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Data Science Consulting Intern

Kalypso: A Rockwell Automation Business, is the Digital Consulting arm of professional services, dedicated to helping clients discover, create, make, and sell better products. We believe that innovation is the single most important factor for long-term growth and success.

The Kalypso Internship Program (KIP) is an 8–12-week summer internship, geared toward students who seek to jumpstart a career in digital transformation and innovation consulting. Data Science Consulting Interns will gain client-facing experience, assume leadership roles among their team, develop meaningful client deliverables, and contribute to internal initiatives and business development. Those who demonstrate an ability to succeed in this role will be automatically considered for a full-time position as an Analyst beginning in the Fall of 2026.

Your Responsibilities:

  • Develop data models for digital solutions in various industries (Manufacturing, High Tech, Life Sciences, Consumer Goods, Retail) covering themes like forecasting, risk analysis, customer behavior, timeseries, asset efficiency, predictive maintenance, multi-dimensional correlation, NLP/NLG, Vision AI, and model benchmarking.
  • Build scalable tools for processing large data volumes using on-prem, cloud, and hybrid technologies.
  • Design and implement machine learning and data management strategies.
  • Collaborate with clients, peers, and management to develop solutions.
  • Translate business requirements into technical solutions.

The Essentials - You Will Have:

  • A bachelor's degree or graduate degree in progress from an accredited college or university
  • A willingness to travel up to 50%
  • Legal authorization to work in the US. We will not sponsor individuals for employment visas, now or in the future.

The Preferred - You Might Also Have:

  • An expected graduation of Spring 2026 with a bachelor's degree or graduate degree in Statistics, Machine Learning, Mathematics, Computer Science, Economics, or any other related quantitative field
  • A 3.3 cumulative GPA or higher
  • Previous internship or part-time analytical work experience
  • Excellent written, verbal, and presentation skills
  • Ability to organize workstreams, adhere to project deadlines, and interface with clients
  • Proficiency with Machine Learning model development and various mathematical disciplines
  • Experience with R, Python, Scala, D3.js, Tableau, Kibana, HTML5, CSS, Java, .NET languages, ETL/ETLV, Graph/NoSQL, Oracle, and MS SQL Server, RESTful and SOAP Web Services

This is a remote position and can be located anywhere in the United States.

What We Offer our Interns:

  • Health Insurance including Medical, Dental and Vision
  • 401k
  • Flexible Work Schedule where you will work with your manager to enjoy a work schedule that can be flexible with your personal life.
  • To learn more about our benefits package, please visit at www.raquickfind.com.

We are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender, gender identity or expression, or veteran status. We are proud to be an equal opportunity workplace.

At Rockwell Automation we are dedicated to building a diverse, inclusive and authentic workplace, so if you're excited about this role but your experience doesn't align perfectly with every qualification in the job description, we encourage you to apply anyway. You may be just the right person for this or other roles.

#LI-Remote #LI-DNI

For this role, the Base Salary Compensation is from $35 - $45. Our benefits for the US can be found here. Actual pay will be based on factors such as skills, knowledge, education, and experience.

We are an Equal Opportunity Employer including disability and veterans.

If you are an individual with a disability and you need assistance or a reasonable accommodation during the application process, please contact our services team at +1 (844) 404-7247.