import nbformat as nbf def create_hf_card(cells, name, base_model_name, base_model_version, dataset_name, output_dir, report_to): text = f""" card = ''' --- license: apache-2.0 tags: - generated_from_trainer - {base_model_name} - PyTorch - transformers - trl - peft - {report_to} base_model: {base_model_name}-{base_model_version} widget: - example_title: Pirate! messages: - role: system content: You are a pirate chatbot who always responds with Arr! - role: user content: "There's a llama on my lawn, how can I get rid of him?" output: text: >- Arr! 'Tis a puzzlin' matter, me hearty! A llama on yer lawn be a rare sight, but I've got a plan that might help ye get rid of 'im. Ye'll need to gather some carrots and hay, and then lure the llama away with the promise of a tasty treat. Once he's gone, ye can clean up yer lawn and enjoy the peace and quiet once again. But beware, me hearty, for there may be more llamas where that one came from! Arr! model-index: - name: {name} results: [] datasets: - {dataset_name} language: - en pipeline_tag: text-generation --- # Model Card for {name}: **{name}** is a language model that is trained to act as helpful assistant. It is a finetuned version of [{base_model_name}-{base_model_version}](https://huggingface.co/{base_model_name}-{base_model_version}) that was trained using SFTTrainer on of publicly available dataset [ {dataset_name}](https://huggingface.co/datasets/{dataset_name}). ## Training Procedure: The training code used to create this model was generated by [Menouar/LLM-FineTuning-Notebook-Generator](https://huggingface.co/spaces/Menouar/LLM-FineTuning-Notebook-Generator). ## Training hyperparameters The following hyperparameters were used during the training: ''' with open("{output_dir}/README.md", "w") as f: f.write(card) args_dict = vars(args) with open("{output_dir}/README.md", "a") as f: for k, v in args_dict.items(): f.write(f"- {{k}}: {{v}}") f.write("\\n \\n") """ title = """### Generating a model card (README.md)""" cells.append(nbf.v4.new_markdown_cell(title)) code_cell = nbf.v4.new_code_cell(text) cells.append(code_cell)