Published on July 09, 2026/Last edited on July 09, 2026/12 min read

AI-driven marketing is the use of machine learning, generative AI, and AI agents to decide and carry out marketing actions: what to send, to whom, on which channel, and when. The decisions are based on observed customer outcomes, and what each person actually responds to, rather than rules set in advance.
According to the 2026 Global Customer Engagement Review, more than 99% of marketers now say they use AI for customer engagement, (things like content generation or send-time optimization). Only 33% however, say their content is assembled for each user at the moment of engagement and across the full customer lifecycle.
AI-driven marketing strategies fall into two categories: Tactical applications, like subject line generation and content variants, that improve singular, isolated steps in the journey, and lifecycle-level applications, like individual-level decisioning and autonomous journey optimization, that change how the whole program runs.
In this article we’ll look at seven AI-driven marketing strategies that live in that second category. You’ll learn how to set a goal, how it works, what AI each strategy needs and how Braze runs it.
AI-driven marketing is the use of machine learning, generative AI, and AI agents to decide and carry out marketing actions: what to send, to whom, on which channel, and when. The decisions are based on observed customer outcomes, and what each person actually responds to, rather than rules set in advance.
Three kinds of AI do the work, and the strongest programs use all three together:
When used together, they cover the whole loop, from working out what to do to actually doing it.
Older next best action models predict what a customer is likely to do next, usually which product or offer they'll choose, often at the segment level. Next best everything asks which action will actually drive what happens next, rather than which outcome a customer was already heading toward. This is reinforcement learning-based action selection. The system optimizes the message, channel, timing, and offer for each individual at once, and it's what BrazeAI Decisioning Studio™ is built to do.
This is part of how AI frees marketers up for higher-value creative work, and it reshapes how you'd approach building an AI marketing strategy from the start.
Let’s dive into seven AI-driven strategies you could implement for your brand and see how they work.
AI marketing personalization at scale means moving past segment-level personalization, where you simply insert a first name or send to a "high-value" cohort, to individual-level personalization, where each customer gets the message variant, channel, and timing most likely to drive their next action.
AI-assisted personalization works like this:
When working with Braze, BrazeAI™ generative tools create the content variants at scale, and BrazeAI™ Decisioning Studio™ selects the individual-level next best action across channels for each customer.
When it comes to timing each message, there's no universal best time to send. One customer might open emails at breakfast and ignore push until the evening; the next is the reverse. Send time optimization learns each person's pattern on each channel and places every message accordingly, then coordinates across channels so the sends don't pile up.
At that 1:1 level, four things are in play:
In Braze, Intelligent Timing and Intelligent Channel make these calls for each customer, choosing the send time and the order of channels per person rather than using one average time for a whole segment.
An AI-orchestrated cross-channel journey replaces the disconnected, channel-by-channel approach with one coordinated program. A single customer profile drives every messaging decision across email, push, SMS, in-app, and web, rather than each channel running its own campaign.
What that cross-channel automation looks like:
If you're using Braze to operationalize this, that's BrazeAI™ Agents working with Journey Orchestration. The agent decides what to send and when, and the orchestration engine carries the action out across channels. Set up this way, it's AI marketing automation that keeps adjusting as customer behavior changes. When combined it builds cross-channel customer engagement, that works as a single conversation across email, push, SMS, in-app, and web.
AI customer retention means catching churn risk and triggering a personalized intervention before someone disengages, while there's still time to keep them.
The reflex is to throw a discount at anyone who looks like they're slipping. That leaves money on the table twice over: you hand margin to customers who would have stayed without it, and you miss the chance to move others toward something worth more than a markdown. AI retention narrows both problems by finding who is really at risk and matching each one to the action that actually fits.
This is how that plays out:
Working with Braze? It’s BrazeAI Decisioning Studio™ that runs AI customer retention at the individual level, choosing the action most likely to keep each customer.
Improving marketing efficiency with AI means handing the repetitive work to automation so the team can spend its time on strategy and creative direction.
What you get back is capacity. The build, the quality assurance (QA,) and the reporting all get handled, and that time goes back to people for the work that needs them, getting new ideas live faster.
Marketing efficiency with AI looks like this:
In Braze, Creative Studio speeds up the content work and BrazeAI™ Agents take the repetitive jobs off the team's plate. That freed-up time is how efficiency and creativity start to reinforce each other.
Reducing time-to-market with AI compresses the campaign build from weeks to hours. The marketer sets the goal, and AI assembles the brief, creative, audience, and the launch campaign around it.
The old cycle is a relay. The brief gets written, creative waits on the brief, the audience waits on creative, and testing waits on the audience. AI collapses that relay, running the steps together so none has to wait on the last. The gain is sharpest on a first campaign, a new program or team going from nothing to live, where there's no template to lean on yet.
A few moves get you there:
Inside Braze, BrazeAI™ Agents work from pre-configured templates to get a new campaign live fast, lifecycle marketing automation that handles the whole build.
Automating repetitive marketing tasks with AI means handing recurring work, campaign QA, list hygiene, performance reporting, and content tagging, to AI agents for marketing that run it on their own, working to the goals the marketer sets.
An agent differs from a fixed script in one way — judgment inside the task. A scheduled job runs the same steps every time. An agent works toward an outcome you set and decides how to get there.
It fits a particular type of marketing work:
In Braze, BrazeAI™ Agents handle this work on their own, and they complete the stack. BrazeAI™ generative tools produce the content, BrazeAI Decisioning Studio™ makes the individual-level calls, and the agents carry it out end to end.
Sequencing is the order you roll your AI marketing strategies out, since few teams switch on all seven at once. The order that tends to work is by risk and dependency. Start with the AI that delivers quickly and needs little setup, add the strategies that depend on a unified customer profile next, and leave the ones that need platform-level coordination for last.
Here’s that sequencing in tiers:
Beware of falling into AI silos. The value of AI-powered campaign optimization comes from one system making coordinated decisions across the whole program and each step building upon the last. Seven separate tools, working independently, never get there, because none of them sees the full picture or shares its decisions with the others.
That's why there’s a strong architectural case for keeping it all under one roof. When every piece works from a shared view of each customer, what one part picks up is instantly useful to the rest. Braze runs the full set together, so they amplify one another.




