
AI Vendor Market Expert (Senior Director, Analyst – Fully Remote United States)
GartnerAbout the role:
Gartner Analysts are industry thought leaders who create must-have insights, market predictions and best practices for a broad range of world-leading organizations.
In a fast-changing vendor landscape, our premium branded market coverage research, such as our Magic Quadrants, serve as lighthouses that allow organizations navigate turbulence and achieve their mission-critical priorities
As a Gartner Analyst, you will have the opportunity to shape the future of AI by providing CIOs and AI Leaders with research insights to leverage the tools, vendors and approaches best suited to their objectives and constraints within their AI strategies.
Senior Directors serve as leaders within Gartner’s Business and Technology Insights (BTI) practice, as a credible thought leader within their designated market at local, regional and global levels. They produce pragmatic and provocative insights which Gartner clients consume and apply to propel their business toward key objectives. They are trusted advisors to clients, reinforcing Gartner’s value every day by engaging them via in-person meetings, virtual meetings, sales support visits and Gartner conferences to offer high impact recommendations that address complex challenges.
What you will do:
· Create innovative, thought provoking, and highly leveraged “must-have insights” content for CIOs and AI Leaders on AI solution categories like: Market Evolution; Infrastructure & Compute; Models and Providers; Development Platforms; AI Data Infrastructure Platforms & Components; Application Frameworks & Middleware; Prebuilt, Custom or Embedded; Agentic automation, Agentic Management; GRC, Security; Operations & Monitoring; Contracting and Funding
· Develop new research ideas and offer actionable approaches to client needs
· Analyze client challenges to identify root causes and reframe thinking
· Demonstrate thought leadership, for example around the future of Consumer Goods or Insurance Property and Casualty (P&C); ecosystems, geopolitics, technologies, vendors and the regulations impacting it; the role of data; required business capabilities; and help shape research positions across analyst teams
· Research and predict market vendors and trends to provide actionable insights, e.g. Magic Quadrants, Critical Capabilities, Strategic Roadmaps
· Assist organizations in their digitalization and AI Journeys by providing guidance on readiness, strategy, use case prioritization, business case, architecture, design and vendor selection
· Bring independent insights that influence research agendas and help clients make informed, unbiased decisions
· Collaborate with Team Managers and Research Cohort Leads to align stakeholders and drive high‑impact outcomes
· Pivot into adjacent research areas as client demand evolves and boundaries between industries and technologies blur
· P
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