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Lead Scoring Model Template

A lead scoring model template with demographic, firmographic, and behavioral scoring criteria. Includes point values, thresholds, and decay rules.

Use this template when building or revising your lead scoring model. A good scoring model separates high-intent, high-fit leads from noise so your SDR team spends time on the right prospects. Build this in your marketing automation platform (HubSpot, Marketo, Pardot) and sync scores to your CRM for routing and prioritization.

Scoring Model Structure

Lead scores are made up of two independent components. Both matter, and they should be tracked separately, not combined into a single number.

Total Score = Fit Score (demographic/firmographic) + Engagement Score (behavioral)

Why separate scores? A VP of Sales at a $50M company who visited your pricing page once is different from a marketing intern at the same company who downloaded 8 ebooks. The first has high fit, low engagement. The second has low fit, high engagement. Neither is an MQL yet, but for very different reasons.

Part 1: Fit Score (0-50 points)

Fit scoring evaluates whether the lead matches your ideal customer profile. This score does not change based on behavior — it is static unless the lead’s profile data updates.

Job Title / Seniority (0-15 points)

CriteriaPointsExamples
Decision maker (C-level, VP)15CRO, VP Sales, VP Marketing, CMO
Senior influencer (Director, Head of)12Director of RevOps, Head of Growth
Mid-level practitioner8SDR Manager, Marketing Manager, RevOps Lead
Junior / IC3SDR, Marketing Coordinator, BDR
Irrelevant title0Student, Intern, Consultant (unless target)
Unknown title2

Company Size (0-10 points)

Adjust these ranges to match your ICP:

Employee CountPointsRationale
50-200 (mid-market sweet spot)10Core ICP
201-10008Strong fit, longer sales cycle
20-495Can convert but lower ACV
1000+5Enterprise — needs different motion
Under 201Likely too small
Unknown3

Industry (0-10 points)

IndustryPointsRationale
SaaS / Technology10Primary vertical
Financial Services8Strong use case, proven results
Healthcare Tech7Growing vertical
E-commerce5Moderate fit
Non-profit / Education1Low fit, long procurement cycles
Unknown3

Geography (0-5 points)

RegionPoints
North America5
Western Europe4
ANZ3
Other1

Technology Stack (0-10 points)

Check for technologies in the lead’s stack that indicate fit:

TechnologyPointsRationale
Salesforce5Core integration, high intent signal
HubSpot (Marketing Hub)4Indicates marketing sophistication
Outreach or Salesloft4Indicates outbound motion exists
Using a competitor3Aware of the category
No relevant technology detected0

Maximum technology points: 10 (cap to prevent over-scoring)

Use data enrichment tools to fill in firmographic and technographic data automatically.

Part 2: Engagement Score (0-50 points)

Engagement scoring measures how actively a lead is interacting with your brand. This score changes over time and includes decay rules.

Website Behavior (0-20 points)

ActionPointsDecay
Visited pricing page10Resets after 30 days
Visited product/feature pages (3+)5Resets after 14 days
Visited case studies4Resets after 14 days
Visited careers page-5They might be job hunting, not buying
Visited blog post1 (max 5)Resets after 30 days
Visited comparison page (vs. competitor)8Resets after 14 days
Returned to site 3+ times in 7 days5Weekly reset

Content Engagement (0-15 points)

ActionPointsDecay
Downloaded gated asset (ebook, guide)5Resets after 30 days
Attended webinar (live)7Resets after 30 days
Registered for webinar but did not attend3Resets after 14 days
Watched product demo video (> 50%)6Resets after 14 days
Downloaded template4Resets after 30 days

Email Engagement (0-10 points)

ActionPointsDecay
Opened email1 (max 3)Rolling 30 days
Clicked email link3Rolling 30 days
Replied to email5Rolling 30 days
Unsubscribed-10Permanent

Direct Intent Signals (0-15 points)

ActionPointsDecay
Requested demo / contact sales15No decay — immediate MQL
Started free trial12Resets after 30 days
Visited pricing page + demo page in same session10Resets after 7 days
Asked question in chat5Resets after 14 days

MQL Threshold Matrix

A lead becomes an MQL when it crosses BOTH a fit threshold and an engagement threshold:

Engagement < 15Engagement 15-29Engagement 30+
Fit < 20NurtureNurtureMonitor (high activity, low fit)
Fit 20-34NurtureReviewMQL
Fit 35+Fast Track NurtureMQLMQL (Priority)

MQL actions by category:

CategoryActionSLA
MQL (Priority)Route to SDR immediately. Call within 5 minutes.< 5 minutes
MQLRoute to SDR. Call within 1 hour.< 1 hour
ReviewRevOps reviews weekly. May manually qualify or return to nurture.Weekly review
MonitorAdd to targeted nurture campaign. Alert SDR if fit improves.Automated
NurtureStandard nurture email sequence. No SDR action.Automated
Fast Track NurtureHigh-fit leads that haven’t engaged yet. SDR proactive outreach.Within 24 hours

Score Decay Rules

Engagement scores must decay over time. A lead who downloaded an ebook 6 months ago is not the same as one who downloaded it yesterday.

Time Since Last ActivityScore Adjustment
14 days inactive-5 points from engagement
30 days inactive-15 points from engagement
60 days inactiveReset engagement to 0
90 days inactiveMove to recycled status

Run decay calculations daily in your marketing automation platform.

Validation & Calibration

Review your scoring model monthly for the first quarter, then quarterly:

CheckHowTarget
MQL → SQL acceptance rateTrack how many MQLs sales accepts> 30%
MQL volume vs. capacityCompare MQL count to SDR team capacity15-25 MQLs per SDR per week
Score distributionHistogram of all lead scoresShould be a normal curve, not clustered at extremes
False positive rateMQLs that sales rejects — review the top 5 each monthIdentify scoring rules to adjust
False negative rateClosed-won deals where the lead never scored as MQL< 10% of deals

Feed scoring performance data into your GTM metrics dashboard and discuss trends in your weekly GTM report.

How to Customize

  • For PLG companies, add a Product Engagement category (0-20 points) that tracks in-app behavior: features used, integrations connected, team members invited, usage frequency. Product-qualified leads (PQLs) often outperform marketing-qualified leads on conversion rate, so weight product signals heavily.
  • For ABM-focused teams, add an “Account Tier” modifier to the fit score. Tier 1 target accounts get a 10-point bonus, Tier 2 gets 5 points. This ensures that even moderate engagement from a strategic account gets flagged for sales attention. Reference the ABM approach for account tier definitions.
  • For high-volume inbound (500+ leads/month), raise your MQL thresholds to prevent SDR overload. It is better to have fewer, higher-quality MQLs than to flood the team with marginal leads. Track your lead generation metrics to find the right threshold.

Want the how-to behind this template?

Check out our playbooks for step-by-step process guides.

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