TSLA vs NVDA at a glance (NASDAQ)
NVDA sells the picks-and-shovels of modern AI: GPUs, networking, systems, and a software ecosystem that sits underneath most large-scale model training and inference.
TSLA sells AI-enabled products and services in the physical world: vehicles, energy storage, charging, and autonomy/robotics ambitions that depend on real-world deployment, regulation, and manufacturing execution.
Both can work in an AI-themed portfolio—but they tend to behave differently across cycles, and the drivers behind price history, return, and risk are not interchangeable.
Core similarity: both are “AI-first” businesses with data flywheels
Despite operating in different industries, TSLA and NVDA share a few structural strengths investors often associate with durable compounding:
Data advantage and iteration loops
NVDA benefits from a developer ecosystem that standardizes how AI workloads are built and deployed.
Tesla benefits from fleet data, manufacturing iteration, and software updates (plus a growing energy footprint).
Vertical integration
Massive TAM narratives
Where they diverge is how reliably those narratives translate into near-term cash flows.
The key difference: what each company actually sells
NVIDIA’s business model: AI compute platform economics
NVDA’s core monetization is tied to AI infrastructure buildouts—especially data center acceleration. In fiscal 2025, NVIDIA reported record full-year revenue of $130.5B and GAAP gross margin of 75.0% (non-GAAP 75.5%).
Just as importantly for long-horizon investors, NVIDIA’s cash generation reflects a platform-style profile: in the same fiscal year, it reported GAAP net cash provided by operating activities of $64.089B and free cash flow of $60.724B.
Product stack (simplified):
GPUs and accelerated computing
High-performance networking
Systems-level AI infrastructure
Software ecosystem that reduces “time-to-train” and “time-to-deploy”
What that means in practice: NVDA often acts like a capacity and efficiency supplier to the entire AI economy. When hyperscalers and enterprises ramp capex, NVDA can see powerful operating leverage.
Tesla’s business model: AI-enabled manufacturing + energy + services optionality
Tesla is still primarily a vehicle business by revenue, with energy storage and services growing in importance. In 2024, Tesla reported:
Total revenues: $97.69B
Total gross margin: 17.9%
Total automotive gross margin: 18.4%
Energy generation and storage gross margin: 26.2%
Tesla’s cash flow profile looks more like a capital-intensive manufacturer that is also investing heavily in future AI programs:
It also has a meaningful (and high-margin) stream from automotive regulatory credits ($2.763B in 2024).
Product stack (simplified):
EVs (Model 3/Y, etc.) + manufacturing footprint
Energy storage (Megapack / Powerwall) + solar
Charging network and paid services
Autonomy software ambitions and robotics narrative
What that means in practice: TSLA’s AI upside is often framed as “application-layer disruption,” but near-term fundamentals remain sensitive to vehicle demand, pricing, and manufacturing execution.
Price history: a decade of very different paths (split-adjusted)
The table below uses split-adjusted month-end prices (December each year) as a simple “price history” anchor for long-term comparisons.
Year (Dec) | TSLA (Adj. Price) | NVDA (Adj. Price) |
2016 | 14.25 | 2.63 |
2017 | 20.76 | 4.78 |
2018 | 22.19 | 3.31 |
2019 | 27.89 | 5.86 |
2020 | 235.22 | 13.02 |
2021 | 352.26 | 29.35 |
2022 | 123.18 | 14.60 |
2023 | 248.48 | 49.49 |
2024 | 403.84 | 134.25 |
2025 | 449.72 | 186.50 |
How to read this:
TSLA’s “step-change” era is obvious in 2020–2021, followed by a deep drawdown in 2022 and a rebound afterward.
NVDA shows a strong multi-cycle uptrend, with a major reset in 2022 and an outsized AI-era surge in 2023–2024.
Total return: what shareholders actually experienced (2016–2025)
Price alone can mislead; total return is the cleaner measure because it includes reinvested dividends (small for NVDA, zero for TSLA). Below are annual total returns from TotalRealReturns.
Year | TSLA total return | NVDA total return |
2016 | -10.97% | +226.95% |
2017 | +45.70% | +81.99% |
2018 | +6.89% | -30.82% |
2019 | +25.70% | +76.94% |
2020 | +743.44% | +122.30% |
2021 | +49.76% | +125.48% |
2022 | -65.03% | -50.26% |
2023 | +101.72% | +239.02% |
2024 | +62.52% | +171.25% |
2025 | +11.36% | +38.92% |
Two takeaways for “AI mainline” investors:
NVDA has tended to compound through multiple regimes (gaming → data center → generative AI), but remains cyclical and can suffer violent drawdowns (e.g., 2022).
TSLA’s returns cluster around big narrative re-ratings (notably 2020), with periods where fundamentals and expectations need to realign.
If you want a practical snapshot of “recent compounding,” FinanceCharts shows NVDA’s 5-year total return in the four-digit percent range versus a far more modest multi-year profile for TSLA over the same window.
Dividend comparison: income vs reinvestment
Tesla (TSLA): no dividend.
NVIDIA (NVDA): pays a small quarterly cash dividend; the yield is typically minimal relative to price movement.
NVDA dividend history (split-adjusted, per share)
From NVDA’s dividend payment history, recent years look like this (approx. yearly totals):
Year | NVDA dividends per share (approx.) |
2021 | 0.016 |
2022 | 0.016 |
2023 | 0.016 |
2024 | 0.034 |
2025 | 0.040 |
Interpretation: NVDA’s dividend exists, but NVDA is primarily a total return story, not an income stock. TSLA is explicitly reinvestment-oriented, returning capital mostly through growth and (periodically) buybacks rather than dividends.
Risk profile: where each can surprise investors
NVDA’s main risks (in plain terms)
Cycle risk: AI infrastructure spend can slow, pause, or shift between buyers.
Platform competition: alternative accelerators and cost optimization efforts can compress pricing power over time.
Geopolitical/export constraints: demand and supply can be affected by policy changes. Even with strong margins and cash flow, the “hardware + capex cycle” character never fully disappears.
TSLA’s main risks (in plain terms)
Auto demand and pricing: EV competition and consumer demand sensitivity can pressure margins.
Regulatory and policy dependence: credits, incentives, and standards can materially affect profitability; Tesla’s regulatory credits are a meaningful revenue line.
Autonomy timeline risk: autonomy/robotaxi/robotics narratives may take longer to commercialize than the market expects, especially under regulatory scrutiny.
“AI mainline” choice: NVDA vs TSLA—who should buy what?
NVDA tends to fit investors who want:
Direct exposure to AI compute demand (training and inference at scale)
A business model with very high margins and strong cash conversion
A clearer mapping between “AI spend” and revenue
TSLA tends to fit investors who want:
AI application upside (autonomy/robotics) plus a large physical distribution footprint
Exposure to energy storage growth with improving segment economics
Willingness to underwrite higher uncertainty around timelines, regulation, and manufacturing competition
A practical way to frame it:
If your thesis is “AI capex keeps compounding across enterprises and hyperscalers”, NVDA is the cleaner expression.
If your thesis is “AI will be won through real-world deployment and consumer products”, TSLA is the more application-layer bet—often with more variance.
Tokenized access on MEXC: TSLAON and NVDAON
How tokenized stocks differ from US-listed shares
Tokenized stock products typically aim to provide price exposure to the underlying equity, but they are not the same as holding the NASDAQ-listed stock in a brokerage account—and often do not confer shareholder rights in the way common stock does.
Why some traders choose TSLAON or NVDAON on MEXC
Crypto account workflow: trade with USDT on an exchange interface (spot order book).
Position sizing flexibility: often used for smaller, more granular positioning than a traditional brokerage workflow.
Speed and convenience: a single venue experience for crypto + tokenized markets.
If your goal is traditional ownership (corporate actions in the standard equity framework, brokerage conventions, and direct equity holding), you’ll generally prefer TSLA stock / NVDA stock via a conventional brokerage.
If your goal is crypto-native access and convenience, TSLAON and NVDAON on MEXC can be a practical alternative—so long as you understand the product structure and its limits.
In practical work: how to use this comparison (a simple decision checklist)
If you’re writing a one-page investment memo or building an AI-themed allocation, use this split:
That framework keeps you honest about why you own the position—especially when the narrative gets loud.
FAQ: TSLA vs NVDA Stock
If I’m bullish on AI, should I buy NVDA or TSLA?
It depends on what you mean by “AI exposure.” NVDA is the more direct expression of AI infrastructure demand (training and inference compute). TSLA is a higher-variance application-layer bet where the AI upside depends on real-world deployment (autonomy/robotics) and execution in manufacturing and regulation. In many portfolios, NVDA fits a “core AI infrastructure” role, while TSLA is a “high optionality AI applications” position.
Is TSLA’s autonomy/robotics story comparable to NVDA’s AI platform story?
They’re not comparable in business-model mechanics. NVDA monetizes AI through selling hardware/software platforms to many customers today. TSLA’s autonomy/robotics upside is more path-dependent: it requires regulatory acceptance, safety performance, product-market fit, and scalable deployment economics. That can be huge if it works—but the timeline and revenue recognition are less predictable.
Which stock is more cyclical—NVDA or TSLA?
Both are cyclical, but the cycles come from different places. NVDA is tied to semiconductor and data-center capex cycles (AI spending waves can accelerate or pause). TSLA is tied to auto demand, pricing competition, and manufacturing execution; its margins can compress quickly in price wars or weak demand periods.
Which has “higher quality” cash flow?
Historically, NVDA’s model has exhibited higher gross margins and stronger operating leverage, so its cash generation can scale rapidly in strong demand environments. TSLA’s cash flow is more affected by capex, factory ramp/optimization, and working-capital swings typical of manufacturing businesses. “Quality” here usually means predictability and margin structure—NVDA often screens better on those traits, while TSLA offers more optionality.
Do dividends matter for this comparison?
Not much. TSLA does not pay a dividend. NVDA pays a small dividend, but it is typically immaterial relative to price movement and total return. Most investors treat both as total-return equities where compounding is driven by earnings power and valuation.
What are the key risks unique to NVDA?
The main ones are: AI capex normalization (spending slows), competitive/platform erosion (alternative accelerators or optimized stacks reduce pricing power), and geopolitical/export-policy constraints affecting demand and supply. Even with strong fundamentals, NVDA can be vulnerable to sharp drawdowns when the market resets growth expectations.
What are the key risks unique to TSLA?
The core risks are: demand elasticity and EV competition impacting pricing and margins; regulatory/policy sensitivity (incentives, standards, credits); and autonomy commercialization risk (timing, safety, regulation). TSLA can also face higher headline risk because product safety narratives can move sentiment quickly.
Which is more sensitive to interest rates and “risk-on/risk-off” sentiment?
Both are sensitive because both are high-growth Nasdaq names, but the transmission differs. NVDA can re-rate sharply when the market prices faster AI infrastructure growth. TSLA can re-rate sharply when the market prices faster autonomy/robotics adoption or when auto margins shift. In practice, both can be volatile when liquidity tightens.
How do I build a simple decision framework without overthinking it?
Ask three questions:
What is my AI thesis: infrastructure spending (NVDA) or real-world autonomy/robotics adoption (TSLA)?
What can I tolerate: lower-variance platform economics (NVDA) or higher-variance optionality (TSLA)?
What would prove me wrong within 12–24 months: capex slowing/competition (NVDA) or margin pressure + autonomy delays (TSLA)?
Are TSLAON / NVDAON on MEXC the same as owning TSLA / NVDA shares?
No. Tokenized stock products generally aim to provide price exposure, but they are structurally different from holding the Nasdaq-listed shares through a brokerage account (rights, protections, corporate action handling, and product design can differ). Treat them as distinct instruments and evaluate the product rules and risks separately.
This is general information, not investment advice.