Lead Data Engineer

City of London
1 day ago
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Lead Data Engineer - Hybrid - London - Azure - Databricks - £85k + Bonus

I'm working with a global powerhouse that's been setting the standard for excellence for over 60 years. With more than 1,000 projects delivered worldwide and a combined value exceeding $150 billion, they've earned a reputation as a trusted leader in high-value, complex projects. Today, their 2,500-strong team spans three continents, driving innovation and growth at scale.

What truly makes this company stand out is its people-first culture. They champion respect, inclusion, and genuine care for their employees, backed by a flexible hybrid model that gives you control over which three office days you work each week. This is an organisation where world-class projects meet an environment that prioritises your well-being and career development.

I'm looking for a Lead Data Engineer who thrives on innovation and loves tackling complex data challenges. If building scalable, cloud-based solutions excites you, this is your chance to make a real impact. You'll work with cutting-edge technology and stay at the forefront of the data engineering field.

You'll Work With

Lead the architecture, design, and delivery of Azure Data Services solutions (Data Factory, Data Lake, Azure SQL)
Provide technical leadership in Agile delivery teams, mentoring engineers and influencing architectural decisions
Design and implement scalable Azure-based data solutions
Own the design and implementation of scalable, secure, and high‑performance Azure‑based data platforms
Lead the development strategy for advanced Power BI dashboards and analytics used by global stakeholders
Set best practices for data quality, governance, security, and accessibility

Benefits

Competitive salary up to £85k + 10% discretionary bonus
8% non-contributory pension, private medical insurance, virtual GP access
25 days annual leave (option to buy more), volunteering day, extra leave with tenure
A high-performance, high-trust environment with global exposure and flexibilityKey experience

Hands-on experience with Azure & Databricks
Strong data engineering and modelling skills
Proficiency in Power BI, T-SQL, DAX
Provide technical leadership in Agile delivery teams, mentoring engineers and influencing architectural decisions

Interviews are happening now don't wait to take the next step in your career. Apply today and secure your opportunity to join a leading team

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