The hype around scaling work across multiple AI agents often overshoots reality. In practice, you're better off focusing on executing 2 tasks simultaneously rather than trying to parallelize across an entire swarm. Running too many agents concurrently tends to create bottlenecks and diminishing returns. When it comes to optimizing on-chain agent performance and throughput, the sweet spot for most use cases sits right at that dual-execution model—it's where you get real efficiency gains without the coordination overhead that kills your actual productivity.
This page may contain third-party content, which is provided for information purposes only (not representations/warranties) and should not be considered as an endorsement of its views by Gate, nor as financial or professional advice. See Disclaimer for details.
12 Likes
Reward
12
7
Repost
Share
Comment
0/400
RugpullAlertOfficer
· 4h ago
Two agents running is enough; greediness with swarm actually underperforms. This is the truth.
View OriginalReply0
liquidation_surfer
· 4h ago
Two agents are enough to run; more than that just bottlenecks yourself. That's the truth.
View OriginalReply0
token_therapist
· 4h ago
Two agents run smoothly, but a swarm of them ends up failing. I've seen through this trick long ago.
View OriginalReply0
shadowy_supercoder
· 4h ago
Two agents are enough; the greedy approach will only lead to total collapse.
View OriginalReply0
BackrowObserver
· 4h ago
Running two agents is enough; more than that actually hampers efficiency. That's the truth.
View OriginalReply0
FlashLoanPhantom
· 4h ago
Running just two agents is enough; more than that actually hampers efficiency—that's the truth. Many projects are still touting swarm parallelization, but as soon as they run, it gets completely clogged.
View OriginalReply0
BearMarketGardener
· 4h ago
The dual execution model is the real deal; most of those hyping Swarm probably haven't tested the costs on the mainnet.
The hype around scaling work across multiple AI agents often overshoots reality. In practice, you're better off focusing on executing 2 tasks simultaneously rather than trying to parallelize across an entire swarm. Running too many agents concurrently tends to create bottlenecks and diminishing returns. When it comes to optimizing on-chain agent performance and throughput, the sweet spot for most use cases sits right at that dual-execution model—it's where you get real efficiency gains without the coordination overhead that kills your actual productivity.