Sei Development Foundation - Director of AI
Upload My Resume
Drop here or click to browse · Tap to choose · PDF, DOCX, DOC, RTF, TXT
Requirements
• Professional experience with deep, hands-on daily usage of AI tools in real work contexts - you’ve built systems that demonstrably improve the quality and speed of your own work, and you can show them • Hands-on experience with agentic frameworks Proven track record of implementing AI workflows in real organizations with measurable impact - not pilots, but production systems that teams actually use • Strong prompt engineering skills: you understand how to structure context, chain reasoning, control output format, and evaluate reliability across models (GPT, Claude, Gemini, etc.) • Systems thinker: you see workflows as interconnected processes, not isolated tasks, and you design solutions that scale beyond the immediate problem • Exceptional communicator with a track record of translating complex AI concepts into clear, practical guidance for non-technical stakeholders, including C-suite • Background in operations, product, strategy, or engineering - you understand how organizations work and where friction lives • High ownership mentality: you don’t wait for direction and you don’t declare victory until it’s in production and being used • Comfort working in a fast-moving, ambiguous environment where priorities shift and execution speed is a competitive advantage • Engineering background or scripting proficiency (Python, JavaScript) - the ability to build lightweight integrations rather than relying solely on no-code tooling • Experience in crypto, Web3, or high-growth tech environments where the pace of change is a constant • Previous experience building internal AI capability at a startup or foundation, where you owned the function from scratch
Responsibilities
• Workflow Audit & Opportunity Mapping • Conduct a rapid audit of current AI usage and operational workflows across the organization, identifying the highest-leverage opportunities for improvement • Build a prioritized roadmap of AI implementation opportunities ranked by time savings, output quality, and strategic impact • Identify recurring bottlenecks in research, reporting, communications, and decision-making that are strong candidates for AI-assisted automation or augmentation • Prompt Engineering & Workflow Design • Design, test, and iterate on prompts and prompt chains that deliver reliable, high-quality outputs for specific business functions (research synthesis, executive briefings, partner outreach, content drafts, etc.) • Build and document repeatable AI workflows for core operating functions including reporting, analysis, planning, and communications • Develop systematic evaluation criteria for AI output quality and reliability, so the organization knows when to trust AI outputs and when to verify • Maintain a living prompt library organized by function, with version history and performance notes • Automation & Systems Building • Implement AI-driven automation for recurring processes including reporting pipelines, research summaries, meeting prep, and post-meeting follow-through • Integrate AI tooling across the organization’s existing stack (Slack, Notion, Monday.com, Google Workspace, etc.) to reduce manual handoffs and eliminate repetitive work • Evaluate and recommend new AI tools and platforms, with a clear framework for build vs. buy vs. configure decisions • Identify where agentic workflows can replace multi-step manual processes and scope those builds • Enablement & Organizational Adoption • Train founders, leadership, and cross-functional teams on AI tools, workflows, and best practices, meeting each team where they are and making adoption feel obvious, not obligatory • Build and maintain the organization’s AI playbook: a living, searchable reference that codifies best practices, approved prompts, and role-specific workflows • Create lightweight documentation and training materials that allow any team member to self-serve on core AI workflows without needing ongoing support • Measurement & Iteration • Track and report on key AI adoption metrics: hours saved on recurring work, output quality and consistency, team workflow adoption rates, and number of processes meaningfully improved or automated • Run a continuous improvement loop, ship, measure, learn, and iterate on all AI workflows based on real usage data and team feedback • Report directly to founders on AI impact and the organizational adoption roadmap
No credit card. Takes 10 seconds.