Streamlining Report Automation at Kantar North America

From manual reporting bottlenecks to automated workflows: Kantar uses Mammoth cut data prep by 60%, standardize 85% of outputs, and deliver insights 75% faster.
Data Preparation

60%

Less manual work
Automated harmonization of sources
Standardization

85%

Unified reports
Powered by reusable workflows
Speed to Insight

75%

Faster analysis
From ingestion to delivery

About

Company size

Large-sized

Headquarters

United States

Industry

Market Research & Consulting

Use Cases

Report Automation, Data Standardization, Workflow Optimization

The Company

About Kantar
Operating across industries, Kantar North America is a premier market research and consulting firm known for delivering data-driven insights and actionable recommendations. Focused on quality and innovation, Kantar continuously evolves its methodologies by integrating advanced technologies to improve research delivery and client satisfaction.

The Challenge

Enhancing Efficiency in Report Generation
Kantar faced challenges in producing standardized reports efficiently. The manual process of creating highly templated reports was time-consuming and prone to inconsistencies, impacting the speed and reliability of insights delivery to clients. There was a need for an automated solution to streamline report generation and ensure consistency across all outputs.

Solution

Implementing Automated Reporting Workflows
With Mammoth, Kantar North America was able to:

Outcome

Achieving Operational Efficiency

The Mammoth Advantage

Why Mammoth?

“Mammoth's platform has significantly enhanced our reporting processes, delivering consistency and efficiency across our operations.”

— Director of Data Design, Kantar North America

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