Whatโs next for retail in 2025: AI-powered analytics trends and BI innovation
Retail and consumer packaged goods (CPG) companies are reaping the benefits of AI-powered analyticsโfrom faster reporting to governed, trusted insights. The next step? Empowering every team, manager, and frontline worker with self-service analytics capabilities.ย
Fast decisions, faster innovation: retailโs top AI priority in 2025
What are retail enterprises looking for in AI-powered analytics?ย ย
According to the Retail & CPG In Focus Report, 54% of leaders rank faster decision-making and innovation as their top expected outcome from AI-powered analyticsโoutranking even cost savings and productivity.ย ย
This focus highlights a pivotal shift: companies arenโt just looking for numbersโthey are seeking long-term strategic advantage.ย ย
15% of organizations have already deployed AI-powered analytics in at least one departmentย
8% are operating on AI-powered insights across multiple use cases and business unitsย
But the focus isnโt solely on results. Retail and CPG companies are increasing AI access and adoption across the organization, so every employee can surface, analyze, and act on trusted dataโwithout technical roadblocks or IT bottlenecks.ย
How AI is used in retail in 2025
Businesses are integrating AI into day-to-day workflows to accelerate operations, reduce time to decision, and improve responsiveness. Hereโs how AI-powered analytics benefit both data professionals and general users.ย ย
Supporting data teams with Automation
According to the report,ย organizations are using AI to automate critical processes such as:
Data preparationย
Identification of anomaliesย
Threat detectionย
Dashboard developmentย
This shift frees data teams to focus on high-value strategy while ensuring insights are consistent, accurate, and scalable. The result? Improved security, governed data, and faster decisions.
Empowering business users with clear insights
Self-service analytics is on the rise. AI-powered self-service analytics tools allow employees with limited technical skills to ask data questions in natural language and receive visual answers automatically. This includes processes like:ย ย
Assortment optimizationย
Logistics planningย
Content creation assistanceย
Social listeningย
AI enables business users to get fast, accurate insights tailored to their projects.ย
Furthermore, it reduces overreliance on data teams and enables faster decisions across departments.ย ย
How retailers plan to expand AI access in 2025
The Retail & CPG In Focus Report highlights that only 9% of employees in most organizations currently use BI tools beyond spreadsheets.ย ย
However, that number is expected to change fast: over 27% of retail organizations plan to give more than one-fifth of their workforce direct access to AI-powered analytics within the next year.ย ย
As retailers continue to integrate natural language interfaces or embedded analytics, the front linesโstore associates, plant operators, logistics coordinatorsโare starting to adopt it.ย
To support this adoption, organizations are investing in:ย
Natural language tools that simplify data explorationย
Embedded analytics within tools employees already use (Microsoft Office, Slack, POS systems)ย
automated visualizations that replace the need for manual or custom dashboardsย
AI literacy and change management programs to empower workforcesย
The end goal: to remove friction, broaden access, and make data part of everyday decision-makingโfor everyone.ย ย
Retailโs new star: AI bots
AI-powered analytics is no longer confined to dashboards. ย
Many retailers are now deploying AI bots that operate directly within daily tools and workflows.ย
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These bots can:ย
Summarize key metrics in natural languageย
Alert teams to demand shifts or anomaliesย
Recommend actions based on sales or inventory trendsย
Respond to ad hoc questions using governed dataย

Source: Retail & CPG In Focus Report
The report shows a growing trend toward deployment:ย
27% of companies are piloting AI bots and planning production this yearย
15% have deployed bots for specific functionsย
4% use fully operational GenAI bots across departmentsย
Essentially, AI bots mark a shift from passive dashboards to active, contextual insight deliveryโdriving faster, governed decisions with fewer bottlenecks.ย
Whatโs next for AI in retail?
Retailers are no longer questioning whether AI works. They are focused on scaling it across teams, time zones, and regions. This requires rethinking the analytics experience: beyond dashboards, into the everyday workflows of every employee.ย
But adoption alone is not enough. The Retail and Consumer Packaged Goods in Focus Report highlights why strong governance, semantic consistency, and self-service analytics are critical to long-term success.ย ย
Enterprises that prioritize these areas will not only scale AIโthey will compete with speed, trust, and measurable business impact.ย