Chief Technology Officer / CTO

London
2 months ago
Applications closed

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Chief Technology Officer 

Are you an experienced technology leader passionate about driving innovation through AI and cutting-edge digital solutions? Join our forward-thinking client based in the North West as they embark on an exciting phase of growth and transformation.

As Chief Technology Officer (CTO), you'll have the opportunity to lead the technological strategy, focusing on harnessing the power of AI to develop innovative solutions that drive meaningful change for clients across various industries.

Responsibilities:

AI Strategy Leadership: Shape the company’s AI-driven technological roadmap, ensuring scalability, innovation, and industry leadership.

Tech Innovation: Lead the development and implementation of AI-powered solutions to solve complex challenges and enhance client offerings.

Infrastructure Management: Oversee the security, reliability, and performance of AI-enabled technologies and infrastructure.

Collaboration: Work cross-functionally to integrate AI capabilities across teams, driving innovation and creating seamless solutions that push the boundaries of what's possible.

What We’re Looking For:

Proven Leadership: Extensive experience in senior technology leadership roles, with a strong track record of implementing AI solutions.

AI Expertise: In-depth knowledge of AI, machine learning, and data science, with experience developing and deploying AI-based applications.

Tech Savvy: A strong background in digital platform development, software architecture, and cloud computing, focusing on integrating AI technologies.

Excellent Communicator: Strong leadership and communication skills to effectively collaborate with technical and non-technical teams.

Innovative Mindset: A passion for staying ahead of AI trends and using the latest advancements to drive business growth and client success.

Cultural Fit: A collaborative approach to leadership that fosters a culture of innovation, teamwork, and continuous improvement.

System and Software Integrations.

Knowledge of UX Principles.

What We Offer:

Competitive salary and benefits package

Flexible working arrangements, with the option to work entirely remotely

Opportunities for professional development and career progression

Interested? Please Click Apply Now!

Chief Technology Officer

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