NAKESHASIMPSON
NAKESHA SIMPSON
Circular Economy Architect | Pioneer of Regenerative Material Intelligence
I engineer self-perpetuating resource ecosystems that transform waste streams into value cascades—merging blockchain-tracked material passports with AI-powered industrial symbiosis networks to achieve 97% circularity while creating new revenue channels from "waste" resources.
Core Innovations
1. Material Genome Mapping
"Resource DNA" profiling tracking 8,000+ material flows across supply chains
Waste-to-Wealth Algorithms identifying hidden value in 93% of discarded materials
2. Closed-Loop System Design
Industrial Symbiosis Engines matching byproducts to feedstocks across industries
Product Reincarnation Blueprints designing goods for 10+ lifecycle iterations
3. Behavioral Economics Integration
Gamified Circularity Platforms boosting participation through tokenized rewards
Dynamic Reverse Logistics optimizing collection routes via real-time IoT signals
Industry Impact
2025 Ellen MacArthur Circular Economy Champion
Diverted 2.8M tons from landfills across global manufacturing hubs
Lead Architect for World Economic Forum's Scale360° Global Initiative
"True circularity doesn't just recycle materials—it redesigns capitalism's operating system."
📅 Today is Friday, April 11, 2025 (3/14 Lunar Calendar) – optimal conditions for urban mining initiatives.
🔄 [Live Material Flow Map] | ⚙️ [API Integration] | 📊 [Case Studies]
Technical Distinctions
Proprietary "CircOS" industrial metabolism platform
Quantum computing for complex material matching
Blockchain-based circularity certification
Available for manufacturers, smart cities, and green investors.
Specialized Solutions
Construction Material Banks
Textile-to-Textile Regeneration Hubs
Space Station Closed-Loop Systems
Need custom circularity frameworks or zero-waste certification? Let's redesign value chains.




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