MLOps: Deploy AI models and maintain for reliability and speed. Implement knowledge base, evaluation pipelines, model versioning, and deployment workflows to production environments. Perform data collection, data sanitation, prompt engineering, context engineering, database optimization, token minimization.
Data Integration, Monitoring, and Reliability Integrate multiple data sources and services (e.g., CRM, support tools, product analytics, internal databases). Implement logging, error handling, and monitoring for automation workflows to ensure reliability and traceability. Test and debug flows, APIs, and scripts for production readiness.
Requirements
Solid computer science foundation and passion for machine learning. Degree qualifications are a bonus and not compulsory.