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AI Digital is a leading end-to-end programmatic consultant and innovation partner, powered by AI and open garden framework. Founded in 2018, our global team of over 400specialists connects clients to audiences through a unique blend of human expertise and advanced technology — empowering brands and agencies with unbiased, AI-enhanced media solutions. We partner with all major advertising platforms to deliver measurable results that align with your business objectives and brand KPIs.
AI Enablement & Implementation Manager
Location
United States + 1 moreAll locations: United States | Georgia
Posted
90 days ago
Salary
0
Job Description
AI Enablement & Implementation Manager
AI Digital
Location: EMEA (CET) We are looking for a Senior AI Enablement & Implementation Manager to deliver AI-enabled workflows across internal teams. This role focuses on translating business needs into structured AI use cases, coordinating cross-functional implementation, and ensuring adoption through documentation, training, and governance. You will own the lifecycle of AI initiatives, maintain a centralized AI knowledge base, and ensure solutions are reliable, reusable, and easy to use for both technical and non-technical teams. WHAT YOU'LL DO: - Translate real business problems into clear AI requirements, prompts, and workflows. - Design context and evaluation frameworks so AI outputs are reliable, measurable, and reusable. - Lead AI-enabled projects involving summarization, generation, classification, or decision support. - Own the AI Knowledge Base and Use Case Repository, keeping documentation fresh and preventing duplicate work. - Deliver tailored AI trainings, workshops, and practical sessions for both technical and non-technical teams. - Facilitate hands-on experimentation focused on real operational needs. - Scout new AI tools and models, run quick POCs, and assess their value before wider adoption. - Build adoption roadmaps, track usage metrics, gather feedback, and iterate on workflows. - Support AI Champions, moderate internal AI communication channels, and contribute to a strong AI culture. - 5+ years managing cross-functional projects in digital advertising, marketing tech, or software. - Analytical mindset with the ability to identify system issues and unblock teams. - Proven experience leading AI, automation, or other innovation-focused initiatives within an organization. - Strong facilitation and communication skills — able to tailor discussions for both technical and non-technical audiences. - Familiarity with large language models, creative AI tools, and API-based workflows. - Clear, thoughtful communicator — you write documentation and instructions people actually use and understand. - Engineering background (preferably backend). - Located in the EMEA region, working CET hours. NICE TO HAVE: - Hands-on experience with prompt engineering, Python, or SQL. - Certifications in project management methodologies. - Experience in AdTech, MarTech or Client support area. WHAT WE OFFER: - USD compensation that values your expertise. - Work from anywhere: Fully remote to suit your lifestyle. - 31 days of paid time off: 21 days of annual leave + 10 days of sick leave, because your health and work-life balance matter. - Growth-focused environment: Access to learning resources and clear pathways for growth. - Fun team events: Virtual cooking classes, yoga sessions, team quizzes and more - A culture of trust: We cut the red tape — results over rules always. Open talk, ownership, and getting things done together.
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