SWE-Pruner trains a lightweight neural skimmer to perform task-aware pruning of code contexts for LLM agents, delivering 23-54% token reduction on SWE-Bench Verified with improved success rates and up to 14.84x compression on LongCodeQA.
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AgentStop uses execution signals to early-terminate failing local LLM agent trajectories, cutting energy use 15-20% with minimal utility loss.
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SWE-Pruner: Self-Adaptive Context Pruning for Coding Agents
SWE-Pruner trains a lightweight neural skimmer to perform task-aware pruning of code contexts for LLM agents, delivering 23-54% token reduction on SWE-Bench Verified with improved success rates and up to 14.84x compression on LongCodeQA.
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AgentStop: Terminating Local AI Agents Early to Save Energy in Consumer Devices
AgentStop uses execution signals to early-terminate failing local LLM agent trajectories, cutting energy use 15-20% with minimal utility loss.