At a Glance
- Tasks: Design and develop high-performance data pipelines and support analytics infrastructure.
- Company: Join Peaple Talent, a dynamic partner in the tech industry, based in Bristol.
- Benefits: Enjoy a full-time role with opportunities for remote work and professional growth.
- Why this job: Be part of an innovative team that values collaboration and continuous improvement.
- Qualifications: Experience with SQL, Python, and data pipeline architecture is essential.
- Other info: Ideal for mid-senior level candidates looking to make an impact in technology.
The predicted salary is between 60000 - 84000 ÂŁ per year.
Data Engineer | Permanent Full-Time | London Hybrid | Up to ÂŁ65,000 per annum
Peaple Talent have partnered with a leading consultancy in the automation space looking to recruit a Data Engineer on a Souzaâfullâtime permanent basis in London.
Our client is expanding their Automation and Analytics capability and is looking for an experienced Data Engineer to help shape and scale their data landscape. This position focuses on creating reliable, highâperformance data workflows within a mixed onâpremise and cloudâbased environment, while continuously improving the underlying沿data platform to meet the needs of varied and evolving engagements.
You will be embedded in a multidisciplinary team, collaborating with analytics specialists, engineers, and clientâfacing consultants to deliver dataâdriven solutions.××× Ă° The role offers exposure to a broad range of data types and systems, primarily supporting a multinational enterprise operating across sectors such as energy,аŃÓи natural resources, manufacturing, food production, infrastructure, and transportation throughout Europe.
This role suits someone who takes initiative, adapts quickly, and thrives in a setting where priorities shift and multiple platforms must be supported simultaneously. Success in this position requires balancing handsâon delivery with a strategic mindset, ensuring data solutions remain scalable, consistent, and fit for purpose across different clients and use cases.
Key Responsibilities:
- Assume full responsibility for legacy and inâflight data solutions, overseeing their reliability, troubleshooting issues, implementing improvements, and ensuring longâterm stability.
- Work closely with stakeholders to understand operational goals, assess current platforms and data movements, and translate business requirements into clear technical and functional designs.
- Collect, structure, cleanse, and harmonise data originating from multiple internal and external sources.
- Act as a technical lead on selected engagements, guiding delivery and technical decisionâmaking.
- Design and implement scalable data architecture and ingestion frameworks to support efficient data processing, leveraging SQL, cloudânative services, and integration tooling across AWS and Azure environments.
- Build and maintain serverâside components, including database layers, Handle services, APIs, and core application logic.
- Deploy, configure, and support platforms and tooling within a hybrid cloud setup.
- Prepare and structure datasets to support downstream analytics, reporting, and AIâdriven use cases.
- Apply and uphold best practices around data governance, security, and lifecycle management.
- Support consulting and analytics teams by contributing to delivery plans, solution proposals, partner evaluations, and proofâofâconcept activities.
- Provide guidance and coaching to lessâexperienced team members, supporting their technical development.
Key Experience Required:
- Previous handsâon experience delivering data engineering solutions or working insemosly related technical role.Action.
- Strong practical expertise in Python and SQL, with the ability to apply both in production environments.
- Familiarity with workflow scheduling and orchestration platforms such as Apache Airflow or equivalent tools.
- Proven experience working across modern data platforms, including relational databases, data warehouses, data lakes, ingestion frameworks, and DataOps tooling.
- Demonstrated use of cloudânative services within bothinteraction AWS and Microsoft Azure ecosystems.
- Solid backâend engineering capabilities, including an understanding of application servers, database layers, and APIâbased integrations.
- Working knowledge of common web frameworks and how they fit into fullâstack architectures.
- Ability to investigate and diagnose dataârelated issues by performing root cause analysis across systems and processes, translating findings into actionable improvements.registration.
- In-depth understanding of data modelling concepts and analytical techniques, including data mining approaches.
- Experience lavabo handling and processing semiâstructured or unstructured data sources.
- Capability to design and implement pipelines that manage data transformations, schemas, metadata, dependencies, and workload scheduling.
- Strong command of source control practices using tools such as Git, alongside experience with automated build, test, and deployment pipelines.
- Handsâon experience supporting, maintaining, and evolving production data applications.
- Curiosity about emerging technologies and a proactive approach to expanding technical skill sets beyond core responsibilities.
Please apply directly on LinkedIn with an upâtoâdate copy of your CV.
Seniority level
- MidâSenior level
Employment type
- Fullâtime
Job function
- áááááááá
- Information Technology
- Technology, Information and Media
#J-18808-Ljbffr
Data Engineer employer: Peaple Talent
Contact Detail:
Peaple Talent Recruiting Team
StudySmarter Expert Advice đ¤Ť
We think this is how you could land Data Engineer
â¨Tip Number 1
Familiarise yourself with the specific technologies mentioned in the job description, such as SQL, Python, and PySpark. Being able to discuss your hands-on experience with these tools during interviews will demonstrate your capability and readiness for the role.
â¨Tip Number 2
Engage with the Agile community by participating in relevant forums or local meetups. This not only helps you stay updated on best practices but also allows you to network with professionals who might provide insights or referrals for the Data Engineer position.
â¨Tip Number 3
Showcase your collaborative skills by discussing past projects where you worked closely with multidisciplinary teams. Highlighting your ability to gather requirements and tailor solutions will resonate well with the hiring team.
â¨Tip Number 4
Stay current with emerging technologies related to data engineering. Consider building a small project or prototype using cloud-native services like AWS or Azure to demonstrate your initiative and practical knowledge during interviews.
We think you need these skills to ace Data Engineer
Some tips for your application đŤĄ
Tailor Your CV: Make sure your CV highlights relevant experience and skills that align with the Data Engineer role. Focus on your hands-on expertise with SQL, Python, and PySpark, as well as any experience with Agile frameworks and data pipeline architecture.
Craft a Strong Cover Letter: In your cover letter, express your enthusiasm for the position and the company. Mention specific projects or experiences that demonstrate your ability to design and maintain data pipelines, and how you can contribute to their analytics infrastructure.
Showcase Technical Skills: Clearly list your technical skills in your application. Include your proficiency with tools like Azure DevOps, Apache AirFlow, and cloud services such as AWS. Providing examples of how you've used these tools in past roles can strengthen your application.
Highlight Collaboration Experience: Since the role involves working closely with multidisciplinary teams, emphasise any previous collaborative projects. Discuss how youâve partnered with other engineers or teams to deliver impactful data solutions, showcasing your teamwork and communication skills.
How to prepare for a job interview at Peaple Talent
â¨Showcase Your Technical Skills
Be prepared to discuss your hands-on experience with SQL, Python, and PySpark. Bring examples of data pipelines you've built or optimised, and be ready to explain the challenges you faced and how you overcame them.
â¨Understand Agile Methodologies
Since the role involves participating in Agile team practices, brush up on Agile principles and be ready to discuss your experience with tools like Azure DevOps. Highlight any specific contributions you've made in Agile environments.
â¨Demonstrate Problem-Solving Abilities
Expect to face questions about diagnosing and resolving data challenges. Prepare to share specific instances where you improved system performance or data integrity, showcasing your analytical skills.
â¨Communicate Complex Concepts Simply
You'll need to translate complex engineering concepts for non-technical audiences. Practice explaining your past projects in a way that anyone can understand, focusing on the impact of your work rather than just the technical details.