Crates.io | test-data-generation |
lib.rs | test-data-generation |
version | 0.3.4 |
source | src |
created_at | 2018-03-30 00:32:58.043553 |
updated_at | 2021-12-18 21:21:03.878768 |
description | A simple to use, light-weight library that analyzes sample data to build algorithms and generates realistic test data. |
homepage | |
repository | https://github.com/dsietz/test-data-generation.git |
max_upload_size | |
id | 58146 |
size | 1,861,918 |
For software development teams who need realistic test data for testing their software, this Test Data Generation library is a light-weight module that implements Markov decision process machine learning to quickly and easily profile sample data, create an algorithm, and produce representative test data without the need for persistent data sources, data cleaning, or remote services. Unlike other solutions, this open source solution can be integrated into your test source code, or wrapped into a web service or stand-alone utility.
PROBLEM In order to make test data represent production, (a.k.a. realistic) you need to perform one of the following:
SOLUTION
Incorporate this library in your software's testing source code by loading an algorithm from a previously analyzed data sample and generating test data during your tests runtime.Here's what's new ...
0.3.4
test data generation
uses Markov decision process machine learning to create algorithms that enable test data generation on the fly without the overhead
of test data databases, security data provisioning (e.g.: masking, obfuscation), or standing up remote services.
The algorithm is built on the bases of:
There are multiple ways to use the Test Data Generation library. It all depends on your intent.
The easiest way is to use a Profile. The profile
module provides functionality to create a profile on a data sample (Strings).
Once a profile has been made, data can be generated by calling the pre_generate() and generate() functions, in that order.
extern crate test_data_generation;
use test_data_generation::profile::profile::Profile;
fn main() {
// analyze the dataset
let mut data_profile = Profile::new();
// analyze the dataset
data_profile.analyze("Smith, John");
data_profile.analyze("Doe, John");
data_profile.analyze("Dale, Danny");
data_profile.analyze("Rickets, Ronney");
// confirm 4 data samples were analyzed
assert_eq!(data_profile.patterns.len(), 4);
// prepare the generator
data_profile.pre_generate();
// generate some data
println!("The generated name is {:?}", data_profile.generate());
// save the profile (algorithm) for later
assert_eq!(data_profile.save(&String::from("./tests/samples/sample-00-profile")).unwrap(), true);
// later... create a new profile from the saved archive file
let mut new_profile = Profile::from_file(&String::from("./tests/samples/sample-00-profile"));
new_profile.pre_generate();
// generate some data
println!("The generated name is {:?}", new_profile.generate());
}
If you are using CSV files of data samples, then you may wish to use a Data Sample Parser.
The data_sample_parser
module provides functionality to read sample data, parse and analyze it, so that test data can be generated based on profiles.
extern crate test_data_generation;
use test_data_generation::data_sample_parser::DataSampleParser;
fn main() {
let mut dsp = DataSampleParser::new();
dsp.analyze_csv_file(&String::from("./tests/samples/sample-01.csv"), None).unwrap();
println!("My new name is {} {}", dsp.generate_record()[0], dsp.generate_record()[1]);
// My new name is Abbon Aady
}
You can also save the Data Sample Parser (the algorithm) as an archive file (json) ...
extern crate test_data_generation;
use test_data_generation::data_sample_parser::DataSampleParser;
fn main() {
let mut dsp = DataSampleParser::new();
dsp.analyze_csv_file(&String::from("./tests/samples/sample-01.csv"), None).unwrap();
assert_eq!(dsp.save(&String::from("./tests/samples/sample-01-dsp")).unwrap(), true);
}
and use it at a later time.
extern crate test_data_generation;
use test_data_generation::data_sample_parser::DataSampleParser;
fn main() {
let mut dsp = DataSampleParser::from_file(&String::from("./tests/samples/sample-01-dsp"));
println!("Sample data is {:?}", dsp.generate_record()[0]);
}
You can also generate a new csv file based on the data sample provided.
extern crate test_data_generation;
use test_data_generation::data_sample_parser::DataSampleParser;
fn main() {
let mut dsp = DataSampleParser::new();
dsp.analyze_csv_file(&String::from("./tests/samples/sample-01.csv"), None).unwrap();
dsp.generate_csv(100, &String::from("./tests/samples/generated-01.csv"), None).unwrap();
}
This library comes with the following examples. To run the examples.
cargo run --example 01_demo
cargo run --example 02_demo
cargo run --example 03_demo
Details on how to contribute can be found in the CONTRIBUTING file.
test-data-generation is primarily distributed under the terms of the Apache License (Version 2.0).
See LICENSE-APACHE "Apache License for details.