Author: danielesesta; Source: Coinspire
Editor's Note: With the rapid development of AI technology, it is no longer a problem for everyone to believe that Web3 can benefit from AI. The real focus is: which Web3 track can seize the dividends of AI the fastest, and how to maximize the use of AI to achieve breakthroughs - decentralized finance (DeFi) is undoubtedly one of the most promising areas, and the intersection of the two - DeFAI (DeFi+AI), is becoming one of the fastest growing tracks in the crypto economy.
The essence of DeFAI is to make AI the "autopilot" of the on-chain world. The complexity of DeFi has always been the entry barrier for ordinary users, and DeFAI is expected to simplify the user experience through AI and attract more mainstream users: they can parse on-chain data in real time, and can also help you complete complex strategies such as cross-chain arbitrage, dynamic staking, and flash loan combinations, and even participate in protocol upgrades through DAO governance. Just like search engines allow ordinary people to surf the Internet without understanding the TCP protocol, DeFAI will allow every novice user to have hedge fund-level asset management capabilities.
Currently, some DeFAI projects have emerged. The author of this article, Daniele, is the founder of DeFAI's head project Hey Anon ($ANON). As a well-known DeFi developer, he has led the development of algorithmic stablecoin Wonderland, decentralized lending AbracadabraMoney, and DEX WAGMI. Today, Hey Anon, the company he founded, focuses on AI-driven DeFi automation tools. Its TypeScript-based solutions are designed to be integrated into DeFi protocols, enabling agents to manage on-chain interactions with unprecedented security and simplicity. Its market value ranks third in the CoinmarketCap DeFAI sector.
Daniele was inspired by DeepseekR1's breakthrough in open source AI reasoning and explored in depth how DeFi can benefit from AI technology. I believe everyone will be able to gain some new insights from his insights.
The following is the main text:
Artificial intelligence is accelerating. Large language models (LLMs) are empowering everything from conversational assistants to DeFi multi-step transaction automation. However, the cost and complexity of deploying these models at scale remain major obstacles. The result is a new open source AI model, Deepseek R1, that delivers powerful inference capabilities at a lower cost—paving the way for millions of new users and application scenarios.
This article will explore:
▶ Deepseek R1’s breakthrough in open source AI inference
▶ How low-cost inference and flexible licensing drive widespread adoption
▶ Why Jevons’ paradox suggests that efficiency gains may drive up usage (and costs)—but are still a net positive for AI developers
▶ How DeFAI benefits from the proliferation of AI in financial applications
Deepseek R1: Redefining open source AI
Deepseek R1 is a new type of open source AI trained on extensive text LLM is optimized for reasoning and contextual understanding. Its outstanding features include:
• Efficient Architecture: Adopting a new generation of parameter structures, it can achieve near-top performance in complex reasoning tasks without the need for large GPU clusters.
• Low Hardware Requirements: Designed to run on a small number of GPUs or even high-end CPU clusters, it lowers the barrier to entry for startups, independent developers, and the open source community.
• Open Source License: Unlike most proprietary models, its permissive license allows companies to integrate directly into products—driving rapid adoption, plugin development, and professional fine-tuning.
This trend of democratizing AI is reminiscent of the early days of open source projects such as Linux, Apache, and MySQL—which ultimately drove the exponential growth of the technology ecosystem.
Value Proposition of Low-Cost AI
• SMEs: Deploy AI solutions without relying on expensive proprietary services.
• Developers: Free to experiment—from chatbots to automated research assistants, innovate and iterate on a budget.
• Geographic Diversification: Emerging market companies can seamlessly access AI solutions to bridge the digital divide in industries such as finance, healthcare, and education.
Low-cost reasoning not only drives adoption, but also democratizes reasoning:
• Localized models: Small communities can train Deepseek R1 with language-specific or domain-specific corpora (e.g., professional medical/legal data).
• Modular extensibility: Developers and independent researchers can build advanced plugins (e.g., code analysis, supply chain optimization, on-chain transaction verification) to break through licensing bottlenecks.
Overall, cost savings enable more experiments, accelerating overall innovation in the AI ecosystem.
Jevons Paradox: Why Efficiency Improvement Drives Up Consumption
This theory states that efficiency improvements often lead to increased rather than reduced resource consumption. Initially discovered in the context of coal use, it means that when a process becomes more economical, people tend to expand its scale of use, offsetting (and sometimes exceeding) efficiency gains.
In the context of Deepseek R1:
• Low-cost model: Reduce hardware requirements, making AI more economical to run.
• Result: More companies, researchers, and enthusiasts launch AI instances.
• Effect: Although the cost of operating a single instance has decreased, the surge in total volume may push up overall computing power consumption (and costs).
Not necessarily. The widespread use of models such as Deepseek R1 signals a surge in successful adoption and applications, which will drive:
• Ecosystem prosperity: More developers improve open source code functions, fix vulnerabilities, and optimize performance.
• Hardware innovation: GPU, CPU, and dedicated AI chip manufacturers respond to surging demand and compete on price and energy efficiency.
• Business Opportunities: Builders of analytical tools, process orchestration, specialized data pre-processing, and more will benefit from the surge in AI adoption.
Thus, while the Jevons Paradox suggests that infrastructure costs may rise, it is a positive signal for the AI industry as a whole—promoting an innovative environment that can lead to economic deployment breakthroughs (such as advanced compression techniques or task offloading to specialized chips).
Impact on DeFAI
DeFAI combines decentralized finance with AI automation, enabling agents to manage on-chain assets, perform multi-step transactions, and interact with DeFi protocols. This emerging space directly benefits from open-source, low-cost AI because:
• 24/7 autonomy
Agents can continuously scan DeFi markets, bridge assets between chains, and adjust positions. Low inference costs make 24/7 operations financially viable.
• Infinitely scalable
When thousands of DeFAI agents need to serve different users or protocols simultaneously, low-cost models such as Deepseek R1 can control operating expenses.
• Customization
Developers can fine-tune open-source AI with DeFi-specific data (price feeds, on-chain analytics, governance forums) without paying high licensing fees.
With Deepseek R1 lowering the AI threshold, DeFAI forms a positive cycle:
• Agent explosion: Developers create professional robots (such as yield hunting, liquidity provision, NFT trading, cross-chain arbitrage)
• Efficiency improvement: Each agent optimizes the flow of funds, which may increase the overall activity and liquidity of DeFi
• Industry growth: More complex DeFi products emerge, from advanced derivatives to conditional payments, all coordinated by easily accessible AI
The final result --- the entire The DeFAI field benefits from the virtuous cycle of "user growth - agent evolution".
Outlook: Positive signals for AI developers
After Deepseek R1 is open sourced, the community can:
• Quickly fix vulnerabilities
• Propose inference optimization solutions
• Create field forks (such as finance, law, and healthcare)
Collaborative development brings continuous model improvements and gives birth to ecological tools (fine-tuning frameworks, model service infrastructure, etc.)
AI developers in areas such as DeFAI can break through the traditional API call charging model:
• Hosted AI instances: Provide enterprise-level Deepseek R1 hosting services with a friendly dashboard
• Service layer construction: Based on the open source model, integrate advanced functions such as compliance review and real-time intelligence for DeFi operators
• Agent marketplace: Host agent profiles with unique strategies or risk configurations, and provide subscription or performance sharing services
When the underlying AI technology can scale to millions of concurrent users without bankrupting the supplier, this business model will flourish
With the reduced demand for Deepseek R1, more developers around the world can participate in AI experiments. This influx of talent:
• Inspires innovative solutions to real-world and cryptographic problems;
• Enriches the open source community with fresh ideas and improvements;
• Releases global talent that was once shut out by high computing costs.
Conclusion
The emergence of Deepseek R1 marks a key turning point: open source AI no longer requires expensive computing power or licensing fees. By providing powerful reasoning capabilities at low cost, it paves the way for widespread adoption from small development teams to large enterprises. While the Jevons Paradox suggests that infrastructure costs may rise due to surging demand, this phenomenon is ultimately good for the AI ecosystem—driving hardware innovation, community contributions, and advanced application development.
For DeFAI, AI agents coordinating financial operations on decentralized networks will have a significant ripple effect. Lower costs mean more complex agents, greater accessibility, and an expanding array of on-chain strategies. From yield aggregators to risk management, these advanced AI solutions can operate sustainably, opening up new paths for crypto adoption and innovation.
Deepseek R1 demonstrates how open source advances can catalyze entire industries—both AI and DeFi. We stand on the threshold of a future where AI is no longer a tool for the privileged few, but will become a foundational element of everyday finance, creativity, and global decision-making—driven by open models, economical infrastructure, and unstoppable community momentum.