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Machine Learning Engineer II

Machine Learning EngineerMachine Learning EngineerOtherRemoteSeniorTeam 10,001+Since 1962H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

87 days ago

Salary

0

Seniority

Senior

Job Description

Machine Learning Engineer II

Kohl's

• Support cross-functional teams in designing and implementing machine learning-based solutions • Contribute to Machine Learning Engineering (MLE) internal tools and best practices • Work with Engineers to integrate Data Science models into customer-facing solutions • Support model development through Google Cloud Platform (GCP) service enablement and configuration • Contribute to the roadmap for Data Science and MLE team tools and technology development • Design and implement monitoring and alerting systems to maintain model performance and integrity • Mentor and guide junior machine learning engineers, providing technical expertise and fostering a culture of continuous learning and development • Optimize and fine-tune models to achieve peak performance and accuracy within resource constraints

Job Requirements

  • Bachelor’s degree in Data Science, Computer Science, Statistics, Applied Mathematics or equivalent quantitative field
  • 3+ years of progressively complex Data Science or analytics experience
  • 3+ years of experience as a Machine Learning Engineer with a proven track record of successful project delivery
  • In-depth knowledge of Google Cloud Platform services, particularly Vertex AI, BigQuery and Dataproc
  • Extensive expertise with CI/CD and IaC best practices
  • Extensive knowledge of distributed computing and big data technologies like Spark, Kubeflow, Airflow and SQL
  • Extensive expertise in Python and machine learning libraries (e.g., TensorFlow, PyTorch, scikit-learn)
  • Experience with Agile/XP software development
  • Experience with OGSM approach; strategy development, and execution

Benefits

  • Health insurance
  • Retirement plans
  • Paid time off
  • Flexible work hours
  • Professional development opportunities

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