In this article
Our 2026 Customer Messaging report revealed seven major trends reshaping how brands connect with customers this year. This playbook translates those trends into specific tactics you can test this week.
Each trend includes AI prompts you can use, Cowork workflows you can build, and practical experiments you can run. Pick one trend that matches where you are, try the tactics, measure the results.
Trend 1: AI isn't magic, it's infrastructure
What we found: 73% of marketers report meaningful AI impact. 61% use AI for copywriting. AI moved from experiment to integrated workflow.
What to try: Use AI for high-volume personalization
The tactic: Use AI to generate personalized email variations at scale based on customer segments or behavioral data.
AI prompt you can use:
I need to create 5 email variations for different customer segments. Here's the core message: [paste your base email copy]
Create variations for:
Free trial users (day 3 of trial)Free trial users (day 12 of trial, haven't activated)Paid users (light usage)Paid users (power users)Churned customers (inactive 30+ days)
For each variation:
Keep the core value propositionAdjust tone and urgency based on segmentInclude relevant features/benefits for that segmentMaintain our brand voice: [describe your voice]Keep under 150 words
Cowork workflow example:
Set up a workflow that monitors trial user behavior and automatically generates personalized email drafts based on actions taken:
- Trigger: User reaches day 3 of trial
- Cowork checks: Which features did they use? What's their engagement level?
- Generates personalized email emphasizing unused features relevant to their use case
- Sends draft to your approval queue
- You review, adjust, approve for send
What to measure:
- Open rates by variation
- Click-through rates by segment
- Conversion rates (trial to paid, reactivation, etc.)
- Time saved on copywriting
Pro tip
Start small: Pick one high-volume email (welcome, onboarding day 3, re-engagement). Create 3 AI-generated variations. A/B test against your current version.
Trend 2: Personalization is priority #1
What we found: 28% say personalization is their top priority. The tactics that drive ROI: Segmentation (31%) and behavioral triggers (29%)—virtually tied.
What to try: Combine segmentation with behavioral triggers
The tactic: Build a journey that uses segmentation to determine WHICH path someone takes, and behavioral triggers to determine WHEN they move forward.
Example workflow:
Onboarding journey:
- Segment: Free trial users
- Behavioral trigger 1: Completed first task → Send congratulations + next step email
- Behavioral trigger 2: Hasn't logged in for 3 days → Send re-engagement email
- Behavioral trigger 3: Used feature X → Send in-app message about related feature Y
- Behavioral trigger 4: Approaching trial end + low usage → Send "need help?" email
- Behavioral trigger 5: Approaching trial end + high usage → Send upgrade offer
AI prompt for segment analysis:
Analyze my customer base and suggest behavioral segments to create:
Current data I have:
User attributes: [plan type, company size, industry, signup date]Behavioral data: [login frequency, features used, actions completed]Engagement signals: [email opens, in-app activity, support tickets]
Suggest 5-7 segments that combine attributes + behavior. For each segment, include:
Segment criteria (who they are + what they do)Why this segment matters for messagingSuggested messaging focus for this segment
Cowork workflow example:
- Daily: Analyze user behavior patterns
- Identify users who match criteria: "Signed up 7+ days ago, logged in 5+ times, but haven't completed core action"
- Create personalized task: "Send targeted activation email to [user name] focusing on [incomplete action]"
- Auto-populate email template with user's specific usage data
- Add to your approval queue
What to measure:
- Segment-specific conversion rates
- Journey completion rates
- Time to activation by segment
- Revenue by segment
Pro tip
Start small: Pick one journey (onboarding, re-engagement, upsell). Add 2-3 behavioral triggers. Test journey completion rates vs. time-based sequences.
Trend 3: Email isn't dead, it evolved
What we found: 100% use email, 64% increased usage. Plain text outperforming designed emails. Shorter, conversational copy winning.
What to try: Test plain text vs. designed emails
The tactic: Create plain text versions of your top-performing campaigns and A/B test them.
How to create effective plain text emails:
Convert this designed email to plain text format: [paste your HTML email]
Guidelines:
Remove all HTML formatting and design elementsKeep it conversational, like you're writing to a colleagueUse line breaks for readability (not walls of text)Include links as plain URLs or linked text (url)Keep the structure simple: greeting, main point, call-to-action, signatureMaximum 150 wordsMaintain our brand voice: [describe]
What to test:
- Plain text vs. designed version of newsletter
- Plain text vs. designed for onboarding emails
- Plain text vs. designed for promotional campaigns
- Plain text for re-engagement (often performs best here)
AI prompt for shortening copy:
Shorten this email to under 100 words while keeping the core message and CTA: [paste email copy]
Requirements:
Keep it conversational and humanMaintain one clear call-to-actionRemove any fluff or unnecessary contextMake it scannable (short sentences, clear structure)
What to measure:
- Open rates (plain text often has better deliverability)
- Click-through rates
- Conversion rates
- Unsubscribe rates (plain text should be same or better)
Pro tip
Start small: Pick your next newsletter or campaign. Create a plain text version. Split test 50/50. Let results guide your approach.
Trend 4: Multi-channel became orchestration
What we found: 75% run multi-channel campaigns, but top performers orchestrate based on behavior, not broadcast in parallel.
What to try: Build one orchestrated journey
The tactic: Take a single high-value workflow (cart abandonment, onboarding, re-engagement) and add behavioral orchestration across channels.
Cart abandonment orchestration example:
Step 1: Cart abandoned
- Wait: 30 minutes
- Action: Send email with cart contents and "complete checkout" CTA
Step 2: Check behavior after 4 hours
- If opened email but didn't purchase → Send SMS with direct checkout link + urgency ("Cart expires in 24 hours")
- If didn't open email → Send push notification (mobile app users only) with "You left something behind" + product image
- If purchased → Exit journey, suppress all follow-up
Step 3: Check behavior after 24 hours
- If still no purchase but engaged with SMS/push → Send final email with limited-time discount
- If no engagement at all → Exit journey (they're not interested)
- If purchased → Exit journey
Cowork workflow for orchestration:
- Monitor: Cart abandonment events
- Check customer data: Which channels are they active on? What's their engagement history?
- Build dynamic sequence: Email first (everyone), then SMS (if mobile number) OR push (if app user), then email with offer (high-value carts only)
- Auto-suppress: If purchase detected at any step
- Track: Which channel drove conversion
AI prompt for orchestration planning:
Help me design a multi-channel orchestration flow:
Goal: [e.g., "Increase trial-to-paid conversion"] Available channels: [Email, SMS, Push, In-app] Customer data I have: [list attributes and behaviors you track] Current approach: [describe your existing flow]
Design an orchestrated journey that:
Uses each channel for its strength (email for detail, SMS for urgency, etc.)Includes behavioral triggers (respond to actions/inactions)Has suppression logic (don't message after conversion)Includes fallback options (if channel A doesn't work, try B)Limits total messages per person
What to measure:
- Journey completion rate
- Conversion by channel
- Total messages sent per person
- Revenue per journey (not per channel)
- Customer satisfaction (are we being annoying?)
Pro tip
Start small: Pick one journey. Map it on paper. Add one behavioral decision point. Test completion rates vs. your current approach.
Trend 5: Conversion metrics trump vanity metrics
What we found: 66% track conversion rates as primary metric. Only 34% track open rates. The shift from engagement to outcomes is complete.
What to try: Set up proper conversion tracking
The tactic: Define clear conversions for each message type and implement consistent tracking.
Conversion framework:
Transactional emails:
- Primary conversion: Did they complete the expected action? (confirmed email, reset password, viewed order)
- Secondary: Did they engage further? (browsed products, explored features)
Lifecycle emails:
- Onboarding: Did they complete the next activation step?
- Feature announcement: Did they try the feature?
- Re-engagement: Did they log back in?
Promotional emails:
- Did they purchase?
- Did they add to cart?
- Did they visit the landing page?
AI prompt for conversion analysis:
Analyze this email campaign and suggest conversion goals:
Email type: [Onboarding day 3, promotional, re-engagement, etc.] Current metrics I track: [opens, clicks] Business goal: [activation, purchase, re-engagement] Customer journey stage: [trial, paid, churned, etc.]
Suggest:
Primary conversion goal (main success metric)Secondary conversion goals (leading indicators)How to track each conversionWhat conversion rate would indicate successWhat to test to improve conversion
Cowork workflow for conversion tracking:
- Email sent with UTM parameters
- Cowork monitors: Did recipient take conversion action within 7 days?
- If yes: Tag in CRM as "Email converted", update campaign performance dashboard
- If no: Add to suppression list for similar campaigns, flag for re-engagement
- Weekly: Generate conversion report by campaign, segment, and channel
What to implement:
Week 1: Add UTM parameters to all email links
- Format:
utm_source=customerio&utm_medium=email&utm_campaign=[campaign_name]&utm_content=[segment]
Week 2: Define conversion events for each message type
- Set up tracking in your analytics tool
- Create conversion goals in Customer.io (http://Customer.io)
Week 3: Build conversion dashboard
- Conversion rate by campaign
- Conversion rate by segment
- Time to conversion
- Revenue attributed (if possible)
Week 4: Optimize based on data
- Double down on high-converting segments
- Test variations for low-converting campaigns
- Adjust frequency based on conversion patterns
What to measure:
- Conversion rate by message type
- Time to conversion
- Conversion rate by segment
- Lift from optimizations
Pro tip
Start small: Pick your highest-volume email campaign. Define one clear conversion. Track it for 2 weeks. Use data to optimize.
Trend 6: In-house content still dominates, AI augments
What we found: 70% create content entirely or mostly in-house. AI helps teams work faster while maintaining brand voice and strategic control.
What to try: Build an AI-augmented content workflow
The tactic: Use AI to generate options and variations while keeping human review and approval in the workflow.
AI-augmented email workflow:
Step 1: AI generates options
Prompt:
Create 3 subject line variations for this email:
Email purpose: [re-engage dormant users] Target audience: [paid customers, inactive 14+ days] Key benefit: [new feature that solves their problem] Brand voice: [conversational, direct, no hype] Length: Under 50 characters
For each subject line, explain why it might work for this audience.
Step 2: Human selects and refines
- Review AI options
- Choose best one OR combine elements from multiple
- Adjust to match brand voice perfectly
- Ensure accuracy and appropriateness
Step 3: AI generates body copy variations
Prompt:
Write 2 versions of email body copy:
Subject line: [selected from above] Goal: Get inactive users to log back in and try [new feature] Audience context: They signed up for [use case], used [features] heavily, then went quiet Tone: Helpful, not pushy. Acknowledge they've been away without guilt-tripping. Length: 75-100 words CTA: "See what's new" linking to feature page
Version 1: Focus on the problem this feature solves Version 2: Focus on what they're missing out on
Step 4: Human finalizes
- Select winning version or blend both
- Add personalization tokens: {{customer.first_name}}, {{customer.last_used_feature}}
- Adjust any phrasing that feels off-brand
- Approve for send
Cowork workflow for content creation:
- Campaign brief created (you define: audience, goal, channel, timing)
- Cowork generates: 5 subject line options using Claude
- You select: Best 2 subject lines
- Cowork generates: Body copy for each subject line (2 versions each = 4 total options)
- You review: All 4 options in preview
- You approve: Best combination
- Cowork creates: Campaign draft in Customer.io (http://Customer.io) with approved copy
- You schedule: Final review and send
AI prompt for maintaining brand voice:
Analyze these 5 emails from our brand and extract our voice and style: [paste 5 recent emails]
Then rewrite this email to match our voice: [paste new email draft]
Maintain:
Our typical sentence length and structureOur level of formalityOur use (or non-use) of emojis, exclamation points, questionsOur typical CTAs and how we phrase themOur personality and tone
What to measure:
- Time saved on copywriting
- Quality of AI-generated content (% requiring major edits)
- Performance vs. fully human-written content
- Team satisfaction with workflow
Pro tip
Start small: Use AI for your next email campaign. Generate subject line options. Compare performance to your usual approach. Expand if results are good.
Trend 7: Behavioral targeting beats demographics
What we found: Segmentation (31%) and behavioral triggers (29%) drive the best ROI. Everything else—dynamic content, send time optimization, product recommendations—is under 10%.
What to try: Build behavior-based segments
The tactic: Create segments based on what customers DO, not just who they ARE.
Behavioral segment examples:
Engagement-based:
- Power users: Logged in 10+ times in past 30 days, used 5+ features
- Casual users: Logged in 2-4 times in past 30 days, used 1-2 features
- At-risk: Used to log in weekly, now inactive 14+ days
- Dormant: No login in 30+ days, previously active
Action-based:
- Feature adopters: Used new feature within 7 days of release
- Stuck users: Started setup flow but didn't complete
- Expansion candidates: Hit usage limits, high engagement, not on highest plan
- Referral champions: Invited 3+ people, high NPS score
Journey-based:
- Fast starters: Completed onboarding in <2 days
- Slow adopters: Signed up 14+ days ago, <50% onboarding complete
- Quick wins: Achieved first value milestone within 7 days
- Struggling: Multiple support tickets, low feature adoption
AI prompt for behavioral segment ideas:
I want to create behavioral segments for better personalization.
Here's what I know about my customers:
Product type: [describe]Key actions they can take: [list important events]Lifecycle stages: [trial, paid, churned, etc.]Current segments: [describe existing segments]
Suggest 5-7 behavioral segments that would be valuable for personalization. For each:
Segment criteria (specific behaviors + timeframes)Why this segment mattersWhat messaging would resonate with themWhat conversion goal makes sense
Customer.io implementation:
Use Customer.io's AI segment builder:
- Describe your segment in plain language: "Customers who signed up more than 14 days ago, have logged in at least 5 times, but haven't completed their first invoice"
- AI translates to segment criteria
- Review and adjust
- Save and use in campaigns
Behavioral trigger workflow:
Scenario: Upgrade prompt based on behavior
- Segment: Paid users on Starter plan
- Behavioral trigger: User hits usage limit for the third time in 30 days
- Wait: 2 hours (let them feel the friction)
- Action: Send in-app message: "You're getting a lot of value from [product]. Ready for unlimited [feature]?" with upgrade CTA
- If no action: Follow up via email in 24 hours with ROI calculator
- If upgraded: Send thank you message, update onboarding for new plan features
AI prompt for behavioral trigger ideas:
Suggest behavioral triggers for this campaign:
Campaign goal: [Increase feature adoption] Target audience: [Paid customers who haven't used feature X] Available behavioral data: [login events, feature usage, support interactions] Channels available: [Email, In-app, Push]
For each trigger, include:
Specific behavior that triggers the messageOptimal timing (immediate, wait X hours, etc.)Which channel to use and whyMessage focus (what to emphasize)
What to measure:
- Segment size and growth
- Conversion rates by behavioral segment (vs. demographic segments)
- Message relevance (engagement rates, unsubscribes)
- Revenue by segment
Pro tip
Start small: Create one behavioral segment. Build one simple triggered campaign. Measure conversion vs. scheduled sends.
Advanced tactic: Use AI to analyze what's working
The meta-tactic: Use AI to find patterns in your successful campaigns that you can replicate.
AI prompt for performance analysis:
Analyze these campaign results and identify patterns:
High-performing campaigns:
Campaign 1: [name, audience, channel, subject line, key metrics]
Campaign 2: [name, audience, channel, subject line, key metrics]
Campaign 3: [name, audience, channel, subject line, key metrics]
Low-performing campaigns:
Campaign 4: [name, audience, channel, subject line, key metrics]
Campaign 5: [name, audience, channel, subject line, key metrics]
What patterns differentiate high performers from low performers? Consider: audience, timing, subject lines, content focus, CTAs, personalization level
Suggest 3 hypotheses to test based on these patterns.
Cowork workflow for continuous optimization:
- Weekly: Pull performance data for all campaigns sent
- Identify: Top 10% performers and bottom 10% performers
- Analyze: Common patterns in each group (using Claude)
- Generate: Recommendations for upcoming campaigns
- Create: Draft campaigns incorporating winning patterns
- Alert you: "Here's what worked this week + suggested next campaigns"
Quick wins you can implement this week
Monday: Set up one AI copywriting workflow
- Choose your most frequent email type
- Create prompt template for it
- Generate 3 variations
- Test against your current approach
Tuesday: Create one behavioral segment
- Pick one important customer action
- Build segment around people who do (or don't) take that action
- Create targeted message for that segment
Wednesday: Add one orchestration decision point
- Pick one campaign
- Add: "If they opened but didn't click, send follow-up via [different channel]"
- Measure impact on journey completion
Thursday: Implement conversion tracking
- Add UTMs to one campaign
- Define clear conversion goal
- Track for one week
- Review what worked
Friday: Test plain text email
- Take next week's campaign
- Create plain text version
- A/B test 50/50
- Compare open, click, conversion rates
Your next steps
Pick one trend that matches your current challenge:
If you're overwhelmed with content creation → Start with Trend 1 (AI for copywriting)
If your messaging feels generic → Start with Trend 2 (behavioral personalization)
If email performance is declining → Start with Trend 3 (plain text testing)
If you're running multi-channel but not seeing results → Start with Trend 4 (orchestration)
If you can't prove ROI → Start with Trend 5 (conversion tracking)
Try one tactic. Measure the results. Build on what works. The summit is reached one step at a time. And if you want a platform that can make this all happen for you, book a demo and we'll show you how.
Drive engagement with every message
- Omnichannel campaigns
- Behavior-based targeting





