Upmc Presbyterian Shadyside Dietetic Internship Interview Questions

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Upmc Presbyterian Shadyside Dietetic Internship Interview Questions

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QuestionTopicDifficulty
Machine Learning
Medium

You’ve been tasked with building a classification machine-learning model to predict whether a transaction is either fraud or not fraud for a credit card company. You have ten years of historical data on transactions, including a flag for whether a transaction was manually identified as fraud.

Describe how you might go about building a fraud detection model for credit card transactions. Be sure to mention the possible model types, discuss the bias-variance tradeoff in model development, and address any complexities that arise from the class imbalance.

Input features in the data include:

  • Transaction amount
  • Merchant category for the transaction
  • Zip code for the merchant
  • Zip code for the billing address
  • Average transaction amount for the account over the past six months

Output feature:

  • 0/1 flag for fraud (0 = not fraud, 1 = fraud)

Note: Fraudulent transactions are (thankfully) a very small percentage of all historical transactions. Assume fraudulent transactions are 0.01% of historical data.While building the model to perform the classification, you need to consider the bias/variance tradeoff, and take into account the fact that there is a class imbalance (very few of the observations are “fraud”).

ML Ops
Medium
Machine Learning
Medium
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Upmc Presbyterian Shadyside Dietetic Internship Salaries by Position

$116K
$152K
Software Engineer
Median: $128K
Mean (Average): $131K
Data points: 16
$108K
$130K
ML Engineer
Median: $115K
Mean (Average): $117K
Data points: 4
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Data Engineer
Median: $88K
Mean (Average): $88K
Data points: 3
Product Analyst*
$69K
$88K
Product Analyst
Median: $79K
Mean (Average): $79K
Data points: 2

Most data science positions fall under different position titles depending on the actual role.

From the graph we can see that on average the Software Engineer role pays the most with a $130,856 base salary while the Product Analyst role on average pays the least with a $78,593 base salary.

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