AAVE jumps 9% after Fed cut – Can V4 upgrade fuel more upside?

ambcryptoPublicado a 2025-12-13Actualizado a 2025-12-13

Resumen

AAVE surged approximately 9% to around $205 following the Federal Reserve's interest rate cut, with increased attention on its upcoming V4 upgrade. The upgrade introduces a redesigned liquidation engine aimed at improving capital efficiency and risk controls. Market response was swift, with Open Interest rising by $34 million, indicating renewed leveraged trading interest. On-chain activity also strengthened, with receiving addresses nearly doubling to 1.2K, suggesting broader participation. Weekly protocol fees increased by $0.3 million, reaching $15.47 million. However, a significant liquidity cluster near $223 may act as a resistance level. While the upgrade has fueled momentum, high leverage could make the token sensitive to market volatility.

AAVE emerged as a key beneficiary of the recent Federal Reserve interest rate cuts.

The token gained roughly 9% on the day, trading near $205 at press time. That move unfolded as attention turned toward Aave’s [AAVE] upcoming V4 upgrade.

The upgrade introduced a redesigned liquidation engine, aimed at improving capital efficiency and strengthening risk controls across the protocol.

That shift appeared to resonate quickly with market participants, as both price action and derivatives data reflected renewed interest.

Liquidation engine sparked leverage rebound

Traders responded swiftly following the V4 announcement. Derivatives positioning, which had remained muted earlier, began to expand.

Open Interest climbed by approximately $34 million over the last 24 hours, according to CoinGlass data. That rise marked a clear reversal from the relatively flat positioning seen earlier in the week.

The increase suggested growing leveraged participation, particularly from larger traders willing to deploy capital alongside the upgrade narrative.

Even so, elevated Open Interest also raised sensitivity to sharp price swings, keeping volatility risks in focus.

Network activity picked up alongside price

On-chain activity strengthened in parallel with Derivatives expansion. Active Receiving Addresses increased sharply during the same period.

CryptoQuant data showed receiving addresses nearly doubled after the 7th of December. At press time, the metric stood near 1.2K.

That rise pointed to broader token movement across wallets, signaling increased participation rather than isolated whale transfers.

At the same time, Aave’s protocol revenue improved. Token Terminal data showed weekly network fees increased by roughly $0.3 million.

Total fees reached $15.47 million, reflecting income from lending interest and liquidation-related activity across the protocol.

That revenue growth aligned with higher loan usage, reinforcing the link between network fundamentals and price momentum.

Liquidity cluster defined upside focus

Despite the rally, Derivatives Heatmaps highlighted a clear liquidity barrier above current prices.

CoinGlass’ Liquidation Heatmap showed a $1.99 million liquidity cluster around the $223 level.

That zone stood out as a near-term price magnet if bullish momentum persisted and broader market conditions remained stable.

However, failure to sustain leverage support could expose AAVE to sharper pullbacks, given the recent build-up in derivatives positioning.


Final Thoughts

  • Aave’s recent move highlighted how protocol upgrades can quickly reshape trader behavior across derivatives and on-chain activity.
  • While leverage and fees supported momentum, elevated positioning suggested price action may remain sensitive to market conditions.

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Cómo comprar AAVE

¡Bienvenido a HTX.com! Hemos hecho que comprar Aave Protocol (AAVE) sea simple y conveniente. Sigue nuestra guía paso a paso para iniciar tu viaje de criptos.Paso 1: crea tu cuenta HTXUtiliza tu correo electrónico o número de teléfono para registrarte y obtener una cuenta gratuita en HTX. Experimenta un proceso de registro sin complicaciones y desbloquea todas las funciones.Obtener mi cuentaPaso 2: ve a Comprar cripto y elige tu método de pagoTarjeta de crédito/débito: usa tu Visa o Mastercard para comprar Aave Protocol (AAVE) al instante.Saldo: utiliza fondos del saldo de tu cuenta HTX para tradear sin problemas.Terceros: hemos agregado métodos de pago populares como Google Pay y Apple Pay para mejorar la comodidad.P2P: tradear directamente con otros usuarios en HTX.Over-the-Counter (OTC): ofrecemos servicios personalizados y tipos de cambio competitivos para los traders.Paso 3: guarda tu Aave Protocol (AAVE)Después de comprar tu Aave Protocol (AAVE), guárdalo en tu cuenta HTX. Alternativamente, puedes enviarlo a otro lugar mediante transferencia blockchain o utilizarlo para tradear otras criptomonedas.Paso 4: tradear Aave Protocol (AAVE)Tradear fácilmente con Aave Protocol (AAVE) en HTX's mercado spot. Simplemente accede a tu cuenta, selecciona tu par de trading, ejecuta tus trades y monitorea en tiempo real. Ofrecemos una experiencia fácil de usar tanto para principiantes como para traders experimentados.

322 Vistas totalesPublicado en 2024.12.11Actualizado en 2025.03.21

Cómo comprar AAVE

Discusiones

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 AAVE (AAVE).

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