Share
Job Summary
You’ll help accelerate the development of AI prototypes by ensuring seamless platform integration, CI/CD pipelines, and other critical infrastructure to enable high-speed experimentation and iteration.
This role combines technical depth with systems thinking. You’ll lead quality strategy and hands-on validation for AI-powered products, working closely with engineering, product, and AI research to ensure that what we ship is both breakthrough and bulletproof.
What you’ll do
Champion DevOps, CI/CD, and security practices to streamline the deployment of prototypes and AI features, enabling rapid iteration and testing.
Translate fast-moving prototypes into testable, reliable features using AI-enhanced validation tools and frameworks
Mentor senior QA and automation engineers, shaping a high-ownership, high-velocity quality culture within the productization team
Partner with engineers and AI scientists to define test hooks, observability layers, and validation paths during development—not just after
Create feedback loops that turn AI-driven insights (logs, usage data, heuristic signals) into continuous quality improvements
What you’ll bring
10+ years of experience in software or quality engineering, with deep expertise in building and maintaining production-grade test systems
Familiarity with modern infrastructure and deployment stacks (e.g., Kubernetes, CI/CD, cloud services)
Experience designing and running end-to-end test suites that mirror real-world customer behaviors and workflows
Exceptional collaboration and communication skills—able to align product, engineering, and research around pragmatic quality tradeoffs
Passion for AI product reliability and ensuring breakthrough features don’t break the user experience
Nice to have
Experience with AI-enhanced QA tools (e.g., GPT-based test generation, anomaly detection, log synthesis)
Background in usability engineering or customer workflow validation
Contributions to internal observability tooling, feedback ingestion systems, or AI regression monitoring frameworks
Exposure to AI research-to-productization pipelines, including real-time and batch model integrations
These jobs might be a good fit