Job Description :
We are looking for an experienced Cloud AI and Data Engineer with a strong background in cloud-native data solutions, AI / ML engineering, and emerging Generative AI (GenAI) technologies. The ideal candidate will have 6–8 years of hands-on experience in building robust data platforms, deploying scalable ML models, and integrating GenAI solutions across cloud environments.
- Design and implement production-ready GenAI applications using services like Amazon Bedrock, Azure OpenAI, or Google Vertex AI
- Develop and deploy AI / ML models including transformer-based and LLM (Large Language Model) solutions
- Integrate GenAI with enterprise workflows using APIs, orchestration layers, and retrieval-augmented generation (RAG) patterns
- Collaborate with data scientists, product managers, and platform teams to operationalize AI-driven insights and GenAI capabilities
- Build prompt engineering frameworks, evaluate output quality, and optimize token usage and latency for GenAI deployments
- Set up monitoring, drift detection, and governance mechanisms for both traditional and GenAI models
- Build and maintain scalable data pipelines and infrastructure for AI and analytics using cloud-native tools (e.g., AWS Glue, Azure Data Factory, GCP Dataflow)
- Implement CI / CD pipelines for data and AI solutions with automated testing and rollback strategies
- Ensure cloud solutions adhere to data privacy, security, and regulatory compliance standards
- Build and maintain scalable data pipelines and infrastructure for AI and analytics using cloud-native tools (e.g., AWS Glue, Azure Data Factory, GCP Dataflow)
- Design and implement production-ready GenAI applications using services like Amazon Bedrock, Azure OpenAI, or Google Vertex AI
- Develop and deploy AI / ML models including transformer-based and LLM (Large Language Model) solutions
- Integrate GenAI with enterprise workflows using APIs, orchestration layers, and retrieval-augmented generation (RAG) patterns
- Collaborate with data scientists, product managers, and platform teams to operationalize AI-driven insights and GenAI capabilities
- Build prompt engineering frameworks, evaluate output quality, and optimize token usage and latency for GenAI deployments
- Set up monitoring, drift detection, and governance mechanisms for both traditional and GenAI models
- Implement CI / CD pipelines for data and AI solutions with automated testing and rollback strategies
- Ensure cloud solutions adhere to data privacy, security, and regulatory compliance standards