Description
There are multiple ways to add metrics and metadata for a model:
-
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
, andTensor
can expose this data via ametadata
ormetrics
property. -
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 -
Automatic Tensor Metrics: Basic tensor metrics such as
min
,max
, andstd
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.