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vertical-real-estate

avelikiy
更新日 23 days ago
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について

このスキルは、住宅不動産分野の専門知識を提供し、技術仕様策定において単純なCRUD前提を防ぎます。MLS/IDXデータ、物件情報のライフサイクル、取引調整といった重要概念を体系化し、アーキテクチャが業界の実態を反映することを保証します。不動産テック製品(物件情報、CRM、取引ツールなど)の仕様策定時に活用し、正確なドメインモデルの基盤構築に役立ててください。

クイックインストール

Claude Code

推奨
メイン
npx skills add avelikiy/great_cto -a claude-code
プラグインコマンド代替
/plugin add https://github.com/avelikiy/great_cto
Git クローン代替
git clone https://github.com/avelikiy/great_cto.git ~/.claude/skills/vertical-real-estate

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

Vertical: residential real estate — don't spec it naively

Real estate looks like generic CRUD (a listing is a record, a lead is a contact, a deal is a checklist). It isn't. The domain has hard-won structure — MLS quirks, status lifecycles, months-long sales cycles, agent-vs-brokerage data boundaries — that a naive build ignores and then rebuilds. This skill front-loads that structure so the spec is right the first time.

Incumbents to know (and what they own): Lone Wolf / Propertybase (brokerage CRM + back office), Follow Up Boss (lead-to-close CRM, the nurture gold standard), CINC (lead-gen

  • CRM), Top Producer (legacy CRM), kvCORE / BoldTrail (all-in-one platform). They are expensive, broad, and switching-cost-heavy — which is why the wedge matters (see per-product).

1. Domain vocabulary (use these terms in the spec)

  • MLS (Multiple Listing Service) — regional database of listings; there are ~500+ MLSs in the US, each its own system, login, and field set. There is no single national MLS.
  • IDX (Internet Data Exchange) — the rules + feed that let a brokerage display other brokers' MLS listings on its own site. Governed by per-MLS display/redistribution rules.
  • RESO — the standards body. RESO Web API (modern REST/OData feed) and RESO Data Dictionary (canonical field names) are the standard — but adoption and cleanliness vary per MLS. "RESO-compliant" still means per-MLS quirks.
  • Listing status — lifecycle, not a flag: active → pending / contingent → closed (plus coming soon, active under contract, withdrawn, expired, sold). Status drives display rules and downstream automation.
  • Buyer agent vs seller (listing) agent — opposite sides of a transaction; data and permissions differ. A contact can be a buyer lead and later a seller.
  • Brokerage vs agent — the brokerage holds the license and (often) the data; the agent is the user. Commission split is how the deal's commission divides brokerage↔agent.
  • Escrow / settlement / closing — the funded close; contingencies (inspection, financing, appraisal) are conditions that must clear first, each with a deadline.
  • Transaction coordinator (TC) — the person who shepherds a deal from accepted-offer to close: chasing docs, signatures, and deadlines. Often done in Dotloop / Excel today.
  • CMA (Comparative Market Analysis) — comp-based price estimate an agent gives a seller.
  • Lead-to-close funnel — capture → nurture → active → under-contract → closed; months long.
  • Syndication portalsZillow, Realtor.com, Redfin, Trulia, etc.; a listing is pushed (syndicated) to many; our copy is one of many downstream copies.

2. Non-obvious domain rules (the stuff that breaks naive specs)

  • There is no one MLS schema. Each MLS has its own auth, field quirks, photo handling, and redistribution rules. RESO standardizes the intent but the data is messy per-MLS. Model an integration adapter per MLS, not one global importer.
  • Transaction-coordination is the underserved, high-pain wedge. It's the part still done in Dotloop/Excel with manual deadline-chasing. Low switching cost (it's not the system of record for leads), high pain, clear ROI. Lead this if choosing where to land first.
  • A listing has a canonical source and many syndicated copies. The MLS record (or our record) is the source of truth; portal copies derive from it. Don't model portal copies as independent listings — model source + syndication targets.
  • Lead nurture is long-cycle. A real-estate lead can sit warm for 6–18 months. The CRM's job is not close-this-week; it's stay-top-of-mind for months with automated drip until the lead is ready. A short-funnel CRM design is simply wrong for this domain.

3. What a naive build gets wrong

  • One MLS schema. Assuming a single import format. Reality: per-MLS adapter, per-MLS redistribution rules, RESO Data Dictionary as the target normalization, not the source.
  • Listing without status lifecycle + syndication canonical. A flat "listing" row with no status state machine and no source/target model can't drive display rules or feed portals.
  • TC checklist without deadline + contingency tracking. A plain task list misses the point: the value is enforced deadlines and contingency clearing, with alerts.
  • Lead CRM without long-cycle nurture. Stage + next-touch + multi-month drip is the core; a pipeline-only CRM (close/lost in weeks) doesn't fit.
  • Ignoring agent-vs-brokerage data boundaries. Who owns the lead and listing data — agent or brokerage — is a real permission/ownership boundary. Bake it into the model, not bolt it on later.

4. Must-model entities

Seed the domain model with these (exact fields negotiable; the shape is not):

  • Listingstatus (lifecycle state machine, §1), source_ref (MLS id / RESO key — the canonical source), syndication_targets[] (Zillow/Realtor.com/… with per-target state), price, address, beds/baths, floorSize, photos, listing_agent, brokerage.
  • Leadstage (capture→nurture→active→under-contract→closed), last_contact_at, owning agent, source, buyer/seller intent, and an attached long-cycle nurture (drip campaign, next-touch date). Tie to [[lifecycle-messaging]].
  • Transactionchecklist[] (tasks), deadlines[] (each dated + owner + alert), contingencies[] (inspection/financing/appraisal, each with clear-by date + status), documents[] (e-signed), parties (buyer/seller/agents/TC), close date.
  • Property / Unit + MaintenanceRequest (status, priority, tenant, assignee, photos), Lease/rent (amount, due date, tenant), tenant-comms thread. (property-mgmt.)

5. Per-product notes (wedge + the one domain thing to get right)

  • listings (content) — the one thing: MLS/IDX correctness — per-MLS adapter, source_ref canonical, status lifecycle, redistribution-compliant display. Pairs with [[local-seo]] (listings must rank + syndicate; our page is the canonical, portal copies point back) and [[migration-ready-schema]] (source_ref = MLS/RESO key for re-import/dedupe).
  • lead-crm (crm) — the one thing: long-cycle nurture — months-long automated drip, stage + last-contact, top-of-mind not close-now. Competes with Follow Up Boss; the bar is nurture quality. Pairs with [[lifecycle-messaging]].
  • transaction-coordination (crud) — the one thing: this IS the wedge — low switching cost, high pain, replaces Dotloop/Excel. Get deadline + contingency tracking right (dated, owned, alerted); the checklist alone is table stakes. Recommend landing here first.
  • property-mgmt (crud) — the one thing: maintenance-request + rent + tenant-comms as first-class flows; don't reduce it to a generic ticket list. Don't hold tenant/owner funds naively (see §6 escrow/trust).

6. Compliance (light — flag for the reviewer, don't solve here)

  • MLS / IDX redistribution + display rules — per-MLS; controls what may be displayed, for how long, with what attribution. The integration adapter must honor them.
  • Fair Housing Act — listing/ad copy and targeting must not discriminate (protected classes). Applies to listing descriptions and any lead-targeting automation.
  • Escrow / trust-account basics — do not hold or move client/tenant funds naively. Earnest money and rent flow through trust/escrow with strict accounting; integrate a compliant provider rather than building a wallet.
  • E-sign — transaction docs need legally-valid e-signature (ESIGN/UETA); use a real e-sign provider, capture audit trail.

Output

When applied, contribute a Domain model block to the architecture/design doc:

## Domain model (real estate)
- entities: Listing(status lifecycle + source_ref + syndication_targets) · Lead(stage + last_contact + nurture) · Transaction(checklist + deadlines + contingencies + docs) · Property/Unit + MaintenanceRequest
- wedge: <which product lands first + why> (default: transaction-coordination)
- MLS/IDX: per-MLS adapter · RESO Data Dictionary as normalization target · redistribution rules honored
- nurture: long-cycle (6–18mo) drip, not short funnel
- compliance flags: IDX display rules · Fair Housing (copy) · escrow/trust (no naive funds) · e-sign

GitHub リポジトリ

avelikiy/great_cto
パス: skills/vertical-real-estate
0
agentic-codingclaude-code-pluginclaude-code-skillsclaude-code-subagentscode-reviewcto
FAQ

Frequently asked questions

What is the vertical-real-estate skill?

vertical-real-estate is a Claude Skill by avelikiy. Skills package instructions and resources that Claude loads on demand, so Claude can perform vertical-real-estate-related tasks without extra prompting.

How do I install vertical-real-estate?

Use the install commands on this page: add vertical-real-estate to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.

What category does vertical-real-estate belong to?

vertical-real-estate is in the Other category, tagged ai.

Is vertical-real-estate free to use?

Yes. vertical-real-estate is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.

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