Debugging, monitoring and visualization for Python Machine Learning and Data Science
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Updated
Aug 30, 2023 - Jupyter Notebook
Debugging, monitoring and visualization for Python Machine Learning and Data Science
Entity Framework Core Power Tools - reverse engineering, migrations and model visualization in Visual Studio & CLI
moDel Agnostic Language for Exploration and eXplanation
📍 Interactive Studio for Explanatory Model Analysis
A multi-functional library for full-stack Deep Learning. Simplifies Model Building, API development, and Model Deployment.
Explanatory Model Analysis. Explore, Explain and Examine Predictive Models
Local Interpretable (Model-agnostic) Visual Explanations - model visualization for regression problems and tabular data based on LIME method. Available on CRAN
Visualize correlations between variables
Automated Shorthand Recognition using Optimized DNNs
Triplot: Instance- and data-level explanations for the groups of correlated features.
This repo helps to track model Weights, Biases and Gradients during training with loss tracking and gives detailed insight for Classification-Model Evaluation
Graphical User Interface to debug ROS systems
Display outputs of each layer in CNN models
ReactJS dashboard to visualize the model results of ShipCohortStudy
This repository contains credit card prediction project that I made using Streamlit and Python programming language.
ML Model Visualization
Powerful Python tool for visualizing and interacting with pre-trained Masked Language Models (MLMs) like BERT. Features include self-attention visualization, masked token prediction, model fine-tuning, embedding analysis with PCA/t-SNE, and SHAP-based model interpretability.
This repository provides a collection of code and implementations for various chaos theory models. It aims to facilitate the understanding and exploration of chaos theory concepts and inspire further research and experimentation in this field.
Yellowbrick wraps the scikit-learn and matplotlib to create publication-ready figures and interactive data explorations. It is a diagnostic visualization platform for machine learning that allows us to steer the model selection process by helping to evaluate the performance, stability, and predictive value of our models and further assist in dia…
This program demonstrates the use of a decision tree classifier to recommend music genres based on user demographics. Visualizes the decision-making process of the model using Graph viz. The accuracy score provides a quantitative measure of how effectively the model predicts user preferences.
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