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Data Scientist

PACE Global
Warrington
2 weeks ago
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This range is provided by PACE Global. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


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Recruitment Consultant | Hiring Project Controls Professionals (Planning, Cost Risk, Reporting) across the UK and Ireland

Data Scientist


Warrington/Hybrid


THE CLIENT & The OPPORTUNITY

We are working exclusively with a leading, high-growth technology consultancy—who are at the absolute forefront of Data & AI innovation.


They are seeking an exceptional Data Scientist to take a central, hands‑on role in their R&D and delivery team. This is a critical opportunity to define the AI landscape, building robust, production‑grade intelligent solutions for clients across high‑stakes sectors like [Industry 1], [Industry 2], and [Industry 3].


WHAT YOU WILL BE BUILDING (The Core Role)

  • GENAI LEADERSHIP: Designing, developing, and fine‑tuning cutting‑edge Generative AI applications (e.g., chat systems, knowledge assistants).
  • RAG ARCHITECTURE: Mastering and deploying robust Retrieval‑Augmented Generation (RAG) pipelines, integrating LLMs with complex enterprise data sources for unparalleled accuracy.
  • END‑TO‑END DELIVERY: Owning the entire solution lifecycle, from feature engineering and data mapping to scalable, production‑ready deployment.
  • CLOUD EXCELLENCE: Working closely with Data Engineers to utilize and optimize the full potential of the [Cloud Environment] ecosystem.
  • INNOVATION: Acting as a subject‑matter expert, constantly evaluating and integrating new AI/ML techniques.

CANDIDATE PROFILE

The ideal candidate will possess 4–5 years of dedicated professional experience and demonstrable proficiency across:



  • CORE EXPERIENCE: Strong command of Generative AI, LLMs, and RAG principles. Proven experience managing the end‑to‑end ML lifecycle.
  • TECH STACK: Proficiency in Python (Pandas, NumPy, LangChain). Deep familiarity with the [Specific Vendor]’s [Cloud Environment] AI and Data Stack (Azure ML, Azure OpenAI, Databricks).
  • SPECIALIZATION: Expertise in Vector databases (FAISS, Pinecone, Azure AI Search), Prompt Engineering, and familiarity with products like [Specific Vendor Product 1].

THE CULTURE

Our client seeks curious, pragmatic problem‑solvers who embody their core values: Integrity, Drive, Empathy, Adaptability, and Loyalty (their [Value Set Acronym] framework). This is a fast‑paced environment that rewards technical expertise and clear execution.


APPLY NOW or reach out for a confidential discussion!


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Consulting and Engineering


Industries

Construction and Engineering Services


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