DS1 spectrogram: ATLAS: Benchmarking and Adapting LLMs for Global Trade via Harmonized
  Tariff Code Classification

ATLAS: Benchmarking and Adapting LLMs for Global Trade via Harmonized Tariff Code Classification

September 22, 20252509.18400

Authors

Pritish Yuvraj,Siva Devarakonda

Abstract

Accurate classification of products under the Harmonized Tariff Schedule (HTS) is a critical bottleneck in global trade, yet it has received little attention from the machine learning community. Misclassification can halt shipments entirely, with major postal operators suspending deliveries to the U.S.

due to incomplete customs documentation. We introduce the first benchmark for HTS code classification, derived from the U.S.

Customs Rulings Online Search System (CROSS). Evaluating leading LLMs, we find that our fine-tuned Atlas model (LLaMA-3.3-70B) achieves 40 percent fully correct 10-digit classifications and 57.5 percent correct 6-digit classifications, improvements of 15 points over GPT-5-Thinking and 27.5 points over Gemini-2.5-Pro-Thinking.

Beyond accuracy, Atlas is roughly five times cheaper than GPT-5-Thinking and eight times cheaper than Gemini-2.5-Pro-Thinking, and can be self-hosted to guarantee data privacy in high-stakes trade and compliance workflows. While Atlas sets a strong baseline, the benchmark remains highly challenging, with only 40 percent 10-digit accuracy.

By releasing both dataset and model, we aim to position HTS classification as a new community benchmark task and invite future work in retrieval, reasoning, and alignment.

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