Event

Decentralized AI Roundtable

Monday
July 29, 2024
12:00pm — 2:00pm ET

In today's AI landscape, data, computation, and governance are centralized. Decentralized AI offers a promising alternative leveraging intelligent, network-based approaches to improve collaboration, incentives, and innovation at the edges. It offers a promising alternative enabling collaboration between distrusted, disincentivized, and disinterested entities.

Join us to explore how decentralized AI can contribute to healthcare, finance, supply chains, and climate science. Discover how secure data markets, multi-dimensional models, and verifiable AI can democratize AI, cultivating innovation and collaboration for a sustainable and intelligent future.

Problems with the Centralized AI Paradigm

While today's AI depends upon centralized data and computation, society is much more decentralized. Forcing these fragmented stakeholders to become centralized in a top-down manner will likely result in forced adoption but marginalization of minor players or outliers, such as patients with rare or stigmatized diseases.

  1. Collaboration friction Data misuse by large companies and recent cybersecurity breaches have exposed the vulnerability of centralized repositories holding vast amounts of sensitive information. This not only puts existing centralized data lakes at privacy risk but also creates friction in collaboration preventing individuals and organizations from exchanging wisdom or insights.
  2. Governance Pitfalls  Large companies like OpenAI and Google's Gemini have struggled recently with governance decisions that satisfy all stakeholders. It puts an unreasonable burden on a small group of individuals to deploy AI services for the rest of the world. Excessive consolidation of data, models, talent and decision-making (steering of model's outputs) can be fragile to the ecosystem.
  3. Compensation Conflicts Recent lawsuits against major AI companies highlight the problem of a single entity extracting value from content creators and data producers without their consideration or consent for their data contributors, leading to disputes over intellectual property rights and compensation.
  4. Innovation Friction Centralized corporate networks often lock users into their platforms to reduce churn and prevent competition. However, such practices stifle innovation and concentrate power in the hands of service providers, creating barriers to entry, and limiting the overall growth and accessibility of the AI ecosystem.

Potential of decentralized AI

  1. AI over siloed data Fragmented industries with multiple stakeholders, such as healthcare and climate science, are poised to benefit from a decentralized AI ecosystem. In healthcare, sharing data across organizations is a big concern. Decentralized AI offers a solution by incentivizing collaboration and preserving data privacy, potentially leading to breakthroughs in disease diagnosis and treatment personalization.
  2. Collaborative and Responsible AI Responsible AI development requires multiple entities to ensure safety and auditability throughout the lifecycle of AI systems. The current centralized paradigm makes it challenging to audit the practices of large tech companies or organizations. In contrast, a decentralized ecosystem will promote greater plurality and transparency. By distributing responsibilities and control across multiple entities, decentralized AI reduces the risk of catastrophic failures stemming from a single compromised component.
  3. Incentivized and Participatory AI A decentralized AI ecosystem can lead to a more equitable distribution of technological benefits. The participatory and permissionless nature of these systems allow individuals from diverse demographics to benefit from and contribute to such a system.
  4. Improved accessibility of resources Decentralized AI can accelerate the development of advanced algorithms and systems by making large swaths of data and computational resources available to individuals and organizations outside big tech companies. Researchers can tap into vast datasets and aggregated statistics, enabling large-scale experiments and hypothesis generation previously only possible for big organizations.
More Events