Winners' Circle

Alexey Sheremetyev on Turning Your Home Into an Editable Digital Twin

32 min · 20 mei 2026
aflevering Alexey Sheremetyev on Turning Your Home Into an Editable Digital Twin artwork

Beschrijving

Alexey Sheremetyev is helping homeowners, designers, real estate professionals, builders, and contractors reimagine how physical spaces become digital. As Co-Founder and CPO of Planner 5D, Alexey helped build a platform that allows users to scan rooms with a phone camera and turn them into editable 3D home plans. Planner 5D recently won an AI Excellence Award for its Home Scanner technology. In this episode, Russ and Alexey explore how Planner 5D grew from a personal renovation problem into a platform used by more than 100 million people around the world. Alexey shares how his background in web design and user experience shaped the product, and why the goal was always to make home planning simple enough for consumers but powerful enough for professionals. They dive into Home Scanner, Planner 5D’s AI powered feature that uses computer vision to turn real rooms into editable digital twins. Alexey explains how the technology can recognize room layouts, measurements, furniture, colors, textures, flooring, and objects without requiring expensive hardware or specialized training. The conversation also covers why editable 3D plans matter more than static renderings, how AI helps handle messy real world spaces, and why Planner 5D’s years of user generated floor plans and designs have become one of its most valuable assets. Along the way, Alexey discusses renovation planning, real estate workflows, professional design collaboration, smart home possibilities, home maintenance, property history, and his vision for Planner 5D becoming a persistent digital memory for the home itself. Topics Covered: [00:01] Welcome and intro, Alexey Sheremetyev and Planner 5D’s AI Excellence Award win [00:29] What Planner 5D does for homeowners and professionals [00:37] Creating digital twins and editable 3D home plans [01:27] Turning room design into a consumer grade 3D experience [01:56] How Alexey’s own apartment renovation inspired Planner 5D [03:53] Why traditional room planning can be frustrating and inaccurate [04:18] How a design background shaped the Home Scanner experience [05:00] Using AI to automate manual measurements and room recreation [05:59] Why Home Scanner is technically harder than it looks [06:17] Planner 5D’s advantage after 15 years and more than 100 million users [07:35] Solving spatial reconstruction through software instead of costly hardware [07:56] Using computer vision instead of relying only on LiDAR [10:12] What Planner 5D learned from real users scanning real spaces [11:00] How real estate professionals use digital twins in their workflows [12:14] Building for both consumers and professional users [13:20] How builders and contractors use Planner 5D as a presale tool [14:27] Why editable 3D plans create a different user experience than static images [15:50] How Planner 5D checks scan accuracy for renovation planning [16:18] AI validation, human review, user feedback, and correction tools [18:51] Handling furniture, bad lighting, unusual room shapes, and messy spaces [19:30] Training AI with a large base of floor plans, designs, and user data [22:00] Using Planner 5D as a filing cabinet and memory system for the home [24:10] Why spatial reconstruction may go beyond home design [25:57] Planner 5D as the next stage of the smart home [27:46] Why the digital twin could travel with the house, not the owner [28:00] Smart home integrations, appliances, and connected home systems [29:30] Helping homeowners understand and maintain older properties [30:00] Using AI to recommend repairs and improvements that may increase home value [32:00] Why user expectations for instant answers and context are changing [33:59] Final thoughts on the future of Planner 5D and generative AI

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aflevering Khadim Batti on Whatfix, Userization, and Making Enterprise Software Work for People artwork

Khadim Batti on Whatfix, Userization, and Making Enterprise Software Work for People

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aflevering Saima Khan on Nutrition AI, Patient Meal Accuracy, and Safer Healthcare Food Service artwork

Saima Khan on Nutrition AI, Patient Meal Accuracy, and Safer Healthcare Food Service

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aflevering Enterprise AI Modernization with Rakesh Ravuri artwork

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aflevering Kenny Thompson on Blending Human Service and AI in Payments and Customer Experience artwork

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aflevering Paul Danter on Welocalize Opal, AI Translation, and the Future of Global Content artwork

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