| @@ -5,6 +5,7 @@ import com.ruoyi.common.core.web.domain.AjaxResult; | |||
| import com.ruoyi.common.core.web.domain.GenericsAjaxResult; | |||
| import com.ruoyi.platform.domain.AutoMl; | |||
| import com.ruoyi.platform.service.AutoMLService; | |||
| import com.ruoyi.platform.vo.AutoMlVo; | |||
| import io.swagger.annotations.Api; | |||
| import io.swagger.annotations.ApiOperation; | |||
| import org.springframework.data.domain.Page; | |||
| @@ -13,6 +14,7 @@ import org.springframework.web.bind.annotation.*; | |||
| import org.springframework.web.multipart.MultipartFile; | |||
| import javax.annotation.Resource; | |||
| import java.io.IOException; | |||
| @RestController | |||
| @RequestMapping("autoML") | |||
| @@ -33,18 +35,18 @@ public class AutoMLController extends BaseController { | |||
| @PostMapping | |||
| @ApiOperation("新增自动机器学习") | |||
| public GenericsAjaxResult<AutoMl> addAutoMl(@RequestBody AutoMl autoMl) throws Exception { | |||
| return genericsSuccess(this.autoMLService.save(autoMl)); | |||
| public GenericsAjaxResult<AutoMl> addAutoMl(@RequestBody AutoMlVo autoMlVo) throws Exception { | |||
| return genericsSuccess(this.autoMLService.save(autoMlVo)); | |||
| } | |||
| @PutMapping | |||
| @ApiOperation("编辑自动机器学习") | |||
| public GenericsAjaxResult<String> editAutoMl(@RequestBody AutoMl autoMl) throws Exception { | |||
| return genericsSuccess(this.autoMLService.edit(autoMl)); | |||
| public GenericsAjaxResult<String> editAutoMl(@RequestBody AutoMlVo autoMlVo) throws Exception { | |||
| return genericsSuccess(this.autoMLService.edit(autoMlVo)); | |||
| } | |||
| @GetMapping("/getAutoMlDetail") | |||
| @ApiOperation("获取自动机器学习详细信息") | |||
| public GenericsAjaxResult<AutoMl> getAutoMlDetail(@RequestParam("id") Long id){ | |||
| public GenericsAjaxResult<AutoMlVo> getAutoMlDetail(@RequestParam("id") Long id) throws IOException { | |||
| return genericsSuccess(this.autoMLService.getAutoMlDetail(id)); | |||
| } | |||
| @@ -9,6 +9,7 @@ import io.swagger.annotations.ApiModelProperty; | |||
| import lombok.Data; | |||
| import java.util.Date; | |||
| import java.util.Map; | |||
| @Data | |||
| @JsonNaming(PropertyNamingStrategy.SnakeCaseStrategy.class) | |||
| @@ -25,9 +26,6 @@ public class AutoMl { | |||
| @ApiModelProperty(value = "任务类型:classification或regression") | |||
| private String taskType; | |||
| @ApiModelProperty(value = "数据集名称") | |||
| private String datasetName; | |||
| @ApiModelProperty(value = "搜索合适模型的时间限制(以秒为单位)。通过增加这个值,auto-sklearn有更高的机会找到更好的模型。默认3600,非必传。") | |||
| private Integer timeLeftForThisTask; | |||
| @@ -128,9 +126,6 @@ public class AutoMl { | |||
| @ApiModelProperty(value = "文件夹存放配置输出和日志文件,默认/tmp/automl") | |||
| private String tmpFolder; | |||
| @ApiModelProperty(value = "数据集csv文件路径") | |||
| private String dataCsv; | |||
| @ApiModelProperty(value = "数据集csv文件中哪几列是预测目标列,逗号分隔") | |||
| private String targetColumns; | |||
| @@ -182,6 +177,6 @@ public class AutoMl { | |||
| private Date updateTime; | |||
| @TableField(exist = false) | |||
| private VersionVo versionVo; | |||
| private String dataset; | |||
| } | |||
| @@ -1,22 +1,24 @@ | |||
| package com.ruoyi.platform.service; | |||
| import com.ruoyi.platform.domain.AutoMl; | |||
| import com.ruoyi.platform.vo.AutoMlVo; | |||
| import org.springframework.data.domain.Page; | |||
| import org.springframework.data.domain.PageRequest; | |||
| import org.springframework.web.multipart.MultipartFile; | |||
| import java.io.IOException; | |||
| import java.util.Map; | |||
| public interface AutoMLService { | |||
| Page<AutoMl> queryByPage(String mlName, PageRequest pageRequest); | |||
| AutoMl save(AutoMl autoMl) throws Exception; | |||
| AutoMl save(AutoMlVo autoMlVo) throws Exception; | |||
| String edit(AutoMl autoMl) throws Exception; | |||
| String edit(AutoMlVo autoMlVo) throws Exception; | |||
| String delete(Long id); | |||
| AutoMl getAutoMlDetail(Long id); | |||
| AutoMlVo getAutoMlDetail(Long id) throws IOException; | |||
| Map<String, String> upload(MultipartFile file, String uuid) throws Exception; | |||
| @@ -5,14 +5,14 @@ import com.ruoyi.platform.constant.Constant; | |||
| import com.ruoyi.platform.domain.AutoMl; | |||
| import com.ruoyi.platform.mapper.AutoMLDao; | |||
| import com.ruoyi.platform.service.AutoMLService; | |||
| import com.ruoyi.platform.utils.DVCUtils; | |||
| import com.ruoyi.platform.utils.FileUtil; | |||
| import com.ruoyi.platform.utils.K8sClientUtil; | |||
| import com.ruoyi.platform.utils.*; | |||
| import com.ruoyi.platform.vo.AutoMlVo; | |||
| import io.kubernetes.client.openapi.models.V1Pod; | |||
| import org.apache.commons.io.FileUtils; | |||
| import org.apache.commons.lang3.StringUtils; | |||
| import org.slf4j.Logger; | |||
| import org.slf4j.LoggerFactory; | |||
| import org.springframework.beans.BeanUtils; | |||
| import org.springframework.beans.factory.annotation.Value; | |||
| import org.springframework.data.domain.Page; | |||
| import org.springframework.data.domain.PageImpl; | |||
| @@ -22,6 +22,7 @@ import org.springframework.web.multipart.MultipartFile; | |||
| import javax.annotation.Resource; | |||
| import java.io.File; | |||
| import java.io.IOException; | |||
| import java.util.HashMap; | |||
| import java.util.List; | |||
| import java.util.Map; | |||
| @@ -59,39 +60,35 @@ public class AutoMLServiceImpl implements AutoMLService { | |||
| } | |||
| @Override | |||
| public AutoMl save(AutoMl autoMl) throws Exception { | |||
| AutoMl autoMlByName = autoMLDao.getAutoMlByName(autoMl.getMlName()); | |||
| public AutoMl save(AutoMlVo autoMlVo) throws Exception { | |||
| AutoMl autoMlByName = autoMLDao.getAutoMlByName(autoMlVo.getMlName()); | |||
| if (autoMlByName != null) { | |||
| throw new RuntimeException("实验名称已存在"); | |||
| } | |||
| AutoMl autoMl = new AutoMl(); | |||
| BeanUtils.copyProperties(autoMlVo, autoMl); | |||
| String username = SecurityUtils.getLoginUser().getUsername(); | |||
| autoMl.setCreateBy(username); | |||
| autoMl.setUpdateBy(username); | |||
| String sourcePath = autoMl.getVersionVo().getUrl(); | |||
| String rootPath = localPath + username + "/automl/" + autoMl.getMlName() + "/" + autoMl.getDatasetName(); | |||
| dvcUtils.moveFiles(sourcePath, rootPath); | |||
| autoMl.setDataCsv(rootPath + "/" + autoMl.getVersionVo().getFileName()); | |||
| String datasetJson = JacksonUtil.toJSONString(autoMlVo.getDataset()); | |||
| autoMl.setDataset(datasetJson); | |||
| autoMLDao.save(autoMl); | |||
| return autoMl; | |||
| } | |||
| @Override | |||
| public String edit(AutoMl autoMl) throws Exception { | |||
| AutoMl oldAutoMl = autoMLDao.getAutoMlByName(autoMl.getMlName()); | |||
| if (oldAutoMl != null && !oldAutoMl.getId().equals(autoMl.getId())) { | |||
| public String edit(AutoMlVo autoMlVo) throws Exception { | |||
| AutoMl oldAutoMl = autoMLDao.getAutoMlByName(autoMlVo.getMlName()); | |||
| if (oldAutoMl != null && !oldAutoMl.getId().equals(autoMlVo.getId())) { | |||
| throw new RuntimeException("实验名称已存在"); | |||
| } | |||
| String username = SecurityUtils.getLoginUser().getUsername(); | |||
| AutoMl autoMl = new AutoMl(); | |||
| BeanUtils.copyProperties(autoMlVo, autoMl); | |||
| // String username = SecurityUtils.getLoginUser().getUsername(); | |||
| String username = "admin"; | |||
| autoMl.setUpdateBy(username); | |||
| if (autoMl.getVersionVo() != null && StringUtils.isNotEmpty(autoMl.getVersionVo().getUrl())) { | |||
| String sourcePath = autoMl.getVersionVo().getUrl(); | |||
| String rootPath = localPath + username + "/automl/" + autoMl.getMlName() + "/" + autoMl.getDatasetName(); | |||
| dvcUtils.moveFiles(sourcePath, rootPath); | |||
| autoMl.setDataCsv(rootPath + "/" + autoMl.getVersionVo().getFileName()); | |||
| } | |||
| String datasetJson = JacksonUtil.toJSONString(autoMlVo.getDataset()); | |||
| autoMl.setDataset(datasetJson); | |||
| autoMLDao.edit(autoMl); | |||
| return "修改成功"; | |||
| @@ -104,8 +101,7 @@ public class AutoMLServiceImpl implements AutoMLService { | |||
| throw new RuntimeException("服务不存在"); | |||
| } | |||
| // String username = SecurityUtils.getLoginUser().getUsername(); | |||
| String username = "admin"; | |||
| String username = SecurityUtils.getLoginUser().getUsername(); | |||
| String createBy = autoMl.getCreateBy(); | |||
| if (!(StringUtils.equals(username, "admin") || StringUtils.equals(username, createBy))) { | |||
| throw new RuntimeException("无权限删除该服务"); | |||
| @@ -116,8 +112,14 @@ public class AutoMLServiceImpl implements AutoMLService { | |||
| } | |||
| @Override | |||
| public AutoMl getAutoMlDetail(Long id) { | |||
| return autoMLDao.getAutoMlById(id); | |||
| public AutoMlVo getAutoMlDetail(Long id) throws IOException { | |||
| AutoMl autoMl = autoMLDao.getAutoMlById(id); | |||
| AutoMlVo autoMlVo = new AutoMlVo(); | |||
| BeanUtils.copyProperties(autoMl, autoMlVo); | |||
| if (StringUtils.isNotEmpty(autoMl.getDataset())) { | |||
| autoMlVo.setDataset(JsonUtils.jsonToMap(autoMl.getDataset())); | |||
| } | |||
| return autoMlVo; | |||
| } | |||
| @Override | |||
| @@ -151,21 +153,11 @@ public class AutoMLServiceImpl implements AutoMLService { | |||
| StringBuffer command = new StringBuffer(); | |||
| command.append("nohup python /opt/automl.py --task_type " + autoMl.getTaskType()); | |||
| if (StringUtils.isNotEmpty(autoMl.getDataCsv())) { | |||
| command.append(" --data_csv " + autoMl.getDataCsv()); | |||
| } else { | |||
| throw new Exception("训练数据为空"); | |||
| } | |||
| if (StringUtils.isNotEmpty(autoMl.getTargetColumns())) { | |||
| command.append(" --target_columns " + autoMl.getTargetColumns()); | |||
| } else { | |||
| throw new Exception("目标列为空"); | |||
| } | |||
| if (StringUtils.isNotEmpty(autoMl.getDatasetName())) { | |||
| command.append(" --dataset_name " + autoMl.getDatasetName()); | |||
| } else { | |||
| throw new Exception("数据集名称为空"); | |||
| } | |||
| // String username = SecurityUtils.getLoginUser().getUsername().toLowerCase(); | |||
| String username = "admin"; | |||
| @@ -0,0 +1,183 @@ | |||
| package com.ruoyi.platform.vo; | |||
| import com.baomidou.mybatisplus.annotation.TableField; | |||
| import com.fasterxml.jackson.databind.PropertyNamingStrategy; | |||
| import com.fasterxml.jackson.databind.annotation.JsonNaming; | |||
| import io.swagger.annotations.ApiModel; | |||
| import io.swagger.annotations.ApiModelProperty; | |||
| import lombok.Data; | |||
| import java.util.Date; | |||
| import java.util.Map; | |||
| @Data | |||
| @JsonNaming(PropertyNamingStrategy.SnakeCaseStrategy.class) | |||
| @ApiModel(description = "自动机器学习") | |||
| public class AutoMlVo { | |||
| private Long id; | |||
| @ApiModelProperty(value = "实验名称") | |||
| private String mlName; | |||
| @ApiModelProperty(value = "实验描述") | |||
| private String mlDescription; | |||
| @ApiModelProperty(value = "任务类型:classification或regression") | |||
| private String taskType; | |||
| @ApiModelProperty(value = "搜索合适模型的时间限制(以秒为单位)。通过增加这个值,auto-sklearn有更高的机会找到更好的模型。默认3600,非必传。") | |||
| private Integer timeLeftForThisTask; | |||
| @ApiModelProperty(value = "单次调用机器学习模型的时间限制(以秒为单位)。如果机器学习算法运行超过时间限制,将终止模型拟合。将这个值设置得足够高,这样典型的机器学习算法就可以适用于训练数据。默认600,非必传。") | |||
| private Integer perRunTimeLimit; | |||
| @ApiModelProperty(value = "集成模型数量,如果设置为0,则没有集成。默认50,非必传。") | |||
| private Integer ensembleSize; | |||
| @ApiModelProperty(value = "设置为None将禁用集成构建,设置为SingleBest仅使用单个最佳模型而不是集成,设置为default,它将对单目标问题使用EnsembleSelection,对多目标问题使用MultiObjectiveDummyEnsemble。默认default,非必传。") | |||
| private String ensembleClass; | |||
| @ApiModelProperty(value = "在构建集成时只考虑ensemble_nbest模型。这是受到了“最大限度地利用集成选择”中引入的库修剪概念的启发。这是独立于ensemble_class参数的,并且这个修剪步骤是在构造集成之前完成的。默认50,非必传。") | |||
| private Integer ensembleNbest; | |||
| @ApiModelProperty(value = "定义在磁盘中保存的模型的最大数量。额外的模型数量将被永久删除。由于这个变量的性质,它设置了一个集成可以使用多少个模型的上限。必须是大于等于1的整数。如果设置为None,则所有模型都保留在磁盘上。默认50,非必传。") | |||
| private Integer maxModelsOnDisc; | |||
| @ApiModelProperty(value = "随机种子,将决定输出文件名。默认1,非必传。") | |||
| private Integer seed; | |||
| @ApiModelProperty(value = "机器学习算法的内存限制(MB)。如果auto-sklearn试图分配超过memory_limit MB,它将停止拟合机器学习算法。默认3072,非必传。") | |||
| private Integer memoryLimit; | |||
| @ApiModelProperty(value = "如果为None,则使用所有可能的分类算法。否则,指定搜索中包含的步骤和组件。有关可用组件,请参见/pipeline/components/<step>/*。与参数exclude不兼容。多选,逗号分隔。包含:adaboost\n" + | |||
| "bernoulli_nb\n" + | |||
| "decision_tree\n" + | |||
| "extra_trees\n" + | |||
| "gaussian_nb\n" + | |||
| "gradient_boosting\n" + | |||
| "k_nearest_neighbors\n" + | |||
| "lda\n" + | |||
| "liblinear_svc\n" + | |||
| "libsvm_svc\n" + | |||
| "mlp\n" + | |||
| "multinomial_nb\n" + | |||
| "passive_aggressive\n" + | |||
| "qda\n" + | |||
| "random_forest\n" + | |||
| "sgd") | |||
| private String includeClassifier; | |||
| @ApiModelProperty(value = "如果为None,则使用所有可能的特征预处理算法。否则,指定搜索中包含的步骤和组件。有关可用组件,请参见/pipeline/components/<step>/*。与参数exclude不兼容。多选,逗号分隔。包含:densifier\n" + | |||
| "extra_trees_preproc_for_classification\n" + | |||
| "extra_trees_preproc_for_regression\n" + | |||
| "fast_ica\n" + | |||
| "feature_agglomeration\n" + | |||
| "kernel_pca\n" + | |||
| "kitchen_sinks\n" + | |||
| "liblinear_svc_preprocessor\n" + | |||
| "no_preprocessing\n" + | |||
| "nystroem_sampler\n" + | |||
| "pca\n" + | |||
| "polynomial\n" + | |||
| "random_trees_embedding\n" + | |||
| "select_percentile_classification\n" + | |||
| "select_percentile_regression\n" + | |||
| "select_rates_classification\n" + | |||
| "select_rates_regression\n" + | |||
| "truncatedSVD") | |||
| private String includeFeaturePreprocessor; | |||
| @ApiModelProperty(value = "如果为None,则使用所有可能的回归算法。否则,指定搜索中包含的步骤和组件。有关可用组件,请参见/pipeline/components/<step>/*。与参数exclude不兼容。多选,逗号分隔。包含:adaboost,\n" + | |||
| "ard_regression,\n" + | |||
| "decision_tree,\n" + | |||
| "extra_trees,\n" + | |||
| "gaussian_process,\n" + | |||
| "gradient_boosting,\n" + | |||
| "k_nearest_neighbors,\n" + | |||
| "liblinear_svr,\n" + | |||
| "libsvm_svr,\n" + | |||
| "mlp,\n" + | |||
| "random_forest,\n" + | |||
| "sgd") | |||
| private String includeRegressor; | |||
| private String excludeClassifier; | |||
| private String excludeRegressor; | |||
| private String excludeFeaturePreprocessor; | |||
| @ApiModelProperty(value = "测试集的比率,0到1之间") | |||
| private Float testSize; | |||
| @ApiModelProperty(value = "如何处理过拟合,如果使用基于“cv”的方法或Splitter对象,可能需要使用resampling_strategy_arguments。holdout或crossValid") | |||
| private String resamplingStrategy; | |||
| @ApiModelProperty(value = "重采样划分训练集和验证集,训练集的比率,0到1之间") | |||
| private Float trainSize; | |||
| @ApiModelProperty(value = "拆分数据前是否进行shuffle") | |||
| private Boolean shuffle; | |||
| @ApiModelProperty(value = "交叉验证的折数,当resamplingStrategy为crossValid时,此项必填,为整数") | |||
| private Integer folds; | |||
| @ApiModelProperty(value = "文件夹存放配置输出和日志文件,默认/tmp/automl") | |||
| private String tmpFolder; | |||
| @ApiModelProperty(value = "数据集csv文件中哪几列是预测目标列,逗号分隔") | |||
| private String targetColumns; | |||
| @ApiModelProperty(value = "自定义指标名称") | |||
| private String metricName; | |||
| @ApiModelProperty(value = "模型优化目标指标及权重,json格式。分类的指标包含:accuracy\n" + | |||
| "balanced_accuracy\n" + | |||
| "roc_auc\n" + | |||
| "average_precision\n" + | |||
| "log_loss\n" + | |||
| "precision_macro\n" + | |||
| "precision_micro\n" + | |||
| "precision_samples\n" + | |||
| "precision_weighted\n" + | |||
| "recall_macro\n" + | |||
| "recall_micro\n" + | |||
| "recall_samples\n" + | |||
| "recall_weighted\n" + | |||
| "f1_macro\n" + | |||
| "f1_micro\n" + | |||
| "f1_samples\n" + | |||
| "f1_weighted\n" + | |||
| "回归的指标包含:mean_absolute_error\n" + | |||
| "mean_squared_error\n" + | |||
| "root_mean_squared_error\n" + | |||
| "mean_squared_log_error\n" + | |||
| "median_absolute_error\n" + | |||
| "r2") | |||
| private String metrics; | |||
| @ApiModelProperty(value = "指标优化方向,是越大越好还是越小越好") | |||
| private Boolean greaterIsBetter; | |||
| @ApiModelProperty(value = "模型计算并打印指标") | |||
| private String scoringFunctions; | |||
| private Integer state; | |||
| private String runState; | |||
| private Double progress; | |||
| private String createBy; | |||
| private Date createTime; | |||
| private String updateBy; | |||
| private Date updateTime; | |||
| /** | |||
| * 对应数据集 | |||
| */ | |||
| private Map<String,Object> dataset; | |||
| } | |||
| @@ -2,23 +2,26 @@ | |||
| <!DOCTYPE mapper PUBLIC "-//mybatis.org//DTD Mapper 3.0//EN" "http://mybatis.org/dtd/mybatis-3-mapper.dtd"> | |||
| <mapper namespace="com.ruoyi.platform.mapper.AutoMLDao"> | |||
| <insert id="save"> | |||
| insert into auto_ml(ml_name, ml_description, task_type, dataset_name, time_left_for_this_task, | |||
| insert into auto_ml(ml_name, ml_description, task_type, dataset, time_left_for_this_task, | |||
| per_run_time_limit, ensemble_size, ensemble_class, ensemble_nbest, max_models_on_disc, seed, | |||
| memory_limit, | |||
| include_classifier, include_feature_preprocessor, include_regressor, exclude_classifier, | |||
| exclude_regressor, exclude_feature_preprocessor, test_size, resampling_strategy, train_size, | |||
| shuffle, folds, data_csv, target_columns, metric_name, metrics,greater_is_better,scoring_functions,tmp_folder, | |||
| create_by,update_by) | |||
| values (#{autoMl.mlName}, #{autoMl.mlDescription}, #{autoMl.taskType}, #{autoMl.datasetName}, | |||
| shuffle, folds, target_columns, metric_name, metrics, greater_is_better, scoring_functions, | |||
| tmp_folder, | |||
| create_by, update_by) | |||
| values (#{autoMl.mlName}, #{autoMl.mlDescription}, #{autoMl.taskType}, #{autoMl.dataset}, | |||
| #{autoMl.timeLeftForThisTask}, #{autoMl.perRunTimeLimit}, | |||
| #{autoMl.ensembleSize}, #{autoMl.ensembleClass}, #{autoMl.ensembleNbest}, | |||
| #{autoMl.maxModelsOnDisc}, #{autoMl.seed}, | |||
| #{autoMl.memoryLimit}, #{autoMl.includeClassifier}, #{autoMl.includeFeaturePreprocessor}, | |||
| #{autoMl.includeRegressor}, #{autoMl.excludeClassifier}, | |||
| #{autoMl.excludeRegressor}, #{autoMl.excludeFeaturePreprocessor}, #{autoMl.testSize}, #{autoMl.resamplingStrategy}, | |||
| #{autoMl.excludeRegressor}, #{autoMl.excludeFeaturePreprocessor}, #{autoMl.testSize}, | |||
| #{autoMl.resamplingStrategy}, | |||
| #{autoMl.trainSize}, #{autoMl.shuffle}, | |||
| #{autoMl.folds}, #{autoMl.dataCsv}, | |||
| #{autoMl.targetColumns}, #{autoMl.metricName}, #{autoMl.metrics},#{autoMl.greaterIsBetter},#{autoMl.scoringFunctions},#{autoMl.tmpFolder}, | |||
| #{autoMl.folds}, | |||
| #{autoMl.targetColumns}, #{autoMl.metricName}, #{autoMl.metrics}, #{autoMl.greaterIsBetter}, | |||
| #{autoMl.scoringFunctions}, #{autoMl.tmpFolder}, | |||
| #{autoMl.createBy}, #{autoMl.updateBy}) | |||
| </insert> | |||
| @@ -40,8 +43,8 @@ | |||
| <if test="autoMl.taskType != null and autoMl.taskType !=''"> | |||
| task_type = #{autoMl.taskType}, | |||
| </if> | |||
| <if test="autoMl.datasetName != null and autoMl.datasetName !=''"> | |||
| dataset_name = #{autoMl.datasetName}, | |||
| <if test="autoMl.dataset != null and autoMl.dataset !=''"> | |||
| dataset = #{autoMl.dataset}, | |||
| </if> | |||
| <if test="autoMl.timeLeftForThisTask != null"> | |||
| time_left_for_this_task = #{autoMl.timeLeftForThisTask}, | |||
| @@ -67,24 +70,13 @@ | |||
| <if test="autoMl.memoryLimit != null"> | |||
| memory_limit = #{autoMl.memoryLimit}, | |||
| </if> | |||
| <if test="autoMl.includeClassifier != null and autoMl.includeClassifier !=''"> | |||
| include_classifier = #{autoMl.includeClassifier}, | |||
| </if> | |||
| <if test="autoMl.includeFeaturePreprocessor != null and autoMl.includeFeaturePreprocessor !=''"> | |||
| include_feature_preprocessor = #{autoMl.includeFeaturePreprocessor}, | |||
| </if> | |||
| <if test="autoMl.includeRegressor != null and autoMl.includeRegressor !=''"> | |||
| include_regressor = #{autoMl.includeRegressor}, | |||
| </if> | |||
| <if test="autoMl.excludeClassifier != null and autoMl.excludeClassifier !=''"> | |||
| exclude_classifier = #{autoMl.excludeClassifier}, | |||
| </if> | |||
| <if test="autoMl.excludeRegressor != null and autoMl.excludeRegressor !=''"> | |||
| exclude_regressor = #{autoMl.excludeRegressor}, | |||
| </if> | |||
| <if test="autoMl.excludeFeaturePreprocessor != null and autoMl.excludeFeaturePreprocessor !=''"> | |||
| exclude_feature_preprocessor = #{autoMl.excludeFeaturePreprocessor}, | |||
| </if> | |||
| include_classifier = #{autoMl.includeClassifier}, | |||
| include_feature_preprocessor = #{autoMl.includeFeaturePreprocessor}, | |||
| include_regressor = #{autoMl.includeRegressor}, | |||
| exclude_classifier = #{autoMl.excludeClassifier}, | |||
| exclude_regressor = #{autoMl.excludeRegressor}, | |||
| exclude_feature_preprocessor = #{autoMl.excludeFeaturePreprocessor}, | |||
| scoring_functions = #{autoMl.scoringFunctions}, | |||
| <if test="autoMl.testSize != null and autoMl.testSize !=''"> | |||
| test_size = #{autoMl.testSize}, | |||
| </if> | |||
| @@ -100,9 +92,6 @@ | |||
| <if test="autoMl.folds != null"> | |||
| folds = #{autoMl.folds}, | |||
| </if> | |||
| <if test="autoMl.dataCsv != null and autoMl.dataCsv !=''"> | |||
| data_csv = #{autoMl.dataCsv}, | |||
| </if> | |||
| <if test="autoMl.tmpFolder != null and autoMl.tmpFolder !=''"> | |||
| tmp_folder = #{autoMl.tmpFolder}, | |||
| </if> | |||
| @@ -112,12 +101,9 @@ | |||
| <if test="autoMl.metrics != null and autoMl.metrics !=''"> | |||
| metrics = #{autoMl.metrics}, | |||
| </if> | |||
| <if test="autoMl.greater_is_better != null"> | |||
| <if test="autoMl.greaterIsBetter != null"> | |||
| greater_is_better = #{autoMl.greaterIsBetter}, | |||
| </if> | |||
| <if test="autoMl.scoringFunctions != null and autoMl.scoringFunctions !=''"> | |||
| scoring_functions = #{autoMl.scoringFunctions}, | |||
| </if> | |||
| <if test="autoMl.targetColumns != null and autoMl.targetColumns !=''"> | |||
| target_columns = #{autoMl.targetColumns}, | |||
| </if> | |||