Nvidia NVDA is set to release its third-quarter earnings report on Nov. 20. Here’s Morningstar’s take on what to look for in Nvidia’s earnings and stock.

Key Morningstar metrics for Nvidia

  • Fair Value Estimate: $105.00
  • Morningstar Rating: 2 stars
  • Economic Moat: Wide
  • Morningstar Uncertainty Rating: Very High

Earnings release date

  • Wednesday, Nov. 20, after the close of trading

What to watch for in Nvidia’s Q3 earnings

  • Nvidia’s data center business is still the only segment that matters: Nvidia has been on a healthy streak of reporting results ahead of its quarterly guidance while guiding for the upcoming quarter ahead of FactSet consensus estimates. We anticipate more of the same, as management already hinted that the firm is sold out of its new Blackwell products for the next 12 months. Supply constraints still appear to be the most significant cap on Nvidia’s AI chip business. Our model assumes the company will sell everything it can build for the next 12 months. We will again be interested in any commentary on whether (or how rapidly) Nvidia’s manufacturing partners are expanding to satisfy demand for its AI graphics processing units.
  • Data center expansion is the most important driver of the long-term valuation: The biggest boost to Nvidia’s earnings and valuation in the past 18 months has been driven by the significant increase in AI spending by large cloud computing and consumer internet companies. We’ll be looking for any additional insights into their future spending plans. These firms have signaled that they don’t expect AI spending to slow down in 2025. Outside of these mega-cap tech customers, we’ll look for trends in enterprise spending at software vendors, financial services companies, healthcare firms, and the like, which also appears material. Donald Trump’s reelection as US president may affect chip industry spending and government restrictions, so we’ll be interested in what Nvidia says on this.
  • We still have key questions about the future of AI: What percentage of AI workloads is training vs. inference? Nvidia dominates training but has said 40% of its GPUs are used for inference. What is the firm seeing regarding the development of large language models in the cloud vs. at the edge? What is it seeing from customers conducting “moonshot” projects, such as genetics, drug discovery, robotics, and autonomous driving?

Fair Value Estimate for Nvidia

With its 2-star rating, we believe Nvidia’s stock is overvalued compared to our long-term fair value estimate of $105 per share, which implies an equity value of roughly $2.5 trillion. Our fair value estimate implies a fiscal 2025 (ending January 2025, or effectively calendar 2024) price/adjusted earnings multiple of 37 times and a fiscal 2026 forward price/adjusted earnings multiple of 27 times.

Our fair value estimate, and Nvidia’s stock price, will be driven by its prospects in the data center and AI GPUs, for better or worse. Nvidia’s DC business has achieved exponential growth already, rising from $3 billion in fiscal 2020 to $15 billion in fiscal 2023 and more than tripling to $47.5 billion in fiscal 2024. DC revenue appears to be supply-constrained, and we think that Nvidia will continue to steadily boost revenue in each of the four quarters in fiscal 2025 as more supply comes online. Based on Nvidia’s strong forecast start for fiscal 2025, we model DC revenue rising 133% to $111 billion in fiscal 2025. We model a 23% compound annual growth rate for the three years thereafter, as we anticipate strong growth in capital expenditures in data centers at leading enterprise and cloud computing customers.

We think it is reasonable that Nvidia may face an inventory correction or a pause in AI demand in the medium term. Excluding this one-year blip that we model, we anticipate an average annual DC growth of 10% and consider this a reasonable long-term growth rate as AI matures.

Economic Moat Rating

We assign Nvidia a wide moat, thanks to intangible assets around its graphics processing units and, increasingly, switching costs around its proprietary software, such as its Cuda platform for AI tools, which lets developers use the firm’s GPUs to build AI models.

Nvidia was an early leader and designer of GPUs, originally developed to offload graphic processing tasks on PCs and gaming consoles. The firm has emerged as the clear market share leader in discrete GPUs (over 80% share, per Mercury Research). We attribute this leadership to intangible assets associated with GPU design, as well as the associated software, frameworks, and tools developers need to work with these GPUs. In our view, recent introductions like ray-tracing technology and the use of AI tensor cores in gaming applications are signs Nvidia has not lost its GPU leadership. A quick scan of GPU pricing in gaming and DC shows the firm’s average selling prices can often be twice as high as its closest competitor, Advanced Micro Devices AMD.

Financial strength

Nvidia is in outstanding financial health. As of April 2024, the company held $31.4 billion in cash and investments, as compared with $9.7 billion in short-term and long-term debt. Semiconductor firms tend to hold large cash balances to help them navigate the cycles of the chip industry. During downturns, this provides them with a cushion and flexibility to continue investing in research and development, which is necessary to maintain their competitive and technology positions. Nvidia’s dividend is virtually immaterial relative to its financial health and forward prospects, and most of the firm’s distribution to shareholders comes in the form of stock buybacks.

Risk and uncertainty

We assign Nvidia with a Morningstar Uncertainty Rating of Very High. In our view, Nvidia’s valuation will be tied to its ability to grow within the data center and AI sectors, for better or worse. Nvidia is an industry leader in GPUs used in AI model training, while carving out a good portion of demand for chips used in AI inference workloads (which involves running a model to make a prediction or output).

We see a host of tech leaders vying for Nvidia’s leading AI position. We think it is inevitable that leading hyperscale vendors, such as Amazon’s AWS, Microsoft, Google, and Meta Platforms will seek to reduce their reliance on Nvidia and diversify their semiconductor and software supplier base, including the development of in-house solutions. Google’s TPUs and Amazon’s Trainium and Inferentia chips were designed with AI workloads in mind, while Microsoft and Meta have announced semiconductor design plans. Among existing semis vendors, AMD is quickly expanding its GPU lineup to serve these cloud leaders. Intel also has AI accelerator products today and will likely remain focused on this opportunity.

NVDA bulls say

  • Nvidia’s GPUs offer industry-leading parallel processing, which was historically needed in PC gaming applications, but has expanded into crypto mining, AI, and perhaps future applications too.
  • Nvidia’s data center GPUs and Cuda software platform have established the company as the dominant vendor for AI model training, which is a use case that should rise exponentially in the years ahead.
  • The firm has a first-mover advantage in the autonomous driving market that could lead to widespread adoption of its Drive PX self-driving platform.

NVDA bears say

  • Nvidia is a leading AI chip vendor today, but other powerful chipmakers and tech titans are focused on in-house chip development.
  • Although Cuda is a leader in AI training software and tools today, leading cloud vendors would likely prefer to see greater competition in this space and may shift to alternative open-source tools if they were to arise.
  • Nvidia’s gaming GPU business has often seen boom-or-bust cycles based on PC demand and, more recently, cryptocurrency mining.

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Terms used in this article

Star Rating: Our one- to five-star ratings are guideposts to a broad audience and individuals must consider their own specific investment goals, risk tolerance, and several other factors. A five-star rating means our analysts think the current market price likely represents an excessively pessimistic outlook and that beyond fair risk-adjusted returns are likely over a long timeframe. A one-star rating means our analysts think the market is pricing in an excessively optimistic outlook, limiting upside potential and leaving the investor exposed to capital loss.

Fair Value: Morningstar’s Fair Value estimate results from a detailed projection of a company's future cash flows, resulting from our analysts' independent primary research. Price To Fair Value measures the current market price against estimated Fair Value. If a company’s stock trades at $100 and our analysts believe it is worth $200, the price to fair value ratio would be 0.5. A Price to Fair Value over 1 suggests the share is overvalued.

Moat Rating: An economic moat is a structural feature that allows a firm to sustain excess profits over a long period. Companies with a narrow moat are those we believe are more likely than not to sustain excess returns for at least a decade. For wide-moat companies, we have high confidence that excess returns will persist for 10 years and are likely to persist at least 20 years. To learn about finding different sources of moat, read this article by Mark LaMonica.

Uncertainty Rating: Morningstar’s Uncertainty Rating is designed to capture the range of potential outcomes for a company. An investor can think of this as the underlying risk of the business. For higher risk businesses with wider ranges of potential outcomes an investor should consider a larger margin of safety or difference between the estimate of what a share is worth and how much an investor pays. This rating is used to assign the margin of safety required before investing, which in turn explicitly drives our stock star rating system. The Uncertainty Rating is aimed at identifying the confidence we should have in assigning a fair value estimate for a stock. Read more about business risk and margin of safety here.