Within the Arbitrum chain environment, Aave V3 has aggregated a significant reserve of GHO. With a TVL of $3,879,407, it represents roughly 0.44% of the tracked sector liquidity.
This market breadth is crucial for traders requiring execution efficiency. As capital continues to flow into this contract, the protocol's resilience against external market shocks typically improves, fostering a more stable yield environment.
Mid-cap liquidity levels suggest a balanced risk profile. The pool can handle day-to-day volume but requires caution during high-volatility events. The market breadth of the liquidity pool is directly correlated to the asset's ability to absorb shock without drastic price displacement. With a calculated "Volatility Buffer" rating of Moderate, the smart contract demonstrates varying resistance to market manipulation.
Monitor price impact on orders exceeding $19,397. For traders looking to enter or exit positions in GHO, understanding the price impact is vital for capital preservation. Below is a theoretical projection of price impact based on constant product market maker formulae relative to total TVL:
| Trade Size | Est. Impact (Theoretical) | Risk Assessment |
|---|---|---|
| $1,000 | 0.0258% | Safe |
| $10,000 | 0.2578% | Safe |
| $100,000 | 2.5777% | CRITICAL ALERT |
*Note: Slippage values are theoretical estimates. Actual execution depends on routing paths and active order books.
In protocols like Aave V3, liquidity is not provided by a central bank, but by users. The TVL figure shown above ($3,879,407) is the sum of these user deposits.
When you trade against a pool, you push the price. This is called 'Slippage'.
The Whale Tolerance Threshold ($38,794) indicates the trade size at which slippage typically exceeds 0.5%. Staying below this limit is vital for capital preservation.
Data sourced via internal indexer. Active Tracking: 04 Dec 2025, 11:04 UTC. Disclaimer: Data is for informational purposes only. Past performance does not guarantee future results. Terms of Service apply.
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