Household Case Study
The team faced a growing perception gap. Despite leading cleaning performance, consumers still viewed the brand as too premium for everyday use, while private labels were winning on price and familiarity, and competitive brands were winning with strong brand recognition.
Extracting meaningful insights from millions of online reviews, retail mentions, and social conversations felt impossible.
Each US segment of the market spoke a different language: Costco shoppers talked about “eco value,” Midwest families about “family reliability,” and Southern consumers about “hosting.”
Understanding what truly drove brand choice across these groups would have required hundreds of analyst hours and weeks of manual synthesis. Something a very lean shopper marketing team did not have.
Challenges
Solution
Brand translated raw text data into clear, actionable business direction:
+25 % engagement in regional campaigns using family-centric language.
+10 % increase in trade-up behavior from Basic → Advanced in digital channels.
Four localized playbooks tailored to each U.S. region’s priorities — from eco-premium in the West to hosting excellence in the South.
A single creative platform that now guides global messaging.
AI-based text synthesis reduced analysis time from weeks to days, enabling the brand to move from observation to action faster than ever before.
Results
This global dishwashing brand is known for pioneering automatic dishwasher care and performance innovation.
With products sold in over 40 countries, it serves millions of households daily through its core range is designed for reliability, convenience, and sustainability.
The brand’s shopper insights team leverages AI tools to uncover emerging trends, regional differences, and emotional drivers that shape consumer loyalty.
By embedding large-scale text analysis into its insights workflow, it has built a real-time understanding of consumer sentiment, enabling smarter decision-making in product design, pricing, and communication.
About
The brand had a strong product portfolio but limited clarity on why certain products resonated differently across markets.
Traditional research methods — surveys, focus groups, manual reviews — couldn’t keep pace with the scale and diversity of consumer feedback.
“We knew consumers loved our cleaning power,” shared one team member, “but we didn’t know how regional attitudes toward value, hosting, or eco-behavior were shaping purchase decisions.”
The team set out to modernize its insight generation process — to listen, decode, and act in real time.
Before AI-Driven Insights
The brand’s insights group explored multiple AI solutions before selecting a system that could handle retailer-specific and regional text complexity with high contextual accuracy.
“What stood out was not just the precision,” said a data strategist,
“but how easily we could link language patterns back to business levers — price, product tier, and promotion.”
The AI model automatically recognized product mentions and surfaced key emotion clusters like trust, care, clean, and family.
Outputs were integrated directly into internal dashboards, enabling immediate collaboration across brand and shopper insights teams.
The brand now runs continuous AI text analysis across key markets — combining consumer, retailer, and social data into a single intelligence layer.
The findings power:
Localized media planning (“Smarter Living in the Midwest” → family savings)
Retail partner briefs with region-specific value language
Product tier optimization tied to usage behavior and sentiment trends
“We used to spend weeks trying to triangulate shopper insights,” said a senior manager.“Now, we have near-real-time understanding of what matters most — and can adapt campaigns before trends cool off.”
“AI turned what used to be hundreds of hours of manual reading into clarity we could act on in days.”
— Shopper Marketer
The brand is now expanding AI-driven text analysis beyond dishwashing into broader home-care categories.
The next phase will integrate these insights into predictive models that anticipate shifts in household needs — from sustainability expectations to family-centric product features.
By reimagining how consumer data is read, the brand continues to transform unstructured conversation into smarter, faster, more human-centered marketing.