Artificial Intelligence and Machine Learning Graduate

AVEVA
Cambridge
3 months ago
Applications closed

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AVEVA is creating software trusted by over 90% of leading industrial companies.

AVEVA’s Early Careers Recruitment team are actively searching for AI & Machine Learning Graduates to join our thriving program which starts in September 2026.

Location: Cambridge, Hybrid (3 days a week in office)

R&D at AVEVA:

Our global team of 2000+ developers work on an incredibly diverse portfolio of over 75 industrial automation and engineering products, which cover everything from data management to 3D design. AI and cloud are at the center of our strategy, and we have over 150 patents to our name. Our track record of innovation is no fluke – it’s the result of a structured and deliberate focus on learning, collaboration, and inclusivity. If you want to build applications that solve big problems and do impactful work, join us!

As part of our global AI development group, you’ll collaborate with a team of skilled software engineers in designing and implementing AI capabilities and solutions into our product suite. The work will include managing training data, building, deploying, monitoring & testing the AI/Analytics services/capabilities. You will have the opportunity to work in a niche segment with the latest technologies to ensure that we build and bring meaningful AI/Analytics capabilities to the market.

Key responsibilities

In collaboration with the team design, develop, implement & test innovative and intuitive AI capabilities into our AVEVA solutions. Collaborate with stakeholders be it architects, domain experts and engineers from other product teams to infuse AI capabilities into their products. You may also work on products which could be a mix of on-prem, SaaS, desktop based or web/mobile app Delivering a performant and secure product/service will require you to evaluate the updates made and their impact on the base architecture and design.

Desired Skills/Knowledge

Prior internship or experience in software development including version control would be great Good understanding of Machine Learning concepts (training, cleaning, data bias, class imbalance etc) Basic understanding and hands-on experience in object-oriented programming principles (e.g. C#, C++, Java, Python) Statistics and/or Linear Algebra Computer Vision concepts Python/Jupyter Notebooks Common ML packages (Scikit-Learn, Keras, TensorFlow etc.

Great skills to have

Organization: The pace at AVEVA can be exciting and fast, so whilst you will need excellent time management and effective prioritisation, we will do all we can to support a balanced portfolio of work, and your wellbeing. Quality Software: You are passionate about delivering software that is reliable, performant and scales well. Problem-solving: You’ll need to enjoy figuring how to get out of sticky problems, as troubleshooting and solving challenging problems is a big part of this role.

The team you’ll join

“Our’s is a small niche team, but spread out geographically across the globe, working on addressing some of the unsolved problems of our customers using AI/ML. We have some of the most brilliant people who have a varied experience and skillsets. More importantly, it’s fun to work in this team.”

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