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

GoldenSource Releases Cloud Data Services Designed to Improve Data Management in Data Lakes and Warehouses

Subscribe to our newsletter

GoldenSource has made its first move since being acquired in May 2022 by Gemspring Capital with the release of cloud data services designed to help financial institutions improve data management in data lakes and warehouses.

The company notes increasing use of cloud data platforms and warehouses, and the ease of data access, but also the challenges of structuring data in a way that brings value to users consuming data sets from cloud platforms. For example, source data formats either need to be replicated within the data lake or mapped to a schema within the lake, which is a resource-heavy process.

To resolve these challenges, GoldenSource is providing Infrastructure-as-a-Service, which includes data pipelines and cloud-ready data schemas that are not natively included in cloud data warehouses and lakes. This enables data in warehouses and lakes to be organised in a more efficient and beneficial way. Core to the offering is the company’s cloud data model, which can be embedded in any cloud data warehouse or lake and provide immediate structure in what, it says, would otherwise be a disorganised data swamp.

“The development of data management infrastructure services within existing data lakes is revolutionary for how market participants configure and use data,” says Jeremy Katzeff, head of buy-side solutions at GoldenSource. “As financial institutions work with greater amounts of data, driven by the need for more quantitative strategies, the growth of alternative data, and the emergence of ESG, GoldenSource is providing the latest tools, structures and services to make sense of the data.”

The latest GoldenSource cloud data services allow users to take data from traditional sources or cloud marketplaces and use the company’s pre-configured vendor connections and toolkits to transform and use the data in their preferred warehouse, be it Cloudera, Snowflake, Databricks or the Google Cloud Platform. All types of data are supported, including vendor data, shared data from cloud marketplaces, and structured or unstructured proprietary data. The company also provides tools to plug in more data feeds and functionality, such as APIs and data quality, while the service runs in the background.

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: Navigating a Complex World: Best Data Practices in Sanctions Screening

As rising geopolitical uncertainty prompts an intensification in the complexity and volume of global economic and financial sanctions, banks and financial institutions are faced with a daunting set of new compliance challenges. The risk of inadvertently engaging with sanctioned securities has never been higher and the penalties for doing so are harsh. Traditional sanctions screening...

BLOG

Data Management Summit New York Takes Deep Dive into Modern Data Landscape

The 15th annual A-Team Group Data Management Summit New York City kicks off tomorrow with one theme prominent in the day of discussions, debates and keynote addresses: data quality. Without good quality data organisations can’t hope to achieve their objectives, be they implementation of artificial intelligence applications, automation of essential workflows or compliance with regulatory...

EVENT

TradingTech Summit New York

Our TradingTech Summit in New York is aimed at senior-level decision makers in trading technology, electronic execution, trading architecture and offers a day packed with insight from practitioners and from innovative suppliers happy to share their experiences in dealing with the enterprise challenges facing our marketplace.

GUIDE

Applications of Reference Data to the Middle Office

Increasing volumes and the complexity of reference data in the post-crisis environment have left the middle office struggling to meet the requirements of the current market order. Middle office functions must therefore be robust enough to be able to deal with the spectre of globalisation, an increase in the use of esoteric security types and...