V
AI

AI Engineer - Level II

Verity Transcend · Washington, DC, US · $176k - $187k

Actively hiring Posted 5 months ago

**AI Engineer – Level II

Location:** Washington, DC (Onsite)

Experience: 5+ years in software engineering | 2+ years in GenAI/LLM systems

Why This Role?Join a high-impact AI team building secure, scalable GenAI systems. Gain exposure to:

  • Cutting-edge RAG and agentic AI architectures
  • Azure and AWS AI ecosystems
  • Multi-modal LLM integration across vision and speech
  • Production-grade CI/CD for AI/ML workloads
  • Fast-tracked certifications and career growth

Role SummaryAs an AI Engineer (Level II), you’ll design, implement, and optimize enterprise-scale AI systems. You’ll lead architecture, agent orchestration, and model integration while collaborating with cross-functional teams to deliver production-ready solutions.

Key ResponsibilitiesAI Architecture & Delivery

  • Design RAG pipelines using Azure AI/Search, Redis, FAISS, HNSW
  • Build conversational systems with prompt lifecycle management and telemetry
  • Integrate LLMs like Azure OpenAI, Claude, Llama, and open-source models

Infrastructure & Orchestration

  • Deploy Model Context Protocol (MCP) servers with RBAC and audit trails
  • Implement Azure AI Agent Service patterns for agent registry and policy enforcement
  • Use Azure Batch and AWS EMR for scalable inferencing and processing

Data Pipeline Engineering

  • Build ingestion pipelines with PII redaction, metadata enrichment, SLA tracking
  • Operate vectorization pipelines with quality gates and drift detection
  • Leverage ADF, Databricks, and EMR for scalable workflows

Agentic AI & Model Ops

  • Orchestrate multi-agent workflows using Semantic Kernel, AutoGen, CrewAI, LangChain
  • Apply governance and lifecycle management for agent runtimes
  • Fine-tune models, conduct A/B testing, and implement CI/CD pipelines with validation

Core Competencies

  • Strong CS fundamentals: distributed systems, algorithms, concurrency, networking
  • SDLC excellence: clean architecture, SOLID principles, testing frameworks
  • Secure development: input validation, secret hygiene, sandboxing
  • Performance tuning: latency optimization, vector index profiling

Required Skills

  • Expertise in RAG, embeddings, transformer models, and multi-modal pipelines
  • Production-level C#, Python, .NET; TypeScript for service/UI (as needed)
  • Experience with Azure and AWS AI tools and operations
  • Familiarity with fine-tuning, safety tooling, model traceability
  • Strong delivery skills: architecture, stakeholder alignment, roadmap execution

Tools & Platforms

  • Azure: OpenAI, AI Search, AML, AKS, ADF, Azure Batch, Databricks, Key Vault
  • AWS: SageMaker, Bedrock, EMR, Lambda, API Gateway, S3, EKS, Comprehend
  • Vector DBs: Redis, FAISS, HNSW, Azure AI Search
  • Frameworks: LangChain, Semantic Kernel, AutoGen, Microsoft Agent Framework, CrewAI, Agno
  • Inference: Docker/Ollama, vLLM, GGUF quantization, GPU provisioning

Required Certifications

  • Microsoft Certified: Azure AI Fundamentals (AI-900)
  • Microsoft Certified: Azure Data Fundamentals (DP-900)
  • Responsible AI certification
  • AWS Machine Learning Specialty
  • TensorFlow Developer
  • Kubernetes CKA/CKAD
  • SAFe Agile Software Engineering

Preferred (Bonus)

  • Azure AI Engineer (AI-102), Data Scientist (DP-100), Architect (AZ-305), or Developer (AZ-204)
  • Experience with MLflow, Hugging Face, vector tuning (HNSW/IVF)
  • Responsible AI playbooks, incident response frameworks
  • CI/CD for AI (Azure DevOps, AWS CodePipeline), hybrid deployments (Azure Arc, AWS Outposts)

Step into a role where AI meets cloud scalability.

Apply now and help shape tomorrow’s AI systems.

Job Type: Contract

Pay: $85.00 - $90.00 per hour

Work Location: In person

Tags & focus areas

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Contract Ai Ai Engineer Generative Ai
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