puede ser tan desafiante como entrenarlos. En las siguientes secciones, describimos los pasos para ejecutar inferencias en CPU y configuraciones con GPU única/múltiple.

Entrenamiento e Inferencia

Aquí encontrarás técnicas, consejos y trucos que aplican tanto si estás entrenando un modelo como si estás ejecutando inferencias con él.

Contribuir

Este documento está lejos de estar completo y aún se deben agregar muchas cosas, así que si tienes adiciones o correcciones que hacer, no dudes en abrir un PR. Si no estás seguro, inicia un Issue y podemos discutir los detalles allí.

Cuando hagas contribuciones que indiquen que A es mejor que B, intenta incluir un benchmark reproducible y/o un enlace a la fuente de esa información (a menos que provenga directamente de ti).