Predictive analytics is a concept that has been widely applied across various industry verticals and businesses to take informed business decisions. It uses statistical algorithms and machine learning to extract data and predict future outcomes. This is a data-driven method used to predict vulnerabilities in testing processes and determine future outcomes. QA teams can take proactive decisions with the help of actionable insights to achieve the desired results in the projected time. The predictive analysis leverages statistical algorithms that aid in identifying patterns in data and predicts how data would behave in the future.
Predictive analytic utilizes the use of multiple algorithms for data processing. It includes:
- Machine Learning
- Regression Algorithms
- Time Series Analysis
Why Consider Predictive Analytics for Software Testing?
Since organizations are embracing digital transformation rapidly, the quest for quality assurance increases. While streamlining business operations and leveraging new technologies, organizations are becoming more data-driven to provide better software testing services. In the current competitive age, organizations are looking for ways to identify and resolve bugs at an early stage of the software development process. They need to ensure quality while making it to the market in time, with cost-effective solutions. To meet the currently rising expectations, it has become crucial for enterprises to adopt QA testing and identify failures even before the apps are sent into production. QA engineers are expected to make crucial business decisions at a rapid pace and to achieve this, they need to leverage defect data, feedback and test results.
How Does Predictive Analytics Reduce Time-To-Market?
Predictive Analytics utilizes multiple algorithms that are used to process data, namely, time series analysis, regression algorithms, and machine learning. QA and testing should be managed efficiently to deliver the expected results. It helps in streamlining the business processes and smooth software testing activities.
It is imperative to realize that predictive analytics is not a single-time activity. The process needs to be repeated to analyze the data generated in the SDLC. Predictive analytics add value to business at the end of the development process. It requires a huge amount of data churned to deliver quality results. Quality assurance plays a crucial role in delivering stringent solutions that help in developing a strong customer base.
Build A Customer-Centric Process
It is important to understand the market scenario to develop the right applications for the users. When these analytics are applied in QA, it helps in measuring user’s feedback on the product and its applications. With a customer-centric QA process, it is more convenient to address the focus areas including the performance, functionality and security areas of the software applications.
Boosts the Efficiency of Testers
QA teams work with different software testing tools, monitoring app log files and generating test scripts to achieve testing solutions. It also helps in early detection of potential failures and defects. Predictive analytics boosts this process and enables QA and testing teams to take preventive action and bring down potential threats amongst users of the application.
Well, businesses need to be more proactive by making informed decisions and help their teams with proven data to utilize in their testing processes. When enterprises hire software testing services, they ensure they utilize predictive analytics to help them make the right decisions for building frameworks to test software applications.