Senior Java Software Engineer

Westwood Recruitment
1 month ago
Applications closed

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Senior Java Engineer

Senior Java Engineer

Senior Java Engineer

Senior Java Engineer

Senior Java Engineer

Senior Java Engineer

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This range is provided by Westwood Recruitment. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

$150,000.00/yr - $170,000.00/yr

A key client of Westwood is on the lookout for a highly experienced Java Software Engineer to join a dynamic and innovative engineering team focusing on the development of state-of-the-art AI products.

This role is ideal for a candidate with deep expertise in java-based backend development, experience with architectural design, and distributed AI/ML systems.

You will be a key technical leader, with a vast range of responsibilities including designing, implementing, and optimizing high-performance AI-driven solutions.

Please note that whilst this is a fully remote position, you must have the right to work in Europe.

Responsibilities

  1. Lead the design and development of complex AI and ML powered applications using Java 11+ and modern frameworks.
  2. Architect and implement scalable and fault-tolerant AI services.
  3. Work closely with data scientists and ML engineers for integration purposes.
  4. Ensure your code is quality, secure, and maintainable.
  5. Collaborate with cross-functional teams.
  6. Mentor and guide mid-level engineers.
  7. Stay up-to-date with emerging technologies.

Requirements

  1. 10+ years of hands-on experience with Java.
  2. Experience with Spring Boot, Hibernate, and microservices.
  3. Proficiency in RESTful APIs, GraphQL, and message queues such as Kafka or RabbitMQ.
  4. Knowledge of multithreading, concurrency, and JVM optimization.
  5. Experience integrating machine learning models into production environments.
  6. Familiarity with big data technologies.

What is on offer

  1. Above-average market rate: $150,000 - $170,000 USD per annum + stock options.
  2. Laptop and necessary equipment ($300 budget).
  3. Flexible working hours (work when you want, from wherever you want, but stick to the hours).
  4. Work with a company at the forefront of the future of AI.

Please apply with an up-to-date version of your CV and a member of our recruitment team will be in touch.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Software Development

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