Infrastructure Automation and Data Engineer, Assistant VicePresident

STATE STREET CORPORATION
London
4 days ago
Applications closed

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Infrastructure Automation and Data Engineer, AssistantVice President Infrastructure Automation and Data Engineer,Assistant Vice President Apply locations London, England time typeFull time posted on Posted Yesterday time left to apply End Date:April 30, 2025 (30+ days left to apply) job requisition id R-769777We are seeking an experienced and motivated InfrastructureAutomation & Data Engineer to join our Platform EngineeringConfiguration Management squad. This role focuses on leveragingcutting-edge Infrastructure as Code (IaC) technologies to helpdevelop and deliver a scalable and robust configuration drift andsecurity scanning solution, helping to ensure the Bank is able toreport and manage their security and compliance requirements. Whatyou will be responsible for: As an Infrastructure Automation &Data Engineer you will: - Onboard data to Splunk via forwarder,scripted inputs, TCP/UDP, and modular inputs from various networkand application sources. - Analyse data for anomalies and trends,building relevant dashboards/alerts that improve visibility. -Ensure consistent and aligned approach on data structure withinproduct. - Work closely with application development team duringrelease rollout to analyse agent performance impact andtroubleshoot issues. - Collaborate with cross-functional teams tounderstand infrastructure requirements and deliver solutionsaligned with business needs. - Stay up to date with the latestadvancements in automation and IaC technologies, applying bestpractices to the team’s workflows. What we value: These skills willhelp you succeed in this role: - Experience in any of thefollowing: Splunk dashboards, or add-ons, Kibana dashboards orGrafana. - Proven experience in automation platforms such asAnsible Tower. - In-depth knowledge in data structures and querylanguages. - Expertise in a variety of scripting languages such asPython, Yaml and Powershell. - Working knowledge in securitystandards and baselines for Operating Systems and associatedcomponents. - Experience with cloud platforms, specifically Azureand AWS. - Experience working in agile teams, with a focus oncollaboration and continuous improvement. - Excellentproblem-solving skills and the ability to work effectively in afast-paced, complex environment. Preferred Qualifications: -Experience in large-scale IT environments with a focus oninfrastructure automation. - Familiarity with hybrid cloudenvironments. - Knowledge of CI/CD pipelines and integration withIaC workflows. - Knowledge of Python scripting. Why Join Us? - Workwith a forward-thinking team utilizing the latest technologies ininfrastructure automation. - Opportunity to have a significantimpact on the organization’s configuration management strategy. -Access to professional development resources and career advancementopportunities. - A collaborative and inclusive work culture. AboutState Street: State Street is one of the largest custodian banks,asset managers and asset intelligence companies in the world. Fromtechnology to product innovation, we’re making our mark on thefinancial services industry. For more than two centuries, we’vebeen helping our clients safeguard and steward the investments ofmillions of people. We provide investment servicing, data &analytics, investment research & trading and investmentmanagement to institutional clients. Work, Live and Grow: We makeall efforts to create a great work environment. Our benefitspackages are competitive and comprehensive. Details vary bylocation, but you may expect generous medical care, insurance andsavings plans, among other perks. You’ll have access to flexibleWork Programs to help you match your needs. And our wealth ofdevelopment programs and educational support will help you reachyour full potential. Inclusion, Diversity Social Responsibility: Wetruly believe our employees’ diverse backgrounds, experiences andperspectives are a powerful contributor to creating an inclusiveenvironment where everyone can thrive and reach their maximumpotential while adding value to both our organization and ourclients. We warmly welcome candidates of diverse origin,background, ability, age, sexual orientation, gender identity andpersonality. Another fundamental value at State Street is activeengagement with our communities around the world, both as a partnerand a leader. You will have tools to help balance your professionaland personal life, paid volunteer days, matching gift programs andaccess to employee networks that help you stay connected to whatmatters to you. State Street is an equal opportunity andaffirmative action employer. If you are passionate about Windowsautomation and have a proven track record of delivering innovativesolutions in large environments, we encourage you to apply andbecome a key player in our Windows Image Bakery squad.#J-18808-Ljbffr

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