Pioneering trusted medical solutions to improve the lives we touch
Applied AI Engineer
Location
India
Posted
15 hours ago
Salary
0
Seniority
Senior
Job Description
Applied AI Engineer
Convatec
• Design, build and optimise AI-powered solutions, agents and workflows that address real business challenges and deliver measurable value. • Develop solutions using Microsoft technologies including Azure AI Foundry, Copilot Studio, Azure OpenAI and Microsoft Fabric. • Collaborate with business stakeholders, product teams and technical colleagues to translate requirements into scalable AI and data solutions. • Build and integrate data pipelines, APIs and enterprise data sources to enable intelligent, production-ready applications. • Apply software engineering, data engineering and AI best practices to ensure solutions are secure, scalable and maintainable. • Support the full solution lifecycle, including prototyping, testing, deployment, monitoring and continuous improvement. • Implement DevOps, MLOps and AIOps practices to enable reliable deployment, observability and operational excellence. • Contribute to the development of reusable AI capabilities, engineering standards and best practices across the AI Centre of Excellence. • Partner with Data Engineers, UX teams and business stakeholders to drive adoption and successful delivery of AI-enabled solutions. • Stay current with emerging AI technologies and identify opportunities to leverage new capabilities to improve business outcomes.
Job Requirements
- 4+ years' experience in AI, ML or Data Engineering building production solutions on the Microsoft AI platform.
- Hands-on experience building agentic solutions using Microsoft Copilot Studio and Microsoft Foundry.
- Strong expertise in Azure AI and ML services including Azure Machine Learning, Azure OpenAI and Cognitive Services.
- Proficiency with Microsoft Fabric, Azure Data Factory, Synapse and Foundry for large-scale data integration.
- Solid understanding of data engineering principles - data lakes, Lakehouse (Delta/Parquet), ETL/ELT design and governance.
- Strong skills in Python, SQL and API development (REST, GraphQL).
- Experience implementing DevOps/MLOps and AIOps pipelines for deployment, testing and monitoring.
Benefits
- Professional development opportunities
- Flexible work arrangements
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