Senior Infrastructure Engineer

VASS UK&I
1 year ago
Applications closed

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Are you a skilled Senior Infrastructure Engineer? We are seeking a talented individual to join our dynamic team. If you thrive in a fast-paced environment and enjoy tackling challenging projects, this opportunity is for you!Who are we?At VASS, we're at the forefront of digital solutions, spanning 26 countries across Europe, America, and Asia. Our mission is to guide large companies through their digital transformation journey, crafting and executing innovative and scalable projects that streamline processes from strategy to execution.With over 5,000 professionals, our growth stems from our exceptional team, our drive for innovation, and our dedication to simplifying the complex, all encapsulated in our unique VASS ethos. We offer a comprehensive suite of digital services, from cloud computing to artificial intelligence and beyond. Come be a part of our journey as we revolutionize the digital landscape and create positive impacts worldwide. Responsibilities:Designing and ensuring technical quality of infrastructure customer solutionsPerforming landscape review and audits on customer solutionsLearn Appian tech stacks and provide Appian administration and Lifecyle supportsTo be successful in this role we are looking for someone with experience in:Infrastructure build and release within a microservices architecture.Supporting Infrastructure on hybrid platforms.Automation of manual processes, including code deployment and environment provisioning.Rapid delivery of user centric services whilst focussing on performance, reporting and alerting.Collaborative working using an inclusive approach to delivery of objectives.Requirements:- Minimum of 5 years’ experience in an Infrastructure generalist role- Experience in at least four of the following areasAppianAzure administrationNetworking and securityLinux server administrationMicrosoft Windows Server administrationMicrosoft Active Directory or Azure ADVMware vSphere platformsMicrosoft Office 365 and SharePoint administrationMonitoring systems, Nagios experience beneficial- Experience with automation or DevOps would be preferable- Good communication skills, both written and verbal- Passion to provide a top service to customers- Logical and clear thinker, organized with excellent attention to detail- Self-motivated and process-oriented- Confident and resilientKey Technologies: Appian on-prem and cloudAzure tech stacksNetwork and security (Cisco and IP)LinuxMonitoring systems (Nagios)Desirable Technologies: Citrix on prem environmentsAnsible/ Jenkins / Stack storm for automationsWhat we offer: Competitive salary.Health insuranceLife insuranceSalary sacrifice optionsEmployee pension contribution26 days of Annual leave plus bank holidays.Dynamic and collaborative work environment.Opportunities for professional growth and development.Exciting projects with cutting-edge technologies across a variety of industries.A culture that supports and makes you thrive. Based on innovation, diversity, and excellence.VASS is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. Employment decisions are based on qualifications, merit, and business needs, without regard to race, religion, color, sex, gender identity, sexual orientation, age, national origin, marital status, or disability status. Join us in shaping the future of digital transformation!

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