Mapped for Commercial Real Estate
Portfolio intelligence. Building-level control.
From offices and retail to hotels and campuses, Mapped unifies building data to cut costs, optimize operations, and enhance tenant value.
The challenge
Siloed building systems waste time and money
Budgets are tightening as tenant demands rise. Disconnected building data across portfolios makes it hard to drive efficiency or scale innovation.
Our solution
Mapped solves CRE challenges
Mapped unifies HVAC, lighting, occupancy, access, and utility data in one platform every team can use. Deployed in days, it powers cost savings, efficiency, and tenant value across portfolios.
Contact SalesEnable automated lighting and HVAC through real-time occupancy, schedules, IAQ, and weather data. Reduce energy waste and improve comfort with continuous optimization.
How Mapped Works
Connect, structure, and use your data

1. Connect
Plug in our gateway or connect virtually. No site visit required. Once connected, Mapped automatically ingests data from any system, sensor, or source — modern or legacy, cloud or on-prem.

2. Map
We use AI and machine learning to organize, classify, and enrich your data. Mapped supports BRICK, Haystack, or your own
custom ontology.

3. Use
Structured data flows wherever you need
it — dashboards, automation tools, apps,
data warehouses or analytics — via a modern, flexible interface.

Why CRE Teams Choose Mapped
Built for speed, scale, and flexibility
- Works with both legacy systems and new operating tech
- Reliable data you can use anywhere, with no vendor lock-in
- 10x faster time to value than traditional integration — results in days, not years
- No rewiring, retrofits, or replatforming required
- Enterprise-ready with built-in flexibility and SOC 2 compliance
for security and peace of mind
Explore IndustriesProven Results that Scale
Real savings, faster performance
Mapped is helping CRE teams move faster, reduce costs, and unlock more value from the building systems they already have.

up to 95%
faster data integration

up to 70%
less integration and middleware costs

10-15%
energy savings across portfolios

20%
savings in downtime costs
Deployed across 250M+ square feet and 1,000+ properties — from corporate offices and college campuses to airports and hospitals.
ROI SPOTLIGHT
See your potential OpEx savings
Modeling based on a real Mapped deployment shows the potential for significant savings at scale.
Figures modeled on a multi-site 20M sf portfolio using Mapped across building systems. Actual results may vary by site, system, and strategy.
$20M / yr
OpEx savings ($1/sf)
$19.3M
Net savings after platform costs
$10M
NOI increase from rent
$143M+
Portfolio value uplift (7% cap rate)

Ready to make your commercial real estate data work for you?
Let’s simplify your stack and unlock smarter, faster outcomes across every property, from offices and retail to campuses and hospitals.

© Mapped 2026. All rights reserved. SOC compliant.
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