About a-team Marketing Services
The knowledge platform for the financial technology industry
The knowledge platform for the financial technology industry

A-Team Insight Blogs

Meet Patch, a pioneer of data packages designed to ease migration between cloud databases

Subscribe to our newsletter

Migrating applications and datasets from one cloud data warehouse to another can be a challenge – how can you keep apps running effectively during the migration, and avoid the time and cost of ETL projects and rebuilds? And how can you ensure data schema security, data quality, and the business benefits of accelerated migration?

Meet Patch, a data management specialist that will answer these questions and more at next week’s A-Team Group Data Management Summit NYC, but first a quick preview with CEO Peter Elias and chief product officer Whelan Boyd, who cofounded Patch in 2022.

“We are taking a new approach to solving the problem of how to keep an app running efficiently and securely during cloud migration,” says Elias. Essentially, the company’s approach comprises data packages, which Elias describes as ‘the missing bridge in enterprise data architecture’ that allow applications to continue to run through a migration and data consumers to function even if data is coming from different database sources.

Boyd explains in a recent blog: “Migrations require engineers to stand up a new data system, replicate the dataset, and rewrite schema and database-specific driver code. Then, they finally retire the old data system once everything is tested in production. Refactoring the application code takes the longest, and it’s usually blocked by the actual data migration work.

“Data packages, on the other hand, decouple application code from specific data infrastructure so that a dataset can be moved to different storage systems by data teams without impacting application teams downstream.”

Commenting on the problems of migration, Elias adds: “When a migration project is blocked by data access it can take weeks to engineer a solution. Using abstraction, Patch avoids expensive and time-consuming projects.”

To date, Patch has made a partnership with SnowFlake and will train some of its teams on how to use data packages to support migration later this year. It is also pursuing similar partnerships with data storage providers including Databricks and Google BigQuery.

Meet Peter and find out more about Patch at next week’s Data Management Summit NYC.

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: An Agile Approach to Investment Management Platforms for Private Markets and the Total Portfolio View

Data and operations professionals at private market institutions face significant data and analytical challenges managing private assets data. With investors clamouring for advice and analysis of private markets in their search for returns, investment managers are looking at ways to gain a more meaningful view of risk and performance across all asset types held by...

BLOG

Data Usage Rights Patent is Music to the Ears of VendEx Boss

Richard Clements has a talent for explaining highly technical concepts in ways that make them sound as easy as listening to your favourite song. Which is apt, considering that the chief executive of VendEx, a vendor and data cataloguing technology provider, explains his company’s latest innovation with a guitar perched on a stand beside him....

EVENT

RegTech Summit London

Now in its 9th year, the RegTech Summit in London will bring together the RegTech ecosystem to explore how the European capital markets financial industry can leverage technology to drive innovation, cut costs and support regulatory change.

GUIDE

Regulatory Data Handbook 2025 – Thirteenth Edition

Welcome to the thirteenth edition of A-Team Group’s Regulatory Data Handbook, a unique and practical guide to capital markets regulation, regulatory change, and the data and data management requirements of compliance across Europe, the UK, US and Asia-Pacific. This year’s edition lands at a moment of accelerating regulatory divergence and intensifying data focused supervision. Inside,...