Table of Contents

Large Language Models (LLMs)

The 30-Second Summary

What is a Large Language Model? A Plain English Definition

Imagine an intern who has read every book in the Library of Congress, every article on Wikipedia, and billions of other websites. This intern doesn't truly understand the concepts in the way a human does, but they have developed an almost supernatural ability to recognize patterns in language. If you give them the beginning of a sentence, they can make an incredibly accurate prediction about which word should come next, and the word after that, and so on, until they've written a complete, coherent paragraph. That, in essence, is a Large Language Model (LLM). Think of it as autocomplete on a god-like scale. When your phone suggests the next word in a text message, it's using a tiny, simple model. An LLM like OpenAI's GPT-4 or Google's Gemini does the same thing, but it's been trained on an unimaginably vast ocean of data and powered by supercomputers. This allows it to do much more than just complete a sentence. It can:

The key insight is that LLMs are masters of syntax and probability, not of truth or consciousness. They are pattern-matching engines. This distinction is absolutely critical for an investor. An LLM can sound incredibly intelligent and authoritative, but it has no concept of what is true or false. It is simply generating the most statistically likely sequence of words based on the data it was trained on. This power and its inherent limitations create a fascinating and dangerous landscape for investors.

“What the wise do in the beginning, fools do in the end.” - Warren Buffett
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Why It Matters to a Value Investor

For a value investor, the emergence of LLMs isn't just another tech trend; it's a seismic shift that must be viewed through the unwavering lens of business fundamentals, competitive advantages, and, most importantly, price. We must separate the revolutionary nature of the technology from the investment proposition of the companies involved. This requires dissecting the impact into two categories: opportunities and threats.

Opportunities: Finding Value Amidst the Noise

Threats & Risks: The Dangers of a "Gold Rush" Mentality

How to Apply It in Practice

As a concept, LLMs are not something you calculate, but a framework you apply to your investment process. This can be broken down into two primary methods: using LLMs as a tool, and analyzing companies within the LLM ecosystem.

The Method: A Two-Pronged Approach

Method 1: Using LLMs as a Skeptical Research Assistant

Think of an LLM as a brilliant but sometimes unreliable intern. Your job is to give it tasks that play to its strengths while diligently fact-checking its output.

  1. Step 1: Information Synthesis. Feed the LLM the transcript of a CEO's latest interview or the “Management's Discussion & Analysis” section of a 10-K report. Ask it to:
    • “Summarize the key strategic priorities mentioned in this text.”
    • “Identify the main risks highlighted by management.”
    • “Extract all mentions of capital allocation plans (e.g., buybacks, dividends, acquisitions).”
  2. Step 2: Competitive Landscape Mapping. When analyzing a company, like John Deere, you could ask:
    • “Who are the primary global competitors to John Deere in the agricultural equipment market?”
    • “What are the main product categories for both John Deere and its competitor AGCO?”
  3. Step 3: Concept Explanation. If you're reading about a semiconductor company and encounter a term you don't understand, ask the LLM:
    • “Explain what 'EUV lithography' is in simple terms and why it's important for chip manufacturing.”
  4. Step 4: CRITICAL VERIFICATION. This is the most important step. NEVER trust any specific number, date, or factual claim from an LLM without verifying it from a primary source (e.g., the company's official SEC filings). LLMs are known to “hallucinate”—that is, to confidently state incorrect information. Use it for summarization and brainstorming, not for hard facts.

Method 2: Analyzing the LLM Value Chain

Instead of trying to pick the one “winning” LLM, analyze the entire ecosystem, just as you would any other industry.

Layer Description Examples Value Investor's Perspective
The Picks & Shovels Companies providing the foundational hardware and infrastructure. The “arms dealers” of the AI race. NVIDIA (GPUs), TSMC (Chip Foundries), Arista Networks (Data Center Networking) Potentially strong moats, but highly cyclical and often subject to extreme valuation hype. The key is to buy them when Mr_Market is pessimistic, not euphoric.
The Model Builders (The Brains) The tech giants and well-funded startups building the foundational LLMs. Google (Gemini), Microsoft/OpenAI (GPT), Meta (Llama), Anthropic (Claude) Immense scale creates a barrier to entry, but competition is fierce and the capital required is astronomical. It's unclear if this will be a high-profit industry or a low-margin utility. Extreme caution is warranted.
The Application Layer Established companies integrating LLMs into existing products to add value and new features. Adobe (Firefly in Photoshop), Salesforce (Einstein GPT), Microsoft (Copilot in Office 365) This is often the most attractive layer for value investors. We can analyze businesses we already understand, with proven models and existing customers, and evaluate how AI enhances their intrinsic_value. The risk is lower because the business doesn't live or die by the AI alone.

Interpreting the Result

Your “result” from this analysis is not a number, but an investment thesis.

From a value investor's viewpoint, the ideal outcome is to find a wonderful, understandable business whose long-term earnings power is being enhanced by LLMs, but where this improvement is not yet fully reflected in the stock price. This creates a margin_of_safety.

A Practical Example

Let's compare two fictional companies to illustrate the value investing approach to the LLM trend.

The Analysis: A speculator or trend-follower is immediately drawn to NeuralNet Dreams. The story is exciting, the growth potential seems infinite, and they are afraid of missing out. A value investor, however, sees massive red flags. The valuation is detached from reality. There is no history of profitability. The competitive landscape is brutal. It is impossible to confidently project future cash flows, and therefore impossible to determine the company's intrinsic_value. There is no margin_of_safety; instead, there is a “margin of danger.” The value investor is drawn to Reliable Accounting Software. This is a business they can understand. It has a proven track record and a durable competitive advantage. The LLM is not a speculative bet; it is a logical, value-adding extension of their core product. The investor can reasonably project how this new feature will increase revenue and profits, calculate an updated intrinsic value, and determine if the current stock price offers a sufficient margin of safety. They are investing in an evolution of a great business, not gambling on a revolution.

Advantages and Limitations

Strengths

Weaknesses & Common Pitfalls

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This quote, while not directly about AI, perfectly captures the investor's dilemma. Early, rational adoption can create value, while joining the herd during a speculative frenzy is a classic path to ruin. LLMs are a modern-day test of this principle.