Rust-Oleum

Machine Learning Co-Op

JOB DESCRIPTION



Co-Op Student - Machine Learning & Applied AI




Location: Hybrid - Minimum 3 days per week on-site (Vernon Hills, IL)

Duration: Co-Op Term (6-8 months)

Department: Automation & Emerging Technology

Reports To: Emerging Technologies Leader

Candidate Level: Bachelor's, Master's, or PhD-track students



Position Overview



We are seeking a highly motivated Machine Learning & Applied AI Co-Op Student to join our Automation & Emerging Technology team.

This role is ideal for students who want hands-on ownership of real-world machine learning experiments in a fast-moving, startup-like environment within a large enterprise.


The co-op will focus on applied machine learning, data-driven experimentation, and model evaluation, with opportunities to explore Generative AI and large language models where they meaningfully support ML-driven use cases.

Rather than production maintenance or traditional automation work, this role emphasizes problem framing, experimentation, and measurable impact.


This position follows a hybrid work model, with a minimum of three (3) days per week on-site at our Vernon Hills, IL office.



Key Responsibilities



  • Lead machine learning experiments end-to-end, including:

    • Problem definition and hypothesis development

    • Data exploration and feature engineering

    • Model prototyping, training, and evaluation

    • Iteration based on quantitative results

  • Develop and evaluate ML models using enterprise datasets for use cases such as:

    • Prediction and classification

    • Pattern detection and insight generation

    • Decision support and optimization

  • Apply sound experimental design and evaluation techniques, including:

    • Train/validation/test strategies

    • Baseline comparisons

    • Error analysis and model diagnostics

  • Use Databricks for data analysis, experimentation, and scalable ML workflows

  • Define and track success metrics, such as:

    • Model accuracy, precision/recall, and robustness

    • Latency, scalability, and cost considerations

    • Business relevance and usability

  • Explore applied AI techniques, including Generative AI and LLMs, where appropriate (e.g., summarization, knowledge retrieval, or hybrid ML + LLM solutions)

  • Document experiments, assumptions, results, and technical tradeoffs; present findings and demos to technical and business stakeholders

  • Apply Responsible AI and data governance practices, including data privacy, security, and bias awareness

Required Qualifications



  • Currently enrolled in a Bachelor's, Master's, or PhD-track program in Computer Science, Data Science, Machine Learning, Statistics, or a related field

  • Ability to work on-site in Vernon Hills, IL at least three days per week

  • Strong proficiency in Python

  • Solid understanding of core machine learning concepts, such as:

    • Supervised and unsupervised learning

    • Feature engineering

    • Model evaluation and validation

  • Experience with common ML/data libraries (e.g., pandas, NumPy, scikit-learn, or similar)

  • Experience with AI Tools like Copilot, Copilot GitHub etc.

  • Ability to work independently, take initiative, and operate effectively in ambiguous problem spaces

  • Strong analytical thinking and communication skills

Preferred Qualifications



  • Hands-on experience with end-to-end ML projects, including experimentation and evaluation

  • Familiarity with Databricks or similar data/ML platforms

  • Exposure to cloud-based ML workflows (Azure preferred)

  • Experience with deep learning or NLP frameworks (e.g., PyTorch, TensorFlow, Hugging Face)

  • Working knowledge of Generative AI or LLMs as an applied technique (not required)

  • Prior internship, research, or applied ML project experience with measurable outcomes

What You'll Gain



  • Ownership of real machine learning experiments with direct business visibility

  • Experience working in a startup-like, experiment-driven environment inside a large enterprise

  • Hands-on exposure to enterprise-scale data and ML workflows using Databricks and Microsoft platforms

  • Mentorship from experienced AI and Emerging Technology leaders

  • Strong preparation for full-time roles in Machine Learning Engineering, Applied Data Science, or AI Engineering


Salary Target Range: $28/hr-$30/hr


Rust-Oleum is an equal opportunity employer.

Employment selection and related decisions are made without regard to sex, race, age, disability, religion, national origin, color, or any other protected class.


#LI-DNI
Apply for this ad Online!




Share Job