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Enterprise AI in the Energy Sector: Schlumberger presents an enterprise solution

In a dynamic industry, large enterprises must remain nimble to stay competitive. What does this look like in the real world? Schlumberger presents its experience of integrating cognitive technology into its DELFI cognitive E&P environment, to enable enterprise-scale artificial intelligence (AI) solutions, with cross-profile collaboration for both coders and clickers across the organization, to become an industry leader in AI.
Recorded Apr 21 2020 58 mins
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Presented by
Morten Jensen, Global Digital Innovation at Schlumberger - Christina Hsiao, Technical Evangelist at Dataiku
Presentation preview: Enterprise AI in the Energy Sector: Schlumberger presents an enterprise solution

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Your Path to Enterprise AI
Dataiku is the centralized data platform that moves businesses along their data journey from analytics at scale to enterprise AI. By providing a common ground for data experts and explorers, a repository of best practices, shortcuts to machine learning and AI deployment/management, and a centralized, controlled environment, Dataiku is the catalyst for data-powered companies.

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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  • Title: Enterprise AI in the Energy Sector: Schlumberger presents an enterprise solution
  • Live at: Apr 21 2020 4:00 pm
  • Presented by: Morten Jensen, Global Digital Innovation at Schlumberger - Christina Hsiao, Technical Evangelist at Dataiku
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