AI Systems Instructor • Real Estate Technologist
Quick Answer: This fill-in-the-blank lead scoring worksheet helps you build a weighted system that ranks leads by likelihood to transact. Define your criteria, assign weights, set thresholds, and let AI score each lead so you know exactly who to call first every morning.
Most agents treat every lead the same. That's why they burn out chasing people who registered on Zillow at 2 AM and never came back. This worksheet gives you a weighted scoring system so AI can rank your leads by likelihood to transact—and you can spend your time on the ones who matter.
The AI persona for scoring context
e.g., real estate lead analyst and conversion strategist
Your geographic market
e.g., Nashville and Middle Tennessee
Your scoring factors (e.g., timeline urgency, budget clarity, engagement frequency, mortgage status, property views, response rate)
e.g., Timeline Urgency (buying within 0-3 months vs 12+ months)
Multiplier for each criterion based on importance (1x-3x)
e.g., 3x (highest priority)
Where the lead originated
e.g., Ylopo Facebook ad, Zillow inquiry, open house sign-in
Observable actions the lead has taken
e.g., Viewed 14 listings in East Nashville, saved 3 favorites, opened last 4 emails
Score that triggers hot-lead routing
e.g., 70 out of 100
Score that triggers nurture sequence
e.g., 40 out of 100
Score below which lead enters long-term drip
e.g., 25 out of 100
Your CRM for implementation notes
e.g., Follow Up Boss
Follow these steps to get the best results. Each step maps to proven frameworks taught in AI Acceleration.
Pick 5-6 factors that actually predict whether someone will transact. Timeline urgency and mortgage pre-approval are almost always the two highest-weight factors. Engagement frequency (how often they search, open emails, respond to texts) tells you if they're actively in-market. Avoid vanity metrics like 'number of page views' unless paired with recency.
Not all criteria matter equally. In Nashville's competitive market, a pre-approved buyer with a 60-day timeline is worth 3x a casual browser. Assign weights of 1x, 2x, or 3x to each criterion. Your weights should reflect YOUR conversion data—if open house attendees close at 2x the rate of online leads in your market, weight that higher.
Define three tiers: hot (agent calls within 5 minutes), warm (enters AI nurture sequence), and cold (long-term drip). Most agents set the hot threshold at 65-75% of the maximum possible score. Test your thresholds against your last 20 closed deals—if those clients would've scored below your hot threshold, your weights are wrong.
Pull 10 recent leads from your CRM. Five that closed, five that went cold. Run them through the scoring template. If the closed leads don't score above your hot threshold, adjust your criteria and weights. This calibration step separates a useful scoring system from a theoretical exercise.
Once your scoring model is calibrated, build it into your CRM. Follow Up Boss uses smart lists and tags. kvCORE has built-in lead scoring. If your CRM doesn't support scoring natively, use the AI template to score leads manually each morning—it takes 5 minutes and tells you exactly who to call first.
Template with Your Details
You are a real estate lead analyst and conversion strategist specializing in Nashville and Middle Tennessee. I need you to score the following lead based on the weighted criteria below. Scoring Criteria (each scored 1-10, multiplied by weight): 1. Timeline Urgency (buying within 0-3 months = 10, 3-6 months = 7, 6-12 months = 4, 12+ = 2) — Weight: 3x 2. Mortgage Pre-Approval Status (pre-approved = 10, in process = 7, not started = 3) — Weight: 3x 3. Engagement Frequency (daily searches = 10, weekly = 7, monthly = 4, none = 1) — Weight: 2x 4. Budget Clarity (specific range stated = 10, vague = 5, unknown = 2) — Weight: 2x 5. Response Rate (responds within 1 hour = 10, same day = 7, days = 4, never = 1) — Weight: 1x 6. Lead Source Quality (referral/repeat = 10, open house = 8, organic = 6, paid ad = 5, Zillow = 4) — Weight: 1x Lead Information: - Name: Sarah Chen - Source: Ylopo Facebook ad (East Nashville condos) - First contact date: January 15, 2026 - Last activity: February 8, 2026 (viewed 6 listings, saved 2) - Behaviors observed: Viewed 22 listings in East Nashville over 3 weeks, saved 4 favorites all in $350-425K range, opened 6 of 7 emails, responded to 1 rDrip text - Budget range: $350,000-$425,000 (stated in rDrip conversation) - Timeline stated: 'Moving in March or April' Scoring threshold: 70 points = hot lead, route to agent immediately. Below 45 = nurture sequence. Below 25 = long-term drip only. CRM system: Follow Up Boss
AI-Generated Result
Alternative versions for different use cases.
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