We’re hiring a Machine Learning Infrastructure Engineer to help build the backbone that trains, serves, and monitors the models behind our Ads and Recommendations products. You’ll join a small, high-ownership team that ships platform improvements end-to-end—partnering with product and data teams, reducing latency and cost, and shortening the path from an idea to a safely launched model. You’ll work across the ML lifecycle: making training faster and more reliable, improving model serving performance, and strengthening our feature/embedding platform so models stay fresh and consistent between offline and online use. We’re looking for someone who can take real ownership, finish what’s started, and raise the bar on stability and developer experience. Why this role Scope & impact: small team, big surface area—your work lands directly in production. Ownership: from design to rollout to post-launch learnings; real autonomy with support. Growth: visibility across the stack and a clear path to lead projects and mentor others. Pragmatic culture: we optimize for outcomes over buzzwords, and we value clear thinking, and follow-through. If you like building reliable systems that make ML teams move faster—and you enjoy turning complexity into simple, durable solutions—we’d love to talk.
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Job Type
Full-time
Career Level
Entry Level
Number of Employees
101-250 employees