We serve candidates globally, so we only activate Google Tag Manager and other analytics after you opt in. This keeps us aligned with GDPR/UK DPA, ePrivacy, LGPD, and similar rules. Essential features still run without analytics cookies.
Own QA strategy, planning, and execution for AI/ML applications and microservices; design, automate, and optimize tests across functional, integration, regression, and performance scopes
Validate AI/ML model outputs (accuracy, consistency, bias); collaborate with data scientists to tailor test strategies for non-deterministic systems
Build/maintain intelligent test automation tied to CI/CD; test end-to-end content workflows (video/audio/text: transcoding, speech-to-text, CV, QC, metadata enrichment); integrate QA into CI/CD pipelines; support performance, scalability, and regression testing
Must-have skills
5+ years QA experience in product/enterprise environments; strong SDLC/STLC, Agile, and defect lifecycle understanding
API, automation, and performance testing (distributed/cloud-based systems)
Familiarity with AI test strategies and AI/ML testing tools; comfort with AI-enabled frameworks
Python scripting; databases (SQL/NoSQL); cloud & CI/CD experience; strong debugging and communication
Nice-to-haves
Experience in Media/Supply Chain, Broadcast, OTT, or Post-production workflows; familiarity with media domain concepts
Full Description
JOB DESCRIPTION
Experience: 5 - 8 Yrs
Location: Bengaluru
Designation: Senior Quality Assurance Engineer
Description
We are looking for a Senior / Lead QA Engineer with hands-on experience in end-to-end testing of AI/ML-powered and cloud-based media platforms. The ideal candidate is not only technically proficient but also AI-aware in their QA approach — informed on the latest AI test strategies, conversant with AI-powered tools for test case generation and execution, and comfortable experimenting with new AI-enabled frameworks that enhance automation efficiency.
You will help set up intelligent QA systems integrated into CI/CD pipelines, driving test automation and turnaround time (TAT) efficiencies across the team.
Key Responsibilities
Own QA strategy, planning, and execution for AI/ML applications and microservices within the AI platform.
Design, automate, and optimize test cases across functional, integration, regression, and performance testing.
Validate AI/ML model outputs for accuracy, consistency, and bias; collaborate with data scientists to fine-tune test strategies for non-deterministic systems.
Stay informed on AI-driven testing approaches and tools; apply them to enhance test coverage and reduce manual effort.
Experiment with and onboard AI-enabled testing frameworks that support CI/CD-linked automation and continuous validation.
Build and maintain intelligent test automation systems that improve overall system efficiency and TAT.
Test end-to-end content workflows involving video, audio, and text – transcoding, speech-to-text, computer vision, content QC, and metadata enrichment.
Develop and maintain automated test frameworks using tools like Playwright, PyTest, Selenium, Postman, JMeter, or Robot Framework.
Integrate QA seamlessly into CI/CD pipelines (Jenkins, GitHub Actions, or similar).
Collaborate closely with engineering, DevOps, and product teams to reproduce and resolve defects efficiently.
Contribute to improving QA standards, documentation, and test data management practices.
Support performance benchmarking, scalability, and regression testing of AI-enabled workflows.
Required Skills & Experience
5+ years of QA experience in product development or enterprise platform environments.
Strong understanding of SDLC, STLC, Agile methodologies, and defect lifecycle.
Proven experience in API testing, automation, and performance testing of distributed or cloud-based systems.
multi-locationreview:company
Familiarity with AI test strategies and exposure to AI/ML testing tools (for model validation, dataset evaluation, or automated test generation).
Comfort with exploring and integrating new AI-driven frameworks to accelerate QA automation.
Familiarity with media domain concepts (audio/video codecs, subtitles, speech-to-text, NLP, or computer vision) preferred.
Working knowledge of databases (SQL/NoSQL), scripting (Python preferred), and test automation frameworks.
Experience with cloud platforms (AWS / Azure / GCP) and CI/CD pipelines.
Strong analytical, documentation, and debugging skills.
Excellent communication and collaboration skills across cross-functional teams.
Nice to Have
Prior experience with Media Supply Chain, Broadcast, OTT, or Post-production workflows.
Familiarity with M&E platforms.
Basic understanding of AI metrics (precision, recall, accuracy) and statistical validation of model outputs.
Education
Bachelor’s or Master’s degree in Computer Science, Information Technology, or a related field.
Seniority level
Associate
Employment type
Full-time
Job function
Engineering and Information Technology
Industries
Software Development and Technology, Information and Media