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Workflow 2 of 10 · Realtor Workflow Library

Buyer Journey: Inquiry to Showing to Offer to Close

From qualified buyer lead to keys delivered, with the Buyer Representation Agreement signed before the first tour
What this workflow fixes
Buyer agents spend 4–6 hours per active buyer per week on rescheduling, listing curation, comp pulls, and milestone updates that leak into inbox chaos and missed contingency deadlines.

The workflow today

Read left to right. Each row is one role. AI badges mark where Gugubrand agents replace or assist human work.
ROLES PROCESS FLOW — LEFT TO RIGHT Buyer Lead Buyer Agent Showing Agent TC Lender External Lead / Listing Agent Tour partner Transaction Coordinator Preferred lender Pre-approved — continue Not pre-approved — park in nurture Yes — write offer No — continue showings Accepted Not accepted — revise or move on S2.1 · START Qualified buyer lead arrives S2.2 Consult & sign BRA AI S2.3 Pre-approved? AI S2.4 MLS saved search & alerts AI S2.5 Schedule showings AI+ S2.6 Tour homes & capture feedback S2.7 Write offer? AI+ S2.8 Pull comps & draft CMA AI+ S2.9 Write offer & collect EMD S2.10 Accepted? AI S2.11 Open loop & track milestones AI S2.12 · END Final walkthrough, keys & gift EXIT Revise or move on EXIT Loop to showings EXIT Park in nurture
AIAI Replace — agent owns this step
AI+AI Assist — human-in-the-loop
Regulated — requires legal review
Human bottleneck
Repetitive admin
Loop-back / off-flow branch

Where Gugubrand AI agents deploy

Eight AI interventions across eight steps. Tinted rows touch regulated channels.
Step Step label AI capability Automation Difficulty Time saved Compliance
S2.3 Refer to lender for pre-approval Lender hand-off SMS + follow-up cadence Replace low 30 min/buyer TCPA
S2.4 Set up MLS saved search & alerts Listing match + curated property emails Replace low 2 hr/buyer
S2.5 Schedule showings Showing scheduling + route optimization + confirmation texts Replace med 20–40 min/showing day TCPA
S2.6 Tour homes & capture feedback Voice-to-CRM tour note capture Assist med 30 min/showing day
S2.8 Pull comps & draft CMA narrative Offer comp analysis + CMA narrative generation Assist low 20–30 min/offer State RE Commission
S2.9 Write offer & collect EMD Contract clause flagging + missing-disclosure detection Assist med 30–60 min/offer State RE Commission
S2.11 Open transaction loop & track milestones Auto-parse contract dates into milestone calendar Replace low 20–40 min/file
S2.12 Final walkthrough, keys & closing gift Milestone update SMS to buyer Replace low 1–2 hr/transaction TCPA

Executive summary

Where to start, what to wait on, and a realistic rollout order.
Highest-ROI intervention

Listing match + curated emails

S2.4

S2.4 — Behavioral listing match and curated property emails save roughly 2 hours per buyer per week, are low-difficulty, and carry no TCPA or State RE Commission exposure.

Riskiest to automate

Contract clause flagging

S2.9

S2.9 — Contract clause flagging and missing-disclosure detection touches binding contract language and disclosure compliance, where any miss invites State RE Commission exposure and broker liability.

Implementation order

Three pilots, in sequence

S2.4 → S2.11 → S2.6

Pilot 1: Listing match emails at S2.4 — low difficulty, non-regulated, immediate buyer engagement lift. Pilot 2: Auto-parse contract dates at S2.11 — eliminates 20–40 min of TC setup per file and prevents missed-deadline contingency failures. Pilot 3: Voice-to-CRM tour notes at S2.6 — closes the showing-feedback data gap before tackling regulated touchpoints like contract clause flagging.

Compliance note. AI intervention recommendations in this diagram are guidance, not legal advice. Any AI deployment touching lead communication (TCPA), listing copy or ad targeting (Fair Housing), or contract/disclosure/CMA generation (state real estate commission rules) requires review by a US real estate attorney before implementation. Time-savings figures are estimates based on industry sources; benchmark against your team’s actual data before quoting them externally.