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Learning NumPy Array

You're reading from   Learning NumPy Array Supercharge your scientific Python computations by understanding how to use the NumPy library effectively

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Product type Paperback
Published in Jun 2014
Publisher
ISBN-13 9781783983902
Length 164 pages
Edition Edition
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Author (1):
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Ivan Idris Ivan Idris
Author Profile Icon Ivan Idris
Ivan Idris
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Table of Contents (14) Chapters Close

Learning NumPy Array
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
1. Getting Started with NumPy FREE CHAPTER 2. NumPy Basics 3. Basic Data Analysis with NumPy 4. Simple Predictive Analytics with NumPy 5. Signal Processing Techniques 6. Profiling, Debugging, and Testing 7. The Scientific Python Ecosystem Index

Correlating weather and stocks with pandas


We will try to correlate stock market data for the Netherlands with the DataFrame we produced last time from the KNMI De Bilt weather data. As a proxy for the stock market, we will use closing prices of the EWN ETF. This might not be the best choice, by the way, so if you have a better idea, please use the appropriate stock ticker. The steps for this exercise are provided as follows:

  1. Download the EWN data from Yahoo Finance, with a special function. The code is as follows:

    #EWN start Mar 22, 1996
    start = dt(1996, 3, 22)
    end = dt(2013, 5, 4)
    
    symbol = "EWN"
    quotes = finance.quotes_historical_yahoo(symbol, start, end, asobject=True)
  2. Create a DataFrame object with the available dates in the downloaded data:

    df2 = pd.DataFrame(quotes.close, index=dt_idx, columns=[symbol])
  3. Join the new DataFrame object with DataFrame of the weather data. We will then obtain the correlation matrix:

    df3 = df.join(df2)
    
    print df3.corr()

    The correlation matrix is as follows:

As...

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