Skip to main content

Agenda Live for Open FinTech Forum: AI, Blockchain & Kubernetes on Wall Street

Join 500+ CIOs, senior technologists, and IT decision makers at Open FinTech Forum, October 10-11 in New York.

The Schedule is Now Live for Open FinTech Forum!

Join 500+ CIOs, senior technologists, and IT decision makers at Open FinTech Forum to learn the best strategies for building internal open source programs and how to leverage cutting-edge open source technologies for the financial services industry, including AI, Blockchain, Kubernetes, Cloud Native and more, to drive efficiencies and flexibility.

Featured Sessions Include:

  • Build Intelligent Applications with Azure Cognitive Service and CNTK – Bhakthi Liyanage, Bank of America
  • Smart Money Bets on Open Source Adoption in AI/ML Fintech Applications – Laila Paszti, GTC Law Group P.C.
  • Adapting Kubernetes for Machine Learning Workflows – Ania Musial & Keith Laban, Bloomberg
  • Real-World Kubernetes Use Cases in Financial Services: Lessons learned from Capital One, BlackRock and Bloomberg – Jeffrey Odom, Capital One; Michael Francis, BlackRock; Kevin Fleming, Bloomberg; Paris Pittman, Google; and Ron Miller, TechCrunch
  • Distributed Ledger Technology Deployments & Use Cases in Financial Services – Hanna Zubko, IntellectEU; Jesse Chenard, MonetaGo; Umar Farooq, JP Morgan; Julio Faura, Santander Bank; and Robert Hackett, Fortune
  • Enterprise Blockchain Adoption – Trends and Predictions – Saurabh Gupta, HfS Research
  • Why Two Sigma Contributes to Open Source – Julia Meinwald, Two Sigma
  • Three Cs to an Open Source Program Office – Justin Rackliffe, Fidelity Investments

Sign up to receive updates on Open FinTech Forum:
VIEW THE FULL SCHEDULE »

Secure your spot now.

REGISTER NOW »

Linux Foundation members and LF project members receive a 20% discount on registration pricing. FinTech CIOs and senior technologists may receive a 50% discount on registration fees.

Email events@linuxfoundation.org for discount codes.

The Linux Foundation
Follow Us