AI Engineer – Level III

Globenet Consulting Corp
15hOnsite

About The Position

As a Level III AI Engineer, you’ll own the architecture and execution of secure, scalable AI systems. You will lead technical delivery across RAG pipelines, agent frameworks, model ops, and cloud-based ML workflows. This role demands deep hands-on expertise and cross-functional leadership.

Requirements

  • 8+ years in software engineering
  • 2+ years in applied GenAI
  • Deep CS knowledge: distributed systems, concurrency, performance tuning
  • Expert in SDLC: clean architecture, SOLID, layered testing, DevSecOps practices
  • Secure AI app delivery: sandboxed tools, secrets hygiene, token/cost profiling
  • Agile leadership: drive sprints, lead technical planning, manage RACI across teams
  • Proficient in GenAI systems: embeddings, transformer models, vector DB indexing
  • Production-level expertise in Python, C#, .NET, and TypeScript (as needed)
  • Hands-on with Azure and AWS tools: AML, AKS, Databricks, SageMaker, EMR, EKS
  • Strong in model traceability, safety tooling, fine-tuning, and runtime observability
  • Strategic execution: solution architecture, roadmap alignment, delivery metrics
  • Azure AI Fundamentals (AI-900), Data Fundamentals (DP-900)
  • Responsible AI certifications
  • AWS Machine Learning Specialty
  • TensorFlow Developer
  • Kubernetes CKA or CKAD
  • SAFe Agile Software Engineering

Nice To Haves

  • Azure AI Engineer (AI-102)
  • Azure Data Scientist (DP-100)
  • Azure Solutions Architect (AZ-305)
  • Azure Developer Associate (AZ-204)

Responsibilities

  • Lead design of RAG pipelines using Azure AI Search, Redis, FAISS, HNSW
  • Deliver multi-turn conversational systems with prompt lifecycle, telemetry, and guardrails
  • Integrate LLMs (Azure OpenAI, Claude, Llama, OSS) with dynamic routing for cost/safety balance
  • Deploy MCP servers with RBAC, audit logging, version control, and rate limiting
  • Implement agent frameworks using Azure AI Agent Service (registry, policy enforcement, telemetry)
  • Operate large-scale inferencing via Azure Batch and AWS EMR
  • Lead ingestion pipelines: document normalization, metadata tagging, PII redaction, SLA/SLO tracking
  • Operate vectorization workflows with drift detection and quality gates
  • Architect scalable data flows using ADF, Databricks, and EMR
  • Orchestrate multi-agent systems with Semantic Kernel, AutoGen, CrewAI, LangChain, Agno
  • Govern agent runtimes using MCP controls for security and traceability
  • Evaluate and fine-tune models; run A/B testing and latency-cost analysis
  • Build secure CI/CD pipelines with integrated testing, scans, and trace logging
  • Enforce DevSecOps and AI threat modeling for LLM workloads

Benefits

  • Competitive salary
  • Opportunity for advancement
  • Training & development
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