Cost-Effective Agent Harnesses for Abstract Reasoning and Generalization on ARC-AGI-1
Researchers propose two cost-effective agent architectures—Explorer-Definer Pipeline and Reflective Orchestrator—achieving 57.50% and 67.25% pass@2 on ARC-AGI-1 at $0.25 and $0.62 per task respectively, without benchmark-specific training or heavy test-time compute.
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[Submitted on 7 Jul 2026]
Title:Cost-Effective Agent Harnesses for Abstract Reasoning and Generalization on ARC-AGI-1
View a PDF of the paper titled Cost-Effective Agent Harnesses for Abstract Reasoning and Generalization on ARC-AGI-1, by Kabir Moghe and 1 other authors
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Abstract:Recent progress on ARC-AGI-1 from disclosed architectures has come broadly from two regimes: heavy test-time compute over frontier models (evolutionary search, exhaustive sampling, extended chain-of-thought), or benchmark-specific training in which small models are fine-tuned on ARC data, often with task-specialized architectures. We study a third regime: an open-weight model in non-thinking mode (DeepSeek V3.2) under a strict budget, with no ARC-specific fine-tuning. We study what is recoverable through architecture alone, building agentic harnesses that decompose pattern-discovery and program-synthesis stages explicitly. First, we introduce an Explorer-Definer Pipeline that separates pattern discovery from executable transformation synthesis, implemented as a two-stage agent pipeline. Next, we present the Reflective Orchestrator, which augments the pipeline with autonomous exploration of new transformations when previous hypotheses fail on training pairs. On the ARC-AGI-1 public 400-task evaluation set, the pipeline reaches 57.50% pass@2 at \$0.25 per task, and the orchestrator reaches 67.25% pass@2 at \$0.62 per task. Together these architectures lift a 15.50% one-shot baseline by ~52 points without benchmark-specific training or heavy test-time compute. Furthermore, the orchestrator-driven lift tests a falsifiable diagnostic the pipeline produces; unbiased pass@k analysis suggests the pipeline is generation-bound, not selection-bound (selection via training-pair accuracy captures ~95% of the candidate ceiling) and predicts that significant improvement requires broader generation, not better ranking. The orchestrator implements this prediction via adaptive re-exploration and confirms it (unbiased pass@1 lift +9.81 pp, matching selection-mediated pass@2 lift). An additional pipeline ablation identifies its think tool as a significant component, with removal reducing pass@2 by 5.75 pp.
Subjects:
Artificial Intelligence (cs.AI)
Cite as: arXiv:2607.06764 [cs.AI]
(or arXiv:2607.06764v1 [cs.AI] for this version)
https://doi.org/10.48550/arXiv.2607.06764
arXiv-issued DOI via DataCite (pending registration)
Submission history
From: Kabir Moghe [view email] [v1] Tue, 7 Jul 2026 19:49:35 UTC (1,897 KB)
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