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

Visa Sponsorship Relocation Remote
Job Type Contract
Experience Level Associate

integrity consulting, nc

United State
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Not Applicable

Innovations for Poverty Action

United State

Remote IT Specialist - Full Stack

Networking
•
13h ago
Visa Sponsorship Relocation Remote
Job Type Volunteer
Experience Level Not Applicable

remote job network

United State

Subscribe our newsletter

New Things Will Always Update Regularly