1 / 2

Develop Mock Data Needed for On-Demand Test

HCL OneTest Data generates mock data for testing environments and generates synthetic data sets without the risk of data leaks or privacy issues, all on demand. With a powerful built-in API, testers can generate data in a number of different ways including the use of predefined datasets, data generation rules, or with custom data generation scripts for any environment.<br><br>Here you can check how to do so<br>https://www.hcltechsw.com/wps/wcm/connect/7f39ff1f-8041-452c-9d3d-8759df68a98e/HCL OneTest Data.pdf?MOD=AJPERES&CONVERT_TO=url&CACHEID=ROOTWORKSPACE-7f39ff1f-8041-452c-9d3d-8759df68a98e-nkHFQE4

hcltechsw
Télécharger la présentation

Develop Mock Data Needed for On-Demand Test

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. HCL OneTest Data DEVELOPING THE DATA NEEDED FOR TESTING ON DEMAND Making sure the right data is on hand for testing can be demanding. A traditional approach replicates existing data from production systems and uses it in test environments. With GDPR and other privacy regulations in effect, this type of testing has become much riskier, especially where personal data is concerned. There are also many occasions where there is not yet a production system, and so no production data to use. HCL OneTest Data generates mock data for testing environments and generates synthetic data sets without the risk of data leaks or privacy issues, all on demand. With a powerful built-in API, testers can generate data in a number of different ways including the use of predefined datasets, data generation rules, or with custom data generation scripts for any environment. DESIGN CUSTOM DATA MODELS GENERATE SYNTHETIC DATA IMPORT PRE-DEFINED DATA MODELS

  2. Benefits Reduces Data Privacy Risks Avoids using real data and violation of data privacy Increases Testing Efficiency Provides predefined data sets and real-time data generation for improved efficiency and accuracy Provides Comprehensive Test Data Creates all the volume and diversity of data required to cover any test scenario Avoids Production System Intrusion Removes the need to extract real and potentially sensitive information Capabilities Features an Open Modeling Mechanism Provides flexible methods to model the data you need including regular expressions, weighting and rules Easily Seeds Sample Data Uses Excel or CSV reference files to upload sample data Invokes Data Generation in the CI/CD Pipeline Uses HCL UrbanCode Deploy or Jenkins for real-time automated data generation Powerfully Built-in API Explores, models, and generates data through REST- based APIs Publishes Data to Relational Databases Includes all databases that support JDBC Flexible Generation File Formats Produces data in CSV, Excel, JSON, XML, text and binary formats /// hcltechsw.com/onetest

More Related