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Data Scientist

We Are Dcoded Limited
Manchester
2 days ago
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Data Scientist

Agentic AI & LLMs (Claude AI)
Location:

Hybrid (Manchester office presence required fortnightly)
Salary: £80,000

£90,000 DOE
Job Type: Full-time, Permanent
Our client is a fast-growing technology business developing next-generation AI solutions to transform enterprise workflows. Their platforms help organisations in highly regulated sectors streamline decision-making, automate repetitive tasks, and unlock new insights from complex data. They combine human expertise with cutting-edge AI to deliver safe, scalable, and explainable solutions.
The Role
We are seeking a Data Scientist to join an expanding AI team focused on building Agentic AI systems and developing Large Language Models (LLMs), including Claude AI . You will design, develop, and implement AI models that bring intelligent reasoning and automation into enterprise applications.
This is a hybrid position, with Manchester office presence required once every two weeks for collaboration and team sessions.
What Were Looking For
Strong track record in data science and machine learning , with practical experience in LLMs and generative AI .
Knowledge of Claude AI or equivalent LLM frameworks, including fine-tuning and prompt engineering.
Proficiency in Python and modern ML frameworks (e.g., PyTorch, Hugging Face Transformers).
Experience designing and evaluating production-ready AI models and pipelines.
Exposure to the Azure Cloud Platform and related data engineering tools.
Desirable: Prior experience in a startup or scale-up environment , demonstrating adaptability and a hands-on approach.
Why Join?
Competitive salary between £80,000

£90,000 DOE .
Flexible hybrid working model with fortnightly office presence .
Work with cutting-edge AI technologies at the forefront of enterprise adoption.

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