Staff Machine Learning Engineer

TieTalent
London
11 months ago
Applications closed

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Staff Machine Learning Engineer - Leading Entertainment Organization

Applying for this role is straight forward Scroll down and click on Apply to be considered for this position.We have been a long-term partner of a renowned household name within the Interactive Entertainment space. This company is seeking to hire a Staff Machine Learning Engineer to drive the technical capabilities of their team.Key Responsibilities:

Design, develop, and deploy various machine learning and AI-based models.Work on a wide range of business problems to implement state-of-the-art AI systems such as large language models, generative AI, computer vision, etc.Mentor and guide junior machine learning engineers.Stay up-to-date with the latest advancements in machine learning and AI.Collaborate with cross-functional teams to implement complex ML/AI products and communicate effectively with senior leadership.Requirements:

An advanced degree in a relevant STEM field.Strong skills in programming languages like Python, TensorFlow, PyTorch, etc.A proven track record of delivering large-scale machine learning products.Expertise in various machine learning and AI techniques, specifically across large language models, computer vision, and audio.Excellent communication skills.A background working in well-known tech companies (Meta, Google, etc.).

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