Addepar Scales $8 Trillion in Portfolios with AI on Databricks and AWS

Databricks · Beginner ·📊 Data Analytics & Business Intelligence ·1mo ago
Addepar is a global technology and data platform for the wealth and investment management ecosystem, modeling over $8 trillion in client investments and portfolios globally. By running Databricks on AWS, Addepar gains the combined scale of both platforms in a cloud-native environment, achieving $2 million in infrastructure cost savings and a 5x improvement in the ability to deliver new pipelines and integrations. Unity Catalog and shared notebooks give Addepar's teams a single place to work with data, code, SQL and other technologies, making knowledge and data sharing seamless and extending the reach of AI across the organization. At the heart of this is Addison, Addepar's embedded AI partner within their platform, which delivers meaningful answers and proactive insights to clients rather than acting like a simple chatbot. For Addepar, the goal has never been AI for its own sake but rather the real, measurable outcomes it delivers to clients and their portfolios. ✔️Try Databricks for Free: https://dbricks.co/41ha0L7 ✔️ Hear more from our customers: https://www.databricks.com/customers ✔️ Read the Databricks blog: https://www.databricks.com/blog/category/company/customers ✔️ Learn more about Addepar: https://addepar.com/ 👉 Get Social LinkedIn ► https://www.linkedin.com/company/databricks/ Instagram ► https://www.instagram.com/databricksinc/ Twitter ► https://twitter.com/databricks #datagovernance #databricks #aws
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