AI Architect for Testing

Largeton Group • United State
Remote
Apply
AI Summary

Lead enterprise-wide transformation initiatives focused on applying Artificial Intelligence and Generative AI within Quality Engineering and Software Testing organizations. Drive AI-enabled transformation initiatives across testing and quality engineering functions. Identify opportunities where AI can improve testing efficiency, coverage, and quality.

Key Highlights
AI Strategy & Testing Transformation
AI-Driven Testing Solutions
Leadership & Enablement
Key Responsibilities
Define and lead the AI vision and strategy for enterprise testing organizations
Design and implement AI-powered solutions for test case generation, test data creation, automated test maintenance, defect prediction, root cause analysis, failure and log analysis, intelligent regression testing, risk-based test prioritization, AI-assisted automation workflows
Mentor QA engineers and automation teams on AI-assisted testing practices
Technical Skills Required
Java SQL Selenium Playwright Natural Language Processing (NLP) Machine Learning Prompt Engineering Enterprise AI implementations AI-assisted workflows and automation
Benefits & Perks
$65/hr W2
100% Remote
12 Months
Nice to Have
Experience building AI copilots or AI-assisted QA solutions
Familiarity with Retrieval-Augmented Generation (RAG) AI agents
Experience working in Agile/Lean environments

Job Description


Job Title: IT Software Engineer 4 AI Architect for Testing - Generative AI Architect Quality Engineering Transformation

Location: Remote (Anywhere in the U.S.)

Client: Doosan

Pay: $65hr W2

Duration: 12 Months

Position Overview

Seeking an experienced AI Architect for Testing to lead enterprise-wide transformation initiatives focused on applying Artificial Intelligence and Generative AI within Quality Engineering and Software Testing organizations.

This role will drive the strategy, architecture, and implementation of AI-enabled testing solutions designed to improve software quality, accelerate testing efficiency, enhance automation capabilities, and modernize QA operations across the SDLC/STLC lifecycle.

The ideal candidate will possess a strong background in QA automation, enterprise testing architecture, AI/ML technologies, and modern software engineering practices. This individual will partner closely with QA teams, developers, DevOps engineers, and product stakeholders to integrate AI-driven capabilities into enterprise testing ecosystems.

Work Location

  • 100% Remote within the United States
  • Candidates located near Chicago may be expected to follow a hybrid schedule:
    • Approximately 2 3 days onsite per week
    • Or as needed based on business requirements
Key Responsibilities

AI Strategy & Testing Transformation

  • Define and lead the AI vision and strategy for enterprise testing organizations
  • Establish AI adoption roadmaps and best practices for QA teams
  • Drive AI-enabled transformation initiatives across testing and quality engineering functions
  • Identify opportunities where AI can improve testing efficiency, coverage, and quality

AI-Driven Testing Solutions

Design And Implement AI-powered Solutions For

  • Test case generation
  • Test data creation
  • Automated test maintenance
  • Defect prediction
  • Root cause analysis
  • Failure and log analysis
  • Intelligent regression testing
  • Risk-based test prioritization
  • AI-assisted automation workflows

Framework & Architecture Design

Design Scalable AI-enabled Testing Frameworks Supporting

  • Functional testing
  • API testing
  • UI automation and validation
  • Performance testing
  • Security testing support

QA Engineering & DevOps Integration

  • Integrate AI capabilities into CI/CD pipelines and quality engineering workflows
  • Collaborate with QA, Engineering, Product, and DevOps teams
  • Support enterprise-scale testing modernization initiatives
  • Promote AI-assisted development and testing methodologies

Leadership & Enablement

  • Mentor QA engineers and automation teams on AI-assisted testing practices
  • Lead proofs of concept, pilot programs, and enterprise rollouts
  • Establish standards and governance for AI adoption within QA organizations

Required Qualifications

Education

Bachelor's Or Master's Degree Preferred In

  • Computer Science
  • Engineering
  • Data Science
  • Related technical disciplines

Experience

  • 10 years of overall industry experience
  • Strong background in:
    • Software Testing
    • QA Automation
    • Quality Engineering
    • Test Architecture
  • Minimum 3+ years of experience implementing:
    • Artificial Intelligence solutions
    • Machine Learning systems
    • Generative AI solutions
    • Enterprise AI initiatives
Note: Machine learning experience may contribute toward the AI requirement; however, candidates must demonstrate direct exposure to AI/GenAI technologies.

Required Technical Skills

AI / Machine Learning

Hands-on Experience With

  • Large Language Models (LLMs)
  • Natural Language Processing (NLP)
  • Machine Learning
  • Prompt Engineering
  • Enterprise AI implementations
  • AI-assisted workflows and automation

Programming Languages

Highest Priority

  • Java
  • SQL

Additional Preferred Languages

  • Python
  • JavaScript

Testing Tools & Frameworks

Top Required Tools

  • Selenium
  • Playwright

Additional Preferred Tools

  • Karate
  • TestNG
  • API testing frameworks/tools
  • Tosca (preferred)

Quality Engineering & SDLC Knowledge

Strong Understanding Of

  • SDLC (Software Development Life Cycle)
  • STLC (Software Testing Life Cycle)
  • QA operations and testing methodologies
  • Automation frameworks
  • CI/CD pipelines
  • Quality engineering best practices

Preferred Qualifications

  • Experience building AI copilots or AI-assisted QA solutions
  • Experience integrating AI into enterprise testing environments
  • Familiarity with:
    • Retrieval-Augmented Generation (RAG)
    • AI agents
    • Workflow automation
    • Observability and log analysis tools
    • Scalable enterprise architecture design
  • Experience working in Agile/Lean environments
  • Knowledge of DevOps and modern engineering practices
  • Exposure to cloud platforms such as AWS, Azure, or GCP
Interview Process

  • Multiple interview rounds
  • Primarily remote / Microsoft Teams-based interviews
  • In-person interviews are no longer mandatory

Assessment Focus

The Interview Process Will Emphasize

  • AI-assisted problem solving
  • AI-enabled development workflows
  • Demonstration of AI tool usage
  • Practical application of AI within testing environments

Traditional SDET-style coding assessments will have reduced emphasis.

Top Skills Identified By Hiring Team

  • Enterprise AI / Generative AI experience
  • Knowledge of LLMs, NLP, Machine Learning, and Prompt Engineering
  • Strong QA automation and testing process expertise
  • Deep understanding of SDLC/STLC and Quality Engineering practices
  • Hands-on experience with Selenium, Playwright, Java, and SQL

Candidate Disqualifiers / Red Flags

  • Frequent job changes or unstable tenure history
  • Limited or no direct AI/Generative AI exposure

Weak understanding of QA/testing operations and automation processes

Similar Jobs

Explore other opportunities that match your interests

System Administrator

Networking
•
2h ago
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Mid-Senior level

groundingwork

United State
Visa Sponsorship Relocation Remote
Job Type Contract
Experience Level Mid-Senior level

networkpedia

United State
Visa Sponsorship Relocation Remote
Job Type Contract
Experience Level Mid-Senior level

Hanalytica GmbH

United State

Subscribe our newsletter

New Things Will Always Update Regularly