Skip to content

Metrics support #1240

Open
Open
@lutzroeder

Description

@lutzroeder

There are multiple ways to add metrics and metadata for a model:

  1. Built-in Format Support: Each format can include a built-in implementation to expose metadata and metrics. This data can be embedded in the model file, loaded from a known auxiliary file format, or computed by the format implementation itself. Each Model, Graph, Node, Value, and Tensor can expose this data via a metadata or metrics property.

  2. Attachment File: Metadata and metrics can be extended by loading an attachment file — a JSON file containing additional metadata and metrics. First, load the model file, then drag the attachment file into the app.
    Examples: mnist.onnx.zip, model.tflite.zip

  3. Automatic Tensor Metrics: Basic tensor metrics such as min, max, and std are automatically computed for all floating-point tensors with fewer than 8 million elements.

Note: Metrics and metadata are displayed in the sidebar for the currently selected model, graph, node, value, or tensor.

Metadata

Metadata

Assignees

No one assigned

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions