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Data Science Intern
Location
United States
Posted
104 days ago
Salary
$32 - $45 / hour
Seniority
Entry Level
Job Description
Data Science Intern
Root Insurance Agency
• Apply statistical and machine learning techniques to solve quantitative problems in the insurance industry • Expand your skills with hands-on training and mentorship from seasoned data scientists • Improve upon quantitative solutions in Claims, Lifetime Value Estimation, or Marketing • Communicate insights from complex analyses to technical and non-technical audiences • Present findings to leaders and stakeholders, showcasing the value of your work • Demonstrate proficiency in data science fundamentals by the end of the program, with the potential to transition into a full-time Data Scientist role
Job Requirements
- Currently pursuing a Master’s or PhD in quantitative field
- Demonstrable knowledge of statistical modeling, machine learning, and probability theory
- Proficiency in programming with R or Python, including experience in model fitting
- Strong communicator and storyteller with strong data visualization skills
- End-to-end ownership mentality with a high level of attention to detail
- Must be able to work in the US (No OPT/CPT)
Benefits
- Work where it works best
- Hands-on training
- Mentorship from seasoned data scientists
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