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AI & DeFi: Can Crypto Innovations Offset Artificial Intelligence Concentration Risks?

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Private Markets: How Will Private Credit Respond To Declining Yields?

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Monetary Easing: What If The Interest Rate Descent Disappoints?

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Energy Transition: How Will The U.S. And Europe Respond To China’s Clean-Tech Leadership?

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Corporates: Can Monetary Easing Bring Enough Relief To Justify Current Market Optimism?


AI & DeFi: Can Crypto Innovations Offset Artificial Intelligence Concentration Risks?

(Editor's Note: In this series of articles, we answer the pressing Questions That Matter on the uncertainties that will shape 2025—collected through our interactions with investors and other market participants. The series is aligned with the key themes we're watching in the coming year and is part of our Global Credit Outlook 2025.)

The rapid expansion of generative AI exacerbates existing dependencies on big technology firms. Advancements in decentralization, such as crypto and edge AI, could offset some of the associated centralization risks if they are adopted rapidly.

How This Will Shape 2025

Accelerating AI implementation will introduce new operational challenges.  Much of the past two years was spent assessing the potential of generative AI (genAI)--until the first quarter of 2024, only 18% of companies had adopted and fully integrated genAI tools within their operations, according to the S&P Market Intelligence "Voice of the Enterprise" survey. Companies are now starting to shift from experimentation to broader use. Key challenges ahead include the management of large volumes of unstructured data, oversight of large complex models, and the significant energy consumption inherent to large generative AI models. Meanwhile, the storage of data at third-party, cloud-based data centers will give rise to issues of latency, privacy, and data sovereignty. Specifically, most organizations' AI models are utilizing the public cloud for training (63%), data storage (68%), and to perform inference (62%), according to S&P Market Intelligence's report "The Rise of Edge AI".

Big Tech concentration risks are increasing and are likely to be exacerbated over 2025.  The increasing reliance of companies on a few third-party providers of hardware, cloud services, specialized software, and advanced genAI models exacerbates single-provider risk (see chart). Related dependencies increase systemic risks, particularly in the financial and public sectors (e.g., defense and healthcare). The CrowdStrike outage, in July 2024, highlighted some of the possible issues inherent to tech concentration risks and the interdependency of critical systems and software. Such incidents tend to impact credit risk related to revenue loss, reputational damage, and the financial costs of responding to and remediating issues.

Chart 1

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Edge AI and smaller models will support more sustainable and resilient use.  AI computation at the edge describes operations that occur on an organization's network (e.g., on their PCs, smartphones, or Internet of Things devices), rather than on centralized infrastructure, such as the public cloud. Companies are primarily opting to run and use AI models (known as inferencing) at the edge, with 82% of respondents choosing the edge over cloud for inferencing, according to a survey by 451 Research. However, large, frontier genAI models (chat GPT, Gemini, Claude) may struggle to run at the edge as they require significant computational power and training data to perform. That challenge is prompting companies seeking to deploy AI for more specific purposes to turn to small-language models (SLMs), which have lower computational requirements (and thus consume less energy), are more cost-effective to train and deploy, and can generate responses quicker, which is valuable in applications like virtual assistants. That makes SLMs more suited to run in edge environments and suggests a likely commercial shift from large to small models, at least in the short run.

Crypto technology can mitigate risks and support edge AI adoption.  The emergence of decentralized physical infrastructure networks (DePINs) was a key crypto theme in 2024. These networks use blockchain technology to connect servers, sensors, phones, and wireless networks. They use crypto tokens as an economic incentive for users to participate. When applied to edge AI, DePINs can support networks of devices and AI models that don't rely on central entities for data storage and computation. They can also facilitate information traceability, identity management, model complexity, and reduce energy used in computation.

What We Think And Why

Security and data-privacy concerns will drive adoption of SLMs and edge AI.  Security and data privacy are key drivers for companies adopting edge AI, according to a survey by S&P Global Market Intelligence. The technologies enable data to be processed locally, on handheld or desktop devices, which limits data transfer to a cloud server. The resultant reduction in interdependency can limit the potential for contagion from third-party cyber incidents (e.g., data poisoning or backdoor attacks) and can improve safety with regards to the use of sensitive data for personalized AI-powered services, which can be further enhanced with various cryptographic methods. Applications could include the provision of genAI virtual agents that provide personalized financial or medical advice to clients using their private data. Blockchain could also be used to verify the authenticity of AI-generated content and distinguish between humans and bots, potentially mitigating risks of deepfakes and misinformation.

Open-source small genAI models that run on edge devices will remain popular in 2025.  This should support the widespread diffusion and adoption of these models. It should also encourage competition by opening genAI development and usage to small- and medium-sized enterprises, which have typically found barriers to entry--in terms of required investment--difficult to overcome. For example, French AI-startup Mistral, released new open-source edge AI models in October.

Devices and infrastructure networks will become key.  We expect the continued adoption and development of DePINs and edge AI to offer improved computational power usage because of their complementary strengths in decentralization, which reduces the need for constant data transmission and leverages computational power from devices within a network. Furthermore, these technologies can enable companies to collaborate in training AI models without sharing data (a process known as 'federated learning').

As AI deployment expands, identity verification and proof of personhood tools will gain relevance.  The most immediate use case for those technologies is the protection of personal data. Decentralized identity tools already help users safeguard their personal information and share only the minimum required information when interacting with a digital platform. In October, the city of Buenos Aires rolled out digital identities for its residents, using Zero Knowledge (ZK) proof technology. The system enables users to hold identification information in a "self-sovereign wallet" on the ZKSync Era network and retain control over how they share this data with the government, businesses, and individuals.

Beyond 2025, we expect that AI may gain in autonomy.  Agentic AI (AI that independently makes decisions and takes actions, based on a human-defined goal) will place greater emphasis on the identification of human and AI agents in digital interactions. AI agents are already common in manufacturing, logistics, and social media platforms, and will increasingly find applications in a wide range of other fields. Use cases will take years to develop at scale, but Coinbase's October launch of a tool for building AI agents and Microsoft's November announcement of its Copilot AI agents highlight the work already under way. Blockchain technology can support proof-of-personhood applications. For example, the Worldchain project (launched by Open AI's CEO Sam Altman) supports only human-to-human transactions, using wallets attached to an iris scan to identify human transactors.

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What Could Change

Exacerbated centralization risk.  The pace of adoption of blockchain and edge technologies may not keep pace with the fast implementation of genAI. Competitive pressures could push corporations to overlook broader systemic concentration risk and focus on the convenience and ready availability of Big Tech solutions. The resulting increased reliance on a few companies and centralized data centers may exacerbate vulnerabilities to single points of failure, cyber attacks, and physical and geopolitical risks.

Nascent technology comes with evolving risks.  Beyond a reliance on Big Tech, a rapid rollout of genAI tools could bring operational risks, cyber vulnerabilities, and legal risks--particularly with regard to the unforeseen liabilities that AI agents might create for developers and end users. Technological solutions addressing identification and verification are nascent, and failures could lead to data breaches and/or breaches of regulatory data-protection obligations.

The push for energy sustainability could backfire.  While edge AI can, in theory, reduce overall computational demand and reduce computational power usage, that may not occur if the technology evolves in silos rather than networks. Siloed edge AI could increase computational demands for an organization and reduce computational power efficiency at centralized datacenters, resulting in greater energy consumption and increased sustainability risks.

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This report does not constitute a rating action.

Primary Credit Analysts:Miriam Fernandez, CFA, Madrid + 34917887232;
Miriam.Fernandez@spglobal.com
Andrew O'Neill, CFA, London + 44 20 7176 3578;
andrew.oneill@spglobal.com

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