Invest In Crypto News
  • Home
  • Latest News
    • Bitcoin News
    • Altcoin News
    • Ethereum News
    • Blockchain News
    • Doge News
    • NFT News
    • Video
    • Market Analysis
    • Business
    • Finance
    • Politics
    • Mining
    • Regulation
    • Technology
  • Top 10 Cryptos
  • Market Cap List
  • IC DAO
  • Donations
  • Contact
  • Buy Crypto
  • IC DAO
No Result
View All Result
Invest In Crypto News
  • Home
  • Latest News
    • Bitcoin News
    • Altcoin News
    • Ethereum News
    • Blockchain News
    • Doge News
    • NFT News
    • Video
    • Market Analysis
    • Business
    • Finance
    • Politics
    • Mining
    • Regulation
    • Technology
  • Top 10 Cryptos
  • Market Cap List
  • IC DAO
  • Donations
  • Contact
  • Buy Crypto
  • IC DAO
No Result
View All Result
Invest In Crypto News
No Result
View All Result

What Role Is Left for Decentralized GPU Networks in AI?

CryptoExpert by CryptoExpert
January 30, 2026
in Business
0
What Role Is Left for Decentralized GPU Networks in AI?
  • Facebook
  • Twitter
  • Pinterest


You might also like

US Lawmakers Push Back on Labor Dept’s Plans to Include Crypto in 401(k)s

Crypto PAC-Supported Candidates Sweep US State Primaries after Media Buys

6 Senators Challenge 1,250% Bitcoin Capital Rule They Say Blocks Banks From Crypto

Decentralized GPU networks are pitching themselves as a lower-cost layer for running AI workloads, while training the latest models remains concentrated inside hyperscale data centers.

Frontier AI training involves building the largest and most advanced systems, a process that requires thousands of GPUs to operate in tight synchronization.

That level of coordination makes decentralized networks impractical for top-end AI training, where internet latency and reliability cannot match the tightly coupled hardware in centralized data centers.

Most AI workloads in production do not resemble large-scale model training, opening space for decentralized networks to handle inference and everyday tasks.

Phemex

“What we are beginning to see is that many open-source and other models are becoming compact enough and sufficiently optimized to run very efficiently on consumer GPUs,” Mitch Liu, co-founder and CEO of Theta Network, told Cointelegraph. “This is creating a shift toward open-source, more efficient models and more economical processing approaches.”

Training frontier AI models is highly GPU-intensive and remains concentrated in hyperscale data centers. Source: Derya Unutmaz

From frontier AI training to everyday inference

Frontier training is concentrated among a few hyperscale operators, as running large training jobs is expensive and complex. The latest AI hardware, like Nvidia’s Vera Rubin, is designed to optimize performance inside integrated data center environments.

“You can think of frontier AI model training like building a skyscraper,” Nökkvi Dan Ellidason, CEO of infrastructure company Ovia Systems (formerly Gaimin), told Cointelegraph. “In a centralized data center, all the workers are on the same scaffold, passing bricks by hand.”

That level of integration leaves little room for the loose coordination and variable latency typical of distributed networks.

“To build the same skyscraper [in a decentralized network], they have to mail each brick to one another over the open internet, which is highly inefficient,” Ellidason continued.

NVidia, Business, Decentralization, AI, GPU, Features
AI giants continue to absorb a growing share of global GPU supply. Source: Sam Altman

Meta trained its Llama 4 AI model using a cluster of more than 100,000 Nvidia H100 GPUs. OpenAI does not disclose the size of the GPU clusters used to train its models, but infrastructure lead Anuj Saharan said GPT-5 was launched with support from more than 200,000 GPUs, without specifying how much of that capacity was used for training versus inference or other workloads.

Inference refers to running trained models to generate responses for users and applications. Ellidason said the AI market has reached an “inference tipping point.” While training dominated GPU demand as recently as 2024, he estimated that as much as 70% of demand is driven by inference, agents and prediction workloads in 2026.

“This has turned compute from a research cost into a continuous, scaling utility cost,” Ellidason said. “Thus, the demand multiplier through internal loops makes decentralized computing a viable option in the hybrid compute conversation.”

Related: Why crypto’s infrastructure hasn’t caught up with its ideals

Where decentralized GPU networks actually fit

Decentralized GPU networks are best suited to workloads that can be split, routed and executed independently, without requiring constant synchronization between machines.

“Inference is the volume business, and it scales with every deployed model and agent loop,” Evgeny Ponomarev, co-founder of decentralized computing platform Fluence, told Cointelegraph. “That is where cost, elasticity and geographic spread matter more than perfect interconnects.”

In practice, that makes decentralized and gaming-grade GPUs in consumer environments a better fit for production workloads that prioritize throughput and flexibility over tight coordination.

NVidia, Business, Decentralization, AI, GPU, Features
Low hourly prices for consumer GPUs illustrate why decentralized networks target inference rather than large-scale model training. Source: Salad.com

“Consumer GPUs, with lower VRAM and home internet connections, do not make sense for training or workloads that are highly sensitive to latency,” Bob Miles, CEO of Salad Technologies — an aggregator for idle consumer GPUs — told Cointelegraph.

“Today, they are more suited to AI drug discovery, text-to-image/video and large scale data processing pipelines — any workload that is cost sensitive, consumer GPUs excel on price performance.”

Decentralized GPU networks are also well-suited to tasks such as collecting, cleaning and preparing data for model training. Such tasks often require broad access to the open web and can be run in parallel without tight coordination.

This type of work is difficult to run efficiently inside hyperscale data centers without extensive proxy infrastructure, Miles said.

When serving users all around the world, a decentralized model can have a geographic advantage, as it can reduce the distances requests have to travel and multiple network hops before reaching a data center, which can increase latency.

“In a decentralized model, GPUs are distributed across many locations globally, often much closer to end users. As a result, the latency between the user and the GPU can be significantly lower compared to routing traffic to a centralized data center,” said Liu of Theta Network.

Theta Network is facing a lawsuit filed in Los Angeles in December 2025 by two former employees alleging fraud and token manipulation. Liu said he could not comment on the matter because it is pending litigation. Theta has previously denied the allegations.

Related: How AI crypto trading will make and break human roles

A complementary layer in AI computing

Frontier AI training will remain centralized for the foreseeable future, but AI computing is shifting away to inference, agents and production workloads that require looser coordination. Those workloads reward cost efficiency, geographic distribution and elasticity.

“This cycle has seen the rise of many open-source models that are not at the scale of systems like ChatGPT, but are still capable enough to run on personal computers equipped with GPUs such as the RTX 4090 or 5090,” Liu’s co-founder and Theta tech chief Jieyi Long, told Cointelegraph.

With that level of hardware, users can run diffusion models, 3D reconstruction models and other meaningful workloads locally, creating an opportunity for retail users to share their GPU resources, according to Long.

Decentralized GPU networks are not a replacement for hyperscalers, but they are becoming a complementary layer.

As consumer hardware grows more capable and open-source models become more efficient, a widening class of AI tasks can move outside centralized data centers, allowing decentralized models to fit in the AI stack.

Magazine: 6 weirdest devices people have used to mine Bitcoin and crypto



Source link

  • Facebook
  • Twitter
  • Pinterest
Tags: Bitcoin
CryptoExpert

CryptoExpert

Recommended For You

US Lawmakers Push Back on Labor Dept’s Plans to Include Crypto in 401(k)s

by CryptoExpert
June 7, 2026
0
Cointelegraph

Top Democrats on three House and Senate committees called on the US Labor Department to halt its plans to allow digital assets and “alternative assets” to be held...

Read more

Crypto PAC-Supported Candidates Sweep US State Primaries after Media Buys

by CryptoExpert
June 7, 2026
0
Cointelegraph

Democratic and Republican candidates across California, New Jersey and South Dakota won their respective primaries on Tuesday after being the beneficiaries of supportive ads purchased by cryptocurrency industry-backed...

Read more

6 Senators Challenge 1,250% Bitcoin Capital Rule They Say Blocks Banks From Crypto

by CryptoExpert
June 7, 2026
0
6 Senators Challenge 1,250% Bitcoin Capital Rule They Say Blocks Banks From Crypto

Key TakeawaysSenators urged regulators to revisit digital asset capital standards affecting banks.The disputed 1,250% risk weight can require capital equal to exposure.Potential rule changes could reshape institutional participation...

Read more

Israel’s Tax Authority ‘Disappointed’ in Voluntary Crypto Disclosures: Report

by CryptoExpert
June 6, 2026
0
Cointelegraph

Israeli taxpayer disclosures of profits from cryptocurrencies have reportedly fallen short of expectations at the Israel Tax Authority after enactment of a policy allowing immunity from criminal proceedings...

Read more

CLARITY Act Push Gains Momentum as Lawmakers Race to Lock in US Crypto Rules

by CryptoExpert
June 6, 2026
0
CLARITY Act Push Gains Momentum as Lawmakers Race to Lock in US Crypto Rules

Key TakeawaysThe CLARITY Act has attracted support from a wide range of political and industry stakeholders.Support comes from lawmakers, industry groups, consumer advocates, national security voices, and Trump.Critics...

Read more
Next Post
Coinpedia - Fintech & Cryptocurreny News Media

Data Shows Crypto Traders Paid Tax Even After Losses

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Browse by Category

  • Altcoin News
  • Bitcoin News
  • Blockchain News
  • Business
  • Doge News
  • Ethereum News
  • Finance
  • Market Analysis
  • Mining
  • NFT News
  • Politics
  • Regulation
  • Technology
  • Trending Cryptos
  • Video

Sitemap

  • Market Cap
  • Donations
  • Trading
  • Mining
  • Contact

Legal Information

  • Privacy Policy
  • Anti-Spam Policy
  • Copyright Notice
  • DMCA Compliance
  • Social Media Disclaimer
  • Terms Of Service

Categories

  • Altcoin News
  • Bitcoin News
  • Blockchain News
  • Business
  • Doge News
  • Ethereum News
  • Finance
  • Market Analysis
  • Mining
  • NFT News
  • Politics
  • Regulation
  • Technology
  • Trending Cryptos
  • Video

© Copyright 2024 InvestInCryptoNews.com

No Result
View All Result
  • Home
  • Latest News
    • Bitcoin News
    • Altcoin News
    • Ethereum News
    • Blockchain News
    • Doge News
    • NFT News
    • Video
    • Market Analysis
    • Business
    • Finance
    • Politics
    • Mining
    • Regulation
    • Technology
  • Top 10 Cryptos
  • Market Cap List
  • IC DAO
  • Donations
  • Contact
  • Buy Crypto
  • IC DAO

© Copyright 2024 InvestInCryptoNews.com

This website is using cookies to improve the user-friendliness. You agree by using the website further.

Privacy policy
bitcoin
Bitcoin (BTC) $ 62,101.00
ethereum
Ethereum (ETH) $ 1,629.20
tether
Tether (USDT) $ 0.999514
bnb
BNB (BNB) $ 594.34
usd-coin
USDC (USDC) $ 0.999734
xrp
XRP (XRP) $ 1.14
solana
Solana (SOL) $ 65.16
tron
TRON (TRX) $ 0.326977
figure-heloc
Figure Heloc (FIGR_HELOC) $ 1.03
staked-ether
Lido Staked Ether (STETH) $ 2,265.05

Pin It on Pinterest

Are you sure want to unlock this post?
Unlock left : 0
Are you sure want to cancel subscription?