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Lead Architect - Data Engineering

Fractal
City of London
1 week ago
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. Lead Architect - Data Engineering page is loaded## Lead Architect - Data Engineeringlocations: Londontime type: Full timeposted on: Posted Todaytime left to apply: End Date: November 30, 2025 (30+ days left to apply)job requisition id: SR-35789It's fun to work in a company where people truly BELIEVE in what they are doing!We're committed to bringing passion and customer focus to the business.Lead Architect - Data EngineeringFractal is a strategic AI partner to Fortune 500 companies with a vision to power every human decision in the enterprise. Fractal is building a world where individual choices, freedom, and diversity are the greatest assets. An ecosystem where human imagination is at the heart of every decision. Where no possibility is written off, only challenged to get better. We believe that a true Fractalite is the one who empowers imagination with intelligence. Fractal has been featured as a Great Place to Work by The Economic Times in partnership with the Great Place to Work Institute and recognized as a ‘Cool Vendor’ and a ‘Vendor to Watch’ by Gartner.Please visit for more information about FractalLocation: LondonCore Technical Expertise* Advanced proficiency in PySpark, Databricks, and Azure Data Platform (ADF, Azure Data Lake, Synapse, etc.).* Strong hands-on experience with proprietary ETL frameworks (e.g., Mars’ Simpel) and ability to troubleshoot, optimize, and extend such platforms.* Deep understanding of data engineering pipelines (batch & real-time), orchestration, and performance tuning.* Experience in data mesh principles and building federated data product journeys (domain-driven design, ownership models, contracts, discoverability).* Demonstrated ability to design, build, and scale data products across the enterprise value chain (Commercial, Supply Chain, Finance, Marketing, Digital Commerce, etc.).Architecture & Solutioning* Expertise in designing enterprise-grade data architectures (ingestion, processing, storage, governance, access).* Knowledge of data governance frameworks including metadata management, lineage, cataloguing, quality, and compliance.* Experience in cloud-native data architectures and hybrid data ecosystems (on-prem to cloud migration, modernization).* Ability to evaluate build vs. buy trade-offs and incorporate accelerators/frameworks (e.g., Morpheus).Leadership & Delivery* Proven track record of leading and mentoring 10+ member data teams (engineers, analysts, architects).* Strong stakeholder management – ability to engage senior business/technology leaders and influence decision-making.* Experience in large-scale transformation programs within multi-vendor ecosystems.* Ability to drive end-to-end delivery from discovery, design, estimation, execution, and handover.Consulting & Business Orientation* Exposure to data monetization and value realization frameworks – linking architecture choices to business outcomes.* Skilled in preparing technical proposals, solution approaches, and estimations for RFPs/RFIs.* Ability to simplify technical narratives into executive-ready presentations for CDOs/VPs.Good to Have Skills* Understanding of AI/ML workflows (feature store, model serving, MLOps).* Awareness of Agentic AI and next-gen AI/LLM architectures.* Familiarity with other cloud platforms (AWS, GCP, Snowflake, Redshift, BigQuery, etc.).* Experience in multi-cloud interoperability and cost optimization.* Exposure to domain-specific data products in CPG/Retail/Energy verticals.* Familiarity with modern data contract tools (NextData, DataHub, Collibra, dbt, etc.).* Soft Skills & Leadership Traits* Strong problem-solving and systems thinking – ability to untangle complex technical and business challenges.* Excellent communication skills – equally comfortable in deep technical discussions and executive-level strategy conversations.* Collaborative leadership style – enabling cross-functional, multi-vendor teams to deliver at speed.* Demonstrated ability to build credibility quickly with global stakeholders (US, EU, UK, APAC).* Change agent mindset – driving modernization while respecting legacy complexities.If you like wild growth and working with happy, enthusiastic over-achievers, you'll enjoy your career with us!Introduce Yourself in the top-right corner of the page or create an account to set up email alerts as new job postings become available that meet your interest!
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