Data Engineering Lead

Weston-super-Mare
1 week ago
Create job alert

This rapidly expanding manufacturer and retailer and looking to appoint a Data Engineering Lead / Data Architect to support on the continued evolution their Data Strategy and roadmap towards using more advanced analytics and insight to drive commercial growth. You will be pivotal and hands-on in leading a small team of Data Engineers and BI Developers to support their Cloud transformation.

Client Details

Rapidly expanding manufacturer and retailer

Description

This rapidly expanding manufacturer and retailer and looking to appoint a Data Engineering Lead / Data Architect to support on the continued evolution their Data Strategy and roadmap towards using more advanced analytics and insight to drive commercial growth. You will be pivotal and hands-on in leading a small team of Data Engineers and BI Developers to support their Cloud transformation, a knowledge of Data Architecture is highly desirable but a Senior Data Engineer looking to transition into this domain will also be considered.

Key Responsibilities:

Oversee and lead the design and implementation of ETL/ELT processes to ingest data from new ERP system into Snowflake
Architect and develop the Snowflake data warehouse to support reporting and analytics needs, incorporating existing SQL-Server based business logic, whilst optimising the warehouse structure for performance, scalability, and ease of use
Ensure that the BI and Data team work closely and collaboratively with business users to understand, qualify, design, build test, and deliver their requirements
Work in collaboration with and oversee third-party providers to ensure that technologies and services are both cost-effective and optimized for the organization, while ensuring that providers adhere to established Service Level Agreements.
Provide direction for how the business are moving, transforming, storing, and retrieving data to enable the most efficient and effective use of technology for the business
Design, implement, and manage the BI infrastructure and services, as well as deliver business data insights requirement in alignment to the IT strategy and roadmap
Act as subject matter expert on all aspects of data analytics, analytics data modelling and warehousing, data mining, and presentation with a view to support future relevant projects and initiatives
Ensure that BI service runs smoothly, including to act as a point of escalation for the Support and Technical teams, to monitor and resolve issues
Work with senior stakeholders and programme boards to deliver company KPI reportingKey Technical Areas:

Systems Architecture: Knowledge of system architecture models, including the design, behavior, and interaction of components and subsystems that enable seamless data integration, storage, processing, and analytics, ensuring scalable secure, and efficient solutions aligned with business objectives.
Business Analysis: Translate internal stakeholders'requirements and technology requirements into a strategic application portfolio plan and ensure its effective management and alignment with organisational goals.
Business Intelligence: Knowledge of the data lifecycle from ETL, through to the analysis of datasets, leading to the publication of information and aiding business stake holders to derive insight and potential trends.
IT Security: Understand IT security challenges and risks, and technologies and techniques to mitigate risks.
Effective Governance: Effectively manage projects and programmes including processes, customs and policies that affect these, as well as relationships between stakeholders and company goals.
Service and Supplier Management: The ability to provide high quality Service Management that aligns the delivery of IS services with the needs of the business, through high-quality products services and the management of external services Key Skills & Experience:

Essential:

Experience with ETL/ETL tools (Matillion preferred)
Experience of SQL Server and Snowflake (or other variants of Cloud Data Warehousing solutions e.g Azure / AWS etc)
Experience using Kimball methodology to support analytics and reporting
Experience with data migration, including mapping existing business logic to new data sources
Experience of converting business requirements into a delivered solution
Experience with Power BIDesirable:

Experience of Business Systems reporting, including ERP
Understanding of the MS BI stack (SSIS, SSAS)
Knowledge of Microsoft Dynamics AX or IFS
Manufacturing and supply chain exposure
Understanding of financial principles
Experience of business KPI reporting

Profile

Key Skills & Experience:

Essential:

Experience with ETL/ELT tools (Matillion preferred)
Experience of SQL Server and Snowflake (or other variants of Cloud Data Warehousing solutions e.g Azure / AWS etc)
Experience using Kimball methodology to support analytics and reporting
Experience with data migration, including mapping existing business logic to new data sources
Experience of converting business requirements into a delivered solution
Experience with Power BIDesirable:

Experience of Business Systems reporting, including ERP
Understanding of the MS BI stack (SSIS, SSAS)
Knowledge of Microsoft Dynamics AX or IFS
Manufacturing and supply chain exposure
Understanding of financial principles
Experience of business KPI reportingJob Offer

Opportunity to work on a major Data Transformation Programme

Opportunity to join a rapid growth organisation

Related Jobs

View all jobs

Data Engineering Lead / Data Architect

Lead Enterprise Architect, Advanced Analytics

CDD Platform Lead

CDD Platform Lead

CDD Platform Lead

CDD Platform Lead

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Quantum-Enhanced AI in Data Engineering: Reshaping the Big Data Pipeline

Data engineering has become an indispensable pillar of the modern technology ecosystem. As companies gather massive troves of data—often measured in petabytes—the importance of robust, scalable data pipelines cannot be overstated. From ingestion and storage to transformation and analysis, data engineers stand at the forefront of delivering reliable data for analytics, machine learning, and critical business decisions. Simultaneously, the field of Artificial Intelligence (AI) has undergone a revolution, transitioning from niche research projects to a foundational tool for everything from predictive maintenance and fraud detection to customer experience personalisation. Yet as AI models grow in complexity—think large language models with hundreds of billions of parameters—the data volumes and computational needs escalate dramatically. The industry finds itself at an inflection point: traditional computing systems may eventually hit performance ceilings, even when scaled horizontally with thousands of nodes. Enter quantum computing, a nascent yet rapidly progressing technology that leverages quantum mechanics to tackle certain computational tasks exponentially faster than classical machines. While quantum computing is still maturing, its potential to supercharge AI workflows—often referred to as quantum-enhanced AI—has piqued the curiosity of data engineers and enterprises alike. This synergy could solve some of the biggest headaches in data engineering: accelerating data transformations, enabling more efficient analytics, and even facilitating entirely new kinds of modelling once believed to be intractable. In this article, we explore: How data engineering has evolved to support AI’s insatiable appetite for high-quality, well-structured data. The fundamentals of quantum computing and why it may transform the data engineering landscape. Potential real-world applications for quantum-enhanced AI in data engineering—from data ingestion to machine learning pipeline optimisation. Emerging career paths and skill sets needed to thrive in a future where data, AI, and quantum computing intersect. Challenges, ethical considerations, and forward-looking perspectives on how this convergence might shape the data engineering domain. If you work in data engineering, are curious about quantum computing, or simply want to stay on the cutting edge of technology, read on. The next frontier of data-driven innovation may well be quantum-powered.

Data Engineering Jobs at Newly Funded UK Start-ups: Q3 2025 Investment Tracker

Data. It’s the critical lifeblood of every forward-thinking organisation, fueling everything from strategic decision-making to real-time analytics. As data volumes skyrocket and technologies mature, the UK has distinguished itself as a frontrunner in data innovation. A robust venture capital scene, government-backed initiatives, and a wealth of academic talent have created fertile ground for data-centric start-ups across the country. In this Q3 2025 Investment Tracker, we’ll delve into the newly funded UK start-ups shaping the future of data engineering. More importantly, we’ll explore the rich job opportunities that have emerged alongside these funding announcements. From building scalable ETL (Extract, Transform, Load) pipelines to architecting data warehouses and implementing advanced data governance frameworks, data engineers, architects, and analysts have an incredible array of roles to pursue. If you’re eager to elevate your career in data engineering, read on for insights into the most dynamic start-ups, their fresh capital injections, and the skill sets they’re hungry for.

Portfolio Projects That Get You Hired for Data Engineering Jobs (With Real GitHub Examples)

Data is increasingly the lifeblood of businesses, driving everything from product development to customer experience. At the centre of this revolution are data engineers—professionals responsible for building robust data pipelines, architecting scalable storage solutions, and preparing data for analytics and machine learning. If you’re looking to land a role in this exciting and high-demand field, a strong CV is only part of the puzzle. You also need a compelling data engineering portfolio that shows you can roll up your sleeves and deliver real-world results. In this guide, we’ll cover: Why a data engineering portfolio is crucial for standing out in the job market. Choosing the right projects for your target data engineering roles. Real GitHub examples that demonstrate best practices in data pipeline creation, cloud deployments, and more. Actionable project ideas you can start right now, from building ETL pipelines to implementing real-time streaming solutions. Best practices for structuring your GitHub repositories and showcasing your work effectively. By the end, you’ll know exactly how to build and present a portfolio that resonates with hiring managers—and when you’re ready to take the next step, don’t forget to upload your CV on DataEngineeringJobs.co.uk. Our platform connects top data engineering talent with companies that need your skills, ensuring your portfolio gets the attention it deserves.