Software Tester / QA Tester

Oscar Technology
Leeds
1 year ago
Applications closed

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Software Tester - Leeds - Hybrid - £40K DOE This is an opportunity for a Manuel tester to join a Software House based in Leeds. They provide solutions to a variety of Industries utilising the latest in machine learning and AI capability for their customers across the World. Your day to day will consist of test planning, interpreting user stories, preparing test plans, test scripts, working with the team and stakeholders, managing your workload, raising any issues or defects. Skills- SQL API Testing with Postman Manual functional testing Over 2 years experience within a testing role Testing of Application's either in-house systems or larger systems This is a hybrid role 4 days a week in their modern office based in Leeds. Interviews are taking place ASAP so please APPLY NOW if interested Software Tester - Leeds - Hybrid - £40K DOE Oscar Associates (UK) Limited is acting as an Employment Agency in relation to this vacancy. To understand more about what we do with your data please review our privacy policy in the privacy section of the Oscar website.

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