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rapidcsv's Introduction

Rapidcsv

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Rapidcsv is a C++ header-only library for CSV parsing. While the name admittedly was inspired by the rapidjson project, the objectives are not the same. The goal of rapidcsv is to be an easy-to-use CSV library enabling rapid development. For optimal performance (be it CPU or memory usage) a CSV parser implemented for the specific use-case is likely to be more performant.

Example Usage

Here is a simple example reading a CSV file and getting 'Close' column as a vector of floats, and an example of getting a specific cell as well.

colrowhdr.csv content:

    Date,Open,High,Low,Close,Volume,Adj Close
    2017-02-24,64.529999,64.800003,64.139999,64.620003,21705200,64.620003
    2017-02-23,64.419998,64.730003,64.190002,64.620003,20235200,64.620003
    2017-02-22,64.330002,64.389999,64.050003,64.360001,19259700,64.360001
    2017-02-21,64.610001,64.949997,64.449997,64.489998,19384900,64.489998
    2017-02-17,64.470001,64.690002,64.300003,64.620003,21234600,64.620003

ex001.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/colrowhdr.csv");

      std::vector<float> close = doc.GetColumn<float>("Close");
      std::cout << "Read " << close.size() << " values." << std::endl;

      long long volume = doc.GetCell<long long>("Volume", "2017-02-22");
      std::cout << "Volume " << volume << " on 2017-02-22." << std::endl;
    }

Refer to section More Examples below for more examples. The tests directory also contains many simple usage examples.

Supported Platforms

Rapidcsv is implemented using C++11 with the intention of being portable. It's been tested on:

  • macOS Mojave 10.14
  • Ubuntu 18.04 LTS
  • Windows 7 / Visual Studio 2015

Installation

Simply copy src/rapidcsv.h to your project/include directory and include it.

More Examples

Several of the following examples are also provided in the examples/ directory and can be executed directly under Linux and macOS thanks to a shebang-hack. Example running ex001.cpp:

    ./examples/ex001.cpp

Reading a File without Headers

By default rapidcsv treats the first row as column headers, and the first column as row headers. This allows accessing rows/columns/cells using their labels, for example GetCell<float>("Close", "2017-02-22") to get the cell from column labelled "Close", at row labelled "2017-02-22". Sometimes one may prefer to be able to access first row and/or column as data, and only access cells by their row and column index. In order to do so one need use LabelParams and set pColumnNameIdx and/or pRowNameIdx to -1 (disabled).

Column Headers Only

colhdr.csv content:

    Open,High,Low,Close,Volume,Adj Close
    64.529999,64.800003,64.139999,64.620003,21705200,64.620003
    64.419998,64.730003,64.190002,64.620003,20235200,64.620003
    64.330002,64.389999,64.050003,64.360001,19259700,64.360001
    64.610001,64.949997,64.449997,64.489998,19384900,64.489998
    64.470001,64.690002,64.300003,64.620003,21234600,64.620003

ex002.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/colhdr.csv", rapidcsv::LabelParams(0, -1));

      std::vector<float> col = doc.GetColumn<float>("Close");
      std::cout << "Read " << col.size() << " values." << std::endl;
    }

Row Headers Only

rowhdr.csv content:

    2017-02-24,64.529999,64.800003,64.139999,64.620003,21705200,64.620003
    2017-02-23,64.419998,64.730003,64.190002,64.620003,20235200,64.620003
    2017-02-22,64.330002,64.389999,64.050003,64.360001,19259700,64.360001
    2017-02-21,64.610001,64.949997,64.449997,64.489998,19384900,64.489998
    2017-02-17,64.470001,64.690002,64.300003,64.620003,21234600,64.620003

ex003.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/rowhdr.csv", rapidcsv::LabelParams(-1, 0));

      std::vector<std::string> row = doc.GetRow<std::string>("2017-02-22");
      std::cout << "Read " << row.size() << " values." << std::endl;
    }

No Headers

nohdr.csv content:

    64.529999,64.800003,64.139999,64.620003,21705200,64.620003
    64.419998,64.730003,64.190002,64.620003,20235200,64.620003
    64.330002,64.389999,64.050003,64.360001,19259700,64.360001
    64.610001,64.949997,64.449997,64.489998,19384900,64.489998
    64.470001,64.690002,64.300003,64.620003,21234600,64.620003

ex004.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/nohdr.csv", rapidcsv::LabelParams(-1, -1));

      std::vector<float> close = doc.GetColumn<float>(5);
      std::cout << "Read " << close.size() << " values." << std::endl;

      long long volume = doc.GetCell<long long>(4, 2);
      std::cout << "Volume " << volume << " on 2017-02-22." << std::endl;
    }

Reading a File with Custom Separator

For reading of files with custom separator (i.e. not comma), one need to specify the SeparatorParams argument. The following example reads a file using semi-colon as separator.

semi.csv content:

    Date;Open;High;Low;Close;Volume;Adj Close
    2017-02-24;64.529999;64.800003;64.139999;64.620003;21705200;64.620003
    2017-02-23;64.419998;64.730003;64.190002;64.620003;20235200;64.620003
    2017-02-22;64.330002;64.389999;64.050003;64.360001;19259700;64.360001
    2017-02-21;64.610001;64.949997;64.449997;64.489998;19384900;64.489998
    2017-02-17;64.470001;64.690002;64.300003;64.620003;21234600;64.620003

ex005.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/semi.csv", rapidcsv::LabelParams(),
                             rapidcsv::SeparatorParams(';'));

      std::vector<float> close = doc.GetColumn<float>("Close");
      std::cout << "Read " << close.size() << " values." << std::endl;

      long long volume = doc.GetCell<long long>("Volume", "2017-02-22");
      std::cout << "Volume " << volume << " on 2017-02-22." << std::endl;
    }

Supported Get/Set Data Types

The internal cell representation in the Document class is using std::string and when other types are requested, standard conversion routines are used. All standard conversions are relatively straight-forward, with the exception of char for which rapidcsv interprets the cell's (first) byte as a character. The following example illustrates the supported data types.

colrowhdr.csv content:

    Date,Open,High,Low,Close,Volume,Adj Close
    2017-02-24,64.529999,64.800003,64.139999,64.620003,21705200,64.620003
    2017-02-23,64.419998,64.730003,64.190002,64.620003,20235200,64.620003
    2017-02-22,64.330002,64.389999,64.050003,64.360001,19259700,64.360001
    2017-02-21,64.610001,64.949997,64.449997,64.489998,19384900,64.489998
    2017-02-17,64.470001,64.690002,64.300003,64.620003,21234600,64.620003

ex006.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      rapidcsv::Document doc("examples/colrowhdr.csv");

      std::cout << doc.GetCell<std::string>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<int>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<long>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<long long>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<unsigned>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<unsigned long>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<unsigned long long>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<float>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<double>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<long double>("Volume", "2017-02-22") << std::endl;
      std::cout << doc.GetCell<char>("Volume", "2017-02-22") << std::endl;
    }

Global Custom Data Type Conversion

One may override conversion routines (or add new ones) by implementing ToVal() and/or ToStr(). Below is an example overriding int conversion, to instead provide two decimal fixed-point numbers. Also see tests/test035.cpp for a test overriding ToVal() and ToStr().

ex008.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    namespace rapidcsv
    {
      template<>
      void Converter<int>::ToVal(const std::string& pStr, int& pVal) const
      {
        pVal = static_cast<int>(roundf(100.0f * std::stof(pStr)));
      }
    }

    int main()
    {
      rapidcsv::Document doc("examples/colrowhdr.csv");

      std::vector<int> close = doc.GetColumn<int>("Close");
      std::cout << "close[0]  = " << close[0] << std::endl;
      std::cout << "close[1]  = " << close[1] << std::endl;
    }

Custom Data Type Conversion Per Call

It is also possible to override conversions on a per-call basis, enabling more flexibility. This is illustrated in the following example. Additional conversion override usage can be found in the test tests/test063.cpp

ex009.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    void ConvFixPoint(const std::string& pStr, int& pVal)
    {
      pVal = static_cast<int>(roundf(100.0f * std::stof(pStr)));
    }

    struct MyStruct
    {
      int val = 0;
    };

    void ConvMyStruct(const std::string& pStr, MyStruct& pVal)
    {
      pVal.val = static_cast<int>(roundf(100.0f * std::stof(pStr)));
    }

    int main()
    {
      rapidcsv::Document doc("examples/colrowhdr.csv");

      std::cout << "regular         = " << doc.GetCell<int>("Close", "2017-02-21") << "\n";
      std::cout << "fixpointfunc    = " << doc.GetCell<int>("Close", "2017-02-21", ConvFixPoint) << "\n";

      auto convFixLambda = [](const std::string& pStr, int& pVal) { pVal = static_cast<int>(roundf(100.0f * stof(pStr))); };
      std::cout << "fixpointlambda  = " << doc.GetCell<int>("Close", "2017-02-21", convFixLambda) << "\n";

      std::cout << "mystruct        = " << doc.GetCell<MyStruct>("Close", "2017-02-21", ConvMyStruct).val << "\n";
    }

Reading CSV Data from a Stream or String

In addition to specifying a filename, rapidcsv supports constructing a Document from a stream and, indirectly through stringstream, from a string. Here is a simple example reading CSV data from a string:

ex007.cpp content:

    #include <iostream>
    #include <vector>
    #include "rapidcsv.h"

    int main()
    {
      const std::string& csv =
        "Date,Open,High,Low,Close,Volume,Adj Close\n"
        "2017-02-24,64.529999,64.800003,64.139999,64.620003,21705200,64.620003\n"
        "2017-02-23,64.419998,64.730003,64.190002,64.620003,20235200,64.620003\n"
        "2017-02-22,64.330002,64.389999,64.050003,64.360001,19259700,64.360001\n"
        "2017-02-21,64.610001,64.949997,64.449997,64.489998,19384900,64.489998\n"
        "2017-02-17,64.470001,64.690002,64.300003,64.620003,21234600,64.620003\n"
        ;

      std::stringstream sstream(csv);
      rapidcsv::Document doc(sstream);

      std::vector<float> close = doc.GetColumn<float>("Close");
      std::cout << "Read " << close.size() << " values." << std::endl;

      long long volume = doc.GetCell<long long>("Volume", "2017-02-22");
      std::cout << "Volume " << volume << " on 2017-02-22." << std::endl;
    }

Reading a File with Invalid Numbers (e.g. Empty Cells) as Numeric Data

By default rapidcsv throws an exception if one tries to access non-numeric data as a numeric data type, as it basically propagates the underlying conversion routines' exceptions to the calling application.

The reason for this is to ensure data correctness. If one wants to be able to read data with invalid numbers as numeric data types, one can use ConverterParams to configure the converter to default to a numeric value. The value is configurable and by default it's std::numeric_limits::signaling_NaN() for float types, and 0 for integer types. Example:

    rapidcsv::Document doc("file.csv", rapidcsv::LabelParams(),
                           rapidcsv::SeparatorParams(),
                           rapidcsv::ConverterParams(true));

Check if a Column Exists

Rapidcsv provides the methods GetColumnNames() and GetRowNames() to retrieve the column and row names. To check whether a particular column name exists one can for example do:

    rapidcsv::Document doc("file.csv");
    std::vector<std::string> columnNames = doc.GetColumnNames();
    bool column_A_exists =
      (std::find(columnNames.begin(), columnNames.end(), "A") != columnNames.end());

UTF-16 and UTF-8

Rapidcsv's preferred encoding for non-ASCII text is UTF-8. UTF-16 LE and UTF-16 BE can be read and written by rapidcsv on systems where codecvt header is present. Define HAS_CODECVT before including rapidcsv.h in order to enable the functionality. Rapidcsv unit tests automatically detects the presence of codecvt and sets HAS_CODECVT as needed, see CMakeLists.txt for reference. When enabled, the UTF-16 encoding of any loaded file is automatically detected.

API Documentation

The following classes makes up the Rapidcsv interface:

Technical Details

Rapidcsv uses cmake for its tests. Commands to build and execute the test suite:

mkdir -p build && cd build && cmake .. && make && ctest -C unit --output-on-failure && ctest -C perf --verbose ; cd -

Rapidcsv uses doxyman2md to generate its API documentation:

doxyman2md src doc

Rapidcsv uses Uncrustify to ensure consistent code formatting:

uncrustify -c uncrustify.cfg --no-backup src/rapidcsv.h

Alternatives

There are many CSV parsers for C++, for example:

License

Rapidcsv is distributed under the BSD 3-Clause license. See LICENSE file.

Contributions

Bugs, PRs, etc are welcome on the GitHub project page https://github.com/d99kris/rapidcsv

Keywords

c++, c++11, csv parser, comma separated values, single header library.

rapidcsv's People

Contributors

d99kris avatar radioflash avatar mjj29 avatar wingunder avatar jwdeitch avatar

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