Java Developer

Manchester
11 months ago
Applications closed

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Java Developer

📍 Location: Manchester City Centre (Hybrid)

We are hiring for a Java Developer for a leading technology company specialising in TV advertising platforms. Their innovative solutions, help businesses research, plan, measure, and optimise TV campaigns. With large bespoke projects and high-profile clients, they are at the forefront of data-driven advertising.

The Role

The successful Java Developer will join a technical team working on core products and bespoke solutions. The role will focus on:

Machine Learning & Big Data applications
Performance-oriented software development
Working with a tech stack that includes Java, Spring, AWS, Linux, Apache, Wildfly, and Vue.js
Implementing statistical models, including Bayes Theorem

Skills & Experience

âś… Strong Java development experience
âś… Familiarity with Spring Framework
âś… Knowledge of AWS and cloud-based technologies
âś… Experience with Linux-based environments
âś… Exposure to big data, statistics, or machine learning is a plus
âś… Some front-end experience with Vue.js would be beneficial

Benefits

Competitive salary
Work on cutting-edge projects in TV analytics
Hybrid working setup in Manchester
Collaborative and innovative team environmentIf you're a Java Developer who enjoys working on complex, data-driven applications, Click Apply Now

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