This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
Lead enterprise data architecture, manage a team of data engineers/analysts, and run data operations — while ensuring the platform is governance-compliant and AI-ready.
Job Responsibility:
Architecture — Design and own the enterprise data strategy, models, and integration patterns (batch, streaming, CDC, APIs) across data lakes, warehouses, and lakehouse architectures
Cloud — Architect on AWS, Azure, and/or GCP. Optimize for cost, resilience, and scale using IaC (Terraform, CloudFormation, Bicep)
Governance — Enforce data quality, lineage, cataloging, classification, access controls, and compliance (GDPR, CCPA, HIPAA, SOX, PCI-DSS, EU AI Act)
AI/ML Readiness — Understand the ML lifecycle, feature stores, MLOps, LLMs, RAG, and vector databases. Architect platforms that data science teams can self-serve
Team — Hire, mentor, and grow a high-performing data team. Set goals, run reviews, drive collaboration across engineering, data science, product, and business
Operations — Own pipeline reliability (99.5%+ uptime), SLAs, incident response, observability, DataOps, and vendor management
Requirements:
10+ years of experience in data architecture
3+ years successfully leading and mentoring high-performing teams with cross-functional influence
Expert SQL & data modeling (Kimball, Data Vault, 3NF)
Cloud platforms (AWS / Azure / GCP) — hands-on
Data governance & regulatory compliance — proven track record
AI/ML ecosystem — strong conceptual understanding
Agile delivery experience
Nice to have:
Cloud / data certifications (AWS SA, Azure DE, GCP PDE, Snowflake, CDMP)
Data mesh / data fabric experience
Regulated industry background (finance, healthcare, pharma)
Exposure to GenAI data infrastructure (RAG, vector DBs, embeddings)