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Data Engineer

Stoke Gifford
5 months ago
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📍 Bristol - Hybrid 1 - days per week on site

💰 £600 (neg) per day Inside IR35

🌟 What You'll Be Doing

Providing expertise newly formed Analytics & Data Team and support the team in building tools and data processes.
Build the Backbone: Design and maintain scalable, reusable data pipelines that power analytics and AI initiatives.
Bridge IT & Data: Lead the integration of systems to unlock new platform capabilities and deliver innovative features.
Operationalize AI: Deploy production-ready AI models with automated monitoring-from data ingestion to model outputs.
Master the ELT: Focus on Extract & Load processes across diverse enterprise data sources.
Keep It Flowing: Monitor workflows, define SLIs, and set up alerts to ensure seamless data operations.
Champion Governance: Apply best practices in data governance, maintaining data catalogues and dictionaries.
Set the Standard: Develop and promote Python coding standards and drive continuous improvements in data quality.
Model for Impact: Use dimensional data modeling to create robust data structures that support business intelligence.
Drive a Data Culture: Empower teams with evidence-based insights and foster a data-driven decision-making environment.What we're looking

Strong Python skills, especially with PySpark.
Deep experience with Azure Databricks and cloud-based data platforms.
A flexible, adaptive mindset and a collaborative spirit.
Excellent communication skills-able to translate tech into plain English.
A logical, analytical approach to problem-solving.
Familiarity with the modern data stack and integration best practices.
A passion for data quality, innovation, and continuous improvement

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