

Artificial Intelligence Engineer
Sr. Search and AI Engineer
Remote
6-month contract- Temp to hire
Job Summary
We are seeking a Senior AI Engineer to design, implement, and support AI-driven document processing, retrieval, and search solutions using Azure AI Search, Retrieval-Augmented Generation (RAG), Query Orchestration, and Kubernetes-based container deployments. The ideal candidate will have expertise in RAG-based architectures, Azure AI services, and on-premise open source alternatives.
Key Responsibilities
• Architect and deploy AI-driven search and document intelligence solutions using Azure AI Search, Azure Document Intelligence, and RAG techniques.
• Develop and optimize Query Orchestration strategies to route and structure user queries efficiently across multiple search and retrieval systems.
• Implement and fine-tune RAG-based AI applications for intelligent knowledge retrieval from structured and unstructured documents.
• Deploy and manage containerized AI applications using Azure Kubernetes Service (AKS) for scalable processing.
• Optimize vector search and embeddings pipelines to enhance AI-driven document retrieval.
• Implement on-premise alternatives to Azure Document Intelligence, leveraging open-source solutions (e.g., Tesseract OCR, PyMuPDF, pillow).
• Integrate with APIs (e.g., Profile APIs, Product Metadata APIs, Download APIs) to enrich search capabilities and indexing processes.
• Ensure compliance with export control restrictions and secure document handling best practices.
• Monitor, troubleshoot, and optimize AI-based search, retrieval, and document processing workflows.
• Collaborate with stakeholders to define, implement, and refine AI-powered document solutions.
Required Skills & Experience
• 5+ years of experience in AI/ML, cloud-based search, and document processing.
• Expertise in Query Orchestration for handling complex AI search and retrieval pipelines.
• Strong knowledge of RAG (Retrieval-Augmented Generation) architectures for AI-powered search.
• Experience with Azure AI Search, Document Intelligence, and Cognitive Services.
• Hands-on experience with vector search, embeddings, and hybrid search techniques.
• Strong experience with Kubernetes (AKS) and containerized AI deployments.
• Experience with on-premise document processing alternatives such as Tesseract OCR, PyMuPDF, pillow.
• Proficiency in Python for AI pipeline and search system development.
• Experience with Azure OpenAI, LangChain, or AI Foundry is a plus.
Preferred Qualifications
• Experience in hybrid cloud AI solutions (on-prem + cloud).
• Deep knowledge of Query Orchestration techniques for multi-index search optimization.
• Expertise in vector databases and hybrid search architectures (e.g., FAISS, Weaviate, Pinecone).
• Background in document classification, NLP, and entity extraction.
• Familiarity with export control restrictions and secure document handling best practices.