ModelHub XC bfd9609c86 初始化项目,由ModelHub XC社区提供模型
Model: karmakorma/sasbuddylm-v3-merged
Source: Original Platform
2026-05-30 03:59:21 +08:00

library_name, pipeline_tag, base_model, tags, language, license
library_name pipeline_tag base_model tags language license
transformers text-generation Qwen/Qwen2.5-Coder-7B-Instruct
sas
clinical-programming
code-generation
fine-tuned
en
apache-2.0

SASBuddyLM v3 (merged)

A clinical-SAS-programming-specialized LLM fine-tuned from Qwen2.5-Coder-7B-Instruct. This is the merged base+LoRA model suitable for direct deployment via HF Inference Endpoints (use the Text Generation Inference container for best performance).

Intended use

Generate SAS programs from TOON-formatted clinical specifications. Score on ClinicalCodeBench: 0.82 (L0-L5 SAS execution, 53 cases).

Deployment notes

  • Load in bfloat16 (torch_dtype=bfloat16 is set in config.json)
  • Recommended: Text Generation Inference (TGI) container on HF Inference Endpoints
  • Hardware: L4 (24 GB) fits in bf16; L40S (48 GB) has generous headroom
  • Chat template: ChatML, standard Qwen2.5 format (provided in tokenizer)

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Description
Model synced from source: karmakorma/sasbuddylm-v3-merged
Readme 2 MiB
Languages
Python 52.7%
Jinja 47.3%