#req10872
telligent workflows using Azure Agentic AI and Semantic Kernel to automate complex business processes.
Integrate AI capabilities with Microsoft 365, SharePoint, Teams, Power Platform, and third-party enterprise applications.
Implement Azure AI Document Intelligence solutions for automated document processing and data extraction.
Build and optimize vector databases and semantic search using Azure AI Search for knowledge management systems.
Establish MLOps practices using Azure Machine Learning and Azure DevOps for automated model deployment and monitoring.
Design and develop scalable APIs and microservices for AI model deployment and integration.
Create data pipelines to support AI model training and real-time inference.
Define AI solution standards, best practices, and governance frameworks including security and compliance.
Mentor AI engineers and developers, providing technical guidance and code reviews.
Lead proof-of-concept projects to evaluate new AI technologies and their business value.
Collaborate with architects, data scientists, and stakeholders to define AI roadmaps and technical strategies.
Stay current with AI technologies and Azure AI service updates to drive continuous improvement.
You've Got What It Takes If You Have...
**Requirements:
**
Bachelor's or Master's degree in Computer Science, Software Engineering, Artificial Intelligence, Machine Learning, Data Science, or relevant experience.
3 years of comprehensive software engineering experience with at least 2+ years focused on AI/ML architecture, development, and deployment.
**Technical Expertise:
**
Proven track record in architecting and implementing enterprise-scale AI solutions using Microsoft Azure AI services and Generative AI technologies.
Expert-level experience with Azure OpenAI Service, Azure AI Studio, Azure Machine Learning, and Azure
Cognitive Services in production environments.
Deep expertise in Gen AI application development, including advanced prompt engineering, RAG architectures, fine-tuning strategies, and multi-agent orchestration.
Strong hands-on experience with Microsoft Copilot ecosystem, including enterprise Copilot deployment, custom copilot development, plugin architecture, and extensibility frameworks.
Advanced proficiency in Python and/or C# with deep knowledge of AI/ML frameworks.
Expert-level understanding of LLM architectures, embeddings, and vector search technologies.
Expertise in designing and implementing scalable API architectures, microservices patterns, and event-driven systems for AI solutions.
Deep understanding of Azure AI Search, vectordatabases (Cosmos DB, Pinecone, Weaviate), and hybrid search optimizationtechniques
#LI-Onsite