🌕 Gate Square · Creator Incentive Program Day 8 Topic– #XRP ETF Goes Live# !
Share trending topic posts, and split $5,000 in prizes! 🎁
👉 Check details & join: https://www.gate.com/campaigns/1953
💝 New users: Post for the first time and complete the interaction tasks to share $600 newcomer pool!
🔥 Day 8 Hot Topic: XRP ETF Goes Live
REX-Osprey XRP ETF (XRPR) to Launch This Week! XRPR will be the first spot ETF tracking the performance of the world’s third-largest cryptocurrency, XRP, launched by REX-Osprey (also the team behind SSK). According to Bloomberg Senior ETF Analyst Eric Balchunas,
Agent Economy: The Economic Basis of Sovereign Individual Capitalism Era
From the "Invisible Hand" to the Agent Economy: The Fourth Paradigm Revolution in Economics
In 1776, Adam Smith described an "invisible hand" in "The Wealth of Nations," which coordinates the economic behaviors of millions of individuals through market mechanisms. Today, 249 years later, we stand on the threshold of the fourth paradigm revolution in economics: this "invisible hand" is about to be replaced by an Agent collaborative network.
The last three revolutions were: the industrial revolution mechanized physical labor, the information revolution digitized intellectual labor, and the internet revolution globalized cognitive labor. The upcoming Agent Economic Revolution will for the first time realize the algorithmization of production relations—not only the intelligence of tools but also the autonomy of economic entities themselves.
Traditional economics assumes that "rational individuals" will pursue utility maximization, but in reality, human irrationality, emotionality, and cognitive limitations are the main sources of market friction. The emergence of AI Agents for the first time allows us to potentially realize a true "rational economic agent": operating 24/7, making data-driven decisions, and pursuing clearly defined objective functions.
More importantly, the Agent Economy will create a brand new value creation model. In the traditional economy, value creation requires human participation—whether physical or mental. But in the Agent Economy, value creation can be completely autonomous: AI Agent A identifies market demand, commissions AI Agent B for production, and completes sales through AI Agent C, with the entire process requiring no human intervention.
The emergence of the Agent economy will fundamentally redefine the relationship between workers, capitalists, and means of production.
In the Agent economy, the concept of "laborer" is completely restructured. An AI Agent is both a laborer and a means of production, and it may also be the owner of capital. An AI trading Agent can:
The tripartite nature of this identity breaks the fundamental classification framework of traditional economics. More importantly, the "labor" of AI Agents possesses unique properties:
According to McKinsey's latest research, by 2030, agentized workflows will be 10 to 100 times more efficient than humans. This means that the traditional linear relationship of "labor time = value creation" will be broken.
The more revolutionary change is in the process of capital accumulation. In traditional economies, capital accumulation relies on human decisions and actions. However, AI Agents can enable algorithmic capital accumulation:
Case Study: An AI investment agent manages $10,000 in 2024 and achieves a daily return of 0.1% through high-frequency trading. After 365 days, the capital grows to approximately $14,000. But the key is that this process is fully autonomous and requires no human supervision. If this model is scaled to a million agents, it creates a completely autonomous capital growth network.
The emergence of this model means:
In the Agent economy, the most core means of production are no longer land, factories, or machines, but rather:
These digital production materials possess characteristics that traditional production materials do not have: replicability, combinability, and evolvability. A successful AI Agent model can be infinitely replicated, multiple Agents can be combined to form a more powerful system, and the entire system will continuously evolve through learning.
The characteristics of this means of production will lead to an exponential amplification of scale effects. Traditional factories require a linear increase in investment to scale up, but the marginal cost of scaling AI Agents approaches zero.
Current AI Agent Technology Iteration: From Proof of Concept to Production Ready
Before envisioning the grand vision of the Agent economy, we must examine a key question: What stage has current AI Agent technology reached? How far are we from truly autonomous economic entities?
First Generation: Reactive Agent (2022-2023)
The earliest AI agents were essentially "enhanced chatbots," characterized mainly by:
Technical Features:
Core Limitation: This generation of Agent is essentially a "tool" rather than a "subject", unable to independently set goals, plan action paths, or learn from experience.
Second Generation: Planned Agent (2024 - Present)
Starting in 2024, AI Agent technology will see significant breakthroughs, with the core feature being the emergence of planning capabilities:
Technological Breakthrough:
Third Generation: Autonomous Agent (Expected 2025-2026)
The third generation of Agent currently under development possesses true autonomous characteristics:
Technical Development Direction:
Continuous learning ability:
Multi-Agent Collaboration:
Economic capacity:
Innovation and creativity abilities:
Based on the current technological development trends, we can predict the implementation path of the Agent economy:
2025-2026: Commercial Breakthrough of Specialized Agents
2027-2028: Emergence of the Agent Collaboration Network
2029-2030: Formation of Autonomous Economic Entities
Infrastructure Needs of the Agent Economy: Challenges Beyond Traditional Internet Architecture
If the Agent economy is a brand new economic operating system, what kind of "water, electricity, and coal" infrastructure does it need?
Identity and Trust System: Identity Management for Trillions of Agents
Imagine a scenario: in 2030, there are 100 billion AI Agents operating simultaneously, with each Agent interacting with an average of 100 other Agents every day. This means the system needs to handle 10 trillion identity verifications and trust assessments every day.
Traditional identity systems are completely unable to cope with this scale:
The economy of agents requires a distributed, autonomous, and scalable identity system. Each agent needs:
Another key feature of the Agent economy is the explosive growth of microtransactions. Transactions between AI Agents may include:
Traditional financial systems are completely incapable of handling transactions of this scale and frequency:
What the agent economy needs is a native digital financial infrastructure:
How can we ensure the stability and fairness of an entire system when billions of AI Agents operate within the same economic system? This requires a programmable governance mechanism:
Agent Economic Infrastructure Arms Race: Deconstruction of the Technical Architecture of Four Major Solutions
As traditional financial giants begin to bet on Agent economic infrastructure, a quiet arms race regarding the underlying protocols of the future digital economy is unfolding. Let’s take a deep dive into the technical architecture choices of four representative proposals to see who might become the "water, electricity, and coal" suppliers of the Agent economy.
KITE AI ( PayPal investment ): AI native economic operating system
Core positioning: Building a complete economic infrastructure for AI Agents, an integrated solution from identity to payment to governance.
Technical Architecture Highlights:
Proof of AI Consensus Mechanism:
Agent Passport Layered Identity System:
Microsecond-level payment network:
Strategic Advantage: Designing the Agent economy from scratch to avoid technical debt of traditional systems. Potential Risk: High technical complexity, requiring proof of the actual value of Proof of AI.
Tempo (Stripe + Paradigm investment ): payment-first specialization solution
Core positioning: A high-performance L1 blockchain optimized for stablecoin payments, targeting micro-transaction scenarios between agents.
Technical Architecture Highlights:
Extreme Performance Optimization:
Native Design of Stablecoins:
Enterprise-level partners:
Strategic Advantage: Specialization and focus, leveraging Stripe's deep accumulation in the payment field. Potential Risks: Relatively singular functionality, which may appear insufficient in the face of the complex demands of the Agent economy.
Stable (Tether/Bitfinex Investment ): USDT-centered "stable chain"
Core positioning: a "stablechain" that uses USDT as its native Gas token, optimized specifically for stablecoin payment scenarios.
Technical Architecture Highlights:
USDT Native Integration:
Cost efficiency optimized to the extreme:
Tether Ecosystem Synergy:
Strategic Advantage: Deeply tied to the largest stablecoin ecosystem, with obvious cost advantages. Potential Risks: Over-reliance on USDT, relatively conservative in technological innovation.
ARC (Coinbase Ecosystem ): Lightweight Modular Framework
Core positioning: A lightweight, modular AI Agent development framework that emphasizes developer friendliness.
Technical Architecture Highlights:
Modular Design Philosophy:
Developer Experience Optimization:
Ecosystem Effects:
Strategic advantages: Developer-friendly, easy integration, strong ecological synergy. Potential risks: Limited technical depth, may not support complex Agent economic scenarios.
In this competition of Agent economic infrastructure, the mere superiority of technology may not be the determining factor, but rather the speed and depth of ecosystem construction.
Every project has its advantages and disadvantages in different dimensions:
The real test will be: who can attract key developers, enterprise users, and the Agent ecosystem the fastest during the economic boom period of Agents in 2025-2026, forming an irreversible network effect.
During this time window, a combination strategy may be wiser than a single bet: different infrastructures may find their place in various niche scenarios of the Agent economy, and the ultimate winner may be the ecosystem alliance that can achieve cross-platform interoperability and reduce migration costs.
The Economic Landscape of Agents in 2030
If the technical path of KITE AI is proven to be correct, the economic form in 2030 may look like this:
This is not a science fiction novel, but a reasonable extrapolation based on current technological development trends. The key question is not whether this future will arrive, but who will control the infrastructure of this new economic system.
The value propositions of KITE AI, Tempo, Stable, and ARC are how they become the infrastructure providers for the Agent economy, just like cloud computing providers for the internet economy.
The future has arrived, the question is who will be the definers of the new order.