Founded in 1982, Vodafone is a telecommunications company that aims to "connect everybody to live a better today and build a better tomorrow." Year after year, the company connects
Test & QA Authority
Location
United Kingdom
Posted
9 days ago
Salary
0
Seniority
Senior
Job Description
Test & QA Authority
Vodafone
• Ensure high-quality delivery across complex customer programmes. • Provide end-to-end test leadership. • Act as Programme Test Manager on large or complex initiatives. • Own the programme test strategy and oversee quality gates and assurance activities. • Produce and maintain all key test artefacts, ensuring testing is carried out to robust, agreed standards throughout the lifecycle.
Job Requirements
- Proven experience as a Test Manager or QA Manager on large-scale, complex technology projects—preferably in SDWAN, networking, contact centre, or data centre domains.
- In-depth understanding of test management methodologies, automation frameworks, and quality assurance best practices.
- Hands-on experience with testing network infrastructure, including SDWAN and data centre technologies, voice/contact centre platforms, and network optimisation tools.
- Strong problem-solving and analytical skills, with a meticulous approach to detail and quality.
Benefits
- up to 28 days off plus bank holidays
- paid time for charity work
- discounts and vouchers
- pension plan
- amazing learning tools
- top-notch parental leave policies
Related Guides
Related Categories
Related Job Pages
More QA Engineer Jobs
• Validate data accuracy and ensure production readiness by working closely with the Data Engineering Manager and Analytics Engineering Lead across 18 data domains. • Design and build a reconciliation framework to systematically compare legacy pipeline outputs against new pipeline outputs, identifying discrepancies and gaps. • Execute structured acceptance testing for each pipeline prior to promotion to production environments. • Validate identity resolution accuracy through rigorous analysis of match rates, false positives, and false negatives. • Document end-to-end data lineage across all 18 domains to support auditability, transparency, and regulatory compliance. • Build and maintain automated regression test suites to enable continuous quality assurance as pipelines evolve.
• Validate data accuracy and ensure production readiness by working closely with the Data Engineering Manager and Analytics Engineering Lead across 18 data domains. • Design and build a reconciliation framework to systematically compare legacy pipeline outputs against new pipeline outputs, identifying discrepancies and gaps. • Execute structured acceptance testing for each pipeline prior to promotion to production environments. • Validate identity resolution accuracy through rigorous analysis of match rates, false positives, and false negatives. • Document end-to-end data lineage across all 18 domains to support auditability, transparency, and regulatory compliance. • Build and maintain automated regression test suites to enable continuous quality assurance as pipelines evolve.
• Validate data accuracy and ensure production readiness by working closely with the Data Engineering Manager and Analytics Engineering Lead across 18 data domains. • Design and build a reconciliation framework to systematically compare legacy pipeline outputs against new pipeline outputs, identifying discrepancies and gaps. • Execute structured acceptance testing for each pipeline prior to promotion to production environments. • Validate identity resolution accuracy through rigorous analysis of match rates, false positives, and false negatives. • Document end-to-end data lineage across all 18 domains to support auditability, transparency, and regulatory compliance. • Build and maintain automated regression test suites to enable continuous quality assurance as pipelines evolve.
• Validate data accuracy and ensure production readiness by working closely with the Data Engineering Manager and Analytics Engineering Lead across 18 data domains. • Design and build a reconciliation framework to systematically compare legacy pipeline outputs against new pipeline outputs, identifying discrepancies and gaps. • Execute structured acceptance testing for each pipeline prior to promotion to production environments. • Validate identity resolution accuracy through rigorous analysis of match rates, false positives, and false negatives. • Document end-to-end data lineage across all 18 domains to support auditability, transparency, and regulatory compliance. • Build and maintain automated regression test suites to enable continuous quality assurance as pipelines evolve.
