Senior Data Engineer (Databricks / Snowflake)
Role details
Job location
Tech stack
Job description
Our senior data engineers are hands-on leaders of consultants and client teams, building data platforms for clients in regulated financial services - private equity, real estate, fund administration, and specialist insurance. You'll work directly with client stakeholders, from engineering leads to CTOs, delivering production pipelines on Databricks or Snowflake (strong experience in one is sufficient). This is a hands-on build role with client exposure. You'll write code, review architecture decisions, lead junior engineers and explain trade-offs to people who aren't engineers., * Lead and mentor junior engineers on your delivery workstream, reviewing their code and data model decisions
- Build reliable ingestion pipelines that move client data from source systems into the platform efficiently and securely
- Design data models - Data Vault 2.0, Kimball Dimensional etc. that survive audit and give the business one trusted version of the numbers
- Build pipelines to agreed SLAs and own their reliability in production
- Work with domain SMEs to translate business logic into pipeline logic that produces correct numbers
- Bring LLM-based processing into pipelines where it fits, document parsing, entity extraction, unstructured data classification, alongside deterministic logic
- Build AI-powered business solutions on the platform, agents, search, and applied use cases on Mosaic AI or Cortex, that solve a client problem with trusted data rather than demo a capability
- Support pre-sales by sizing effort and cost for prospective engagements, contribute to delivery plans, and present technical approach to prospective clients
Requirements
- 4+ years in data engineering, with at least 2 years on Databricks or Snowflake in production (one platform is sufficient)
- Strong SQL and Python; comfort with PySpark or Snowpark
- Strong experience with at least one cloud vendor, Azure, AWS, or GCP, including core services beyond the data platform itself (networking, IAM, storage)
- Working knowledge of dimensional modelling (Kimball) and/or Data Vault 2.0
- Comfortable presenting technical decisions to non-technical stakeholders
- Track record of setting engineering standards and reviewing others' code for quality, not just correctness
- Comfortable leading or mentoring junior engineers on a delivery team, and taking ownership of technical decisions, * Snowflake or Databricks certifications
- Familiarity with private markets data (fund administration, private equity/real estate, secondaries) or London Market insurance
- Experience with supporting tooling such as IaC; Transformation (dbt); DevOps; Data Quality; Data Modelling; Data Glossary/Governance; iPaaS/ELT, Orchestration
- Some exposure to regulated environments - financial services, insurance, or similarly audited sectors - and awareness of relevant regulatory frameworks including FCA SYSC, DORA, and MiFID II
Benefits & conditions
Pulled from the full job description
- Annual leave
- Employee assistance programme
- Company pension
- Private medical insurance, * Competitive base salary
- Annual performance bonus tied to individual and company outcomes.
- Comprehensive benefits package including private medical insurance, life assurance, and income protection.
- Hybrid working model with flexible arrangements to support work-life balance.
- Generous pension scheme with enhanced employer contributions.
- Continuous learning budget and access to industry conferences, certifications, and training programmes.
- 25 days annual leave plus bank holidays, with option to buy additional days.
- Employee assistance programme and wellbeing support.