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Part-Time Student - Data Science & Analytics - Ames, IA, Champaign, IL or Austin, TX

As a Part-Time Student - Data Science and Analytics for JD Intelligent Solutions Group (ISG) located in Ames, IA, Champaign, IL or Austin, TX, you will...

 

  • Utilize analytics techniques to clean, preprocess, explore, and analyze data sets and extract actionable insights for advanced automation & sensing projects.
  • Collaborate in a fun, friendly, and fast-paced team environment across disciplines and with key stakeholders to deliver data-driven solutions for the business
  • Present your findings in meetings and translate your results into reports and presentations

 

This position is not available to students on immigration visas.

What Skills You Need

 

 

  • Must be registered as a full-time student at a U.S. accredited college/university.
  • Graduation date of Spring 2027 or later
  • Cumulative GPA of 2.8 or above  
  • Working knowledge of Python and other programming languages with generally high technical capability.
  • School and/or work experience analyzing text and/or numerical data and building models.
  • Good knowledge of one or more of the following: machine learning, Bayesian statistics, AI, signal processing, optimization, operations research, applied statistical analysis, algorithmic modeling techniques.
  • Experience with complex data visualization methods
  • Pursuing a Bachelor’s, Master’s, or PhD Degree in Agriculture, Computer Science, Data Analytics, Data Science, Engineering, Math, operations research, or Statistics; others may apply.

What Makes You Stand Out

 

 

  • Knowledge of transformers, CNNs, Large Language Models (LLMs)
  • Knowledge of sensing technologies/hardware/IoT
  • Domain knowledge in Crop Science, Agricultural Machinery, Soil Science, or GIS
  • Knowledge of Pytorch, Databricks, ArcGIS, Git, Jupyter Notebooks, SQL
  • Understanding of common machine learning algorithms and how to build predictive model