Matrix: Optimize Agile Development with AI & ML

Matrix is our cutting-edge platform designed to track and optimize the productivity and quality of agile software development. Developed internally at Ness, Matrix is now available to help clients manage their development teams more effectively, identify potential issues early, and enhance overall team performance. 

Financial-Services_A-Post-trade-Provider-Adds-FRTB-Data-Service-to-Optimize-Balance-Sheet-Capital
years of experience across industries
0 +
local language support
24 /7
projects implemented
500 +

Smart and efficient agile development management

Using specific data and statistics, Matrix enables quick and easy evaluation of the effectiveness of agile processes. With built-in machine learning and artificial intelligence features, Matrix can identify performance and quality anomalies. This allows managers to manage teams more effectively and detect potential problems before they arise. 

We developed it internally at Ness to monitor and improve the efficiency of our development teams. We are now offering it to our existing and new clients. 

A set of indicators and recommended actions for greater efficiency in agile development management.
Data security.
Fast implementation.
Compatibility with standard development systems.

What does it operate on?

Matrix is hosted in the AWS cloud and integrates with individual customer systems such as Jira, GitHub, or SonarQube. It does not download source code, Jira ticket names, or labels. Instead, it tracks: 

  • Individual team IDs 
  • Ticket metrics 
  • Bug counts 
  • Commits 

 

Data is not stored long-term, only the resulting metrics. The entire solution is certified for security and complies with GDPR. 

GroupenPhoto&MartinSilvicka_2023-DSC03007 (1)

Generative artificial intelligence increases software engineering productivity by 70%

Read the study by Zinnov and Ness

The study measures the real positive impacts on productivity brought about by the deployment of GenAI at the engineering level. It helps managers understand the technological and psychological factors affecting productivity in engineering and the long-term impacts on the entire business and organizational structure.

For more detailed information, download the full study in English or Czech.
By submitting the form, you agree to our privacy policy.
What are the main findings?
Intelligent-Test-Automation

How have we helped our clients?

Michal Bulánek

Delivery Director

Don't know where to start?

We will identify your key transformation areas for you. 

During the free two-day analysis, we will develop a set of recommendations for implementation. 

Read about interesting IT news