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Data & Machine Learning Researcher
San Diego, Canada · Tempo total
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- Salário
- —
- Vagas
- 1
- Publicado
- há 2 horas
- Modo de trabalho
- No escritório
- Educação
- PhD or equivalent
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Onde você trabalhará
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About the Role
In this position, you will operate at the crossroads of research and practical engineering, exploring how cutting-edge Machine Learning techniques—including large language models (LLMs), reinforcement learning, and structured prediction—can enable autonomous decision-making in critical, high-impact areas. You will lead the research strategy for one or multiple product features, develop experimental frameworks, and collaborate closely with engineering teams to deliver results.
Key Responsibilities
- Design and execute thorough experiments on candidate model structures and decision-making algorithms.
- Convert research discoveries into production-quality prototypes and collaborate with MLOps teams for deployment.
- Analyze, summarize, and replicate pertinent academic and industrial research works.
- Develop evaluation tools, create benchmarks, and define metrics that accurately represent customer outcomes.
- Produce internal research documentation and contribute to external publications as appropriate.
Required Qualifications
- PhD or equivalent professional experience in machine learning, statistics, or another quantitative discipline.
- A proven publication record or evidence of impactful applied research implementations.
- Proficiency in PyTorch or JAX, with comfort in distributed training environments.
- Strong foundation in software engineering, able to evolve prototypes from notebooks into scalable services.
- Excellent technical communication skills with a systematic approach to mitigate risks through preliminary experiments.
Preferred Skills
- Experience with autonomous decision-making systems, Bayesian inference, or causal inference techniques.
- Hands-on expertise in deploying LLM-driven agents or systems that utilize external tools.