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Blockchain in Health - From Pilots to Mainstream and Implications for AI
0
Zitationen
4
Autoren
2024
Jahr
Abstract
Speakers delve into and beyond the previously published BHHTY journal article “Moving Beyond Proof of Concept and Pilots to Mainstream: Discovery and Lessons from Blockchain in Healthcare,” located at https://doi.org/10.30953/bhty.v6.280. This continuous enterprise blockchain technology journey extends the framework and solution assemblies including further developments, with cross over into generative AI and ethics.
 Objectives
 
 Learn specific examples on the economics of blockchain revealing low-hanging fruit for the move from pilots to adoption. Explore concepts such as:
 
 
 Data integrity, minimal data, inter-entity streamlining leading to efficiencies, and what is already possible with tech stack developments and economics in efficiency (in millions) from the previously published BHTY article at DOI: https://doi.org/10.30953/bhty.v6.280
 Learn from other verticals to build a framework that is more comprehensive encompassing global perspectives
 Future proofing and stair-stepping design for an evolving technology – holistic guidance to find and execute the opportunities
 
 
 Obtain a framework for blockchain adoption based on the article. In addition, authors address the academic view of blockchain adoption, and that it is a combination of tech, policy, economics, consumer engagement, and operationalization.
 Acquire multi-dimensional discovery and specific blockchain constructs including provenance- consensus, trust maps, convergence, dApp human loops, and future proofing /stair-stepping
 Grasp global perspectives on evolving frameworks with in many verticals and the multi-dimensional nature of blockchain transformation, operationalization, blockchain-enterprise landscape, and AI automation.
 Gain a better understanding of why is blockchain an essential technology for the future of responsible AI and for scalability of solutions
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