smolcode-coder-1.5b-tools
A LoRA fine-tune of Qwen2.5-Coder-1.5B-Instruct that teaches the model to emit
native <tool_call> function calls, so a 1.5B coder model can actually drive an
agentic write → run → fix → verify loop.
Built for smolcode — an SLM-optimized agentic coding assistant — for the Hugging Face Build Small hackathon.
Why
Out of the box, small Qwen-Coder models describe tool calls as plain-text/```json
instead of emitting the native <tool_call> token (id 151657) that runtimes (Ollama,
llama.cpp) parse into OpenAI-style tool_calls — which breaks agentic loops. This
fine-tune closes that gap on a tiny (1.5B) model: 100% native <tool_call> emission
in free generation on held-out prompts (base model: 0%).
Results
- Native tool-call rate: 100% (16/16 held-out prompts) — the release gate.
- Agentic bench (smolcode pass@1, 10 tasks): 9/10 as the entry tier of a 1.5B→8B→30B ladder, solving 7/10 entirely on its own (2–16s each). For comparison the all-Granite ladder (3B entry) scores 10/10 — the 1.5B carries the same standalone load as a 2×-larger 3B.
- Train loss: 0.138 (3 epochs, assistant-only loss).
Training
- Base: Qwen/Qwen2.5-Coder-1.5B-Instruct
- Method: bf16 LoRA (r=16, α=32) on attention + MLP projections, plus full
training of
embed_tokens+lm_head(modules_to_save) — required so the model can output the<tool_call>special token, which LoRA on attention/MLP alone cannot. Assistant-only loss (loss on tool calls + final answers only). - Data: NousResearch/hermes-function-calling-v1 (breadth) + synthetic smolcode
tool-use trajectories (sharpness), all rendered through the same
apply_chat_template(tools=...)used at inference — training target is byte-identical to the served prompt (fixes the v1 train/inference template mismatch). - Schedule: 3 epochs, full 2048 sequence length. Trained on Modal (A100).
Serving — read this, two non-obvious requirements
- Serve via the GGUF, not the safetensors directly. Ollama's bf16-safetensors
auto-import produces garbage (
??????) for this model. Use the includedsmolcode-1.5b-q4_k_m.gguf(converted with llama.cppconvert_hf_to_gguf.py):ollama create smolcode-coder-1.5b:tools -f Modelfile # Modelfile is in this repo repeat_penalty/repetition_penaltyMUST be 1.0. The tool system prompt literally contains the<tool_call>token, so any penalty > 1 suppresses the model from emitting it (you'll see a stray token + bare JSON instead). The includedModelfilesetsPARAMETER repeat_penalty 1.0. For rawtransformers.generate, passrepetition_penalty=1.0.
With those, Ollama's /v1/chat/completions returns proper native tool_calls.
Use (transformers)
Standard Qwen2.5 chat template with tools=; greedy, repetition_penalty=1.0. The
model responds with <tool_call>{"name": ..., "arguments": ...}</tool_call>.
Files
model.safetensors+ tokenizer/config — the merged model (lm_head untied).smolcode-1.5b-q4_k_m.gguf— quantized GGUF for serving.Modelfile— Ollama import recipe (template +repeat_penalty 1.0).
License
Apache-2.0 (inherits from the base model).
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Base model
Qwen/Qwen2.5-1.5B