Back to All Articles
August 14, 2025

The Future of Data Engineering: From Months to Hours with Agentic AI

Every day, a data pipeline stuck in development has a business impact. Critical financial reporting, new product launches, and other strategic initiatives all depend on the speed and reliability of your data infrastructure. 

Historically, data engineering has been a bottleneck, costing months of manual effort and delaying time-to-market. Applying Agentic AI to your data engineering challenges can shatter that bottleneck, empowering you to reclaim that lost time and accelerate your most critical business initiatives.

The Challenge of Traditional Data Engineering


Data engineering has always been notoriously complex, resource-intensive, and time-consuming. Organizations often grapple with disparate data sources, unclear or incomplete documentation, and heavy reliance on manual processes. Data engineers frequently spend months painstakingly mapping data sources, writing custom transformation logic, validating pipelines, and ensuring quality assurance, all while contending with frequent changes and dealing with unrecorded institutional knowledge.

GXS Bank's Vision: Democratizing Banking Through Data


GXS Bank, Singapore’s first digital bank, saw these traditional limitations as an opportunity. With a mission to make banking better and more accessible, GXS Bank committed to a fully digital, data-driven approach. Their ambitious goal was not merely to improve processes but to radically reimagine data engineering.

The bank created a central data ecosystem, ingesting data every 15 minutes from over 100 systems directly into Snowflake. This eliminated silos and provided a single source of truth, enabling them to rapidly innovate across regulatory reporting, financial analytics, compliance, and into new use cases.

See the full session as featured during Snowflake Summit 2025

Enter Agentic Data Engineering


GXS’s commitment to innovation led them to partner with Genesis, an Agentic AI, multi-agent platform integrated directly within their Snowflake environment. Agentic data engineering leverages autonomous AI data agents, each specialized in distinct roles: source to target data research with data mapping proposal, data engineering, and quality assurance.

These agents augment and accelerate human engineers' efforts by automating repetitive tasks, synthesizing complex research, and rapidly generating accurate code.

A Multi-Agent Ecosystem in Action


Here's how the Genesis platform transformed GXS Bank’s data engineering lifecycle:

  1. PM Agent: Initiates the process, breaking complex projects into clear, manageable tasks assigned to specialized agents.
  2. Source Research Agent: Conducts deep research into existing data resources, previous project logic, and generates comprehensive documentation, eliminating the burden of manual research and undocumented knowledge.
  3. Data Engineering Agent: Translates research and mappings into executable dbt code. It learns from existing codebases to ensure consistency and accuracy aligned with the bank’s established coding standards.
  4. Quality Assurance Agent: Validates the generated pipelines with synthetic data, rigorously testing scenarios and identifying issues before human intervention, ensuring robust pipeline quality.


From Theory to Reality: GXS’s Transformative Results


The results at GXS Bank were immediate and profound. Projects that historically took months to deliver are now completed in hours. By harnessing the power of agentic data engineering, GXS Bank is now able to:

  • Significantly reduce the time-to-market for data-driven products.
  • Eliminate extensive manual labor, freeing engineers to focus on strategic tasks.
  • Dramatically improve data quality and pipeline reliability at scale.


Democratizing Data with Human-Centric AI


Importantly, the shift toward agentic AI didn’t force human teams to adapt to complex new technologies. Instead, Genesis data agents integrated seamlessly with existing workflows, using familiar tools like Google Sheets and Jira, ensuring that technology adapted to people, not the other way around.

Human input became strategic rather than administrative, answering targeted questions posed by the agents only when ambiguity arose. Each interaction enriched the agents' knowledge base, continuously improving future automation capabilities.

Looking Ahead: Limitless Potential


Agentic data engineering isn’t just an incremental step; it’s a paradigm shift. It unlocks the full potential of data teams by transforming cumbersome manual processes into streamlined, automated workflows. At GXS Bank, this shift revolutionized their approach to innovation.

Embracing the Agentic Future


GXS Bank’s experience powerfully demonstrates how embracing agentic data engineering can redefine the pace and quality of innovation. Organizations ready to accelerate their data transformation journeys should look closely at the opportunities provided by AI-driven, agentic platforms. The future is here, and the possibilities are extraordinary.

Back to top