Search icon CANCEL
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon
Arrow up icon
GO TO TOP
Java Data Science Cookbook

You're reading from   Java Data Science Cookbook Explore the power of MLlib, DL4j, Weka, and more

Arrow left icon
Product type Paperback
Published in Mar 2017
Publisher Packt
ISBN-13 9781787122536
Length 372 pages
Edition 1st Edition
Languages
Tools
Arrow right icon
Author (1):
Arrow left icon
Rushdi Shams Rushdi Shams
Author Profile Icon Rushdi Shams
Rushdi Shams
Arrow right icon
View More author details
Toc

Table of Contents (10) Chapters Close

Preface 1. Obtaining and Cleaning Data FREE CHAPTER 2. Indexing and Searching Data 3. Analyzing Data Statistically 4. Learning from Data - Part 1 5. Learning from Data - Part 2 6. Retrieving Information from Text Data 7. Handling Big Data 8. Learn Deeply from Data 9. Visualizing Data

Parsing Comma Separated Value (CSV) Files using Univocity

Another very common file type that data scientists handle is Comma Separated Value (CSV) files, where data is separated by commas. CSV files are very popular because they can be read by most of the spreadsheet applications, such as MS Excel.

In this recipe, we will see how we can parse CSV files and handle data points retrieved from them.

Getting ready

In order to perform this recipe, we will require the following:

  1. Download the Univocity JAR file from http://oss.sonatype.org/content/repositories/releases/com/univocity/univocity-parsers/2.2.1/univocity-parsers-2.2.1.jar. Include the JAR file in your project in Eclipse as external library.
  2. Create a CSV file from the following data using Notepad. The extension of the file should be .csv. You save the file as C:/testCSV.csv:
            Year,Make,Model,Description,Price 
            1997,Ford,E350,"ac, abs, moon",3000.00 
            1999,Chevy,"Venture ""Extended Edition""","",4900.00 
            1996,Jeep,Grand Cherokee,"MUST SELL! 
            air, moon roof, loaded",4799.00 
            1999,Chevy,"Venture ""Extended Edition, Very Large""",,5000.00 
            ,,"Venture ""Extended Edition""","",4900.00 
    

How to do it...

  1. Create a method named parseCsv(String) that takes the name of the file as a String argument:
            public void parseCsv(String fileName){ 
    
  2. Then create a settings object. This object provides many configuration settings options:
            CsvParserSettings parserSettings = new CsvParserSettings(); 
    
  3. You can configure the parser to automatically detect what line separator sequence is in the input:
            parserSettings.setLineSeparatorDetectionEnabled(true); 
    
  4. Create a RowListProcessor that stores each parsed row in a list:
            RowListProcessor rowProcessor = new RowListProcessor(); 
    
  5. You can configure the parser to use a RowProcessor to process the values of each parsed row. You will find more RowProcessors in the com.univocity.parsers.common.processor package, but you can also create your own:
            parserSettings.setRowProcessor(rowProcessor); 
    
  6. If the CSV file that you are going to parse contains headers, you can consider the first parsed row as the headers of each column in the file:
            parserSettings.setHeaderExtractionEnabled(true); 
    
  7. Now, create a parser instance with the given settings:
            CsvParser parser = new CsvParser(parserSettings); 
    
  8. The parse() method will parse the file and delegate each parsed row to the RowProcessor you defined:
            parser.parse(new File(fileName)); 
    
  9. If you have parsed the headers, the headers can be found as follows:
            String[] headers = rowProcessor.getHeaders(); 
    
  10. You can then easily process this String array to get the header values.
  11. On the other hand, the row values can be found in a list. The list can be printed using a for loop as follows:
            List<String[]> rows = rowProcessor.getRows(); 
            for (int i = 0; i < rows.size(); i++){ 
               System.out.println(Arrays.asList(rows.get(i))); 
            } 
    
  12. Finally, close the method:
           } 
    

    The entire method can be written as follows:

    import java.io.File; 
    import java.util.Arrays; 
    import java.util.List; 
     
    import com.univocity.parsers.common.processor.RowListProcessor; 
    import com.univocity.parsers.csv.CsvParser; 
    import com.univocity.parsers.csv.CsvParserSettings; 
     
    public class TestUnivocity { 
          public void parseCSV(String fileName){ 
              CsvParserSettings parserSettings = new CsvParserSettings(); 
              parserSettings.setLineSeparatorDetectionEnabled(true); 
              RowListProcessor rowProcessor = new RowListProcessor(); 
              parserSettings.setRowProcessor(rowProcessor); 
              parserSettings.setHeaderExtractionEnabled(true); 
              CsvParser parser = new CsvParser(parserSettings); 
              parser.parse(new File(fileName)); 
     
              String[] headers = rowProcessor.getHeaders(); 
              List<String[]> rows = rowProcessor.getRows(); 
              for (int i = 0; i < rows.size(); i++){ 
                System.out.println(Arrays.asList(rows.get(i))); 
              } 
          } 
           
          public static void main(String[] args){ 
             TestUnivocity test = new TestUnivocity(); 
             test.parseCSV("C:/testCSV.csv"); 
          } 
    } 
    

Note

There are many CSV parsers that are written in Java. However, in a comparison, Univocity is found to be the fastest one. See the detailed comparison results here: https://github.com/uniVocity/csv-parsers-comparison

You have been reading a chapter from
Java Data Science Cookbook
Published in: Mar 2017
Publisher: Packt
ISBN-13: 9781787122536
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at AU $24.99/month. Cancel anytime