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AI in Finance: The Current Landscape, What the Future Holds, the Role of Fintech

Enterprise AI is at peak hype, yet AI has yet to fundamentally change most businesses - BFSI market is no exception.

Fintech has swept in and remains on the cutting-edge of the AI and the finance spaces simultaneously, offering tough competition for those savvy enough to try and catch up. Yet there are some success stories beginning to emerge in large, traditional organizations (outside the fintech space) with learnings and takeaways for others ready to dive in.

Specifically, this webinar will cover:

- What fintechs bring to the table that makes them successful.
- Recent use cases and successes in AI by traditional financial institutions.
- What, on a wider level, has proved successful for traditional players and how it can be leveraged by your organization.
Recorded Dec 12 2019 56 mins
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Presented by
Alexandre Hubert, Lead Data Scientist at Dataiku
Presentation preview: AI in Finance: The Current Landscape, What the Future Holds, the Role of Fintech

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Dataiku
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: AI in Finance: The Current Landscape, What the Future Holds, the Role of Fintech
  • Live at: Dec 12 2019 2:00 pm
  • Presented by: Alexandre Hubert, Lead Data Scientist at Dataiku
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