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The convergence of AI and digital assets: A new dawn for financial infrastructure
The financial landscape has been in a constant state of evolution. From stock ticker machines to algorithmic trading systems, innovation has always been at the core of finance. Yet, among these transformative changes, the confluence of artificial intelligence (AI) and digital assets like cryptocurrencies, central bank digital currencies (CBDCs), and tokenized assets has the potential to be the most disruptive change to finance in decades. This post aims to explore this intersection, focusing on how AI and digital assets are reshaping financial services and infrastructure.
The history of AI and traditional finance
AI has been used in impactful ways in the financial industry for more than two decades. Although basic computational models and statistical methods such as standard deviations and Bayesian regressions have been in use since the 1980s to generate trading signals, machine learning (ML) gained significant traction in the 2000s and early 2010s in the areas of high-frequency trading and risk modeling. This increase in traction was driven by increasing accessibility to data, dropping costs to store data, and increasing computational power. Financial institutions employed increasingly complex AI such as neural networks powered by additional datasets such as credit card data. The use of AI spread to other areas of finance, such as fraud detection, consumer credit scoring, and customer service. By mid-2010s, the impact of AI was transforming personal finance with the availability of robo-advisory platforms through startups (such as Betterment) and established financial institutions (such as Charles Schwab) alike. In addition, advancements in deep learning and reinforcement learning models continued to improve the efficiency of the financial industry. With the increasing accessibility of foundation models, such as through
At the same time that ML utilization was increasing in finance, Bitcoin’s launch in 2008 laid the foundation for a new form of digital currency and network for exchanging value. Bitcoin, which operated on a decentralized network with a single source of truth that could be accessed by anyone, revolutionized the concept of value transfer and preservation. By 2012, Bitcoin and other altcoins such as Litecoin started gaining mainstream attention. In 2015, Ethereum went live, introducing smart contracts, programs stored on the blockchain that enables business logic to be facilitated without the need for intermediaries, opening the door for decentralized applications (dApps). Innovators created and battle-tested smart contracts with borderless digital currencies worth billions of dollars to create the decentralized finance (DeFi) industry in 2019, a non-custodial financial system that doesn’t require a central system. DeFi has enabled lending, investing, and exchanging for anyone with an internet connection. Stablecoins, digital currencies pegged to fiat currencies such as the dollar, have also enabled more efficient payment and settlement methods and have seen growing utilization from major payment processors such as Visa and, more recently, PayPal. Countries have also been moving forward with CBDC plans, with 11 CBDCs launched and 21 in pilot. Improvements to increase the transaction scalability using Layer 2 technologies and emerging zero-knowledge technologies, which share data while preserving privacy, are further enabling digital assets to support critical financial systems.
Convergence of AI and digital assets
The convergence of these two emerging technologies—AI with its ability to self-learn and extract actionable insights from vast amounts of data and digital assets, which exist on a decentralized, transparent, and automated network—is expected to further amplify the impact of one another. The following are a few ways in which combining the strengths of both technologies can develop a more efficient and robust financial system.
In order for AI to be effective, a trusted source of data needs to be accessible and on-demand. Digital assets, which use blockchain technology, allow financial transaction data to be stored in a trusted, accessible, and transparent fashion. AI can access data such as transaction history and current balances for real-time financial analysis. For example, AI trading algorithms can use
The combination of AI, programmable digital assets, and smart contracts can create a financial system that can efficiently run complex tasks and enforce financial agreements without human intervention. For example, AI algorithms can trigger smart contracts to buy and sell assets when market conditions are met or freeze digital assets from further transfers when fraudulent activities are detected. Smart contracts can automatically record each step of an AI algorithm, providing a transparent and immutable audit trail for compliance or further training of AI algorithms. As AI continues to learn from the trusted dataset, it can in turn adapt and optimize its algorithms as well as smart contracts to new market conditions. Additionally, digital assets on blockchain can also protect against fake digital assets, which are increasingly easy to create with generative AI. Users of digital assets can validate the authenticity of a digital asset by checking the issuing contract against a shared digital asset registry controlled by authorized parties.
With increased automation and digitization, cybersecurity takes on greater importance. AI can monitor transactional data in real time, identifying and flagging any unusual activities. Advanced ML algorithms can predict future attack vectors based on existing patterns, providing an additional layer of cybersecurity. As foundation models get trained on the trusted digital asset transactions and smart contract code on blockchains, generative AI can help developers write more secure code. Technologies like Amazon CodeWhisperer are speeding up coding tasks, providing inline code suggestions to improve developer productivity. In addition to code suggestions,
Additionally, nascent but growing zero-knowledge (ZK) technologies which are being used to enable transaction scalability (for example, with Layer 2 chains) and protect privacy on a public blockchain, are well-positioned to bridge the gap between traditional centralized finance and DeFi, bringing even more assets into the digital world. Zero-knowledge proofs (ZKPs) enable new forms of data sharing that allow transacting parties to verify information without revealing the underlying data. The applying party submits a mathematical proof to demonstrate that they hold the needed information or meet the set criteria, and the recipient confirms this proof without ever seeing the underlying information internally. For example, if a bank customer sends proof showing that they meet the criteria for a loan, the bank can verify this proof mathematically, without ever seeing the applicant’s sensitive financial information such as income and bank accounts. ZKPs can also enable compliance with KYC/AML regulations without storing honeypots of customers’ personally identifiable information (PII). This technology has great potential in that it directly addresses the larger data privacy concerns financial services institutions have long had with decentralized finance and public blockchains. Zero-knowledge rollups (ZK rollups) are a more sophisticated application of ZK tech that roll up ZKP transactions into bundles and then run them offline (off the blockchain). Running the transactions off-chain reduces the total amount of information posted to the blockchain while still providing proof that the transactions were executed correctly, thereby mitigating security and privacy concerns while still maintaining decentralization. ZK rollups are faster and cheaper than on-chain transactions, positioning them as an especially scalable and secure alternative to fully public blockchain transactions. This increased scalability and security will be important in onboarding the even larger set of population adopting digital finance in the future.
Impact of digital infrastructure outside of US
The economic landscape is evolving rapidly with the emergence of various fiat currencies, central bank digital currencies (CBDCs), and cryptocurrencies that each represent a set of goals or priorities set forth by the issuing body. Recent developments, such as the implementation of economic sanctions have ignited isolationist sentiment across the world, leading to the fracturing of interests, values, and leadership which could create an economy that is based on a basket of currencies rather than one that hinges primarily on the performance of the US Dollar/US economy. This effect, known as “de-dollarization”, could further elevate the importance of the respective countries’ digital infrastructure. According to the
These tools, along with customer support and cloud services, could greatly benefit the evolving operations of both countries and corporations as they undergo the transition from legacy infrastructure to more automated infrastructure rails. The intersection of cloud computing, AI technology, digital assets, and data storage with cybersecurity tools will define global economic competition in the twenty-first century, and the companies and technologies that create this future will be at ground zero for helping define it. The transition to automation and more efficient processes to manage these technologies starts with infrastructure investment and build.
Conclusion
The convergence of AI and digital assets could bring a paradigm shift in financial infrastructure. The mutually reinforcing advancements in AI and digital assets have the potential to democratize financial automation, enhance efficiency, and significantly ramp up security protocols. A future where AI is processing both on-chain and off-chain data will require a new infrastructure to cohesively function. Decentralized applications are frontend user interfaces built onto smart contracts, enabling transactions to be run without sharing personal information between the parties. Generative AI tools can be trained on both off-chain and on-chain data to optimize and secure the smart contract ecosystem. Today, generative AI assists smart contract parties through chatbots and virtual assistants in the writing of smart contract code and monitoring any unusual network activity that may represent a security risk. The more data these generative AI tools have access to, the more effectively they will spot errors or security risks, enhancing their ability to proactively identify and mitigate risks in real time. At the same time, the blockchain networks on which these digital assets exist provide transparency, a single source of truth, and provenance which help validate the authenticity of the information being actioned on by AI or used to update AI. Although there are still challenges that need to be solved, innovators, armed with more powerful and accessible cloud technologies, including instances purpose-built for ML such as
About the authors
Forrest Colyer manages the Web3/Blockchain Specialist Solutions Architecture team that supports the Amazon Managed Blockchain (AMB) service. Forrest and his team support customers at every stage of their adoption journey, from proof of concept to production, providing deep technical expertise and strategic guidance to help bring blockchain workloads to life. Through his experience with private blockchain solutions led by consortia and public blockchain use cases like NFTs and DeFi, Forrest helps enable customers to identify and implement high-impact blockchain solutions.
John Liu is the Head of Product for Web3 / Blockchain at Amazon Web Services. He has 13 years of experience as a product executive and 10 years of experience as a portfolio manager. Prior to Amazon Web Services, John spent 4 years leading product and business development at public blockchain protocols with a heavy focus on cross-chain technology, DeFi, and NFTs. Prior to that, John gained financial expertise as Chief Product Officer for fintech companies and portfolio manager at various hedge funds.
Michael B. Greenwald is a senior executive for Amazon Web Services serving as the Global Lead for Digital Assets and Financial Innovation. Michael serves as a representative member for Amazon Web Services of the U.S. Commodity Futures Trading Commission (CFTC) Technology Advisory Committee. He is an adjunct professor at Columbia University and a senior fellow at the Atlantic Council Geoeconomics Center and Center for New American Security. He was a former fellow at Harvard Kennedy School’s Belfer Center. He was the first U.S. Treasury attaché to Qatar and Kuwait, acting as the principal liaison to the banking sector in those nations for two presidential administrations from 2010-2017. He holds a Juris Doctor from Boston University, a Master’s from Boston University’s Frederick S. Pardee School of Global Studies, a Bachelor of Arts in History from George Washington University and is currently pursuing the General Management Executive Education Program at Harvard Business School.
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