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Auto-ML : qu’est-ce que c’est et comment en tirer parti ?

Dataiku vous propose un webinar sur le thème de l'Automated Machine Learning. L'AutoML a en effet été très utilisé en 2019, et reste un sujet incontournable à aborder par les entreprises en 2020 afin d'intensifier les efforts de l'IA. En effet, l'AutoML permet aux entreprises d'économiser énormément de temps et de ressources.

Ce webinar abordera :

- Ce qu'est exactement l'AutoML (et ce qu'elle n'est pas).
- Pourquoi les entreprises ont besoin d'AutoML pour réussir dans la course à l'IA.
- Quels sont les meilleurs cas d'utilisation d'AutoML et comment en tirer le meilleur bénéfice.

Dataiku vous accompagne à travers ce webinar, afin que vous puissiez découvrir pourquoi et comment l'automatisation du Machine Learning devient de plus en plus un élément clé du succès de l'IA.
Recorded Apr 2 2020 26 mins
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Presented by
Nicolas Omont, Product Manager, Dataiku
Presentation preview: Auto-ML : qu’est-ce que c’est et comment en tirer parti ?

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    En vous inscrivant à ce webinaire, vous acceptez que vos informations soient partagées avec le partenaire de Dataiku, Avisia.
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Customers like Unilever, GE, BNP Paribas, Santander use Dataiku to ensure they are moving quickly and growing exponentially along with the amount of data they’re collecting. By removing roadblocks, Dataiku ensures more opportunity for business-impacting models and creative solutions, allowing teams to work faster and smarter.

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  • Presented by: Nicolas Omont, Product Manager, Dataiku
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