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Senior AI Full Stack Product Engineer
Location
Egypt
Posted
1 day ago
Salary
$4K - $5.5K / month
Seniority
Senior
Job Description
Senior AI Full Stack Product Engineer
Scale Army Careers
• Build and enhance AI-powered SaaS applications and internal platforms. • Translate founder ideas, workflows, and storyboards into production-ready product features. • Develop and maintain frontend and backend systems across multiple SaaS products. • Integrate third-party APIs and external services. • Develop AI-powered workflows using modern LLM technologies.
Job Requirements
- 4+ years of experience in full-stack software development
- Experience building SaaS products and web applications
- Experience with AI-assisted development tools
- Strong understanding of scalable SaaS architecture
- Experience with PostgreSQL, Firebase, Supabase, MongoDB, or similar databases
Benefits
- health insurance
- retirement plans
- flexible work arrangements
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