Senior Data Engineer

trg.recruitment
Liverpool
9 months ago
Applications closed

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Senior Data Engineer - (Python & SQL)

📍Location:Remote-first (UK-based)

đź’°Rate:Up toÂŁ550 p/d

📆Contract:6 - 12 months (Outside IR35)

đź› Tech Stack:Python, FastAPI, GCP, BigQuery, Apache Spark, Apache Beam, Google Cloud Dataflow


We're working with aforward-thinking consultancythat helps top companiesbuild and scale high-performance data platforms. They take anengineering-first approach, and more than half of their team consists of hands-on engineers. If you love working withlarge-scale data processingand cutting-edge cloud technologies, this one’s for you.


What You’ll Be Doing:

🔹 Buildingdata pipelines and ETL workflowsthat processhuge datasets

🔹 Designing, optimizing, and maintaininghigh-throughput reporting solutions

🔹 Working withApache Sparkfor large-scale data processing

🔹 UsingApache Beam and Google Cloud Dataflowto manage complex data workflows

🔹 Developing and improvingbackend APIsto support data-heavy applications


What You Need:

✔Strong Python skills– writing clean, efficient, and scalable code

âś” Experience withBigQuery, PostgreSQL, and Elasticsearch

âś” Hands-on experience withGoogle Cloud, Kubernetes, and Terraform

âś” Deep understanding ofApache Sparkforlarge-scale data processing

âś” Knowledge ofApache Beam & Google Cloud Dataflowfor data pipeline orchestration

âś” A team-first mindset withstrong communication skills


This is acontract role outside IR35, so youmust be UK-basedand have aregistered companyin the UK. Interested? ClickApplyor reach out to Ionut Roghina for more details! 🚀

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