Role: Data Architect
Location: Irvine CA onsite
Employment type: Contract
Data Architect - Onshore (SoCal)
Data Platform Architecture
End-to-end architecture for a Unified Data Platform spanning manufacturing, enterprise, and analytics domains
Define reference architectures for data ingestion, storage, processing, analytics, and AI enablement
Drive convergence of structured, semi-structured, unstructured, telemetry, and time-series data into a cohesive platform across data technologies
Establish clear platform patterns (lakehouse, streaming-first, event-driven, domain-oriented)
Domain Context
Familiarity with semiconductor manufacturing data landscapes (fab, test, assembly, packaging)
Ability to bridge OT and IT data architectures in regulated manufacturing environments
Data Lakehouse Architecture
Design and governance of lakehouse architectures
Strong experience with:
Data lake zoning (raw, curated, trusted, feature layers)
Warehouse and analytics integration
Semantic and consumption layers
Define standards for data modeling, partitioning, schema evolution, and performance optimization
Architect for multi-consumer access (BI, data science, ML, operations)
Cloud & Infrastructure Architecture
Hands-on architectural experience with cloud-native data platforms, Databricks, Azure, and Google Cloud Platform
Architecture-level knowledge of:
Object storage
Cloud data warehouses
Streaming and messaging platforms
Infrastructure-as-Code design standards (Terraform)
Design for resilience, scalability, and cost optimization (FinOps-aligned)
Streaming, Telemetry & Real-Time Enablement
Architect pipelines for manufacturing telemetry
Experience designing platforms using:
Event-driven ingestion
Streaming analytics
Time-series data management
Enable operational analytics and alerting without compromising analytical workloads
AI / ML Data Enablement
Architect data foundations for AI-driven use cases
Define feature stores, training datasets, and inference data paths
Experience with graph-oriented or knowledge-based architectures for relationship-driven analytics
Ensure data architecture supports model lifecycle management and reusability.
Enterprise & Application Integration
Architect integration patterns across data workloads
Enable correlation of business, manufacturing, and operational data into unified analytical views
Data Governance, Security & Compliance
Define enterprise data governance frameworks aligned to platform architecture
Architect solutions for:
Metadata management
Data lineage and traceability
Master and reference data strategies
Design security-by-default data architectures (RBAC, encryption, segmentation)
Familiarity with compliance considerations relevant to semiconductor manufacturing and IP protection
Observability, Reliability & Platform Operations
Architect data platform observability (pipeline health, data quality, SLAs)
Define operational models for:
Incident response
Root cause analysis
Platform reliability
Enable clear ownership boundaries between platform, domain, and consumption teams
Collaboration, Enablement & Leadership
Serve as a technical bridge between:
Manufacturing engineering
Data engineering
Data science / AI teams
Enterprise IT and security
Create architecture artifacts: reference diagrams, standards, design patterns
Mentor engineers and guide implementation without becoming a delivery bottleneck
Comfortable operating in matrixed, globally distributed organizations with onshore leadership presence.