Finance leaders are under increasing pressure to manage portfolios with greater precision, agility and efficiency. AI is emerging as a valuable tool for meeting those demands by helping teams process information faster, monitor risk more effectively and optimize investment strategies across changing market conditions.
While AI cannot replace financial expertise, it can enhance how finance professionals evaluate opportunities and respond to emerging challenges. As adoption accelerates, leaders are examining where AI delivers the greatest value and how teams can integrate these technologies into everyday portfolio management practices. Here, leading experts from Forbes Finance Council share ideas to help other teams use AI to manage their portfolios more efficiently in today’s workplace.
1. Adapt A Continuous Portfolio Surveillance Method
I personally have moved from periodic to continuous portfolio surveillance. Traditional portfolio reviews are calendared events: quarterly committee meetings, monthly rebalancing and weekly risk meetings. AI agents can now monitor positions continuously against a defined investment thesis. The efficiency gain is that human judgment is reserved for genuine signals rather than spent on routine. – Joshua Ishola
2. Cover More Ground On Data Research
AI improves efficiency in private markets by replacing repetitive junior-level research. It can summarize materials, extract key data and track updates across companies, so teams don’t spend time gathering information. That shifts focus to higher-value work, such as judgment, underwriting and capital allocation, while expanding the bandwidth capabilities of a lean team. – Rainy Guo, Aeterna Capital LLC
3. Customize A Snapshot Of Key Metrics In Real Time
AI also opens up a compelling private-markets use case. You can quickly build tailored dashboards (even “vibe code” them in tools like Claude) to monitor portfolio performance in real time. Instead of waiting on monthly or quarterly reporting packages from CFOs, you get an instant, customized snapshot of key metrics and can proactively identify and address issues. – Varun Parikh, Trive Capital
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4. Teach AI To Scan Faster And Spot Patterns
AI is not your portfolio manager; it is your analyst. It should scan faster, spot patterns and flag risks before you see them. But if your tax strategy, entity structure and goals are off, AI will just optimize a bad plan. Efficiency starts with alignment, not automation. – Karla Dennis, KDA Inc.
5. Rank Asset Health And Exit Readiness
Finance leaders optimize portfolios by using orchestration agents to automate complex data workflows and system integration. These agents feed real-time scoring mechanisms that rank asset health, risk and exit readiness. This “intelligence layer” shifts the focus from manual data consolidation to high-velocity strategic decisions, ensuring leaders act on the most critical assets first. – Mitt Mehta, PE Firms & Family Offices
6. Analyze Payment Consistency And Predictable Behavioral Patterns
In structures like reverse consolidation or other revenue-based products, cash flow timing is everything. AI improves predictability by analyzing payment consistency across cohorts, seasonality and revenue cyclicality and behavioral patterns tied to merchants by industry. This allows for better underwriting and more informed capital deployment decisions. – Lawrence Pross, Nexi Finance
7. Organize Data And Identify Overlaps
AI can improve efficiency by organizing data, identifying overlaps and surfacing trends faster. But it doesn’t replace judgment. The real value comes from how a portfolio is structured to support long-term outcomes. Technology supports the process; strategy still drives the results. – Jon-Jon Knepp, Knepp Wealth Management
8. Improve The Decision-Making Process Across Verticals
AI helps in the analysis process, supporting decision-making across different verticals. It enables the identification and evaluation of risks, while efficiently reviewing and analyzing data and financial metrics, ultimately leading to more informed and effective investment decisions. – Fadi Alawami, The Consultation Center
9. Manage Liquidity Risks In Real Time
We can use AI to automate data aggregation, risk‑scoring and scenario modeling so portfolio analysis and rebalancing happen faster. AI‑driven analytics help identify mispriced assets, optimize allocation and manage liquidity risks in real time, enabling data‑backed decisions. Teams can also deploy AI‑assisted workflows for reporting, monitoring and stress‑testing portfolios. – Tomas Milar, Eqvista Inc.
The information provided here is not investment, tax, or financial advice. You should consult with a licensed professional for advice concerning your specific situation.

