Posted 4h ago

Radar Intern

@ Rainmaker
Norman, Oklahoma, United States
OnsiteSeasonal
Responsibilities:Identify features, Prepare data, Evaluate models
Requirements Summary:Undergrad or graduate student in meteorology, atmospheric science, or related field; basic radar familiarity; machine learning/data science coursework; Python for data analysis.
Technical Tools Mentioned:Python, PyTorch, TensorFlow, Py-ART, MetPy, xarray
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Job Description

Position: Summer Research Intern: Weather & Machine Learning

Duration: 10–12 weeks

Level: Undergraduate or Graduate

Overview: We are seeking a motivated student with coursework in meteorology and hands-on experience with machine learning to join our research team for the summer. The intern will contribute to a project focused on using machine learning to better understand and track microscale features within winter weather systems using radar data.

Responsibilities

  • Work with radar datasets to identify and organize cases of microscale features
  • Assist in preparing and processing data for use in machine learning models
  • Help evaluate and visualize model results using Python-based tools
  • Contribute to team meetings and discussions about storm behavior and model performance
  • Document progress and assist in preparing summaries of findings
Qualifications
  • Currently enrolled in an undergraduate or graduate program in meteorology, atmospheric science, or a related field
  • Basic familiarity with radar products through coursework or experience
  • Prior coursework or project experience in machine learning or data science
  • Proficiency in Python for data analysis

Preferred

  • Coursework or experience in radar meteorology
  • Experience with or understanding of cloud seeding atmospheric effects
  • Familiarity with deep learning frameworks such as PyTorch or TensorFlow
  • Experience with data analysis tools such as Py-ART, MetPy, xarray, or similar
  • Prior research experience of any kind (REU, class projects, lab work)

What You Will Gain

  • Hands-on experience applying machine learning to real operational radar data
  • Mentorship from researchers across meteorology and data science
  • A meaningful research contribution suitable for graduate school applications
  • Collaborative work environment bridging atmospheric science and modern data science methods


Position: Summer Research Intern: Weather & Machine Learning

Duration: 10–12 weeks

Level: Undergraduate or Graduate

Overview: We are seeking a motivated student with coursework in meteorology and hands-on experience with machine learning to join our research team for the summer. The intern will contribute to a project focused on using machine learning to better understand and track microscale features within winter weather systems using radar data.

Responsibilities

  • Work with radar datasets to identify and organize cases of microscale features
  • Assist in preparing and processing data for use in machine learning models
  • Help evaluate and visualize model results using Python-based tools
  • Contribute to team meetings and discussions about storm behavior and model performance
  • Document progress and assist in preparing summaries of findings
Qualifications
  • Currently enrolled in an undergraduate or graduate program in meteorology, atmospheric science, or a related field
  • Basic familiarity with radar products through coursework or experience
  • Prior coursework or project experience in machine learning or data science
  • Proficiency in Python for data analysis

Preferred

  • Coursework or experience in radar meteorology
  • Experience with or understanding of cloud seeding atmospheric effects
  • Familiarity with deep learning frameworks such as PyTorch or TensorFlow
  • Experience with data analysis tools such as Py-ART, MetPy, xarray, or similar
  • Prior research experience of any kind (REU, class projects, lab work)

What You Will Gain

  • Hands-on experience applying machine learning to real operational radar data
  • Mentorship from researchers across meteorology and data science
  • A meaningful research contribution suitable for graduate school applications
  • Collaborative work environment bridging atmospheric science and modern data science methods


Position: Summer Research Intern: Weather & Machine Learning
Duration: 10–12 weeks
Level: Undergraduate or Graduate
Overview: We are seeking a motivated student with coursework in meteorology and hands-on experience with machine learning to join our research team for the summer. The intern will contribute to a project focused on using machine learning to better understand and track microscale features within winter weather systems using radar data.
Responsibilities
Work with radar datasets to identify and organize cases of microscale features
Assist in preparing and processing data for use in machine learning models
Help evaluate and visualize model results using Python-based tools
Contribute to team meetings and discussions about storm behavior and model performance
Document progress and assist in preparing summaries of findings
Qualifications
Currently enrolled in an undergraduate or graduate program in meteorology, atmospheric science, or a related field
Basic familiarity with radar products through coursework or experience
Prior coursework or project experience in machine learning or data science
Proficiency in Python for data analysis
Preferred
Coursework or experience in radar meteorology
Experience with or understanding of cloud seeding atmospheric effects
Familiarity with deep learning frameworks such as PyTorch or TensorFlow
Experience with data analysis tools such as Py-ART, MetPy, xarray, or similar
Prior research experience of any kind (REU, class projects, lab work)
What You Will Gain
Hands-on experience applying machine learning to real operational radar data
Mentorship from researchers across meteorology and data science
A meaningful research contribution suitable for graduate school applications
Collaborative work environment bridging atmospheric science and modern data science methods