Machine Learning Engineer

Epic Games
London
1 month ago
Applications closed

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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

WHAT MAKES US EPIC? At the core of Epic’s success are talented, passionate people. Epic prides itself on creating a collaborative, welcoming, and creative environment. Whether it’s building award-winning games or crafting engine technology that enables others to make visually stunning interactive experiences, we’re always innovating.

Is this the role you are looking for If so read on for more details, and make sure to apply today.Being Epic means being a part of a team that continually strives to do right by our community and users. We’re constantly innovating to raise the bar of engine and game development.ENGINEERING - GAMES What We Do

Unreal projects have been leading the pack of real-time entertainment with our constantly growing team of engineering experts. We’re always improving on the tools and technology that empower content developers worldwide.What You'll Do

You will work with our team of engineers at the intersection of vision, language and machine learning to create state-of-the-art models to support users developing games in our creator ecosystem. You will be responsible for the design, implementation and deployment of production-ready machine learning models that can be integrated in the Unreal Engine (UE), with applications including learned bots, believable bots, QA bots, etc.In this role, you will

Create and deliver production-ready, scalable and high-quality machine learning models and associated algorithms for UE.Critically assess the effectiveness of such models and make recommendations for the ongoing roadmap.Methodically understand and assess the effectiveness of new data channels and support collection/creation of new ones.What we're looking for

PhD in Computer Science, Mathematics or related field, or 3+ years of relevant industry experience.Experience creating innovative algorithms for problems using Reinforcement Learning and deploying them as production-level systems.Experience with working collaboratively with other developers, following a flexible/agile/lean approach.Expert, hands-on knowledge of:

Reinforcement Learning, ideally applied to gaming.Unreal Engine.Deep learning techniques for supervised, semi-supervised and unsupervised learning.Python and associated ML tools/frameworks (numpy, scipy, sklearn, pytorch).

EPIC JOB + EPIC BENEFITS = EPIC LIFE We pay 100% for benefits except for PMI (for dependents). Our current benefits package includes pension, private medical insurance, health care cash plan, dental insurance, disability and life insurance, critical illness, cycle to work scheme, flu shots, health checks, and meals. We also offer a robust mental well-being program through Modern Health, which provides free therapy and coaching for employees & dependents.ABOUT US Epic Games spans across 25 countries with 46 studios and 4,500+ employees globally. For over 25 years, we've been making award-winning games and engine technology that empowers others to make visually stunning games and 3D content that bring environments to life like never before. Epic's award-winning Unreal Engine technology not only provides game developers the ability to build high-fidelity, interactive experiences for PC, console, mobile, and VR, it is also a tool being embraced by content creators across a variety of industries such as media and entertainment, automotive, and architectural design. As we continue to build our Engine technology and develop remarkable games, we strive to build teams of world-class talent.Like what you hear? Come be a part of something Epic!

Epic Games deeply values diverse teams and an inclusive work culture, and we are proud to be an Equal Opportunity employer. Learn more about our Equal Employment Opportunity (EEO) Policy here.

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