AAVE drops 10% – Assessing if $1 trillion in loans can spark rebound

ambcryptoОпубликовано 2026-01-25Обновлено 2026-01-25

Введение

AAVE's price dropped nearly 10% by January 25th, extending its pullback toward the mid-$150s. Despite the decline, selling pressure remained measured, with RSI neutral and MACD showing a weakening bearish trend. Open Interest held steady around $130 million, and Funding Rates stayed positive, indicating traders are not rushing to exit and long positions still dominate. The network is approaching a major milestone of $1 trillion in cumulative loans issued, reflecting frequent liquidity reuse through features like flash loans and multi-chain expansion rather than simple capital inflows. This demonstrates strong on-chain credit demand, reaching volumes comparable to large U.S. banks.

Aave was down nearly 10% the week at 25th of January, but the market response hasn’t been quite as dramatic. Open Interest [OI] is steady and Funding Rates are still positive, so traders are in no rush to exit.

On the other hand, the network is approaching a major milestone in total loans issued – this disconnect is worth a closer look.

AAVE slips, but selling pressure is measured

AAVE extended its pullback from the $170-$175 zone and drifted toward the mid-$150s. Price action showed a series of lower closes, but the decline hadn’t yet turned aggressive. RSI was neutral, so the pace was quite weak.

MACD remained in negative territory, so there was a short-term bearish trend. However, the histogram had started to go flat, so the downtrend isn’t quite as strong as we think.

Volume profile data also showed strong activity at the time of writing, so buyers were still present.

Derivatives numbers look steady

Over the past week, Aave’s [AAVE] Aggregated Open Interest [OI] was largely stable around the $130 million mark; traders haven’t rushed to close their positions despite the pullback.

Funding Rates also stayed positive for most of the period. Long positions were dominating, with traders willing to pay a premium to stay exposed.

Importantly, there was no spike or collapse in either metric, so no one’s panicking yet.

The big picture

The protocol is now closing in on $1 trillion in cumulative loans originated. This milestone is indicative of how frequently its liquidity is reused, rather than by simple capital inflows.

Features like flash loans, more efficient borrowing tools, and expansion across multiple chains have let the same pool of funds to power trade, arbitrage, and liquidate repeatedly. Over time, the demand for on-chain credit has pushed loan volumes to levels comparable with large U.S. banks.


Final Thoughts

  • AAVE’s price may be down 10%, but traders are still optimistic.
  • The network is nearing $1 trillion in loans issued!

Связанные с этим вопросы

QWhat was the percentage drop in AAVE's price as of January 25th, and what was the general market response to this decline?

AAAVE was down nearly 10% as of January 25th. The market response wasn't dramatic, as Open Interest remained steady and Funding Rates stayed positive, indicating traders were not rushing to exit.

QWhat two key derivative metrics suggested that traders were not panicking and remained optimistic about AAVE?

AThe two key metrics were Aggregated Open Interest (OI), which was stable around $130 million, and positive Funding Rates, which indicated that long positions were dominant.

QWhat major milestone is the AAVE network approaching, and what does this figure represent?

AThe AAVE network is approaching $1 trillion in cumulative loans originated. This figure represents how frequently its liquidity is reused through features like flash loans, rather than just from simple capital inflows.

QAccording to the RSI and MACD indicators, what was the nature of the short-term price trend for AAVE?

AThe RSI was neutral, suggesting a weak pace of decline. The MACD was in negative territory, confirming a short-term bearish trend, but its histogram was flattening, indicating the downtrend was not very strong.

QWhat specific AAVE features were cited as reasons for the efficient reuse of its liquidity pools?

AThe features cited were flash loans, more efficient borrowing tools, and expansion across multiple chains, which allow the same pool of funds to be used repeatedly for trade, arbitrage, and liquidations.

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