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- #!/usr/bin/env python3
- # /// script
- # requires-python = ">=3.10"
- # dependencies = [
- # "transformers>=4.36.0",
- # "peft>=0.7.0",
- # "torch>=2.0.0",
- # "accelerate>=0.24.0",
- # "huggingface_hub>=0.20.0",
- # "sentencepiece>=0.1.99",
- # "protobuf>=3.20.0",
- # "numpy",
- # "optimum>=1.17.0",
- # "onnx>=1.15.0",
- # "onnxruntime>=1.17.0",
- # ]
- # ///
- """
- Convert QMD query expansion model to ONNX format for Transformers.js.
- Loads the base model, merges SFT and GRPO adapters, then exports to ONNX
- with quantization for browser deployment via Transformers.js + WebGPU.
- Usage:
- uv run convert_onnx.py --size 1.7B
- uv run convert_onnx.py --size 1.7B --no-upload
- uv run convert_onnx.py --base Qwen/Qwen3-1.7B \
- --sft tobil/qmd-query-expansion-1.7B-sft \
- --grpo tobil/qmd-query-expansion-1.7B-grpo \
- --output tobil/qmd-query-expansion-1.7B-ONNX
- Quantization options:
- --quantize q4 MatMulNBits 4-bit (default, smallest)
- --quantize q8 8-bit dynamic quantization
- --quantize fp16 FP16 (requires GPU export)
- --quantize none No quantization (FP32, ~7GB)
- """
- import argparse
- import json
- import os
- import shutil
- import sys
- from pathlib import Path
- import torch
- from huggingface_hub import HfApi, login
- from peft import PeftModel
- from transformers import AutoModelForCausalLM, AutoTokenizer
- PRESETS = {
- "1.7B": {
- "base": "Qwen/Qwen3-1.7B",
- "sft": "tobil/qmd-query-expansion-1.7B-sft",
- "grpo": "tobil/qmd-query-expansion-1.7B-grpo",
- "output": "tobil/qmd-query-expansion-1.7B-ONNX",
- },
- "4B": {
- "base": "Qwen/Qwen3-4B",
- "sft": "tobil/qmd-query-expansion-4B-sft",
- "grpo": "tobil/qmd-query-expansion-4B-grpo",
- "output": "tobil/qmd-query-expansion-4B-ONNX",
- },
- }
- def merge_adapters(base_model: str, sft_model: str, grpo_model: str) -> tuple:
- """Load base model, merge SFT + GRPO adapters, return (model, tokenizer)."""
- print(f"\nStep 1: Loading base model {base_model}...")
- model = AutoModelForCausalLM.from_pretrained(
- base_model, torch_dtype=torch.float32, trust_remote_code=True,
- )
- print(f"Step 2: Merging SFT adapter {sft_model}...")
- model = PeftModel.from_pretrained(model, sft_model)
- model = model.merge_and_unload()
- print(f"Step 3: Merging GRPO adapter {grpo_model}...")
- model = PeftModel.from_pretrained(model, grpo_model)
- model = model.merge_and_unload()
- tokenizer = AutoTokenizer.from_pretrained(base_model, trust_remote_code=True)
- return model, tokenizer
- def export_onnx(model, tokenizer, output_dir: str):
- """Export merged model to ONNX using Optimum."""
- from optimum.exporters.onnx import main_export
- # Save merged model to temp dir first (Optimum needs HF format on disk)
- merged_dir = "/tmp/merged_model_onnx"
- print(f"\nStep 4: Saving merged model to {merged_dir}...")
- model.save_pretrained(merged_dir, safe_serialization=True)
- tokenizer.save_pretrained(merged_dir)
- print(f"\nStep 5: Exporting to ONNX at {output_dir}...")
- main_export(
- model_name_or_path=merged_dir,
- output=output_dir,
- task="text-generation-with-past",
- device="cpu",
- fp16=False,
- )
- # Clean up temp merged dir
- shutil.rmtree(merged_dir, ignore_errors=True)
- def quantize_onnx(onnx_dir: str, quantize_type: str):
- """Quantize the exported ONNX model."""
- if quantize_type == "none":
- print("\nSkipping quantization (FP32).")
- return
- model_path = Path(onnx_dir) / "model.onnx"
- if not model_path.exists():
- # Optimum may produce decoder_model.onnx for text-generation-with-past
- candidates = list(Path(onnx_dir).glob("*.onnx"))
- if not candidates:
- print(" WARNING: No .onnx files found to quantize.")
- return
- model_path = candidates[0]
- print(f"\nStep 6: Quantizing {model_path.name} ({quantize_type})...")
- if quantize_type == "q4":
- try:
- from onnxruntime.quantization import matmul_nbits_quantizer
- quant = matmul_nbits_quantizer.MatMulNBitsQuantizer(
- model=str(model_path),
- block_size=32,
- is_symmetric=True,
- bits=4,
- )
- quant.process()
- q_path = model_path.with_name(
- model_path.stem + "_q4" + model_path.suffix,
- )
- quant.model.save(str(q_path))
- size_mb = q_path.stat().st_size / (1024 * 1024)
- print(f" Q4: {size_mb:.1f} MB -> {q_path.name}")
- except ImportError:
- print(" WARNING: onnxruntime quantization not available, trying alternative...")
- _quantize_dynamic(model_path, quantize_type)
- elif quantize_type == "q8":
- _quantize_dynamic(model_path, quantize_type)
- elif quantize_type == "fp16":
- _convert_fp16(model_path)
- def _quantize_dynamic(model_path: Path, qtype: str):
- """Dynamic quantization fallback."""
- from onnxruntime.quantization import quantize_dynamic, QuantType
- weight_type = QuantType.QUInt8 if qtype == "q8" else QuantType.QInt8
- q_path = model_path.with_name(
- model_path.stem + f"_{qtype}" + model_path.suffix,
- )
- quantize_dynamic(
- model_input=str(model_path),
- model_output=str(q_path),
- weight_type=weight_type,
- )
- size_mb = q_path.stat().st_size / (1024 * 1024)
- print(f" {qtype.upper()}: {size_mb:.1f} MB -> {q_path.name}")
- def _convert_fp16(model_path: Path):
- """Convert ONNX model to FP16."""
- import onnx
- from onnx import numpy_helper
- print(" Converting to FP16...")
- model = onnx.load(str(model_path))
- for initializer in model.graph.initializer:
- if initializer.data_type == onnx.TensorProto.FLOAT:
- np_data = numpy_helper.to_array(initializer)
- initializer.CopyFrom(
- numpy_helper.from_array(np_data.astype("float16"), initializer.name),
- )
- fp16_path = model_path.with_name(
- model_path.stem + "_fp16" + model_path.suffix,
- )
- onnx.save(model, str(fp16_path))
- size_mb = fp16_path.stat().st_size / (1024 * 1024)
- print(f" FP16: {size_mb:.1f} MB -> {fp16_path.name}")
- def write_transformers_js_config(onnx_dir: str):
- """Write Transformers.js compatibility config."""
- config_path = Path(onnx_dir) / "transformers_js_config.json"
- config = {
- "model_type": "text-generation",
- "quantized": True,
- }
- config_path.write_text(json.dumps(config, indent=2) + "\n")
- print(f" Wrote {config_path.name}")
- def upload_to_hub(
- onnx_dir: str,
- output_repo: str,
- base_model: str,
- sft_model: str,
- grpo_model: str,
- ):
- """Upload ONNX model to HuggingFace Hub."""
- print(f"\nStep 7: Uploading to {output_repo}...")
- api = HfApi()
- api.create_repo(repo_id=output_repo, repo_type="model", exist_ok=True)
- api.upload_folder(
- folder_path=onnx_dir,
- repo_id=output_repo,
- commit_message="Upload ONNX model",
- )
- readme = f"""---
- base_model: {base_model}
- tags: [onnx, transformers.js, webgpu, query-expansion, qmd]
- library_name: transformers.js
- ---
- # {output_repo.split("/")[-1]}
- ONNX conversion of the QMD Query Expansion model for use with
- [Transformers.js](https://huggingface.co/docs/transformers.js) and WebGPU.
- ## Details
- - **Base:** {base_model}
- - **SFT:** {sft_model}
- - **GRPO:** {grpo_model}
- - **Task:** Query expansion (lex/vec/hyde format)
- - **Format:** ONNX with Q4 quantization
- ## Usage with Transformers.js
- ```javascript
- import {{ AutoTokenizer, AutoModelForCausalLM }} from "@huggingface/transformers";
- const tokenizer = await AutoTokenizer.from_pretrained("{output_repo}");
- const model = await AutoModelForCausalLM.from_pretrained("{output_repo}", {{
- dtype: "q4",
- device: "webgpu",
- }});
- ```
- ## Prompt Format
- ```
- <|im_start|>user
- /no_think Expand this search query: your query here<|im_end|>
- <|im_start|>assistant
- ```
- """
- api.upload_file(
- path_or_fileobj=readme.encode(),
- path_in_repo="README.md",
- repo_id=output_repo,
- )
- def main():
- parser = argparse.ArgumentParser(description="Convert QMD model to ONNX")
- parser.add_argument(
- "--size", choices=PRESETS.keys(), help="Use preset config for model size",
- )
- parser.add_argument("--base", help="Base model (overrides preset)")
- parser.add_argument("--sft", help="SFT adapter (overrides preset)")
- parser.add_argument("--grpo", help="GRPO adapter (overrides preset)")
- parser.add_argument("--output", help="Output HF repo (overrides preset)")
- parser.add_argument(
- "--quantize",
- choices=["q4", "q8", "fp16", "none"],
- default="q4",
- help="Quantization type (default: q4)",
- )
- parser.add_argument(
- "--no-upload", action="store_true", help="Don't upload to HF Hub",
- )
- args = parser.parse_args()
- # Resolve config
- if args.size:
- preset = PRESETS[args.size]
- base_model = args.base or preset["base"]
- sft_model = args.sft or preset["sft"]
- grpo_model = args.grpo or preset["grpo"]
- output_repo = args.output or preset["output"]
- elif args.base and args.sft and args.grpo and args.output:
- base_model = args.base
- sft_model = args.sft
- grpo_model = args.grpo
- output_repo = args.output
- else:
- parser.error(
- "Either --size or all of --base/--sft/--grpo/--output are required",
- )
- model_name = output_repo.split("/")[-1]
- print(f"QMD ONNX Conversion: {model_name}")
- print("=" * 60)
- # Login
- hf_token = os.environ.get("HF_TOKEN")
- if hf_token:
- print("Logging in to HuggingFace...")
- login(token=hf_token)
- # Merge adapters
- model, tokenizer = merge_adapters(base_model, sft_model, grpo_model)
- # Export to ONNX
- onnx_dir = f"/tmp/onnx_output/{model_name}"
- os.makedirs(onnx_dir, exist_ok=True)
- export_onnx(model, tokenizer, onnx_dir)
- # Quantize
- quantize_onnx(onnx_dir, args.quantize)
- # Write Transformers.js config
- write_transformers_js_config(onnx_dir)
- # Upload
- if not args.no_upload:
- upload_to_hub(onnx_dir, output_repo, base_model, sft_model, grpo_model)
- print(f"\nDone! ONNX files at: {onnx_dir}")
- if not args.no_upload:
- print(f"Repository: https://huggingface.co/{output_repo}")
- if __name__ == "__main__":
- main()
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