A python library for decision tree visualization and model interpretation.
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Updated
Mar 6, 2025 - Jupyter Notebook
A python library for decision tree visualization and model interpretation.
A multi-functional library for full-stack Deep Learning. Simplifies Model Building, API development, and Model Deployment.
Overview of different model interpretability libraries.
A set of tools for leveraging pre-trained embeddings, active learning and model explainability for effecient document classification
FastAI Model Interpretation with LIME
Official implementation of "HyPepTox-Fuse: An interpretable hybrid framework for accurate peptide toxicity prediction fusing protein language model-based embeddings with conventional descriptors"
Overview of machine learning interpretation techniques and their implementations
This repository has all of the assignments I had to do for the Standard Bank Data Science Virtual Experience Program. 📉👨💻📊📈
Integrating multimodal data through heterogeneous ensembles
Implémentation d'un modèle de scoring (OpenClassrooms | Data Scientist | Projet 7)
Model Interpretability via Hierarchical Feature Perturbation
The tasks I was required to complete as a part of the BCG Open-Access Data Science & Advanced Analytics Virtual Experience Program are all contained in this repository. 📊📈📉👨💻
Using LIME and SHAP for model interpretability of Machine Learning Black-box models.
Advise one of Cognizant’s clients on a supply chain issue by applying knowledge of machine learning models.
Successfully established a machine learning model to predict the approval status of a health insurance claim based on patient and claim characteristics, using XGBoost with SHAP-based interpretability and deployed via Streamlit.
Analyzed customer churn using transaction data. Built ML model to predict lapses. Dataset includes customer status, collection/redemption info, and program tenure. Delivered business presentation outlining modeling approach, findings, and churn reduction strategies.
This repository provides a practical, data-centric AI/ML module for biomedical researchers. It covers R programming, data preparation, model building, and AI/ML applications using AWS SageMaker and Jupyter notebooks.
This repository contains the LifeExpectancy Prediction Project, a comprehensive data science project aimed at predicting life expectancy based on various health, economic, and social factors. The project includes steps for data preprocessing, exploratory data analysis (EDA), model selection, training, hyperparameter tuning, and model interpretation
Exploratory data analysis, data modelling, model building and interpretation, machine learning production, quality assurance
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