Huobi Growth Academy | AI Agent in-depth research report: The center of the intelligent revolution, may usher in a big e
introducción
Artificial intelligence (AI) has entered a new stage, gradually evolving from the initial single-task model to an intelligent entity with autonomous decision-making and collaboration capabilities – AI Agent. This change is not only due to the advancement of algorithms and computing power, but also the empowerment of blockchain technology in terms of decentralization, transparency and immutability. AI Agent has not only brought far-reaching impacts to traditional industries, but also demonstrated great potential in finance, Web3 ecology, automated services and gaming.
As the core of the future intelligent economic system, AI Agents ability to self-drive and collaborate across fields will redefiniciónne business models and social structures. With the continuous evolution of technology, AI Agent is expected to usher in explosive growth in 2025 and become the core force driving the intelligent revolution. This report will analyze the technical foundation, application scenarios, challenges and future development trends of AI Agent in detail, aiming to provide a comprehensive perspective for practitioners, investors and researchers in related fields.
1. What is AI Agent?
1.1 Definition
AI Agent is an intelligent entity with autonomous, environmentally aware and goal-oriented capabilities. It can make decisions based on the external environment and internal goals, and achieve these goals by performing tasks. Compared with traditional artificial intelligence systems, AI Agent has stronger self-driving and autonomous decision-making capabilities, can think independently and make dynamic adjustments in complex environments. Its core features include:
Autonomy: AI agents can make decisions and perform tasks independently based on goals and context without human intervention.
Environmental perception: By collecting external data, AI Agents can adjust their behavior in real time to cope with different changing situations.
Goal-oriented: The AI Agent’s actions are centered around achieving predetermined goals, and it is able to optimize decision paths to complete tasks efficiently.
1.2 Classification
Single Agent: This type of agent completes a relatively simple and independent task and usually does not interact with other agents. For example, the control system in an autonomous vehicle or the assistant in a smart home device.
Multi-Agent System (MAS): Multiple agents work together to complete complex tasks, usually used in distributed systems. Multiple agents share information and coordinate to handle more complex tasks, such as automated supply chain management.
Autonomous Agent: In addition to the characteristics of traditional intelligent entities, this type of Agent also has economic autonomy and can perform financial operations such as on-chain transactions and token transfers, and plays an important role in the blockchain.
Figure: AIxCrypt o’s market value has grown significantly this year
2. Core Technology and Architecture
2.1 Core Technology
The implementation of AI Agent relies on the combination of multiple advanced technologies, mainly including the following:
Machine learning and deep learning: These technologies enable AI agents to extract knowledge from large amounts of data and continuously optimize decision models. Through reinforcement learning, AI agents improve themselves over multiple decision-making processes, thereby improving the quality of their decisions.
Reinforcement Learning: Reinforcement learning allows AI agents to continuously adjust their strategies through reward and punishment mechanisms during their interactions with the environment, thereby achieving mission goals. For example, DeepMinds AlphaZero mastered the ultimate skills of Go through reinforcement learning.
Natural Language Processing (NLP): Based on large language models such as GPT, AI Agents can understand and generate natural language, thereby achieving efficient interaction with users. For example, ChatGPT uses NLP technology to help users provide consulting services or perform tasks.
Blockchain and smart contracts: Blockchain provides a decentralized infrastructure that ensures transparency and security when AI Agents perform tasks. Smart contracts provide an automated protocol execution environment for AI Agents, enabling them to conduct financial transactions without third-party intervention.
Distributed computing: With the popularization of multi-agent systems, distributed computing has become a necessary supporting technology. Technologies such as the Swarm computing framework can accelerate collaboration and data sharing among multiple agents and improve task execution efficiency.
Knowledge Graph: Knowledge graph provides AI Agent with background knowledge and reasoning ability, enabling it to combine multiple sources of knowledge in complex decision-making processes and make more accurate judgments.
2.2 Architecture Design
The architecture design of AI Agent usually includes the following core modules:
Perception module: responsible for collecting external environment information, including data input and sensor feedback. For example, in the financial field, the perception module can collect market data in real time to provide support for investment decisions.
Decision-making module: Generates action plans and determines priorities based on target and environmental data. The decision-making module automatically selects the best action path through algorithm and model analysis.
Execution module: responsible for putting the strategies generated by the decision module into practice and performing actual operations. The execution module often needs to interact with external systems (such as blockchain, trading platforms, etc.).
Learning module: AI Agent continuously optimizes its decision-making strategy through feedback mechanism during task execution. By learning from historical data, AI Agent can improve its execution efficiency and accuracy.
3. Application Scenarios
3.1 Finance
The application of AI Agent in the financial industry has gradually become the norm, especially in the following areas:
Smart Investment: AI Agent can analyze market data worldwide, adjust investment portfolios in real time, and maximize investment returns. For example, investment management platforms can deploy AI Agent to perform asset allocation based on big data analysis.
Automatic trading: Through high-frequency trading algorithms, AI Agent can capture profit opportunities brought by market fluctuations in a very short time. By combining with blockchain technology, the trading process is decentralized and automated.
Decentralized Finance (DeFi): In the DeFi field, AI Agent can act as a liquidity provider, providing optimized configuration for assets in the liquidity pool, thereby increasing users returns.
3.2 Web3 Ecosystem
NFT Mercado: AI Agent can independently manage the minting, trading, and auctioning of digital assets. By combining smart contracts with blockchain technology, Agent can ensure the transparency and security of every transaction.
DAO Management: In a decentralized autonomous organization (DAO), AI Agents can provide decision-making advice and perform governance operations, such as voting and asset allocation. Through blockchain technology, every operation performed by the Agent can be traced and verified, ensuring the transparency and fairness of the DAO.
3.3 Automation Services
Customer Support: AI Agents, such as ChatGPT, can provide 24/7 customer support, automatically handle customer inquiries and complaints, reduce manual intervention, and improve customer experience.
Logistics and Supply Chain: AI Agents play an important role in automated logistics. They can optimize transportation routes, inventory management, etc. to ensure the efficient operation of the supply chain.
3.4 Games and Virtual Worlds
In the gaming industry, AI Agent plays an increasingly important role:
AI NPC: In the Metaverse and GameFi ecosystem, AI-driven non-player characters (NPCs) provide dynamic interactive experiences, allowing players to engage in more natural and in-depth communication with intelligent entities in the virtual world.
Figure: Investment and financing in AI-related projects has exceeded that in other sectors so far this year
4. Business Model
With the continuous development of AI Agent technology, business models are gradually expanding in the direction of diversification and decentralization. The business potential of AI Agent is not only reflected in the application of traditional industries, but also presents unprecedented opportunities in Web3 and decentralized economies. The following are the main business models that can promote the practical application of AI Agent and its related technologies and create value for innovative economic activities.
4.1 Simbólicoomics
Tokenomics is an economic model based on blockchain and digital tokens. AI agents often rely on tokens as a medium of exchange to participate in economic activities in decentralized application scenarios. Autonomous agents can complete multiple functions on the platform and create commercial value by issuing or using tokens. The key components of its business model are as follows:
Token incentive mechanism: Many AI Agents incentivize users to participate in various activities on the platform by issuing tokens. For example, on decentralized finance (DeFi) platforms, AI Agents act as liquidity providers and receive token rewards by providing liquidity to the platform, executing trading strategies, etc. Token rewards are usually closely linked to the platforms ecological growth and user engagement.
4.2 Data Economy
Data is one of the most valuable resources in the modern economy. Especially driven by technologies such as artificial intelligence and blockchain, the economic value of data has been further amplified. AI Agent can collect and process various data through efficient computing and information processing capabilities, thus building the foundation of the data economy.
4.3 Infrastructure Services
As AI Agent technology matures, more and more companies are beginning to focus on providing technology and computing infrastructure services for AI Agents. Such service models include but are not limited to computing power, storage resources, API interfaces, and other aspects.
4.4 Smart Contracts and Decentralized Markets
AI Agent automatically executes transactions and business behaviors through smart contracts, reducing manual intervention and improving efficiency. In the decentralized market, smart contracts can provide AI Agent with a more reliable execution environment:
Decentralized Market Platform: AI Agents can trade directly on decentralized markets without the need for third-party intermediaries. Smart contracts ensure the transparency and fairness of transactions, and the transaction process can be fully automated. For example, in the NFT market, AI Agents can independently handle the creation, trading, and auctioning of digital assets, thereby achieving autonomous and decentralized market activities.
Decentralized autonomy: Decentralized autonomous organizations (DAOs) can automatically perform governance tasks through AI agents, reducing reliance on human intervention in the decision-making process. The combination of smart contracts and AI agents can help DAOs improve decision-making efficiency and increase community participation, thereby promoting the platforms self-development and continuous innovation.
V. Challenges
5.1 Technical Challenges
Performance bottleneck: As the number of AI agents increases, how to improve the computing efficiency of the system, especially when multiple agents collaborate, the demand for computing power will increase sharply, which has become a bottleneck in the current technological development.
Data privacy: In a decentralized environment, how to balance data privacy protection and transparency is an important challenge facing AI Agents. Especially in the financial and medical fields, protecting personal data is crucial.
5.2 Regulation and Law
Legal liability: The autonomy of AI agents makes their behavior unpredictable, which brings challenges to the identification of legal liability. Currently, there is no clear legal framework to define the liability of AI agents when performing tasks.
Economic autonomy and regulation: AI Agents have economic autonomy, which may lead to regulatory issues, especially in cross-border payments and digital currency transactions.
5.3 Community and Ecosystem
User education and adoption: Although AI agents have shown potential in many fields, user education remains a huge challenge. Many potential users lack understanding of how agents work, which directly affects their application in the mainstream market.
Competition and collaboration: With the emergence of multiple AI agent projects and platforms, how to achieve a balance between cooperation and competition in an open ecosystem will be the key to future development.
VI. Case Study
With the combination of artificial intelligence and blockchain technology, AI Agent has made significant progress in multiple fields and application scenarios. Through the analysis of specific cases, we can better understand how this technology is applied in practice and how it drives industry change. The following are several representative cases that not only demonstrate the powerful capabilities of AI Agent, but also reveal how the technology is combined with different fields to bring far-reaching impacts to the entire ecosystem.
6.1 TruthGPT Agent
TruthGPT is a fully autonomous AI Agent based on blockchain technology, specifically designed to execute automated investment and arbitrage strategies in the field of decentralized finance (DeFi). Its core advantage is that it is completely decentralized, has no human intervention, and can autonomously judge market trends and execute on-chain transactions. The launch of this project marks a new stage in the application of AI Agent in the field of DeFi.
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Core functions and applications
Automated arbitrage: TruthGPT Agent is able to use its algorithm to identify arbitrage opportunities in the market, whether it is price differences across exchanges or differences in returns based on different DeFi protocols, it can quickly make decisions and execute transactions. By reacting quickly, TruthGPT Agent can maximize its returns in the DeFi ecosystem while reducing emotional fluctuations caused by human decision-making.
Intelligent risk management: To avoid excessive risk, TruthGPT also integrates intelligent risk control. AI Agent will ensure the safety of funds and the stability of returns by real-time monitoring of market fluctuations, analyzing historical data, and adjusting investment strategies. Decentralized execution: By integrating blockchain and smart contracts, TruthGPT Agent can directly execute operations in smart contracts without human intervention. This decentralized execution model ensures the transparency, security, and immutability of transactions, and eliminates the costs and risks that may be brought by intermediaries.
Token economic incentives: TruthGPT adopts a token incentive mechanism. Users can obtain proxy services by holding the platforms native tokens, and can also obtain token rewards by providing liquidity and participating in governance.
6.2 Swarm Framework
Swarm Framework is an open source distributed computing framework that aims to achieve efficient processing of complex tasks through multiple AI Agents working together. It is not only a platform for building AI systems, but also an ecosystem focused on multi-agent systems (MAS) collaboration. The launch of this framework marks the further expansion of AI Agent in the fields of collaboration and distributed computing.
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Core functions and applications
Multi-agent collaboration: Swarm Framework can combine multiple AI agents into a collective to complete complex tasks through distributed computing. These tasks can involve multiple fields such as data processing, information sharing, and collaborative decision-making, greatly improving the efficiency and accuracy of task execution.
Task allocation and optimization: Swarm Framework allows users to assign different tasks to different AI Agents, which are assigned according to their specific capabilities and specialties.
Fault tolerance and adaptability: Swarm Framework has strong fault tolerance. When any AI Agent in the system fails or fails to complete a task, other agents will automatically take over its task to ensure that the system will not be interrupted.
Blockchain integration: Swarm Framework provides AI Agents with tamper-proof records and a decentralized execution environment by combining with blockchain technology.
Through the application of Swarm Framework, we can see the advantages of AI Agent in multi-agent systems, especially its powerful capabilities in collaboration, fault tolerance, and self-adaptation. It not only promotes efficient cooperation between agents, but also provides a new direction for distributed computing.
Figure: Changes in the number of stars on GitHub since the launch of Mainstream
6.3 AI NPCs in GameFi
The application of AI Agent in the gaming industry is becoming more and more common, especially in the integration of GameFi (game finance) and the virtual world, AI NPC (non-player character) has become an important part of enhancing the gaming experience. The GameFi platform not only provides players with a gaming experience, but also incorporates blockchain technology to enable virtual world economic activities, while AI NPC provides intelligent and automated support for these virtual economic activities.
Dynamic interaction and intelligent behavior: Traditional game NPCs mainly interact with players through preset scripts, while AI NPCs have the ability to learn and make decisions autonomously. They can respond to dynamic factors such as player behavior, environmental changes, and task requirements.
Virtual Economy and Trading: In the GameFi platform, AI NPCs can participate in the construction of the virtual economy, such as providing players with real-time market interactions through automated trading, asset management, and resource allocation.
Metaverse and social interaction: With the rise of the concept of the metaverse, AI NPCs are gradually entering virtual social scenarios. For example, in the virtual reality world, AI NPCs can become virtual social partners of players, providing entertainment, education, or collaboration services. Decentralized game governance: In the GameFi platform, AI NPCs can participate in the governance and decision-making of games through decentralized autonomous organizations (DAOs). These AI Agents can automatically adjust game rules, task rewards, and resource allocation based on player feedback and participation, promoting the healthy development of the game community.
7. Future Development
The combination of AI Agent and cripto assets will usher in a key breakthrough in the next few years. With the continuous advancement of technology and changes in market demand, AI Agent will help the field of crypto assets achieve innovation on multiple levels, including cross-chain collaboration, resource sharing, and efficient computing methods. In future development, the combination of AI Agent and crypto assets will focus more on intelligence, automation, and security, bringing a more efficient and flexible ecosystem.
7.1 Technical Direction
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7.1.1 Cross-chain collaboration
The heterogeneity of blockchain technology means that there are technical barriers between different blockchains, and resources and information are difficult to circulate between multiple blockchain platforms. The cross-chain collaboration capability of AI Agent will be a key technical direction in its future development. Through cross-chain bridging technology, AI Agent will be able to transcend the limitations of different blockchains, take advantage of the advantages of different chains, and enhance its application in multiple crypto asset networks.
Asset management and optimization: AI Agent can intelligently allocate assets on different chains and flow them between chains to maximize profits or reduce transaction costs.
Cross-chain data collaboration: Different blockchain platforms usually have different consensus mechanisms, data structures and transaction models. AI Agent will act as an intermediary to facilitate the processing and interaction of cross-chain data.
DeFi interoperability: Currently, different platforms and protocols in the DeFi ecosystem are mostly isolated. AI Agent’s cross-chain capabilities can enable it to automate asset management and decision execution across multiple DeFi protocols, thereby optimizing the interoperability and user experience of DeFi services.
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7.1.2 More Efficient Swarm Computing
As blockchain networks continue to grow and task complexity increases, traditional computing methods are unable to cope with increasingly complex demands. Swarm computing, as a distributed computing method, can process large-scale data and perform complex tasks by coordinating the collaboration of multiple AI agents. In the field of crypto assets, Swarm computing will have great potential, especially in data analysis, smart contract execution, and transaction decision-making.
The advantage of Swarm computing is that it can accelerate the computing process, improve efficiency and reduce costs through cooperation between multiple AI agents.
Smart contract execution and optimization: Swarm computing can share the execution tasks in smart contracts and complete the verification, calculation and transaction execution of contract terms through the collaboration of multiple agents.
Distributed risk assessment: AI Agent can predict market trends and conduct risk assessment based on distributed computing. Multiple agents can jointly process large amounts of market data, thereby reducing the risk of a single prediction model and improving overall accuracy and reliability.
Decentralized data analysis: AI Agent will be able to efficiently acquire and analyze data across multiple decentralized data sources through distributed computing methods, providing fast and accurate market insights, thereby helping users make smarter investment decisions.
7.2 Emerging Fields
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7.2.1 Agent x IoT (Integration of IoT and Crypto Assets)
The combination of Internet of Things (IoT) technology and crypto assets, especially in the application of smart contracts and blockchain, will open up more innovative application areas for AI Agents. AI Agents can promote the application of crypto assets in the IoT ecosystem through seamless connection with IoT devices.
Smart contracts and automated payments: AI Agent can work with IoT devices to achieve automatic payments and smart contract execution based on IoT data.
Decentralized trading and settlement system: In the crypto asset market, IoT devices can become the entry point for transactions, and AI Agents are responsible for automatically completing the execution and settlement of transactions based on device data, enhancing the practicality and flexibility of decentralized trading platforms.
IoT device assetization: IoT devices themselves will become part of the encrypted assets. AI Agent can help convert the usage rights or data streams of these devices into digital assets, promoting the digitization and liquidity of IoT assets.
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7.2.2 Agent x Social Network (Integration of Social Network and Crypto Assets)
Social networks have become an indispensable part of peoples daily lives. In this field, the combination of AI Agents and crypto assets will also open up new development opportunities. By closely integrating crypto assets with social networks, AI Agents will be able to provide users with more personalized, secure and intelligent services.
Privacy protection and data management: AI Agent can assist users in managing personal data on social networking platforms, ensuring privacy protection and compliant use of data.
Decentralized market based on social networks: AI Agent can identify potential crypto asset investment opportunities by analyzing content and user behavior on social platforms.
Social Tokenization and Reward Mechanism: AI Agent can automatically generate cryptocurrency or social tokens based on user interactions, content creation, and other behaviors on social platforms.
Decentralized identity management: AI Agent will be able to assist users in managing their digital identities and ensure the security and privacy of users’ identity information on social platforms through a decentralized identity authentication system.
8. Conclusion and Recommendations
The future development of AI Agent is full of potential. From more intelligent autonomous decision-making to deep integration with multiple industries, to cross-domain intelligent collaboration, AI Agent will undoubtedly become a key force in promoting changes at all levels of society. With the continuous breakthroughs in technology and the gradual improvement of ethics and governance, the widespread application of AI Agent will bring unprecedented innovation opportunities to human society. However, how to find a balance between technological progress and ethics and regulations will be the most critical challenge in future development.
AI Agent represents the integration of artificial intelligence and decentralized technology, and is an important part of the Web3 ecosystem. Although the technology faces many challenges, its potential revolutionary impact cannot be ignored. In the future, with technological breakthroughs, the improvement of the regulatory framework, and the advancement of user education, AI Agent is expected to usher in rapid growth.
It is recommended that developers, enterprises and investors in related fields pay close attention to the development of AI Agent technology, actively participate in this intelligent revolution, and promote its widespread application and innovation in various industries.
This article is sourced from the internet: Huobi Growth Academy | AI Agent in-depth research report: The center of the intelligent revolution, may usher in a big explosion in 2025
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