Public sentiment from VCs can be misleading. A sector like B2B ad-tech might be widely dismissed, but AI-driven market intelligence can analyze investment data to reveal that top firms are quietly making bets in the space. This provides a non-obvious signal that the market is reopening before the public narrative changes.

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Traditional VC reliance on "differentiated networks" is obsolete as data sources and professional networks are now commodities. To compete, modern VCs must replace this outdated advantage with proprietary intelligence platforms that algorithmically source deals and identify the right signals for where to focus time.

Unlike traditional B2B markets where only ~5% of customers are buying at any time, the AI boom has pushed nearly 100% of companies to seek solutions at once. This temporary gold rush warps perception of market size, creating a risk of over-investment similar to the COVID-era software bubble.

VCs have traditionally ignored the massive $16T services sector due to its low margins. AI automation can fundamentally change this by eliminating repetitive tasks, allowing these companies to achieve margin profiles similar to software businesses, thus making the sector newly viable for venture investment.

Despite headline figures suggesting a venture capital rebound, the funding landscape is highly concentrated. A handful of mega-deals in AI are taking the vast majority of capital, making it harder for the average B2B SaaS startup to raise funds and creating a deceptive market perception.

AI tools drastically reduce the time and expertise needed to enter new domains. This allows startups to pivot their entire company quickly to capitalize on shifting investor sentiment and market narratives, making them more agile in a hype-driven environment where narrative alignment attracts capital.

Go beyond simple prospect research and use AI to track broad market sentiment. By analyzing vast amounts of web data, AI can identify what an entire audience is looking for and bothered by right now, revealing emerging pain points and allowing for more timely and relevant outreach.

Venture capital firms are leveraging AI tools like Google's NotebookLM to process deal flow. They ingest investment memos and legal documents to analyze them against their investment thesis and even simulate a preliminary legal review.

The most significant companies are often founded long before their sector becomes a "hot" investment theme. For example, OpenAI was founded in 2015, years before AI became a dominant VC trend. Early-stage investors should actively resist popular memes and cycles, as they are typically trailing indicators of innovation.

The focus on AI among institutional investors is so absolute that promising non-AI companies risk "dying of neglect" and being unable to secure follow-on funding. This creates a potential opportunity gap for angel investors to fund valuable businesses in overlooked sectors.

Analysis shows that the themes venture capitalists and media hype in any given year are significantly delayed. Breakout companies like OpenAI were founded years before their sector became a dominant trend, suggesting that investing in the current "hot" theme is a strategy for being late.

AI Can Spot When 'Dead' Markets Are Quietly Reopening | RiffOn