If you can’t tie your programmatic spend to pipeline, you’re not doing audience targeting…you’re guessing with a bigger budget. B2B programmatic only works when you stack firmographics, intent signals, and ABM lists to hit buying committees, not randos. Frequency controls keep you from burning cash on the same person 47 times. Pipeline attribution proves it worked.
Most B2B marketers target broad job titles, ignore buying committees, and optimize for CTR instead of pipeline.
Here’s the reality: B2B audience targeting programmatic works when you translate your ICP into programmable segments using firmographics (industry, size, region), technographics (installed tech stack), and intent signals (active research topics). Layer those signals, activate them across DSPs with frequency caps, and measure opportunities created.
Across Directive’s 250+ B2B SaaS clients, the ones that cut waste and lift conversion efficiency do three things: they build account-level target lists from CRM and enrichment data, they segment by buying committee role (not just title), and they optimize weekly based on pipeline contribution—not CTR.
If your programmatic spend isn’t generating qualified pipeline, you’re targeting the wrong audiences with the wrong metrics.
Turn Your ICP Into Programmatic Audiences That Convert
Your ICP is a strategic document. Programmatic audiences are the executable version of that document. The gap between “we target mid-market SaaS CTOs” and actual campaign delivery is where most budget gets wasted.
The handoff works like this: take your ICP definition (company size, industry, tech stack, pain points) and translate it into firmographic filters, technographic signals, and intent topics that DSPs can target. Then map those filters to buying committee roles, economic buyer, technical evaluator, end user, because B2B deals involve 6-10 stakeholders, not one person.
Define the Data Spine: Firmographic, Technographic, and Intent
Start with firmographics: industry, company size, revenue range, region. These are table stakes. Add technographics: what technology is this company already using? If you sell a security tool, target companies running AWS + Okta. If you sell a data warehouse, target companies using Salesforce + Snowflake.
Layer intent signals on top. Intent data shows which accounts are actively researching topics related to your solution. According to StackAdapt’s B2B audience targeting research, nearly 50% of B2B ad spend is now digital. Targeting precision is table stakes, not a competitive advantage.
Example: A cybersecurity vendor targeting mid-market SaaS companies builds a 1,000-account list filtered by: SaaS vertical, 100-500 employees, $10M-$50M revenue, using AWS + Okta, showing intent on “zero trust” and “endpoint detection” topics. That’s a programmable audience.
Benchmark: Target a list match rate of 60%+ in priority regions. Formula: matched records ÷ total records uploaded. Below 60% means your data hygiene is broken or your enrichment provider is weak.
Owner: RevOps working with Demand Gen.
Tools: Dun & Bradstreet or ZoomInfo for firmographics, Bombora or 6sense for intent, your CRM or CDP for first-party data. For ABM list methodology and account selection frameworks, see our b2b abm agency approach.
Potential Pitfall: Treating generic interests or broad keywords as sufficient. “Interested in technology” isn’t a B2B signal. “Researching zero trust architecture” is. Fix it by layering firmographic + technographic + intent together. Never use one signal alone.
Map the Buying Committee and Journeys by Role
Your deal isn’t stalling because of budget or timing. It’s stalling because you only sold one person, and they can’t close without the committee. The VP who loves your product can’t buy without the Director who validates functionality. The Director can’t move without the end users who’ll actually use it daily. Single-threaded deals die in procurement. Multi-threaded deals close.
Build role clusters: economic buyer (VP/C-suite who approves budget), technical evaluator (Director/IC who validates functionality), end user (team members who’ll use the product daily).
Each role needs distinct creative and format. Economic buyers respond to ROI proof and speed-to-value messaging via native ads on trade publications. Technical evaluators want integration details and security specs via display retargeting. End users care about usability and onboarding via video and CTV.
Dun & Bradstreet’s B2B audience targeting research shows that segmenting by what this person needs to solve outperforms segmenting by demographics (title, seniority) alone. A “VP of Engineering” at a 50-person startup has different needs than a “VP of Engineering” at a 5,000-person enterprise.
Example: Marketing automation vendor segments audiences into three role clusters. Economic buyer (CMO, VP Marketing): sees “Cut CAC 35% with better attribution” messaging. Technical evaluator (Marketing Ops Director): sees “Integrates with Salesforce, HubSpot, Marketo in 48 hours.” End user (Demand Gen Manager): sees “Build campaigns in 10 minutes, not 3 days.”
Metric: Track reach to TAL—how many unique target accounts in your list actually saw an impression. Formula: unique accounts reached ÷ total TAL. Target 60%+ reach within the first 30 days. Set effective frequency at 3-5 impressions per account per week across all buying committee roles. Too high and you waste budget on over-serving. Too low and you don’t build awareness. For aligning search and programmatic capture by role, work with a b2b ppc agency that coordinates messaging across channels.
Owner: Product Marketing defining role-specific messaging, Demand Gen activating audiences.
Tools: DSP audience segmentation, persona mapping templates.
Potential Pitfall: Running one-size-fits-all creative to all roles. A CFO doesn’t care about your UI. An end user doesn’t care about IRR.
Choose Buying Paths: RTB vs PMPs vs Programmatic Guaranteed
Programmatic has three buying models. Real-time bidding (RTB) on open exchanges gives you massive reach but low control over placement quality. Private marketplaces (PMPs) are curated deals with premium publishers—higher CPMs but better brand safety and viewability. Programmatic Guaranteed (PG) is reserved inventory with fixed CPMs and guaranteed impressions on specific sites.
Use RTB for broad awareness and retargeting where you need scale. Use PMPs for account-based campaigns targeting high-value accounts where brand safety matters (regulated industries, enterprise deals). Use PG for high-impact placements during launches or events where you need guaranteed visibility on specific trade publications.
According to IAB’s State of Data 2024 report, the industry is shifting toward first-party data activation and curated deals as third-party signals degrade. PMPs and PG give you more control over where your ads appear and which accounts see them.
Example: SaaS company running ABM to 500 enterprise accounts uses PG on trade media (guaranteed reach to target accounts), PMPs for native placements on industry publications (quality + context), and RTB for retargeting site visitors (scale + efficiency).
Metric: Track viewable CPM (vCPM) to ensure you’re paying for impressions that actually get seen, not just served. Set quality guardrails: invalid traffic (IVT) rate should stay below 1%. If IVT creeps above 1%, your fraud detection is failing and you’re wasting budget on bots.
Owner: Media Lead working with RevOps on attribution. Tools: DSP (The Trade Desk, DV360), verification vendors (IAS, DoubleVerify), CRM for pipeline tracking. To scope a 60-90 day pilot testing buying paths, talk to our programmatic advertising agency team.
Potential Pitfall: Assuming Google Display Network equals programmatic reach. GDN is one network with limited buying path options. Use a multi-exchange DSP like The Trade Desk or DV360 to access PMPs, PG deals, and multiple supply sources. Single-network strategies leave reach and efficiency on the table.
Step-By-Step Playbook: Build High-Intent B2B Audiences for Programmatic
Most programmatic campaigns launch without a build process—marketers just upload a list and hope for the best. Here’s the tactical build: 7 steps from ICP definition to live campaigns with frequency controls and pipeline measurement.
Steps 1-2: ICP and ABM List Build
Step 1 — Define ICP: Document your ideal customer profile with specific filters. Not “enterprise companies” but “SaaS companies, 500-5,000 employees, $50M-$500M revenue, using Salesforce + AWS, headquartered in US/UK/Canada.” The more specific, the better your match rate.
Step 2 — Build target account list (TAL): Export closed-won customers from CRM. Enrich with firmographic and technographic data using Dun & Bradstreet, ZoomInfo, or Clearbit. Append intent signals using Bombora or 6sense. Manually verify a sample (50-100 accounts) to QA data accuracy. Upload to DSP as a matched audience.
Target: 500-2,000 accounts for focused ABM, 5,000-10,000 accounts for scaled programs. Bombora’s iABM case study shows that tighter account lists (under 2,000) with high intent convert at 2-3x the rate of broad targeting.
Owner: RevOps assembling and enriching the list, Demand Gen validating ICP fit. Tools: CRM export, enrichment vendor API, spreadsheet for QA. For ICP alignment ideas and defining your ideal customer profile, see this b2b saas growth hack framework.
Potential Pitfall: Uploading a 10,000-row list without QA. Bad data = wasted impressions on out-of-business companies, wrong industries, or competitors. Always manually verify a sample before activation.
Steps 3-5: Layer Intent and Modeling; Exclusions
Step 3 — Layer intent topics: Add intent signals aligned to your solution. If you sell marketing automation, target accounts researching “marketing attribution,” “lead scoring,” “campaign automation.” Set intent thresholds: high intent (surge in last 7 days), moderate intent (sustained research over 30 days).
Step 4 — Build modeled lookalike audiences: Use your TAL as a seed list to create lookalike models. Tier A: exact ICP match + high intent. Tier B: modeled lookalikes with moderate intent. Allocate 70% budget to Tier A (highest confidence), 30% to Tier B (expansion).
Step 5 — Create exclusion lists: Exclude existing customers (unless you’re upselling), employees, competitors, and recently closed-lost accounts. Update exclusions weekly—don’t waste budget on accounts that just converted.
According to Proximic by Comscore’s 2024 State of Programmatic report, 62% of advertisers are increasing programmatic spend, but only those with layered targeting (firmographic + intent + behavioral) see positive ROI. Single-signal targeting wastes budget.
Owner: Demand Gen defining intent topics and model tiers, RevOps maintaining exclusion lists.
Tools: Intent data platform (Bombora, 6sense), DSP lookalike modeling, CRM for exclusion exports.
Pitfall: Using generic intent topics (“interested in software”) instead of specific topics tied to buying stage (“comparing marketing automation vendors”).
Steps 6-7: Activate, Cap Frequency, and Measurement
Step 6 — Activate campaigns with frequency caps: Launch awareness campaigns to Tier A (3-5 impressions per account per week) and retargeting campaigns to engaged accounts (5-8 impressions per week). Set per-account frequency caps in your DSP to avoid over-serving large enterprises. Use PMPs for high-value accounts, RTB for scale.
Step 7 — Set up measurement and QA: Tag all URLs with UTMs. Connect DSP pixel to your site. Map ad impressions to CRM accounts using reverse IP lookup or identity resolution. Build a weekly QA checklist: pixel firing correctly, UTM parameters passing through, conversions deduping properly, account matching at 60%+ rate.
The IAB’s 2024 revenue report shows digital ad revenue reached $258.6B (+14.9% YoY)—investment scrutiny is rising. You need pipeline attribution on day 1, not month 3.
Owner: Media Lead activating campaigns, Analytics Lead setting up tracking and dashboards.
Tools: DSP (The Trade Desk, DV360), tag manager, CRM, reverse IP vendor (Clearbit, Demandbase). To scope a 60-90 day pilot with full measurement infrastructure and attribution setup, work with a programmatic advertising agency that handles activation and tracking.
Pitfall: Launching campaigns without measurement infrastructure. You’ll burn budget for 30 days before realizing your tracking is broken
Segment Smart: Firmographic + Intent + AI Modeling
Single-signal targeting wastes budget. Layering signals increases precision without killing reach. The trick is knowing which signals to combine and how to maintain minimum audience sizes for efficient delivery.
Layer the Right Signals Without Shrinking Reach
You can segment so tight your campaigns never spend budget and wonder why nothing scales. Or you can go broad, burn $40K serving impressions to accounts that don’t fit your ICP, and call it ‘brand awareness.’ Neither works.
Start with firmographic filters to get to your ICP (industry, size, region). Add intent signals to find accounts actively researching. Use modeled lookalikes to expand beyond your known TAL while maintaining ICP fit.
Don’t over-narrow. A segment of 500 accounts might feel precise but it won’t generate enough impressions for statistical learning. According to Proximic by Comscore’s 2024 report, 62% of advertisers are increasing programmatic investment and contextual targeting is rising as a cookie-loss strategy, but over-segmentation kills delivery.
Example: Tier A segment (ICP + high intent): 1,000 accounts, 70% budget allocation. Tier B segment (modeled lookalikes + moderate intent): 5,000 accounts, 30% budget. Total addressable reach: 6,000 accounts. This maintains scale while prioritizing highest-confidence targets.
Metric: Track reach by tier (what % of each tier saw at least one impression) and cost per qualified visit (CPQV). Formula: Spend ÷ site visits from ICP-matched accounts. Compare tier ROI monthly and reallocate budget toward best performers.
Owner: Media Strategist designing segments and tier logic.
Tools: DSP audience builder, modeled lookalike tools, intent platform. For cross-channel reinforcement and how paid social complements programmatic, see our b2b paid social agency approach.
Potential Pitfall: Building 20 micro-segments of 200-500 accounts each. Delivery will stall, CPMs will spike, and you won’t have enough volume to optimize. Consolidate into 3-5 macro-segments minimum.
Control Account-Level Delivery and Frequency (iABM)
If you’re running standard programmatic targeting, you’re probably wasting 60% of budget on Fortune 500 accounts you’ll never close. The algo doesn’t care about your ICP…it serves impressions based on scale. You think you’re targeting. You’re not. You’re subsidizing impression volume for companies that will never buy.
That means large enterprises with more employees see 10x the impressions of small companies. You burn budget on mega-accounts while under-serving your actual targets.
Integrated ABM (iABM) fixes this. Bombora’s iABM approach with The Trade Desk and Chalice AI enables account-level delivery controls. Set per-account weekly caps (max 5 impressions per account) and minimums (every account sees at least 2 impressions). Report delivery by account and role to ensure even distribution.
Example: 500-account ABM list. Set caps at 5 impressions per account per week. Monitor delivery: if 50 accounts are receiving 20+ impressions while 200 accounts receive zero, adjust bid strategy to prioritize under-served accounts.
Metric: TAL evenness index. Formula: Standard deviation of impressions per account ÷ mean impressions per account. Lower is better. If your index is above 1.0, delivery is too uneven—you’re over-serving some accounts and missing others entirely.
Owner: Programmatic Lead managing DSP settings and account-level reporting.
Tools: The Trade Desk + Bombora iABM integration, account delivery report template.
Potential Pitfall: Not monitoring account-level delivery. You’ll waste budget on 10% of accounts while 90% never see your ads.
Personalize Creative with DCO and Contextual Alignment
Dynamic creative optimization (DCO) swaps headlines, proof points, and CTAs by industry, role, or company size. A CFO sees ROI proof and payback period. A technical architect sees API documentation and integration specs. Both click through to role-specific landing pages.
Contextual targeting places your ads on pages discussing topics related to your solution. If you sell cybersecurity, target articles about zero trust, ransomware, or compliance. According to IAB’s 2024 data, digital share and programmatic growth underscore the need for relevance at scale—generic creative kills performance.
Example: Marketing automation vendor runs DCO. Finance persona sees: “Cut marketing spend 22% with better attribution.” Product persona sees: “Launch campaigns in 10 minutes with drag-and-drop workflows.” Both land on role-specific pages with relevant proof points and case studies.
Metric: Track conversion rate by creative variant. Kill bottom quartile weekly. Set viewability threshold at 70%+ and attention metrics (5+ seconds in view) at 50%+. For landing page testing alignment and conversion optimization, work with a b2b ppc agency that coordinates paid search and programmatic landing page strategy.
Owner: Creative Strategist building message matrix by role, Media Lead activating DCO in DSP.
Tools: DSP DCO module, native ad platforms for contextual.
Potential Pitfall: Running one-size creative to all personas. Build a role-based message matrix before launching campaigns.
Data Activation, Privacy, and Signal-Loss Guardrails
Third-party cookies are dying. Device IDs are restricted. The future of programmatic is first-party data, contextual targeting, and clean room measurement. Build for privacy now or rebuild later.
First-Party Data and Identity Resolution
If you’re not building first-party audiences, you’re paying for the same intent signals as every competitor in your category. Third-party data vendors sell the same list to everyone.
Your retargeting pool is their retargeting pool. Gate high-value content (tools, assessments, calculators), capture buying role and tech stack on the form, sync to your DSP as matched audiences and your CRM for attribution. First-party isn’t a nice-to-have, it’s the only moat left in B2B programmatic.
According to IAB’s State of Data 2024, the industry is shifting toward AI-based probabilistic identity methods and channels that rely on first-party data. Companies without strong first-party capture strategies will lose targeting precision as third-party signals fade.
Example: SaaS company offers a free ROI calculator. Users enter company size, current spend, and tech stack. Company captures email, enriches with firmographic data, appends intent signals, and syncs to DSP as a “high-intent prospects” segment. Retargets with demo offers.
Metric: Track consent rate (% of site visitors who opt in) and list growth (net new first-party records per month). Monitor match rate by partner (DSP, ad network) to ensure data is activating properly.
Owner: RevOps building capture strategy and data flows, Legal reviewing consent and privacy compliance.
Tools: CDP (Segment, mParticle), clean room (LiveRamp, Habu), consent management platform. For consented ABM activation approaches and first-party data strategy, work with a b2b abm agency.
Potential Pitfall: Over-relying on third-party cookies. They’re deprecated in Chrome and restricted on Safari/Firefox. Invest in first-party enrichment now before you lose targeting capability.
Contextual, PMPs, and Clean Rooms for Resilience
Cookie-based targeting is dying. Chrome killed third-party cookies. Safari and Firefox already did. Most B2B teams are still running campaigns that depend on tracking users across the web, and confused on why performance is tanking.
Contextual targeting doesn’t rely on cookies or device IDs. It targets pages based on content topics and keywords. If you sell HR software, target articles about “remote work,” “employee engagement,” or “performance reviews.”
PMPs give you curated access to premium publishers with verified inventory. Clean rooms let you measure campaign impact by matching exposed accounts to CRM conversions without sharing raw PII. According to Proximic by Comscore, nearly one-third of marketers were unprepared for cookie deprecation in 2024. Build your post-cookie strategy now.
Example: B2B company runs contextual campaigns on trade topics (targeting HR Tech, Workforce Management content), PG deals with premium publishers, and measures exposed account lift using a clean room that matches ad impressions to pipeline without exposing customer PII.
Metric: Compare contextual segment performance vs audience-based segment performance using cost per qualified visit (CPQV) and viewability. Track clean room match rate (% of ad impressions that successfully match to known accounts).
Owner: Media Lead activating contextual and PMP deals, Analytics Lead managing clean room measurement.
Tools: DSP contextual module, clean room platform (LiveRamp, InfoSum). For background on auctions vs. programmatic guaranteed deals, see our explainer on real-time bidding.
Potential Pitfall: Treating contextual as an afterthought. It’s not a backup plan—it’s a core pillar in a post-cookie world. Allocate 20-30% of budget to contextual testing now.
Brand Safety, Suitability, and Fraud Controls
Use allowlists (approved sites only), pre-bid filters (block categories like adult, violence, misinformation), and made-for-advertising (MFA) site exclusions. Enable invalid traffic (IVT) detection to block bot farms and fraud.
Set suitability tiers by industry. Healthcare and financial services need stricter controls than general B2B SaaS. According to IAB’s 2024 revenue report, industry revenue growth persists despite privacy shifts—but brand damage from unsafe placements kills ROI fast.
Example: Healthcare SaaS company runs curated PMPs only (no open exchange), blocks sensitive content categories (crime, adult, inflammatory news), excludes MFA sites, and sets IVT threshold at <1%. Monthly verification reports show 99.2% brand-suitable impressions.
Metric: Track IVT rate (target <1%) and suitability rejection rate (should trend down as you refine filters). Monitor cost per thousand viewable impressions (vCPM) to ensure quality placements.
Owner: Programmatic Lead setting brand safety rules and monitoring reports.
Tools: IAS, DoubleVerify, or MOAT for verification. For cross-channel brand safety policies, coordinate with your b2b ppc agency to align paid search and programmatic standards.
Potential Pitfall: Running open exchange without controls. For sensitive or regulated industries, prefer curated PMPs and PG deals where you control placement quality.
Measure Pipeline Impact, Not Just Clicks
Programmatic is an awareness and consideration channel. If you optimize for CTR alone, you’ll generate clicks from unqualified accounts and miss pipeline impact. Track opportunities, pipeline dollars, and cost per opportunity—not just clicks.
KPIs and Formulas the Board Cares About
Track these metrics: Opportunities created, Pipeline $ influenced, Cost per Opportunity (CPO), Cost per Qualified Lead (CPQL), and CAC:LTV ratio. Use reach, frequency, viewability, and attention as supporting indicators—not primary KPIs.
According to IAB and PwC’s 2025 report, digital ad revenue reached $258.6B (+14.9% YoY)—investment scrutiny is rising. Boards want pipeline contribution, not impression counts.
Example: Programmatic program spends $50k/month. In 90 days: 25 opportunities created from targeted accounts, $1.2M pipeline influenced. CPO = $150k ÷ 25 = $6k. If your average deal size is $50k and win rate is 25%, expected revenue = $300k. ROI = 2x.
Metric formulas:
- CPO = Total spend ÷ # Opportunities created
- CPQL = Total spend ÷ # Qualified leads
- CAC = Total program cost ÷ # New customers acquired
- Pipeline contribution = Sum of opportunity values touched by programmatic
Owner: RevOps defining formulas and building attribution models.
Tools: CRM (Salesforce, HubSpot), attribution platform (Bizible, DreamData), BI tool (Tableau, Looker). For aligning paid search and programmatic reporting, work with a b2b ppc agency that coordinates cross-channel measurement.
Potential Pitfall: Optimizing to CTR only. A 2% CTR from unqualified accounts is worse than a 0.5% CTR from ICP accounts that convert to pipeline. Shift to pipeline metrics.
Minimal Viable Dashboard and QA
If your programmatic dashboard stops at CTR and CPM, you’re measuring activity, not outcomes. Your CFO doesn’t care if you served 2M impressions. They care if those impressions created opportunities.
Build a dashboard with: TAL reach and frequency by account, engaged accounts (site visits, content downloads), form fills by segment, opportunities created, pipeline $ by tier, and cost per opportunity.
According to IAB’s State of Data 2024, B2B marketers are moving spend to channels that enable first-party measurement. Your dashboard proves programmatic’s pipeline contribution—or exposes where it’s not working.
Example weekly QA checklist: Verify DSP pixel is firing on site, check UTM parameters are passing to CRM, confirm conversions aren’t duplicating across channels, validate account matching at 60%+ rate, spot-check a sample of impressions for brand safety.
Metric: Measurement coverage = % of spend with account-level match in CRM. Target 60%+ coverage. Below 60% means your identity resolution or account matching is broken.
Owner: Analytics Lead building dashboard and running weekly QA.
Tools: DSP reporting, CRM, data warehouse (Snowflake, BigQuery), BI tool. For ABM measurement playbooks and multi-touch attribution frameworks, see our b2b abm agency approach.
Potential Pitfall: Skipping conversion deduplication. If programmatic and paid search both touch the same account, don’t count two opportunities. Enforce deduplication rules or your results will be inflated.
Optimization Loops and Governance
You can set your programmatic campaigns and check them once a month while creative fatigues, low-intent accounts drain budget, and CPAs double. Or you can run weekly optimization cycles: review segment performance, adjust bids toward winners, kill bottom-quartile creative, reallocate from low-intent to high-intent accounts, and refresh creative every 3-4 weeks. One approach treats programmatic like a billboard buy. The other treats it like a performance engine.
According to Proximic by Comscore, 62% of advertisers plan to increase programmatic investment. Governance prevents waste at scale. Weekly reviews catch problems before they burn $10k in wasted spend.
Example: Mid-flight reallocation. Tier A (high-intent ICP accounts) is generating opportunities at $4k CPO. Tier B (modeled lookalikes) is at $12k CPO. Reallocate 20% of Tier B budget to Tier A. Result: blended CPO drops from $8k to $6k.
Metric: Opportunities per 1,000 impressions (OPM). Formula: (# Opportunities ÷ Total impressions) × 1,000. Track OPM by segment and optimize toward segments with highest OPM. Target lift of 15-25% OPM after optimization cycles.
Owner: Media Lead executing optimizations, RevOps providing pipeline data.
Tools: DSP automation rules, weekly ops agenda template, CRM pipeline reports. For managed optimization support and weekly governance, work with a programmatic advertising agency that runs ops cycles for you.
Potential Pitfall: Set-and-forget budgets. You’ll waste 30-40% of spend on underperforming segments. Enforce weekly review discipline or hire an agency to manage it.
From Broad Targeting to Revenue-Ready Audiences
B2B audience targeting in programmatic works when you build intelligent segments from firmographics, intent, and first-party data, then measure pipeline impact, not just clicks.
Most B2B marketers waste budget on broad targeting, generic creative, and CTR optimization. The companies that cut waste and lift conversions do the opposite. They translate ICP into account lists with layered signals (firmographic + technographic + intent). They segment by buying committee role and personalize creative with DCO. They activate via PMPs for quality and RTB for scale. They cap frequency at the account level. They optimize weekly based on cost per opportunity and pipeline contribution.
If your programmatic program isn’t generating qualified pipeline, you’re targeting the wrong audiences with the wrong measurement. Build from ICP to TAL. Layer intent and modeling. Activate with frequency controls. Measure opportunities created, not just impressions served.
Companies that build this system see 25-40% improvement in cost per opportunity within 90 days.
Ready to scope a 60-90 day B2B programmatic pilot with account-level targeting and pipeline measurement? Book a strategy call with our programmatic advertising team and we’ll show you exactly where your current program is leaking budget and how to fix it.
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Isaiah Studivent
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