Skip to main content

Vladiate is a strict validation tool for CSV files

Project description

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 YourFirstValidator(source=LocalFile('potential_vampires.csv'))
Failed :(
  SetValidator failed 1 time(s) 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) on field: 'Column A'
    Invalid fields: ['Dracula', 'Vlad the Impaler', 'Count Chocula', 'Ronald Reagan']
  EmptyValidator failed 4 time(s) on field: 'Column B'
    Invalid fields: ['Maybe A Vampire', 'Not A Vampire', 'Vampire']
  EmptyValidator failed 4 time(s) 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.

  • 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.

  • 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 Ignore

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

Testing

To run the tests

python setup.py test

Authors

License

Open source MIT license.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

vladiate-0.0.1.tar.gz (10.2 kB view details)

Uploaded Source

File details

Details for the file vladiate-0.0.1.tar.gz.

File metadata

  • Download URL: vladiate-0.0.1.tar.gz
  • Upload date:
  • Size: 10.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for vladiate-0.0.1.tar.gz
Algorithm Hash digest
SHA256 a331645cd47f689854d4cf169cb50e4de4e49e6badc75d9f0baebf58141607e4
MD5 f3e925048e06856dde2bfab20dc67c9d
BLAKE2b-256 a83c9ec5e7e5a6903e3ce25c7d5ff6e78058ad59165b9e1bec3c2fa69c06f515

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page