Skip to Content
Data Labeling Services POV banner


AI solutions combined with technological and human ingenuity lead to faster, more accurate outcomes

The rate at which organizations are developing AI solutions is growing exponentially. So is the need for high-quality training data. Gartner research has found that there’s an urgency of leveraging AI for business transformation, but 50% of IT leaders struggle to move their AI projects past proof of concept – one reason being a lack of data necessary to train AI solutions.

This paper discusses the challenges of data labeling, and how organizations need to pursue the best – rather than just the fastest – data-labeling service that takes into consideration quality, flexibility, scalability, and cost of data labeling.

About authors

Vijay Bansal

Director – Global Head – Data Labeling Services, Capgemini Business Services
Vijay has extensive experience working in map production, geo-spatial data production, management, data labeling and annotation, and validation roles. In these positions, he aids machine learning and technical support initiatives for Sales teams, coordinates between clients, and leads project teams in a back-office capacity.

    Data labeling services

    Deliver data at scale by leveraging frictionless end-to-end data labeling operations