Skip to Content

Agentic AI in the Modern Data Stack: The Future of Data Engineering

May 25, 2026 by
Agentic AI in the Modern Data Stack: The Future of Data Engineering
Joris Geerdes

Agentic AI in the Modern Data Stack: The Future of Data Engineering

Data Engineering is experiencing a true revolution with the integration of Generative AI and "agentic" workflows. Moving beyond simple code completion, AI agents are now capable of designing, orchestrating, and optimizing end-to-end data pipelines.

What is an Agentic Workflow?

Unlike traditional language models that respond to single prompts, AI agents can plan complex tasks, use external tools (like APIs or databases), and self-correct. In the context of Data Engineering, this means an agent can analyze a source data schema, generate the corresponding dbt or PySpark code for cleaning, and deploy the workflow on Airflow or Dagster.

The Impact on the Modern Data Stack (MDS)

Integrating these agents into the MDS transforms the Data Engineer's role. Repetitive modeling tasks (such as creating slowly changing dimensions) are automated. Data Engineers then focus on architecture, Data Governance, Data Quality, and cost management (FinOps).

Conclusion

Adopting AI agents in data pipelines does not replace experts but significantly increases their productivity. Companies capable of integrating these technologies into their cloud infrastructure (AWS, GCP, Azure) or platforms like Snowflake and Databricks will gain a decisive edge.

in Data
Agentic AI in the Modern Data Stack: The Future of Data Engineering
Joris Geerdes May 25, 2026
Share this post
Tags
Archive