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AI Lead

Leeds
9 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

We are partnered with a reputable global consultancy that are looking for an AI Lead to work on a very exciting LONG-TERM PROJECT in the financial services sector. Please note that this is an URGENT requirement so please apply promptly to avoid missing out.
Role: AI Lead
Rate: Up to £500 per day (inside IR35)
Location: Leeds
Style: Hybrid
Duration: 3 months (initially – view to extend)
Role description:

  • Provide specialist knowledge in data science and AI to develop an approach to a data intelligence hothouse venture.
  • Consult with stakeholders to assess risks and present recommendations for appropriate monitoring and guardrails.
  • Provide upskilling and knowledge transfer to the Data teams and facilitate learning sessions for wider stakeholders to uplift business understanding.
  • Lead and facilitate innovation sessions to identify proof of concepts to drive opportunities to unlock value.
  • Support organizational design thinking, understanding culture and capabilities required within the Data Function and wider data users to support new/changing approaches.
  • Work alongside the Data Senior Leadership team to create the business case for the hothouse venture to drive forward sustainable and ethical use of AI.
    Key Skills:
  • Proven experience with MSc or PhD in a Data Science related field, demonstrating a clear understanding of application of AI and ML techniques.
  • Knowledge across NLPs and LLMs, deep learning and ability to experiment/test and learn though a variety of solutions and data products.
  • Grounded knowledge in ‘black box’ regulatory and legislative requirements, including ethical data governance with the ability to interpret and apply judgement at an enterprise risk level.
  • Great stakeholder management skills, advising senior leaders with key decisions through to communications with colleagues at process level, able to translate complex information into clear business outcomes.
  • Experience in changing operating models including Process, Organization, Technology & Information.
    If you are interested and have the relevant experience, please apply promptly and we will contact you to discuss it further.
    Yilmaz Moore
    Senior Delivery Consultant
    London | Bristol | Amsterdam

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