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future-of-dexs-amms-orderbooks-and-aggregators
Blog

Dynamic Fee Models Create Unintended Market Behaviors

Algorithmic fee adjustments, a core feature of next-gen AMMs, are not a panacea. They create perverse incentives for liquidity flight, latency arbitrage, and the gamification of fee prediction, undermining the stability they seek to provide.

introduction
THE FEE FRICTION

Introduction

Dynamic fee models, designed to optimize network economics, inadvertently create arbitrage opportunities and user experience fragmentation.

Dynamic fee models create arbitrage loops. Protocols like EIP-1559 and Solana's priority fee system use real-time demand to set prices, but this predictability allows sophisticated bots to front-run and sandwich users, extracting value from the very mechanism meant to improve efficiency.

Fee volatility fragments liquidity. A user comparing transaction costs between Arbitrum and Base faces unpredictable final costs, which pushes high-volume traders to private mempools like Flashbots Protect and fragments the public liquidity pool.

Evidence: On-chain data shows that during peak congestion, over 80% of Ethereum blocks contain arbitrage transactions, a direct behavioral outcome of its transparent fee market.

deep-dive
THE UNINTENDED CONSEQUENCES

The Mechanics of Instability

Dynamic fee models, designed for efficiency, create perverse incentives that fragment liquidity and degrade user experience.

Dynamic fee models fragment liquidity. Protocols like Uniswap V4 and Curve implement fee tiers based on pool volatility. This creates a race to the bottom where LPs migrate to the lowest-fee pools for the same asset pair, splitting TVL and increasing slippage for all traders.

Fee volatility becomes a tradable asset. Sophisticated actors treat gas price auctions and MEV opportunities as a primary revenue stream. This transforms fee markets from a utility into a speculative layer, where bots profit from predicting and front-running legitimate user transactions.

The user experience degrades into a lottery. Projects like EIP-1559 and Solana's priority fees aim for predictability but fail under load. Users face a binary outcome: overpay for certainty or risk transaction failure, creating a system that punishes naivety.

Evidence: During the 2023 memecoin frenzy, Ethereum base fees spiked over 200 gwei while Solana experienced widespread transaction failures, demonstrating how demand spikes break fee model assumptions and transfer value from users to validators and arbitrage bots.

DYNAMIC FEE MODELS

Protocol Fee Model Comparison & Observed Behaviors

Comparison of major DeFi protocol fee models, their intended mechanics, and the resulting on-chain user and MEV behaviors.

Fee Mechanism & MetricUniswap V3 (Static)EIP-1559 (Basefee Burn)GMX (Escrowed Rewards)dYdX (Maker-Taker)

Core Fee Model

Static LP fee tier (0.01%, 0.05%, 0.3%, 1%)

Base fee burned, priority tip to validator

Swap/borrow fees to staked $GMX/$GLP holders

Maker rebate (-0.02%), Taker fee (+0.05%)

Fee Adjusts Based On

Manual pool selection by LPs

Block space demand (algorithmic)

Open interest utilization & volatility

Order type (maker vs. taker)

Observed User Behavior

Liquidity fragmentation across tiers; arb bots dominate low-fee pools

Tip bidding wars during congestion; predictable basefee smoothing

Staking lock-up creates sell pressure on $GMX emissions

Wash trading to capture maker rebates; order flow internalization

MEV Surface Created

JIT liquidity sniping, fee tier arbitrage

Frontrunning fee updates, sandwiching predictable basefee drops

Oracle price update arbitrage on $GLP rebalancing

Backrunning large taker orders for rebate capture

Protocol Revenue (30D Avg)

$62.4M

$78.2M (burned)

$25.1M

$8.7M

Fee Volatility

Low (Static)

High (Priority Fee), Med (Basefee)

Medium (Utilization-based)

Low (Fixed Schedule)

Aligned With

Liquidity Provider yield

ETH holders (via burn) & network security

Protocol token stakers

Market makers & high-volume takers

Creates Perpetual Yield For

Passive LPs

No one (burned)

$GMX/$GLP stakers

dYdX DAO Treasury

counter-argument
THE UNINTENDED CONSEQUENCES

The Steelman: Are Dynamic Fees Inherently Bad?

Dynamic fee models, while efficient, create predictable market distortions that sophisticated actors exploit.

Dynamic fees create arbitrage windows. Protocols like Uniswap V3 and Curve adjust fees based on volatility or pool imbalance. This creates a predictable lag between price movement and fee adjustment, which MEV bots front-run.

Fee volatility discourages organic users. A user's transaction cost on Arbitrum or Base can swing 10x in minutes. This unpredictability pushes retail activity to fixed-fee L2s or sidechains like Polygon PoS, fragmenting liquidity.

The evidence is in the mempool. Analysis of EIP-1559 on Ethereum shows fee spikes consistently precede large NFT mints or DeFi liquidations, acting as a public signal for extractive bots. The market optimizes for the fee model, not user experience.

takeaways
DYNAMIC FEE MODELS

Key Takeaways for Builders

Algorithmic fee mechanisms designed to optimize network usage often create perverse incentives and systemic risks.

01

The Problem: Fee Spikes Create MEV-Driven Congestion

Dynamic models like EIP-1559's base fee can be gamed. MEV bots spam transactions during predictable spikes (e.g., NFT mints, airdrops), creating artificial congestion and pricing out real users. This turns a stability mechanism into a volatility amplifier.

  • Result: User TX costs can spike 1000%+ in seconds.
  • Systemic Risk: Creates predictable, profitable attack vectors for sophisticated actors.
1000%+
Cost Spike
~500ms
Bot Latency
02

The Solution: Time-Averaged or Subscription-Based Fees

Decouple fee payment from immediate execution. Protocols like Fuel Network and Starknet's fee model explore averaging. Users pay a predictable rate for a time window, while the protocol manages the volatile spot market.

  • Key Benefit: User experience shifts from volatility to predictability.
  • Key Benefit: Removes the incentive for bots to front-run fee updates, smoothing network demand.
-90%
UX Friction
Stable
Cost Forecast
03

The Problem: L2 Sequencer Profit Maximization vs. User Welfare

Sequencers running Arbitrum or Optimism bundles have a profit motive. A dynamic fee model allows them to capture value during high demand, but their optimal strategy may not align with minimizing user cost or maximizing chain throughput.

  • Result: Potential for rent extraction during network stress.
  • Conflict: Sequencer as profit-seeker vs. sequencer as public good.
>30%
Potential Margin
Centralized
Incentive
04

The Solution: Credibly Neutral Fee Auctions & MEV Redistribution

Implement a PBS (Proposer-Builder Separation) style auction for block space at the sequencer level. This is being explored by Espresso Systems and Astria. Fees are set by competitive bidding, and a portion of sequencer/MEV revenue is redistributed back to users or the DAO.

  • Key Benefit: Aligns sequencer revenue with market efficiency, not congestion.
  • Key Benefit: Can fund gas rebates or public goods, turning a cost into a yield mechanism.
Market
Efficiency
Redistributed
MEV
05

The Problem: Oracles & dApp Logic Break During Volatility

dApps with hardcoded gas limits or oracle price feeds (e.g., Chainlink) can fail when fees dynamically spike. Liquidations on Aave or Compound may not execute, and arbitrage bots for Uniswap pools become unprofitable, breaking core DeFi mechanics.

  • Result: Protocol insolvency risk during market stress.
  • Systemic Risk: Creates correlated failure points across the ecosystem.
High
Failure Risk
Correlated
Breakage
06

The Solution: Abstracted Gas & Intent-Based Architectures

Move beyond users paying gas directly. Systems like UniswapX, CowSwap, and Across use solver networks. Users submit intents ("I want this swap"), and solvers compete to fulfill them, bundling and optimizing gas payment on the backend.

  • Key Benefit: User never sees a gas fee; pays in output token.
  • Key Benefit: Solvers absorb volatility and optimize execution across layerzero and other domains, achieving better net prices.
Gasless
UX
Optimized
Execution
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