Senior Data Engineer

The Trust
Bristol
1 day ago
Create job alert
Responsibilities

  • implementations

    • reports/consumersIdentifying mismatches in logic, filters, grain, naming; spotting duplication/missing metricsData distribution & activation flowsMapping and validating data movement to/from channels and tools (Braze, Amplitude, Segment)Understanding of journey/event data patterns and downstream consumption constraintsClient/household/relationship model discoveryReviewing Client Hub / identity models and party-account linkingIdentifying modelling gaps for parent-child linking and future relationship requirementsData quality & governance collaborationWorking with governance/DQ teams to assess controls, checks, and accountability.Translating DQ issues into engineering backlog items and operational monitoring needsEvidence-driven remediation planningProducing domain assessment notes, diagrams, traceability tables, and cost/perf findingsEstimating effort (S/M/L), dependencies, and technical risk for backlog prioritisationCommunication and stakeholder workingComfortable
    • interviewing SMEs and translating input into clear technical artefacts.Able to present findings to architecture, engineering, BI/MI reporting teams, and governance stakeholders.



Skills

Snowflake engineering (hands‑on) Advanced SQL and performance troubleshooting (query profiling, workload behaviour) Warehouse utilisation analysis (top warehouses/queries, heavy tasks, large tables) Practical cost optimisation tactics and "cost heatmap" creation Ingestion and orchestration deep expertise End-to-end ingestion reviews from core source systems (2–3 systems typical) Orchestration tooling/jobs analysis (dependencies, scheduling, retries, idempotency) ETL vs ELT patterns; reload vs incremental logic; backfill and replay strategies. Transformation chain analysis Ability to trace staging transforms curated/core layers. Identifying brittle/hard‑coded business rules and refactoring opportunities Data modelling in core domains Strong modelling capability for Client, Accounts/Holdings, Transactions (or equivalent) Historisation, auditability, lineage awareness, and error handling in core models Metric traceability and reconciliation Tracing metrics from Precisely definitions Snowflake.


#J-18808-Ljbffr

Related Jobs

View all jobs

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

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

Industry Insights

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

What Hiring Managers Look for First in Machine Learning Job Applications (UK Guide)

Whether you’re applying for machine learning engineer, applied scientist, research scientist, ML Ops or data scientist roles, hiring managers scan applications quickly — often making decisions before they’ve read beyond the top third of your CV. In the competitive UK market, it’s not enough to list skills. You must send clear signals of relevance, delivery, impact, reasoning and readiness for production — and do it within the first few lines of your CV or portfolio. This guide walks you through exactly what hiring managers look for first in machine learning applications, how they evaluate CVs and portfolios, and what you can do to improve your chances of getting shortlisted at every stage — from your CV and LinkedIn profile to your cover letter and project portfolio.

MLOps Jobs in the UK: The Complete Career Guide for Machine Learning Professionals

Machine learning has moved from experimentation to production at scale. As a result, MLOps jobs have become some of the most in-demand and best-paid roles in the UK tech market. For job seekers with experience in machine learning, data science, software engineering or cloud infrastructure, MLOps represents a powerful career pivot or progression. This guide is designed to help you understand what MLOps roles involve, which skills employers are hiring for, how to transition into MLOps, salary expectations in the UK, and how to land your next role using specialist platforms like MachineLearningJobs.co.uk.

The Skills Gap in Machine Learning Jobs: What Universities Aren’t Teaching

Machine learning has moved from academic research into the core of modern business. From recommendation engines and fraud detection to medical imaging, autonomous systems and language models, machine learning now underpins many of the UK’s most critical technologies. Universities have responded quickly. Machine learning modules are now standard in computer science degrees, specialist MSc programmes have proliferated, and online courses promise to fast-track careers in the field. And yet, despite this growth in education, UK employers consistently report the same problem: Many candidates with machine learning qualifications are not job-ready. Roles remain open for months. Interview processes filter out large numbers of applicants. Graduates with strong theoretical knowledge struggle when faced with practical tasks. The issue is not intelligence or effort. It is a persistent skills gap between university-level machine learning education and real-world machine learning jobs. This article explores that gap in depth: what universities teach well, what they routinely miss, why the gap exists, what employers actually want, and how jobseekers can bridge the divide to build successful careers in machine learning.