--- library_name: sklearn tags: - tabular-regression - machine-learning - civil-engineering datasets: - custom license: mit --- # Model Name: c3cf ## Model Description **c3cf**, Cascade Forest models for predicting the Compressive strength of Coal-ash-incorporated Cement composites, were developed in the research article: [Coal ashes as supplementary cementitious materials: physicochemical property effects on hydration and strength, along with property-informed machine learning modeling](). They are tree-based ensemble models that implements the [deep forest](https://github.com/LAMDA-NJU/Deep-Forest) algorithm. - **Developed by:** Kangyi Cai @ Missouri S&T - **Model type:** Cascade Forest - **Language(s):** Python - **License:** MIT ## Uses & Limitations **c3cf** can make reasonable predictions for coal-ash-incorporated cement mortars, whose strength is in the range of 15-65 MPa, replacement level of coal ash is <50% by mass, and curing age is between 7 and 91 days. ## How to Get Started with the Model This repository contains a collection of regression models located in the `regs/` directory. Refer to the [kycai/c3cf](https://github.com/kycai/c3cf) for detailed guides. ```python from huggingface_hub import snapshot_download path = snapshot_download(repo_id="kycai23/c3cf") ``` ## Training & Evaluation Refer to the [research article]() mentioned above.