QA Engineer / Sr. QA Engineer - Machine Learning Platform for E-Commerce
Role details
Job location
Tech stack
Job description
AppIQ Tech is seeking a meticulous and strategic QA Engineer / Sr. QA Engineer to ensure the quality and reliability of our Machine-Learning-driven e-commerce funnel optimisation and digital advertising platform.
You will be responsible for defining the testing strategy for high-performance applications that leverage our proprietary Predictive AI solutions.
As a key member of our fast-paced startup, you will balance the need for rapid feature deployment with the necessity of thorough testing. You will be responsible for identifying and prioritising the highest-risk bugs to ensure our scalable services, which manage millions of daily events, remain robust and accurate.
-
QA Architecture & Strategy: Develop and maintain a comprehensive QA architecture that supports full-stack applications and complex microservices.
-
Risk Management: Prioritise bug fixes based on risk of failure and potential impact, while striking a productive balance between speed-to-market and exhaustive testing.
-
Test Management: Utilise test case management (TCM) systems such as TestRail, Zephyr, Xray, PractiTest, qTest, or similar to organise test cases, track execution, and provide transparent reporting on quality metrics.
-
Automated Testing: Design, implement, and scale automated test suites using tools such as Playwright, Cypress, and Appium.
-
Testing & Validation: Perform rigorous unit tests and integration tests on applications built with TypeScript, React, Node.js, Python, and PySpark.
-
Infrastructure Testing: Verify the reliability of deployments across AWS (EC2, S3, Firehose) and Cloudflare edge environments.
-
Data Integrity: Collaborate with Data Engineers to validate the accuracy of complex event data and real-time reporting dashboards.
-
Cross-Functional Collaboration: Act as a great team player with excellent communication skills, working closely with developers and data scientists to ensure a seamless end-user experience.
Requirements
-
4+ years of professional experience in software quality assurance or engineering, with a strong focus on scalable web applications (7+years for Sr. QA Engineer).
-
Strong grasp of QA architecture and modern testing methodologies.
-
Deep expertise in the tech stack used by our engineers, specifically TypeScript, React, Node.js, Python, and PySpark.
-
Cloud & Database Proficiency: Familiarity with AWS services and both SQL and NoSQL (e.g., MongoDB) databases to effectively test data persistence and performance.
-
Global Collaboration: Ability to work effectively with globally distributed teams.
Strong plus if you also have:
-
AI/ML Literacy: Understanding of Machine Learning (Supervised/Reinforcement Learning), Predictive AI, and the validation of Data Pipelines.
-
Proficiency in Python or experience with PySpark.
-
Prior experience in the e-commerce or Ad Tech ecosystem (DSPs, Audience Data, Fraud detection).
Benefits & conditions
-
The opportunity to shape the QA culture and architecture from the ground up.
-
An attractive career path on either a management or an individual contributor track.
-
Genuine learning, training and development opportunities, supported by regular performance reviews
-
Competitive compensation and generous paid time off.
-
Work-from-anywhere flexibility
-
Opportunities to develop expertise in building cutting-edge predictive AI applications.
Deze baan Landelijk gemiddeld Bouwkunde vacatures gemiddeld Nederland gemiddeld Installatie engineer