A package for emulating common data entry errors
Project description
Mistaker
Mistaker is a Python package designed to emulate common data entry errors that occur in real-world datasets. It's particularly useful for testing data quality tools, generating synthetic training data, and simulating typical mistakes found in OCR output, manual transcription, and legacy data migration projects.
Features
- Simulate common transcription and data entry errors for:
- Text strings and words
- Personal names and business names
- Dates in various formats
- Numeric data
- Addresses and locations
- Configurable error types and rates
- Support for multiple input formats
- Preserves data structure while introducing realistic errors
- Deterministic error generation available for testing
Installation
pip install mistaker
Quick Start
Command Line
Generate variations with mistakes from your CSV data:
# Basic usage
mistaker data.csv > output.csv
# Using standard input
cat data.csv | mistaker > output.csv
# The tool will automatically use config.json from current directory if it exists
# Or specify a custom config file:
mistaker data.csv -c custom_config.json
# Adjust mistake generation via command line
mistaker data.csv --min-duplicates 3 --max-duplicates 6 --min-chaos 1 --max-chaos 3
Configuration
Control the mistake generation process via a JSON configuration file:
{
"min_duplicates": 2,
"max_duplicates": 5,
"min_chaos": 1,
"max_chaos": 4,
"missing_weights": {
"full_name": 0.05,
"dob": 0.1,
"phone": 0.8,
"email": 0.95,
"ssn": 0.9,
"dl_num": 0.5,
"full_address": 0.1
},
"mistake_weights": {
"full_name": 1.0,
"dob": 1.0,
"phone": 1.0,
"email": 1.0,
"ssn": 1.0,
"dl_num": 1.0,
"full_address": 1.0
}
}
Supported Fields
Mistaker handles these fields with field-specific error patterns:
full_name: Name variations and misspellingsdob: Date format errors and typosphone: Number transpositions and formatting errorsssn: Number mistakes preserving SSN patternsdl_num: Alphanumeric mistakes for driver's licensesemail: Username and domain-specific errorsfull_address: Address component errors with street numbers, names, suffixes, unit numbers, and directional prefixes
Advanced Usage
Python API
from mistaker import Generator
# Create generator with defaults
generator = Generator()
# Process a single record
record = {
'full_name': 'John Smith',
'dob': '1990-01-01',
'phone': '555-123-4567',
'full_address': '123 N Main St Apt 4B'
}
variations = generator.generate(record) # Returns list with original + variations
# Process multiple records
records = [record1, record2, record3]
for variation in generator.generate_all(records):
print(variation)
Python API Options
# Initialize with custom settings
generator = Generator(
min_duplicates=3,
max_duplicates=6,
min_chaos=2,
max_chaos=4
)
# Load from config file
generator = Generator.from_file('config.json')
# Custom configuration
config = {
'missing_weights': {
'full_name': 0.05,
'phone': 0.2
}
}
generator = Generator(config=config)
CLI Options
mistaker --help
usage: mistaker [input_file] [options]
options:
-h, --help show this help message and exit
-c, --config CONFIG configuration JSON file path
--min-duplicates N minimum number of variations per record
--max-duplicates N maximum number of variations per record
--min-chaos N minimum number of mistakes per field
--max-chaos N maximum number of mistakes per field
-v, --version show program's version number and exit
Basic Examples
from mistaker import Word, Name, Date, Number, Address
# Generate word variations
Word("GRATEFUL").mistake() # => "GRATEFU"
Word("GRATEFUL").mistake() # => "GRATAFUL"
# Generate name variations with common mistakes
Name("KIM DEAL").mistake() # => "KIM FEAL"
Name("KIM DEAL").mistake() # => "KIM DEL"
Name("KIM DEAL").chaos() # => "DEELLL KIN"
# Generate date formatting errors and typos
Date("09/04/1982").mistake() # => "1928-09-04"
Date("09/04/1982").mistake() # => "0019-82-09"
# Generate numeric transcription errors
Number("12345").mistake() # => "12335"
Number("12345").mistake() # => "72345"
# Generate address variations and errors
Address("123 N Main St Apt 4B").mistake() # => "123 N MANE ST APT 4D"
Address("456 South Oak Avenue").mistake() # => "456 S OAK AVE"
Detailed Usage
Word and Text Errors
from mistaker import Word, ErrorType
# Create a word instance
word = Word("TESTING")
# Generate specific error types
word.mistake(ErrorType.DROPPED_LETTER) # => "TESTNG"
word.mistake(ErrorType.DOUBLE_LETTER) # => "TESSTING"
word.mistake(ErrorType.MISREAD_LETTER) # => "TEZTING"
word.mistake(ErrorType.MISTYPED_LETTER) # => "TEDTING"
word.mistake(ErrorType.EXTRA_LETTER) # => "TESTINGS"
word.mistake(ErrorType.MISHEARD_LETTER) # => "TEZDING"
Name Handling
from mistaker import Name
# Create a name instance
name = Name("Robert James Smith")
# Generate name variations
variations = name.get_name_variations()
# Returns variations like:
# - "Smith, Robert"
# - "R James Smith"
# - "Robert Smith"
# - "Smith Robert"
# Generate case variants
cases = name.get_case_variants()
# Returns:
# - "Robert James Smith"
# - "ROBERT JAMES SMITH"
# - "robert james smith"
# Generate multiple errors
name.chaos() # Applies 1-6 random errors
# John Smith -> JAHN SMEH
Date Handling
from mistaker import Date
# Create a date instance
date = Date("2023-05-15")
# Supports multiple input formats
date = Date("05/15/2023") # US format
date = Date("15/05/2023") # UK format
# Generate specific error types
date.mistake(ErrorType.MONTH_DAY_SWAP) # => "2023-15-05"
date.mistake(ErrorType.ONE_DECADE_DOWN) # => "2013-05-15"
date.mistake(ErrorType.Y2K) # => "0023-05-15"
Number Handling
from mistaker import Number
# Create a number instance
number = Number("12345")
# Generate specific error types
number.mistake(ErrorType.ONE_DIGIT_UP) # => "12346"
number.mistake(ErrorType.ONE_DIGIT_DOWN) # => "12344"
number.mistake(ErrorType.KEY_SWAP) # => "21345"
number.mistake(ErrorType.DIGIT_SHIFT) # => "01234"
number.mistake(ErrorType.MISREAD) # => "12375"
number.mistake(ErrorType.NUMERIC_KEY_PAD) # => "12348"
Address Handling
from mistaker import Address
# Create an address instance
address = Address("123 North Main Street Suite 100")
# Generate mistakes with automatic component handling
address.mistake() # => "123 N MANE ST STE 102"
# Standardize address format
address.standardize() # => "123 N MAIN ST STE 100"
# Handles various address components:
# - Street numbers
# - Directional prefixes (N, S, E, W, NE, NW, SE, SW)
# - Street names
# - Street suffixes (St, Ave, Rd, etc.)
# - Unit designators (Suite, Apt, Unit, etc.)
# - Unit numbers
Error Types
Text and Name Errors
- Dropped Letters: Missing characters (e.g., "testing" → "testng")
- Double Letters: Repeated characters (e.g., "testing" → "tessting")
- Misread Letters: Similar-looking character substitutions (e.g., "testing" → "tezting")
- Mistyped Letters: Keyboard proximity errors (e.g., "testing" → "tedting")
- Extra Letters: Common suffix additions (e.g., "test" → "tests")
- Misheard Letters: Phonetic errors (e.g., "testing" → "tesding")
Number Errors
- Single Digit Errors: Off-by-one errors
- Key Swaps: Adjacent digit transposition
- Digit Shifts: Decimal/position shifts
- Misread Numbers: Similar-looking number substitution
- Numeric Keypad Errors: Based on number pad layout
Date Errors
- Month/Day Swaps: Common in international formats
- Decade Shifts: Common in manual entry
- Y2K Issues: Two-digit year ambiguity
- All Number-Based Errors: Inherited from number handling
Address Errors
- Component Dropping: Omitting address parts (suffixes, unit numbers)
- Standardization Issues: Inconsistent formatting of prefixes and suffixes
- Number Errors: Street number and unit number mistakes
- Text Errors: Street name misspellings and variations
- Unit Formatting: Inconsistent unit designator abbreviations
Contributing
- Fork the repository
- Create your feature branch (
git checkout -b feature/amazing-feature) - Commit your changes (
git commit -m 'Add amazing feature') - Push to the branch (
git push origin feature/amazing-feature) - Open a Pull Request
License
This project is licensed under the MIT License - see the LICENSE file for details.
Acknowledgments
- Inspired by real-world data quality challenges in government and enterprise systems
- Error patterns based on extensive analysis of common transcription mistakes
- Designed to support data quality testing and synthetic data generation
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
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file mistaker-0.3.2.tar.gz.
File metadata
- Download URL: mistaker-0.3.2.tar.gz
- Upload date:
- Size: 24.0 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.0.1 CPython/3.12.8
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
160b0a595b44a2e74265d5e8b3f13a44d9ad67dd3c8091a9ea9d31311516b3c1
|
|
| MD5 |
435a928a133d1ec7d2b224417d8da55c
|
|
| BLAKE2b-256 |
f5ce9069f6d9472c5a4ccba842c09122663c70b43b133a1025c71fcc351bd31f
|
File details
Details for the file mistaker-0.3.2-py3-none-any.whl.
File metadata
- Download URL: mistaker-0.3.2-py3-none-any.whl
- Upload date:
- Size: 18.1 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.0.1 CPython/3.12.8
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
b80291a3d072c98dbe50366fd2e417d8b2be9f3785c58c486c3d1a1086906d0b
|
|
| MD5 |
9b9ca83e12a533e42121028924cd63f1
|
|
| BLAKE2b-256 |
a4d899bd5f328f95f09dd4550b000be3392cd41a9df2883023055392e4824fe3
|