Data Engineers & Scientists -SC required

PACE Global
Warrington
2 weeks ago
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Data Analysts/Engineers/Scientists - SC essential

Project Controls Recruitment Expert - P6 Planning, Cost, & Risk. 200+ LinkedIn Testimonials, CaSA Director, Co-Founder of Project Connect Group


Hiring Data Analyst, Data Engineer and Data Scientists


Must have Security Clearance


Warrington


If you have 4–5 years of experience in data roles and a passion for Generative AI, ChatGPT, machine learning, and Azure’s modern data stack, we want to hear from you.


What We’re Hiring For

You’ll transform raw data into compelling insights, build enterprise‑grade Power BI solutions, and work with Azure technologies such as Data Factory, Synapse and Databricks. Storytelling with data is key.


You’ll design and optimise cloud‑first data pipelines using Azure Data Factory, Synapse, Data Lakes, and Databricks, enabling scalable analytics, AI, and automation across critical UK sectors.


You’ll develop end‑to‑end ML and Generative AI solutions, including chat‑based applications, RAG pipelines, and LLM‑powered tools using Azure Machine Learning, Azure OpenAI, and vector databases.


Why Join?

  • You’ll work at the edge of innovation, building solutions that combine:
  • Real‑world impact across nationally important infrastructure
  • A collaborative, values‑driven team culture

We’re looking for people with a builder’s mindset — analytical, curious, and eager to explore where AI can take us next.


Security Requirements

  • Hold active SC clearance
  • Be eligible and willing to obtain SC (usually 5 years’ UK residency)

For more information contact Chin -


Seniority level

Associate


Employment type

Full‑time


Job function

Analyst, Science, and Engineering


Industries: Civil Engineering


Location

Warrington, England, United Kingdom


Base pay range

Direct message the job poster from PACE Global


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