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Data Engineer

Intellect Group
City of London
2 days ago
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Graduate Data Engineer


📍 London (2 days in office, hybrid) | 💼 Full-time | 🎓 0–2 Years’ Experience


Are you an aspiring Data Engineer eager to turn raw financial data into clean, structured, and scalable systems?


We’re looking for a curious and motivated Graduate Data Engineer to join a hybrid-working team building cutting-edge data infrastructure for the financial sector. You’ll spend 2 days a week in the office working directly with the Senior Data Engineer, and the rest working remotely — giving you the best of both worlds.


You’ll be working on a platform that transforms diverse datasets into actionable insights — learning how to design ETL pipelines, manage cloud-based data systems, and deploy solutions that scale.


In this role, you’ll help build, test, and maintain the pipelines and systems that power real-world applications. From data ingestion and transformation to monitoring and optimisation, you’ll gain hands-on experience across the full data engineering lifecycle — while contributing to a product used by clients in the financial industry.


What’s in it for you?

📄 Data That Matters – Work on pipelines and systems that turn complex financial data into structured insights.

Hands-On Engineering Experience – Learn the full data workflow — from ingestion to cloud deployment and monitoring in production.

📈 Mentorship & Growth – Work directly with a Senior Data Engineer who will guide your technical and career development.

🤝 Collaborative Environment – Partner with engineers, data scientists, and domain experts to solve real-world challenges.

🏢 Hybrid Flexibility – Work remotely while spending 2 days per week in the office for collaboration and learning.


What We’re Looking For:

  • 0–2 years of experience in data engineering, analytics, or software development (internships and projects count!).
  • Solid Python and SQL skills.
  • Familiarity with Google Cloud Platform (BigQuery, Dataflow, Pub/Sub, Cloud Storage, Composer, etc.).
  • Understanding of ETL/ELT processes and database fundamentals.
  • A motivated, proactive mindset with a strong desire to learn and grow.


Nice to Have:

  • Exposure to data pipeline tools (e.g. Apache Airflow, dbt).
  • Experience with containerisation tools like Docker.
  • Familiarity with version control and CI/CD practices.
  • Knowledge of BI tools (Looker, Tableau, or similar).


If you’re excited to grow your career in data engineering and want to build scalable systems entirely on Google Cloud — we’d love to hear from you.


Apply now and start your journey as a Graduate Data Engineer.

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