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Real-world agentic AI examples in marketing

Published on April 17, 2026/Last edited on April 17, 2026/11 min read

Real-world agentic AI examples in marketing
AUTHOR
Team Braze

According to Braze 2026 Global Customer Engagement Review, 93% of marketing leaders say AI helps them understand their customers more accurately, yet only 53% of consumers say brands are accurately predicting their wants and needs. Having AI and using it effectively are two very different things, as the real-world agentic AI examples in this article show.

Agentic AI marketing operates differently from the rule-based automation and static workflows most marketing teams still rely on. An agentic system can work toward a defined goal, perceiving its environment, making decisions, and taking action across multiple steps and tools with minimal human intervention. A conventional automation workflow sends an email when a cart is abandoned. An agentic system decides which customers to target, determines the right message and channel for each one, deploys the campaign, and learns from what happens to sharpen its next decision.

For example, BrazeAI™ Agents is designed to autonomously manage campaigns—from identifying target audiences to crafting personalized messages and optimizing delivery—freeing marketers from manual workflow setup while continuously learning to improve results

Campaign planning, audience segmentation, content creation, send-time optimization, and individual-level customer decisions are all areas where agentic AI is already doing real work. Let’s take a closer look at some of these use cases and what agentic marketing looks like in real life.

What is agentic AI in marketing?

Agentic AI describes autonomous AI systems designed to achieve specific goals. Traditional automation executes a fixed sequence of steps. Generative AI produces content in response to a prompt. Agentic AI goes further and creates a multi-step task execution. It plans, makes decisions, breaks work down into steps, and carries those steps out—adapting to what it encounters along the way.

Most agentic systems today are built on large language models, including OpenAI's ChatGPT, Anthropic's Claude, and Google Gemini. LLM-powered automation and workflows give agents the ability to understand context, reason through a problem, and determine what to do next. And then they do it. That means they can write the email, build the campaign, update the audience segment and schedule the send. This requires connections to the external tools and platforms where the work actually lives. Without those connections, a system can advise but it cannot act.

How does agentic AI differ from traditional automation?

Traditional marketing automation runs on rules: Define the trigger, define the response, repeat. It works reliably within those boundaries, but it can only do what's been explicitly programmed. Anything outside the defined logic requires manual intervention.

Agentic AI works from goals rather than rules. Given an objective—such as re-engaging users who haven't opened an email in 60 days—an agent, with its autonomous decision-making, can determine the best approach, identify which users to target, decide what to say and through which channel, build and deploy the campaign, and assess what worked. The marketer sets the goal and the guardrails. The agent handles the rest.

How agentic AI works in marketing systems

Autonomous marketing systems are only as valuable as the tools they're connected to, and understanding those connections will help you identify where agents can make the biggest difference. Think of it as a loop: Data in, decision, execution, measurement, and back again.

The data layer

Before an AI decisioning agent can make a useful decision, it needs context. For example, BrazeAI™ Agents are designed to leverage the Braze platform’s unified customer profiles and streaming behavioral data to make precise, context-aware decisions, enabling every interaction to be based on the freshest and most complete customer insights available.

It’s important to unify behavioral, transactional, and demographic data into a single customer profile, giving agents the real-time signals they need to make relevant individual-level decisions. Data warehouses sit behind this, holding the raw data that feeds into it. According to the Braze 2026 Global Customer Engagement Review, only 55% of marketers are updating and leveraging customer information in real time. An agent working from stale or fragmented data will make decisions that reflect that.

The decisioning layer

The AI decisioning agent evaluates what it knows about each customer—behavior, history, channel preferences, engagement signals—against the campaign goal and any guardrails the team has set, then determines the next best action for each individual. This is where different types of agents come into play.

AI decisioning agents are automated systems that leverage artificial intelligence to make real-time decisions in customer engagement strategies. Some agents are context-aware; they use a customer's specific profile to generate relevant content or route them through a particular journey path. Others, such as reward-based AI decisioning agents, go further. They experiment continuously, learn from outcomes, and then use AI campaign optimization toward a measurable business goal over time.

In enterprise marketing, Salesforce Einstein is one example of this approach, bringing agentic decisioning into CRM workflows to automate lead scoring, personalization, and customer journey decisions at scale. These are distinct capabilities, and choosing the right one for the right task is part of getting agentic AI right.

The execution layer

Connected to campaign builders, journey orchestration tools, content systems, and messaging infrastructure, AI orchestration agents can build journeys, generate message variants, select channels, and schedule sends without manual setup at each stage. For teams building their own agentic systems, frameworks like LangChain, which connects LLMs to external tools and data sources, and AutoGPT, an open-source agent that can pursue goals autonomously across multiple steps, provide the underlying architecture that makes this possible. This external tool access is what makes a system genuinely agentic.

What does this look like in action? BrazeAI™ Agents, which are integrated in the platform’s journey orchestration tools, are designed to autonomously build and execute multi-step customer journeys, generate tailored message variants, select optimal channels, and schedule sends.

The measurement layer

Performance data closes the loop. Agents monitor results as they emerge and feed those signals back into the decisioning layer, enabling continuous improvement rather than periodic campaign reviews. AI decisioning agents go a step further: They actively adjust future decisions based on what did and didn't drive the outcome they were optimizing for.

Governance and security

Agentic systems act autonomously and at speed, which makes guardrails essential from the start. The most effective deployments keep marketers in control of the parameters agents work within—pre-approved content, defined channels, frequency caps, and consent checks. Agents should operate as extensions of marketer intent, not replacements for it. Building in human checkpoints and audit trails is what allows teams to move fast with confidence. For engineering teams building and deploying the integrations that underpin these systems, tools like Cursor, an AI-powered code editor, and Vercel, a platform for building and shipping AI-powered applications, have become central to how agentic marketing infrastructure gets built and shipped responsibly.

Real-world examples of agentic AI in marketing

Agentic AI is already active across a wide range of marketing functions. The agentic AI examples below are organized by use case, each one illustrating how autonomous systems are handling work that previously required significant manual effort, and what that looks like when applied to real marketing problems.

Agentic AI use cases: Content creation, copywriting, channel, timing

One of the most immediate applications of agentic AI is in content generation—not just producing copy, but producing the right copy for the right person at the right moment. Rather than a marketer writing a single email subject line or push notification and sending it to a broad audience, an agent can generate individualized variants based on each customer's profile, behavioral history, and preferences. For example, BrazeAI™ Agents can dynamically generate individualized content variants for each customer based on their unique profile and engagement history, enabling hyper-personalized messaging at scale without manual intervention.

This extends to localization, too. Agents can adapt tone, language, and content for different markets and audiences automatically—creating a marketing workflow automation where there is typically multiple teams involved, extended timelines, and significant back-and-forth.

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Agentic AI use cases: Audience segmentation

Agents continuously assess behavioral signals—purchase patterns, engagement history, channel preferences, predicted intent—and build or update audience groups dynamically as customer behavior changes.

This produces segmentation that stays current in real time, rather than reflecting a snapshot taken at the last manual refresh. It also handles a level of granularity that rules-based approaches can't practically sustain.

Top-performing brands using AI-assisted segmentation are 39% more likely to personalize user journey paths based on each individual's data and actions, according to the Braze 2026 Global Customer Engagement Review.

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Agentic AI use cases: Customer-level decisioning

An AI decisioning agent can make a distinct decision for each individual customer—choosing the channel, message, offer, timing, and frequency most likely to drive the outcome the brand is optimising for.

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AI decisioning in action: Kayo Sports, Australia's largest sports streaming service, deployed AI decisioning to move from 300 message variations to 1.5 million, with the AI determining the optimal combination of message, creative, channel, timing, and offer for each individual subscriber. The results were significant. They gained a 14% increase in subscriptions, a 105% increase in cross-selling, and a 20% rise in average subscription price.

Agentic AI use cases: Journey automation and onboarding

Multi-step customer journeys—onboarding flows, re-engagement sequences, lifecycle campaigns—are well suited to agentic automation because they involve repeated decisions across many touchpoints. An AI decisioning agent can assess where each customer is in a journey, what they've done and not done, and determine the next most appropriate step without waiting for a marketer to manually review and update the flow.

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Agentic AI use cases: Send-time and channel optimization

Knowing what to say is only part of the equation. Agentic AI can also determine when and where to say it by analyzing each individual's past engagement patterns to identify the moment and channel most likely to produce a response. Rather than scheduling a campaign for a fixed time and hoping for the best, agents adapt delivery dynamically based on what the data shows about each customer's behavior.

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Agentic AI use cases: AI-powered product recommendations

Personalized product and content recommendations have been a staple of eCommerce for years, but agentic AI takes this further—moving from category-level affinity matching to genuine individual-level decisions that adapt in real time as customer behavior changes.

24S, the luxury fashion platform, used AI item recommendations combined with personalized journey paths to turn friction points—abandoned carts, out-of-stock notifications—into targeted re-engagement opportunities. Their abandoned cart campaign drove a 35% increase in purchase conversion rate, while their back-in-stock campaign achieved a 7% increase in add-to-cart rate, both within a six-month window.

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Benefits of AI agents for marketing teams

The benefits of agentic AI compound. Cleaner data sharpens segmentation, better segmentation produces more precise decisions, and more precise decisions deliver stronger results that feed the next campaign.

Efficiency

Marketing teams are being asked to deliver more personalized, more responsive campaigns with the same headcount and often tighter budgets. Agentic AI takes on the AI marketing automation work that sits between strategy and send, autonomously handling:

  • Audience segment builds and updates
  • Journey logic configuration
  • Message variant generation
  • Performance monitoring and reporting

Agents generate multiple variants tailored by audience, geography, or persona simultaneously—with autonomous quality checks across all of them for brand voice, tone, and formatting. What previously took days, now takes hours.

What does this look like in practice? By autonomously handling audience segmentation, journey logic, message generation, and performance monitoring, BrazeAI™ Agents can help reduce campaign build times from days to hours, empowering marketing teams to deliver personalized experiences faster and at scale.

Decisioning

Agentic AI makes decisions at the individual level, continuously evaluating each customer's behavioral signals to determine the most relevant next action. Agents can shift a customer into a high-intent segment after a cart abandonment in real time, at a frequency and precision no human team can match.

For example, BrazeAI™ Agents are designed to continuously evaluate individual customer signals to make real-time, 1:1 decisions on channel, message, offer, and timing—achieving a level of precision and responsiveness beyond traditional segmentation approaches.

Automation of complex, multi-step AI workflows

Multi-step processes that cross systems and teams can be handed to agents to execute end to end:

  • Pulling and cleaning audience data
  • Building campaign journeys
  • Generating and testing content variants
  • Analysing results and resetting the workflow

Personalization depth

AI decisioning agents make a choice for each individual—deciding on channel, message, offer, timing, and frequency based on that person's complete behavioral profile. The difference between segment personalization and genuine 1:1 decisioning is the difference between one decision for thousands of people and a unique decision for every single one of them.

Data transformation and cleaning

Good data doesn't maintain itself. Agents can:

  • Monitor pipelines continuously for inconsistencies
  • Deduplicate records automatically
  • Flag and resolve anomalies as an ongoing background process
  • Standardize data formats across sources

Teams that feed agents clean, well-structured data see stronger results—and those that don't find agents amplifying existing data problems rather than solving them.

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