Revenue growth management (RGM) and trade promotion optimization (TPO) are evolving rapidly, driven by shifting consumer behaviors, retailer dominance, and the rise of artificial intelligence (AI). To remain competitive, consumer goods companies must address persistent challenges while leveraging AI to unlock new opportunities for growth.
The Challenges
The CPG industry has always been hyper-competitive and the addition of ecommerce and direct channels has only made the business more complicated. Powerful retailers like Walmart often set market anchors, dictating pricing norms and limiting manufacturers’ ability to execute their strategies effectively. This imbalance creates significant challenges for brands trying to maintain control over their pricing and promotional tactics.
In addition, the gap between gathering insights and implementing strategies gives competitors a window to react and counteract. This delay reduces the impact of data-driven decisions, making it harder to stay ahead in dynamic markets. Data from multiple sources — such as sales reports, promotions, and loyalty programs — often remains fragmented and poorly integrated. The lack of cohesion complicates analysis, leading to incomplete or inaccurate insights.
Last, relationships with buyers and unpredictable competitive moves often override analytics-based recommendations. These human elements introduce variability that can derail even the most well-planned strategies.
How AI Can Help
AI offers transformative potential for RGM and TPO by addressing these persistent pain points:
- Faster Scenario Planning: AI simulates millions of pricing or promotional scenarios in seconds, a process that would take humans weeks or months. This speed allows businesses to adapt quickly to market changes and test strategies more effectively.
- Improved Micro-Targeting: By analyzing loyalty data and shopper behaviors, AI enables brands to create highly customized offers for specific customer segments. This precision increases promotional effectiveness while reducing wasted spend on irrelevant audiences.
- Enhanced Baseline Analysis: AI provides deeper insights into brand health drivers beyond short-term promotional activities, such as consumer sentiment or competitive positioning. These insights help organizations focus on long-term performance rather than reactive tactics.
- Democratized Insights: AI tools make advanced data-driven recommendations accessible across all levels of an organization, not just specialized teams. This broader access empowers more employees to contribute meaningfully to strategic decision-making.
- Optimal Reporting Structures: RGM teams often face ambiguity about whether they should report to sales or finance departments, leading to conflicting priorities. A clear reporting structure is essential to ensure alignment on goals and accountability.
- Blended Skillsets: Successful AI adoption requires teams that combine technical expertise in data science with deep industry knowledge. This mix ensures that AI outputs are interpreted correctly and translated into actionable strategies.
- Human Filter: While AI generates sophisticated insights, human judgment is critical for translating them into realistic plans that account for market dynamics. Without this human quality control, organizations risk over-reliance on algorithms that may miss contextual nuances.
- Retailer-Driven Pricing: As algorithms become more influential in pricing decisions, retailers may gain even greater control over pricing dynamics. Manufacturers must prepare for this shift while finding ways to retain influence over their own pricing strategies.
Best Practices for AI Integration
To maximize the benefits of AI in RGM and TPO, businesses should follow these best practices:
- Invest in Training: Before implementing AI tools, invest in educating teams about how these technologies work and their potential applications. This foundational understanding ensures smoother adoption and minimizes resistance.
- Maintain a Holistic View: Avoid using AI narrowly or focusing solely on isolated metrics; instead, consider its impact across the entire market landscape. A holistic approach ensures that decisions align with broader business objectives.
- Build Diverse Teams: Staff your RGM teams with a mix of technical experts who understand data science and industry veterans who bring practical experience. This diversity ensures balanced decision-making that combines technical precision with market realism.
- Think Long-Term: View AI as a long-term investment in future capabilities rather than a short-term cost-cutting measure. Organizations that prioritize innovation will be better positioned to sustain growth in an increasingly competitive environment.
- Learn from Leaders: Study successful implementations of AI by industry leaders to identify best practices and avoid common pitfalls. Leveraging external insights can save time and resources while accelerating progress.
The Bottom Line
AI is not a silver bullet but a powerful enabler for addressing RGM challenges like execution difficulties, siloed data, and latency issues. By adopting best practices and aligning organizational structures with AI capabilities, businesses can unlock actionable insights that drive sustainable growth in an increasingly competitive landscape.
Source: https://consumergoods.com/