Chief AI Officer @ Trilogy
Your Application Journey
Email Hiring Manager
Job Details
Overview
IgniteTech is transforming B2B enterprise software with a GenAI-first approach. As the Chief AI Officer, you will lead a GenAI revolution across 30+ enterprise products and directly impact customer retention through strategic AI integrations.
What You Will Be Doing
You will work directly with the CEO to:
- Develop comprehensive AI Opportunity Matrices.
- Architect progressive AI-Enhanced Product Roadmaps.
- Create precise AI Feature Requirements.
- Execute Customer AI Readiness Assessments.
What You Won’t Be Doing
- Navigating bureaucratic approvals that impede innovation.
- Developing AI features in isolation without customer input.
- Managing theoretical AI projects without measurable impact.
- Operating with limited resources.
Key Responsibilities
Drive measurable business growth by integrating Generative AI functionalities to enhance customer engagement and competitive advantage.
Basic Requirements
- Proven track record of launching at least 2 production-grade AI products or features.
- Expertise managing the complete product lifecycle for AI-enabled solutions.
- Experience directing data science and ML engineering teams.
About IgniteTech
IgniteTech brings together world-class talent and operates on a 100% global remote model, offering a challenging and fast-paced career environment.
Working with Us
This is a full-time, long-term, remote position as an independent contractor with Crossover. Compensation is set at $200 USD per hour (approximately $400,000 USD per year). For more details, refer to Crossover FAQs.
Key skills/competency
- GenAI
- AI Strategy
- Product Development
- Data Science
- ML Engineering
- Customer Engagement
- Enterprise Software
- Innovation
- Leadership
- Roadmap Execution
How to Get Hired at Trilogy
🎯 Tips for Getting Hired
- Customize your resume: Highlight AI leadership and product successes.
- Research Trilogy's culture: Understand their values and remote work model.
- Prepare for interviews: Review AI product lifecycle examples.
- Emphasize strategic vision: Show past AI integrations and outcomes.