BigQuery runs in seconds. Your pipeline work still runs in quarters.

Maia Foundation automates the construction and governance of the pipelines that feed Google BigQuery.

Autonomous agents build and maintain the work while engineers review and approve.
Abstract background with overlapping smooth yellow and gold geometric shapes.
Fill out the form below to book your Maia demo.

Powering data products at scale

Trusted by 1000+ of the world's best enterprises and their data teams.
Cisco logo
EDF Renewables logo
Juniper Logo
Leader Bank logo
Siemens Healthineers logo
NaranjaX logo
Edmund logo
Searchlight logo
Autodesk logo
Merck logo
Adaptavist logo
LSEG logo
St James' Place logo
MRH logo
Precision Medicine Group logo
Epoch logo
GE HealthCare logo
Tui logo
SEE IT IN ACTION

The engineering work that feeds BigQuery itself

Every AI feature for BigQuery in 2026 helps engineers write SQL faster. Maia works on a different part of the problem: autonomous agents construct and maintain the pipelines, the Context Engine governs them, and execution pushes down into BigQuery.

Your engineers review the pipelines; they don't author them.

Writing pipelines was never where the backlog lived

Every AI feature on BigQuery this year helps engineers write SQL faster. Gemini Code Assist, dbt's AI features, the coding tools in your engineer's IDE: all of them speed up authorship.

None of them touch the work around the pipeline, which is where most of the delivery time actually goes. The review, the governance, the schema drift, the promotion window. Maia works on that part.

  • Without Maia
    With Maia
  • Engineers hand-build every pipeline into BigQuery from a blank canvas
    Schema drift detected, rebound, and committed for engineer review automatically
  • Schema changes break downstream work; manual fixes consume sprint time
    Schema drift detected, rebound, and committed for engineer review automatically
  • Governance retrofitted at the end of the project, if the team gets there
    Engineers review and approve changes rather than authoring from scratch
  • Backlog grows faster than the team can absorb it
    Maia operates across hundreds of pipelines simultaneously, so the backlog shrinks rather than grows
  • CDAOs manage scarcity instead of delivering data products at scale
    CDAOs test every hypothesis and deliver any data product the business asks for

What Maia does on Google BigQuery

Three layers, each with a single job, that together shift your team from pipeline authorship to pipeline oversight.

1

Maia Team

Autonomous agents take business intent and the structure of your source data, then produce orchestration and transformation logic that runs against BigQuery. Engineers review and approve the output rather than writing it from scratch.

2

Context Engine

Maia maintains a continuously-updated model of your schemas, lineage, and governance rules, keeping automation inside the lines your governance team has drawn without someone having to enforce it manually each sprint.

3

Maia Foundation

Transformations compile to SQL and run directly inside Google BigQuery, with no external compute and no data leaving the warehouse. The cost, performance, and security of BigQuery stay exactly as they were.

The results speak for themselves

Outcomes from Maia customers running enterprise data migrations.

2/3 reduction
in legacy ETL migration effort per pipeline
Days to hours
turnaround on individual pipeline conversions
Engineering capacity
freed and reinvested into data product delivery
Abstract dark green geometric shapes overlapping on a textured background.
Featured Customer Story

From days to hours: How St. James’s Place cut ETL migration effort by two-thirds with Maia

Platform modernization stalls when legacy ETL migrations consume the engineering capacity needed to drive it forward. For St. James's Place (SJP), one of the UK's leading wealth management businesses, manually rewriting and validating pipelines was taking

days per job. In a proof of concept with Maia, the AI Data Automation platform, SJP cut that effort by roughly two-thirds - freeing engineers to focus on higher-value work and accelerating their path to a consolidated, modern data platform.

Smiling woman with glasses and shoulder-length hair in black blouse sitting inside an office.

“Maia reduced ETL migration effort by around two-thirds, taking work from days to hours… Platform consolidation will help us to reinvest in the team, to enable us to build out more on the SAP and AI roadmap of tomorrow”

KM
Kelly Maggs
Director for Data Architecture Platform and Engineering.

Ready to see what Maia Foundation means for your BigQuery environment?

Enjoy the freedom to do more with Maia on your side.
Abstract dark teal geometric shapes background with diagonal lines and subtle gradients.