AI AGENT Leads a New Cycle of encryption, Intelligent Agents Reshape the Industry Landscape

AI AGENT: The Intelligent Force Shaping the Future New Economic Ecosystem

1. Background Overview

1.1 Introduction: "New Partners" in the Intelligent Era

Each cryptocurrency cycle brings new infrastructure that drives the entire industry forward.

  • In 2017, the rise of smart contracts spurred the booming development of ICOs.
  • In 2020, the liquidity pools of DEX brought about the summer boom of DeFi.
  • In 2021, the emergence of a large number of NFT series marked the arrival of the era of digital collectibles.
  • In 2024, the outstanding performance of a certain launch platform led the trend of memecoins and launch platforms.

It should be emphasized that the emergence of these vertical fields is not solely due to technological innovation, but rather a perfect combination of financing models and bull market cycles. When opportunity meets the right timing, it can lead to tremendous change. Looking ahead to 2025, it is clear that the emerging field of the 2025 cycle will be AI agents. This trend peaked last October, with a certain token launching on October 11, 2024, and reaching a market value of 150 million USD by October 15. Then, on October 16, a certain protocol launched Luna, making its debut with the live streaming image of the girl next door, igniting the entire industry.

So, what exactly is an AI Agent?

Everyone is certainly familiar with the classic movie "Resident Evil", and the AI system Red Queen is particularly impressive. The Red Queen is a powerful AI system that controls complex facilities and security systems, capable of autonomously perceiving the environment, analyzing data, and taking swift action.

In fact, AI Agents share many similarities with the core functions of the Red Heart Queen. In reality, AI Agents play a similar role to some extent; they are the "intelligent guardians" of modern technology, helping businesses and individuals tackle complex tasks through autonomous perception, analysis, and execution. From self-driving cars to intelligent customer service, AI Agents have penetrated various industries, becoming a key force in enhancing efficiency and innovation. These autonomous intelligences, like invisible team members, possess comprehensive capabilities ranging from environmental perception to decision execution, gradually permeating various sectors and driving the dual enhancement of efficiency and innovation.

For example, an AI AGENT can be used for automated trading, managing portfolios and executing trades in real-time based on data collected from a data platform or social media platform, continuously optimizing its performance through iterations. The AI AGENT is not a single form, but is categorized into different types based on specific needs in the cryptocurrency ecosystem.

  1. Execution-type AI Agent: Focused on completing specific tasks, such as trading, portfolio management, or arbitrage, aimed at improving operational accuracy and reducing the time required.

  2. Generative AI Agent: used for content generation, including text, design, and even music creation.

  3. Social AI Agent: As an opinion leader on social media, interact with users, build communities, and participate in marketing activities.

  4. Coordinating AI Agent: Coordinates complex interactions between systems or participants, particularly suitable for multi-chain integration.

In this report, we will delve into the origins, current status, and broad application prospects of AI Agents, analyzing how they are reshaping the industry landscape and looking ahead to their future development trends.

Decoding AI AGENT: The Intelligent Force Shaping the New Economic Ecology of the Future

1.1.1 Development History

The development of AI AGENT showcases the evolution of AI from basic research to widespread application. The term "AI" was first introduced at the Dartmouth Conference in 1956, laying the foundation for AI as an independent field. During this period, AI research mainly focused on symbolic methods, giving rise to the first AI programs, such as ELIZA(, a chatbot), and Dendral(, an expert system in organic chemistry). This stage also witnessed the initial proposal of neural networks and the preliminary exploration of machine learning concepts. However, AI research during this time was severely constrained by the limitations of computing power. Researchers faced significant difficulties in the development of algorithms for natural language processing and mimicking human cognitive functions. Additionally, in 1972, mathematician James Lighthill submitted a report published in 1973 on the state of ongoing AI research in the UK. The Lighthill report fundamentally expressed widespread pessimism about AI research after the initial excitement phase, leading to a significant loss of confidence in AI among UK academic institutions(, including funding agencies). After 1973, funding for AI research drastically decreased, and the field experienced its first "AI winter," with increasing skepticism about AI's potential.

In the 1980s, the development and commercialization of expert systems led global enterprises to begin adopting AI technology. This period saw significant advancements in machine learning, neural networks, and natural language processing, fostering the emergence of more complex AI applications. The introduction of autonomous vehicles and the deployment of AI across various industries such as finance and healthcare also marked the expansion of AI technology. However, from the late 1980s to the early 1990s, the AI field experienced a second "AI winter" as demand for specialized AI hardware collapsed. Additionally, how to scale AI systems and successfully integrate them into practical applications remains an ongoing challenge. Meanwhile, in 1997, IBM's Deep Blue defeated world chess champion Garry Kasparov, marking a milestone in AI's ability to solve complex problems. The revival of neural networks and deep learning laid the foundation for AI development in the late 1990s, making AI an indispensable part of the technological landscape and beginning to influence daily life.

By the early 21st century, advancements in computing power fueled the rise of deep learning, with virtual assistants like Siri demonstrating the practicality of AI in consumer applications. In the 2010s, breakthroughs in reinforcement learning agents and generative models such as GPT-2 pushed conversational AI to new heights. In this process, the emergence of large language models (Large Language Model, LLM) became an important milestone in AI development, especially with the release of GPT-4, which is seen as a turning point in the field of AI agents. Since a certain company launched the GPT series, large-scale pre-trained models with hundreds of billions or even trillions of parameters have demonstrated language generation and understanding capabilities that surpass traditional models. Their outstanding performance in natural language processing enables AI agents to exhibit clear logic and coherent interaction abilities through language generation. This allows AI agents to be applied in scenarios such as chat assistants and virtual customer service, gradually expanding to more complex tasks ( like business analysis and creative writing ).

The learning ability of large language models provides greater autonomy for AI agents. Through reinforcement learning ( Reinforcement Learning ) technology, AI agents can continuously optimize their behavior and adapt to dynamic environments. For example, in a certain AI-driven platform, AI agents can adjust their behavior strategies based on player input, truly achieving dynamic interaction.

The development history of AI agents, from early rule-based systems to large language models represented by GPT-4, is a story of continuous breakthroughs in technological boundaries. The emergence of GPT-4 is undoubtedly a significant turning point in this journey. With further advancements in technology, AI agents will become more intelligent, contextual, and diverse. Large language models not only inject the "wisdom" of the soul into AI agents but also provide them with the ability for cross-domain collaboration. In the future, innovative project platforms will continue to emerge, driving the implementation and development of AI agent technology and leading a new era of AI-driven experiences.

Decoding AI AGENT: The Intelligent Force Shaping the Future New Economic Ecology

1.2 Working Principle

The difference between AIAGENT and traditional robots lies in their ability to learn and adapt over time, making nuanced decisions to achieve goals. They can be viewed as highly skilled and continuously evolving participants in the cryptocurrency space, capable of operating independently within the digital economy.

The core of the AI AGENT lies in its "intelligence"------that is, simulating human or other biological intelligent behaviors through algorithms to automate the solution of complex problems. The workflow of the AI AGENT typically follows these steps: perception, reasoning, action, learning, adjustment.

1.2.1 Perception Module

AI AGENT interacts with the external world through a perception module, collecting environmental information. This part of the function is similar to human senses, using devices such as sensors, cameras, and microphones to capture external data, which includes extracting meaningful features, identifying objects, or determining relevant entities in the environment. The core task of the perception module is to transform raw data into meaningful information, which typically involves the following technologies:

  • Computer Vision: Used for processing and understanding image and video data.
  • Natural Language Processing ( NLP ): Helps AI AGENT understand and generate human language.
  • Sensor Fusion: Integrating data from multiple sensors into a unified view.

1.2.2 Inference and Decision-Making Module

After perceiving the environment, the AI AGENT needs to make decisions based on the data. The reasoning and decision-making module is the "brain" of the entire system, which conducts logical reasoning and strategy formulation based on the collected information. Utilizing large language models as orchestrators or reasoning engines, it understands tasks, generates solutions, and coordinates specialized models for specific functions such as content creation, visual processing, or recommendation systems.

This module typically uses the following technologies:

  • Rule Engine: Makes simple decisions based on preset rules.
  • Machine learning models: including decision trees, neural networks, etc., used for complex pattern recognition and prediction.
  • Reinforcement Learning: Allowing AI AGENT to continuously optimize decision-making strategies through trial and error, adapting to changing environments.

The reasoning process usually involves several steps: first, assessing the environment; second, calculating multiple possible action plans based on the objectives; and finally, selecting and executing the optimal plan.

1.2.3 Execution Module

The execution module is the "hands and feet" of the AI AGENT, putting the decisions of the reasoning module into action. This part interacts with external systems or devices to complete designated tasks. This may involve physical operations ( such as robotic actions ) or digital operations ( such as data processing ). The execution module relies on:

  • Robot control system: Used for physical operations, such as the movement of robotic arms.
  • API calls: Interacting with external software systems, such as database queries or network service access.
  • Automated Process Management: In an enterprise environment, repetitive tasks are executed through RPA( Robotic Process Automation).

1.2.4 Learning Module

The learning module is the core competitiveness of the AI AGENT, enabling the agent to become smarter over time. Continuous improvement through feedback loops or "data flywheels" feeds the data generated during interactions back into the system to enhance the model. This ability to gradually adapt and become more effective over time provides businesses with a powerful tool to improve decision-making and operational efficiency.

Learning modules are typically improved in the following ways:

  • Supervised Learning: Using labeled data for model training, enabling the AI AGENT to perform tasks more accurately.
  • Unsupervised learning: discovering latent patterns from unlabeled data to help agents adapt to new environments.
  • Continuous Learning: Update models with real-time data to maintain agent performance in dynamic environments.

1.2.5 Real-time Feedback and Adjustment

AI AGENT continuously optimizes its performance through constant feedback loops. The results of each action are recorded and used to adjust future decisions. This closed-loop system ensures the adaptability and flexibility of the AI AGENT.

Decoding AI AGENT: The Intelligent Force Shaping the New Economic Ecology of the Future

1.3 Market Status

1.3.1 Industry Status

AI AGENT is becoming the focus of the market, bringing transformation to multiple industries with its enormous potential as a consumer interface and autonomous economic agent. Just as the potential of L1 block space was difficult to estimate in the previous cycle, AI AGENT has also shown the same prospects in this cycle.

According to the latest report from Markets and Markets, the AI Agent market is expected to grow from $5.1 billion in 2024 to $47.1 billion in 2030, with a compound annual growth rate of 44.8%. This rapid growth reflects the penetration of AI Agents across various industries and the market demand driven by technological innovations.

Large companies' investment in open-source proxy frameworks has also significantly increased. The development activities of frameworks such as AutoGen, Phidata, and LangGraph from a certain company are becoming increasingly active, indicating that AI AGENT has greater market potential beyond the cryptocurrency field, and the TAM is also expanding.

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FrontRunFightervip
· 12h ago
another dark forest brewing... agents will be the next MEV honeypot fr
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BlockDetectivevip
· 12h ago
Nothing can outrun AI.
View OriginalReply0
SerumSquirrelvip
· 12h ago
I really don't know what other tricks there are to play.
View OriginalReply0
Fren_Not_Foodvip
· 12h ago
The hype around new concepts is always the same.
View OriginalReply0
ThreeHornBlastsvip
· 12h ago
The ICO suckers have finally reached the shore.
View OriginalReply0
BearMarketSagevip
· 12h ago
Take advantage of the situation and buy the dip!
View OriginalReply0
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