🧪 Skills

IDX CMA Report

Generate comparative market analysis (CMA) and home valuation reports from IDX listing data and selected comparable properties. Use when a user wants to pick...

v0.1.0
❤️ 0
⬇️ 436
👁 1
Share

Description


name: idx-cma-report description: Generate comparative market analysis (CMA) and home valuation reports from IDX listing data and selected comparable properties. Use when a user wants to pick comps, estimate a market value range, produce seller-facing home evaluation reports, or publish an interactive CMA experience via Google Gemini Canvas or Google AI Studio.

IDX CMA Report

Use this skill to turn subject-property data and IDX comparables into a defensible CMA package with:

  • Structured valuation calculations
  • A written report for agent/client review
  • An interactive handoff prompt for Google Gemini Canvas / Google AI Studio

Workflow

1. Gather Data Through IDX MCP/CLI

Use the IDX MCP/CLI skill already available in the environment to pull:

  • Subject property details
  • Candidate comparable listings (closed/pending/active based on user preference)

Ask the user which comps to include when the choice is ambiguous. Keep 3 to 8 comps unless the user requests otherwise.

Normalize data to JSON using the schema in references/cma-input-schema.md.

2. Build CMA Outputs

Run:

python3 scripts/build_cma.py \
  --subject subject.json \
  --comps comps.json \
  --output-dir cma-output

The script produces:

  • cma-output/cma_report.md (summary report)
  • cma-output/cma_data.json (calculation payload)
  • cma-output/interactive_local.html (local interactive view)
  • cma-output/gemini_canvas_prompt.md (prompt for Google tools)

3. Review and Explain Adjustments

Before final delivery:

  • Show the comp set used
  • Show estimated range and central estimate
  • Explain assumptions and major adjustments in plain language
  • Flag missing/low-quality fields that weaken confidence

Use references/valuation-guidelines.md for adjustment defaults and confidence guidance.

4. Publish Interactive Version in Gemini

Use cma-output/gemini_canvas_prompt.md as the base prompt. Then:

  1. Open Google AI Studio or Gemini Canvas.
  2. Paste the generated prompt and provide cma_data.json.
  3. Ask for an interactive CMA web app with:
    • Comp table with sorting/filtering
    • Map-ready data fields (if lat/lng present)
    • Value-range visualization
    • Notes panel explaining adjustments
  4. Request hosted/shareable output if available in the chosen Google tool.

See references/gemini-canvas-publish.md for a copy-ready checklist.

Safety Rules

  • Treat outputs as broker/agent CMA support, not a licensed appraisal.
  • Surface data gaps, outliers, or stale comps before presenting a valuation.
  • Never invent listing attributes; mark missing values as unknown.
  • Keep a clear boundary between factual listing data and model assumptions.

References

  • references/cma-input-schema.md
  • references/valuation-guidelines.md
  • references/gemini-canvas-publish.md

Reviews (0)

Sign in to write a review.

No reviews yet. Be the first to review!

Comments (0)

Sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Compatible Platforms

Pricing

Free

Related Configs