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Data Engineer

Billingsgate
1 month ago
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Data Engineer

Data Engineer

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Data Engineer

Data Engineer

Senior Data Engineer – Hybrid / London - £130K + Bonus & Benefits – FinTech

Overview:
An established global FinTech organisation is seeking a skilled Senior Analytics Engineer / Data Engineer to help define and manage its analytical data models and semantic layers.
You will support the development of reliable, well-structured datasets that enable accurate reporting, improved data accessibility, and better decision-making across the business.
Fluent Russian language skills are essential for this role.

Role & Responsibilities:

Build and maintain scalable semantic/analytics layers to create consistent business metrics and definitions.
Work with teams across the business to understand requirements and translate them into reliable models.
Develop core data models following modern data warehouse principles.
Write high-quality SQL and maintain dbt-based transformations, tests, and documentation.
Support colleagues by ensuring data quality and clarity throughout the analytics ecosystem.
Collaborate with data engineering teams to shape upstream data needs.
Work with analysts and data consumers to promote usability and data literacy.
Essential Skills & Experience:

Fluent Russian language proficiency.
Experience as an Analytics Engineer or Data Engineer, particularly in data modelling.
Strong SQL and hands-on dbt experience.
Ability to convert business requirements into logical, scalable data models.
Knowledge of cloud data platforms (e.g., Snowflake, Redshift, BigQuery).
Strong communication and documentation skills.
Structured, detail-oriented mindset.Desirable:

Experience with semantic modelling tools (e.g., dbt SL, LookML).
Familiarity with workflow orchestration and BI tooling.
Version control experience (Git).
Python for scripting.
Offer Details:

Type: Permanent
Location: London / Hybrid (4X per week in London)
Compensation: £130K & Bonus + benefits
Health & wellbeing support
Learning & development opportunities
Social / team activities

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