TechWish Builds Platform to Measure ROI from Enterprise AI Adoption

Platform validated at major Fortune 500 energy company, establishing 20x productivity ROI and 44% increase in Copilot utilization

Apr. 2, 2026 at 11:19pm

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TechWish, a global technology solutions company, has announced the availability of its AI Adoption Analytics Platform, a purpose-built solution that helps large enterprises measure, prove, and optimize the ROI from their AI investments. The platform was deployed at a Fortune 500 energy company, where it provided the necessary measurable insights into AI adoption and productivity outcomes, leading to an estimated 20x productivity ROI and a 44% increase in active AI utilization within 90 days.

Why it matters

As enterprise AI investments continue to accelerate, the gap between deployment activity and documented business value remains a persistent challenge. The TechWish platform addresses this issue by providing a structured measurement layer to connect AI usage patterns to business outcomes, enabling organizations to justify their AI investments and make more informed decisions about their AI adoption strategies.

The details

The AI Adoption Analytics Platform combines the usage signals from AI tools with organizational context data to create a comprehensive and actionable view of enterprise AI adoption. Key capabilities include role-based adoption visibility, cross-platform adoption tracking, enablement measurement, productivity and value indicators, and governance-aligned design. The platform was validated at a Fortune 500 energy company, where it helped the organization establish an estimated 20x productivity ROI and a 44% increase in active Copilot utilization within 90 days.

  • The platform was deployed at the Fortune 500 energy company six months after the company had rolled out Microsoft Copilot across thousands of employees.
  • Within 90 days of the platform's deployment, the energy company saw a 44% increase in active AI utilization.

The players

TechWish

A global technology solutions company specializing in AI, cloud, and analytics that has developed the AI Adoption Analytics Platform.

Fortune 500 energy company

The company that deployed the TechWish platform to measure the ROI from its AI investments, including its deployment of Microsoft Copilot.

MBB management consulting firm

The management consulting firm that partnered with TechWish to implement the platform at the Fortune 500 energy company.

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What they’re saying

“The challenge is not in deploying AI tools; organizations have largely addressed that. The more persistent challenge is that once deployed, there is no reliable mechanism to connect usage patterns to business outcomes. That is the gap our platform is designed to address.”

— Vishnu Reddy, CEO, TechWish

“MBB and other management consulting firms are making substantial AI recommendations to their clients every day. When those clients ask six months into a deployment for a credible, evidence-based account of what their investment has delivered, the firms need a reliable answer. Our platform is built to provide exactly that.”

— Vishnu Reddy, CEO, TechWish

What’s next

TechWish is positioning its AI Adoption Analytics Platform as a solution for both enterprises and the MBB and management consulting firms that advise them on AI deployment and transformation. The company aims to support more informed conversations around evidence-based AI adoption maturity, enablement, and value realization.

The takeaway

As enterprise AI investments continue to grow, the ability to measure and demonstrate the ROI from these investments has become a critical need. The TechWish platform addresses this challenge by providing a structured approach to connect AI usage patterns to business outcomes, enabling organizations to justify their AI investments and make more informed decisions about their AI adoption strategies.