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Allstate logo
Allstate

National General Insurance, a division of Allstate, describes itself as one of the largest insurers in the United States. The company provides personal and commercial auto, recreat

Applied Machine Learning Engineer, All Levels

Location

Illinois

Posted

91 days ago

Salary

$110K - $181.0K / year

Seniority

Senior

Job Description

Applied Machine Learning Engineer, All Levels

Allstate

• Design, build, and operate machine-learning models. • Work across the full ML lifecycle, including data exploration, feature engineering, and model building. • Emphasize pair programming and test-driven development.

Job Requirements

  • Education: Bachelor’s degree (STEM preferred).
  • Entry-Level: 0–2 years (academic, internship, or professional).
  • Mid-Level: 3+ years building ML solutions.
  • Senior-Level: 3+ years deploying and operating ML systems.
  • Technical Skills: Python (pandas, numpy, scikit-learn), SQL.
  • Knowledge of model evaluation and interpretability.
  • Willingness to learn Terraform, Java, and Typescript.
  • Strong communication and collaboration abilities.
  • Leadership and mentoring experience for senior roles.

Benefits

  • Joining our team isn’t just a job — it’s an opportunity.
  • Opportunities to challenge the status quo.
  • Shape the future of protection while supporting causes.

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