Job Description :
Founded by pioneering journalists as the first social media newswire, Storyful was created out of the need to break the news faster and utilize social content to add context to reporting. Acquired by News Corp in 2013, Storyful has evolved into a premium service for media, business leaders and investors.
Our goal is to help our partners understand the attitudes, behaviors and emotions shaping the world. Powered by a unique ability to gather and streamline data from all corners of an increasingly complex information environment, our teams deliver clarity in a world of confusion. Our mission is to dig deeper into the nuance inherent in digital media to establish context, verify the truth and help our partners make sense of the world.
Storyful is building AI-native products on top of complex, high-volume, multi-source content. We are looking for a hands-on Senior QA Automation Engineer to raise the quality bar while increasing delivery speed through AI-augmented engineering.
This is a senior individual contributor role for someone who treats AI as a core part of their craft — using coding agents, LLMs, and evaluation frameworks to scale quality faster than headcount.
You will design and build the automation, evaluation, and quality foundations that enable engineers to own quality, while ensuring our products remain reliable, explainable, and trusted — even as they become increasingly probabilistic.
You will work closely with software engineers, data scientists, product managers, and SRE to embed quality into every stage of the development lifecycle.
Build and evolve scalable automation frameworks across web UI, APIs, and data pipelines (Playwright / TypeScript)
Use AI coding agents (e.g. Claude Code) to generate, refactor, and maintain test suites at scale
Translate natural-language acceptance criteria into executable, maintainable tests
Define reusable testing patterns that enable engineers to own automation within their domains
Continuously reduce flakiness using trace analysis, observability, and AI-assisted failure triage
Partner with engineers to embed testing early in the development lifecycle
Define pragmatic, risk-based test strategies across unit, integration, contract, and E2E layers
Establish clear definitions of done, quality gates, and release readiness standards
Build tooling and frameworks that allow teams to move fast without relying on central QA
Design evaluation pipelines for LLM-driven features using:
Golden datasets and regression harnesses
Semantic similarity scoring
LLM-as-a-judge evaluation patterns
Detect and prevent issues such as prompt drift, hallucinations, retrieval failures, and schema regressions
Test agentic workflows end-to-end (tool use, multi-step reasoning, failure modes)
Partner with data science to define measurable quality signals (precision, recall, grounding, drift)
Embed automation and evaluation into CI/CD pipelines for fast, reliable feedback
Define and tune meaningful quality gates based on real metrics (not ceremony)
Support release processes with high-confidence signals and rollback readiness
Investigate complex issues across distributed systems using logs, traces, and metrics
Improve observability, including LLM trace visibility (e.g. Langfuse)
Establish strong defect triage, categorisation, and reporting practices
Use data (leakage, flake rate, MTTR, escape rate) to continuously improve quality
Embed security testing into automation (OWASP, API security, auth flows)
Test AI-specific risks (prompt injection, jailbreaks, unsafe tool use, data leakage)
Collaborate on performance, resilience, and scalability testing where it matters most
Engineers own quality by default, supported by strong frameworks and AI tooling
Automation is fast, reliable, and trusted as a release signal
LLM-powered features ship with measurable, repeatable quality evaluation
Regression risk is proactively managed across both deterministic and probabilistic systems
Delivery speed increases without compromising trust or stability
Quality becomes a competitive advantage, not a bottleneck
Proven experience as a Senior QA Automation Engineer / SDET in production environments
Strong hands-on experience with Playwright (or equivalent) using TypeScript
Demonstrated use of AI coding tools (e.g. Claude Code) as part of daily workflow
Strong software engineering fundamentals and ability to write maintainable production-grade code
Experience designing automation frameworks and test strategies end-to-end
Deep understanding of CI/CD and integrating automation into delivery pipelines
Strong debugging and observability skills across distributed systems
Experience driving shift-left practices and enabling engineers to own quality
Solid understanding of databases, APIs, and test data validation (SQL, REST/GraphQL)
Security-aware mindset (OWASP, secure test design)
Testing AI/LLM-powered systems (evaluation frameworks, prompt regression, drift detection)
Experience with LLM evaluation patterns (LLM-as-a-judge, semantic scoring, golden sets)
Exposure to RAG pipelines, vector search, or knowledge graph systems
Familiarity with LLM observability and experimentation tools (e.g. Langfuse, MLflow)
Experience testing agentic systems and multi-step workflows
Performance and load testing at scale
Cloud experience (AWS/GCP) and test infrastructure design
Experience in high-trust domains (media, intelligence, risk, compliance)
This role will define how Storyful delivers quality in an AI-native world.
As our products evolve from deterministic systems to probabilistic, agent-driven platforms, traditional QA approaches no longer scale. This role ensures we can move fast while maintaining trust — building the foundations that allow AI-powered features to work reliably at production scale.
Equal Opportunity Employer
We are committed to creating an inclusive workplace that values diversity. All qualified applicants will receive consideration for employment without regard to race, colour, religion, gender, gender identity or expression, sexual orientation, age, disability, national origin, or any other protected characteristic under applicable local laws.
Reasonable Accommodation
We are committed to providing reasonable accommodation for qualified individuals with disabilities in our job application and/or interview process. If you need assistance or accommodation in completing your application or participating in an interview due to a disability, email us at [email protected]. Please put "Reasonable Accommodation" in the subject line and provide a brief description of the type of assistance you need. This inbox will not be monitored for application status updates.
Please refer to the privacy notice at the bottom of this page for submitting any data access, deletion, or other data subject rights requests, where permitted under your local laws and regulations.
Job Category:
Storyful - Product & Technology