Junior Software Engineer

Manchester
10 months ago
Applications closed

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Junior Software Engineer (IoT Data)

Up to £40K (DOE)

Hybrid (Mon & Tues in office)

The company:

This is an incredible opportunity to join a forward-thinking company at the forefront of smart IoT technology, where you'll play a crucial role in shaping the future of efficiency and sustainability. The company's innovative IoT monitoring solutions are transforming industries by helping businesses cut costs, optimize energy usage, and stay ahead of environmental regulations.

You'll be working on real-time data tools that empower organizations to make smarter, data-driven decisions, improving everything from operational efficiency to environmental impact. With products like environmental monitors, temperature sensors, and energy usage trackers, the company is helping industries such as manufacturing, healthcare, and renewable energy take giant leaps towards a sustainable future. This is your chance to work on groundbreaking technology that integrates seamlessly with intuitive online dashboards, delivering real-time alerts, detailed data logs, and custom reports. If you're ready to make a meaningful impact in an industry that's shaping the future of both business and the planet, this role is the perfect next step in your career.

The Role:

Join a high-performance data platform team focused on real-time data from LoRaWAN sensors. You'll develop React applications for data visualisation, build RESTful APIs with TypeScript and NestJS, and help migrate legacy PHP systems to modern technologies. Work with a collaborative team, ensuring system stability, performance, and user experience.

Key Responsibilities:

Build and optimise a platform for real-time sensor data ingestion and visualisation

  • Develop user-friendly React apps, focusing on performance and accessibility
  • Implement data visualisations with Chart.js
  • Design and maintain RESTful APIs with TypeScript and NestJS
  • Contribute to database design for time-series data
  • Maintain and migrate legacy PHP systems
  • Troubleshoot technical issues and improve system performance
  • Explore machine learning integration for data analysis

    Skills and Experience:
    Required:
  • 1+ years in software development (TypeScript, JavaScript, React, NodeJS)
  • Experience with RESTful APIs and data integrity
  • Strong problem-solving and collaboration skills

    Preferred:
  • Experience with SQL, TimescaleDB, NestJS, Chart.js, AWS, Docker, IoT
  • Familiarity with PHP and machine learning

    Benefits:
  • Competitive salary and benefits
  • Impactful projects and a collaborative environment
  • Opportunities for growth and development

    This is a unique opportunity to make a direct impact in a rapidly growing industry that's not only shaping the future of technology but also driving sustainability and efficiency across diverse sectors. You'll be part of a company that's leading the way with cutting-edge solutions, giving you the chance to work on meaningful projects with lasting environmental and business benefits. With the opportunity to work on advanced technology, collaborate with a passionate and supportive team, and continuously grow your skills, this role offers a perfect balance of challenge and reward. If you're looking for a role where you can make a real difference while advancing your career in a high-growth sector, this is the perfect fit.

    If this peaks your interest apply now or reach out for more info

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