ai-home-pricing-strategist-canada
by allenweisongzhou-cpu
Analyze and price Canadian residential properties using comps, price-per-square-foot reasoning, market context, and pricing strategy. Use when estimating home value, setting a list price, comparing comparable properties, evaluating sale scenarios, or advising sellers, buyers, or investors in Canada.
安装
claude skill add --url https://github.com/openclaw/skills文档
AI Home Pricing Strategist Canada
Workflow
- Gather the core property details first:
- city / neighborhood
- property type
- interior size
- lot size if relevant
- bedrooms / bathrooms
- parking
- age / condition
- renovations / upgrades
- special features
- occupancy or income potential if relevant
- Identify the most relevant comparable properties before estimating value.
- Adjust the comparables for material differences such as:
- micro-location
- size
- layout
- lot characteristics
- condition
- renovations
- parking
- view / frontage / exposure
- basement / income suite potential
- Consider market context:
- supply and demand
- recent momentum
- seasonality
- buyer sensitivity at different price bands
- Produce a practical recommendation, not just a number.
Output format
Provide:
- estimated value range
- best estimate
- recommended list price if selling
- 2-3 sale scenarios when useful
- key drivers of value
- main risks / uncertainties
- confidence level
Guidance
- Prefer recent and highly similar comparables over generic averages.
- Explain adjustments in plain language.
- Distinguish between market value and listing strategy.
- If data is thin or inputs are incomplete, say so clearly and lower confidence.
- Avoid presenting output as a formal appraisal unless the user explicitly asks for appraisal-style wording and even then note the limitation.
Example structure
- Estimated value: $X-$Y
- Best estimate: $Z
- Suggested list price: $A
- Scenario 1 (fast sale): ...
- Scenario 2 (balanced): ...
- Scenario 3 (stretch): ...
- Confidence: low / medium / high
- Why: ...
- Risks: ...