Java Developer | Machine learning, NLP and AI - £75k

London
1 year ago
Applications closed

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Java, Springboot, Microservices, Monoliths, Vue.js, Nuxt, AWS
 
I have just partnered up with a tech-firm who are all ex-Formula 1 stakeholders, currently developing a product that is used by large mining companies.
 
Having grown a team out in Australia, they are now looking to expand the UK team with a Senior Java developer. As it stands, there’s around 25 people in the team and it is a mixture of front-end, back-end and DevOps engineers.
 
There’s ample amounts of opportunities with this team, having given opportunities to the Australian team to relocate to UK or vice versa! So, your role can get very exciting being a part of this journey.
 
As a Senior Java developer, you will be working on the core product generating their “capital intensive”. Their core product is developing and optimising the maintenance of machinery and assets.
 
Coming on board to join a small team would mean you get to influence anyone and everyone as it is a very flat structure. You will also have the opportunity to be either full-stack, back-end focussed or pick up more DevOps skill-set.
 
Their current code base is a mixture of Java, Vue.js, Nuxt, Restful APIs, Elastic Search, AWS, Terraform, Ansible, PostgresSQL, Machine Learning and AI.
 
You will be involved in a new project that is upcoming whereby you start processing and analysing IoT data centres from machines and predict failures before they even happen.
 
The salary for this role can go up to £75k, and you will have to go into their London office.
 
Interested in finding out more? Please apply via (url removed) or add me on LinkedIn – Rebeka Mulk @ opus recruitment solutions to have an informal chat

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