Skip to content
>
Snowflake Inc.

Show Me Your Architecture

Technical Deep Dive of Spring Oaks Capital’s Financial Risk and Pricing ML Platform

On-Demand

Spring Oaks Capital’s data science team evaluates millions of records to provide predictions that give their team the insights needed to optimize their debt pricing and purchasing strategies. Because of the volume and complexity of the data used, they considered setting up difficult-to-manage kubernetes clusters for the end-to-end machine learning (ML) pipeline. In their evaluation process, they spotted an opportunity to reduce the operating burden by leveraging Snowpark for Python, Snowflake’s Python developer framework, for feature engineering and model inference.  

Join this session to learn more about Spring Oaks Capital’s:

  • Opportunity and challenges as a new player in the industry
  • Reasons data infrastructure was migrated to Snowflake to efficiently scale their ML initiatives.
  • Technical architecture that supports their large scale ML workflow.

David Der

Head of Engineering at Spring Oaks Capital

Julian Forero

Senior Product Marketing Manager at Snowflake

Watch Now

  • Privacy Notice
  • Site Terms
  • Cookie Settings
  • Do Not Share My Personal Information

© 2023 Snowflake Inc. All Rights Reserved |  If you’d rather not receive future emails from Snowflake, unsubscribe here or customize your communication preferences