Full-Stack AI Engineer (AI)
Мэтч & Сопровод
Для мэтча с этой вакансией нужен Plus
Описание вакансии
TL;DR
Full-Stack AI Engineer (AI): Designing, building, and deploying AI-powered applications that bridge modern software engineering with applied machine learning with an accent on production-grade scalability and reliability. Focus on integrating LLMs, vector databases, and AI workflows into production environments while managing infrastructure and front-end interfaces.
Location: Must be based in South Africa or Kenya. Remote role with required alignment to U.S. client business hours.
Company
is a recruitment partner connecting technical talent with global clients.
What you will do
- Deploy and integrate pre-trained and fine-tuned ML/LLM models using platforms like OpenAI and Hugging Face.
- Build scalable inference APIs and back-end services using frameworks like FastAPI or Node.js.
- Develop front-end interfaces in React or Next.js for AI-powered features.
- Design and optimize RAG pipelines and vector search systems.
- Build ETL pipelines for data ingestion and processing using orchestration tools.
- Maintain CI/CD pipelines and monitor production performance, latency, and infrastructure costs.
Requirements
- 3+ years of software engineering experience with exposure to AI/ML systems.
- Strong proficiency in Python and JavaScript/TypeScript.
- Hands-on experience with AI/ML frameworks like PyTorch, TensorFlow, or OpenAI APIs.
- Experience building scalable APIs and front-end applications using React or Next.js.
- Familiarity with Docker, Kubernetes, and CI/CD workflows.
- Must be based in South Africa or Kenya and available during U.S. business hours.
Nice to have
- Experience building and scaling AI-powered SaaS applications.
- Hands-on experience with embeddings, fine-tuning, and RAG pipelines.
- Familiarity with MLOps platforms like MLflow or Vertex AI.
- Knowledge of serverless architectures and microservices.
Culture & Benefits
- Opportunity to work on high-impact, production-grade AI systems.
- Exposure to modern AI infrastructure and MLOps practices.
- Collaborative environment working with product and data science teams.
- Focus on technical ownership and end-to-end system development.
Hiring process
- Initial phone screen and recruiter interview.
- Technical assessment involving ML model deployment and integration.
- Client interview(s) with the engineering team.
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