Engineering operating system
The work is data infrastructure before it is AI.
Across enterprise modernization, analytics platforms, and AI systems, the same primitives keep showing up: metadata, contracts, lineage, execution traces, governance, and measurable reliability.
Build the data foundation first
Reliable AI starts with governed data systems: ingestion, schema enforcement, data quality, lakehouse tables, semantic definitions, and lineage.
Iceberg + BigQuery lakehouse work across 35+ financial datasets and 20+ years of reporting context.
Ground AI in enterprise context
LLM systems need retrieval evidence, metric contracts, access boundaries, audit trails, and explicit execution paths before they can be trusted.
RAG work over 100K+ survey responses reduced qualitative review effort by 60%.
Modernize with measurable exits
Large rewrites need migration systems, not one-off scripts: repeatable transformations, validation gates, and clear ownership for every generated artifact.
GenAI-assisted modernization moved 900+ Java modules toward Spark and Apache Beam in roughly seven months.