Full-Time

Lead Enterprise Data Architect

ADI Global Distribution

ADI Global Distribution

Compensation Overview

$133.3k - $198.8k/yr

Plainview, NY, USA + 2 more

More locations: Charlotte, NC, USA | Irving, TX, USA

Hybrid

Category
Data & Analytics (1)
Required Skills
Microsoft Azure
Airflow
Apache Spark
SQL
Apache Kafka
AWS
Collibra
Informatica
Databricks
Snowflake
Google Cloud Platform
Requirements
  • 8+ years of experience in data architecture, data engineering, or enterprise architecture
  • Deep hands-on experience with cloud data platforms (Snowflake, Databricks, Azure, AWS, or GCP)
  • Strong expertise in data modeling (dimensional, relational, canonical, semantic)
  • Experience architecting MDM and governance solutions using Collibra, Reltio, Atlan, Informatica, or similar
  • Strong SQL, data pipeline design, and metadata/lineage engineering skills
  • Experience with modern data stack tools (dbt, Spark, Kafka, Airflow, etc.)
  • Ability to translate business needs into scalable architectural designs
  • Experience with enterprise architecture frameworks (TOGAF, DAMA‑DMBOK)
  • Background in designing AI‑ready data architectures (feature stores, vector stores, semantic layers)
  • Experience with API‑driven architectures and event‑driven patterns
  • Familiarity with data products and data mesh concepts
  • Adoption of standardized data models and architectural patterns across the enterprise
  • Reduction in data duplication, inconsistencies, and integration complexity
  • High‑quality, governed, discoverable data powering analytics and AI
  • Scalable, cost‑efficient cloud data platform performance
  • Strong alignment between business, engineering, and governance teams
Responsibilities
  • Define and maintain the enterprise data architecture strategy, reference models, and standards
  • Create and govern canonical data models, domain models, and integration patterns
  • Ensure architectural alignment across data engineering, analytics, MDM, governance, and application teams
  • Drive modernization toward cloud‑native, scalable, AI‑ready architectures
  • Define architecture guardrails for data security, privacy, and regulatory compliance in partnership with Security and Legal (e.g., access controls, classification, retention)
  • Lead design of conceptual, logical, and physical data models across domains
  • Establish enterprise‑wide modeling standards, naming conventions, and modeling patterns
  • Partner with MDM and governance teams to ensure consistency across master data, reference data, and operational data
  • Architect and maintain the enterprise context layer (semantic layer) enabling consistent metrics, definitions, and reusable data entities
  • Define metric logic, dimensional models, and semantic relationships used across BI, AI, and operational systems
  • Ensure alignment with analytics engineering (dbt, metric stores, semantic tools)
  • Architect MDM solutions including domain models, match/merge logic, hierarchies, and integration patterns
  • Partner with governance teams to operationalize policies through technology
  • Integrate metadata, lineage, and governance workflows into the architecture
  • Define ingestion, transformation, and consumption patterns across batch, streaming, and API‑based pipelines
  • Architect cloud data platforms (Azure/AWS/GCP) including lakehouse, warehouse, and real‑time components
  • Ensure scalability, performance, security, and cost optimization
  • Design metadata ingestion patterns and lineage frameworks across pipelines, BI tools, and MDM systems
  • Implement enterprise cataloging solutions using platforms such as Collibra, Atlan, Alation, or similar
  • Ensure metadata is complete, accurate, and actionable for governance and engineering teams
  • Build and validate architectural prototypes, POCs, and reference implementations
  • Write SQL, design schemas, build lineage connectors, and define transformation logic
  • Troubleshoot complex data architecture issues across pipelines, models, and platforms
  • Partner with data engineering, analytics, MDM, governance, product, and application teams
  • Provide architectural guidance, code reviews, and technical mentorship
  • Communicate architectural decisions to executives, engineers, and business stakeholders
Desired Qualifications
  • Experience with enterprise architecture frameworks (TOGAF, DAMA‑DMBOK)
  • Background in designing AI‑ready data architectures (feature stores, vector stores, semantic layers)
  • Experience with API‑driven architectures and event‑driven patterns
  • Familiarity with data products and data mesh concepts
ADI Global Distribution

ADI Global Distribution

View

Company Size

N/A

Company Stage

N/A

Total Funding

N/A

Headquarters

N/A

Founded

N/A

Your Connections

People at ADI Global Distribution who can refer or advise you