Polygon vs. Ethereum: Why ‘micro’ AI agents are winning fee war on POL

ambcryptoPublicado a 2026-02-17Actualizado a 2026-02-17

Resumen

Polygon has surpassed Ethereum in daily transaction fees, a significant milestone, with its daily fees exceeding $300,000. This surge reflects a notable increase in network activity, as daily transactions on Polygon also rose by approximately 50% over the past week. A key driver behind this growth is the rise of payment-focused AI agents, which have boosted micro-transaction volumes. Additionally, the adoption of more crypto card products and payment apps has contributed to increased activity in small and medium transfer categories. Data indicates that monthly payment transfers on Polygon nearly doubled to 2 million in January and could reach around 2.3 million in February if the current pace continues. The increased network usage is also positively impacting POL's price, which climbed roughly 15% in the past week, moving from around $0.09 to briefly test above $0.11 before settling near $0.107. While the token remains in a steady upward trend, some indicators suggest the rally may be slowing, though continued network growth could support further price stability and potential upside. Overall, Polygon's flipping of Ethereum in daily fees and its rising transaction volume signal strong momentum for the network.

Polygon has pulled ahead of Ethereum in daily transaction fees, and that doesn’t happen very often. If this pace continues, February could turn out to be a surprisingly strong month for Polygon!

Activity is picking up!

Polygon has pulled off a big win, overtaking Ethereum [ETH] in daily transaction fees! Recent data showed Polygon’s [POL] fees crossing $300K, a jump that proves rising network usage.

Source: X

This pace wasn’t limited to fees either.

Source: X

Daily transactions on Polygon have climbed over the past week, rising about 50% in just seven days.

Payments play a big role

Data per Dune showed that monthly payment transfers on the network were close to 2 million in January, nearly doubling from under 1 million just two months earlier.

Source: X

A major cause seems to be the rise of payment-focused AI agents, which boosted smaller “micro” transactions. At the same time, more crypto card products and payment apps helped increase activity in the small and medium transfer categories.

At the current pace, February could see transfers reach around 2.3 million.

POL price holds gains

All this growth is showing up in the price charts too!

Over the past week, the token climbed roughly 15%, pushing from the $0.09 range to briefly test above $0.11. This was before it settled near $0.107 at press time.

Source: TradingView

POL moved within a steady upward range, which means buyers were still in control.

However, the rally may be slowing. The RSI was in a healthy zone, while the MACD showed lesser bullish strength after the recent push higher.

The trend is still positive, but the market may be taking a moment after a quick run-up. If network growth continues at the current pace, price stability above this range could cause further upside.


Final Summary

  • Polygon flipping Ethereum in daily fees above $300K is big news for the former.
  • If transactions keep rising, POL price momentum could see stronger upside!
Next: Worldcoin slips below $0.40 as whale dumps $5.7 mln WLD on Binance
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Preguntas relacionadas

QWhat recent achievement did Polygon accomplish in comparison to Ethereum?

APolygon overtook Ethereum in daily transaction fees, with its fees crossing $300K.

QBy what percentage did daily transactions on Polygon increase over the past week?

ADaily transactions on Polygon rose by about 50% in just seven days.

QWhat was a major factor contributing to the rise in small and medium transfers on Polygon?

AThe rise of payment-focused AI agents and more crypto card products and payment apps helped boost smaller 'micro' transactions.

QHow much did the POL token climb in price over the past week?

AThe POL token climbed roughly 15%, moving from the $0.09 range to briefly test above $0.11.

QWhat does the projected transfer volume for February indicate based on current trends?

AAt the current pace, February could see transfers reach around 2.3 million.

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296 Vistas totalesPublicado en 2024.12.11Actualizado en 2026.06.02

Cómo comprar POL

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Bienvenido a la comunidad de HTX. Aquí puedes mantenerte informado sobre los últimos desarrollos de la plataforma y acceder a análisis profesionales del mercado. A continuación se presentan las opiniones de los usuarios sobre el precio de POL (POL).

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