Senior Consultant - GenAI

London
8 months ago
Applications closed

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Senior Consultant - GenAI
Are you passionate about applying Generative AI to real-world challenges? A leading global consultancy is seeking hands-on GenAI experts to join its AI Platforms team.
About the Role
Based in London,and across Northern Europe, the AI team designs and builds AI solutions for clients worldwide. As a GenAI IT Consultant, you'll work with senior client stakeholders to define GenAI strategies, secure buy-in, and deliver impactful solutions. You'll collaborate with internal teams to drive digital transformation and enhance clients' AI capabilities.
Key Responsibilities

Shape and deliver GenAI strategies and solutions
Guide client technology teams and manage project quality and risk
Apply agile methods and modern IT practices
Support business development and mentor junior team members
Contribute to internal practice development and thought leadershipWhat We're Looking For

3-10 year's experience in IT strategy, consulting, or software development
Prior consulting experience essential
Strong technical knowledge of GenAI and ML, including LLMs, RAG, MLOps, and prompt engineering
Familiarity with platforms such as AWS Bedrock, Google Vertex, LangChain, or LlamaIndex
Experience with both legacy systems and modern tech stacks
Proven track record in agile delivery and digital transformation
Excellent communication, analytical, and stakeholder management skills
Willingness to travel internationallyDesirable Attributes

Degree in Computer Science, Engineering, or related field
Strategic mindset with entrepreneurial drive
High ethical standards and professional integrity
Strong interpersonal skills and ability to build trust

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