Position : Architect / Senior SDET / AI QE Technical Lead

Rockville, MD | Full-time

Experience: 10–14 years

Role Overview

The AI QE Architect will lead the design, development, and optimization of next-generation AI-powered quality engineering solutions, including platforms. This role combines deep technical expertise in automation engineering with hands-on experience in LLMs, agentic AI frameworks, and enterprise-grade AI tooling. The architect will define strategy, design scalable frameworks, guide teams, and drive innovation across QE automation, AI agents, RAG pipelines, and MCP-enabled intelligent workflows.

Key Skills & Responsibilities

AI, LLMs & Agentic Systems

  • Strong hands-on experience with LLMs, prompt engineering, RAG, vector DBs, and model evaluation.
  • Proficiency with LangChain, HuggingFace, Transformers, OpenAI/Ollama APIs.
  • Experience to agentic AI frameworks like LangGraph, AutoGen, CrewAI.
  • Build and enhance GenAI-powered QE solutions, AI agents, and autonomous workflows.
  • Implement MCP-driven, context-aware automation and CI/CD decision intelligence.

Automation Engineering

  • Strong coding skills in Python, TypeScript, or Java.
  • Architect and maintain automation frameworks for:

-UI: Playwright, Selenium

-API: PyTest, Requests, RestAssured

-Performance: JMeter, Locust

  • Develop prompt-optimized, AI-generated test assets and validation mechanisms.

ML/AI Engineering & Data Pipelines

  • Experience with PyTorch, TensorFlow, Scikit-Learn, NLP/CV libraries (NLTK, BART, OpenCV).
  • Build data/embedding pipelines and optimize retrieval for RAG.
  • Implement CI/CD for ML models, including versioning, evaluation, and retraining workflows.

Cloud, DevOps & Integration

  • Strong understanding of AWS/Azure/GCP architectures and AI/ML services.
  • Integrate automation pipelines using GitHub Actions, Azure DevOps, Jenkins.
  • Ensure scalable, secure, and governed AI/automation environments.

Leadership & Delivery Excellence

  • Provide technical leadership and mentor teams on AI adoption and automation best practices.
  • Collaborate closely with developers, SMEs, and product teams to align on architecture and roadmap.
  • Drive feature prioritization, quality strategy, and solution design.
  • Lead defect triage, quality reviews, and compliance with QE/AI governance.
  • Work across the full SDLC, contributing to test strategy, design, execution, and analysis.
  • Operate effectively in an Agile/Scrum environment.