The post Jeffrey Quesnelle: Centralization in AI is stifling innovation, how decentralization can democratize access, and the critical role of smart contracts inThe post Jeffrey Quesnelle: Centralization in AI is stifling innovation, how decentralization can democratize access, and the critical role of smart contracts in

Jeffrey Quesnelle: Centralization in AI is stifling innovation, how decentralization can democratize access, and the critical role of smart contracts in AI training



Centralization in the AI industry is driven by the concentration of capital in large companies. Decentralization technologies can address both funding and operational challenges in AI. Crypto rails enable permissionless access to computing resources, enhancing decentralization.

Key Takeaways

  • Centralization in the AI industry is driven by the concentration of capital in large companies.
  • Decentralization technologies can address both funding and operational challenges in AI.
  • Crypto rails enable permissionless access to computing resources, enhancing decentralization.
  • AI data centers often experience inefficiencies, with many GPUs remaining underutilized.
  • Smart contracts are essential for task assignment and accountability in decentralized AI training.
  • Robust infrastructure is crucial for maintaining fault tolerance in decentralized systems.
  • Regulatory capture poses a threat to open-source AI, potentially making it illegal.
  • Significant efficiency improvements are key to staying competitive in AI development.
  • The pursuit of intelligence per unit of energy is a driving force in AI advancements.
  • There is potential for significant improvements in AI efficiency, with many opportunities for breakthroughs.
  • Open-source AI faces legal challenges that could impact its future development.
  • Achieving a thousandfold efficiency improvement is a strategic goal in AI research.
  • Balancing decentralization and centralization is crucial for the future of AI technology.

Guest intro

Jeffrey Quesnelle is the co-founder and CEO of Nous Research. He previously held senior roles at Eden Network and Intrepid Control Systems, where he advanced software engineering for decentralized networks and autonomous vehicles. At Nous Research, he leads efforts to develop open-source AI models that rival centralized systems and prevent control by a few dominant companies.

The centralizing force of capital in AI

  • — Jeffrey Quesnelle

  • Capital concentration in AI leads to centralization, impacting open-source efforts.
  • Large companies dominate the AI landscape through significant financial resources.
  • The centralization of power and resources poses challenges for decentralized technologies.
  • — Jeffrey Quesnelle

  • Discussions on decentralization must address the impact of capital concentration.
  • The balance between decentralization and centralization is crucial for AI’s future.
  • Capital concentration can stifle innovation in open-source AI initiatives.

Decentralization’s role in AI development

  • Decentralization technologies can facilitate capital formation and distributed computing for AI.
  • — Jeffrey Quesnelle

  • Decentralization addresses funding and operational challenges in AI development.
  • Crypto technologies enhance resource allocation and operational efficiency.
  • — Jeffrey Quesnelle

  • Decentralization empowers smaller players in the AI industry.
  • Distributed computing enables more efficient AI training processes.
  • Decentralization can democratize access to AI resources and opportunities.

Inefficiencies in AI data centers

  • Centralization of AI technology leads to imbalances in GPU usage within data centers.
  • — Jeffrey Quesnelle

  • Inefficiencies in data centers affect costs and resource utilization in AI infrastructure.
  • Companies often pay for more GPU capacity than they actually use.
  • Addressing GPU utilization imbalances can reduce operational costs.
  • Data center inefficiencies highlight the need for better resource management.
  • Optimizing GPU usage is crucial for improving AI infrastructure efficiency.
  • The imbalance between paid and used GPU capacity is a critical issue in AI.

The importance of smart contracts in decentralized AI

  • Smart contracts assign tasks and ensure accountability in decentralized training.
  • — Jeffrey Quesnelle

  • Accountability is vital in permissionless, decentralized systems.
  • Smart contracts maintain system integrity by preventing gaming of the system.
  • Decentralized training relies on robust infrastructure for fault tolerance.
  • — Jeffrey Quesnelle

  • Fault tolerance is essential for maintaining reliability in distributed systems.
  • Smart contracts play a crucial role in task assignment and system integrity.

Regulatory challenges for open-source AI

  • Regulatory capture could make open-source AI illegal, posing a significant threat.
  • — Jeffrey Quesnelle

  • Proposed legislation could hold developers criminally liable for misuse of open-source AI.
  • Legal challenges threaten the future of open-source AI development.
  • Regulatory efforts may stifle innovation in the open-source AI community.
  • Developers must navigate complex legal landscapes to protect open-source AI.
  • Open-source AI faces potential legal ramifications that could impact its growth.
  • The balance between regulation and innovation is critical for open-source AI’s future.

Efficiency as a competitive advantage in AI

  • Achieving significant efficiency improvements is crucial for AI competitiveness.
  • — Jeffrey Quesnelle

  • Efficiency improvements drive advancements in AI technology.
  • The pursuit of intelligence per unit of energy is a key competitive factor.
  • — Jeffrey Quesnelle

  • Lowering energy costs while increasing intelligence is a strategic goal.
  • Efficiency gains can lead to breakthroughs in AI capabilities.
  • Significant improvements in AI efficiency are still possible, offering future opportunities.

The potential for AI efficiency breakthroughs

  • Many orders of magnitude of improvements are possible in AI efficiency.
  • — Jeffrey Quesnelle

  • Untapped potential in AI development indicates opportunities for breakthroughs.
  • Future advancements could dramatically enhance AI capabilities.
  • Efficiency breakthroughs can transform the competitive landscape in AI.
  • The pursuit of efficiency is a driving force in AI research and development.
  • Exploring new avenues for efficiency improvements is crucial for AI’s future.
  • The potential for efficiency breakthroughs highlights the dynamic nature of AI technology.

Centralization in the AI industry is driven by the concentration of capital in large companies. Decentralization technologies can address both funding and operational challenges in AI. Crypto rails enable permissionless access to computing resources, enhancing decentralization.

Key Takeaways

  • Centralization in the AI industry is driven by the concentration of capital in large companies.
  • Decentralization technologies can address both funding and operational challenges in AI.
  • Crypto rails enable permissionless access to computing resources, enhancing decentralization.
  • AI data centers often experience inefficiencies, with many GPUs remaining underutilized.
  • Smart contracts are essential for task assignment and accountability in decentralized AI training.
  • Robust infrastructure is crucial for maintaining fault tolerance in decentralized systems.
  • Regulatory capture poses a threat to open-source AI, potentially making it illegal.
  • Significant efficiency improvements are key to staying competitive in AI development.
  • The pursuit of intelligence per unit of energy is a driving force in AI advancements.
  • There is potential for significant improvements in AI efficiency, with many opportunities for breakthroughs.
  • Open-source AI faces legal challenges that could impact its future development.
  • Achieving a thousandfold efficiency improvement is a strategic goal in AI research.
  • Balancing decentralization and centralization is crucial for the future of AI technology.

Guest intro

Jeffrey Quesnelle is the co-founder and CEO of Nous Research. He previously held senior roles at Eden Network and Intrepid Control Systems, where he advanced software engineering for decentralized networks and autonomous vehicles. At Nous Research, he leads efforts to develop open-source AI models that rival centralized systems and prevent control by a few dominant companies.

The centralizing force of capital in AI

  • — Jeffrey Quesnelle

  • Capital concentration in AI leads to centralization, impacting open-source efforts.
  • Large companies dominate the AI landscape through significant financial resources.
  • The centralization of power and resources poses challenges for decentralized technologies.
  • — Jeffrey Quesnelle

  • Discussions on decentralization must address the impact of capital concentration.
  • The balance between decentralization and centralization is crucial for AI’s future.
  • Capital concentration can stifle innovation in open-source AI initiatives.

Decentralization’s role in AI development

  • Decentralization technologies can facilitate capital formation and distributed computing for AI.
  • — Jeffrey Quesnelle

  • Decentralization addresses funding and operational challenges in AI development.
  • Crypto technologies enhance resource allocation and operational efficiency.
  • — Jeffrey Quesnelle

  • Decentralization empowers smaller players in the AI industry.
  • Distributed computing enables more efficient AI training processes.
  • Decentralization can democratize access to AI resources and opportunities.

Inefficiencies in AI data centers

  • Centralization of AI technology leads to imbalances in GPU usage within data centers.
  • — Jeffrey Quesnelle

  • Inefficiencies in data centers affect costs and resource utilization in AI infrastructure.
  • Companies often pay for more GPU capacity than they actually use.
  • Addressing GPU utilization imbalances can reduce operational costs.
  • Data center inefficiencies highlight the need for better resource management.
  • Optimizing GPU usage is crucial for improving AI infrastructure efficiency.
  • The imbalance between paid and used GPU capacity is a critical issue in AI.

The importance of smart contracts in decentralized AI

  • Smart contracts assign tasks and ensure accountability in decentralized training.
  • — Jeffrey Quesnelle

  • Accountability is vital in permissionless, decentralized systems.
  • Smart contracts maintain system integrity by preventing gaming of the system.
  • Decentralized training relies on robust infrastructure for fault tolerance.
  • — Jeffrey Quesnelle

  • Fault tolerance is essential for maintaining reliability in distributed systems.
  • Smart contracts play a crucial role in task assignment and system integrity.

Regulatory challenges for open-source AI

  • Regulatory capture could make open-source AI illegal, posing a significant threat.
  • — Jeffrey Quesnelle

  • Proposed legislation could hold developers criminally liable for misuse of open-source AI.
  • Legal challenges threaten the future of open-source AI development.
  • Regulatory efforts may stifle innovation in the open-source AI community.
  • Developers must navigate complex legal landscapes to protect open-source AI.
  • Open-source AI faces potential legal ramifications that could impact its growth.
  • The balance between regulation and innovation is critical for open-source AI’s future.

Efficiency as a competitive advantage in AI

  • Achieving significant efficiency improvements is crucial for AI competitiveness.
  • — Jeffrey Quesnelle

  • Efficiency improvements drive advancements in AI technology.
  • The pursuit of intelligence per unit of energy is a key competitive factor.
  • — Jeffrey Quesnelle

  • Lowering energy costs while increasing intelligence is a strategic goal.
  • Efficiency gains can lead to breakthroughs in AI capabilities.
  • Significant improvements in AI efficiency are still possible, offering future opportunities.

The potential for AI efficiency breakthroughs

  • Many orders of magnitude of improvements are possible in AI efficiency.
  • — Jeffrey Quesnelle

  • Untapped potential in AI development indicates opportunities for breakthroughs.
  • Future advancements could dramatically enhance AI capabilities.
  • Efficiency breakthroughs can transform the competitive landscape in AI.
  • The pursuit of efficiency is a driving force in AI research and development.
  • Exploring new avenues for efficiency improvements is crucial for AI’s future.
  • The potential for efficiency breakthroughs highlights the dynamic nature of AI technology.

Loading more articles…

You’ve reached the end


Add us on Google

`;
}

function createMobileArticle(article) {
const displayDate = getDisplayDate(article);
const editorSlug = article.editor ? article.editor.toLowerCase().replace(/\s+/g, ‘-‘) : ”;
const captionHtml = article.imageCaption ? `

${article.imageCaption}

` : ”;
const authorHtml = article.isPressRelease ? ” : `
`;

return `


${captionHtml}

${article.subheadline ? `

${article.subheadline}

` : ”}

${createSocialShare()}

${authorHtml}
${displayDate}

${article.content}

`;
}

function createDesktopArticle(article, sidebarAdHtml) {
const editorSlug = article.editor ? article.editor.toLowerCase().replace(/\s+/g, ‘-‘) : ”;
const displayDate = getDisplayDate(article);
const captionHtml = article.imageCaption ? `

${article.imageCaption}

` : ”;
const categoriesHtml = article.categories.map((cat, i) => {
const separator = i < article.categories.length – 1 ? ‘|‘ : ”;
return `${cat}${separator}`;
}).join(”);
const desktopAuthorHtml = article.isPressRelease ? ” : `
`;

return `

${categoriesHtml}

${article.subheadline ? `

${article.subheadline}

` : ”}

${desktopAuthorHtml}
${displayDate}
${createSocialShare()}

${captionHtml}

`;
}

function loadMoreArticles() {
if (isLoading || !hasMore) return;

isLoading = true;
loadingText.classList.remove(‘hidden’);

// Build form data for AJAX request
const formData = new FormData();
formData.append(‘action’, ‘cb_lovable_load_more’);
formData.append(‘current_post_id’, lastLoadedPostId);
formData.append(‘primary_cat_id’, primaryCatId);
formData.append(‘before_date’, lastLoadedDate);
formData.append(‘loaded_ids’, loadedPostIds.join(‘,’));

fetch(ajaxUrl, {
method: ‘POST’,
body: formData
})
.then(response => response.json())
.then(data => {
isLoading = false;
loadingText.classList.add(‘hidden’);

if (data.success && data.has_more && data.article) {
const article = data.article;
const sidebarAdHtml = data.sidebar_ad_html || ”;

// Check for duplicates
if (loadedPostIds.includes(article.id)) {
console.log(‘Duplicate article detected, skipping:’, article.id);
// Update pagination vars and try again
lastLoadedDate = article.publishDate;
loadMoreArticles();
return;
}

// Add to mobile container
mobileContainer.insertAdjacentHTML(‘beforeend’, createMobileArticle(article));

// Add to desktop container with fresh ad HTML
desktopContainer.insertAdjacentHTML(‘beforeend’, createDesktopArticle(article, sidebarAdHtml));

// Update tracking variables
loadedPostIds.push(article.id);
lastLoadedPostId = article.id;
lastLoadedDate = article.publishDate;

// Execute any inline scripts in the new content (for ads)
const newArticle = desktopContainer.querySelector(`article[data-article-id=”${article.id}”]`);
if (newArticle) {
const scripts = newArticle.querySelectorAll(‘script’);
scripts.forEach(script => {
const newScript = document.createElement(‘script’);
if (script.src) {
newScript.src = script.src;
} else {
newScript.textContent = script.textContent;
}
document.body.appendChild(newScript);
});
}

// Trigger Ad Inserter if available
if (typeof ai_check_and_insert_block === ‘function’) {
ai_check_and_insert_block();
}

// Trigger Google Publisher Tag refresh if available
if (typeof googletag !== ‘undefined’ && googletag.pubads) {
googletag.cmd.push(function() {
googletag.pubads().refresh();
});
}

} else if (data.success && !data.has_more) {
hasMore = false;
endText.classList.remove(‘hidden’);
} else if (!data.success) {
console.error(‘AJAX error:’, data.error);
hasMore = false;
endText.textContent=”Error loading more articles”;
endText.classList.remove(‘hidden’);
}
})
.catch(error => {
console.error(‘Fetch error:’, error);
isLoading = false;
loadingText.classList.add(‘hidden’);
hasMore = false;
endText.textContent=”Error loading more articles”;
endText.classList.remove(‘hidden’);
});
}

// Set up IntersectionObserver
const observer = new IntersectionObserver(function(entries) {
if (entries[0].isIntersecting) {
loadMoreArticles();
}
}, { threshold: 0.1 });

observer.observe(loadingTrigger);
})();

© Decentral Media and Crypto Briefing® 2026.

Source: https://cryptobriefing.com/jeffrey-quesnelle-centralization-in-ai-is-stifling-innovation-how-decentralization-can-democratize-access-and-the-critical-role-of-smart-contracts-in-ai-training-raoul-pal-the-journey-man/

Market Opportunity
Smart Blockchain Logo
Smart Blockchain Price(SMART)
$0.004457
$0.004457$0.004457
-0.86%
USD
Smart Blockchain (SMART) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.
Tags:

You May Also Like

Exploring Market Buzz: Unique Opportunities in Cryptocurrencies

Exploring Market Buzz: Unique Opportunities in Cryptocurrencies

In the ever-evolving world of cryptocurrencies, recent developments have sparked significant interest. A closer look at pricing forecasts for Cardano (ADA) and rumors surrounding a Solana (SOL) ETF, coupled with the emergence of a promising new entrant, Layer Brett, reveals a complex market dynamic. Cardano's Prospects: A Closer Look Cardano, a stalwart in the blockchain space, continues to hold its ground with its research-driven development strategy. The latest price predictions for ADA suggest potential gains, predicting a double or even quadruple increase in its valuation. Despite these optimistic forecasts, the allure of exponential gains drives traders toward more speculative ventures. The Buzz Around Solana ETF The potential introduction of a Solana ETF has the crypto community abuzz, potentially catapulting SOL prices to new heights. As investors await regulatory decisions, the impact of such an ETF on Solana's value could be substantial, potentially reaching up to $300. However, as with Cardano, the substantial market capitalization of Solana may temper its growth potential. Why Layer Brett is Gaining Traction Amidst established names, a new contender, Layer Brett, has started to capture the market's attention with its early presale stages. Offering a low entry price of just $0.0058 and promising over 700% in staking rewards, Layer Brett presents a tempting proposition for those looking to maximize returns. Comparative Analysis: ADA, SOL, and $LBRETT While both ADA and SOL offer stable investment choices with reliable growth, Layer Brett emerges as a high-risk, high-reward option that could potentially offer significantly higher returns due to its nascent market position and aggressive economic model. Initial presale pricing lets investors get in on the ground floor. Staking rewards currently exceed 690%, a persuasive incentive for early adopters. Backed by Ethereum's Layer 2 for enhanced transaction speed and reduced costs. A community-focused $1 million giveaway to further drive engagement and investor interest. Predicted by some analysts to offer up to 50x returns in coming years. Shifting Sands: Investor Movements As the crypto market landscape shifts, many investors, including those traditionally holding ADA and SOL, are beginning to diversify their portfolios by turning to high-potential opportunities like Layer Brett. The combination of strategic presale pricing and significant staking rewards is creating a momentum of its own. Act Fast: Time-Sensitive Opportunities As September progresses, opportunities to capitalize on these low entry points and high yield offerings from Layer Brett are likely to diminish. With increasing attention and funds being directed towards this new asset, the window to act is closing quickly. Invest in Layer Brett now to secure your position before the next price hike and staking rewards reduction. For more information, visit the Layer Brett website, join their Telegram group, or follow them on X by clicking the following links: Website Telegram X Disclaimer: This is a sponsored press release and is for informational purposes only. It does not reflect the views of Bitzo, nor is it intended to be used as legal, tax, investment, or financial advice.
Share
Coinstats2025/09/18 18:39
Tests 50-day EMA barrier near 183.00

Tests 50-day EMA barrier near 183.00

The post Tests 50-day EMA barrier near 183.00 appeared on BitcoinEthereumNews.com. EUR/JPY remains steady after three days of gains, trading around 182.70 during
Share
BitcoinEthereumNews2026/02/23 17:03
Moonshot MAGAX vs Shiba Inu: The AI-Powered Meme-to-Earn Revolution Challenging a Meme Coin Giant

Moonshot MAGAX vs Shiba Inu: The AI-Powered Meme-to-Earn Revolution Challenging a Meme Coin Giant

Discover how Moonshot MAGAX’s AI-powered meme-to-earn platform outpaces Shiba Inu with innovative tokenomics and growth potential in 2025.
Share
Blockchainreporter2025/09/18 03:15