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v2.1

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GS_OPT_MODEL

GS_OPT_MODEL is a data table used when the AI engine is enabled to predict the planned time. It records the configurations, training results, features, corresponding system functions, and training history of machine learning models.

Table 1 GS_OPT_MODEL columns

Name Type Description
oid oid ID of the database object
template_name name Template name of the machine learning model, which determines the interfaces invoked for training and prediction. Currently, only rlstm is implemented.
model_name name Model name. Each model corresponds to a set of parameters, training logs, and model coefficients in the AI engine online learning process. The name must be unique.
datname name Name of the database served by the model. Each model is specific to a single database. This parameter determines data used for training.
ip name IP address of the host where the AI engine is deployed
port integer Listening port number of the AI engine
max_epoch integer Maximum number of iterations in an epoch
learning_rate real Learning rate of model training. The default value 1 is recommended.
dim_red real Number of model feature dimensions whose retention is reduced
hidden_units integer Number of neurons in the model's hidden layer. If the model cannot be converged for a long time, increase the value of this parameter.
batch_size integer Size of a batch in each iteration. It is recommended that the size be greater than or equal to the total training data volume to accelerate model convergence.
feature_size integer Length of the model feature, which is used to trigger retraining. This parameter is automatically updated after model training and does not need to be specified.
available boolean Whether the model is converged. This parameter does not need to be specified.
Is_training boolean Whether the model is being trained. This parameter does not need to be specified.
label "char"[] Target task of the model.
- S: startup time
- T: total time
- R: rows
- M: peak memory
Currently, {S, T} or {R} is recommended due to model performance restrictions.
max bigint[] Maximum value of each task label of the model, which is used to trigger retraining. This parameter does not need to be specified.
acc real[] Accuracy of each model task. This parameter does not need to be specified.
description text Model comment
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