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Senior MLOps Engineer - Analytics & AI - R&D - Engineering

LinkedIn athenahealth Boston, MA
Not Applicable Posted April 5, 2026 Job link
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Requirements
  • Are an enthusiastic self-starter with a commitment to learning.
  • 5+ years of combined experience in Software/Data Engineering, MLOps, DevOps, or SRE teams.
  • Strong hands-on experience in Kubernetes designing, creating, deploying, and maintaining enterprise-class ML models and services.
  • Hands-on experience with any of the following technologies:  Spark; Istio/service mesh architecture; cloud security; Terraform
  • Demonstrated experience programming in Python.
  • Hands-on experience with developing microservices in a Public Cloud environment such as Amazon’s AWS Services, Azure, or GCP.
  • Experience deploying and maintaining Linux-based, highly scalable, and fault-tolerant enterprise-class software platforms.
  • Experience engineering, deploying, and hosting services in Azure AI Foundry or Amazon Bedrock
  • Familiarity with common monitoring, log aggregation and metrics gathering platforms such as Grafana, Prometheus, and CloudWatch.
  • Experience integrating with and hosting services such as LiteLLM, LangSmith, Arize, Braintrust
  • Engineering experience with databases such as Snowflake, Postgres, MySQL, Redis, DynamoDB, etc.
  • Familiarity with common configuration management & orchestration tools such as Jenkins, Puppet/Bottlerocket, and Chef.
  • Experience in Data Science or working with Data Scientists and AI Engineers as stakeholders.
  • Experience with model training pipelines using Kubeflow.
Preferred Skills
  • Hands-on experience with any of the following technologies:  Spark; Istio/service mesh architecture; cloud security; Terraform
  • Experience engineering, deploying, and hosting services in Azure AI Foundry or Amazon Bedrock
  • Familiarity with common monitoring, log aggregation and metrics gathering platforms such as Grafana, Prometheus, and CloudWatch.
  • Experience integrating with and hosting services such as LiteLLM, LangSmith, Arize, Braintrust
  • Familiarity with common configuration management & orchestration tools such as Jenkins, Puppet/Bottlerocket, and Chef.
  • Experience in Data Science or working with Data Scientists and AI Engineers as stakeholders.
  • Experience with model training pipelines using Kubeflow.
Education
  • (Not required) – A bachelor’s degree in Computer Science or equivalent.