QA testing accelerator

Tx-SmarTest

An AI-Enabled Comprehensive Platform
to Boost Software Quality

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Tx-SmarTest is an AI-enabled comprehensive platform that systematically caters to faster releases enabled with DevOps CI/CD processes. It helps boost the software quality through production enabled by combining AI, ML, Deep Learning, and neural network algorithms. This unique component works with a proper flow and helps identify edge test cases to be automated.

Key Benefits of Using
Tx-SmarTest
  • Accelerates automation through code generation 
  • Helps discover impacts by using data from codebase & test assets 
  • Analyses and finds system errors with intelligent bug tracking 
  • Helps with seamless migration of key assets and automation scripts 
  • Ensures faster decision-making with intuitive reports for all levels 
Gartner TestingXperts
Features of Tx-SmarTest
  • Comprehensive platform consisting of four major elements: Accelerate, Migrator, Analyzer, and Predictor
  • An AI-enabled platform that systematically caters to faster results enabled along with DevOps CI/CD processes
  • Helps boost the software quality through production enabled by combining AI, ML, Deep Learning, and Neural Network Algorithms
  • Integrated with DevOps CI/CD, Test & Defect Management Tools, and with Tx-HyperAutomate frameworks
NLP and Conversational

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    Tx-SmarTest Components

    • Tx-SmarTest Accelerator
    • Tx-SmarTest Migrator
    • Tx-SmarTest Analyzer
    • Tx-SmarTest Predictor

    This tool component helps to accelerate automation through code generation. This unique component works with a proper flow. It helps document test cases to be automated, create an automation skeleton to jumpstart automation, increase test coverage, and reduce defect slippage.

    Tx-SmarTest Accelerator addresses:

    • Expedites functional testing and increases test coverage by creating a few automated scenarios on the fly.
    • This component uses UiPath Task Mining components wherein business users use the applications in test/live and capture all activities/paths they use to skim through the applications.
    • All the traces a user goes through are captured and sent to an integrated UiPath component, “AI Center,” wherein prebuilt ML algorithms are applied to find unique and less-used scenarios.

    As the transition of test automation technologies is happening and organizations are looking to replace outdated automation tools, migrating existing test assets from old automation tools to new tools becomes an obvious need. This solution helps migrate scripts from Selenium/UFT to UiPath scripts and helps migrate other test assets to newer tools.

    Tx-SmarTest Migrator helps to:

    • Analyze – Automation evaluation, scope validation, migration complexity
    • Implement – Entity migration, script migration, and retains scripts and executes ‘AS IS’

    Test Impact Analysis (TIA) is a technique used in software testing to determine the potential impact of changes made to the software on existing test suites. The primary goal of TIA is to optimize the testing process by identifying the subset of tests that need to be re-executed after a code change, rather than running the entire test suite.

    Tx-SmarTest Analyzer Helps:

    • Run the appropriate tests only to validate the new or changed code.
    • Collect information about which code is exercised.
    • ML algorithms study and model the relationships between tests and the underlying code.

    This component uses a machine learning model to predict defects by analyzing historical data collected through various sources. This includes version control systems, issue tracking systems, code repositories, and historical defect databases.

    It helps with the predictions by:

    • Collecting the relevant data from various sources, including version control systems, issue tracking systems, code repositories, result logs, and historical defect databases.
    • Undergoing feature extraction involves transforming raw data into meaningful metrics.
    • Learning patterns and relationships between the input features and the occurrence of defects.

    Our Differentiators

    Industry Thought Leadership

    100+ certified resources having expertise in Low-Code and No-Code testing services.

    Reporting & Analytics

    Successfully delivered Low Code Testing projects across domains like Banking, FinTech, Restaurant chain and food, media and printing and other sectors.

    software testing tools and accelerators

    Low Code based IP Accelerators – Tx-SmarTest, Tx-HyperAutomate, Tx-Capture and more.

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