Skip to content

A validation library for Pandas data frames using user-friendly schemas

License

Notifications You must be signed in to change notification settings

Swanand01/PandasSchema

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

88 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PandasSchema

For the full documentation, refer to the Github Pages Website.


PandasSchema is a module for validating tabulated data, such as CSVs (Comma Separated Value files), and TSVs (Tab Separated Value files). It uses the incredibly powerful data analysis tool Pandas to do so quickly and efficiently.

For example, say your code expects a CSV that looks a bit like this:

Given Name,Family Name,Age,Sex,Customer ID
Gerald,Hampton,82,Male,2582GABK
Yuuwa,Miyake,27,Male,7951WVLW
Edyta,Majewska,50,Female,7758NSID

Now you want to be able to ensure that the data in your CSV is in the correct format:

import pandas as pd
from io import StringIO
from pandas_schema import Column, Schema
from pandas_schema.validation import LeadingWhitespaceValidation, TrailingWhitespaceValidation, CanConvertValidation, MatchesPatternValidation, InRangeValidation, InListValidation

schema = Schema([
    Column('Given Name', [LeadingWhitespaceValidation(), TrailingWhitespaceValidation()]),
    Column('Family Name', [LeadingWhitespaceValidation(), TrailingWhitespaceValidation()]),
    Column('Age', [InRangeValidation(0, 120)]),
    Column('Sex', [InListValidation(['Male', 'Female', 'Other'])]),
    Column('Customer ID', [MatchesPatternValidation(r'\d{4}[A-Z]{4}')])
])

test_data = pd.read_csv(StringIO('''Given Name,Family Name,Age,Sex,Customer ID
Gerald ,Hampton,82,Male,2582GABK
Yuuwa,Miyake,270,male,7951WVLW
Edyta,Majewska ,50,Female,775ANSID
'''))

errors = schema.validate(test_data)

for error in errors:
    print(error)

PandasSchema would then output

{row: 0, column: "Given Name"}: "Gerald " contains trailing whitespace
{row: 1, column: "Age"}: "270" was not in the range [0, 120)
{row: 1, column: "Sex"}: "male" is not in the list of legal options (Male, Female, Other)
{row: 2, column: "Family Name"}: "Majewska " contains trailing whitespace
{row: 2, column: "Customer ID"}: "775ANSID" does not match the pattern "\d{4}[A-Z]{4}"

About

A validation library for Pandas data frames using user-friendly schemas

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 100.0%