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Market Cycle Positioner

Produces a comprehensive market cycle positioning report using the Mueller Real Estate Cycle model. Combines cycle timing analysis with capital markets intelligence (transaction volume, cap rate decomposition, capital flows, investor sentiment) to generate actionable buy/sell/hold recommendations across three time horizons.

What this skill does

Market Cycle Positioner is an A.CRE Intelligence Hub skill that gives your AI agent the analyst-grade workflow a senior commercial real estate professional would run. Produces a comprehensive market cycle positioning report using the Mueller Real Estate Cycle model. Combines cycle timing analysis with capital markets intelligence (transaction volume, cap rate decomposition, capital flows, investor sentiment) to generate actionable buy/sell/hold recommendations across three time horizons. Produces a comprehensive market cycle positioning report using the Mueller Real Estate Cycle model. Combines cycle timing analysis with capital markets intelligence transaction volume, cap rate decomposition, capital flows, investor sentiment to generate actionable buy/sell/hold recommendations across three time horizons. Activate it inside ChatGPT, Claude, Manus, or OpenClaw by saying something like "Use the Market Cycle Positioner skill" — the Hub routes the request to this skill and the underlying primary-source CRE data feeds backends automatically.

How you'll use it

"Use the Market Cycle Positioner skill"

Say something like this to your AI agent in the Hub, Claude, or ChatGPT to activate this skill.

Skill activation rules

Detailed routing logic, prompts the skill responds to, and operational guardrails as documented by the author.

Produces a comprehensive market cycle positioning report using the Mueller Real Estate Cycle model. Combines cycle timing analysis with capital markets intelligence (transaction volume, cap rate decomposition, capital flows, investor sentiment) to generate actionable buy/sell/hold recommendations across three time horizons.

What's inside

Market Cycle Positioner

You are a senior real estate economist and market cycle analyst with 18+ years tracking CRE market cycles, identifying inflection points, and advising on optimal entry/exit timing. Given a property type and geographic market, you definitively assess…

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Market Cycle Positioner

You are a senior real estate economist and market cycle analyst with 18+ years tracking CRE market cycles, identifying inflection points, and advising on optimal entry/exit timing. Given a property type and geographic market, you definitively assess where the market sits in the current cycle using the Mueller Real Estate Cycle model, decompose cap rates into their component drivers, analyze transaction market intelligence, compare against prior cycles, and produce actionable buy/sell/hold recommendations across three time horizons. You think in cycles, not snapshots. Every recommendation must be specific enough to act on.

When to Activate

Trigger on any of these signals:

Full instructions and any reference files ship in the .skill bundle.

Bundle structure
market-cycle-positioner/
├── SKILL.md                    # Required: instructions + metadata
└── references/                 # Optional: documentation
    ├── cycle-indicators.yaml   # 14.3 KB
    └── mueller-cycle-model.md  # 11.2 KB

Who built it

With contributions from Avi Hacker.

How to run it

Not in the Hub? Download the .skill bundle above and follow the A.CRE skills install guide → to load it into Claude Desktop, ChatGPT, Cursor, or any other agent that supports skills.

Already in the Hub. If you're an AI.Edge Pro or A.CRE Accelerator member, this skill is bundled into the A.CRE Intelligence Hub direct connector (MCP server) — just ask your agent.

About this skill

Third-Party skill. This skill is redistributed under the Apache-2.0 license and is not authored or endorsed by Adventures in CRE. Use is governed by the upstream license and the original creator's terms. Original attribution: Mario Urquia (link) and contributors (Avi Hacker).