Logo
v0.65.0
  • Overview

Guides

  • Installation Guide
  • Workflows
  • How-to Guides
  • Tutorials

Concepts

  • Explanations
    • Bayes Error Rate Estimation
    • Detecting Bias in Datasets
    • Clustering
    • Cleaning Datasets
    • Metadata Parity
    • Dataset Divergence
    • Detecting Drift in Datasets
    • Detecting Duplicates
    • Image Statistics Functions
    • Linter Class
    • Model Training Methods
    • Detecting Out of Distribution Data
    • Sufficiency
    • Upperbound on Average Precision
  • Glossary

Reference

  • Reference Guide
  • DataEval Change Log
  • About
DataEval
  • Explanations
  • Edit on GitHub

Explanations

These explanations dive into the what, why and theory behind each of DataEval’s features.

  • Bayes Error Rate Estimation

  • Cluster Assignment

  • Detecting Bias in Datasets

  • Cleaning Datasets

  • Evaluating Metadata Parity

  • Dataset Divergence

  • Detecting Drift in Datasets

  • Detecting Duplicates

  • Image Statistics Functions

  • Linter Class

  • Model Training Techniques

  • Detecting Out of Distribution Data

  • Sufficiency of Datasets per Model

  • Upperbound on Average Precision Estimation

Previous Next

© Copyright 2024, ARiA. Revision dd0e80e3.

Built with Sphinx using a theme provided by Read the Docs.