Cómo los datos erróneos nos alejan de la buena IA
1,439,972 views | Mainak Mazumdar • TED Salon: Dell Technologies
La economía del futuro no será construida por personas o empresas, sino por algoritmos e inteligencia artificial, explica el científico de datos Mainak Mazumdar. Pero, ¿qué sucede cuando estos algoritmos son entrenados con datos erróneos? A partir de ejemplos desde Shanghái hasta Nueva York, Mazumdar muestra cómo las datos de baja calidad conducen a que la IA tome decisiones y haga predicciones erróneas... y revela tres cambios de infraestructurales necesarios para hacer posible la IA ética.
La economía del futuro no será construida por personas o empresas, sino por algoritmos e inteligencia artificial, explica el científico de datos Mainak Mazumdar. Pero, ¿qué sucede cuando estos algoritmos son entrenados con datos erróneos? A partir de ejemplos desde Shanghái hasta Nueva York, Mazumdar muestra cómo las datos de baja calidad conducen a que la IA tome decisiones y haga predicciones erróneas... y revela tres cambios de infraestructurales necesarios para hacer posible la IA ética.
This talk was presented at a TED Salon event given in partnership with Dell Technologies. TED's editors chose to feature it for you.
Read more about TED Salons.About the speaker
Mainak Mazumdar is a leading expert of technology-led disruption in media and consumer behavior.
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This talk was presented at a TED Salon event given in partnership with Dell Technologies. TED's editors chose to feature it for you.
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