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Manager, Forward Deployed Machine Learning Engineering
Location
United States
Posted
57 days ago
Salary
$220K - $250K / year
Seniority
Senior
Job Description
Manager, Forward Deployed Machine Learning Engineering
Federato
• Lead and manage a team of Forward-Deployed Machine Learning Engineers (FDMLEs) delivering customer-facing AI and ML solutions from prototyping through production deployment and iteration. • Support team growth through coaching, mentorship, and career development while fostering a strong culture of ownership, customer focus, and operational excellence. • Drive execution in ambiguous, fast-paced environments by enabling rapid experimentation, iterative development, and close cross-functional collaboration. • Partner with Federato leadership across Forward Deployed Engineering, Data Science, and Customer Success to align priorities, delivery expectations, and customer outcomes. • Translate strategic AI initiatives into actionable roadmaps, priorities, and delivery milestones, ensuring projects are effectively scoped, staffed, and executed. • Establish and improve agile workflows tailored to forward-deployed AI and ML work, including sprint planning, technical design reviews, backlog grooming, retrospectives, and operational follow-through. • Serve as the primary coordination point across internal teams and customer stakeholders to ensure alignment, transparency, issue resolution, and successful adoption of deployed solutions. • Drive operational excellence through strong communication, documentation, monitoring, and incident-management practices across customer-facing ML systems.
Job Requirements
- 5+ years of experience in machine learning, applied AI, data science, or related technical fields.
- 2+ years of experience leading or managing technical contributors and cross-functional delivery efforts.
- Experience deploying and operating ML or AI systems in production, including customer-facing or operational environments.
- Strong understanding of ML systems, LLM applications, agentic workflows, evaluation frameworks, and production monitoring best practices.
- Experience working in fast-paced environments with evolving requirements and multiple concurrent workstreams.
- Excellent communication, organizational, and stakeholder management skills.
- Ability to balance technical depth with strong execution and delivery discipline.
Benefits
- Stock options
- Benefits and additional perks
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