Software Engineer

Grey Triangle
1 year ago
Applications closed

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Recruiting on behalf of our client based in Poole, Dorset.


A prestigious organisation, a leader in their field. Rapidly expanding during the coming year, with huge business growth supported by a range of technologies and solutions, expanding the team to take on new challenges and modernise their client facing platforms.



From the Technical Director

"Our company is underway on an exciting transformative journey to modernise our software ecosystem. We maintain several large-scale applications with significant code bases serving our valued clients. Our mission is to evolve these systems into a cutting-edge, modular platform that embodies best practices in software development. We are actively leveraging DevOps methodologies, implementing infrastructure as code (IaC), and exploring containerisation to enhance our deployment processes.


We are seeking skilled and experienced Full Stack Web Developers to join our team. The ideal candidates will have expertise in Blazor, .NET Core, Azure, and DevOps practices, with the ability to work on both modern and legacy systems. This role offers an exciting opportunity to work with cutting-edge web technologies while also maintaining and migrating legacy systems. The ideal candidates will be passionate about staying current with the latest developments in web development, cloud computing, and AI technologies."



## Core Responsibilities ##

  • Develop and maintain web applications using Blazor and .NET Core
  • Implement and optimize Azure cloud solutions
  • Apply DevOps practices for continuous integration and deployment
  • Work with both on-premise and cloud-based hosting environments
  • Contribute to AI solution development, particularly in voice applications
  • Maintain and upgrade legacy systems
  • Implement DevOps practices using Git, Octopus, and other relevant tools
  • Collaborate with cross-functional teams to deliver high-quality software solutions


## Required Skills and Experience ##

**Technical Skills**

  • Strong proficiency in Blazor and .NET Core development
  • Experience with Azure cloud services and architecture
  • Familiarity with Linux environments
  • Knowledge of DevOps practices and tools (e.g., Git, Octopus)
  • Understanding of SQL and database management
  • Experience with IIS and on-premise hosting


**AI and Voice Technology**

  • Experience or strong interest in developing AI solutions
  • Knowledge of voice recognition and natural language processing technologies


**Additional Requirements**

  • Ability to work with legacy .NET systems
  • Strong problem-solving and analytical skills
  • Excellent communication and teamwork abilities


## Preferred Qualifications ##

  • Experience with Azure Cognitive Services
  • Familiarity with ML.NET or other machine learning frameworks
  • Knowledge of Azure DevOps or similar CI/CD tools
  • Experience with microservices architecture


## Performance Metrics ##

  • Successful implementation of Blazor-based web applications
  • Efficient migration of legacy systems to modern technologies
  • Improved deployment processes and reduced time-to-market
  • Successful integration of AI and voice technologies into existing applications
  • Optimisation of cloud resource utilisation and costs


## Location ##

Hybrid. Onsite to Poole, Dorset 2-4 days p/month


## Salary ##

1 Year Fixed Term Contract - £70k

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