TL;DR
Data Architect (AI): Leading and designing modern data infrastructure with an accent on Snowflake, data modeling, dbt, and AI-centric solutions. Focus on developing scalable data products, establishing data contracts, and optimizing cloud data architectures for high-performance analytics and product development.
Location: Hybrid (Edinburgh or London, UK)
Company
hirify.global is a global leader in analytics, insights, and proprietary data for the energy and natural resources sectors.
What you will do
- Design and implement robust data architectures using Snowflake and AWS.
- Develop scalable data models to support product delivery and business intelligence.
- Lead data transformation workflows utilizing dbt.
- Establish operational models for data and analytical engineering teams.
- Ensure high standards for data quality, governance, and security across platforms.
- Mentor engineering teams on architecture, modeling, and AI integration best practices.
Requirements
- Proven experience designing large-scale data architectures using Snowflake and AWS.
- Strong background in dimensional and normalized data modeling.
- Expertise in dbt, SQL, and Python for data transformation and engineering.
- Experience designing enterprise ontologies and knowledge networks.
- Knowledge of data governance, access control, and privacy practices.
- Proven ability to lead and communicate across large, multi-disciplinary organizations.
Nice to have
- Experience applying AI to accelerate data management and content generation.
- Background in modern data stack ELT/ETL frameworks.
Culture & Benefits
- Focus on an inclusive, trusting, and customer-committed culture.
- Opportunity to work on complex, interconnected global energy systems.
- Emphasis on future-focused innovation and curiosity.
- Structured approach to professional growth and technical leadership.
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