Vultr is on a mission to make high-performance cloud computing easy to use, affordable, and locally accessible.
Account Executive, AI Infrastructure Sales
Location
United States
Posted
10 days ago
Salary
$90K - $110K / year
Seniority
Senior
Job Description
Account Executive, AI Infrastructure Sales
Vultr
• Strategic Account Ownership: Own and grow strategic customer relationships, acting as the primary point of contact for executive stakeholders and technical teams alike. • Drive AI Infrastructure Revenue: Accelerate the adoption of Vultr’s AI cloud infrastructure solutions by identifying opportunities and guiding customers through the sales cycle—from initial engagement through solution architecture and scale-up. • Customer-Centric Engagement: Understand customer priorities, technical requirements, and business goals to position Vultr’s value proposition effectively and deliver tailored solutions. • Trusted Advisor: Provide thought leadership on AI/ML trends, infrastructure needs, and optimization strategies to senior leaders within your accounts. Help customers navigate the AI landscape and make informed architectural decisions. • Collaborate for Success: Work cross-functionally with Product Management, Solutions Engineering, and Customer Success to ensure alignment on product capabilities, roadmap feedback, and long-term success. • Sales Process Excellence & Operational Hygiene: Document and maintain accurate sales activity data in CRM tools to support MRR forecast accuracy. • AI Ecosystem Engagement: Understand and leverage the AI partner ecosystem to enhance Vultr’s value proposition for Founders and C-suite executives.
Job Requirements
- +5 Years of Account Management Experience in AI/ML or IaaS Related Technologies: Experience implementing effective land-and-expand strategies to grow revenue across large, high-value strategic customer accounts. Skilled in navigating complex deal cycles and multi-stakeholder environments.
- Partner Ecosystem Experience: Comfortable leveraging partner ecosystems to co-sell, co-market, and accelerate customer outcomes.
- Organizational Agility: Proven ability to operate effectively in a global, cross-functional matrixed organization. Skilled in aligning internal stakeholders and resources to support complex sales motions.
- Technical & Product Knowledge: Able to confidently engage in technical discussions and translate product capabilities into compelling value-driven business outcomes.
- AI and Cloud Infrastructure Fluency: Strong understanding of AI/ML workflows, GPU cloud environments, and modern compute infrastructure.
- Ecosystem Awareness: Active within the AI ecosystem; understands where developers and founders engage, what tools they use, and how buying decisions are made.
- Sales Tools Proficiency: Experienced in using Salesforce, Gong, ZoomInfo, LinkedIn Sales Navigator, and other modern tools to manage pipeline and forecast accurately.
Benefits
- 100% company-paid insurance premiums for employee medical, dental and vision plans.
- 401(k) plan that matches 100% up to 4%, with immediate vesting
- Professional Development Reimbursement of $2,500 each year
- 11 Holidays + Paid Time Off Accrual + Rollover Plan
- Increased PTO at 3 year and 10 year anniversary + 1 month paid sabbatical every 5 years + Anniversary Bonus each year
- $500 stipend for remote office setup in first year + $400 each following year
- Internet reimbursement up to $75 per month
- Gym membership reimbursement up to $50 per month
- Company paid Wellable subscription
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