Skip to Content

Senior Data Architecture Manager


A. Architecture Assessment & Strategic Roadmap

  • Evaluate the current data engineering framework end-to-end, including medallion architecture layering, naming conventions, ingestion patterns, processing logic, security controls, and data quality mechanisms.

  • Benchmark the current state against industry best practices and produce a prioritized improvement roadmap with clear effort-versus-impact trade-offs.

B. Data Estate Governance

  • Build and maintain a comprehensive inventory of the data estate, cataloging all source systems (onboarded and prospective) and the subject areas each covers (both ingested and not yet ingested).

  • Establish this inventory as a living artifact that informs onboarding decisions, coverage analysis, and platform planning.

C. Standards Definition & Enforcement

  • Design, integrate, or refactor naming conventions for schemas, tables, views, orchestration jobs, and pipelines, including the migration approach for transitioning to new standards where needed.

  • Define standardized ingestion and processing patterns across the full medallion architecture, including sub-layering strategy, format standardization (Parquet, Avro, Delta), secure PII ingestion, data normalization, technical data quality tracking, row- and column-level access controls, late-arriving dimension management, and data export workflows.

  • Establish clear pattern selection criteria so engineers know which approach to apply for a given source type or use case.

  • Define and operationalize the exception management process for handling justified deviations from established standards.

D. Hands-On Implementation

  • Build production-grade boilerplate code for each standardized pattern using the existing GCP toolchain, including BigQuery, Cloud SQL, Cloud Composer, Dataflow, Dataproc, Cloud Storage, Pub/Sub, and related services.

  • Ensure templates are modular, well-documented, and immediately adoptable by the engineering team.

E. CI/CD & Developer Experience

  • Support the integration of data engineering pipelines with the CI/CD solution, aligning with the broader CI/CD modernization initiative’s timeline and tooling decisions.

  • Contribute to developer experience improvements that reduce friction in pipeline development, testing, and deployment.

F. Knowledge Transfer & Enablement

  • Author the Source Onboarding Playbook, a repeatable step-by-step guide for bringing new data sources into the platform, covering initial assessment, pattern selection, naming convention application, quality gates, access control setup, and production release.

  • Mentor and upskill data engineers on the new standards, patterns, and tooling through documentation, walkthroughs, and hands-on pairing.

Qualifications
  • Bachelor's degree in IT, Computer Science or any related IT field.

  • Experience in data engineering, data architecture, or analytics platform development, with a significant portion spent in hands-on, code-level roles.

  • Expertise in designing and operating large-scale analytical solutions (data warehouses, data lakes, lakehouses) serving enterprise-grade workloads. 

  • Strong hands-on proficiency with GCP data services — BigQuery, CloudSQL(Federated Query), Cloud Composer (Airflow), Dataflow (Apache Beam), Dataproc (Spark), Cloud Storage, and Pub/Sub.

  • Experience defining and enforcing data engineering standards, naming conventions, and governance frameworks across multiple teams and workstreams.

  • Experience with PII handling, data masking, tokenization, and implementing row- and column-level security in cloud data platforms.

  • Solid understanding of data quality frameworks, data contracts, and pipeline observability.