Machine Learning Engineer

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EagleView

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Job Summary


Job Type
-

Seniority

Years of Experience
Information not provided

Tech Stacks
Python Kubernetes EC2 IAM CI AWS Amazon S3

Job Description

The ideal candidate will be responsible for maintaining product and industry knowledge. You will work in a team-oriented environment that accelerates operational efficiency.


Responsibilities

  • Design, build, deploy, and maintain production-grade ML pipelines and workflows using AWS and Python, with a focus on reliability, scalability, and observability.
  • Own and enhance the MLOps platform that automates the full ML model lifecycle—from data annotation and training to inference, monitoring, and feedback loops.
  • Collaborate closely with Data Scientists to productionize models, including packaging, versioning, deployment strategies, and performance optimization.
  • Contribute to Agentic AI initiatives, including evaluation and deployment of MCP servers and related infrastructure components.
  • Implement monitoring, logging, alerting, and CI/CD best practices for ML systems to ensure production stability and rapid issue resolution.
  • Troubleshoot complex pipeline, infrastructure, and inference issues, performing root cause analysis and driving long-term fixes.
  • Stay current with evolving MLOps practices, cloud-native ML tooling, and emerging AI infrastructure trends, and proactively introduce improvements.
  • Participate in design reviews, technical discussions, and planning meetings; clearly communicate progress, risks, and trade-offs to stakeholders.
  • Mentor interns and junior engineers by providing technical guidance, code reviews, and best practices.


Qualifications


  • 3–6 years of hands-on experience building and operating ML or data platforms, with a strong focus on MLOps or ML infrastructure.
  • Strong practical experience with AWS services such as Sagemaker, S3, EC2, Batch, Lambda, IAM, and monitoring tools.
  • Proficiency in Python for building ML pipelines, automation, and infrastructure tooling.
  • Solid understanding of the ML lifecycle, including training, evaluation, deployment, inference, and model monitoring.
  • Experience with containerization (Docker) and familiarity with orchestration frameworks (e.g., Kubernetes or managed equivalents).
  • Strong problem-solving skills and the ability to independently drive tasks in a fast-paced, evolving environment.
  • Effective communication skills and experience collaborating across Data Science and Engineering teams.

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