Show HN: Arch-Router – 1.5B model for LLM routing by preferences, not benchmarks

18 adilhafeez 3 7/1/2025, 5:13:11 PM
Hi HN — we're the team behind Arch (https://github.com/katanemo/archgw), an open-source proxy for LLMs written in Rust. Today we're releasing Arch-Router (https://huggingface.co/katanemo/Arch-Router-1.5B), a 1.5B router model for preference-based routing, now integrated into the proxy. As teams integrate multiple LLMs - each with different strengths, styles, or cost/latency profiles — routing the right prompt to the right model becomes a critical part of the application design. But it's still an open problem. Most routing systems fall into two camps:

- Embedding-based routers use intent classifiers — label a prompt as “support,” “SQL,” or “math,” then route to a matching model. This works for simple tasks but breaks down in real conversations. Users shift topics mid-conversation, task boundaries blur, and product changes require retraining classifiers.

- Performance-based routers pick models based on benchmarks like MMLU or MT-Bench, or based on latency or cost curves. But benchmarks often miss what matters in production: domain-specific quality or subjective preferences like “Will legal accept this clause?”

Arch-Router takes a different approach: route by preferences written in plain language. You write rules like “contract clauses → GPT-4o” or “quick travel tips → Gemini Flash.” The router maps the prompt (and conversation context) to those rules using a lightweight 1.5B autoregressive model. No retraining, no fragile if/else chains. We built this with input from teams at Twilio and Atlassian. It handles intent drift, supports multi-turn conversations, and lets you swap in or out models with a one-line change to the routing policy. Full details are in our paper (https://arxiv.org/abs/2506.16655), but here's a snapshot:

Specs:

- 1.5B params — runs on a single GPU (or CPU for testing)

- No retraining needed — point it at any mix of LLMs

- Cost and latency aware — route heavy tasks to expensive models, light tasks to faster/cheaper ones

- Outperforms larger closed models on our conversational routing benchmarks (details in the paper)

Links:

- Arch Proxy (open source): https://github.com/katanemo/archgw

- Model + code: https://huggingface.co/katanemo/Arch-Router-1.5B

- Paper: https://arxiv.org/abs/2506.16655

Comments (3)

tmaly · 57m ago
do you think it would be possible to quantize this model and still get good results?
sparacha · 55m ago
yes - we have already published a quantized version here: https://huggingface.co/katanemo/Arch-Router-1.5B.gguf. The performance difference with a quant version is negligible. I'll run another analysis and update the thread shortly
sparacha · 3h ago
Hi HN! I am one of the co-authors of the paper. If there are any questions about our approach, I would love to answer them.