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Full-Stack Product Engineer

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Full-Stack Product EngineerTransluce is a fast-paced AI start-up building the public tech stack for understanding and debugging AI systems. We build world-class, AI-backed analysis tools and use these to set industry standards for evaluation. We are a non-profit with a mission to steer the development of AI for the public good.About the RoleWe're looking for an exceptional product engineer to lead the design and development of our flagship products. You will have a central seat at the table and work directly with leading experts in AI to shape the future of human-in-the-loop model understanding. As a mission-focused non-profit, you'll also contribute to software with high direct impact (used by governments to inform AI policy) and cross-organizational reach (our stakeholders lie across frontier labs, academia, and startups).Core ResponsibilitiesDesign and build intuitive frontend interfaces for model understanding, such as:Docent, for analyzing long agent transcriptsMonitor, for understanding internal model activationsImplement scalable backend systems to power those interfacesCreate APIs, SDKs, and protocols that interface between our products and external librariesEngage continuously with customers to gather requirements and feedbackMaintain open source repositories and actively engage with the developer communityQualities of a Strong CandidateExcels in rapid cycles of design, implementation, testing, and iterationHas strong design taste and a sharp attention to detailWrites well-designed code that enables team-wide collaborationIs proficient with our current stack: Python, Typescript, Next.js, AWS, serverless container runtimesHas experience engaging with customers and stakeholdersBonus: practical experience with language models (e.g., building apps on top of LLM APIs) and familiarity with fundamental ML concepts (e.g., ability to critically assess claims about model performance)