--- language: en pipeline_tag: summarization tags: - text2text-generation - internship - check-in - daily-tasks - bart license: mit datasets: - custom metrics: - rouge model-index: - name: Check-In Expansion Model (BART) results: - task: name: Text2Text Generation type: text2text-generation dataset: name: Custom Internship Check-in Dataset type: json metrics: - name: ROUGE-1 type: rouge value: 0.014810 --- # Check-In Expansion Model (BART fine-tuned) This is a fine-tuned version of **facebook/bart-base** for **internship/tech daily check-in expansions**. It takes a short input (a concise task description) and outputs a more polished, detailed check-in note. ## 🧩 Model Details - **Base Model**: [facebook/bart-base](https://huggingface.co/facebook/bart-base) - **Fine-tuned On**: 1130 examples (910 train / 220 eval) of custom internship-style check-in data. - **Task**: Expand a short input task into a more structured daily check-in. - **Language**: English ## 🛠️ Intended Uses - Writing structured **internship progress updates**. - Generating more detailed **check-in notes** from short inputs. - Automating team updates in workflows (e.g., via **n8n + Hugging Face API**). ## 🚀 Example **Input** ```text This morning I’ll spend some time organizing scripts and later test a few cases I wrote yesterday. ``` **Output** ```text Today, I’ll begin by organizing the scripts in my repository to make the project structure more manageable. Afterward, I’ll rerun the test cases I wrote yesterday to confirm they pass consistently. My objective is to reduce clutter, improve reliability, and ensure the codebase is stable before I move forward. ``` 📊 Evaluation Trained with ROUGE evaluation metrics. ROUGE-1: ~ 0.014810 ⚖️ License MIT License 📎 Citation If you use this model, please cite: @misc{checkin_bart_2025, title={Check-In Expansion Model (BART fine-tuned)}, author={Anderson, Dequan}, year={2025}, publisher={Hugging Face} }