A photo taken on January 2, 2025 shows the letters AI for Artificial Intelligence on a laptop screen … [+]
Retail’s AI revolution is entering its third wave. After predictive AI and generative AI, autonomous agents capable of completing shopping tasks without human intervention are emerging as the next frontier. Salesforce’s latest industry research reveals that 32% of consumer goods companies have already fully implemented generative AI, with digital commerce as a primary focus area. As the technology evolves from answering questions to taking action, brands and retailers face urgent decisions about how to adapt their digital presence, product content, and media strategies.
The transition from generative AI to agentic AI represents a fundamental shift in capabilities. While chatbots and assistants like Amazon’s Rufus can answer questions about products, autonomous agents can complete entire shopping journeys—from discovery to purchase—with minimal human intervention.
AI’s Evolution In The Consumer Goods Industry
According to the joint Salesforce and Accenture “Industry Insights Report: AI Edition,” we’re witnessing a clear progression in AI capability.
Industry Insights Report: AI Edition (2025)
Michelle Grant, Director of Strategy and Insights for Retail and Consumer Goods at Salesforce, offers a helpful distinction between traditional automation that marketers are likely familiar with and newer AI approaches:
Traditional Automation follows predefined steps, but it’s not artificial intelligence nor is it agentic. For example, if someone opens an email, they’re automatically added to ‘Group A’ and, if not, a follow-up email is sent. It doesn’t analyze data, make decisions, or learn over time–it’s rules-based automation.
Predictive AI (Wave 1) uses historical and statistical data models to predict the future. For example, predictive AI uses machine learning algorithms to analyze a shopper’s historical engagement data and predict the best time to send an email.
Generative AI (Wave 2) is used for creating new content using LLMs and data. Examples include summaries, text generators, and image generators based on prompts. While it can produce content, it doesn’t independently make decisions or take action.
Agentic AI (Wave 3) uses machine learning and natural language processing to autonomously get work done, without requiring human input.
Grant explains that the key difference here is that agentic AI can take action based on its inputs to do things like send a generated email, develop campaign strategies from its insights, or add products to carts based on shopper preferences.
For retailers and brands, this progression isn’t merely academic—it’s reshaping how consumers discover and purchase products. Consumer goods companies are already identifying their most valuable AI agent use cases, with “helping shoppers find products on websites or other digital platforms” ranking third in priority.
From Answering Questions to Taking Action
The distinction between generative and agentic AI becomes clearer when examining real-world implementations. Saks, for example, launched Agentforce (Salesforce’s agentic AI platform) in September 2024 to enhance its customer experience.
Within its Saks Chatbot, Agentforce analyzes customer interactions and determines the next best action based on the context, while automating and streamlining tasks and inquiries.
A video demo of Saks’ Agentforce integration shows an SMS interaction between a customer and Saks’ AI agent, whereby the customer shares some photos of an outfit inspiration and Saks’ agent returns with similar items. It knows her usual size, just as a personal sylist would, and helps to coordinate an order and later size swap.
SharkNinja, a global product design and technology company behind the Shark and Ninja brands, is also implementing Agentforce to enable SharkNinja to easily build and deploy AI agents that can autonomously take action across any business function, the company says. With Agentforce, SharkNinja will have an always-on, digital workforce available 24/7 to guide customers through the buying process, answer product questions, troubleshoot issues, and manage returns.
Transforming Retail Media With Agentic AI
For retail media networks, the rise of AI shopping agents creates both challenges and opportunities. Currently, retail media spending is heavily skewed toward lower-funnel conversions—in a recent analysis I covered on retail media budgets, over 71% of spending occurs in sponsored products or similar bottom-funnel placements.
But what happens when AI agents, not humans, are making or influencing purchasing decisions? The traditional emphasis on eye-catching creative and emotional triggers may give way to more structured, attribute-based approaches that persuade algorithms, not people.
Take Walmart Connect or Amazon Advertising, for instance. Brands currently bid on keywords and placements to capture consumer attention. In an agentic AI world, they may instead need to optimize for the parameters and ranking factors that AI shopping agents prioritize—potentially shifting spending from traditional sponsored product ads to digital shelf optimization and structured data initiatives.
Ranking of Most Beneficial AI Agent Use Cases by CPG Executives. N = 200
According to the Salesforce/Accenture report, the second-most beneficial AI agent use case involves optimizing marketing and advertising campaigns. Several technology companies are already addressing this need by developing AI platforms that can enhance campaign management. Xnurta, for example, is an AI-powered ad management platform that enhances campaign management on Amazon and Walmart by predicting buying patterns and optimizing in real-time (disclaimer: Xnurta is a client of mine).
As agentic AI evolves, these platforms will likely expand from optimization tools to autonomous marketing agents capable of managing entire campaigns with minimal human oversight.
Content Strategy in an Agent-Centric World
Brand content strategies will also require recalibration. The Salesforce research ranks “Help shoppers find products on the website or other digital platforms” as the third most beneficial AI agent use case, highlighting the importance of discovery in the agentic era.
Currently, product content often mixes factual information with emotional appeals and brand storytelling. However, AI shopping agents will likely prioritize standardized attributes, specifications, and structured data when making recommendations. Brands that excel at providing comprehensive, accurate, and consistent product information across all channels will gain an advantage as AI agents become more prevalent.
Consider a shopping scenario for athletic shoes. Today, a consumer might be swayed by compelling imagery or lifestyle marketing. Tomorrow, an AI shopping agent might filter options based on precise specifications—cushioning metrics, weight, sustainability scores, and durability ratings—factors that many brands don’t consistently provide across retail platforms.
Several retail technology startups are addressing this challenge by developing solutions that help brands structure and standardize their product content across channels. These technologies will become increasingly valuable as AI agents begin mediating more shopping journeys and prioritizing structured information over traditional marketing content.
The Trust Challenge
Despite enthusiasm for AI agents, the Salesforce research highlights key challenges. The top concern for consumer goods executives is “the quality of outcomes” from AI agents, followed by “employee acceptance” and “legacy technology.”
Consumer goods executives’ top concern with agentic AI is the quality of outcomes. N = 200
For retail implementations, these concerns translate to consumer trust issues, especially as AI agents move from assisting to autonomous decision-making. Brands and retailers will need to build transparency into AI shopping agents, helping consumers understand how and why recommendations are made.
Preparing for the Agentic Future
As AI agents evolve from answering questions to taking action on behalf of consumers, brands and retailers face a pivotal moment. Those who adapt their digital presence, content strategy, and retail media approach for this new paradigm will likely gain advantages as AI shopping agents become more widespread.
“This is not just about staying competitive,” says Grant. “It’s about setting the pace in an industry where agility and customer centricity focus are everything.”
The research suggests this shift is happening rapidly: 55% of consumer goods executives predict that more than 50% of their employees will be using generative AI by 2026.
Despite their concerns about employee acceptance of generative AI, 55% of consumer goods executives … [+]
As generative AI gives way to agentic AI, those numbers may climb even higher, transforming not just how products are discovered but how they’re purchased and consumed.
For the retail industry, the message is clear: The era of autonomous AI shopping agents is arriving sooner than many expected, and preparation should begin now.