Principal Machine Learning Engineer

Unity TechnologiesBoston, MA
516d$217,400 - $217,400Remote

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About The Position

At Unity, our Inclusion is driven by one overarching framework: Empathy, Respect, and Opportunity. In a collaborative, fast-growing environment, we are solving hard problems and enabling the success of our community. In the Unity Ads Applied Research team, we envision and build systems that help creators capture the value they build! As a Principal Machine Learning Engineer, you will play a pivotal role in driving the overall Ads strategy for Unity's products and services. Your expertise in machine learning and data science will guide the application of machine learning solutions across the organization, ensuring that Unity remains at the forefront of innovation in the ad technology space. In this role, you will define and execute advanced machine learning models and algorithms to translate complex business problems into actionable insights. You will be at the forefront of the latest machine learning research, continuously improving Unity's Ad platform capabilities. Your responsibilities will include optimizing and innovating ML practices, forming and validating hypotheses on new modeling aspects, and analyzing the drivers for impactful machine learning. You will communicate data and machine learning capability needs to product and engineering teams, establishing yourself as the authority in Data for ML. Your leadership will drive the overall direction of the machine learning future for Ads, supporting Unity's strategic goals and vision. We are looking for a candidate who has successfully taken research and turned it into concrete product innovations with significant impact. You will be expected to leverage your expertise with modeling frameworks such as TensorFlow and PyTorch, and possess a deep understanding of model architectures and mechanisms. Your ability to explain machine learning concepts and interpret modeling efficacy will be crucial for further improvements in our systems.

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