Senior Agentic & Generative AI Consultant

London
4 days ago
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Position: Senior Agentic & Generative AI Consultant
Location: London, United Kingdom (Hybrid)
Fixed term contract or permanent position

Role Overview

We are seeking a Senior Agentic & Generative AI Consultant who is a recognized thought leader and hands on practitioner in modern AI systems. This individual will play a pivotal role in shaping AI led transformation for enterprise clients, leading complex deals, architecting solutions, and translating cutting edge AI capabilities into measurable business outcomes.

This role requires a rare combination of deep technical expertise, strategic thinking, and client facing leadership. The successful candidate will work closely with business leaders, architects, and delivery teams to design and deliver agentic, generative, and enterprise scale AI solutions, while also influencing AI strategy and go to market motions

Key Responsibilities

AI Strategy & Thought Leadership

Act as a senior thought leader in Agentic AI and Generative AI, shaping client conversations, executive briefings, and AI transformation roadmaps

Advise C‑suite and senior stakeholders on AI strategy, operating models, governance, and responsible AI adoption

Contribute to internal AI points of view, reference architectures, accelerators, and best practices

Stay ahead of industry trends in agentic systems, foundation models, orchestration frameworks, and enterprise AI platforms

Deal Leadership & Solutioning

Lead AI‑led deal pursuits, including opportunity shaping, solution design, estimations, and executive presentations

Own the end‑to‑end solution architecture for complex AI engagements, from discovery through implementation

Partner with sales, industry leaders, and delivery teams to craft compelling AI value propositions and business cases

Act as a trusted advisor during client evaluations, PoCs, and pilots

Hands‑on Technical Leadership

  • Design and guide the implementation of Agentic AI systems, including:

    • Multi‑agent architectures

    • Tool‑using and reasoning agents

    • Human‑in‑the‑loop workflows

    • Orchestration and memory patterns

  • Lead solution design using Generative AI and LLM ecosystems, including:

    • Prompt engineering and prompt pipelines

    • RAG (Retrieval‑Augmented Generation) architectures

    • Model fine‑tuning and evaluation strategies

  • Provide technical oversight and mentoring to engineering and data science teams

    Enterprise AI Delivery & Governance

    Design AI solutions that integrate with enterprise systems (e.g., ERP, CRM, digital platforms, data platforms)

    Ensure solutions align with security, compliance, data privacy, and responsible AI principles

    Define AI operating models covering lifecycle management, monitoring, cost optimization, and scalability

    Required Skills & Experience

    Core Experience

    15+ years of experience in technology consulting, digital transformation, or advanced analytics

    5+ years of hands‑on experience in AI / ML, with strong recent focus on Generative AI and Agentic AI

    Proven experience leading complex enterprise deals and large‑scale solutioning efforts

    Technical Expertise

  • Strong hands‑on experience with:

    • Large Language Models (LLMs) and GenAI platforms

    • Agentic frameworks and orchestration patterns

    • RAG pipelines, vector databases, and embeddings

  • Experience across major AI ecosystems (e.g., cloud AI platforms, open‑source LLM tooling)

  • Solid understanding of data engineering, APIs, and enterprise integration patterns

    Consulting & Leadership Skills

  • Strong client‑facing presence, capable of leading executive‑level discussions

  • Ability to translate complex AI concepts into clear business value narratives

  • Experience mentoring senior architects, engineers, and consultants

  • Comfortable operating in ambiguous, fast‑evolving AI landscapes

    Nice to Have

  • Experience with enterprise platforms (e.g., ERP, digital experience platforms, CRM, or industry‑specific systems)

  • Exposure to regulated industries (financial services, healthcare, public sector, etc.)

  • Publications, speaking engagements, or visible contributions to the AI community

  • Experience shaping AI Centres of Excellence (CoEs) or enterprise AI operating models

    What We Offer

  • Opportunity to shape and lead AI transformation for global enterprises

  • Work at the forefront of Agentic and Generative AI innovation

  • High‑impact role with visibility across senior leadership and marquee clients

  • Competitive compensation and benefits

  • Flexible working model based in London

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