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Staff Machine Learning Research Scientist, LLM Evals

principalSan Francisco, CA; Seattle, WA; New York, NYСкор undefined/1002нед назад
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Описание
As the leading data and evaluation partner for frontier AI companies, Scale is dedicated to advancing the evaluation and benchmarking of large language models (LLMs). We are building industry-leading LLM evals, setting new standards for model performance assessment. Our mission is to develop rigorous, scalable, and fair evaluation methodologies to drive the next generation of AI capabilities. Our Research teams work with the industry’s leading AI labs to provide high quality data and accelerate progress in GenAI research. As a Staff Machine Learning Research Scientist on the LLM Evals team, you will lead the development of novel evaluation methodologies, metrics, and benchmarks to measure the capabilities and limitations of frontier LLMs. You will help define what "good" looks like in generative AI, driving research that informs both our internal roadmap and the broader research community. This role is critical for designing and executing a roadmap that defines best practices in data driven AI development and will accelerate the next generation of generative AI models in partnership with top foundational model labs. You will: Drive research on the effectiveness and limitations of existing LLM evaluation techniques. Design and develop novel evaluation benchmarks for large language models, covering areas such as instruction following, factuality, robustness, and fairness. Communicate, collaborate, and build relationships with clients and peer teams to facilitate cross-functional projects. Collaborate with internal teams and external partners to refine metrics and create standardized evaluation protocols. Implement scalable and reproducible evaluation pipelines using modern ML frameworks. &
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