My Model Name
Model description
This is a text generation model for SNOMED-CT. As it is text-generation, it is prone to hallucination and should not be used for any kind of production purpose but it was fun to build. It is based on Mixtral7b and was fine-tuned on a part of the SNOMED-CT corpus then tested against a gold-standard.
How to use
Provide code snippets on how to use your model.
from transformers import AutoModelForCausalLM, AutoTokenizer
model_name = "MattStammers/chatty_mapper"
model = AutoModelForCausalLM.from_pretrained(model_name)
tokenizer = AutoTokenizer.from_pretrained(model_name)
# Your example here
Model Performance
Accuracy: 0.0
Precision: 0.0
Recall: 0.0
Example DataFrame head: ParameterName SNOMEDCode \
0 *Heart rate 364075005
1 Peripheral oxygen saturation 431314004
2 Mean arterial pressure 1285244000
3 *Diastolic blood pressure 271650006
4 *Systolic blood pressure 271649006
ExtractedSNOMEDNumbers CorrectPrediction
0 3222222 False
1 4222222000000000000000000000000000000000000000... False
2 NaN False
3 NaN False
4 NaN False
Limitations and bias
It is prone to wandering and certainly not medical-grade.
Acknowledgments
Thanks to the Mixtral AI team for creating the base model.
Save the model card in the model directory with open(f"models/chatty_mapper/README.md", "w") as f: f.write(model_card_content)
Use Hugging Face's Repository class for Git operations repo = Repository(local_dir=model_save_path, clone_from=repo_url) repo.git_add() repo.git_commit("Initial model upload with model card and metrics") repo.git_push()
print(f"Model, model card, and metrics successfully pushed to: https://huggingface.co/MattStammers/chatty_mapper")
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