The ML.EVALUATE function
This document describes the ML.EVALUATE function, which lets you
evaluate model metrics.
Supported models
You can use the ML.EVALUATE function with all model types except for the
following:
Syntax
The ML.EVALUATE function syntax differs depending on the type of model that
you use the function with. Choose the option appropriate for your use case.
Times series
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [PERFORM_AGGREGATION AS perform_aggregation]
      [, HORIZON AS horizon]
      [, CONFIDENCE_LEVEL AS confidence_level])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you specify a - TABLEvalue, the input column names in the table must match the column names in the model, and their types must be compatible according to BigQuery implicit coercion rules.
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you used the - TRANSFORMclause in the- CREATE MODELstatement that created the model, then you can only specify the input columns present in the- TRANSFORMclause in the query.
- PERFORM_AGGREGATION: a- BOOLvalue that indicates the level of evaluation for forecasting accuracy. If you specify- TRUE, then the forecasting accuracy is on the time series level. If you specify- FALSE, the forecasting accuracy is on the timestamp level. The default value is- TRUE.
- HORIZON: an- INT64value that specifies the number of forecasted time points against which the evaluation metrics are computed. The default value is the horizon value specified in the- CREATE MODELstatement for the time series model, or- 1000if unspecified. When evaluating multiple time series at the same time, this parameter applies to each time series.- You can only use the - HORIZONargument when the following conditions are met:- The model type is ARIMA_PLUS.
- You have specified a value for either the
TABLEorQUERY_STATEMENTargument.
 
- The model type is 
- CONFIDENCE_LEVEL: a- FLOAT64value that specifies the percentage of the future values that fall in the prediction interval. The default value is- 0.95. The valid input range is- [0, 1).- You can only use the - CONFIDENCE_LEVELargument when the following conditions are met:- The model type is ARIMA_PLUS.
- You have specified a value for either the
TABLEorQUERY_STATEMENTargument.
- The - PERFORM_AGGREGATIONargument value is- FALSE.- The value of the - CONFIDENCE_LEVELargument affects the- upper_boundand- lower_boundvalues in the output.
 
- The model type is 
Classification & regression
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [THRESHOLD AS threshold]
      [, TRIAL_ID AS trial_id])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you specify a - TABLEvalue, the input column names in the table must match the column names in the model, and their types must be compatible according to BigQuery implicit coercion rules.- The table must have a column that matches the label column name that is provided during model training. You can provide this value by using the - input_label_colsoption during model training. If- input_label_colsis unspecified, the column named- labelin the training data is used.
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you used the - TRANSFORMclause in the- CREATE MODELstatement that created the model, then you can only specify the input columns present in the- TRANSFORMclause in the query.- The query must have a column that matches the label column name that is provided during model training. You can provide this value by using the - input_label_colsoption during model training. If- input_label_colsis unspecified, the column named- labelin the training data is used.
- THRESHOLD: a- FLOAT64value that specifies a custom threshold for the evaluation. You can only use the- THRESHOLDargument with binary-class classification models. The default value is- 0.5.- A - 0value for precision or recall means that the selected threshold produced no true positive labels. A- NaNvalue for precision means that the selected threshold produced no positive labels, neither true positives nor false positives.- You must specify a value for either the - TABLEor- QUERY_STATEMENTargument in order to specify a threshold.
- TRIAL_ID: an- INT64value that identifies the hyperparameter tuning trial that you want the function to evaluate. The- ML.EVALUATEfunction uses the optimal trial by default. Only specify this argument if you ran hyperparameter tuning when creating the model.
Remote over Gemini
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [TASK_TYPE AS task_type]
      [, MAX_OUTPUT_TOKENS AS max_output_tokens]
      [, TEMPERATURE AS temperature]
      [, TOP_P AS top_k])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If the remote model isn't configured to use supervised tuning, the following column naming requirements apply: - The table must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The table must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 - If the remote model is configured to use supervised tuning, the following column naming requirements apply: - The table must have a column whose name matches the prompt column
name that is provided during model training. You can provide this
value by using the prompt_coloption during model training. Ifprompt_colis unspecified, the column namedpromptin the training data is used. An error is returned if there is no column namedprompt.
- The table must have a column whose name matches the label column name that is provided during model training. You can provide this value by using the - input_label_colsoption during model training. If- input_label_colsis unspecified, the column named- labelin the training data is used. An error is returned if there is no column named- label.- You can find information about the label and prompt columns by looking at the model schema information in the Google Cloud console. 
 - For more information, see - AS SELECT.
- The table must have a column named 
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If the remote model isn't configured to use supervised tuning, the following column naming requirements apply: - The query must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The query must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 - If the remote model is configured to use supervised tuning, the following column naming requirements apply: - The query must have a column whose name matches the prompt column
name that is provided during model training. You can provide this
value by using the prompt_coloption during model training. Ifprompt_colis unspecified, the column namedpromptin the training data is used. An error is returned if there is no column namedprompt.
- The query must have a column whose name matches the label column name that is provided during model training. You can provide this value by using the - input_label_colsoption during model training. If- input_label_colsis unspecified, the column named- labelin the training data is used. An error is returned if there is no column named- label.- You can find information about the label and prompt columns by looking at the model schema information in the Google Cloud console. 
 - For more information, see - AS SELECT.
- The query must have a column named 
- TASK_TYPE: a- STRINGvalue that specifies the type of task for which you want to evaluate the model's performance. The valid options are the following:- TEXT_GENERATION
- CLASSIFICATION
- SUMMARIZATION
- QUESTION_ANSWERING
 - The default value is - TEXT_GENERATION.
- MAX_OUTPUT_TOKENS: an- INT64value that sets the maximum number of tokens output by the model. Specify a lower value for shorter responses and a higher value for longer responses. A token might be smaller than a word and is approximately four characters. 100 tokens correspond to approximately 60-80 words.- The default value is - 1024.- The - MAX_OUTPUT_TOKENSvalue must be in the range- [1,8192].
- TEMPERATURE: a- FLOAT64value that is used for sampling during the response generation. It controls the degree of randomness in token selection. Lower- TEMPERATUREvalues are good for prompts that require a more deterministic and less open-ended or creative response, while higher- TEMPERATUREvalues can lead to more diverse or creative results. A- TEMPERATUREvalue of- 0is deterministic, meaning that the highest probability response is always selected.- The - TEMPERATUREvalue must be in the range- [0.0,1.0].- The default value is - 1.0.
- TOP_P: a- FLOAT64value in the range- [0.0,1.0]that changes how the model selects tokens for output. Tokens are selected from the most to least probable until the sum of their probabilities equals the- TOP_Pvalue. For example, if tokens A, B, and C have a probability of- 0.3,- 0.2, and- 0.1and the- TOP_Pvalue is- 0.5, then the model selects either A or B as the next token by using the- TEMPERATUREvalue and doesn't consider C. Specify a lower value for less random responses and a higher value for more random responses.- The default value is - 0.95.
Remote over Claude
ML.EVALUATE( MODEL `PROJECT_ID.DATASET.MODEL` [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }], STRUCT( [TASK_TYPE AS task_type] [, MAX_OUTPUT_TOKENS AS max_output_tokens] [, TOP_K AS top_k] [, TOP_P AS top_k]) )
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The table must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The table must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The table must have a column named 
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The query must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The query must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The query must have a column named 
- TASK_TYPE: a- STRINGvalue that specifies the type of task for which you want to evaluate the model's performance. The valid options are the following:- TEXT_GENERATION
- CLASSIFICATION
- SUMMARIZATION
- QUESTION_ANSWERING
 - The default value is - TEXT_GENERATION.
- MAX_OUTPUT_TOKENS: an- INT64value that sets the maximum number of tokens output by the model. Specify a lower value for shorter responses and a higher value for longer responses. A token might be smaller than a word and is approximately four characters. 100 tokens correspond to approximately 60-80 words.- The default value is - 1024.- The - MAX_OUTPUT_TOKENSvalue must be in the range- [1,4096].
- TOP_K: an- INT64value in the range- [1,40]that changes how the model selects tokens for output. Specify a lower value for less random responses and a higher value for more random responses. The model determines an appropriate value if you don't specify one.- A - TOP_Kvalue of- 1means the next selected token is the most probable among all tokens in the model's vocabulary, while a- TOP_Kvalue of- 3means that the next token is selected from among the three most probable tokens by using the- TEMPERATUREvalue.- For each token selection step, the - TOP_Ktokens with the highest probabilities are sampled. Then tokens are further filtered based on the- TOP_Pvalue, with the final token selected using temperature sampling.
- TOP_P: a- FLOAT64value in the range- [0.0,1.0]that changes how the model selects tokens for output. Tokens are selected from the most to least probable until the sum of their probabilities equals the- TOP_Pvalue. For example, if tokens A, B, and C have a probability of- 0.3,- 0.2, and- 0.1and the- TOP_Pvalue is- 0.5, then the model selects either A or B as the next token by using the- TEMPERATUREvalue and doesn't consider C. Specify a lower value for less random responses and a higher value for more random responses.- The model determines an appropriate value if you don't specify one. 
Remote over Llama or Mistral AI
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [TASK_TYPE AS task_type]
      [, MAX_OUTPUT_TOKENS AS max_output_tokens]
      [, TEMPERATURE AS temperature]
      [, TOP_P AS top_k])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The table must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The table must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The table must have a column named 
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The query must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The query must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The query must have a column named 
- TASK_TYPE: a- STRINGvalue that specifies the type of task for which you want to evaluate the model's performance. The valid options are the following:- TEXT_GENERATION
- CLASSIFICATION
- SUMMARIZATION
- QUESTION_ANSWERING
 - The default value is - TEXT_GENERATION.
- MAX_OUTPUT_TOKENS: an- INT64value that sets the maximum number of tokens output by the model. Specify a lower value for shorter responses and a higher value for longer responses. A token might be smaller than a word and is approximately four characters. 100 tokens correspond to approximately 60-80 words.- The default value is - 1024.- The - MAX_OUTPUT_TOKENSvalue must be in the range- [1,4096].
- TEMPERATURE: a- FLOAT64value that is used for sampling during the response generation. It controls the degree of randomness in token selection. Lower- TEMPERATUREvalues are good for prompts that require a more deterministic and less open-ended or creative response, while higher- TEMPERATUREvalues can lead to more diverse or creative results. A- TEMPERATUREvalue of- 0is deterministic, meaning that the highest probability response is always selected.- The - TEMPERATUREvalue must be in the range- [0.0,1.0].- The default value is - 1.0.
- TOP_P: a- FLOAT64value in the range- [0.0,1.0]that changes how the model selects tokens for output. Tokens are selected from the most to least probable until the sum of their probabilities equals the- TOP_Pvalue. For example, if tokens A, B, and C have a probability of- 0.3,- 0.2, and- 0.1and the- TOP_Pvalue is- 0.5, then the model selects either A or B as the next token by using the- TEMPERATUREvalue and doesn't consider C. Specify a lower value for less random responses and a higher value for more random responses.- The model determines an appropriate value if you don't specify one. 
Remote over open
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [TASK_TYPE AS task_type]
      [, MAX_OUTPUT_TOKENS AS max_output_tokens]
      [, TEMPERATURE AS temperature]
      [, TOP_K AS top_k]
      [, TOP_P AS top_p])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The table must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The table must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The table must have a column named 
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - The following column naming requirements apply: - The query must have a column named input_textthat contains the prompt text to use when evaluating the model.
- The query must have a column named output_textthat contains the generated text that you would expect to be returned by the model.
 
- The query must have a column named 
- TASK_TYPE: a- STRINGvalue that specifies the type of task for which you want to evaluate the model's performance. The valid options are the following:- TEXT_GENERATION
- CLASSIFICATION
- SUMMARIZATION
- QUESTION_ANSWERING
 - The default value is - TEXT_GENERATION.
- MAX_OUTPUT_TOKENS: an- INT64value that sets the maximum number of tokens output by the model. Specify a lower value for shorter responses and a higher value for longer responses. A token might be smaller than a word and is approximately four characters. 100 tokens correspond to approximately 60-80 words.- The model determines an appropriate value if you don't specify one. - The - MAX_OUTPUT_TOKENSvalue must be in the range- [1,4096].
- TEMPERATURE: a- FLOAT64value that is used for sampling during the response generation. It controls the degree of randomness in token selection. Lower- TEMPERATUREvalues are good for prompts that require a more deterministic and less open-ended or creative response, while higher- TEMPERATUREvalues can lead to more diverse or creative results. A- TEMPERATUREvalue of- 0is deterministic, meaning that the highest probability response is always selected.- The - TEMPERATUREvalue must be in the range- [0.0,1.0].- The model determines an appropriate value if you don't specify one. 
- TOP_K: an- INT64value in the range- [1,40]that changes how the model selects tokens for output. Specify a lower value for less random responses and a higher value for more random responses. The model determines an appropriate value if you don't specify one.- A - TOP_Kvalue of- 1means the next selected token is the most probable among all tokens in the model's vocabulary, while a- TOP_Kvalue of- 3means that the next token is selected from among the three most probable tokens by using the- TEMPERATUREvalue.- For each token selection step, the - TOP_Ktokens with the highest probabilities are sampled. Then tokens are further filtered based on the- TOP_Pvalue, with the final token selected using temperature sampling.
- TOP_P: a- FLOAT64value in the range- [0.0,1.0]that changes how the model selects tokens for output. Tokens are selected from the most to least probable until the sum of their probabilities equals the- TOP_Pvalue. For example, if tokens A, B, and C have a probability of- 0.3,- 0.2, and- 0.1and the- TOP_Pvalue is- 0.5, then the model selects either A or B as the next token by using the- TEMPERATUREvalue and doesn't consider C. Specify a lower value for less random responses and a higher value for more random responses.- The model determines an appropriate value if you don't specify one. 
All other models
ML.EVALUATE(
  MODEL `PROJECT_ID.DATASET.MODEL`
  [, { TABLE `PROJECT_ID.DATASET.TABLE` | (QUERY_STATEMENT) }],
    STRUCT(
      [THRESHOLD AS threshold]
      [, TRIAL_ID AS trial_id])
)
Arguments
ML.EVALUATE takes the following arguments:
- PROJECT_ID: the project that contains the resource.
- DATASET: the project that contains the resource.
- MODEL: the name of the model.
- TABLE: the name of the input table that contains the evaluation data.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you specify a - TABLEvalue, the input column names in the table must match the column names in the model, and their types must be compatible according to BigQuery implicit coercion rules.
- QUERY_STATEMENT: a GoogleSQL query that is used to generate the evaluation data. For the supported SQL syntax of the- QUERY_STATEMENTclause in GoogleSQL, see Query syntax.- If you don't specify a table or query to provide input data, the evaluation metrics that are generated for the model during training are returned. - If you used the - TRANSFORMclause in the- CREATE MODELstatement that created the model, then you can only specify the input columns present in the- TRANSFORMclause in the query.
- THRESHOLD: a- FLOAT64value that specifies a custom threshold for the evaluation. You can only use the- THRESHOLDargument with binary-class classification models. The default value is- 0.5.- A - 0value for precision or recall means that the selected threshold produced no true positive labels. A- NaNvalue for precision means that the selected threshold produced no positive labels, neither true positives nor false positives.- You must specify a value for either the - TABLEor- QUERY_STATEMENTargument in order to specify a threshold.
- TRIAL_ID: an- INT64value that identifies the hyperparameter tuning trial that you want the function to evaluate. The- ML.EVALUATEfunction uses the optimal trial by default. Only specify this argument if you ran hyperparameter tuning when creating the model.- You can't use the - TRIAL_IDargument with PCA models.
Output
ML.EVALUATE returns a single row of metrics applicable to the
type of model specified.
For models that return them, the precision, recall, f1_score, log_loss,
and roc_auc metrics are macro-averaged for all of the class labels. For a
macro-average, metrics are calculated for each label and then an unweighted
average is taken of those values.
Time series
ML.EVALUATE returns the following columns for ARIMA_PLUS or
ARIMA_PLUS_XREG models when input data is provided and
perform_aggregation is FALSE:
- time_series_id_color- time_series_id_cols: a value that contains the identifiers of a time series.- time_series_id_colcan be an- INT64or- STRINGvalue.- time_series_id_colscan be an- ARRAY<INT64>or- ARRAY<STRING>value. Only present when forecasting multiple time series at once. The column names and types are inherited from the- TIME_SERIES_ID_COLoption as specified in the- CREATE MODELstatement.- ARIMA_PLUS_XREGmodels don't support this column.
- time_series_timestamp_col: a- STRINGvalue that contains the timestamp column for a time series. The column name and type are inherited from the- TIME_SERIES_TIMESTAMP_COLoption as specified in the- CREATE MODELstatement.
- time_series_data_col: a- STRINGvalue that contains the data column for a time series. The column name and type are inherited from the- TIME_SERIES_DATA_COLoption as specified in the- CREATE MODELstatement.
- forecasted_time_series_data_col: a- STRINGvalue that contains the same data as- time_series_data_colbut with- forecasted_prefixed to the column name.
- lower_bound: a- FLOAT64value that contains the lower bound of the prediction interval.
- upper_bound: a- FLOAT64value that contains the upper bound of the prediction interval.
- absolute_error: a- FLOAT64value that contains the absolute value of the difference between the forecasted value and the actual data value.
- absolute_percentage_error: a- FLOAT64value that contains the absolute value of the absolute error divided by the actual value.
ML.EVALUATE returns the following columns for ARIMA_PLUS or
ARIMA_PLUS_XREG models when input data is provided and
perform_aggregation is TRUE:
- time_series_id_color- time_series_id_cols: the identifiers of a time series. Only present when forecasting multiple time series at once. The column names and types are inherited from the- TIME_SERIES_ID_COLoption as specified in the- CREATE MODELstatement.- ARIMA_PLUS_XREGmodels don't support this column.
- mean_absolute_error: a- FLOAT64value that contains the mean absolute error for the model.
- mean_squared_error: a- FLOAT64value that contains the mean squared error for the model.
- root_mean_squared_error: a- FLOAT64value that contains the root mean squared error for the model.
- mean_absolute_percentage_error: a- FLOAT64value that contains the mean absolute percentage error for the model.
- symmetric_mean_absolute_percentage_error: a- FLOAT64value that contains the symmetric mean absolute percentage error for the model.
ML.EVALUATE returns the following columns for an ARIMA_PLUS model when
input data isn't provided:
- time_series_id_color- time_series_id_cols: the identifiers of a time series. Only present when forecasting multiple time series at once. The column names and types are inherited from the- TIME_SERIES_ID_COLoption as specified in the- CREATE MODELstatement.
- non_seasonal_p: an- INT64value that contains the order for the autoregressive model. For more information, see Autoregressive integrated moving average.
- non_seasonal_d: an- INT64that contains the degree of differencing for the non-seasonal model. For more information, see Autoregressive integrated moving average.
- non_seasonal_q: an- INT64that contains the order for the moving average model. For more information, see Autoregressive integrated moving average.
- has_drift: a- BOOLvalue that indicates whether the model includes a linear drift term.
- log_likelihood: a- FLOAT64value that contains the log likelihood for the model.
- aic: a- FLOAT64value that contains the Akaike information criterion for the model.
- variance: a- FLOAT64value that measures how far the observed value differs from the predicted value mean.
- seasonal_periods: a- STRINGvalue that contains the seasonal period for the model.
- has_holiday_effect: a- BOOLvalue that indicates whether the model includes any holiday effects.
- has_spikes_and_dips: a- BOOLvalue that indicates whether the model performs automatic spikes and dips detection and cleanup.
- has_step_changes: a- BOOLvalue that indicates whether the model has step changes.
Classification
The following types of models are classification models:
- Logistic regressor
- Boosted tree classifier
- Random forest classifier
- DNN classifier
- Wide & Deep classifier
- AutoML Tables classifier
ML.EVALUATE returns the following columns for classification models:
- trial_id: an- INT64value that identifies the hyperparameter tuning trial. This column is only returned if you ran hyperparameter tuning when creating the model. This column doesn't apply for AutoML Tables models.
- precision: a- FLOAT64value that contains the precision for the model.
- recall: a- FLOAT64value that contains the recall for the model.
- accuracy: a- FLOAT64value that contains the accuracy for the model.- accuracyis computed as a global total or micro-average. For a micro-average, the metric is calculated globally by counting the total number of correctly predicted rows.
- f1_score: a- FLOAT64value that contains the F1 score for the model.
- log_loss: a- FLOAT64value that contains the logistic loss for the model.
- roc_auc: a- FLOAT64value that contains the area under the receiver operating characteristic curve for the model.
Regression
The following types of models are regression models:
- Linear regression
- Boosted tree regressor
- Random forest regressor
- Deep neural network (DNN) regressor
- Wide & Deep regressor
- AutoML Tables regressor
ML.EVALUATE returns the following columns for regression models:
- trial_id: an- INT64value that identifies the hyperparameter tuning trial. This column is only returned if you ran hyperparameter tuning when creating the model. This column doesn't apply for AutoML Tables models.
- mean_absolute_error: a- FLOAT64value that contains the mean absolute error for the model.
- mean_squared_error: a- FLOAT64value that contains the mean squared error for the model.
- mean_squared_log_error: a- FLOAT64value that contains the mean squared logarithmic error for the model. The mean squared logarithmic error measures the distance between the actual and predicted values.
- median_absolute_error: a- FLOAT64value that contains the median absolute error for the model.
- r2_score: a- FLOAT64value that contains the R2 score for the model.
- explained_variance: a- FLOAT64value that contains the explained variance for the model.
K-means
ML.EVALUATE returns the following columns for k-means models:
- trial_id: an- INT64value that identifies the hyperparameter tuning trial. This column is only returned if you ran hyperparameter tuning when creating the model.
- davies_bouldin_index: a- FLOAT64value that contains the Davies-Bouldin Index for the model.
- mean_squared_distance: a- FLOAT64value that contains the mean squared distance for the model, which is the average of the distances between training data points to their closest centroid.
Matrix factorization
ML.EVALUATE returns the following columns for matrix factorization models
with implicit feedback:
- trial_id: an- INT64value that identifies the hyperparameter tuning trial. This column is only returned if you ran hyperparameter tuning when creating the model.
- recall: a- FLOAT64value that contains the recall for the model.
- mean_squared_error: a- FLOAT64value that contains the mean squared error for the model.
- normalized_discounted_cumulative_gain: a- FLOAT64value that contains the normalized discounted cumulative gain for the model.
- average_rank: a- FLOAT64value that contains the average rank (PDF download) for the model.
ML.EVALUATE returns the following columns for matrix factorization models
with explicit feedback:
- trial_id: an- INT64value that identifies the hyperparameter tuning trial. This column is only returned if you ran hyperparameter tuning when creating the model.
- mean_absolute_error: a- FLOAT64value that contains the mean absolute error for the model.
- mean_squared_error: a- FLOAT64value that contains the mean squared error for the model.
- mean_squared_log_error: a- FLOAT64value that contains the mean squared logarithmic error for the model. The mean squared logarithmic error measures the distance between the actual and predicted values.
- mean_absolute_error: a- FLOAT64value that contains the mean absolute error for the model.
- r2_score: a- FLOAT64value that contains the R2 score for the model.
- explained_variance: a- FLOAT64value that contains the explained variance for the model.
Remote over pre-trained models
This section describes the output for the following types of models:
- Gemini
- Anthropic Claude
- Mistral AI
- Llama
- Open models
ML.EVALUATE returns different columns depending on the task_type value
that you specify.
When you specify the TEXT_GENERATION task type, the following columns are
returned:
- bleu4_score: a- FLOAT64column that contains the bilingual evaluation understudy (BLEU4) score for the model.
- rouge-l_precision: a- FLOAT64column that contains the Recall-oriented understudy for gisting evaluation (ROUGE-L) precision for the model .
- rouge-l_recall: a- FLOAT64column that contains the ROUGE-L recall for the model.
- rouge-l_f1: a- FLOAT64column that contains the ROUGE-L F1 score for the model.
- evaluation_status: a- STRINGcolumn in JSON format that contains the following elements:- num_successful_rows: the number of successful inference rows returned from Vertex AI.
- num_total_rows: the number of total input rows.
 
When you specify the CLASSIFICATION task type, the following columns are
returned:
- precision: a- FLOAT64column that contains the precision for the model .
- recall: a- FLOAT64column that contains the recall for the model.
- f1: a- FLOAT64column that contains the F1 score for the model.
- label: a- STRINGcolumn that contains the label generated for the input data.
- evaluation_status: a- STRINGcolumn in JSON format that contains the following elements:- num_successful_rows: the number of successful inference rows returned from Vertex AI.
- num_total_rows: the number of total input rows.
 
When you specify the SUMMARIZATION task type, the following columns are
returned:
- rouge-l_precision: a- FLOAT64column that contains the Recall-oriented understudy for gisting evaluation (ROUGE-L) precision for the model.
- rouge-l_recall: a- FLOAT64column that contains the ROUGE-L recall for the model.
- rouge-l_f1: a- FLOAT64column that contains the ROUGE-L F1 score for the model.
- evaluation_status: a- STRINGcolumn in JSON format that contains the following elements:- num_successful_rows: the number of successful inference rows returned from Vertex AI.
- num_total_rows: the number of total input rows.
 
When you specify the QUESTION_ANSWERING task type, the following columns are
returned:
- exact_match: a- FLOAT64column that indicates if the generated text exactly matches the ground truth. This value is- 1if the generated text equals the ground truth, otherwise it is- 0. This metric is an average across all of the input rows.
- evaluation_status: a- STRINGcolumn in JSON format that contains the following elements:- num_successful_rows: the number of successful inference rows returned from Vertex AI.
- num_total_rows: the number of total input rows.
 
Remote over custom models
ML.EVALUATE returns the following column for remote models over
custom models deployed to Vertex AI:
- remote_eval_metrics: a- JSONcolumn containing appropriate metrics for the model type.
PCA
ML.EVALUATE returns the following column for PCA models:
- total_explained_variance_ratio: a- FLOAT64value that contains the percentage of the cumulative variance explained by all the returned principal components. For more information, see the- ML.PRINCIPAL_COMPONENT_INFOfunction.
Autoencoder
ML.EVALUATE returns the following columns for autoencoder models:
- mean_absolute_error: a- FLOAT64value that contains the mean absolute error for the model.
- mean_squared_error: a- FLOAT64value that contains the mean squared error for the model.
- mean_squared_log_error: a- FLOAT64value that contains the mean squared logarithmic error for the model. The mean squared logarithmic error measures the distance between the actual and predicted values.
Limitations
ML.EVALUATE is subject to the following limitations:
- ML.EVALUATEdoesn't support imported TensorFlow models or remote models over Cloud AI services.
- For remote models over Vertex AI endpoints, ML.EVALUATEfetches evaluation result from the Vertex AI endpoint and doesn't take any input data.
Costs
When used with remote models over Vertex AI LLMs,
ML.EVALUATE costs are calculated based on the following:
- The bytes processed from the input table. These charges are billed from BigQuery to your project. For more information, see BigQuery pricing.
- The input to and output from the LLM. These charges are billed from Vertex AI to your project. For more information, see Vertex AI pricing.
Examples
The following examples show how to use ML.EVALUATE.
ML.EVALUATE with no input data specified
The following query evaluates a model with no input data specified:
SELECT * FROM ML.EVALUATE(MODEL `mydataset.mymodel`)
ML.EVALUATE with a custom threshold and input data
The following query evaluates a model with input data and a custom
threshold of 0.55:
SELECT * FROM ML.EVALUATE(MODEL `mydataset.mymodel`, ( SELECT custom_label, column1, column2 FROM `mydataset.mytable`), STRUCT(0.55 AS threshold))
ML.EVALUATE to calculate forecasting accuracy of a time series
The following query evaluates the 30-point forecasting accuracy for a time series model:
SELECT * FROM ML.EVALUATE(MODEL `mydataset.my_arima_model`, ( SELECT timeseries_date, timeseries_metric FROM `mydataset.mytable`), STRUCT(TRUE AS perform_aggregation, 30 AS horizon))
ML.EVALUATE to calculate ARIMA_PLUS forecasting accuracy for each forecasted timestamp
The following query evaluates the forecasting accuracy for each of the 30
forecasted points of a time series model. It also computes the prediction
interval based on a confidence level of 0.9.
SELECT * FROM ML.EVALUATE(MODEL `mydataset.my_arima_model`, ( SELECT timeseries_date, timeseries_metric FROM `mydataset.mytable`), STRUCT(FALSE AS perform_aggregation, 0.9 AS confidence_level, 30 AS horizon))
ML.EVALUATE to calculate ARIMA_PLUS_XREG forecasting accuracy for each forecasted timestamp
The following query evaluates the forecasting accuracy for each of the 30
forecasted points of a time series model. It also computes the prediction
interval based on a confidence level of 0.9. Note that you need to include the
side features for the evaluation data.
SELECT * FROM ML.EVALUATE(MODEL `mydataset.my_arima_xreg_model`, ( SELECT timeseries_date, timeseries_metric, feature1, feature2 FROM `mydataset.mytable`), STRUCT(FALSE AS perform_aggregation, 0.9 AS confidence_level, 30 AS horizon))
ML.EVALUATE to calculate LLM text generation accuracy
The following query evaluates the LLM text generation accuracy for the classification task type for each label from the evaluation table.
SELECT * FROM ML.EVALUATE(MODEL `mydataset.my_llm`, ( SELECT prompt, label FROM `mydataset.mytable`), STRUCT('classification' AS task_type))
What's next
- For more information about model evaluation, see BigQuery ML model evaluation overview.
- For more information about supported SQL statements and functions for ML models, see End-to-end user journeys for ML models.