Data Engineer

Intellect Group
Cambridge
2 days ago
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Get AI-powered advice on this job and more exclusive features.This range is provided by Intellect Group. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.Base pay range Direct message the job poster from Intellect GroupSenior Recruiter @ Intellect Group | Data, ML & AI Job Title: Mid-Level Data EngineerLocation: Fully Remote (UK-based applicants only, with optional weekly co-working in Cambridge)Employment Type: Full-Time, PermanentSector: Data & AI Consultancy – Banking & Video GamingSalary: Competitive, dependent on experienceAbout the RoleIntellect Group is delighted to be recruiting on behalf of a specialist data consultancy based in Cambridge, renowned for delivering high-impact solutions across the Banking and Video Gaming sectors. Their areas of expertise include Digital Transformation , Machine Learning & AI , Data Engineering , and Data Science .As they continue to grow, they are now looking for a Mid-Level Data Engineer to join their close-knit team. This is a fantastic opportunity for a technically strong and motivated individual with a few years of experience under their belt, who’s ready to take ownership of their work, contribute to complex projects, and work directly with clients in a variety of industries.This role is fully remote , with the option of joining the team once a week in Cambridge for collaborative working and professional development.Key ResponsibilitiesDesign, build and optimise scalable and robust data pipelines and architecturesDevelop and maintain ETL workflows using modern toolingContribute to solution design and technical delivery across multiple client projectsCollaborate closely with data scientists, analysts, and consultants to support ML/AI deploymentIntegrate data from a variety of cloud and on-premise sourcesParticipate in internal code reviews, architecture discussions, and knowledge sharingEngage with clients to understand requirements and translate them into technical solutionsCandidate Profile3–7 years of experience as a Data Engineer (or in a similar role)Strong programming skills in Python and working knowledge of SQLSolid understanding of data modelling, data warehousing, and ETL best practicesExposure to both AWS and Google Cloud Platform (GCP)Comfortable working independently and collaborating within a distributed teamExcellent communication and stakeholder engagement skillsUK-based with the option to join weekly co-working days in CambridgeNice to HaveExperience working within a consultancy or client-facing environmentFamiliarity with tools and frameworks such as:DatabricksPySparkAirflow or dbtWhat’s On OfferFully remote working with the flexibility to work from anywhere in the UKOptional weekly in-person collaboration in CambridgeFrequent team socials and company trips – previous destinations include Italy and the Peak DistrictFriendly, talented team culture with a strong emphasis on knowledge-sharingExposure to cutting-edge data projects across highly dynamic sectorsSeniority level Not ApplicableEmployment type Full-timeJob function Industries: Data Infrastructure and Analytics#J-18808-Ljbffr

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