£55000.00 - £75000 per annum
about 2 months ago
Machine Learning Engineer - Core AI Team - Large Scale Modelling and Inference
Join this advanced AI platform which is providing disruptive tools for large scale modelling research and inference.
They are dedicated to establish a human-like machine perception system, aiming to achieve safe artificial general intelligence.
As a Machine Learning Engineer you will be responsible for translating business and functional requirements into concrete deliverables with the design, development, testing, and deployment of highly scalable distributed services.
You will also partner with scientists and other engineers to help invent, implement, and connect sophisticated algorithms to build the distributed services for machine learning
● Design and build large-scaled, distributed AI/ML Software Systems
● Investigate various distributed computing frameworks and toolkits, explore solutions for enabling grid computing and volunteer computing for machine learning
● Collaborate with scientists and engineers to optimize systems to improve latency, reliability and user-experience
Join a team who are leveraging the power of the leading edge machine learning research, technology, and big data.
Apply now and join this massively distributed platform where computing resources can be shared, allowing users access to exceptionally large scale networks to collaborate, train and develop deep learning models and build AI applications!
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