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Solving the 5 Most Pressing Pricing & RGM Pain Points for Mid-Market CPGs: Your Curated Resource Library
Mid-market CPG brands are grappling with margin pressures, ineffective promotions, and fragmented data that hinder profitable growth. Without a structured approach to Pricing & Revenue Growth Management (RGM), many rely on outdated tools and reactive strategies, leading to revenue leakage and missed opportunities.
The Revology CPG Resource Library provides curated insights, frameworks, and advanced analytics tools to help brands optimize pricing, improve trade spend efficiency, and drive sustainable profitability—empowering teams to take control of their RGM strategy with data-driven decision-making.
Pricing Gone Wild: Lessons from ChatGPT, X (Twitter), and the High Cost of HiPPO Decisions
Pricing decisions are often swayed by the "HiPPO" effect—Highest Paid Person's Opinion—resulting in gut-based calls rather than data-driven strategies. High-profile examples, like Sam Altman's $200 ChatGPT Pro subscription and Elon Musk's $8 Twitter checkmark, illustrate the risks of ignoring robust pricing frameworks. To maximize profitability, companies must treat pricing as a strategic function supported by data, governance, and cross-functional collaboration.