Full Stack Python/Django Developer

London
£50000 - £70000 per annum + Benefits

Full Stack Python/Django Developer - Remote Working

London, currently - Flexible/Remote/Home Working

£50,000 - 70,000 + Free Laundry!

I'm currently working with a very unique start-up… Imagine, it's the end of the week, your laundry is overflowing out of the bin, a new week of work is right around the corner, and then the horrible thought hits... When are you going to find the time to get this laundry done? In comes my client, partnering with a network of master dry cleaners across the UK, they will collect your laundry from your front door, and deliver it right back to you once it's done! They are currently expanding their tech team to support the company's growth, so if you are a strong full-stack Python/Django developer, keep reading!

THE COMPANY:

My client is Britain's largest on demand laundry service, who has partnered with a huge network of master dry cleaners across the whole UK. Their aim is to cut out the annoyance of having to do laundry and/or the complication of getting to and from the dry cleaners with an overflowing basket of washing. They are already established in London, Brighton, Oxford and internationally in New York, and are constantly expanding to new areas.

THE ROLE:

Your role working as a Full Stack Python/Django Developer will look after the ongoing technical development of their platform. You'll be involved across the whole SDLC and will need to understand business and user issues to create smart technical solution. Other responsibilities will include:

  • Refining and improving the existing platform features
  • Improving their use of data to monitor and drive performance
  • Managing the development of new projects
  • Be a strong problem solver
  • Refactoring and updating the software
  • Developing and improving QA systems

YOUR SKILLS & EXPERIENCE:

What your role as a Full Stack Python/Django Developer will require:

  • Commercial experience as a Full Stack Developer using Python and Django
  • Knowledge of modern JavaScript, preferably work with React
  • Strong team player
  • Good communicator
  • Proactive and thought through

THE BENEFITS:

The salary for your role as a Full Stack Python/Django Developer is between £50,000 - 70,000.

Along with this salary, the company is offering the following benefits:

  • £1,500 laptop/software allowance
  • Health and fitness subsidy
  • Free laundry/Dry cleaning
  • £500 annual conference budget
  • Shares

HOW TO APPLY:

Please register your interest by sending your CV to Jessica Boss via the Apply link on this page.

Please note that our client is currently running a fully remote interview process, and able to on-board and hire remotely as well. This role is intended to be home working for the duration of COVID-19.

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79600/JB
London
£50000 - £70000 per annum + Benefits
  1. Permanent
  2. Software Engineer

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This quality Data, paired with the Social Distancing information, will allow us to gain better insights into how and what people are shopping for. We’ll then be able to look at trends, see what people are shopping for and where. Ultimately, it will also allow us to make recommendations as to where people should then go if they are looking for a product.”  In addition to crowdsourced information, Data Society are still keen to get their hands on any real-time Data that supermarkets have to offer. If you know where they could get their hands on it, you can get in touch with their team.  Outside of their current projects, Iyer remains optimistic for the world when it emerges from the current situation: “Things will return to normal. As dark a time as this is, I think it’s going to exemplify why people need to use Artificial Intelligence and Data Science more. If this type of app is publicised during the Coronavirus, maybe more people will understand the power of what Data and Data Science can do and more companies that are slow adaptors will see this and see how it could be helpful to their industry.”   If you want to make the world a better place using Data, we may have a role for you, including a number of remote opportunities. Or, if you’re looking to expand and build out your team with the best minds in Data, get in touch with one of expert consultants who will be able to advise on the best remote and long-term processes. 

What Does The Fourth Industrial Revolution Look Like?

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