Role Summary:
As a Senior MLOps Engineer at Filevine, you'll sit at the intersection of machine learning, platform infrastructure, and product velocity. You'll build and own the systems that make Filevine's AI capabilities faster to develop, safer to ship, and easier to trust, at scale.
You will be responsible for the full stack of ML infrastructure: evals, observability, model serving, annotation tooling, and the prompt platform that lets every team move with confidence.
### ResponsibilitiesSetup and maintain LLM observability frameworks/tools
Help improve data annotation tooling
Ensure stability of LLM calls (rate limits, provisioned throughput, backups, …)
Help to drive security review processes for AI vendors and providers
LLM cost optimization recommendations (caching, batching, identification of workflow parts causing high costs, etc.)
Hosting finetuned/open weight machine learning models
Helping with LLM evaluations (tooling/framework) with the current main focus on agentic evals
Platform tooling for enabling non-technical people (e.g. PMs) to iterate on prompts
5+ years building and operating software systems end-to-end
Hands-on experience with ML infrastructure: model serving, training pipelines, or LLM integrations in production
Strong understanding of cloud infrastructure and distributed systems (primarily AWS)
Familiarity with observability tooling and cost management for LLM workloads
Experience with or openness to: Python, Kubernetes, Terraform
Thrives in a remote-first, async environment: clear communicator, high ownership, low ego
Bonus: experience with eval frameworks, annotation tooling, or prompt management platforms
Other open roles at Filevine(6)
Filevine is a legal work platform trusted by law firms and legal teams to automate workflows, manage documents, and deliver better outcomes.
Key team members

Brandon Tidwell

Ian Koenig

Mario Hipol

Adam Stone
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