2 个仓库
Frameworks for developing custom data processing backends and frontend rendering components for analytical dashboards.
Distinct from Data Visualization Dashboards: Distinct from Data Visualization Dashboards by focusing on the developer API for creating new plugin components rather than the end-user dashboard itself.
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TensorBoard is a visualization toolkit for tracking and analyzing machine learning model training progress and performance using TensorFlow event logs. It provides a monitoring dashboard for plotting scalar metrics, tensor distributions, and training curves, and includes specialized tools for visualizing neural network computational graphs and projecting high-dimensional embeddings. The project enables side-by-side comparison of multiple training runs to analyze the impact of hyperparameters on model outcomes. It also features a high-dimensional embedding projector and a graph visualizer for
Supports building custom backends for data processing and frontends to render specialized data visualizations within the dashboard.
Lit is a machine learning interpretability framework and model debugging tool designed to analyze model behavior and performance. It serves as an interpretability dashboard for large language models and a general performance analyzer for text, image, and tabular datasets. The project distinguishes itself through a comprehensive suite of interpretability tools, including salience map generation for feature attribution, the creation of synthetic and counterfactual examples to test robustness, and the projection of high-dimensional embeddings into visual spaces via UMAP or PCA. It further enable
Provides a framework for developing custom frontend rendering components and backends for the analysis dashboard.