Lead Data Engineer

JGA Recruitment Group | B Corp
London
2 days ago
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Lead Data Engineer


Tech Stack: Python | Spark | Kafka | Airflow | Vector DBs

Location: London - office based

Salary: Up to £140k + equity


We’re partnering with a well-funded AI startup building a category-defining platform within a major UK industry undergoing rapid transformation.


This is a first data hire and a genuinely high-impact role, owning and building the entire data infrastructure from the ground up.


You’ll work closely with AI and engineering teams to design scalable data pipelines, support machine learning systems, and enable real-time, intelligent decision-making across the platform.


What you’ll be doing:

• Building and scaling modern data pipelines (batch + real-time)

• Designing data architecture across relational, NoSQL, and vector databases

• Supporting ML workflows and AI-driven products

• Driving performance, scalability, and data reliability

• Influencing technical strategy in a fast-growing environment


What we’re looking for:

• 7+ years in Data / Backend Engineering

• Strong Python and distributed systems experience

• Hands-on with modern data tooling (Spark, Airflow, Kafka, etc.)

• Experience with relational + NoSQL databases (vector DBs a big plus)

• Comfortable in a fast-paced, early-stage environment


💡 High ownership, strong engineering culture, and meaningful equity on offer.


Apply or message me directly for more details.


JGA are dedicated to delivering the best possible candidate experience. Due to the high volume of applications, we regret that we are not always able to respond to every individual applicant. If your application is shortlisted, a member of our team will be in touch. Thank you for your understanding.


JGA Recruitment Group Ltd ("We") are committed to equality of opportunity for all applications regardless of age, disability, sex, gender reassignment, sexual orientation, pregnancy and maternity, race, religion or belief and marriage and civil partnerships. We strongly encourage suitably qualified applicants from a wide range of backgrounds to apply.


We are also committed to protecting and respecting your privacy. We are a specialist Payroll and HR recruitment agency and recruitment business as defined in the Employment Agencies and Employment Businesses Regulations 2003 (our business). These statements together with our privacy notices set out the basis on which any personal data we collect from you, or that you provide to us, will be processed by us.

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