The artificial intelligence (AI) sector’s rapid capital influx echoes the early days of the tech bubble that collapsed in 2000, according to ESG investment veteran James Penny of TAM Asset Management. This development could have significant implications for tech-laden ESG funds.
Why is this important?
- The rapid infusion of capital into the AI sector resembles the early phase of the tech bubble, signaling potential volatility.
- Tech accounts for a third of the preferred stocks in Article 9 funds, the highest ESG classification in the EU, intensifying the sector’s impact on these funds.
- Many ESG funds have significant holdings in AI-heavy companies, such as Nvidia, which experienced a market value increase of over 30% since late May.
- AI-themed ESG funds are gaining popularity, with 20 such funds identified by Bloomberg, holding about $8 billion in assets under management.
- James Penny advises a strategic approach to investing in AI, focusing on those providing essential services or components to the industry, rather than chasing the hottest names.
AI Hype Raises Alarm Bells
The recent excitement around AI, especially companies leveraging the term to boost their share prices, is reminiscent of the dot-com era’s market frenzy, warns Penny. This surge is particularly prominent following Nvidia Corp’s sales target announcement, which added 175% to its year-to-date market value and contributed to a third of the Nasdaq’s value increase.
This AI boom’s fallout has greatly benefitted ESG portfolios, which rely increasingly on tech to meet their mandates without compromising growth. However, the heavy presence of tech stocks also raises the risk quotient. Over 1,300 ESG-registered funds hold more than $20 billion in Nvidia alone.
AI-themed ESG Funds Surge
AI-themed ESG funds are gaining traction, with Bloomberg identifying 20 such funds managing around $8 billion in assets. But the rapidity of AI’s evolution brings its own challenges, as Martin Todd from Federated Hermes points out, with the technology’s future outcomes still uncertain.
Instead of diving headfirst into popular AI names, Penny recommends a more strategic approach, focusing on “AI adopters” – companies providing the tools and services vital to the AI industry. Examples of these include firms producing memory chips and semiconductor testing devices, critical to AI’s deep-learning applications.
