DevSavant is an operating partner for startups and growth-stage companies, helping them turn ambition into execution. We support founders and leadership teams with product engineering and global staffing, from early prototypes and MVPs to scaling high-performing teams. Vetted talent across LATAM and Asia embeds directly into client teams. Trusted to accelerate delivery, scale teams efficiently, and support companies as they reach their next milestone.
AI CoE Program Lead
Location
Worldwide
Posted
5 days ago
Salary
0
Seniority
Lead
No structured requirement data.
Job Description
AI CoE Program Lead
DevSavant Inc.
Role Description As AI CoE Program Lead, you'll report directly to the COO to run and scale our AI Center of Excellence (CoE). This isn't a greenfield build — the foundation is already in place: a live AI CoE Portal, a functioning AI Operating System, six rounds of company hackathons, and a 12-week cross-functional training program already underway. Your job is to take this from "early traction" to "default way of working" — driving adoption, tightening operations, and turning a hardworking group of part-time champions into a durable, scaled program. You'll be the connective tissue between DataOps and IT — who own the underlying infrastructure and data architecture — and the cross-functional CoE members who are driving adoption in their departments on top of their day jobs. You should be deeply fluent in AI yourself — comfortable deploying automations and agents, and genuinely energized by experimenting with new AI tools and techniques — while keeping the whole engine running smoothly, efficiently, and visibly delivering ROI. This is a deliberately hybrid role: equal parts hands-on AI builder and cross-functional program operator. We're looking for someone who can do both, even if not with equal depth on day one — strong AI chops are the harder thing to teach, so that's our primary bar. Qualifications - Deep, Hands-On AI Experience: Demonstrated track record of personally deploying AI automations and agents. - Builder's Curiosity: A habit of experimenting with emerging AI tools and techniques outside of formal projects. - Professional Background: 2-4 years of professional experience, ideally touching Revenue, Sales, IT Operations, or Program/Project Management within a B2B SaaS environment. Requirements - Scale the CoE Operating Model: Take ownership of the day-to-day running of the AI CoE. - Own the AI CoE Portal: Drive continuous improvement of the live Portal. - Run the Training Program: Own development and delivery of ongoing training. - Formalize the Hackathon Cadence: Convert the hackathons-to-date into a repeatable quarterly playbook. - Drive Self-Service Automation: Champion and operationalize the company-wide vision for employee-built automations. - Be the Coaching Backstop: Serve as the go-to point of contact for employee questions and troubleshooting. - Own the Complex & Cross-Functional Builds: Take direct, hands-on ownership of complex builds. - Workflow Automation: Partner with department champions to identify and convert manual work into automated workflows. - AI Governance: Champion governance processes for AI assets. - Hands-On AI Deployment: Personally design, build, and deploy automations and AI agents. - Stay on the Edge: Continuously evaluate and pilot new AI tools, models, and techniques. - Maturity Tracking & Reporting: Maintain and report on our position against the Gartner AI Maturity Scale. - Change Management & Communications: Own internal AI communications. Benefits - Supportive, success-driven environment. - Opportunity to work with cutting-edge AI tools and technologies. - Flexible work arrangements in a 100% remote company. Company Description At DevSavant, we are a trusted technology partner specializing in Software Development, Data Engineering, AI/Machine Learning, Cloud Solutions, Automation Testing, and UI/UX Design. We deliver innovative, high-quality solutions with a focus on excellence and results. Our people are at the heart of everything we do, fostering a culture of growth and well-being.
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