Lead AI Architect | Remote

London
11 months ago
Applications closed

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We’re seeking a senior-level AI Practice Lead Architect to drive solution design, shape technical bid responses, and lead delivery for AI & Data initiatives. In this role, you will:

Own Architecture Strategy: Champion best practices, ensure technical alignment, and guide the AI & Data practice.
Engage Clients: Serve as a trusted advisor to senior stakeholders, develop compelling solutions, and build enduring partnerships.
Lead Teams: Inspire, mentor, and manage an architecture community, setting high standards for professional services.
Drive Innovation: Leverage advanced AI/ML tools (e.g., AWS, Azure, ChatGPT, LLMs), implement modern data architectures, and contribute to global AI initiatives.
Ensure Compliance & Standards: Uphold GDPR, InfoSec, and ethical AI frameworks, maintaining robust governance.What We’re Looking For

Demonstrated success in enterprise/solution architecture and cloud-native approaches.
Strong expertise in AI & ML solutions, with a passion for new technologies (LLMs, GenAI, OCR, data pipelines).
Client-facing consulting experience, particularly in complex solution delivery and bid ownership.
Proven ability to lead cross-functional teams and nurture high-performance cultures.
A growth mindset and the ability to spot and act on business opportunities

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