Machine Learning Systems Engineer, Networking

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Posted today · via Workday

About this role

Join our team of innovative engineers who are building an AI Data Center AIOps platform that turns raw, high-volume telemetry into reliable, job-centric insights and automation for GPU fleets. As an ML Engineer on this team, you'll design and implement ML algorithms that run in real-time streaming pipelines, detecting anomalies and surfacing insights across massive-scale infrastructure before they impact AI training and inference. The core challenge of this role is building ML algorithms that are simultaneously accurate and efficient —processing millions of telemetry streams in real time within tight CPU and memory budgets. You'll need both the data science depth to design and validate algorithms and the engineering discipline to implement them in production at scale.…

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reqspace match rubric

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1

Skills match

For this role: python, go, rust, c++, scala…

2

Level fit

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3

Domain experience

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4

Recency

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5

Location fit

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Skills in this role

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pythongorustc++scalalinearteams

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