Graduate Cloud Consultant

Reply
London
1 year ago
Applications closed

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About Go Reply:
Go Reply is the Reply Grouppany specialising in workload migration to Google Cloud Platform and then supports clients to optimise these workloads. Our collaborative approach allows our clients to enjoy benefits such as rapid innovation and development cycles. Our focus areas are both application workload migration and data migrations into platforms engineered on GCP. Go Reply is a Google Cloud Premier Partner with over 100 GCP engineers across our European practice. Go Reply hold Google awarded specialisations in Infrastructure and Machine Learning and are also a Google Cloud Platform Managed Service Partner, an award from Google to endorse our credentials in managed services.

Role Overview:
As a Graduate Cloud Consultant, you will be part of a team of cloud specialists building highly resilient, scalable and performant cloud solutions based on Google Cloud Platform. In addition, you'll get the opportunity to engage in data-driven solution development, leveraging GCP's suite of data analytics and machine learning tools. You'll love our extensive training opportunities ( GCP Cloud certifications, Google Cloud Engineer/Architect certifications) and you'll have opportunities to get involved in Hackathons, Code Challenges or Lab Camps. Reply encourages your career growth and we will give you the tools and guidance to achieve subject matter expertise and management capabilities.

Joining our team offers an exciting opportunity for accelerated career growth, empowering you to advance rapidly within the organisation while honing your expertise as a cloud join our vibrant and diverse work environment - you will be surrounded by peers who share your passion for technology.

Responsibilites:

Discovering and architecting solutions for our customers. You will work closely with them to understand their business needs and design tailored solutions that leverage the power of Google Cloud Platform. Building and managing our customers' cloud environments to enable application deployments on GCP Designing and implementing data-driven solutions leveraging Google Cloud Platform's data analytics and machine learning capabilities Engineering solutions on Google Cloud Platform using Infrastructure As Code methods ( Terraform) Integrating, configuring, deploying and managing centrally providedmon cloud services ( IAM, networking, logging, Operating systems, Containers) Ensuringpliance with Security and Operational risk standards ( Network, Firewall, OS, Logging, Monitoring, Availability, Resiliency) Building and supporting continuous integration (CI), continuous delivery (CD) and continuous testing activities Conducting client-facing presentations and effectivelymunicating technical concepts and solutions to stakeholders.

About the candidate:A Bachelor's degree ( or higher) is required in IT,puter Science or in a Technology-related field Excellentmunications skills and an ability tomunicate with impact as a consultant A passion for technology and a strong interest in bing a cloud specialist Flexibility regarding local travel Desired programming language skills - One of: Python, Java, C#, .NET, C / C++, Go Desired Server knowledge skills - One of: CentOS (Other Linux flavours as well), Redhat, Shell Scripting Reply provides equal employment opportunities to all employees and applicants for employment and prohibits discrimination and harassment of any type regardless of age, sexual orientation, gender, identity, pregnancy, religion, nationality, ethnic origin, disability, medical history, skin colour, marital status or parental status or any other characteristic protected by the Law.
Job ID 10116

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