# CleverCSV **Repository Path**: mirrors_databricks/CleverCSV ## Basic Information - **Project Name**: CleverCSV - **Description**: CleverCSV is a Python package for handling messy CSV files. It provides a drop-in replacement for the builtin CSV module with improved dialect detection, and comes with a handy command line application for working with CSV files. - **Primary Language**: Unknown - **License**: MIT - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2024-10-19 - **Last Updated**: 2025-12-13 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README


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*CleverCSV provides a drop-in replacement for the Python* ``csv`` *package with improved dialect detection for messy CSV files. It also provides a handy command line tool that can standardize a messy file or generate Python code to import it.* **Useful links:** - [CleverCSV on Github](https://github.com/alan-turing-institute/CleverCSV) - [CleverCSV on PyPI](https://pypi.org/project/clevercsv/) - [Demo of CleverCSV on Binder (interactive!)](https://mybinder.org/v2/gh/alan-turing-institute/CleverCSVDemo/master?filepath=CSV_dialect_detection_with_CleverCSV.ipynb) - [Research Paper on CSV dialect detection (PDF)](https://gertjanvandenburg.com/papers/VandenBurg_Nazabal_Sutton_-_Wrangling_Messy_CSV_Files_by_Detecting_Row_and_Type_Patterns_2019.pdf) - [Reproducible Research Repo](https://github.com/alan-turing-institute/CSV_Wrangling/) - [Blog post on messy CSV files](https://towardsdatascience.com/handling-messy-csv-files-2ef829aa441d) - [Discussion forum](https://github.com/alan-turing-institute/CleverCSV/discussions): a place to ask questions and share ideas! --- *Contents:* Quick Start | Introduction | Installation | Usage | Python Library | Command-Line Tool | Version Control Integration | Contributing | Notes --- ## Quick Start [Click here](#introduction) to go to the introduction with more details about CleverCSV. If you're in a hurry, below is a quick overview of how to get started with the CleverCSV Python package and the command line interface. For the Python package: ```python # Import the package >>> import clevercsv # Load the file as a list of rows # This uses the imdb.csv file in the examples directory >>> rows = clevercsv.read_table('./imdb.csv') # Load the file as a Pandas Dataframe # Note that df = pd.read_csv('./imdb.csv') would fail here >>> df = clevercsv.read_dataframe('./imdb.csv') # Use CleverCSV as drop-in replacement for the Python CSV module # This follows the Sniffer example: https://docs.python.org/3/library/csv.html#csv.Sniffer # Note that csv.Sniffer would fail here >>> with open('./imdb.csv', newline='') as csvfile: ... dialect = clevercsv.Sniffer().sniff(csvfile.read()) ... csvfile.seek(0) ... reader = clevercsv.reader(csvfile, dialect) ... rows = list(reader) ``` And for the command line interface: ```python # Install the full version of CleverCSV (this includes the command line interface) $ pip install clevercsv[full] # Detect the dialect $ clevercsv detect ./imdb.csv Detected: SimpleDialect(',', '', '\\') # Generate code to import the file $ clevercsv code ./imdb.csv import clevercsv with open("./imdb.csv", "r", newline="", encoding="utf-8") as fp: reader = clevercsv.reader(fp, delimiter=",", quotechar="", escapechar="\\") rows = list(reader) # Explore the CSV file as a Pandas dataframe $ clevercsv explore -p imdb.csv Dropping you into an interactive shell. CleverCSV has loaded the data into the variable: df >>> df ``` ## Introduction - CSV files are awesome! They are lightweight, easy to share, human-readable, version-controllable, and supported by many systems and tools! - CSV files are terrible! They can have many different formats, multiple tables, headers or no headers, escape characters, and there's no support for recording metadata! CleverCSV is a Python package that aims to solve some of the pain points of CSV files, while maintaining many of the good things. The package automatically detects (with high accuracy) the format (*dialect*) of CSV files, thus making it easier to simply point to a CSV file and load it, without the need for human inspection. In the future, we hope to solve some of the other issues of CSV files too. CleverCSV is [based on science](https://gertjanvandenburg.com/papers/VandenBurg_Nazabal_Sutton_-_Wrangling_Messy_CSV_Files_by_Detecting_Row_and_Type_Patterns_2019.pdf). We investigated thousands of real-world CSV files to find a robust way to automatically detect the dialect of a file. This may seem like an easy problem, but to a computer a CSV file is simply a long string, and every dialect will give you *some* table. In CleverCSV we use a technique based on the patterns of row lengths of the parsed file and the data type of the resulting cells. With our method we achieve 97% accuracy for dialect detection, with a 21% improvement on non-standard (*messy*) CSV files compared to the Python standard library. We think this kind of work can be very valuable for working data scientists and programmers and we hope that you find CleverCSV useful (if there's a problem, please open an issue!) Since the academic world counts citations, please **cite CleverCSV if you use the package**. Here's a BibTeX entry you can use: ```bib @article{van2019wrangling, title = {Wrangling Messy {CSV} Files by Detecting Row and Type Patterns}, author = {{van den Burg}, G. J. J. and Naz{\'a}bal, A. and Sutton, C.}, journal = {Data Mining and Knowledge Discovery}, year = {2019}, volume = {33}, number = {6}, pages = {1799--1820}, issn = {1573-756X}, doi = {10.1007/s10618-019-00646-y}, } ``` And of course, if you like the package please *spread the word!* You can do this by Tweeting about it ([#CleverCSV](https://twitter.com/hashtag/clevercsv)) or clicking the ⭐️ [on GitHub](https://github.com/alan-turing-institute/CleverCSV)! ## Installation CleverCSV is available on PyPI. You can install either the full version, which includes the command line interface and all optional dependencies, using ```bash $ pip install clevercsv[full] ``` or you can install a lighter, core version of CleverCSV with ```bash $ pip install clevercsv ``` ## Usage CleverCSV consists of a Python library and a command line tool called ``clevercsv``. ### Python Library We designed CleverCSV to provide a drop-in replacement for the built-in CSV module, with some useful functionality added to it. Therefore, if you simply want to replace the builtin CSV module with CleverCSV, you can import CleverCSV as follows, and use it as you would use the builtin [csv module](https://docs.python.org/3/library/csv.html). ```python import clevercsv ``` CleverCSV provides an improved version of the dialect sniffer in the CSV module, but it also adds some useful wrapper functions. These functions automatically detect the dialect and aim to make working with CSV files easier. We currently have the following helper functions: * [detect_dialect](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.detect_dialect): takes a path to a CSV file and returns the detected dialect * [read_table](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.read_table): automatically detects the dialect and encoding of the file, and returns the data as a list of rows. A version that returns a generator is also available: [stream_table](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.stream_table) * [read_dataframe](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.read_dataframe): detects the dialect and encoding of the file and then uses [Pandas](https://pandas.pydata.org/) to read the CSV into a DataFrame. Note that this function requires Pandas to be installed. * [read_dicts](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.read_dicts): detect the dialect and return the rows of the file as dictionaries, assuming the first row contains the headers. A streaming version called [stream_dicts](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.stream_dicts) is also available. * [write_table](https://clevercsv.readthedocs.io/en/latest/source/clevercsv.html#clevercsv.wrappers.write_table): write a table (a list of lists) to a file using the [RFC-4180](https://tools.ietf.org/html/rfc4180) dialect. Of course, you can also use the traditional way of loading a CSV file, as in the Python CSV module: ```python import clevercsv with open("data.csv", "r", newline="") as fp: # you can use verbose=True to see what CleverCSV does dialect = clevercsv.Sniffer().sniff(fp.read(), verbose=False) fp.seek(0) reader = clevercsv.reader(fp, dialect) rows = list(reader) ``` For large files, you can speed up detection by supplying a smaller sample to the sniffer, for instance: ```python dialect = clevercsv.Sniffer().sniff(fp.read(10000)) ``` That's the basics! If you want more details, you can look at the code of the package, the test suite, or the [API documentation](https://clevercsv.readthedocs.io/en/latest/source/modules.html). If you run into any issues or have comments or suggestions, please open an issue [on GitHub](https://github.com/alan-turing-institute/CleverCSV). ### Command-Line Tool *To use the command line tool, make sure that you install the full version of CleverCSV (see above).* The ``clevercsv`` command line application has a number of handy features to make working with CSV files easier. For instance, it can be used to view a CSV file on the command line while automatically detecting the dialect. It can also generate Python code for importing data from a file with the correct dialect. The full help text is as follows: ```text USAGE clevercsv [-h] [-v] [-V] [] ... [] ARGUMENTS The command to execute The arguments of the command GLOBAL OPTIONS -h (--help) Display this help message. -v (--verbose) Enable verbose mode. -V (--version) Display the application version. AVAILABLE COMMANDS code Generate Python code for importing the CSV file detect Detect the dialect of a CSV file explore Drop into a Python shell with the CSV file loaded help Display the manual of a command standardize Convert a CSV file to one that conforms to RFC-4180 view View the CSV file on the command line using TabView ``` Each of the commands has further options (for instance, the ``code`` and ``explore`` commands have support for importing the CSV file as a Pandas DataFrame). Use ``clevercsv help `` for more information. Below are some examples for each command. Note that each command accepts the ``-n`` or ``--num-chars`` flag to set the number of characters used to detect the dialect. This can be especially helpful to speed up dialect detection on large files. #### Code Code generation is useful when you don't want to detect the dialect of the same file over and over again. You simply run the following command and copy the generated code to a Python script! ```text $ clevercsv code imdb.csv # Code generated with CleverCSV import clevercsv with open("imdb.csv", "r", newline="", encoding="utf-8") as fp: reader = clevercsv.reader(fp, delimiter=",", quotechar="", escapechar="\\") rows = list(reader) ``` We also have a version that reads a Pandas dataframe: ```text $ clevercsv code --pandas imdb.csv # Code generated with CleverCSV import clevercsv df = clevercsv.read_dataframe("imdb.csv", delimiter=",", quotechar="", escapechar="\\") ``` #### Detect Detection is useful when you only want to know the dialect. ```text $ clevercsv detect imdb.csv Detected: SimpleDialect(',', '', '\\') ``` The ``--plain`` flag gives the components of the dialect on separate lines, which makes combining it with ``grep`` easier. ```text $ clevercsv detect --plain imdb.csv delimiter = , quotechar = escapechar = \ ``` #### Explore The ``explore`` command is great for a command-line based workflow, or when you quickly want to start working with a CSV file in Python. This command detects the dialect of a CSV file and starts an interactive Python shell with the file already loaded! You can either have the file loaded as a list of lists: ```text $ clevercsv explore milk.csv Dropping you into an interactive shell. CleverCSV has loaded the data into the variable: rows >>> >>> len(rows) 381 ``` or you can load the file as a Pandas dataframe: ```text $ clevercsv explore -p imdb.csv Dropping you into an interactive shell. CleverCSV has loaded the data into the variable: df >>> >>> df.head() fn tid ... War Western 0 titles01/tt0012349 tt0012349 ... 0 0 1 titles01/tt0015864 tt0015864 ... 0 0 2 titles01/tt0017136 tt0017136 ... 0 0 3 titles01/tt0017925 tt0017925 ... 0 0 4 titles01/tt0021749 tt0021749 ... 0 0 [5 rows x 44 columns] ``` #### Standardize Use the ``standardize`` command when you want to rewrite a file using the [RFC-4180 standard](https://tools.ietf.org/html/rfc4180): ```text $ clevercsv standardize --output imdb_standard.csv imdb.csv ``` In this particular example the use of the escape character is replaced by using quotes. #### View This command allows you to view the file in the terminal. The dialect is of course detected using CleverCSV! Both this command and the ``standardize`` command support the ``--transpose`` flag, if you want to transpose the file before viewing or saving: ```text $ clevercsv view --transpose imdb.csv ``` ### Version Control Integration If you'd like to make sure that you never commit a messy (non-standard) CSV file to your repository, you can install a [pre-commit](https://pre-commit.com/) hook. First, install pre-commit using the [installation instructions](https://pre-commit.com/#install). Next, add the following configuration to the ``.pre-commit-config.yaml`` file in your repository: ```yaml repos: - repo: https://github.com/alan-turing-institute/CleverCSV-pre-commit rev: v0.6.6 # or any later version hooks: - id: clevercsv-standardize ``` Finally, run ``pre-commit install`` to set up the git hook. Pre-commit will now use CleverCSV to standardize your CSV files following [RFC-4180](https://tools.ietf.org/html/rfc4180) whenever you commit a CSV file to your repository. ## Contributing If you want to encourage development of CleverCSV, the best thing to do now is to *spread the word!* If you encounter an issue in CleverCSV, please [open an issue](https://help.github.com/en/github/managing-your-work-on-github/creating-an-issue) or [submit a pull request](https://help.github.com/en/github/collaborating-with-issues-and-pull-requests/creating-a-pull-request). Don't hesitate, you're helping to make this project better for everyone! If GitHub's not your thing but you still want to contact us, you can send an email to ``gertjanvandenburg at gmail dot com`` instead. You can also ask questions [on Gitter](https://gitter.im/alan-turing-institute/CleverCSV). Note that all contributions to the project must adhere to the [Code of Conduct](https://github.com/alan-turing-institute/CleverCSV/blob/master/CODE_OF_CONDUCT.md). The CleverCSV package was originally written by [Gertjan van den Burg](https://gertjan.dev) and came out of [scientific research](https://gertjanvandenburg.com/papers/VandenBurg_Nazabal_Sutton_-_Wrangling_Messy_CSV_Files_by_Detecting_Row_and_Type_Patterns_2019.pdf) on wrangling messy CSV files by [Gertjan van den Burg](https://gertjan.dev), [Alfredo Nazabal](https://scholar.google.com/citations?user=IanHvT4AAAAJ), and [Charles Sutton](https://homepages.inf.ed.ac.uk/csutton/). ## Notes CleverCSV is licensed under the [MIT license](./LICENSE). Please [cite our research](https://link.springer.com/article/10.1007/s10618-019-00646-y) if you use CleverCSV in your work. Copyright (c) 2018-2021 [The Alan Turing Institute](https://turing.ac.uk).