Senior Data Scientist (GenAI)

Acuity Analytics
Bristol
1 week ago
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Overview

About The Role Join our rapidly growing Data Practice as we build cutting-edge Generative AI solutions for clients across industries. In this role, you’ll work hands-on with multi-disciplinary teams to design, prototype, and deliver AI solutions that tackle real business challenges. You’ll collaborate closely with clients, taking them on the journey from early adoption to full-scale deployment, blending technical expertise with a strong consultative approach.


Responsibilities

  • Collaborate with clients to understand business needs and identify where Generative AI can add value.
  • Lead prompt engineering and chain-of-thought reasoning to build LLM-based solutions.
  • Implement Retrieval-Augmented Generation (RAG) solutions, optimizing chunking, metadata, and retrieval processes.
  • Ensure all solutions follow Responsible AI principles.
  • Rapidly develop demos to showcase the potential of Generative AI.
  • Contribute to the development of internal GenAI methodologies, frameworks, and accelerators.
  • Be an active member of our Data Science and Generative AI communities, helping to evolve capabilities and share knowledge across the organization.

Qualifications

  • Proven experience in LLM / Generative AI and RAG projects, ideally in a leadership or senior delivery role.
  • 4+ years in a data science or related role, with hands-on NLP experience.
  • Fluent in Python, capable of rapidly prototyping solutions and delivering production-ready code.
  • Familiarity with Azure data services and cloud-based AI infrastructure.
  • Knowledge of best practices in model tuning, drift monitoring, and optimization.
  • Strong consulting and stakeholder management skills; able to break down complex business problems and propose clear technical solutions.
  • Experience using FastAPI or other API frameworks is desirable.


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