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AI Engineer
Location
Argentina
Posted
11 days ago
Salary
0
Seniority
Senior
Job Description
AI Engineer
Kubikware - A 5-time Inc. 5000 company
• Work on multiple projects involving AI and machine learning integrations • Collaborate with teams to develop AI-driven solutions • Utilize various tools and technologies for automation and integration • Contribute to workflow designs and application development • Maintain and enhance existing systems and applications
Job Requirements
- 4+ years of experience in Software Engineering, AI Integrations, Automation, or Backend Development
- Strong hands-on experience with: Open AI Whisper API for transcription and speech processing
- Claude AI and LLM integrations
- n8n for workflow automation and orchestration
- Replit for rapid app/web development and prototyping
- Supabase for database management, authentication, and backend services
- Experience building AI-driven workflows and integrating third-party APIs
- Strong understanding of prompt engineering and AI tool orchestration
- Experience developing lightweight web applications and internal tools
- Ability to work independently and move quickly in a fast-paced environment
- Strong communication skills and experience collaborating with distributed teams
Benefits
- Fully remote position (LATAM)
- Part-time engagement with flexibility
- Opportunity to work on cutting-edge AI initiatives and real-world implementations
- Collaboration with U.S.-based teams
- High level of ownership and autonomy
- Compensation in U.S. Dollars
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