# Calculate volatility AAPL_volatility <- volatility(AAPL_returns)
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Here is some sample R code to get you started: We also provide a comprehensive guide to getting
# Calculate returns AAPL_returns <- dailyReturn(AAPL) This paper provides a comprehensive guide to getting
# Print results print(AAPL_volatility) This code loads the necessary libraries, retrieves Apple stock data, visualizes the data, calculates returns and volatility, and prints the results.
# Get financial data getSymbols("AAPL")
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