AI Leader Symphony Anywhere What is the project, and why should you care? Our client is seeking a compact, senior engineering squad from a single vendor to build and evolve an AI‑powered, security‑first platform. The team will deliver new features, integrations, and a full English↔Hebrew (LTR↔RTL) experience. Tech stack: Frontend – Angular; Backend – .NET (C#) microservices; Cloud – Azure; CI/CD – Azure DevOps; Design – Figma; AI – Azure OpenAI / OSS models (as applicable), vector search (e.g., Azure AI Search/pgvector), orchestration (e.g., Semantic Kernel/LangChain), MCP for tool integrations. You will be an excellent fit for this position if you have: Tech Stack & Core Expertise: Backend: C#, .NET, Microservices architecture Cloud & DevOps: Azure, AKS (Kubernetes), Azure DevOps CI/CD, Infrastructure as Code AI/ML Development: Experience building and deploying offline models (non-SaaS / tenant-isolated AI instances) Strong background in RAG (Retrieval-Augmented Generation) pipelines, embedding creation, and index management Expertise in classification models, fine-tuning, and AI lifecycle automation Hands-on experience with MLflow, model versioning, and training pipelines Familiarity with vector databases, document ingestion, and data preprocessing for unstructured data Experience integrating AI models with microservices and APIs in production environments Security & Compliance: Strong understanding of application security, data protection, and secure AI design principles Experience implementing role-based access, data isolation, and compliance frameworks (e.g., NIST, ISO, GDPR) Preferred Soft Skills: Ability to lead cross-functional development between AI, backend, and DevOps teams Comfortable defining architecture, reviewing code, and mentoring engineers Strong documentation and communication skills Here are some of the things you’ll be working on: Own the AI architecture and main components; lead the team; drive security, quality, and delivery. Define AI system architecture: model serving, retrieval (RAG), evaluation, guardrails, and data pipelines. Choose/operate model endpoints (Azure OpenAI or OSS), vector DB, caching, and orchestration framework. Establish AI safety (prompt‑injection defenses, PII redaction, rate‑limit/abuse protection, content filters). Lead MLOps (datasets, fine‑tuning/LoRA when needed, evals, versioning, rollback, drift monitoring). Own cross‑team engineering standards (coding, testing, docs, ADRs) and delivery plan.