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The Cartographer
Compiling Deterministic Structure into SLM Harnesses
April 19, 2026 Β· Grace Period Β· + Add venue
Authors
Zan Kai Chong, Hiroyuki Ohsaki, Bryan Ng
arXiv ID
2604.17450
Category
cs.AI: Artificial Intelligence
Citations
0
Abstract
Enterprise deployment of small language models (SLMs) is constrained by epistemic asymmetry: SLMs cannot self-correct reasoning errors, while frontier LLMs are prohibitively costly and face data sovereignty limits for high-volume use. We propose Semantic Gradient Descent (SGDe), a teacher-student framework that compiles agentic workflows into discrete execution plans comprising DAG topologies, system prompts, and deterministic executable code. The trailing "e" distinguishes SGDe from stochastic gradient descent. SGDe operates in a discrete semantic space where a frontier teacher generates natural-language critiques acting as directional gradients to iteratively refine the SLM's workflow artefacts. We formalise SGDe within a PAC learning framework, establishing sample-complexity bounds that enable convergence with as few as three training examples on targeted synthetic tasks by leveraging the teacher as a statistical prior. On a GSM-Hard-derived test set built via adversarial synthesis, compiled workflows reach 91.3% accuracy at m=5 and 99.3% at m=3 within the small-m regime motivated by Corollary 1, a +26.3% to +34.3% absolute improvement over state-of-the-art prompt optimisers. In the emerging paradigm of harness engineering, SGDe treats placement of deterministic code (which subtasks to delegate to a Python runtime versus retain as LLM calls) as a trace-driven, per-node optimisation target, generalising the whole-problem offloading of PAL and PoT. The teacher compiles two complementary deterministic structures: capability offloading, which delegates subtasks to Python when the SLM cannot execute them reliably, and structural consensus, which wraps variance-limited reasoning steps in fan-out/fan-in subgraphs aggregated by deterministic voting.
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