Senior Data Architect
Role details
Job location
Tech stack
Job description
We are seeking an experienced Senior Data Architect to lead the design and evolution of modern cloud-based data ecosystems. In this role, you will architect scalable, secure, and high-performing data platforms that support advanced analytics, AI/ML initiatives, real-time data processing, and business intelligence across the enterprise.
The ideal candidate brings deep expertise in cloud-native data architectures, traditional database technologies, data governance, and AI-enabled solutions. You'll work closely with engineering, architecture, and business teams to build robust data foundations that support everything from operational reporting to Retrieval-Augmented Generation (RAG), semantic search, and generative AI applications.
What You'll Do
Cloud Data Architecture
- Design and implement modern data platforms using cloud-native services and data engineering best practices.
- Build scalable data pipelines supporting ingestion, transformation, storage, and analytics workflows.
- Define data storage, partitioning, optimization, and lifecycle management strategies to maximize performance and cost efficiency.
- Establish architecture standards for lakehouse, warehouse, and operational data environments.
AI, Machine Learning & RAG Enablement
- Design data foundations that support machine learning, predictive analytics, and generative AI workloads.
- Develop architectures for Retrieval-Augmented Generation (RAG), semantic search, embeddings, and vector-based knowledge retrieval.
- Define best practices for prompt management, contextual retrieval, model grounding, and evaluation frameworks.
- Support enterprise AI initiatives through scalable and governed data access strategies.
Enterprise Data Management
- Design and govern enterprise data models and integration frameworks.
- Provide expertise in relational and non-relational database technologies, including performance tuning, scalability, availability, and disaster recovery.
- Establish standards for data quality, consistency, interoperability, and lifecycle management.
- Support data lake, warehouse, and operational data store architectures.
Integration & Application Architecture
- Define standards for APIs, data contracts, and system integrations.
- Support ingestion and integration of data from enterprise applications, operational systems, external partners, and streaming sources.
- Collaborate with application and platform teams to ensure data architectures support scalable and efficient business solutions.
- Drive consistency across enterprise data integration patterns and services.
Data Governance & Security
- Implement enterprise data governance practices, including metadata management, lineage tracking, data cataloging, and stewardship.
- Establish security frameworks covering encryption, access management, masking, tokenization, and privacy protection.
- Ensure compliance with applicable regulatory and organizational data requirements.
- Define secure approaches for AI data usage, model inputs, outputs, and information access.
Data Quality & Observability
- Develop monitoring frameworks for data quality, reliability, and performance.
- Establish data service level objectives, quality rules, and operational metrics.
- Identify opportunities to optimize storage, processing, and infrastructure costs.
- Drive continuous improvement across platform performance and operational efficiency.
Technical Leadership
- Develop target-state architectures, roadmaps, and implementation strategies.
- Lead architecture reviews, technical assessments, and proof-of-concept initiatives.
- Mentor engineers, analysts, and architects on data engineering and architectural best practices.
- Communicate complex technical concepts effectively to both technical and business stakeholders.
- Champion innovation, engineering excellence, and continuous learning across teams.
Requirements
Are you passionate about building next-generation data platforms that power analytics, AI, machine learning, and enterprise-scale decision-making?, * Bachelor's or Master's degree in Computer Science, Information Systems, Data Engineering, or a related field.
- 10+ years of experience designing and delivering enterprise data solutions.
- 5+ years of experience building cloud-based data platforms in production environments.
- Strong expertise in:
- Data Architecture
- Data Engineering
- Data Modeling
- Data Warehousing
- Lakehouse Architectures
- Cloud Data Platforms
- Extensive experience supporting AI/ML, advanced analytics, and large-scale data processing initiatives.
- Strong SQL and Python development skills.
Preferred
- Experience designing enterprise-scale AI, machine learning, and RAG solutions.
- Experience with vector databases, semantic search, and knowledge retrieval systems.
- Exposure to business intelligence and data visualization platforms.
- Experience working with regulated data environments.
- Relevant cloud architecture or data platform certifications.
Core Competencies
- Data Architecture & Engineering
- Cloud Platform Design
- Lakehouse & Data Warehouse Solutions
- AI/ML Data Foundations
- Retrieval-Augmented Generation (RAG)
- Data Governance & Security
- Enterprise Integration
- Data Modeling & Optimization
- Technical Leadership
- Strategic Architecture Planning
- Cost Optimization & FinOps
- Stakeholder Management