The post AAVE Price Prediction: Testing $215-225 Resistance Zone in Next 30 Days appeared on BitcoinEthereumNews.com. Zach Anderson Dec 15, 2025 12:04 AAVE The post AAVE Price Prediction: Testing $215-225 Resistance Zone in Next 30 Days appeared on BitcoinEthereumNews.com. Zach Anderson Dec 15, 2025 12:04 AAVE

AAVE Price Prediction: Testing $215-225 Resistance Zone in Next 30 Days



Zach Anderson
Dec 15, 2025 12:04

AAVE price prediction points to potential recovery toward $215-225 medium-term target, but must hold critical $190 support level with bullish MACD momentum building.

With AAVE trading at $194.75 and showing mixed technical signals, the cryptocurrency faces a critical juncture that could determine its direction over the coming weeks. Our comprehensive Aave forecast analysis reveals both bullish momentum indicators and key resistance levels that will shape the token’s near-term trajectory.

AAVE Price Prediction Summary

AAVE short-term target (1 week): $207-$210 (+6-8%)
Aave medium-term forecast (1 month): $215-$225 range
Key level to break for bullish continuation: $207.16
Critical support if bearish: $190.00

Recent Aave Price Predictions from Analysts

The latest AAVE price prediction landscape shows notable divergence among analysts. Blockchain.News maintains an optimistic medium-term AAVE price target of $215-$225, citing bullish MACD histogram readings and the token’s ability to hold above the crucial $190 support level. This aligns with our technical analysis showing strengthening momentum indicators.

Conversely, CoinMarketCap AI warns of potential downside below $195 in the short term, pointing to governance controversies that could weigh on sentiment. Yellow.com’s Aave forecast suggests a possible retreat to $230, though this appears to be a typo given current price levels, likely referring to a drop toward the $180-$190 zone based on double-top pattern analysis.

The consensus reveals a market at an inflection point, with medium-term bulls facing near-term technical headwinds.

AAVE Technical Analysis: Setting Up for Bullish Breakout

Current Aave technical analysis reveals several encouraging signals supporting our bullish AAVE price prediction. The MACD histogram reading of 1.3692 indicates building positive momentum, while the RSI at 51.88 sits in neutral territory with room for upward movement before reaching overbought conditions.

The Bollinger Bands positioning tells a compelling story, with AAVE trading at 0.67 of the band width, suggesting the token is approaching the upper band at $204.87 but hasn’t reached extreme overbought levels. This positioning often precedes continuation moves higher when supported by volume confirmation.

Volume analysis shows $12.17 million in 24-hour Binance spot trading, providing adequate liquidity for the next leg higher. The key resistance at $207.16 represents the immediate hurdle, followed by stronger resistance at $249.00.

Aave Price Targets: Bull and Bear Scenarios

Bullish Case for AAVE

Our primary AAVE price target focuses on the $215-$225 zone within the next 30 days. This target aligns with the 38.2% Fibonacci retracement from the recent decline and represents a logical profit-taking area for swing traders.

For this bullish Aave forecast to materialize, AAVE needs to break above $207.16 with volume confirmation. A successful break would likely trigger momentum buying toward $220, with potential extension to $235 if governance concerns subside.

Bearish Risk for Aave

The primary risk scenario involves a break below the critical $190 support level. Such a breakdown could trigger stops and accelerate selling toward the stronger support zone at $162.29. A deeper correction could test the $147.13 level, representing the major support from our analysis.

Traders should monitor the governance controversy developments closely, as negative news could override technical bullishness and force a retest of lower levels.

Should You Buy AAVE Now? Entry Strategy

Based on our AAVE price prediction, the optimal entry strategy involves scaling into positions on any pullback toward $190-$192. This approach provides favorable risk-reward with stops below $187.

For aggressive traders, a breakout entry above $207.16 with volume confirmation offers momentum participation, though at higher risk. Conservative investors should wait for a successful retest of $207 as support before adding exposure.

Position sizing should remain moderate given the mixed sentiment and governance uncertainties. Consider allocating no more than 2-3% of portfolio value initially, with plans to add on confirmed breakout.

AAVE Price Prediction Conclusion

Our Aave forecast anticipates a recovery toward $215-$225 over the next 30 days, supported by improving technical momentum and oversold conditions from recent declines. The bullish MACD histogram and neutral RSI provide the foundation for this move, with medium confidence in the prediction.

Key indicators to monitor include the $207.16 resistance break and governance news flow. A decisive break above $210 with volume would increase confidence in reaching the upper target range. Conversely, failure to hold $190 support would invalidate the bullish case and trigger our bearish scenario.

The prediction timeline spans 2-4 weeks for initial targets, with potential extension to $235-$250 if broader DeFi sentiment improves alongside AAVE’s technical breakout.

Image source: Shutterstock

Source: https://blockchain.news/news/20251215-price-prediction-aave-testing-215-225-resistance-zone-in

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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