Why Solve It Twice? Hierarchical Accumulation of Skills for Transfer-Efficient ML Engineering
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Abstract
ML engineering agents waste compute rediscovering known techniques because every competition is a cold start.
We present HASTE, a hierarchical multi-agent system that organizes cross-competition knowledge into three scope tiers (global, domain, and competition-specific), each coupled to a matching agent level.
An orchestrator coordinates domain specialists and promotes learning between tiers via LLM-driven abstraction.
A controlled ablation provides evidence for scoped loading: holding a 159-skill inventory constant across 8 competitions, tiered loading achieves a 100% medal rate while flat loading reaches only 62.5%, the same medal rate as loading no skills, and consumes 2x the output tokens.
On the full MLE-Bench Lite benchmark (22 Kaggle competitions), HASTE reaches a medal rate of 77.3% using Claude Sonnet 4.6 at 12h per competition.
In a cold-start run, the system begins with no accumulated skills.
In warm-start runs, it reloads skills learned from earlier competitions, using only global and domain-level skills for transfer across competitions.
Warm starts use 52% fewer refinement iterations, and the fraction of proposed changes kept by the agent rises from 42% at low inventory to 85% once 50+ skills are available.
These results suggest that better knowledge organization can partly substitute for model strength and compute budget in ML-engineering agents.