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DATA JOBS FOR HUMANITIES

What Will I Get Out of This Course?

This course introduces the concept of a Minimum Viable Product, laying out the path for a minimum set of essential skills for humanities students to be ready to apply for data jobs.

 

Additionally, the course will discuss unique advantages humanities students have that can help them succeed in applying to data jobs.

 

With the skills covered in this course under your belt, you'll be able to competitively apply for entry-level jobs in data science and other fields.

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HUMANITIES GRADUATES

Who is this For?

This course is for people who have a background in non-STEM fields who are interested in data jobs. The focus is on people with graduate experience but that's not essential.

This course is probably not a good fit for you if you have a background in computer science, statistics, machine learning or quantitative scientific fields.

If you're interested in a career that uses quantitative data to solve problems this is the place for you. If you're looking to become a deep learning researcher you'll probably want to start elsewhere!

Course Topics

Pricing

  • Student Access

    25$
     
    Lifetime Access to Course for Single Student
     
    • MVP Skills on Statistical Analysis and Machine Learning
    • Write and Execute Python Code
    • Regular Live Q&A
  • University Monthly

    250$
    Every month
    Full Access for Unlimited Students at Your School
     
    • MVP Skills on Statistical Analysis and Machine Learning
    • Write and Execute Python Code
    • Regular Live Q&A
  • Best Value for Students

    University Yearly (Save 40%)

    1,800$
    Every year
    Full Access for Unlimited Students as Your School
     
    • MVP Skills on Statistical Analysis and Machine Learning
    • Write and Execute Python Code
    • Regular Live Q&A

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