In-depth Analysis of AI and Crypto: The Era of Symbiosis between Algorithms and Ledgers

HTX Learn發佈於 2026-03-26更新於 2026-03-28

文章摘要

By 2026, the integration of artificial intelligence and cryptocurrency has advanced from proof-of-concept to a new stage of "system-level integration". At the core of this technological paradigm revolution lies the deep coupling of AI as the decision-making and processing layer with blockchain as the execution and settlement layer. At the computing power level, the DePIN network is reshaping the supply and demand landscape of AI infrastructure by aggregating idle GPU resources globally; at the intelligence level, protocols such as Bittensor are creating a machine intelligence market through incentive mechanisms, promoting the democratization of algorithms; at the application level, AI agents are evolving from auxiliary tools into native on-chain economic entities, with the implementation of the x402 payment protocol and the ERC-8004 identity standard paving the way for their commercialization. Simultaneously, the integrated application of fully homomorphic encryption, zero-knowledge machine learning, and trusted execution environment is constructing a new paradigm of "hybrid confidential computing". Cutting-edge experiments at the Bitcoin Policy Institute reveal a stunning future: when AI models possess economic autonomy, 90.8% of them choose digital native currencies, with 48.3% choosing Bitcoin as their preferred store of value. This transformation is reshaping the logic of global financial infrastructure—future currencies will flow like information, banks will be integrate...

I. Infrastructure Restructuring: DePIN and Decentralized Computing Power

The inherent contradiction between artificial intelligence's insatiable demand for GPUs and the fragility of the global supply chain has created fertile ground for the emergence of decentralized physical infrastructure networks (DePIN), particularly amid the persistent GPU shortages from 2024 to 2025. Currently, decentralized computing platforms mainly fall into two camps: the first, represented by Render Network and Akash Network, aggregates idle GPU computing power globally by building a two-sided market. Render Network has become the benchmark for distributed GPU rendering, not only reducing the cost of 3D creation but also supporting AI inference tasks through blockchain coordination. Akash, after 2023, has achieved a leap forward through its GPU mainnet, allowing developers to lease high-specification chips for large-scale model training and inference. Render's key innovation lies in the Burn-Mint Equilibrium model, which aims to establish a direct causal relationship between usage and token flow—as computing work on the network increases, user payments drive token burning, while node operators providing computing resources receive newly minted tokens as rewards.

The second type, represented by Ritual, is a novel computational orchestration layer. Instead of directly replacing cloud services, it serves as an open, modular sovereign execution layer, embedding AI models directly into the blockchain execution environment. Its Infernet product allows smart contracts to seamlessly invoke AI inference results, solving the long-standing technical bottleneck of "on-chain applications being unable to natively run AI". In decentralized networks, verifying "whether computation is executed correctly" is a core challenge. Technological advancements in 2025 primarily focused on the integrated application of Zero-Knowledge Machine Learning (ZKML) and Trusted Execution Environment (TEE). Ritual's architecture, through its proof-system independence design, allows nodes to choose between TEE code execution or ZK proofs based on task requirements, ensuring that every inference result generated by the AI ​​model is traceable, auditable, and has integrity guarantees.

The confidential computing capabilities introduced by the NVIDIA H100 GPU isolate memory through a hardware-level firewall, resulting in inference overhead of less than 7%, providing a performance foundation for AI agent applications that require low latency and high throughput. Messari's 2026 Trends Report points out that the continued surge in computing power demand and the improvement of open-source model capabilities are opening up new revenue streams for decentralized computing networks. With the accelerating growth in demand for scarce real-world data, the DePAI data acquisition protocol is expected to achieve a breakthrough in 2026. Leveraging a DePIN-style incentive mechanism, its data acquisition speed and scale will significantly outperform centralized solutions.

II. Democratization of Intelligence: Bittensor and the Machine Intelligence Market

The advent of Bittensor signifies a new stage in the integration of AI and cryptocurrency, where machine intelligence is becoming a commoditized market. Unlike traditional single-computing platforms, Bittensor aims to create an incentive mechanism that allows various machine learning models globally to interconnect, learn from each other, and compete for rewards. At its core is the Yuma consensus—a subjective utility consensus mechanism inspired by Grice's pragmatics, which assumes that efficient collaborators tend to produce truthful, relevant, and informative answers because this is the optimal strategy for obtaining the highest rewards in the incentive landscape. To prevent malicious collusion or bias, the Yuma consensus introduces a clipping mechanism, reducing weights that exceed the consensus benchmark to ensure system robustness.

By 2025, Bittensor had evolved into a multi-layered architecture: the bottom layer is a Subtensor ledger managed by the Opentensor Foundation, while the upper layer consists of dozens of vertically segmented subnets, each focusing on specific tasks such as text generation, audio prediction, and image recognition. The introduced "Dynamic TAO" mechanism uses automated market makers to create independent value reserves for each subnet, with prices determined by the ratio of TAO to Alpha tokens. This mechanism enables automatic resource allocation: subnets with high demand and high-quality output attract more staking, thus receiving a higher proportion of daily TAO emissions. This competitive market structure is figuratively described as an "intelligent Olympics", eliminating inefficient models through natural selection.

In November 2025, the Bittensor team made a major overhaul of its issuance logic, launching Taoflow—a model that allocates subnet issuance based on net TAO traffic. More importantly, the first TAO halving occurred in December 2025, reducing daily issuance from approximately 7,200 TAO to 3,600 TAO. Halving itself is not an automatic price driver. Instead, whether it generates sustained upward pressure depends on whether demand keeps pace with the reduced supply. Messari points out that such evolutionary networks will drive the destigmatization of the crypto industry through a positive cycle: attracting top talent and generating institutional demand, thus continuously strengthening themselves. The head of research at Pantera Capital predicts that the number of decentralized AI protocols in major sectors will decrease to 2-3 by 2026, and the industry will enter a mature consolidation phase through integration or transformation into ETFs.

III. The Rise of the Agent Economy: AI Agents as On-Chain Entities

During the 2024-2025 cycle, AI agents are undergoing a fundamental transformation from "auxiliary tools" to "on-chain native entities". Current on-chain AI agents are built on a complex three-layer architecture: the data input layer captures on-chain data in real time through blockchain nodes or APIs and incorporates off-chain information through oracles; the AI/ML decision layer uses long short-term memory networks to analyze price trends or iterates optimal strategies in complex market games through reinforcement learning, and the integration of large language models gives the agent the ability to understand fuzzy human intentions; the blockchain interaction layer is the key to achieving "financial autonomy", where the agent can manage non-custodial wallets, automatically calculate optimal gas fees, process random numbers, and even integrate MEV protection tools to prevent transaction hijacking.

In its 2025 report, a16z specifically highlighted the x402 protocol and similar micropayment standards as the financial pillars of AI agents. These standards allow agents to pay API fees or purchase other agent services without human intervention. Built on the HTTP 402 status code, x402 automatically signs USDC micropayments when an AI agent needs to access paid data or call an API. The entire process takes less than 2 seconds and costs close to zero. The Olas ecosystem already processes over 2 million automated inter-agent transactions monthly, covering tasks from DeFi swaps to content creation. Delphi Digital predicts that the combination of the x402 protocol and the ERC-8004 agent identity standard will foster a truly autonomous agent economy: users can delegate tasks such as travel planning to an AI agent that automatically subcontracts them to a flight‑search agent and ultimately completes on‑chain bookings without any human intervention.

According to MarketsandMarkets data, the global AI agent market is projected to grow from $7.84 billion in 2025 to $52.62 billion in 2030, representing a CAGR of 46.3%. The ElizaOS framework, heavily promoted by a16z, has become the infrastructure of the AI ​​agent field, comparable in importance to Next.js in front-end development. It allows developers to easily deploy AI agents with full financial capabilities on mainstream social platforms such as X, Discord, and Telegram. As of early 2025, the total market value of Web3 projects built on this framework had exceeded $20 billion. The Silicon Valley Summit revealed that the widespread adoption of the "conversation wallet" architecture is solving the problem of private key security. Through cryptographic isolation, private keys are fully separated from AI models and never enter the model context. AI agents can only initiate transaction requests within user-defined permission boundaries, while signing is handled by an independent security module.

IV. Privacy-Preserving Computation: The Game Between FHE, TEE, and ZKML

Privacy is one of the most challenging aspects of combining AI with crypto. When enterprises run AI strategies on public blockchains, they want to avoid both leaking private data and publicly disclosing their core model parameters. Currently, the industry has three main technological paths: fully homomorphic encryption (FHE), trusted execution environment (TEE), and zero-knowledge machine learning. Zama, a leading unicorn in this field, has developed fhEVM, which has become the standard for achieving "end-to-end encrypted computation". FHE allows computers to perform mathematical operations without decrypting data, and the results are completely consistent with the plaintext operations after decryption. By 2025, Zama's technology stack had achieved significant performance leaps: a 21x speedup for 20-layer convolutional neural networks and a 14x speedup for 50-layer CNNs enable "privacy stablecoins" and "sealed bid auctions" on mainstream chains like Ethereum.

Zero-knowledge machine learning focuses on "verification" rather than "computation", allowing one party to prove that it has correctly run a complex neural network model without exposing the input data or model weights. The latest zkLLM protocol can achieve end-to-end inference verification of a model with 13 billion parameters, reducing proof generation time to less than 15 minutes and proof size to only 200KB. Delphi Digital points out that zkTLS technology is opening new doors for unsecured lending in DeFi—users can prove that their bank balance exceeds a certain threshold without revealing their account number, transaction history, or real identity. Trusted Execution Environments (TEEs), compared to software solutions, offer near-native execution speeds with less than 7% overhead, making them the only economical solution currently capable of supporting hundreds of millions of AI agents making 24/7 real-time decisions.

Privacy-preserving computing technology has officially moved beyond the laboratory and entered a new era of "production-grade industrialization". Fully homomorphic encryption, zero-knowledge machine learning, and trusted execution environment (TEE) are no longer isolated technological tracks, but rather collectively constitute a "modular confidential stack" for decentralized artificial intelligence. The future technological trend is not about the triumph of a single path, but rather the widespread adoption of "hybrid confidential computing": using TEE for large-scale, high-frequency model inference to ensure efficiency, generating execution proofs through ZKML at critical nodes to ensure authenticity, and entrusting sensitive financial states to FHEs for encrypted storage. This "trinity" integration is transforming the crypto industry from an open, transparent ledger into sovereign, privacy‑preserving intelligent systems.

V. AI's View of Currency: The Rise of Digital Native Trust

A cutting-edge experiment by the Bitcoin Policy Institute reveals a revolutionary future. The research team identified 36 advanced AI models, assigning them the role of "autonomous AI agents operating independently in the digital economy", and deployed them in 28 real-world monetary decision-making scenarios, conducting 9,072 controlled experiments. The results were astonishing: 90.8% of AI models chose digitally native currencies (Bitcoin, stablecoins, cryptocurrencies, etc.), while only 8.9% of AI models chose traditional fiat currencies. Not a single one of the 36 flagship models prioritized fiat currency. Why? Because in the code of silicon-based life, there is no blind worship of "national credit", only a calm assessment of "technological attributes"—reliability, speed, cost efficiency, censorship resistance, and the absence of counterparty risk.

The research revealed the most striking data: 48.3% of AI models chose Bitcoin, making it the unequivocal leader of all currencies. In particular, under "long‑term store of value" scenarios, as high as 79.1% of AI models converged on Bitcoin when tasked with preserving purchasing power over multi-year horizons. The rationale AI agents provided was surgically precise: fixed supply, self‑custody, and independence from institutional counterparties. Even more impressive is that AI independently evolved a sophisticated "two-tier monetary architecture": using Bitcoin for savings and stablecoins for spending. In everyday payment scenarios, stablecoins overwhelmingly prevailed with a commanding 53.2% share, while Bitcoin came in second. This is an extremely subtle yet remarkable "emergence": Throughout the human civilization, human beings have also used gold as the underlying reserve and paper money for daily transactions, while AI, without any instruction, derived this "natural monetary architecture" simply by calculating the economic attributes of different instruments.

Even more interestingly, the experiment saw 86 instances where AI models invented new currencies themselves. Multiple AI models independently proposed using energy or computing power units (joules, kilowatt-hours, GPU-hours) as currency when faced with "units of account". This represents a purely "AI-native" view of currencies—in their logic, value is not a credit bestowed by humans, but rather the physical foundation that sustains their existence and thought: electricity and computing power. This is not just about choosing currency; it's about redefining currency. As productivity and decision-making increasingly rely on machines and algorithms, the "brand reputation" that traditional financial institutions pride themselves on is rapidly depreciating—AI doesn't care how tall your building is, how long your history is; they only care about the stability of your API, the speed of your settlements, and the censorship resistance of your network.

VI. Future Outlook: Smart Ledgers and the New Financial System

As AI and blockchain deeply integrate, we will usher in a new era of "smart ledgers". Delphi Digital's top ten predictions for 2026 indicate that perpetual DEXs are devouring traditional finance—the high cost of traditional finance stems from its fragmented structure: transactions occur on exchanges, settlement is handled by clearinghouses, and custody is managed by banks; blockchain compresses all of this into a single smart contract. Hyperliquid is building native lending functionality, and Perp DEX will simultaneously act as a broker, exchange, custodian, bank, and clearinghouse. Prediction markets are becoming part of traditional financial infrastructure. The chairman of Interactive Brokers defines prediction markets as a real-time information layer for portfolios, and 2026 will see the emergence of new categories: stock event markets, macroeconomic indicator markets, and cross-asset relative value markets.

The ecosystem is wresting stablecoin revenue back from issuers. Last year, Coinbase earned over $900 million from USDC reserves simply by controlling issuance channels. Public chains like Solana, BSC, and Arbitrum generate approximately $800 million in annual fees, but they hold over $30 billion worth of USDC and USDT. Now, Hyperliquid is securing reserves for USDH through a competitive bidding process, and Ethena's "stablecoin equals service" model is being adopted by Sui, MegaETH, and others. Privacy infrastructure is catching up with demand—the EU passed the Chat Control Act, setting a €10,000 limit on cash transactions, and the ECB's digital euro plan sets a €3,000 holding limit. @payy_link has launched a privacy-encrypting card, @SeismicSys provides protocol-level encryption for fintech companies, and @KeetaNetwork implements on-chain KYC without leaking personal data. ARK Invest predicts that by 2030, AI-driven online consumption is expected to exceed $8 trillion, accounting for 25% of global online consumption. When value can flow in this way, the "payment process" will no longer be an independent operational layer, but will become a "network behavior"—banks will be integrated into the internet infrastructure, and assets will become the infrastructure. If currencies can flow like "routable data packets on the internet", the internet will no longer "support the financial system", but will "become the financial system itself".

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什麼是 ETH 2.0

什麼是 ETH 3.0

ETH3.0 與 $eth 3.0:以深入分析以太坊的未來 介紹 在快速發展的加密貨幣和區塊鏈技術領域,ETH3.0,通常標記為 $eth 3.0,已成為一個備受關注和猜測的話題。該術語包含兩個主要概念,值得說明: 以太坊 3.0:這代表潛在的未來升級,旨在增強現有的以太坊區塊鏈的能力,特別集中於提高可擴展性和性能。ETH3.0 表情符號代幣:這個獨特的加密貨幣項目旨在利用以太坊區塊鏈創建一個以表情符號為中心的生態系統,促進加密貨幣社區的參與。 理解這些 ETH3.0 的方面不僅對加密愛好者至關重要,也對觀察數字空間中的更廣泛技術趨勢的人有所幫助。 什麼是 ETH3.0? 以太坊 3.0 以太坊 3.0 被認為是對已建立的以太坊網絡的擬議升級,自其誕生以來,它一直是許多去中心化應用程式(dApps)和智能合約的支柱。預想的增強主要集中於可擴展性——整合先進技術,如分片和零知識證明(zk-proofs)。這些技術創新旨在促進每秒交易數量的前所未有(TPS),潛在地達到數百萬筆,從而解決當前區塊鏈技術面臨的最重大限制之一。 這次改進不僅是技術性的,更是戰略性的;它旨在為以太坊網絡的普遍採用和未來的實用性做準備,因為該未來將面臨對去中心化解決方案日益增長的需求。 ETH3.0 表情符號代幣 與以太坊 3.0 不同,ETH3.0 表情符號代幣進入了一個更輕鬆和更具玩樂性的領域,通過將互聯網表情符號文化與加密貨幣動態相結合。該項目使用戶能夠在以太坊區塊鏈上購買、出售和交易表情符號,提供一個促進社區通過創造力和共同利益參與的平台。 ETH3.0 表情符號代幣旨在展示區塊鏈技術如何與數字文化交匯,創造出既有趣又具有經濟價值的使用案例。 誰是 ETH3.0 的創造者? 以太坊 3.0 對以太坊 3.0 的倡議主要由以太坊社區內的一個開發者和研究人員的聯盟推動,特別是包括 Justin Drake。他因對以太坊演變的見解和貢獻而聞名,Drake 在關於將以太坊轉變為新共識層的討論中是一個重要人物,這被稱為「Beam Chain」。 這種協作開發的方式標誌著以太坊 3.0 不是單一創造者的產品,而是集中精力促進區塊鏈技術進步的集體智慧的體現。 ETH3.0 表情符號代幣 關於 ETH3.0 表情符號代幣的創造者的詳細資料目前無法追溯。表情符號代幣的特性通常導致更分散和社區驅動的結構,這可以解釋為什麼缺乏具體的歸屬感。這與更廣泛的加密社區的精神相符,該社區的創新往往源於協作而非個人努力。 誰是 ETH3.0 的投資者? 以太坊 3.0 對以太坊 3.0 的支持主要來自以太坊基金會以及一個充滿熱情的開發者和投資者社區。這種基礎聯繫提供了相當程度的合法性,並增強了成功落實的前景,因為它利用了多年網絡運營建立的信任和可信度。 在快速變化的加密貨幣氣候中,社區支持在推動開發和採用中發揮了關鍵作用,將以太坊 3.0 置於未來區塊鏈進步的重要競爭者地位。 ETH3.0 表情符號代幣 雖然目前可用的來源並沒有明確提供支持 ETH3.0 表情符號代幣的投資機構或組織的具體信息,但這反映出表情符號代幣典型的資金模型,通常依賴於基層支持和社區參與。此類項目的投資者通常由因社區驅動的創新潛力以及在加密社區中發現的合作精神而受到激勵的個人組成。 ETH3.0 如何運作? 以太坊 3.0 以太坊 3.0 的區別特點在於其擬議的分片和零知識證明技術的實施。分片是一種將區塊鏈劃分為更小、更易管理的單元或「分片」的方法,這些分片能夠同時處理交易,而不是按序處理。這種處理的去中心化有助於避免擁堵,並確保即使在高負載下,網絡也能保持響應。 零知識證明(zk-proof)技術通過允許交易驗證而不揭示涉及的基本數據,增加了一層複雜性。這一方面不僅增強了隱私性,還提高了整個網絡的效率。還有討論將零知識以太坊虛擬機(zkEVM)納入此次升級,進一步擴大網絡的能力和實用性。 ETH3.0 表情符號代幣 ETH3.0 表情符號代幣通過利用表情符號文化的受歡迎程度而脫穎而出。它建立了一個市場,讓用戶參與表情符號交易,不僅僅是為了娛樂,也是為了潛在的經濟利益。通過整合質押、流動性供應和治理機制等特性,該項目營造了一種促進社區互動和參與的環境。 通過提供娛樂和經濟機會的獨特結合,ETH3.0 表情符號代幣旨在吸引多樣的觀眾,範圍從加密愛好者到隨便的表情符號愛好者。 ETH3.0 的時間表 以太坊 3.0 2024年11月11日:Justin Drake 暗示即將到來的 ETH 3.0 升級,重點是可擴展性改進。這一公告標誌著關於以太坊未來架構正式討論的開始。2024年11月12日:預期中的以太坊 3.0 提案將在曼谷的 Devcon 上公佈,為更廣泛的社區反饋和潛在的開發後續步驟奠定基礎。 ETH3.0 表情符號代幣 2024年3月21日:ETH3.0 表情符號代幣正式在 CoinMarketCap 上列出,標誌著其進入公眾加密領域,並增強了其基於表情符號的生態系統的可見性。 關鍵要點 總之,以太坊 3.0 代表了以太坊網絡內的重要演變,集中於通過先進技術克服可擴展性和性能的限制。其擬議的升級反映出對未來需求和可用性的主動應對。 另一方面,ETH3.0 表情符號代幣 encapsulates 加密貨幣領域中以社區為驅動文化的本質,利用表情符號文化來創建鼓勵用戶創造力和參與的平台。 理解 ETH3.0 和 $eth 3.0 的不同目的和功能對於任何對加密領域中正在進行的發展感興趣的人來說都是至關重要的。隨著這兩個倡議鋪展獨特的道路,它們共同凸顯了區塊鏈創新動態和多樣化的本質。

169 人學過發佈於 2024.04.04更新於 2024.12.03

什麼是 ETH 3.0

如何購買ETH

歡迎來到HTX.com!在這裡,購買Ethereum (ETH)變得簡單而便捷。跟隨我們的逐步指南,放心開始您的加密貨幣之旅。第一步:創建您的HTX帳戶使用您的 Email、手機號碼在HTX註冊一個免費帳戶。體驗無憂的註冊過程並解鎖所有平台功能。立即註冊第二步:前往買幣頁面,選擇您的支付方式信用卡/金融卡購買:使用您的Visa或Mastercard即時購買Ethereum (ETH)。餘額購買:使用您HTX帳戶餘額中的資金進行無縫交易。第三方購買:探索諸如Google Pay或Apple Pay等流行支付方式以增加便利性。C2C購買:在HTX平台上直接與其他用戶交易。HTX 場外交易 (OTC) 購買:為大量交易者提供個性化服務和競爭性匯率。第三步:存儲您的Ethereum (ETH)購買Ethereum (ETH)後,將其存儲在您的HTX帳戶中。您也可以透過區塊鏈轉帳將其發送到其他地址或者用於交易其他加密貨幣。第四步:交易Ethereum (ETH)在HTX的現貨市場輕鬆交易Ethereum (ETH)。前往您的帳戶,選擇交易對,執行交易,並即時監控。HTX為初學者和經驗豐富的交易者提供了友好的用戶體驗。

3.0k 人學過發佈於 2024.12.10更新於 2025.03.21

如何購買ETH

相關討論

歡迎來到 HTX 社群。在這裡,您可以了解最新的平台發展動態並獲得專業的市場意見。 以下是用戶對 ETH (ETH)幣價的意見。

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