Fintech vs. DeFi: Which Financial System Is More Competitive?

marsbitPublicado a 2026-02-17Actualizado a 2026-02-17

Resumen

The article presents a comparative analysis between Fintech and DeFi (Decentralized Finance) across key metrics like revenue, scale, user numbers, and take rates. It highlights that DeFi protocols are rapidly closing the gap with traditional Fintech in terms of transaction volume, user base, and asset scale. For instance, Hyperliquid’s trading volume reached over 50% of Robinhood’s, Aave’s lending volume surpassed Klarna’s, and stablecoin payment channels are growing significantly faster than traditional payment processors. However, DeFi captures far less economic value due to substantially lower take rates. The piece concludes that convergence is inevitable, posing the central question: Will crypto learn to build tollbooths (monetization), or will Fintech adopt open, decentralized rails? The answer likely involves both trends evolving simultaneously.

Editor's Note: For a long time, Fintech and DeFi have been seen as two separate financial systems: one is compliant, centralized, and can be valued; the other is open, runs on-chain, and more like public infrastructure. Fintech excels at turning traffic into revenue, while DeFi excels at maximizing efficiency. As tokenization, stablecoins, and on-chain transactions continue to penetrate the traditional system, integration has become inevitable. So, what is the future of finance: building toll booths on the open road, or will the toll booths eventually learn to walk the open path?

This article compares and analyzes Fintech and on-chain protocols from four dimensions: revenue, scale, user numbers, and take rate, attempting to answer whether DeFi will win or Fintech will win?

Below is the original text:

Gm, Fintech architects, today we bring you some truly heavyweight content.

In collaboration with analytics firm Artemis (known as the "Bloomberg Terminal for digital finance"), we are officially releasing the first-ever comparative analysis of key metrics (KPIs) between Fintech and DeFi.


If you've ever struggled with whether to invest in Robinhood or Uniswap, you've come to the right place.

Summary

We placed fintech stocks and crypto tokens on the same "comparison table," a true side-by-side comparison on the same page.


Covering multiple sectors including payments, digital banking, trading, lending, and prediction markets, we compared revenue, user scale, take rate, key industry metrics, and valuation metrics.

The results were quite surprising:

Hyperliquid's trading volume has reached over 50% of Robinhood's

The lending volume of DeFi protocol Aave has surpassed that of buy-now-pay-later platform Klarna

The growth rate of stablecoin payment channels is far faster than that of traditional payment service providers

The user scale of wallets like Phantom and MetaMask is already comparable to that of neobanks like Nubank and Revolut

We found that valuations truly reflect this tension: crypto assets are either heavily discounted due to uncertainty about "how to monetize in the future" or given extreme premiums due to high expectations.

Ultimately, we raise a core question about "convergence": Will the crypto world learn to build tollbooths, or will fintech ultimately adopt crypto's open payment and clearing rails?

Entities Involved

Block, PayPal, Adyen, Tron, Solana, Coinbase, Robinhood, Uniswap, Aave, Affirm, Klarna, Polymarket, DraftKings

Two Financial Systems

For years, we have viewed the crypto world and fintech as two parallel universes: one is regulated, audited, and traded on NASDAQ; the other is a permissionless system where assets circulate on decentralized and centralized exchanges.

They use the same language—revenue, trading volume, payments, lending, trading—but with distinctly different "accents." And this landscape is changing.

As Stripe acquires Bridge, Robinhood launches prediction markets, and PayPal begins issuing its own dollar stablecoin, the boundaries between the two systems are gradually blurring.

The real question is: When these two worlds truly meet and collide, how should they be compared on the same comparison table?

So, we decided to run an experiment.

We selected the fintech companies you know—covering payment processors, neobanks, buy-now-pay-later (BNPL) providers, and retail brokers—and paired them with their crypto-native counterparts.


In the same set of charts, we compared them using the fintech metrics you're already familiar with (like P/S, ARPU, TPV, user count, etc.): green bars represent stocks, purple bars represent tokens.

From this, a picture of two financial systems emerged: On-chain financial protocols often match or even exceed their fintech peers in terms of trading volume and asset scale; but the economic value they capture is only a small fraction; crypto asset pricing relative to comparable fintech companies is either extremely premium or deeply discounted, with almost no "middle ground"; and the gap in growth rates between the two is stark.

Payments: The "Pipes" for Fund Flows

Starting with the largest sector in fintech—moving money from point A to point B.

On the green side, there are true giants:

PayPal: Processes $1.76 trillion in payment volume annually

Adyen: Processes $1.5 trillion

Fiserv: This "infrastructure company no one mentions at the party" processes $320 billion

Block (formerly Square): Drives $255 billion in fund flows through Cash App and its merchant network

These companies form the most mature and stable "funds pipeline layer" in the traditional fintech system.

On the purple side, here are the annualized B2B payment volumes estimated by Artemis's stablecoin team:

Tron: $68 billion in stablecoin transfer volume

Ethereum: $41.2 billion

BNB Chain: $18.6 billion

Solana: Approximately $6.5 billion

In absolute terms, they are not on the same scale. The combined stablecoin transfer volume on all major public chains is only about 2% of the scale of fintech payment processors. If you squint at that market share chart, the purple bars are almost just a rounding error.

But the really interesting part is—the growth rate.

PayPal's total payment volume grew only 6% last year

Block grew 8%

Adyen, Europe's "darling," achieved 43% growth—quite strong by fintech standards

Now look at the blockchains:

Tron: Grew 493%

Ethereum: Grew 652%

BNB Chain: Grew 648%

Solana: Grew 755% year-over-year, the fastest

Again, this data comes from the Artemis data team's estimates of B2B payment volume based on McKinsey research.

The results are very clear: The growth speed of the stablecoin "payment rails" is far faster than that of the traditional fintech payment system.

Of course, their starting point is also much smaller.

Next, the question becomes: Who is actually capturing the economic value?

Fiserv: Takes 3.16% for every dollar it handles

Block: Takes 2.62%

PayPal: Takes 1.68%

Adyen: Due to its lower-margin enterprise model, takes only 15 basis points (0.15%)

These are real business companies. Their revenue is directly and stably tied to payment volume.

As for the blockchain side, their take rate on stablecoin transfers and broader asset transfers is much lower, roughly between about 1–9 basis points (bps). Tron covers stablecoin transfer costs by charging users TRX, while Ethereum, BNB Chain, and Solana charge end users gas fees or priority fees.

These public chains are very strong at facilitating transfers and driving asset movement, but they take a much smaller cut compared to traditional payment service providers. Avoiding things like interchange fees and merchant fees is one of the key reasons blockchain can claim huge efficiency advantages over existing payment systems.


Of course, there are also many on-chain payment orchestrators happy to layer additional fees on top of the base fees—this precisely constitutes a major opportunity for "facilitators" to build economic value on top.

Neobanks: Wallets Become the New Bank Accounts

In the fintech neobank sector, there are real banks (or banks that "rent licenses"), such as Revolut, Nubank, SoFi, Chime, Wise. These institutions have licenses, deposit insurance, and compliance departments.

On the crypto side, we see wallets and yield protocols, like MetaMask, Phantom, Ethena, EtherFi. They are certainly not "banks," but millions of people store assets here; and increasingly, people are earning yield on their savings here. Even if the regulatory shell is different, this functional comparison still holds.

Start with user scale: Nubank has 93.5 million monthly active users (MAU), making it the world's largest digital bank, a scale built on high smartphone penetration in Brazil and an extremely complex local banking system; Revolut has 70 million users in Europe and beyond; Next is MetaMask, with about 30 million users—a scale that already surpasses Wise, SoFi, and Chime.

It should be noted that most MetaMask users are not using crypto wallets to pay rent, but to interact with DEXs or participate in lending protocols. Another leading wallet, Phantom, has 16 million monthly active users. Phantom was positioned as the best-experience wallet in the Solana ecosystem but quickly expanded to multiple chains, now offering its own stablecoin $CASH, debit cards, tokenized stocks, and prediction markets.

Now, look at where the money is kept.

Revolut: Customer balances of $40.8 billion

Nubank: $38.8 billion

SoFi: $32.9 billion

These are real deposits, generating net interest income for the institutions.

In the crypto world, there are highly similar counterparts:

Ethena: This synthetic dollar protocol, which didn't exist two years ago, now holds $7.9 billion

EtherFi: Scale of $9.9 billion

These are not "deposits," but staked assets, yield-bearing positions, or liquidity parked in smart contracts—in industry terms, called TVL (Total Value Locked).

But from the user's perspective, the logic is not fundamentally different: Money is placed somewhere and is continuously yielding.

The real difference is: How do these platforms monetize "stored funds," and how much money can they make from users?

SoFi: $264 annual revenue per user. This is not surprising—SoFi aggressively cross-sells between loans, investment accounts, and credit cards, and its user base has higher overall income.

Chime: $227 per user, revenue mainly from interchange fees.

Nubank: Operating in Brazil, a market with lower GDP per capita, $151 per user.

Revolut: Despite its large user base, only $60 per user.

What about EtherFi? $256 per user, almost on par with SoFi.


The downside for this crypto newcomer: EtherFi has only about 20,000 active users, while SoFi has 12.6 million.
That is, this DeFi protocol achieves monetization efficiency on a tiny user base comparable to that of the top digital banks with massive user scales.

From another perspective, MetaMask generated about $85 million in revenue last year, translating to an ARPU of about $3, even lower than Revolut's early stages.

Ethena, while having $7.9 billion in TVL, still has user reach that is just a fraction of Nubank's.

Valuation is a direct reflection of this "growth vs. monetization ability" tension.

Revolut is valued at about 18x revenue, a pricing that reflects its market position and the "option value" of future expansion; EtherFi is valued at about 13x; Ethena at about 6.3x, roughly the same level as SoFi and Wise.

A rather counterintuitive conclusion is emerging: The market is valuing DeFi / on-chain "banks" and traditional fintech banks in quite similar ways at the valuation level.

The so-called "convergence thesis" refers to: Wallets will eventually evolve into digital banks.

We are already seeing concrete manifestations of this trend: MetaMask launched a debit card, Phantom integrated fiat on/off ramps. The direction is clear, just still on the road.

But when an on-chain "digital bank" like EtherFi already has higher revenue per user than Revolut, the gap between the two is actually not as big as the narrative suggests.

Trading: On-Chain DEXs Are Catching Up to Traditional Brokers

Switching perspective to capital markets.

What truly surprised us was: The trading volume of on-chain exchanges can already be mentioned in the same breath as traditional brokers.

Robinhood processed $4.6 trillion in trading volume over the past 12 months, mainly from stocks, options, and crypto assets, corresponding to an asset scale of about $300 billion (give or take).

Hyperliquid's spot and perpetual contract trading volume is about $2.6 trillion, mainly driven by crypto trading, but stocks and commodities are starting to take share.

Coinbase's trading volume is about $1.4 trillion, almost entirely from crypto assets.

As the "old guard," Charles Schwab does not disclose trading volume in the same way, but its $11.6 trillion in assets under custody is enough to illustrate the volume gap between new money and old money—about 40 times that of Robinhood.

This outlines a clear contrast: On-chain trading has caught up to mainstream brokers in terms of "flow," but in terms of "stock of assets," the traditional system still holds an overwhelming advantage.

Other decentralized exchanges are also not to be ignored. For example, Uniswap, the protocol that proved automated market makers (AMMs) work, has nearly $1 trillion in trading volume; Raydium (a leading DEX on Solana) did $895 billion; Meteora and Aerodrome together contributed another $435 billion.


Combined, the processing scale of major DEXs is already comparable to Coinbase. Three years ago, this was almost unimaginable.

Of course, we don't know how much of this volume is wash trading and how much is real trading; but the trend itself is key. Additionally, while the "convergence" of volume is real, DEXs and traditional brokers have fundamental differences in take rate.

Traditional brokers / centralized platforms:

Robinhood: Takes 1.06% per trade, mainly from payment for order flow (PFOF) and crypto spreads

Coinbase: About 1.03%, high spot fees are still common on centralized exchanges

eToro: Even so, 41 basis points

DEXs operate in a completely different universe:

Hyperliquid: 3 basis points

Uniswap: 9 basis points

Aerodrome: 9 basis points

Raydium: 5 basis points

Meteora: 31 basis points (a clear exception)

Decentralized exchanges can generate extremely high trading volumes, but due to fierce competition for liquidity providers (LPs) and traders, their take rates are significantly compressed.

This is quite similar to the division of labor logic in traditional markets: Real exchanges (like NASDAQ, Intercontinental Exchange) and brokers who bring clients to the trading venue inherently undertake different functions.

This is the paradox of DEXs.


DEXs have built trading infrastructure that can compete head-to-head with centralized exchanges in terms of volume: running 24/7, almost no downtime, no KYC required, anyone can list a token. But on $1 trillion in trading volume, even a 9 basis point take rate means Uniswap can only generate about $900 million in fees, about $29 million in revenue; whereas on $1.4 trillion in volume, a 1% take rate gives Coinbase $14 billion in revenue.

This difference is faithfully reflected in market valuations:

Coinbase: 7.1x Sales

Robinhood: 21.3x (high for a broker, but supported by growth)

Charles Schwab: 8.0x (mature multiple for a mature business)

Uniswap: 5.0x Fees

Aerodrome: 4.8x Fees

Raydium: 1.3x Fees

The conclusion is not complicated: The market is not pricing these protocols as "high-growth tech companies," one important reason being—compared to traditional brokers, their take rates are lower, so the economic value they capture is also less.

Looking at stock performance, the flow of market mood is clear.

Robinhood has risen about 5.7x since late 2024, benefiting from the resurgence of retail investment and the crypto market rebound; Coinbase is up about 20% over the same period; while Uniswap, the protocol that "spawned a thousand DEX forks," has seen its stock (token) price fall 40%.

Despite massive trading volume continuously flowing through these DEXs, the related tokens have not captured value to the same extent, partly because their "utility" as investment tools is not clear enough.

The only exception is Hyperliquid. Due to its explosive growth in scale, Hyperliquid's performance has almost synchronized with Robinhood, achieving similar gains over the same period.

Although historically, DEXs have struggled to capture value and are often seen as public goods, projects like Uniswap have begun to turn on their "fee switch"—using fees to buy back and burn UNI tokens. Currently, Uniswap's annualized revenue is about $32 million.

We are optimistic about the future: As more and more trading volume migrates on-chain, value is expected to gradually flow back to DEX tokens themselves, with Hyperliquid being a successful example.


But for now, until token holders achieve a clear, direct value capture mechanism similar to Hyperliquid's, DEX token performance will still lag behind that of centralized exchange (CEX) stocks.

Lending: "Underwriting" for the Next Generation Financial System

In the lending segment, the comparison becomes even more intriguing.

On one side, is the core business of fintech—unsecured consumer credit:

Affirm: Lets you split a Peloton bike into four payments

Klarna: Provides the same installment service for fast fashion

LendingClub: Pioneered the P2P lending model, later transformed into a real bank

Funding Circle: Does loan underwriting for SMEs

These companies make money in a highly consistent way: Charge borrowers an interest rate higher than the cost paid to depositors, and pray the default rate doesn't eat up this spread.

On the other side, is collateralized DeFi lending: Aave, Morpho, Euler

Here, borrowers collateralize ETH, borrow USDC, and pay an algorithmically determined interest rate; if the collateral price falls to a dangerous level, the protocol automatically liquidates—no collection calls, no bad debt write-offs.

These are essentially two completely different business models, they just happen to both be called "lending."

Start with loan scale

Aave's outstanding loan volume is $22.6 billion

This already exceeds the sum of the following companies:

Klarna: $10.1 billion

Affirm: $7.2 billion

Funding Circle: $2.8 billion

LendingClub: $2.6 billion

The loan scale of the largest DeFi lending protocol has surpassed that of the largest BNPL platform.

Please stop and seriously absorb this fact.

Morpho adds another $3.7 billion. Euler, after restarting following a hack in 2023, currently has a scale of $861 million.

Overall, the DeFi lending system has grown to a scale comparable to the entire listed digital lending industry in about four years—but its economic structure is inverted.

On the traditional fintech side: Funding Circle's "net interest margin" is 9.35% (related to its business model closer to private credit); LendingClub is 6.18%; Affirm, although a BNPL company rather than a traditional lender, still gets 5.25%.

These are quite "fat" spreads—essentially compensation for the credit risk they bear, personally conducting underwriting and risk control.

On the crypto side: Aave's net interest margin is only 0.98%; Morpho is 1.51%; Euler is 1.30%.

Overall, even with larger loan scales, DeFi protocols generally earn lower spreads than fintech lenders.

DeFi lending is designed to be over-collateralized.

To borrow $100 on Aave, you typically need to provide $150 or more in collateral. The protocol itself does not bear credit risk, but liquidation risk—a completely different nature of risk.
The fees paid by borrowers are essentially for leverage and liquidity, not for obtaining credit eligibility they otherwise couldn't have.

Fintech lenders are the exact opposite. They provide unsecured credit to consumers, satisfying "buy now, pay later" demand; the spread exists to compensate for those who simply won't repay.

This is directly reflected in the loss data from actual defaults, and managing these default risks is the core work of underwriting.

So, which model is better? The answer depends on what you want to optimize for.

Fintech lending serves borrowers who don't have money now but want to consume first, so they must bear real underwriting and default risk. This is a brutal business. An early batch of digital lenders (like OnDeck, LendingClub, Prosper) have repeatedly teetered on the "brink of death."
Even if Affirm's business itself is running well, its stock price is still down about 60% from its all-time high—often because the market prices its underwriting revenue with SaaS valuation logic, without fully accounting for future inevitable credit losses.

DeFi lending is essentially a leverage business.

It does not serve "people without money," but users who already hold assets, don't want to sell, and just want to obtain liquidity, more like a margin account. There is no traditional credit decision here, the only criterion is the quality of the collateral.

This model is capital efficient, highly scalable, earning very thin spreads at enormous scale; but it also has clear boundaries—it's only useful for those already on-chain, with substantial assets, who want to earn yield or additional leverage without selling their assets.

Prediction Markets: Anyone's Guess?

Finally, let's look at Prediction Markets.

This is the newest battleground between Fintech and DeFi, and the strangest one. For decades, they were just academic "curiosities": economists loved them, regulators shunned them.


Iowa Electronic Markets ran election predictions on a small scale; Intrade had a brief boom before being shut down; more projects were directly classified as gambling or sports betting.

The idea of "trading real-world event outcomes, and these markets giving better predictions than polls or commentators"—remained theoretical for a long time.

This all changed in 2024 and accelerated during Trump's second term: Polymarket processed over $1 billion in election bets; Kalshi won its lawsuit against the CFTC and began offering political contracts to US users; Robinhood, as always unwilling to miss any trend, quickly launched event contracts; DraftKings, already effectively running a prediction market through daily fantasy sports, watched from the sidelines, sitting on a $15.7 billion market cap and $5.5 billion in annual revenue.

Prediction markets have finally moved from fringe experiments to the center stage of finance and crypto.

This sector went from niche experiment to mainstream in about 18 months—weekly prediction market trading volume has hit about $7 billion, setting new historical highs.

DraftKings had $51.7 billion in trading volume over the past 12 months; Polymarket reached $24.6 billion, about half of DraftKings, and it is still a crypto-native protocol, theoretically not allowed for US users; Kalshi, as a compliant US domestic alternative, had $9.1 billion in volume.

Just in terms of volume, Polymarket is quite competitive. It has built a liquid, global prediction market on Polygon, while Kalshi was still running between courtrooms for compliance qualifications.

But when we turn to revenue, the comparison starts to become unbalanced.

DraftKings generated $5.46 billion in revenue last year; Kalshi only $264 million; Polymarket, after turning on taker fees for 15-minute crypto markets, achieved an annualized revenue run rate of about $38 million.

This again reveals a familiar divide: In "scale," DeFi has caught up; but in "monetization ability," traditional finance and betting companies still hold an overwhelming advantage.

The core of the gap is the take rate—in the sports betting context, also called "hold."

DraftKings: Takes 10.57% for every dollar bet. This is the typical sports betting model—the house sets prices, provides odds, and manages risk, taking a substantial cut.

Kalshi: Takes 2.91%, as a financialized exchange model, this is lower and more in line with its positioning.

Polymarket: Only 0.15%. On $24.6 billion in volume, the revenue it can currently capture is very limited.

The conclusion is straightforward: The differentiation in prediction markets is not in "scale," but in "take structure."

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This is almost a replay of the DEX logic.


Polymarket does not focus on value capture, but on providing infrastructure for prediction markets: matching buyers and sellers, and settling contracts on-chain. It does not employ odds makers, manage balance sheets, or take the other side of your bet. The efficiency is indeed astonishing, but monetization is not the core goal at present.

However, investors clearly believe Polymarket will eventually monetize. Polymarket is valued at about $9 billion, corresponding to a 240x price-to-sales multiple;

Kalshi trades at a $11 billion valuation with $264 million in revenue, about 42x;

DraftKings' price-to-sales multiple is only 2.9x.

Venture capital firms can hardly stop throwing money at these platforms, while at the same time, "traditional players" like DraftKings and Flutter Entertainment (owner of FanDuel) see their stock prices under pressure.

This once again a familiar signal: Capital is paying a premium for "potential future monetization," not for current profits.

Polymarket's valuation implies one of two possibilities: either it will massively turn on the monetization switch in the future, or it will evolve into something much larger than just "prediction markets." At 200x+ revenue multiples, you're not buying a mature business, but a call option on a new financial primitive.

Maybe Polymarket will become the default trading venue for hedging any real-world event; maybe it will cover more sports, earnings, weather, or any binary outcome event; maybe it will raise its take rate from 0.15% to a higher level, and revenue will jump to billions overnight.

This is the purest form of the "convergence question": In the future, will it belong to regulated exchanges with clear take rates and compliance departments? Or will it belong to permissionless protocols where anyone can bet on anything from anywhere, and the "house takes almost no cut"?

Convergence

A few years ago, we couldn't put DeFi and Fintech on the same table for a direct comparison. Now, we are here.

The crypto world has built a set of financial infrastructure comparable to fintech in terms of trading volume, user scale, and asset size: stablecoin rails are more globalized than traditional payment institutions; Aave's loan scale exceeds Klarna's; Polymarket's trading volume is comparable to DraftKings'.


The technology works, and the products have found a large enough user base. But the problem is value capture.

In every category we examined, the conclusion is highly consistent: Compared to traditional fintech, the crypto system has lower take rates, and thus captures less economic value.

Crypto builds the most efficient, most open infrastructure, at the cost of dispersing value more widely.

Whether this is a bug or a feature depends on your stance: If you believe financial services will eventually evolve into commoditized public utilities, then crypto just accelerates this inevitable process; if you think companies must rely on revenue to survive, then most tokens still face severe challenges in value capture.

Regardless, convergence is already happening: Banks are piloting tokenized deposits; the New York Stock Exchange is researching tokenized stock trading; the total stablecoin supply has hit a new high of over $300 billion.


The established giants of fintech have seen the trend—they won't ignore it, they will absorb it.

The question for the next decade is actually very simple: Will crypto learn to build toll booths, or will fintech learn to walk the crypto path?


Our judgment is: Both will happen.

Preguntas relacionadas

QWhat are the key differences in take rates between Fintech payment processors and on-chain stablecoin payment rails?

AFintech payment processors like Fiserv (3.16%), Block (2.62%), and PayPal (1.68%) have significantly higher take rates compared to on-chain stablecoin payment rails, which typically range from about 1-9 basis points (0.01%-0.09%). Adyen is an exception with a lower 0.15% take rate due to its enterprise model.

QHow does the user base of crypto-native wallets like MetaMask and Phantom compare to traditional neobanks?

ACrypto wallets have achieved user bases comparable to major neobanks. MetaMask has approximately 30 million monthly active users, surpassing Wise, SoFi, and Chime. Phantom has 16 million users. This is similar to Nubank (93.5M MAU) and Revolut (70M users), though neobanks still have larger overall user numbers.

QIn the trading sector, how do DEX volumes compare to traditional brokers, and what is the implication for revenue?

ADEX volumes are competitive with traditional brokers. Hyperliquid handled $2.6T (over 50% of Robinhood's $4.6T volume), and combined major DEX volumes rival Coinbase's $1.4T. However, DEX take rates are much lower (e.g., Hyperliquid 0.03%, Uniswap 0.09%) versus traditional brokers (Robinhood 1.06%, Coinbase 1.03%), resulting in significantly less revenue capture despite similar volumes.

QWhat is the fundamental difference in business model between DeFi lending protocols and Fintech lending companies?

ADeFi lending (e.g., Aave, Morpho) is over-collateralized, functioning as a leverage business where users borrow against existing assets. It carries liquidation risk but no credit risk. Fintech lending (e.g., Affirm, Klarna) provides unsecured consumer credit, bearing actual underwriting and default risk. This results in Fintech companies earning much higher net interest margins (5-9%) compared to DeFi protocols (~1%).

QHow does the valuation of crypto-native prediction markets like Polymarket compare to traditional sports betting companies like DraftKings, and why?

APolymarket has a valuation of ~$9B, representing a 240x price-to-sales multiple based on its modest $38M annualized revenue. DraftKings has a much lower 2.9x P/S ratio on $5.46B revenue. This massive valuation disparity reflects investor expectations that Polymarket will either significantly increase its currently low 0.15% take rate in the future or evolve into a much larger platform for event trading, making it a speculative bet on future growth rather than current profitability.

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Crossing the 'Memory Wall': The Wafer-Level Revolution and Computing Power Routes in the AI Inference Era

In 2026, a historic shift occurred in AI as major cloud providers' inference spending surpassed training spending for the first time, signaling a move from "building large models" to "using large models." This shifts the core challenge from computing power to the "memory wall"—the bottleneck of data movement (model weights, activations, KV Cache) between external DRAM and processors, where energy and latency from data transfer far exceed computation itself. Companies like Nvidia face GPU idle time due to bandwidth limits. In contrast, Cerebras Systems adopts a radical "wafer-scale" approach with its Wafer-Scale Engine (WSE). Instead of cutting a silicon wafer into many chips, Cerebras uses almost the entire wafer as one massive chip (WSE-3). This design provides 44GB of on-chip SRAM, delivering memory bandwidth thousands of times higher than traditional HBM (e.g., 21 PB/s vs. Nvidia B200). For LLM inference, weights are streamed layer-by-layer from external MemoryX storage to the chip, avoiding HBM bottlenecks. This results in token generation speeds 1.5–5 times faster than Nvidia's B200 in some models and significant advantages in first-token latency and long-context tasks. Additionally, Cerebras's architecture offers much lower interconnect power consumption (0.15 pJ/bit vs. GPU's ~10 pJ/bit). However, Cerebras faces challenges: SRAM scaling has slowed with advanced nodes, limiting future capacity gains; the chip requires specialized liquid cooling and custom software stacks; and its external I/O bandwidth (150 GB/s) is low compared to NVLink, hindering multi-system scaling for very large models. Competition is intensifying. Major players are pursuing three paths: 1) Developing proprietary inference ASICs (e.g., Google TPU, Microsoft Maia), 2) Leveraging advanced packaging (e.g., TSMC's SoW) to democratize wafer-scale-like integration, potentially eroding Cerebras's process advantage within a few years, and 3) Exploring optical interconnects for ultimate bandwidth. Commercially, Cerebras is transitioning from a hardware vendor to a service provider, facing the immense challenge of building high-power, specialized data centers to meet large contracts (e.g., 250MW/year from 2026–2028). In conclusion, the AI inference era presents a fundamental architectural trade-off. Cerebras opts for extreme physical optimization for low-latency, single-task performance, while Nvidia prioritizes versatility and massive cluster throughput. The path forward remains uncertain, with technology and business models still evolving in the race toward advanced AI.

marsbitHace 45 min(s)

Crossing the 'Memory Wall': The Wafer-Level Revolution and Computing Power Routes in the AI Inference Era

marsbitHace 45 min(s)

Has Bitcoin's 'Rebound Ended', Officially Entering the Late Bear Market Phase?

**Title: Has Bitcoin's Rebound Ended, Entering the Late Bear Market Phase?** **Summary:** Bitcoin's price has declined by 13% this week, signaling a potential return to late-stage bear market conditions. The price fell to around $67k, positioned between the Realized Price and Realized Cap Weighted Average. For the first time since early 2022, the Short-Term Holder cost basis has dropped below this key average, confirming a hallmark of late-cycle bear markets. Profitability metrics have collapsed sharply. The 7-day average of the Realized Profit/Loss ratio plummeted from a local high of 3.16 to 0.29, mirroring the February panic sell-off. Critically, the 90-day average never breached the threshold of 2, indicating the recent rally to $82k was a bear market bounce, not a structural shift. Realized losses surged to $1.35 billion daily, with $770 million coming from Long-Term Holders selling at a loss. This accelerating redistribution of supply from weak to strong hands is a necessary but ongoing process for a market bottom. The rally stalled almost precisely at the aggregate cost basis (~$83k) of US spot Bitcoin ETF investors, turning that level into strong resistance and leaving the average ETF holder underwater again. Spot market flows have turned decisively negative, showing sellers are dominating order books despite the price drop. While a significant futures long liquidation event cleared over $400 million in leverage, providing a potential reset, sustained spot demand is yet to materialize. Options markets continue to price in higher future volatility (Implied Volatility) than recent price action (Realized Volatility) has shown, with a persistent skew towards put options, indicating ongoing demand for downside protection. In conclusion, multiple metrics point to a fragile market structure. Resistance at the ETF cost basis, accelerating realized losses, dominant spot selling, and cautious options pricing all suggest the bear market trend persists. A sustainable recovery likely requires a resurgence of spot demand, ETF holders returning to profit, and a clear reduction in selling pressure.

marsbitHace 45 min(s)

Has Bitcoin's 'Rebound Ended', Officially Entering the Late Bear Market Phase?

marsbitHace 45 min(s)

TechFlow Intelligence Agency: Anthropic Calls for Global Pause in AI Development While Preparing for Trillion-Dollar IPO; SpaceX IPO Roadshow Heats Up, But S&P 500 Rejects Fast-Track Inclusion

In today's TechFlow Intelligence Briefing, several major tech stories highlight a growing theme of trust and credibility gaps across AI, crypto, and finance. AI company Anthropic has publicly called for a global pause in AI development, citing risks from Claude's "recursive self-improvement." Ironically, this coincides with reports the company is preparing for a massive IPO targeting a near $1 trillion valuation. This perceived hypocrisy, coupled with widespread user complaints about Claude's declining performance, is sparking debate over whether the safety warning is genuine or a competitive tactic. Meanwhile, in a substantive security move, Anthropic open-sourced a framework for AI-powered vulnerability discovery. In the crypto market, Bitcoin's price drop below $61,000 triggered over $1.16 billion in liquidations, flipping the market into a state where more BTC is held at a loss than at a profit, a historical bearish signal. On the corporate front, SpaceX's highly anticipated IPO is generating immense Wall Street excitement, with Goldman Sachs projecting 100x revenue growth by 2030. However, the S&P 500 has refused to fast-track the company's inclusion post-IPO, potentially limiting immediate institutional demand. Separately, ByteDance's AI app Doubao lost over 6 million monthly active users after introducing a subscription model, highlighting the challenges of AI monetization. Other notable developments include Nvidia certifying HBM4 memory from Samsung, SK Hynix, and Micron; Cloudflare's acquisition of front-end tooling company VoidZero; and its CEO warning that bot traffic now exceeds human traffic online. The underlying narrative connects these events: a trust crisis. From AI firms' contradictory actions and crypto volatility to the clash between SpaceX's hyped narrative and institutional rules, a pattern is emerging where stated intentions and actual practices are increasingly misaligned.

marsbitHace 1 hora(s)

TechFlow Intelligence Agency: Anthropic Calls for Global Pause in AI Development While Preparing for Trillion-Dollar IPO; SpaceX IPO Roadshow Heats Up, But S&P 500 Rejects Fast-Track Inclusion

marsbitHace 1 hora(s)

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