An End To End approach for Agile Automation using Hyper Testing
Automation
I
Gaurav
I
Feb 18, 2021

As the software keeps growing, the testing process also becomes quite challenging. Winning and losing the business depends on the quality and time taken to deliver what the customer needs. Many organisation’s adopted agile and Devops methodologies to embrace variation whereas the traditional testing process still remains slack and not able to act in accordance with changes. To address these complexities and challenges, Quality Engineering experts have come up with Hyper-Testing.
Hyper-Testing: All Inclusive
Hyper testing is an agile approach towards executing a full-cycle test strategy that combines a set of advanced tools and techniques to enable testing at digital speed and scale within shorter timelines while optimizing cost and efforts.
In simple terms, the focus is to design and execute a full-cycle test strategy that covers end-to-end testing of all application layers as well as the non-functional requirements and automates QA process to ensure maximum test coverage and quality resulting in lower TCO and higher ROI.
What Hyper-Testing Offers?
Hyper-Testing incorporates 3 key aspects that addresses a host of processes, practices, tools and reusable assets to drive agile testing at greater speed and cost efficiency. The following are the various dimensions of automated testing comprising all aspects of enhancing development:
Incorporating a solid set of Testing Frameworks and vital tools integrating Cloud based Automation and Continuous Testing to sustain the end-to-end product- development- cycle.
Augmenting testing in every phase of the application and technology stack, to ensure bug-free and uninterrupted performance of the product across various domains and platforms
Deploying numerous process methodologies to enhance the digital customer such as
Verify requirements
Validate functional and non-functional end-to-end testing requirements
Validate end-to-end system integration testing
Hyper-Testing automation using AI
The impacts of implementing AI with test automation results are:
Self-healing scripts to identify changes in the application
Analysis of the test automation results
Defect Analytics on the severity of the bugs
Auto Update of defects in defect tracking tool
Build Analytics on the previous runs
Live Streaming of the test results with Intelligence
Categories
Accessibility Testing
Agile
Agile Development
Agile Testing
Analytics and Insights
API Testing
Appium
Automation
Automation Testing
Automation Testing
Awards & Recognitions
Big Data Testing
Blockchain Testing
Business
Business Strategy
Cloud Computing
Cloud Testing>Cloud Computing
Cloud Testing>Cloud Management
Cloud Testing>Cloud Security
Cloud Testing>Cloud Technology
Cloud Testing>In-House Testing
Continuous Delivery (CD)
Continuous Integration (CI)
Cryptocurrency
Customer Relationship Management Software
Cyber Security
Data Quality Assurance
Detox
DevOps
Digital Transformation
Economic Impact
Exploratory Testing>Structured Testing
Financial Technology (FinTech)
Fintech
Information Security
Iot Testing
IT Industry
IT Infrastructure
Microservices Architecture
Microservices Testing
Mobile Application Testing
Mobile Testing
Network Security
Network Security Testing
Pandemic Resilience
Penetration Testing
Project Management
Quality Assurance
Regression Testing
Risk Management
Risk-Based Testing
Salesforce Testing
Sanity Testing
Security Auditing
Security Testing
Software Development
Software Testing
Team
Technology
Test Automation
Test Management
Test Planning
Testing Methodologies
Uncategorized
Vulnerability Assessment
Web Application Testing
Work-Life Balance
/ blog /