AI Lead, AI Engineer Lead, Generative AI Engineer, Machine Learning Engineer, AI Platform Engineer, NLP Engineer, Applied AI Engineer, AI Integration Specialist, AI Software Engineer, AI Systems Architect, AI Engineer, AI Development Lead,

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London
1 month ago
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About Our Client

AI Engineer - LeadThis opportunity is with a well-established organisation in the Business Services industry. The company is known for its focus on innovation and providing tailored solutions to its clients. With a collaborative and professional work environment, they are committed to delivering high-quality services.

Job Description

AI Engineer - Lead

Lead the design and implementation of AI and analytics projects to support business objectives. Collaborate with stakeholders to identify opportunities for leveraging data-driven strategies. Oversee the development and deployment of machine learning models and algorithms. Manage and mentor a team of data scientists and analysts. Ensure the quality and accuracy of data used for decision-making processes. Stay updated on the latest AI trends and technologies to incorporate into business solutions. Develop and present comprehensive reports on AI initiatives and their impact. Ensure compliance with data privacy regulations and best practices.

The Successful Applicant

AI Engineer - LeadA successful AI Lead should have:

A strong background in analytics or a related field within the Business / Financial Services industry. Experience with Generative AI, Large Language Models (LLMs), and advanced frameworks like: LangChain, LangGraph, Haystack LlamaIndex, CrewAI, AutoGen, Transformers (Hugging Face) and RAG pipelines. Proven experience in leading teams and managing complex AI projects. Expertise in machine learning, data modelling, and advanced statistical techniques. Strong programming skills in relevant languages such as Python or R. Exceptional problem-solving skills and attention to detail. Excellent communication and stakeholder management abilities. Knowledge of data privacy regulations and ethical AI practices.

What's on Offer

AI Engineer - Lead

Competitive annual salary ranging from £85,000 to £100,000. Comprehensive benefits package. Opportunity to work in a professional and innovative environment in London. Chance to lead a talented team within the Business / Financial Services industry.

If you are passionate about AI and analytics and ready to take the next step in your career, apply now to join this exciting opportunity.

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