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Analyzing the data set which consists of medical appointments to draw insights about patient's no-show scenarios

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VyjayanthiPolapragada/Data_Analytics_Medical_Appointments

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Used data analytics and visualization to draw valuable insights for the patients no-show scenarios

A medical appointments data set is used, which consists of patient's details (nearly 100k) and their presence based on the schedule

Data set can be downloaded here: https://www.kaggle.com/datasets/marwandiab/medical-appointment-no-shows-dataset

Libraries used: numpy, pandas, seaborn, matplolib (all are in-built with jupyter notebook)

Analysed the dataset to estimate the factors that affect patients to miss their appointment. Following factors/columns are considered:

  1. gender
  2. age
  3. time difference between schedule and appointment
  4. sms sent/not sent
  5. scholarship
  6. neighbourhood

Processes involved:

  1. Data wrangling
  2. Data cleaning
  3. Data analysis

While many conclusions were drawn from the above factors, yet data can be improved detailed to enhance detailed analytics.

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Analyzing the data set which consists of medical appointments to draw insights about patient's no-show scenarios

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