Consultant – Generative AI & Data Strategy

Liberty IT
Belfast
1 day ago
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We are Liberty IT: industry leaders in digital innovation.Liberty IT is part of Libe...

Consultant – Generative AI & Data Strategy

Join a dynamic team at the forefront of innovation, working closely with clients to tackle complex business challenges using cutting-edge technologies such as Generative AI (GenAI), data analytics, and advanced engineering platforms like Liberty GPT. This role blends strategic consulting with hands-on technical leadership, encompassing engineering, architecture, product ownership, and transformation initiatives at scale.

As a consultant, you will operate in ambiguous environments, helping organizations enhance their technology literacy and capabilities around AI and data-driven solutions. You will lead cross-functional teams, influence senior stakeholders, and drive strategic programs that realize measurable business value.

Key Responsibilities
  • Lead and deliver major strategic initiatives that leverage emerging technologies, including Generative AI, data platforms, and AI-enabled products, from concept through to execution and value realization.
  • Act as a trusted advisor and technical leader on complex engagements, partnering with senior leaders (Director level and above) across Business, IT, LIT, and vendor ecosystems.
  • Develop and drive adoption of innovative solutions and best practices in AI, data analytics, and software engineering, ensuring alignment with organizational objectives and digital transformation goals.
  • Guide the design and evolution of platforms like Liberty GPT, supporting AI tool hosting and enterprise-wide AI integration.
  • Influence and shape client and internal partner thinking around AI, data literacy, robotics, and related emerging technologies to maximize strategic impact.
  • Provide mentorship and coaching to growing technical and consulting teams, fostering a culture of continuous learning, experimentation, and innovation.
  • Navigate complex stakeholder environments, balancing competing priorities, managing political dynamics, and driving consensus across global, distributed teams.
  • Support training and enablement initiatives by applying statistical analysis and learning methodologies to improve organizational skills and technology adoption.
  • Serve as an ambassador for Liberty IT’s values, innovation, and strategic vision both internally and externally.
  • Identify organizational challenges and collaborate with leadership to resolve systemic issues, propagating learnings across the organization.
  • Minimum 3+ years recent senior technical experience in engineering or architecture roles with demonstrable leadership on complex, high-impact technology projects.
  • Strong expertise in Generative AI, data analytics, and emerging AI technologies with practical experience in large-scale deployments.
  • Extensive knowledge and hands-on experience with Agile methodologies and frameworks.
  • Proven leadership, coaching, and team-building skills with experience mentoring engineers and consultants.
  • Demonstrated ability to build and maintain strong, trusting relationships with business partners and stakeholders at all levels.
  • Comfortable working in ambiguous and rapidly evolving environments; able to adapt and pivot strategically based on lessons learned.
  • Strong analytical skills, including statistical analysis, to support data-driven decision making and learning program effectiveness.
  • Experience influencing senior management and leading strategic initiatives that deliver measurable business outcomes.
Desired Criteria
  • Experience within Financial Services or Insurance sectors, or similarly regulated industries.
  • Familiarity working in globally distributed teams and managing cross-cultural collaborations.
  • Evidence of ongoing personal and professional development in AI, data science, technology trends, and leadership.
  • Track record of successfully delivering AI or digital transformation initiatives in complex enterprise environments.
  • Understanding of emerging technologies such as robotics, automation, and advanced data platforms.
  • Comfortable managing multiple projects or programs concurrently with a flexible and resilient approach.

What’s on offer

  • Flexible work patterns including compressed working and 4 day working week opportunities from your first day at Liberty IT.
  • Feel safe and secure whatever life brings, with health insurance (including access to a digital doctor), life assurance and income protection.
  • Enjoy both today and tomorrow with employee discount schemes, annual bonuses and a competitive pension.
  • Protect your wellbeing with flexible working and a real work-life balance. Specifically, we have adopted a hybrid remote and in-office working culture, meaning you have ultimate flexibility in your work environment.
  • Grow yourself, your career and reputation through continuous learning, promotion opportunities and our generous recognition programme .

Join us to shape the future of AI and digital transformation at Liberty IT. Leverage your technical leadership and consulting expertise to drive innovation and create lasting business value.


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