OCLC

Data Science Intern

OCLC

internship

Posted on:

Location Type: Hybrid

Location: DublinOhioUnited States

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Job Level

About the role

  • Evaluating huge sets of data to find patterns, model behaviors and elevate visibility.
  • This data includes billions of pieces of bibliographic metadata, application metrics, and transaction histories.
  • Supervised and unsupervised machine learning model development.
  • Support the visualization and presentation of results that come from data analysis and model creation.
  • Partnering closely with our Data Engineering teams to ensure quality data pipelines are built to make data available for data science use.

Requirements

  • Candidates must be currently enrolled as students at the time of the internship.
  • Experience coding in Python and Pyspark
  • Familiarity and comfort working with cloud ML solutions
  • Familiarity with any data visualization platform, such as Tableau or PowerBI
  • Experience writing SQL queries against relational databases
  • Academic training in statistical methods such as t-tests and linear regression
  • Comfort working with unstructured and semi-structured data in Spark
  • Knowledge of bibliographic data structures or library systems a huge plus
  • Self-confidence and ability to work without day-to-day instruction.
Benefits
  • Free use of our on-site fitness center, gym sports, group exercise classes, and game room
  • Onsite catering and cafeteria subsidized by OCLC
  • Health and wellness events
  • Paid parental leave and adoption assistance
  • Tuition reimbursement and Public Service Loan Forgiveness eligibility
  • Company-subsidized pricing on local tickets and memberships
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
PythonPysparkSQLstatistical methodst-testslinear regressionmachine learningdata visualizationunstructured datasemi-structured data
Soft Skills
self-confidenceability to work independently