Dapp

Dapps are digital applications that run on a P2P network of computers rather than a single server, typically utilizing smart contracts to ensure transparency and uptime. In 2026, Dapps have achieved mass-market appeal through Account Abstraction, allowing for a "Web2-like" user experience with the security of Web3. This tag covers the entire ecosystem of decentralized software—from social media and productivity tools to governance platforms and identity management.

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Created: 2026/02/02 18:52
Updated: 2026/02/02 18:52
NEAR Price Surges as Bitwise Predicts Over 7,000% Jump

NEAR Price Surges as Bitwise Predicts Over 7,000% Jump

NEAR jumps 11.56% with AI momentum as Bitwise predicts a $155 target, hinting at a possible 7,000% price explosion.]]>

Author: Crypto News Flash
0G Labs Taps Pyth Network to Power AI L1 Mainnet with 2,000 Price Feeds

0G Labs Taps Pyth Network to Power AI L1 Mainnet with 2,000 Price Feeds

With this exclusive collaboration, Pyth Network will deliver over 2K institutional-scale price feeds to the mainnet of 0G Labs from day one.

Author: Blockchainreporter
Stellar (XLM) Network Enhances USDC Transfers with Circle’s CCTP V2 Integration

Stellar (XLM) Network Enhances USDC Transfers with Circle’s CCTP V2 Integration

The post Stellar (XLM) Network Enhances USDC Transfers with Circle’s CCTP V2 Integration appeared on BitcoinEthereumNews.com. Tony Kim Sep 18, 2025 12:45 Stellar (XLM) integrates Circle’s CCTP V2, enhancing USDC transfers and interoperability across multiple blockchains, including Ethereum and Solana, while boosting liquidity and cross-chain functionality. Stellar (XLM) is set to enhance its network capabilities with the integration of Circle’s Cross-Chain Transfer Protocol (CCTP) V2. This significant update will optimize USDC transfers across the Stellar network, which already supports natively issued USDC, according to Stellar. Enhanced Interoperability The upgrade allows users to seamlessly transfer USDC across Stellar and 15 other blockchains, including Ethereum, Solana, and Base. This development aims to improve interoperability and unlock new use cases within the Stellar ecosystem. Wallets, decentralized applications (dApps), and services utilizing USDC will now have enhanced interaction capabilities with Stellar. Key Features of CCTP V2 CCTP V2 introduces several advantages, notably native interoperability, which makes USDC on Stellar compatible across all CCTP V2-enabled blockchains. Historically, users faced challenges in moving USDC between different chains due to limited liquidity and the need for third-party services or Circle accounts. The integration of CCTP V2 into Stellar connects it to the broader USDC ecosystem, offering deeper liquidity and dynamic management tools for efficient multi-chain operations. Additionally, CCTP V2 provides programmability for developers, allowing them to embed cross-chain transfers directly into their dApps. This enables seamless liquidity movement between chains and the inclusion of metadata for autonomous execution on destination chains via Hooks. Developers can capitalize on Stellar’s fast, cost-effective payments and robust off-ramping capabilities without the need for separate integrations or liquidity strategies. Efficient Liquidity Management The protocol eliminates the necessity for wrapped assets and custodial bridges when transferring USDC across supported chains. CCTP V2 facilitates native USDC burning and minting for cross-chain transfers, settling transactions in seconds, thus reducing bridge risk and enhancing…

Author: BitcoinEthereumNews
From Federated Learning to Decentralized Agent Networks: ChainOpera Project Analysis

From Federated Learning to Decentralized Agent Networks: ChainOpera Project Analysis

ChainOpera leverages Web3-based governance and incentive mechanisms to bring users, developers, GPU/data providers into co-construction and co-governance, allowing AI Agents to not only be "used" but also "co-created and co-owned." Written by 0xjacobzhao In our June research report, "The Holy Grail of Crypto AI: Exploring the Frontiers of Decentralized Training," we mentioned federated learning, a "controlled decentralization" solution situated between distributed and decentralized training. Its core approach is to retain data locally and centrally aggregate parameters, meeting privacy and compliance requirements in healthcare, finance, and other fields. At the same time, we have consistently highlighted the rise of agent networks in previous reports. Their value lies in enabling multi-agent autonomy and division of labor to collaboratively complete complex tasks, driving the evolution from "large models" to "multi-agent ecosystems." Federated learning, with its principle of "data storage within the local machine and incentives based on contribution," lays the foundation for multi-party collaboration. Its distributed nature, transparent incentives, privacy protections, and compliance practices provide directly reusable experience for the Agent Network. Following this path, the FedML team upgraded its open-source nature into TensorOpera (the AI industry infrastructure layer) and then evolved it into ChainOpera (a decentralized agent network). Of course, the Agent Network is not an inevitable extension of federated learning. Its core lies in the autonomous collaboration and task division of multiple agents. It can also be directly built on multi-agent systems (MAS), reinforcement learning (RL), or blockchain incentive mechanisms. 1. Federated Learning and AI Agent Technology Stack Architecture Federated Learning (FL) is a framework for collaborative training without centralized data. Its fundamental principle is that each participant trains the model locally and only uploads parameters or gradients to a coordinating end for aggregation, thereby achieving privacy compliance with "data staying within the domain." Through practical application in typical scenarios such as healthcare, finance, and mobile, FL has entered a relatively mature commercial stage. However, it still faces bottlenecks such as high communication overhead, incomplete privacy protection, and low convergence efficiency due to heterogeneous devices. Compared with other training models, distributed training emphasizes centralized computing power for efficiency and scale, while decentralized training achieves fully distributed collaboration through open computing networks. Federated learning lies somewhere in between, embodying a "controlled decentralization" solution that not only meets industry needs for privacy and compliance but also provides a viable path for cross-institutional collaboration, making it more suitable for transitional deployment architectures within the industry. In the entire AI Agent protocol stack, we divided it into three main layers in our previous research report, namely Agent Infrastructure Layer: This layer provides the lowest-level operational support for agents and is the technical foundation for all agent systems. Core modules: including Agent Framework (agent development and operation framework) and Agent OS (lower-level multi-task scheduling and modular runtime), providing core capabilities for agent lifecycle management. Support modules: such as Agent DID (decentralized identity), Agent Wallet & Abstraction (account abstraction and transaction execution), Agent Payment/Settlement (payment and settlement capabilities). The Coordination & Execution Layer focuses on collaboration among multiple agents, task scheduling, and system incentive mechanisms, and is the key to building the "swarm intelligence" of the agent system. Agent Orchestration: It is a command mechanism used to uniformly schedule and manage the agent lifecycle, task allocation, and execution process. It is suitable for workflow scenarios with central control. Agent Swarm: It is a collaborative structure that emphasizes the collaboration of distributed intelligent agents. It has a high degree of autonomy, division of labor, and flexible collaboration, and is suitable for coping with complex tasks in dynamic environments. Agent Incentive Layer: Builds an economic incentive system for the Agent network to stimulate the enthusiasm of developers, executors, and validators, and provide sustainable power for the intelligent ecosystem. Application & Distribution Layer Distribution subcategories: including Agent Launchpad, Agent Marketplace, and Agent Plugin Network Application subcategories: including AgentFi, Agent Native DApp, Agent-as-a-Service, etc. Consumption subcategory: Agent Social / Consumer Agent, mainly for lightweight scenarios such as consumer social interaction Meme: It is hyped by the Agent concept, lacks actual technical implementation and application landing, and is only driven by marketing. 2. FedML, the Federated Learning Benchmark, and the TensorOpera Full-Stack Platform FedML is one of the earliest open-source frameworks for federated learning and distributed training. Originating from an academic team (USC) and gradually becoming a company-owned product of TensorOpera AI, it provides researchers and developers with tools for cross-institutional and cross-device data collaboration and training. In academia, FedML has become a universal experimental platform for federated learning research, with frequent appearances at top conferences such as NeurIPS, ICML, and AAAI. In industry, FedML has a strong reputation in privacy-sensitive scenarios such as healthcare, finance, edge AI, and Web3 AI, and is considered a benchmark toolchain for federated learning. TensorOpera is FedML's commercialized upgrade into a full-stack AI infrastructure platform for enterprises and developers. While maintaining its federated learning capabilities, it expands to the GPU Marketplace, model serving, and MLOps, thereby tapping into the larger market of the large model and agent era. TensorOpera's overall architecture can be divided into three layers: the Compute Layer (foundation layer), the Scheduler Layer (scheduling layer), and the MLOps Layer (application layer). 1. Compute Layer (bottom layer) The Compute layer is the technical foundation of TensorOpera, building on the open-source DNA of FedML. Its core functions include Parameter Server, Distributed Training, Inference Endpoint, and Aggregation Server. Its value proposition lies in providing distributed training, privacy-preserving federated learning, and a scalable inference engine. It supports the three core capabilities of "Train/Deploy/Federate," covering the entire chain from model training and deployment to cross-institutional collaboration, and serves as the foundation of the entire platform. 2. Scheduler Layer (Middle Layer) The Scheduler layer serves as the computing power trading and scheduling hub, comprised of the GPU Marketplace, Provision, Master Agent, and Schedule & Orchestrate. It supports resource allocation across public clouds, GPU providers, and independent contributors. This layer represents a key milestone in the evolution of FedML to TensorOpera. Through intelligent computing power scheduling and task orchestration, it enables larger-scale AI training and inference, encompassing typical LLM and generative AI scenarios. Furthermore, the Share & Earn model within this layer includes a reserved incentive mechanism interface, potentially enabling compatibility with DePIN or Web3 models. 3. MLOps Layer (Upper Layer) The MLOps layer is the platform's direct service interface for developers and enterprises, encompassing modules such as Model Serving, AI Agent, and Studio. Typical applications include LLM Chatbot, multimodal generative AI, and the developer Copilot tool. Its value lies in abstracting underlying computing power and training capabilities into high-level APIs and products, lowering the barrier to entry. It provides ready-to-use agents, a low-code development environment, and scalable deployment capabilities. It is positioned to compete with next-generation AI infrastructure platforms such as Anyscale, Together, and Modal, serving as a bridge from infrastructure to applications. In March 2025, TensorOpera upgraded to a full-stack platform for AI agents, with core products including the AgentOpera AI App, Framework, and Platform. The application layer provides a multi-agent entry point similar to ChatGPT. The framework layer evolved into "Agentic OS" with a graph-structured multi-agent system and Orchestrator/Router. The platform layer deeply integrates with the TensorOpera model platform and FedML to enable distributed model serving, RAG optimization, and hybrid end-to-end cloud deployment. The overall goal is to create "one operating system, one agent network," enabling developers, enterprises, and users to jointly build a next-generation Agentic AI ecosystem in an open and privacy-protected environment. 3. ChainOpera AI Ecosystem Overview: From Co-founder to Technology Foundation If FedML is the technical core, providing the open-source DNA of federated learning and distributed training, and TensorOpera abstracts FedML's research findings into commercially viable full-stack AI infrastructure, then ChainOpera brings TensorOpera's platform capabilities to the blockchain, creating a decentralized agent network ecosystem through an AI Terminal + Agent Social Network + DePIN model, a computing layer, and an AI-Native blockchain. The core shift lies in the fact that TensorOpera remains primarily focused on enterprises and developers, while ChainOpera leverages Web3-based governance and incentive mechanisms to bring users, developers, and GPU/data providers into the co-construction and co-governance of AI agents, allowing them to be not just "used" but "co-created and co-owned." Co-creators ChainOpera AI provides a toolchain, infrastructure, and coordination layer for ecosystem co-creation through the Model & GPU Platform and Agent Platform, supporting model training, intelligent agent development, deployment, and expansion collaboration. The ChainOpera ecosystem's co-creators include AI agent developers (designing and operating intelligent agents), tool and service providers (templates, MCP, databases, and APIs), model developers (training and publishing model cards), GPU providers (contributing computing power through DePIN and Web2 cloud partners), and data contributors and annotators (uploading and annotating multimodal data). These three core components—development, computing power, and data—jointly drive the continued growth of the intelligent agent network. Co-owners The ChainOpera ecosystem also incorporates a co-ownership mechanism, enabling collaborative network building through collaboration and participation. AI Agent creators are individuals or teams who design and deploy new AI agents through the Agent Platform, responsible for their construction, launch, and ongoing maintenance, driving innovation in functionality and applications. AI Agent participants are members of the community. They participate in the lifecycle of AI agents by acquiring and holding Access Units, supporting their growth and activity during use and promotion. These two roles represent the supply and demand sides, respectively, and together form a model of value sharing and collaborative development within the ecosystem. Ecosystem partners: platforms and frameworks ChainOpera AI collaborates with multiple parties to enhance the platform's usability and security, focusing on Web3 integration. The AI Terminal App integrates wallets, algorithms, and aggregation platforms to enable intelligent service recommendations; the Agent Platform introduces multiple frameworks and zero-code tools to lower the development barrier; models are trained and inferred using TensorOpera AI; and an exclusive partnership with FedML supports privacy-preserving training across institutions and devices. Overall, the platform forms an open ecosystem that balances enterprise-level applications with Web3 user experience. Hardware Portal: AI Hardware & Partners Through partners such as DeAI Phone, wearables, and Robot AI, ChainOpera integrates blockchain and AI into smart terminals, enabling dApp interaction, device-side training, and privacy protection, gradually forming a decentralized AI hardware ecosystem. Core Platform and Technology Foundation: TensorOpera GenAI & FedML TensorOpera provides a full-stack GenAI platform covering MLOps, Scheduler, and Compute; its sub-platform FedML has grown from academic open source to an industrial framework, enhancing AI's ability to "run anywhere and scale arbitrarily." ChainOpera AI Ecosystem 4. ChainOpera Core Products and Full-Stack AI Agent Infrastructure In June 2025, ChainOpera officially launched the AI Terminal App and decentralized technology stack, positioning itself as a "decentralized version of OpenAI." Its core products cover four major modules: application layer (AI Terminal & Agent Network), developer layer (Agent Creator Center), model and GPU layer (Model & Compute Network), and CoAI protocol and dedicated chain, covering a complete closed loop from user entry to underlying computing power and on-chain incentives. The AI Terminal app has integrated BNBChain, supporting on-chain transactions and DeFi agent scenarios. The Agent Creator Center is open to developers, offering capabilities such as MCP/HUB, knowledge base, and RAG, with community agents continuously joining. The CO-AI Alliance has also been launched, connecting with partners such as io.net, Render, TensorOpera, FedML, and MindNetwork. According to the on-chain data of BNB DApp Bay in the past 30 days, it has 158.87K independent users and 2.6 million transaction volumes in the past 30 days. It ranks second in the BSC "AI Agent" category, showing strong on-chain activity. Super AI Agent App – AI Terminal (https://chat.chainopera.ai/) As a decentralized ChatGPT and AI social portal, AI Terminal offers multimodal collaboration, data contribution incentives, DeFi tool integration, cross-platform assistants, and support for AI agent collaboration and privacy protection (Your Data, Your Agent). Users can directly access the open-source DeepSeek-R1 model and community agents on their mobile devices, with language tokens and cryptographic tokens transparently transferred on-chain during interactions. Its value lies in enabling users to transition from "content consumers" to "intelligent co-creators," enabling them to leverage a dedicated agent network across scenarios such as DeFi, RWA, PayFi, and e-commerce. AI Agent Social Network (https://chat.chainopera.ai/agent-social-network) Positioned similarly to LinkedIn + Messenger, but for AI agents, it leverages virtual workspaces and agent-to-agent collaboration mechanisms (MetaGPT, ChatDEV, AutoGEN, and Camel) to transform single agents into multi-agent collaborative networks, encompassing applications in finance, gaming, e-commerce, and research, while gradually enhancing memory and autonomy. AI Agent Developer Platform (https://agent.chainopera.ai/) Providing developers with a "Lego-like" creative experience. Supporting zero-code and modular expansion, blockchain contracts guarantee ownership, DePIN + cloud infrastructure lowers barriers to entry, and the Marketplace provides distribution and discovery channels. Its core goal is to enable developers to quickly reach users, transparently record their contributions to the ecosystem, and earn incentives. AI Model & GPU Platform (https://platform.chainopera.ai/) As the infrastructure layer, DePIN combines with federated learning to address the pain point of Web3 AI's reliance on centralized computing power. Through distributed GPUs, privacy-preserving data training, a model and data marketplace, and end-to-end MLOps, it supports multi-agent collaboration and personalized AI. Its vision is to promote a paradigm shift in infrastructure from "companies dominated by large companies" to "community-based collaboration." 5. ChainOpera AI Roadmap In addition to the official launch of its full-stack AI Agent platform, ChainOpera AI firmly believes that artificial general intelligence (AGI) will emerge from a multimodal, multi-agent collaborative network. Therefore, its long-term roadmap is divided into four phases: The provider receives revenue based on usage. Phase 2 (Agentic Apps → Collaborative AI Economy): Launch AI Terminal, Agent Marketplace, and Agent Social Network to form a multi-agent application ecosystem; connect users, developers, and resource providers through the CoAI protocol, and introduce a user demand-developer matching system and credit system to promote high-frequency interactions and continuous economic activities. Phase 3 (Collaborative AI → Crypto-Native AI): Implemented in DeFi, RWA, payment, e-commerce and other fields, while expanding to KOL scenarios and personal data exchange; Develop dedicated LLM for finance/encryption, and launch Agent-to-Agent payment and wallet systems to promote "Crypto AGI" scenario applications. Phase 4 (Ecosystems → Autonomous AI Economies): Gradually evolve into an autonomous subnet economy, where each subnet is independently governed and tokenized around applications, infrastructure, computing power, models, and data, and collaborates through cross-subnet protocols to form a multi-subnet collaborative ecosystem; at the same time, it moves from Agentic AI to Physical AI (robotics, autonomous driving, aerospace). Disclaimer: This roadmap is for reference only. The timeline and features may be adjusted dynamically due to market conditions and does not constitute a guaranteed delivery commitment. 7. Token Incentives and Protocol Governance ChainOpera has not yet announced a complete token incentive plan, but its CoAI protocol is centered on "co-creation and co-ownership" and uses blockchain and Proof-of-Intelligence mechanisms to achieve transparent and verifiable contribution records: the input of developers, computing power, data and service providers is measured and rewarded in a standardized manner. Users use services, resource providers support operations, and developers build applications, and all participants share the growth dividend; the platform maintains the cycle with a 1% service fee, reward distribution and liquidity support, promoting an open, fair and collaborative decentralized AI ecosystem. Proof-of-Intelligence Learning Framework Proof-of-Intelligence (PoI) is the core consensus mechanism proposed by ChainOpera under the CoAI protocol, aiming to provide a transparent, fair, and verifiable incentive and governance system for decentralized AI. This blockchain-based collaborative machine learning framework, based on Proof-of-Contribution (PoC), aims to address the challenges of insufficient incentives, privacy risks, and lack of verifiability in practical applications of federated learning (FL). This design, centered around smart contracts and combining decentralized storage (IPFS), aggregation nodes, and zero-knowledge proofs (zkSNARKs), achieves five key goals: 1. Fair reward distribution based on contribution, ensuring that trainers are incentivized based on actual model improvements; 2. Maintaining data locality to protect privacy; 3. Introducing robustness mechanisms to combat malicious trainer poisoning or aggregation attacks; 4. Ensuring the verifiability of key computations such as model aggregation, anomaly detection, and contribution assessment through ZKP; and 5. Efficient and versatile application of heterogeneous data and diverse learning tasks. The value of tokens in full-stack AI ChainOpera's token mechanism operates around five major value streams (LaunchPad, Agent API, Model Serving, Contribution, and Model Training), with the core being service fees, contribution confirmation, and resource allocation, rather than speculative returns. AI users: Use tokens to access services or subscribe to applications, and contribute to the ecosystem by providing/labeling/staking data. Agent/Application Developer: Use the platform's computing power and data for development and receive protocol recognition for the Agents, applications, or datasets they contribute. Resource providers: Contribute computing power, data, or models to obtain transparent records and incentives. Governance participants (community & DAO): participate in voting, mechanism design, and ecosystem coordination through tokens. Protocol layer (COAI): Maintain sustainable development through service fees and balance supply and demand using an automated allocation mechanism. Nodes and validators: provide verification, computing power, and security services to ensure network reliability. Protocol Governance ChainOpera utilizes DAO governance, allowing participants to participate in proposals and voting through token staking, ensuring transparent and fair decision-making. Governance mechanisms include a reputation system (to verify and quantify contributions), community collaboration (proposals and voting to drive ecosystem development), and parameter adjustments (data usage, security, and validator accountability). The overall goal is to avoid centralized power, maintain system stability, and foster community co-creation. 8. Team Background and Project Financing The ChainOpera project was co-founded by Professor Salman Avestimehr and Dr. He Chaoyang (Aiden), both experts in federated learning. Other core team members have backgrounds spanning top academic and technology institutions such as UC Berkeley, Stanford, USC, MIT, Tsinghua University, Google, Amazon, Tencent, Meta, and Apple, combining both academic research and practical industry experience. The ChainOpera AI team has grown to over 40 people. Co-founder: Salman Avestimehr Professor Salman Avestimehr is the Dean's Professor of Electrical and Computer Engineering at the University of Southern California (USC). He serves as the founding director of the USC-Amazon Trusted AI Center and leads the USC Information Theory and Machine Learning Laboratory (vITAL). He is the co-founder and CEO of FedML and co-founded TensorOpera/ChainOpera AI in 2022. Professor Salman Avestimehr received his PhD in EECS from UC Berkeley (Best Paper Award). As an IEEE Fellow, he has published over 300 high-level papers in information theory, distributed computing, and federated learning, with over 30,000 citations. He has received numerous international honors, including PECASE, NSF CAREER, and the IEEE Massey Award. He led the creation of the FedML open-source framework, which is widely used in healthcare, finance, and privacy-preserving computing, and forms the core technology foundation of TensorOpera/ChainOpera AI. Co-founder: Dr. Aiden Chaoyang He Dr. Aiden Chaoyang He is the co-founder and president of TensorOpera/ChainOpera AI. He holds a PhD in Computer Science from the University of Southern California (USC) and is the original creator of FedML. His research interests include distributed and federated learning, large-scale model training, blockchain, and privacy-preserving computing. Prior to starting his own business, he worked in R&D at Meta, Amazon, Google, and Tencent. He also held core engineering and management positions at Tencent, Baidu, and Huawei, leading the implementation of multiple internet-grade products and AI platforms. Aiden has published over 30 papers in both academia and industry, with over 13,000 citations on Google Scholar. He has also been awarded the Amazon Ph.D. Fellowship, the Qualcomm Innovation Fellowship, and Best Paper Awards at NeurIPS and AAAI. The FedML framework, which he led in development, is one of the most widely used open-source projects in the federated learning field, supporting an average of 27 billion requests per day. He was also a core author on the FedNLP framework and hybrid model parallel training method, which are widely used in decentralized AI projects such as Sahara AI. In December 2024, ChainOpera AI announced the completion of a $3.5 million seed round, bringing its total raised with TensorOpera to $17 million. The funds will be used to build a blockchain L1 platform and AI operating system for decentralized AI agents. This round was led by Finality Capital, Road Capital, and IDG Capital, with participation from Camford VC, ABCDE Capital, Amber Group, and Modular Capital. The company also received support from prominent institutional and individual investors, including Sparkle Ventures, Plug and Play, USC, and EigenLayer founder Sreeram Kannan and BabylonChain co-founder David Tse. The team stated that this round of funding will accelerate the realization of its vision of "a decentralized AI ecosystem co-owned and co-created by AI resource contributors, developers, and users." 9. Analysis of the Federated Learning and AI Agent Market Landscape There are four main representative federated learning frameworks: FedML, Flower, TFF, and OpenFL. FedML is the most comprehensive, combining federated learning, distributed large-scale model training, and MLOps, making it suitable for industrial deployment. Flower is lightweight and easy to use, with an active community, and is oriented towards teaching and small-scale experiments. TFF, deeply dependent on TensorFlow, has high academic research value but weak industrialization. OpenFL focuses on healthcare and finance, emphasizes privacy compliance, and has a relatively closed ecosystem. Overall, FedML represents an industrial-grade, all-round approach, Flower focuses on ease of use and education, TFF is more focused on academic experiments, and OpenFL has advantages in compliance with vertical industry regulations. At the industrialization and infrastructure level, TensorOpera (the commercialization of FedML) inherits the technical expertise of open-source FedML, providing integrated capabilities for cross-cloud GPU scheduling, distributed training, federated learning, and MLOps. Its goal is to bridge academic research and industrial applications, serving developers, small and medium-sized enterprises, and the Web3/Decentralized Infrastructure (Decentralized Infrastructure) ecosystem. Overall, TensorOpera is like "Hugging Face + W&B for open-source FedML," offering a more comprehensive and versatile full-stack distributed training and federated learning platform, distinguishing it from other platforms focused on community, tools, or a single industry. Among the innovation-tier representatives, ChainOpera and Flock are both attempting to integrate federated learning with Web3, but their approaches differ significantly. ChainOpera builds a full-stack AI agent platform encompassing four layers: access, social networking, development, and infrastructure. Its core value lies in transforming users from "consumers" to "co-creators," enabling collaborative AGI and community-building ecosystems through its AI Terminal and Agent Social Network. Flock, on the other hand, focuses more on blockchain-enhanced federated learning (BAFL), emphasizing privacy protection and incentive mechanisms within a decentralized environment, primarily targeting collaborative verification at the computing and data layers. ChainOpera prioritizes application and agent network implementation, while Flock focuses on strengthening underlying training and privacy-preserving computing. At the agent network level, the most representative project in the industry is Olas Network. ChainOpera, derived from federated learning, builds a full-stack closed loop of models, computing power, and agents, and uses the Agent Social Network as a testing ground to explore multi-agent interaction and social collaboration. Olas Network, rooted in DAO collaboration and the DeFi ecosystem, is positioned as a decentralized autonomous service network. Through Pearl, it launches a directly implementable DeFi revenue scenario, demonstrating a distinct approach from ChainOpera. 10. Investment Logic and Potential Risk Analysis Investment Logic ChainOpera's advantage lies first in its technological moat: from FedML (a benchmark open source framework for federated learning) to TensorOpera (enterprise-level full-stack AI Infra), and then to ChainOpera (Web3 Agent network + DePIN + Tokenomics), it has formed a unique continuous evolution path that combines academic accumulation, industrial implementation and encryption narrative. In terms of application and user scale, AI Terminal has already established an ecosystem with hundreds of thousands of daily active users and thousands of Agents. It ranks first in the AI category on BNBChain DApp Bay, demonstrating clear on-chain user growth and real transaction volume. Its multimodal coverage of crypto-native applications is expected to gradually expand to a wider range of Web2 users. In terms of ecological cooperation, ChainOpera initiated the CO-AI Alliance, and joined forces with partners such as io.net, Render, TensorOpera, FedML, MindNetwork, etc. to build multilateral network effects such as GPU, model, data, and privacy computing; at the same time, it cooperated with Samsung Electronics to verify mobile multimodal GenAI, demonstrating the potential for expansion to hardware and edge AI. In terms of tokens and economic models, ChainOpera distributes incentives around five major value streams (LaunchPad, Agent API, Model Serving, Contribution, and Model Training) based on the Proof-of-Intelligence consensus, and forms a positive cycle through a 1% platform service fee, incentive distribution, and liquidity support, avoiding a single "coin speculation" model and improving sustainability. Potential risks First, the technical implementation is quite challenging. ChainOpera's proposed five-layer decentralized architecture spans a wide range of domains, and cross-layer collaboration (especially in large-scale distributed inference and privacy-preserving training) still faces performance and stability challenges. It has yet to be verified in large-scale applications. Secondly, the ecosystem's user stickiness remains to be seen. While the project has achieved initial user growth, it remains to be seen whether the Agent Marketplace and developer toolchain can maintain long-term activity and high-quality supply. The currently launched Agent Social Network primarily relies on LLM-driven text conversations, and user experience and long-term retention still need further improvement. If the incentive mechanism is not carefully designed, there is a risk of high short-term activity but insufficient long-term value. Finally, the sustainability of the business model remains to be determined. Currently, revenue relies primarily on platform service fees and token circulation, and stable cash flow has yet to be established. Compared to more financial or productivity-focused applications like AgentFi or Payment, the commercial value of the current model requires further verification. Furthermore, the mobile and hardware ecosystems are still in the exploratory stages, leaving market prospects uncertain.

Author: PANews
Registration for the ETHShanghai Youth Voyage Program is now open, with a maximum subsidy of 200U per person

Registration for the ETHShanghai Youth Voyage Program is now open, with a maximum subsidy of 200U per person

ETHShanghai Youth Odyssey The ETHShanghai Youth Odyssey is one of ETHShanghai's most distinctive events. Specifically targeted at young Asian developers, it aims to lower the barrier to entry for them to participate in top Web3 events, allowing more young people the opportunity to come to Shanghai and interact face-to-face with the world's best builders. Funding scale : The best applicants will be selected and each applicant can receive a transportation subsidy of up to 200U; Hackathon Co-creation : Voyage Program members are required to participate in the ETHShanghai concurrent hackathon and compete with developers from around the world; Career development support : Outstanding participants will have the opportunity to join the community talent pool, obtain project referral qualifications, and deeply participate in community construction; Offline Meetup : In Shanghai, a special Voyage Plan Meetup will be held, inviting Ethereum Core Devs and high-quality project parties to communicate on site to expand the horizons and cognition of young developers. Project Process Rolling admissions : We will continuously review application materials and announce the shortlisted applicants in batches at various points in time. Applicants who have already been shortlisted do not need to reapply. It is recommended to register as early as possible : those who register in the early batches will be more likely to secure a place in advance. Screening criteria If you're a developer, researcher, designer, or operator passionate about Ethereum and Web3! Whether you're a student just starting to explore blockchain or an experienced builder, as long as you're passionate, willing to learn, and eager to grow—this is the stage for you! We will use a comprehensive weighted selection and interview method to comprehensively evaluate each applicant from four dimensions: technical ability, target group, community contribution, and learning potential, to ensure the selection of fair, diverse, and promising young developers to join this voyage program! Technical capabilities and project experience (30%) We hope you've explored code, products, or research before. Submitting demos, participating in development, or having a Github project are all plus points. Target population (30%) Taking into account the cost of transportation and attendance, we will prioritize funding underfunded open source and Ethereum contributors, especially students/developers who have graduated within 3 years. Community engagement (20%) Have you written articles, translated materials, participated in community discussions, or done volunteer work? These contributions are equally important. Learning motivation and potential (20%) We look for genuine enthusiasm and a clear plan. Even if you lack experience, you will receive high marks as long as you demonstrate curiosity and commitment to Ethereum. Special bonus items In order to encourage more outstanding young builders, we will give extra points to the following groups: Top 15 in the 2025 Summer Web3 Internship Program. The winning team of the casual hackathon "My First DApp"; Volunteer at ETHShanghai. The above standards are for reference only. The organizer reserves the right of final interpretation. How to Apply 1. Application Submission Application link: https://tally.so/r/mVKrV6 Application period: September 19 - October 3 >Sign up now and let’s sail together! 2. Project team scoring Assign scores based on the weights of the above-mentioned screening criteria. 3. Final Confirmation The project team will select the best candidates based on their overall performance. A confirmation email will be sent to the selected developers via the ETHShanghai Youth Odyssey contact email address ( [email protected] ) before October 10th. The admission list will be announced on the Twitter account (@EthereumSH) and the TG community ( https://t.me/ETHPandaOrg ). Follow the account and join the community to keep up to date with the latest developments. (P.S. Please prepare your itinerary and visa in advance to ensure a smooth trip. Reimbursement will be made based on the actual airfare provided in the receipt. Each person can receive a maximum of 200 U in transportation subsidies. Any expenses exceeding this amount will be borne by the applicant.) 4. Sponsor and support young students We warmly welcome small sponsorships (starting from 500U). All funds will be used to support young students. Your support can help us increase the maximum number of sponsorships and allow more outstanding young people to participate in sponsorship. Please contact: Telegram: @brucexu_eth (specify "Sponsorship") Email: [email protected] (Subject "Youth Odyssey Sponsorship") Payment methods will be provided after contacting us. We sincerely thank the donors of the Voyage Program: ETHShanghai Treasury, Liu Bing, and past donors of the Voyage Program. Your generosity supports the growth of young people! ???? Contact [1] Email: [email protected] [2] Telegram: https://t.me/ETHPandaOrg [3] Contact us on Telegram: @Echo_2333, @brucexu_eth [4] Contact person in charge: a1137077228 (Echo) Previous Reviews Since its launch, the ETHPanda Youth Odyssey program has been dedicated to helping young developers in the Chinese-speaking world overcome language, cultural, and financial barriers, participate in international Ethereum events, and promote global ecosystem exchange. The program achieved fruitful results in its inaugural launch at previous Devcon and ETHGlobal Bangkok events. Funded teams secured one Finalist (only the top 10 projects were selected from over 700 entries), and eight projects won 17 awards across multiple tracks, with a total prize pool exceeding 22,000 U. The Voyage Program continues to evolve, extending to the ETHAsia Youth Odyssey (Web3 Carnival in Hong Kong) in April 2025 to support even more young builders in Asia. Vitalik Buterin personally attended the event to engage with young developers face-to-face, answering technical questions and discussing ecosystem perspectives. This demonstrates our long-term commitment to young hackers: from financial support to career development, helping them integrate into the global Web3 ecosystem. Registration is now open for the ETHShanghai 2025 Hackathon! Applications are now open for the ETHShanghai Youth Voyage Program. Whether you're just starting out or a seasoned builder, come to Shanghai to expand Ethereum and shape an open future . Your Web3 journey begins here! Introduction of the organizer Wanxiang Blockchain Lab was established in 2015 by China Wanxiang Holdings Co., Ltd. It brings together experts in the field to conduct research and discussion on technology development, commercial applications, industrial strategy, etc., providing guidance for entrepreneurs, reference for industry development and policy formulation, and promoting the progress and development of blockchain technology in serving the social economy. ETHPanda is an Ethereum community composed of Chinese-speaking builders. It is committed to connecting Chinese-speaking builders with the international Ethereum ecosystem through education, public services, events, and technological innovation, and jointly promoting the continued development and innovation of Ethereum. PANews is a leading think tank information platform in the field of blockchain and Web3.0, created by traditional media professionals and senior industry professionals. TinTinLand is a leading Web3 developer ecosystem platform in the Asia-Pacific region, with a community of over 200,000 developers. With a foundation in technical education, we integrate ecosystem resources and provide full-cycle growth support to help projects precisely connect with the Asia-Pacific developer market, establish long-term technical influence, and achieve sustainable ecosystem growth.

Author: PANews
CCTP V2 on Stellar: Native USDC

CCTP V2 on Stellar: Native USDC

The post CCTP V2 on Stellar: Native USDC appeared on BitcoinEthereumNews.com. Circle has extended the Cross‑Chain Transfer Protocol (CCTP) on Stellar, enabling native and direct transfers of USDC across more than 15 blockchains, including Ethereum, Solana, and Base (CryptoNews). In this context, the burn‑and‑mint 1:1 mechanism eliminates the need for external bridges, ensuring faster settlements and verifiable compliance rules throughout the entire transfer process. For technical details and a list of supported chains, refer to Circle’s official documentation: Circle – Multi‑chain USDC on Stellar. According to data collected from public on-chain monitoring and integration reports updated in 2025, the average latencies observed on fast-finality networks consistently result in being under 60 seconds. Industry analysts also note that the elimination of wrapped tokens simplifies reconciliation and audit, measurably reducing operational complexities for exchanges and wallets. In Brief USDC transferable between Stellar and over 15 blockchains (e.g., Ethereum, Solana, Base) for native cross-chain movements. Mechanism of burn at the source / mint at the destination without wrapped token (Circle Developers). Typical times: from seconds to a few minutes, depending on the purpose of the chain (CryptoNews). Benefits for DEX/CEX, wallets, and dApps; fiat access thanks to the MoneyGram network with over 475,000 physical locations (Circle). What changes with the integration on Stellar With CCTP V2, USDC is transferred natively between Stellar and other networks, without resorting to the creation of “wrapped” assets. The transfer operation occurs through the burning of USDC on the origin chain and the subsequent minting of the equivalent on the destination, maintaining the 1:1 parity. In fact, this process significantly reduces the counterparty risks typical of custodial bridges and simplifies liquidity management between ecosystems. The updated list of supported blockchains is available in Circle’s official documentation and provides an accurate overview of effective interoperability. How it works: burn/mint and attestations The protocol sends a burn request on the source…

Author: BitcoinEthereumNews
Circle Expands CCTP V2 to Stellar for Seamless USDC Transfers

Circle Expands CCTP V2 to Stellar for Seamless USDC Transfers

TLDR Circle’s CCTP V2 brings native USDC cross-chain swaps to Stellar—no bridges! Stellar now supports fast, secure USDC transfers across 15+ blockchains. CCTP V2 connects Stellar to multichain USDC—no wraps, no risks. Move USDC cross-chain in seconds with Circle’s CCTP V2 on Stellar. CCTP V2 enables secure, seamless USDC liquidity across Stellar and beyond. Circle [...] The post Circle Expands CCTP V2 to Stellar for Seamless USDC Transfers appeared first on CoinCentral.

Author: Coincentral
With 9,800+ Investors In, BlockchainFX Presale Approaches $7.6M While Pump.fun Tops $1B Daily Trades

With 9,800+ Investors In, BlockchainFX Presale Approaches $7.6M While Pump.fun Tops $1B Daily Trades

BlockchainFX presale nears $7.6M with 9,800+ investors, offering 117% upside at launch, Visa card utility, and 90% APY staking — outpacing Tron and Cardano upgrades.

Author: Blockchainreporter
Early Investors in This Token Could Experience the Same Life-Changing Growth Ethereum Holders Have Seen Since 2017

Early Investors in This Token Could Experience the Same Life-Changing Growth Ethereum Holders Have Seen Since 2017

When Ethereum (ETH) launched in 2015, few imagined its rise. From ~$10 in 2017 to $4,800 in 2021, early wallets transformed tiny investments into fortunes, one of the biggest crypto wins ever.  Enter Little Pepe (LILPEPE). Its skyrocketing presale, daring roadmap, and game-changing flair in the meme coin scene position it as the next decade’s […]

Author: Cryptopolitan
CCTP V2 on Stellar: Native USDC, cross-chain transfers 15+

CCTP V2 on Stellar: Native USDC, cross-chain transfers 15+

Circle has extended the Cross‑Chain Transfer Protocol (CCTP) on Stellar, enabling native and direct transfers of USDC across more than 15 blockchains.

Author: The Cryptonomist