Prediction settings: Image and text classification
Overview
To score (predict) new data through the H2O Hydrogen Torch UI (with a built model), you need to specify certain settings refer as prediction settings (which are comprised of certain dataset, prediction, and environment settings similar to those utilized when creating an experiment). Below observe the prediction settings for an image and text classification model.
General settings
Experiment
This setting defines the model (experiment) H2O Hydrogen Torch utilizes to score new data.
Prediction name
This setting defines the name of the prediction.
Dataset settings
Dataset
This setting specifies the dataset to score.
Test dataframe
This setting defines the file containing the test dataset that H2O Hydrogen Torch scores.
- Image regression | 3D image regression | Image classification | 3D image classification | Image metric learning | Text regression | Text classification | Text sequence to sequence | Text span prediction | Text token classification | Text metric learning | Audio regression | Audio classification | Graph node classification | Graph node regression
- Defines a CSV or Parquet file containing the test dataset that H2O Hydrogen Torch utilizes for scoring.
noteThe test dataset should have the same format as the train dataset but does not require label columns.
- Image object detection | Image semantic segmentation | 3D image semantic segmentation | Image instance segmentation
- Defines a Parquet file containing the test dataset that H2O Hydrogen Torch utilizes for scoring.
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- Defines a Parquet file containing the test dataset that H2O Hydrogen Torch utilizes for scoring.
Data folder test
Defines the folder location of the assets (for example, images or audios) H2O Hydrogen Torch utilizes for scoring. H2O Hydrogen Torch loads assets from this folder during scoring.
Image column
Specifies the dataframe column storing the names of images that H2O Hydrogen Torch loads from the Data folder test during scoring.
Text column
Defines the column name with the input text that H2O Hydrogen Torch uses during scoring.
Prediction settings
Metric
This setting defines the evaluation metric in which H2O Hydrogen Torch evaluates the model's accuracy on generated predictions.
Batch size inference
This setting defines the batch size of examples to utilize for inference.
Selecting 0 will set the Batch size inference to the same value used for the Batch size setting (utilized during training).
Probability threshold
This setting defines the evaluation metric in which H2O Hydrogen Torch evaluates the model's accuracy on generated predictions.
Environment settings
GPUs
This setting specifies the list of GPUs H2O Hydrogen Torch can use for scoring. GPUs are listed by name, referring to their system ID (starting from 1). If no GPUs are selected, H2O Hydrogen Torch utilizes CPUs for model scoring.
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