How to Turn Open Finance Data into Digital ID Credentials and Connect IAM Silos [Live Event]

The way organizations handle digital identity is rapidly evolving and nowhere is this more visible than in Brazil’s booming Open Finance and Open Insurance ecosystems.

To explore how verified financial data can be transformed into reusable digital identity credentials, Dock Labs recently hosted a live podcast: How to Turn Open Finance Data into Digital ID Credentials and Connect IAM Silos.

The session was led by Nick Lambert, CEO of Dock Labs, and featured industry leaders shaping the future of identity in Latin America:

- André Facciolli, CEO of Netbr, a consultancy specializing in end-to-end identity management solutions that works with Brazil’s top 10 banks.
- Alan Kim Mareines, CEO of Lina, a technology provider delivering Open Finance and Open Insurance infrastructure across Brazil.
- Rodrigo Azevedo, Developer at Netbr, who built and presented the live proof-of-concept demo showing how Open Finance data can be issued as verifiable credentials and used across real-world scenarios like hotel check-ins or age verification at a pub.

Together, the panel explored the challenges large enterprises face with siloed IAM systems, the benefits of combining Open Finance with verifiable credentials, and the broader implications for user privacy, security, and business innovation.

05:52 – Live demo of turning Open Finance data into digital credentials
13:57 – Proof of concept completed in just two weeks
15:02 – What were the biggest takeaways from building the PoC?
21:10 – What are the top IAM pain points for large enterprises?
25:05 – Where does Open Finance data come from and how reliable is it?
29:22 – What other use cases excite you?
33:09 – What advantages do organizations gain with trusted credentials?
36:55 – What are the simplest high-impact use cases to start with?
40:31 – Where will organizations see ROI from credentials?
44:03 – What new use cases emerge from Open Insurance data?
47:30 – Who holds liability when data is shared via credentials?
52:02 – Is Open Banking data cryptographically verifiable?
53:12 – Could credentials evolve into user-owned data stores?
55:24 – How do credentials align with Brazil’s data privacy law (LGPD)?

📚 EXPLORE:
Dock Labs - https://www.dock.io/
Netbr - https://www.netbr.com.br
Lina - https://linaopenx.com.br

👨‍👩‍👧‍👧 FOLLOW:
LinkedIn - https://www.linkedin.com/company/docknetwork/ Receive SMS online on sms24.me

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