The Hartford

Senior Machine Learning Engineer

The Hartford

full-time

Posted on:

Location Type: Hybrid

Location: Hartford • Connecticut, Illinois, North Carolina, Ohio • 🇺🇸 United States

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Salary

💰 $117,200 - $175,800 per year

Job Level

Senior

Tech Stack

AWSCloudDockerGoogle Cloud PlatformJenkinsKubernetesPythonTerraform

About the role

  • Research, experiment with, and implement suitable frameworks, tools, and technologies to enable AI/ML decision-making at scale.
  • Participate in identifying and assessing opportunities, such as the value of new data sources and analytical techniques, to ensure ongoing competitive advantage.
  • Review work with leadership and partners on an ongoing basis to calibrate deliverables against expectations.
  • Accountable for the ownership of design, development, and maintenance of MLOps and GenAI platforms and services.
  • Work with junior engineers and peers to provide mentorship and thought leadership.
  • Collaborate with partners Enterprise Data, Data Science, Business, Cloud Enablement Team, and Enterprise Architecture teams.
  • Delivery of critical milestones for model deployment in the Google Cloud Platform (GCP) and AWS cloud.
  • Develop, adopt, and promote MLOps best practices to the Data Science community.
  • Implement infrastructure-as-code using Terraform or CloudFormation to automate deployments.
  • Contribute to the development of agentic AI capabilities and support experimentation with LLMs and GenAI frameworks.

Requirements

  • Must be authorized to work in the U.S. now and in the future.
  • Bachelor's degree in related field and 5+ years of experience.
  • Solid understanding of ML lifecycle: model training, deployment, monitoring, and feedback loops.
  • Strong application development experience using Python.
  • 3+ years of hands-on experience developing with one of the public clouds including tools and techniques to auto scale systems.
  • Experience with CI/CD and IAC tools (e.g., terraform, Jenkins, GitHub Actions) and containerization (Docker, Kubernetes).
  • Good understanding of Generative AI technologies, frameworks, key LLMs, and architecture patterns.
  • Exposure to agentic AI architectures and prompt engineering.
  • Good understanding and experience building orchestration framework for real-time and batch model services.
  • Good understanding of various model development algorithms and types of ML use cases e.g., regression, classification, etc.
  • Strong fundamental knowledge of data structures and algorithms.
Benefits
  • Health insurance
  • 401(k)
  • Flexible work arrangements
  • Professional development opportunities
  • Bonuses

Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard skills
MLOpsGenAIPythonCI/CDinfrastructure-as-codeTerraformCloudFormationDockerKubernetesmachine learning lifecycle
Soft skills
mentorshipthought leadershipcollaborationcommunication
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