AI Implementation Manager

Manchester
9 months ago
Applications closed

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AI Implementation Manager

My financial client based in South Manchester is currently seeking an experienced AI Implementation Manager to lead the global rollout of AI initiatives across the organisation. This is a strategic role at the forefront of innovation, responsible for embedding artificial intelligence into core business processes to enhance efficiency, decision-making, and customer experience.

As part of a forward-thinking technology function, you will work across business units to identify opportunities, drive AI adoption, and deliver measurable outcomes through intelligent automation and data-driven solutions.

Key Responsibilities:

Define and lead the global AI implementation roadmap, aligning with business strategy

Collaborate with cross-functional teams to identify and prioritise AI use cases

Manage end-to-end implementation of AI projects, from concept to delivery

Evaluate and integrate AI platforms, tools, and vendor solutions

Monitor project progress, risks, and benefits realisation

Promote AI best practices, governance, and ethical considerations

Build business cases and communicate value to senior stakeholders

Required Experience:

Proven experience managing AI/ML implementation projects in a complex organisation

Strong understanding of AI technologies, including machine learning, natural language processing, and automation tools

Experience working in financial services or similarly regulated industries

Excellent stakeholder management and communication skills

Ability to translate technical solutions into business outcomes

Strong project leadership skills, ideally with experience in agile environments

Desirable:

Familiarity with cloud AI platforms (e.g. Azure AI, AWS SageMaker, Google Vertex AI)

Experience with data governance, compliance, and risk in AI deployments

Understanding of change management principles in large-scale technology programmes

Why apply?

This is a high-impact opportunity to shape the future of AI within a respected financial institution with a global footprint. You’ll be joining a collaborative team where innovation is encouraged and your expertise will directly influence business performance.

Interested? Please Click Apply Now!

AI Implementation Manager

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