Urgent Search: Senior Dotnet Developer

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London
1 year ago
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MLOps Engineer- Contract Role

Job Title: .NET/C# Developer Location: London City, UKJob Type: Full-time (Permanent & Contract options available,based on candidate preference) Salary: In the range of £70K -£80KPer annum Job Function: .NET/ C# Development Job Industry: Banking,Financial Services, Investment Banking/ FinTech. Jobresponsibilities Executes software solutions, design, development,and technical troubleshooting with ability to think beyond routineor conventional approaches to build solutions or break downtechnical problems Creates secure and high-quality production codeand maintains algorithms that run synchronously with appropriatesystems Produces architecture and design artifacts for complexapplications while being accountable for ensuring designconstraints are met by software code development Gathers, analyzes,synthesizes, and develops visualizations and reporting from large,diverse data sets in service of continuous improvement of softwareapplications and systems Proactively identifies hidden problems andpatterns in data and uses these insights to drive improvements tocoding hygiene and system architecture Contributes to softwareengineering communities of practice and events that explore new andemerging technologies Adds to team culture of diversity, equity,inclusion, and respect Required qualifications, capabilities, andskills Formal training or certification on software engineeringconcepts and 5 years applied experience Demonstrated and solidexperience in C# and .Net technologies Experience with relationaldatabases Hands-on practical experience in system design,application development, testing, and operational stabilityProficient in coding in one or more languages Experience indeveloping, debugging, and maintaining code in a large corporateenvironment with one or more modern programming languages anddatabase querying languages Overall knowledge of the SoftwareDevelopment Life Cycle Solid understanding of agile methodologiessuch as CI/CD, Application Resiliency, and Security Demonstratedknowledge of software applications and technical processes within atechnical discipline (e.g., cloud, artificial intelligence, machinelearning, mobile, etc.) Preferred qualifications, capabilities, andskills Familiarity with modern front-end technologies Exposure toAWS cloud technologies

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