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Vladiate is a strict validation tool for CSV files

Project description

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Description

Vladiate helps you write explicit assertions for every field of your CSV file.

Features

Write validation schemas in plain-old Python

No UI, no XML, no JSON, just code.

Write your own validators

Vladiate comes with a few by default, but there’s no reason you can’t write your own.

Validate multiple files at once

Either with the same schema, or different ones.

Documentation

Installation

Installing:

$ pip install vladiate

Quickstart

Below is an example of a vladfile.py

from vladiate import Vlad
from vladiate.validators import UniqueValidator, SetValidator
from vladiate.inputs import LocalFile

class YourFirstValidator(Vlad):
    source = LocalFile('vampires.csv')
    validators = {
        'Column A': [
            UniqueValidator()
        ],
        'Column B': [
            SetValidator(['Vampire', 'Not A Vampire'])
        ]
    }

Here we define a number of validators for a local file vampires.csv, which would look like this:

Column A,Column B
Vlad the Impaler,Not A Vampire
Dracula,Vampire
Count Chocula,Vampire

We then run vladiate in the same directory as your .csv file:

$ vladiate

And get the following output:

Validating YourFirstValidator(source=LocalFile('vampires.csv'))
Passed! :)

Handling Changes

Let’s imagine that you’ve gotten a new CSV file, potential_vampires.csv, that looks like this:

Column A,Column B
Vlad the Impaler,Not A Vampire
Dracula,Vampire
Count Chocula,Vampire
Ronald Reagan,Maybe A Vampire

If we were to update our first validator to use this file as follows:

- class YourFirstValidator(Vlad):
-     source = LocalFile('vampires.csv')
+ class YourFirstFailingValidator(Vlad):
+     source = LocalFile('potential_vampires.csv')

we would get the following error:

Validating YourFirstFailingValidator(source=LocalFile('potential_vampires.csv'))
Failed :(
  SetValidator failed 1 time(s) (25.0%) on field: 'Column B'
    Invalid fields: ['Maybe A Vampire']

And we would know that we’d either need to sanitize this field, or add it to the SetValidator.

Starting from scratch

To make writing a new vladfile.py easy, Vladiate will give meaningful error messages.

Given the following as real_vampires.csv:

Column A,Column B,Column C
Vlad the Impaler,Not A Vampire
Dracula,Vampire
Count Chocula,Vampire
Ronald Reagan,Maybe A Vampire

We could write a bare-bones validator as follows:

class YourFirstEmptyValidator(Vlad):
    source = LocalFile('real_vampires.csv')
    validators = {}

Running this with vladiate would give the following error:

Validating YourFirstEmptyValidator(source=LocalFile('real_vampires.csv'))
Missing...
  Missing validators for:
    'Column A': [],
    'Column B': [],
    'Column C': [],

Vladiate expects something to be specified for every column, even if it is an empty list (more on this later). We can easily copy and paste from the error into our vladfile.py to make it:

class YourFirstEmptyValidator(Vlad):
    source = LocalFile('real_vampires.csv')
    validators = {
        'Column A': [],
        'Column B': [],
        'Column C': [],
    }

When we run this with vladiate, we get:

Validating YourSecondEmptyValidator(source=LocalFile('real_vampires.csv'))
Failed :(
  EmptyValidator failed 4 time(s) (100.0%) on field: 'Column A'
    Invalid fields: ['Dracula', 'Vlad the Impaler', 'Count Chocula', 'Ronald Reagan']
  EmptyValidator failed 4 time(s) (100.0%) on field: 'Column B'
    Invalid fields: ['Maybe A Vampire', 'Not A Vampire', 'Vampire']
  EmptyValidator failed 4 time(s) (100.0%) on field: 'Column C'
    Invalid fields: ['Real', 'Not Real']

This is because Vladiate interprets an empty list of validators for a field as an EmptyValidator, which expects an empty string in every field. This helps us make meaningful decisions when adding validators to our vladfile.py. It also ensures that we are not forgetting about a column or field which is not empty.

Built-in Validators

Vladiate comes with a few common validators built-in:

class Validator

Generic validator. Should be subclassed by any custom validators. Not to be used directly.

class CastValidator

Generic “can-be-cast-to-x” validator. Should be subclassed by any cast-test validator. Not to be used directly.

class IntValidator

Validates whether a field can be cast to an int type or not.

empty_ok=False:

Specify whether a field which is an empty string should be ignored.

class FloatValidator

Validates whether a field can be cast to an float type or not.

empty_ok=False:

Specify whether a field which is an empty string should be ignored.

class SetValidator

Validates whether a field is in the specified set of possible fields.

valid_set=[]:

List of valid possible fields

empty_ok=False:

Implicity adds the empty string to the specified set.

ignore_case=False:

Ignore the case between values in the column and valid set

class UniqueValidator

Ensures that a given field is not repeated in any other column. Can optionally determine “uniqueness” with other fields in the row as well via unique_with.

unique_with=[]:

List of field names to make the primary field unique with.

empty_ok=False:

Specify whether a field which is an empty string should be ignored.

class RegexValidator

Validates whether a field matches the given regex using re.match().

pattern=r'di^':

The regex pattern. Fails for all fields by default.

full=False:

Specify whether we should use a fullmatch() or match().

empty_ok=False:

Specify whether a field which is an empty string should be ignored.

class RangeValidator

Validates whether a field falls within a given range (inclusive). Can handle integers or floats.

low:

The low value of the range.

high:

The high value of the range.

empty_ok=False:

Specify whether a field which is an empty string should be ignored.

class EmptyValidator

Ensure that a field is always empty. Essentially the same as an empty SetValidator. This is used by default when a field has no validators.

class NotEmptyValidator

The opposite of an EmptyValidator. Ensure that a field is never empty.

class Ignore

Always passes validation. Used to explicity ignore a given column.

class RowValidator

Generic row validator. Should be subclassed by any custom validators. Not to be used directly.

class RowLengthValidator

Validates that each row has the expected number of fields. The expected number of fields is inferred from the CSV header row read by csv.DictReader.

Built-in Input Types

Vladiate comes with the following input types:

class VladInput

Generic input. Should be subclassed by any custom inputs. Not to be used directly.

class LocalFile

Read from a file local to the filesystem.

filename:

Path to a local CSV file.

class S3File

Read from a file in S3. Optionally can specify either a full path, or a bucket/key pair.

Requires the boto library, which should be installed via pip install vladiate[s3].

path=None:

A full S3 filepath (e.g., s3://foo.bar/path/to/file.csv)

bucket=None:

S3 bucket. Must be specified with a key.

key=None:

S3 key. Must be specified with a bucket.

class String

Read CSV from a string. Can take either an str or a StringIO.

:string_input=None

Regular Python string input.

:string_io=None

StringIO input.

Running Vlads Programatically

class Vlad

Initialize a Vlad programatically

source:

Required. Any VladInput.

validators={}:

List of validators. Optional, defaults to the class variable validators if set, otherwise uses EmptyValidator for all fields.

delimiter=',':

The delimiter used within your csv source. Optional, defaults to ,.

ignore_missing_validators=False:

Whether to fail validation if there are fields in the file for which the Vlad does not have validators. Optional, defaults to False.

quiet=False:

Whether to disable log output generated by validations. Optional, defaults to False.

For example:

from vladiate import Vlad
from vladiate.inputs import LocalFile
Vlad(source=LocalFile('path/to/local/file.csv')).validate()

Testing

To run the tests:

make test

To run the linter:

make lint

Command Line Arguments

Usage: vladiate [options] [VladClass [VladClass2 ... ]]

Options:
  -h, --help            show this help message and exit
  -f VLADFILE, --vladfile=VLADFILE
                        Python module file to import, e.g. '../other.py'.
                        Default: vladfile
  -l, --list            Show list of possible vladiate classes and exit
  -V, --version         show version number and exit
  -p PROCESSES, --processes=PROCESSES
                        attempt to use this number of processes, Default: 1
  -q, --quiet           disable console log output generated by validations

Contributors

License

Open source MIT license.

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