Artificial Intelligence 

Productivity accelerator. Innovation catalyst. Creative collaborator. Whatever your vision for AI, Unisys provides the solutions, expertise and tools to realize the full business potential of your organization.
Explore

Cybersecurity

Unisys delivers business solutions with built-in security to defend your digital assets, counter threats, earn customer confidence, and meet compliance standards.
Read more

Consulting

The nature of work is changing. Let's evolve your business together. Future-proof your organization with consulting services from Unisys and advance as a digital-first entity.
Explore

Client Stories

Explore videos and stories where Unisys has helped businesses and governments improve the lives of their customers and citizens.
Explore

Research

Embark on a journey toward a resilient future with access to Unisys' comprehensive research, developed in collaboration with top industry analysts and research firms.
Explore

Resource Center

Find, share and explore assets in support of your key operational objectives.
Explore

Careers

Curiosity, creativity, and a constant desire to improve. Our associates shape tomorrow by going beyond expertise to bring solutions to life.
Explore

Investor Relations

We're a global technology solutions company that's dedicated to driving progress for the world's leading organizations.
Explore

Partners

We collaborate with an ecosystem of partners to provide our clients with cutting-edge products and services in many of the largest industries in the world.
Explore

Language Selection

Your selected language is currently:

English

CIO: When it comes to AI, not all data is created equal

January 14, 2026

Commentary from Manju Naglapur (CA&I)

Manju Naglapur, senior vice president and general manager of Cloud, Applications & Infrastructure at Unisys, says while Gen AI is emerging as a transformative force, merely utilizing top-tier AI models and tools is insufficient. True competitive advantage stems from the ability to train and customize individual models or supply them with distinctive context, which necessitates access to data. Naglapur agrees that the existence of such extensive data does not necessarily mean it is good data, saying, “It’s so easy to point your models to any data that’s available. For the past three years, we’ve seen this mistake made over and over again. The old adage garbage in, garbage out still holds true.”