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Machine Learning Engineer

Job

Compunnel, Inc.

Aliso Viejo, CA (In Person)

Full-Time

Posted 2 days ago (Updated 1 day ago) • Actively hiring

Expires 6/28/2026

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Job Description

JOB SUMMARY
The ML Engineer II will design and develop ML models that deliver accurate results to solve identified business problems using state-of-the-art techniques, under the guidance of Senior ML Engineers. This role involves collaborating with cross-functional teams to build valuable ML solutions for products. Key Responsibilities
  • Work with cross-functional teams (business, technology, product) to understand product vision and build ML solutions that bring value to the product.
  • Execute data wrangling activities to create viable datasets for ML problems.
  • Conduct ML experiments to assess feasibility and build baseline models.
  • Fine-tune baseline models for optimum performance.
  • Test models internally against business acceptance criteria.
  • Identify areas and techniques for model optimization based on test results.
  • Document relevant artifacts for business communication.
  • Collaborate with data scientists on model deployment.
  • Work with product teams in planning and execution of new product releases.
  • Set OKRs and success steps, and provide feedback on goals for team members. Required Qualifications
  • Ability to design and develop ML models to solve business problems using state-of-the-art techniques under guidance.
  • Experience working with cross-functional teams including business, technology, and product.
  • Proficiency in data wrangling activities to create viable datasets.
  • Experience conducting ML experiments to understand feasibility and build baseline models.
  • Experience fine-tuning models for optimum performance.
  • Experience testing models internally per acceptance criteria.
  • Ability to identify areas and techniques for model optimization.
  • Experience documenting relevant artifacts for business communication.
  • Experience collaborating with data scientists for model deployment.
  • Experience working with product teams in planning and execution.
  • Experience setting OKRs and success steps, and providing feedback on team goals.