Building AI products for leading enterprises.
Forward Deployed AI Architect
Location
United States
Posted
101 days ago
Salary
0
Seniority
Lead
Job Description
Forward Deployed AI Architect
Tribe AI
• Drive technical discovery with clients: understand environments, constraints, and the realities of dynamic enterprises. • Design AI/ML architectures that balance speed, reliability, and cost - but never at the expense of outcomes. • Provide architectural guardrails while enabling engineers to move fast and adapt in the field. • Act as the forward-deployed face of technical leadership, tailoring communication from engineers to C-levels. • Teach and enable client teams by turning complexity into clarity. • Influence decision-making by linking technical choices to business wins. • Guide engineers through execution without smothering them in process. • Translate client-specific solutions into reusable patterns that strengthen our platform. • Share insights across the company, raising the bar for future deployments.
Job Requirements
- 8+ years designing and delivering complex software systems, with strong AI/ML depth.
- Proven experience as a technical lead or architect in high-stakes, enterprise environments.
- Mastery of the AI development lifecycle: from messy data ingestion to model deployment and monitoring.
- Ability to engage credibly across audiences - engineers in the trenches, executives in the boardroom.
- Background in consulting or client-facing engineering roles where outcomes mattered more than process.
- Systems thinker with a missionary mindset: you’re here to win, not to optimize for your next job.
Benefits
- Impact: Lead the design of AI systems that move the needle for global enterprises.
- Exposure: Work across industries on problems that rarely have playbooks.
- Enablement: Build not just solutions, but client capabilities that outlast your engagement.
- Culture: Join a team that prizes creativity, resilience, and the primacy of winning over process.
- Growth: Stretch yourself - real growth is painful, nonlinear, and career-defining.
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