JPMorgan Report Highlights Growing AI Appetite Among Family Offices Worldwide

TheNewsCryptoPublished on 2026-02-03Last updated on 2026-02-03

Abstract

A recent JPMorgan Private Bank report highlights a significant shift in investment preferences among the world’s wealthiest family offices. According to the 2026 Global Family Office Report, which surveyed 333 family offices across 30 countries, 65% plan to prioritize AI-related investments, making artificial intelligence a leading investment theme. However, current allocations to growth and venture capital—key areas for AI application—remain low, indicating a gap between ambition and actual portfolio integration. In contrast, cryptocurrency and digital assets are largely avoided, with 89% of family offices reporting no exposure to crypto. Only 17% consider digital assets a medium-to-long-term priority. Traditional hedges like gold are also unpopular, with 72% holding none despite geopolitical concerns. Instead, family offices favor public equities and alternative investments, which together comprise about 75% of assets under management. The report underscores a conservative approach, with institutions prioritizing established investment categories and managing risks related to geopolitics and inflation.

A recent industry report by JPMorgan Private Bank has revealed that there is an increasing rift in the investment preferences of the world’s wealthiest family offices. This is due to artificial intelligence becoming a leading investment theme and cryptocurrencies being largely ignored. According to the 2026 Global Family Office Report, which surveyed 333 family offices in 30 countries with an average net worth of $1.6 billion. This means about 65% of family offices plan to place importance on AI-related investments.

However, despite AI, it appears that many family offices have yet to integrate their portfolios with this key theme. The report states that the current level of investment in growth and venture capital is low. These are also the potential areas where AI is utilized. The ambitions of investment plans are not yet fully represented in current holdings.

Cryptocurrency Largely Sidestepped by Wealth Managers

In a stark contrast to the interest in AI, the area of cryptocurrency and digital assets remains a fringe activity in family office portfolios. Approximately 89% of family offices responding to the survey said they have no exposure to cryptocurrencies at all. Just 17% of respondents picked digital assets as a theme that they might choose to prioritize in the medium to long term.

The report also shows that “conventional hedges like gold are not commonly found in family offices. With 72% of respondents saying they have no gold exposure, despite 64% of respondents citing geopolitical risk as a top concern,” Instead, the surveyed family offices overwhelmingly prefer public equities and alternative investments. This combined “tend to comprise around 75% of assets under management.” Family offices are also focusing on other investment sectors, such as healthcare innovation, although these have less interest than AI.

Investment Strategy and Risk Factors

The disparity between the interest in AI and the allocation of investment portfolios suggests a conservative attitude among family offices. They are still weighing growth strategies against risk management. The low allocation to crypto assets is a reflection of the institutional preference for known investment categories and risk profiles. Besides the thematic focus, family offices are currently dealing with risks associated with geopolitics and inflation.

The 2026 Global Family Office Report, published by JPMorgan Private Bank, has highlighted how AI plays a supreme role. This is where AI has replaced cryptocurrencies as the top theme, with a majority of family offices prioritizing AI as a growth area. While a small minority plans to invest in cryptocurrencies in the future. The results of the survey are not surprising, as institutional investors have been cautious about investing in cryptocurrencies. While AI, as a theme of innovation in technology, continues to be a popular choice along with traditional equity and alternative investments.

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Related Questions

QWhat is the main finding of JPMorgan's 2026 Global Family Office Report regarding AI investments?

AThe report found that 65% of family offices plan to place importance on AI-related investments, making it a leading investment theme.

QWhat percentage of the surveyed family offices reported having no exposure to cryptocurrencies?

AApproximately 89% of the family offices surveyed said they have no exposure to cryptocurrencies at all.

QAccording to the report, what are the two main asset classes that comprise the majority of family office portfolios?

APublic equities and alternative investments combined tend to comprise around 75% of assets under management for family offices.

QWhat does the disparity between interest in AI and current portfolio allocation suggest about family offices' investment attitude?

AThe disparity suggests a conservative attitude, indicating that family offices are still weighing growth strategies against risk management.

QBesides AI, what other major concern was cited by family offices, and how did it contrast with their investment in traditional hedges?

A64% of respondents cited geopolitical risk as a top concern, yet 72% said they have no exposure to gold, which is a conventional hedge against such risks.

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