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MLOps (Machine Learning Operations) Engineer Jobs in USA, IL, Chicago | Rose International Job

Job

Rose International

Chicago, IL (In Person)

Full-Time

Posted 2 days ago (Updated 5 hours ago) • Actively hiring

Expires 7/4/2026

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Job Description

Education Requirements
  • Bachelor's degree or Master's degreeRequired Skills for the MLOps Engineer
  • Bachelor's plus 5+ years of experience, Master's plus 3+ years of experience
  • Experience working with an object-oriented programming language (Python, Golang, Java, C/C++ etc.
  • Experience with MLOps frameworks like MLflow, Kubeflow, etc
  • Proficiency in programming (Python, R, SQL
  • Ability to design and implement cloud solutions and build MLOps pipelines on cloud solutions (e.g., AWS
  • Strong understanding of DevOps principles and practices, CI/CD, etc. and tools (Git, GitHub, jFrog Artifactory, Azure DevOps, etc.
  • Experience with containerization technologies like Docker and Kubernetes
  • Strong communication and collaboration skills
  • Ability to help work with a team to create User Stories and Tasks out of higher-level requirementsPreferred Skills
  • Ability to create model inference systems with advanced deployment methods that integrate with other MLOps components like MLFlow
  • Knowledge of inference systems like Seldon, Kubeflow, etc
  • Knowledge of deploying applications and systems in Langfuse or Kubernetes using Helm and Helmfile
  • Knowledge of infrastructure orchestration using CloudFormation or Terraform
  • Exposure to observability tools (such as Evidently AI)
MLOps Engineer Overview:
The MLOps Platform Team works within the Enterprise Data and Analytics Organization driving the ability to work with Internal Teams to be able to support the full life-cycle of AI and machine learning development through to beyond production. Helping build a platform that enables data driven decisions across the enterprise, helping teams build high-value data and AI/ML products, and enable the operationalization and reliability of all models. We are searching for a driven and highly skilled MLOps Engineer to join our MLOps Platform team at ServiceNow. The role will build the MLOps Platform, build self-service ML Development tooling, and building platform adoption. Responsibilities
  • Define scalable and secure architectures, frameworks and pipelines for building, deploying and diagnosing production ML applications
  • Enable users & teams on the ML platform; troubleshoot and debug user issues; maintain user-friendly documentation and training
  • Collaborate with internal stakeholders to build a comprehensive MLOps Platform
  • Design and implement cloud solutions and build MLOps pipelines on cloud solutions (e.g., AWS
  • Develop standards and examples to accelerate the productivity of data science teams
  • Run code refactoring and optimization, containerization, deployment, versioning, and monitoring of its quality, including data & concept drift
  • Create way to automate the testing, validation, and deployment of data science models
  • Provide best practices and execute POC for automated and efficient MLOps at scale