In the report "State of AI 2025," Messari dedicates an entire chapter to Decentralized AI (deAI), defining it as a necessary complement.In the report "State of AI 2025," Messari dedicates an entire chapter to Decentralized AI (deAI), defining it as a necessary complement.

Decentralized AI: what it is, how it works, and why it will be central to the intelligence economy

decentralized ai deai

In the report “State of AI 2025”, Messari dedicates an entire chapter to Decentralized AI (deAI), defining it not as an ideological alternative to traditional AI, but as a necessary complement to ensure transparency, security, and global participation.

In a world where models become black boxes and the power of private labs grows, the role of deAI is not theoretical: it is a structural response to the challenges of the new order of intelligence.

Artificial intelligence is becoming the most strategic digital infrastructure on the planet. However, as tech giants consolidate their dominance, a parallel movement is emerging that aims to build a radically different AI: open, verifiable, permissionless, and distributed.

What is Decentralized AI (deAI)?

The deAI is an AI system built on distributed networks, where:

  • data can be collected, labeled, and exchanged in a permissionless manner;
  • the computation is performed on global networks of independent GPUs;
  • the models can be trained and used in a coordinated manner, without a single controlling authority;
  • privacy, verifiability, and reputation are ensured through blockchain, cryptography, and attestation systems;
  • AI agents can transact, identify themselves, and collaborate in a trustless environment.

In other words:

DeAI is the infrastructure that enables the creation of an open AI “for anyone and by anyone,” without having to rely on a private giant.

Why does deAI become necessary?

Messari divides the reasons into two categories: philosophical and practical.

🔹 Philosophy

  1. Concentration of Power
    Centralized AI grants enormous control to a few companies (OpenAI, Google, Anthropic). This influences narratives, data access, technological standards, and even social processes.
  2. Opacity
    We do not know how the models were trained, what data they use, or what biases they incorporate.
  3. Limited trust
    There are no verifiable guarantees that the model provided is as claimed or that it processes data correctly.

🔹 Practice

  1. Global Coordination
    Blockchains enable the coordination of millions of devices and contributors without the need for trust.
  2. On-chain Verifiability
    Identity, reputation, model status, and integrity can be recorded immutably.
  3. Native Payments
    AI agents require instant payments, microtransactions, and immediate settlement: here, crypto is indispensable.
  4. Scalability through distributed networks
    deAI leverages existing hardware (gaming PCs, edge devices, small data centers), not just hyperscaler GPUs.

The deAI Stack: The 6 Layers Comprising the Ecosystem

The report details the technological stack of deAI, consisting of 6 interconnected layers: Data → Compute → Training → Privacy/Verification → Agents → Applications.

Let’s examine them one by one.

1. Data Layer

The heart of every AI system is the dataset.
In deAI, data is collected, labeled, stored, and exchanged through distributed networks.

Main activities:

  • data collection (video, audio, sensors, real interactions)
  • labeling through incentivized marketplaces
  • cleaning & preprocessing
  • storage on distributed networks (Filecoin, Arweave, Jackal)
  • data marketplaces (Ocean, Vana, Cudis)

Decentralization allows:

  • greater data diversity
  • direct financial incentives to contributors
  • verifiability (provenance, timestamp, identity)
  • reduction in the cost of proprietary datasets

With the “data famine” anticipated by 2030, this layer becomes crucial.

2. Compute Layer

This is where the most expensive part of AI takes place: performing training and inference.

Decentralized Compute Networks (DCN):

  • Akash
  • Render
  • io.net
  • Aethir
  • Hyperbolic
  • EigenCloud
  • Exabits

The main advantage: they make on-demand compute available at market prices, not dictated by a cloud provider.

Historically ineffective for large-scale training (due to latencies and synchronizations), today DCNs are perfect for serving inference, because:

  • requires less communication between GPUs
  • can be executed on heterogeneous hardware
  • is the segment expected to represent 50–75% of the compute demand by 2030

3. Training & Inference Layer

Messari makes a clear distinction:

Pre-training

Extremely difficult to decentralize:
requires enormous datasets, tight synchronization, and extremely high bandwidth.

Post-training (SFT / RLHF / RL)

Perfect for distributed networks:

  • more asynchrony
  • less communication
  • more scalability
  • possibility of data crowdsourcing

Decentralized Inference

It is the missing link that makes deAI usable in real life.

Examples cited in the report:

  • Prodia
  • Declines
  • Fortytwo Network
  • dria
  • inference.net

4. Privacy & Verification Layer

This is where the most complex cryptographic technologies come into play.

Fundamental Techniques:

  • ZKML (zero-knowledge machine learning)
  • Optimistic ML (verification through challenge period)
  • TEE-based ML (trusted execution environments)
  • FHE (fully homomorphic encryption)
  • MPC (multi-party computation)
  • Federated learning

Objective:

Ensure that a model has been calculated correctly, without modifications and without exposing sensitive data.

Mentioned projects:

  • Phala (TEE)
  • Zama (FHE)
  • Nillion (MPC)
  • EZKL (ZKML)
  • Lagrange (zkML + verification infra)

This is the most important layer for enterprise adoption.

5. Agents & Orchestration Layer

The report analyzes how autonomous agents are becoming the new “interface” of AI.

A full stack includes:

  • base model (LLM or SLM)
  • tooling (API, wallet, browser automation)
  • framework (ElizaOS, Daydreams, Olas, Questflow)
  • communication standards
  • multi-agent coordination
  • verifiable integrity (tamper-proof prompt, verified reasoning)

Blockchains unlock for agents:

  • identity
  • reputation
  • self-custodial payments
  • trustless access to financial services
  • auditability

Agents will be the primary “users” of blockchain in the next 5 years.

6. Applications Layer

The final level: apps built on the entire stack.

Examples:

  • trading agents
  • autonomous DeFi bots
  • autonomous browsers
  • cybersecurity systems
  • AI-powered data labeling
  • multi-agent universes for gaming, discovery, or e-commerce
  • decentralized recommendation engines

deAI apps function like regular AI, but with three differences:

  1. transparency
  2. verifiability
  3. interoperability with crypto

Why Now? The 5 Forces Driving deAI

Messari identifies five megatrends that create a perfect environment for the growth of decentralized AI:

  1. Inference Demand in Vertical Boom
  2. Depletion of Public Data and Demand for Proprietary Data
  3. Explosion of AI agents that must transact autonomously
  4. Global War for Talent and Prohibitive Compute Costs
  5. Advancements in the Decentralization of Training and Verification

Centralized AI cannot meet all needs: complementarity is required.

Conclusion: deAI is the Foundation of Open, Verifiable, and Participatory AI

Decentralized AI is not a trend: it is a structural response.
As models grow and the power of Big Tech concentrates, the need to:

  • verify
  • decentralize
  • certify
  • coordinate
  • offset
  • protect
  • distribute

becomes central.

DeAI is the infrastructure that enables AI to be not only powerful, but also:

  • open
  • secure
  • distributed
  • globally accessible
Market Opportunity
null Logo
null Price(null)
--
----
USD
null (null) 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 [email protected] 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.

You May Also Like

Why It Could Outperform Pepe Coin And Tron With Over $7m Already Raised

Why It Could Outperform Pepe Coin And Tron With Over $7m Already Raised

The post Why It Could Outperform Pepe Coin And Tron With Over $7m Already Raised appeared on BitcoinEthereumNews.com. Crypto News 17 September 2025 | 20:26 While meme tokens like Pepe Coin and established networks such as Tron attract headlines, many investors are now searching for projects that combine innovation, revenue-sharing and real-world utility. BlockchainFX ($BFX), currently in presale at $0.024 ahead of an expected $0.05 launch, is quickly becoming one of the best cryptos to buy today. With $7m already secured and a unique model spanning multiple asset classes, it is positioning itself as a decentralised super app and a contender to surpass older altcoins. Early Presale Pricing Creates A Rare Entry Point BlockchainFX’s presale pricing structure has been designed to reward early participants. At $0.024, buyers secure a lower entry price than later rounds, locking in a cost basis more than 50% below the projected $0.05 launch price. As sales continue to climb beyond $7m, each new stage automatically increases the token price. This built-in mechanism creates a clear advantage for early investors and explains why the project is increasingly cited in “best presales to buy now” discussions across the crypto space. High-Yield Staking Model Shares Platform Revenue Beyond its presale appeal, BlockchainFX is creating a high-yield staking model that gives holders a direct share of platform revenue. Every time a trade occurs on its platform, 70% of trading fees flow back into the $BFX ecosystem: 50% of collected fees are automatically distributed to stakers in both BFX and USDT. 20% is allocated to daily buybacks of $BFX, adding demand and price support. Half of the bought-back tokens are permanently burned, steadily reducing supply. Rewards are based on the size of each member’s BFX holdings and capped at $25,000 USDT per day to ensure sustainability. This structure transforms token ownership from a speculative bet into an income-generating position, a rare feature among today’s altcoins. A Multi-Asset Platform…
Share
BitcoinEthereumNews2025/09/18 03:35
Yarm Explained: Turning Trust and Tweets into Yield

Yarm Explained: Turning Trust and Tweets into Yield

tl;dr: Yarm is a new platform by Mitosis and Kaito AI that turns social influence into onchain yield. Yappers earn Mindshare by posting…Continue reading on Coinmonks »
Share
Medium2025/09/18 14:43
Why Smart Talent Acquisition Leaders are Choosing Nearshore Over Offshore: The 2026 Talent Geography Playbook

Why Smart Talent Acquisition Leaders are Choosing Nearshore Over Offshore: The 2026 Talent Geography Playbook

Last quarter, I watched a director of engineering at a Series B startup spend three weeks trying to fill a temporary Senior Backend Engineer role. The rate? $89
Share
Techbullion2026/01/21 06:13