Proof of Results

Published proof that construction AI can move real numbers.

Mar Casa is the lead example here because the public materials tie AI to specific construction outcomes on a live AED 1.1 billion development. The rest of the page expands that benchmark set with other published construction and field-service AI proofs.

Published Case Studies

Verified results buyers can inspect today

These figures come from public vendor case studies and official product pages in construction and field-service AI.

CompanyUse casePublished resultSource
Deyaar / Mar CasaAI-assisted construction management pilot on a luxury residential towerDigital Construction Hub's recap of Deyaar's Construction Technology ConFex presentation says the Mar Casa pilot cut engineering submittal turnaround time by 57% and used AI-trained risk agents plus faster reporting workflows.Digital Construction Hub recap of the Mar Casa presentation
Deyaar / Mar CasaProject scale and asset contextDeyaar describes Mar Casa as an AED 1.1 billion seafront tower in Dubai Maritime City with a sea-wave facade, smart and sustainable infrastructure, and a target completion in Q4 2026.Deyaar project launch announcement
ALICE TechnologiesConstruction scheduling and optioneering$127B of construction projects worldwide on its homepage, plus published benchmarks of 17% project-duration reduction, 14% labor savings, and 12% equipment savings.ALICE homepage and preconstruction metrics
ALICE TechnologiesProject recovery and schedule compressionPublished airport expansion example showing a 10.2% faster schedule, plus another case showing an 18% duration reduction and 30% cost reduction.ALICE project recovery examples
Beam AIEstimating throughput and bid volumeBig D Paving reported 5X more bids sent per month and about 60 hours saved weekly after adopting Beam AI.Beam AI Big D Paving case study
MakersHubAccounts payable and reconciliation automationCahill Construction reported 64+ hours saved per month and 4X faster credit card reconciliation after AP automation.MakersHub Cahill Construction case study
How GangBoxAI Uses This

What these published numbers mean for a contractor rollout

GangBoxAI is not trying to imitate one vendor product. The point is to apply the same proof standard across the contractor problems buyers actually care about.

Lead response and booking

Published voice-agent and scheduling cases show that speed-to-response and call coverage are measurable operating levers, not soft marketing claims.

Estimating and admin relief

Published Beam AI and MakersHub cases show how estimating throughput, bid volume, and accounts-payable work can be measured in hours saved and output gained.

Visibility and proof infrastructure

GEO Smith extends the proof model into AI search by measuring missed queries, competitor patterns, and the public proof assets that still need work.

Measurement Framework

What we try to prove in a real rollout

AreaBaseline captured30-day proof target90-day proof target
Lead response and bookingMissed calls, slow follow-up, inconsistent callback coverage, booked-vs-lost lead patternsLive call coverage or follow-up automation pilot with response and booking recordsMeasured improvement in response discipline, booking flow, and handoff consistency
Estimating and admin workHours spent on takeoffs, routing, inbox work, AP entry, or repetitive documentationOne workflow mapped and simplified with fewer manual touchesDocumented time recovery, faster routing, or cleaner approval flow
AI search visibility and proofCurrent mentions, missed queries, competitor patterns, service-page and proof gapsUpdated proof assets, clearer service-page language, or local signal cleanupRerun-ready visibility comparison showing what moved and what still needs work
Operational rollout disciplineLoose workflow ownership, unclear software touchpoints, and no roadmapNamed owner, scoped pilot, and software mapPhase-two roadmap backed by first-wave proof instead of guesswork

Ready to turn benchmark proof into your own operating proof?

Take the diagnostic and map the first deployment against your own lead flow, admin drag, and visibility gaps.