Machine Learning Engineer

Oho Group Ltd.
London
1 week ago
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Machine Learning Engineer – London – Exciting Early-Stage Start-Up

Make sure to apply quickly in order to maximise your chances of being considered for an interview Read the complete job description below.Are you looking for your next Machine Learning Engineering role? Do you want to be a part of an exciting and hard-working team? This may be the position for you!This Machine Learning Engineer role is an early-stage position as the company is only beginning to scale this year. The founders have a very successful background with an incredible portfolio of previous projects. Working within a start-up company will provide you with the opportunity to create an impact on the potential direction of the business. You will be working alongside an incredible team who are motivated and very well-funded.The ideal candidate should want to be a part of a small and high performing team as well as have the capability to work well independently. You should be driven to design and build elite machine learning and computer vision software solutions.Ideally you should have:A solid academic background, preferably from a leading University with high grades in Computer Science or a STEM subject2+ years commercial experience as a Machine Learning EngineerMotivated about joining an early-stage start-upExcellent communication and collaboration abilitiesFamiliarity with modern frameworks and languages (e.g., React, Vue, Golang, iOS, Android) is a plus, but not requiredWhat you can expect:A competitive salaryEquity optionsFlexible, hybrid working environmentWorking alongside an amazing team

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