| | |
| | | package com.iailab.module.model.mdk.predict.impl; |
| | | |
| | | import com.alibaba.fastjson.JSON; |
| | | import com.alibaba.fastjson.JSONArray; |
| | | import com.alibaba.fastjson.JSONObject; |
| | | import com.iail.model.IAILModel; |
| | |
| | | import com.iailab.module.model.mdk.sample.SampleConstructor; |
| | | import com.iailab.module.model.mdk.sample.dto.SampleData; |
| | | import com.iailab.module.model.mdk.vo.PredictResultVO; |
| | | import com.iailab.module.model.mpk.common.MdkConstant; |
| | | import com.iailab.module.model.mpk.common.utils.DllUtils; |
| | | import lombok.extern.slf4j.Slf4j; |
| | | import org.springframework.beans.factory.annotation.Autowired; |
| | | import org.springframework.stereotype.Component; |
| | | |
| | | import java.util.*; |
| | | import java.util.Date; |
| | | import java.util.HashMap; |
| | | import java.util.List; |
| | | import java.util.Map; |
| | | |
| | | /** |
| | | * @author PanZhibao |
| | |
| | | * @throws ModelInvokeException |
| | | */ |
| | | @Override |
| | | public synchronized PredictResultVO predictByModel(Date predictTime, MmPredictModelEntity predictModel) throws ModelInvokeException { |
| | | public synchronized PredictResultVO predictByModel(Date predictTime, MmPredictModelEntity predictModel,String itemName) throws ModelInvokeException { |
| | | PredictResultVO result = new PredictResultVO(); |
| | | if (predictModel == null) { |
| | | throw new ModelInvokeException("modelEntity is null"); |
| | |
| | | } |
| | | IAILModel newModelBean = composeNewModelBean(predictModel); |
| | | HashMap<String, Object> settings = getPredictSettingsByModelId(modelId); |
| | | // 校验setting必须有pyFile,否则可能导致程序崩溃 |
| | | if (!settings.containsKey(MdkConstant.PY_FILE_KEY)) { |
| | | throw new RuntimeException("模型设置参数缺少必要信息【" + MdkConstant.PY_FILE_KEY + "】,请重新上传模型!"); |
| | | } |
| | | |
| | | if (settings == null) { |
| | | log.error("模型setting不存在,modelId=" + modelId); |
| | | return null; |
| | |
| | | param2Values[portLength] = newModelBean.getDataMap().get("models"); |
| | | param2Values[portLength + 1] = settings; |
| | | |
| | | log.info("#######################预测模型 " + predictModel.getItemid() + " ##########################"); |
| | | JSONObject jsonObjNewModelBean = new JSONObject(); |
| | | jsonObjNewModelBean.put("newModelBean", newModelBean); |
| | | log.info(String.valueOf(jsonObjNewModelBean)); |
| | | JSONObject jsonObjParam2Values = new JSONObject(); |
| | | jsonObjParam2Values.put("param2Values", param2Values); |
| | | log.info(String.valueOf(jsonObjParam2Values)); |
| | | log.info("####################### 预测模型 "+ "【itemId:" + predictModel.getItemid() + ",itemName" + itemName + "】 ##########################"); |
| | | // JSONObject jsonObjNewModelBean = new JSONObject(); |
| | | // jsonObjNewModelBean.put("newModelBean", newModelBean); |
| | | // log.info(String.valueOf(jsonObjNewModelBean)); |
| | | // JSONObject jsonObjParam2Values = new JSONObject(); |
| | | // jsonObjParam2Values.put("param2Values", param2Values); |
| | | log.info("参数: " + JSON.toJSONString(param2Values)); |
| | | |
| | | //IAILMDK.run |
| | | HashMap<String, Object> modelResult = DllUtils.run(newModelBean, param2Values, predictModel.getMpkprojectid()); |
| | |
| | | } |
| | | modelResult = (HashMap<String, Object>) modelResult.get(CommonConstant.MDK_RESULT); |
| | | //打印结果 |
| | | log.info("预测模型计算完成:modelId=" + modelId + modelResult); |
| | | log.info("预测模型计算完成:modelId=" + modelId + ",modelName" + predictModel.getMethodname()); |
| | | JSONObject jsonObjResult = new JSONObject(); |
| | | jsonObjResult.put("result", modelResult); |
| | | log.info(String.valueOf(jsonObjResult)); |
| | | |
| | | List<MmItemOutputEntity> itemOutputList = mmItemOutputService.getByItemid(predictModel.getItemid()); |
| | | Map<MmItemOutputEntity, double[]> predictMatrixs = new HashMap<>(itemOutputList.size()); |
| | | Map<MmItemOutputEntity, double[]> predictMatrixs = new HashMap<>(); |
| | | Map<MmItemOutputEntity, Double> predictDoubleValues = new HashMap<>(); |
| | | for (MmItemOutputEntity output : itemOutputList) { |
| | | if (!modelResult.containsKey(output.getResultstr())) { |
| | | continue; |
| | |
| | | } |
| | | predictMatrixs.put(output, tempColumn); |
| | | break; |
| | | case D: |
| | | Double temp3 = (Double) modelResult.get(output.getResultstr()); |
| | | predictDoubleValues.put(output, temp3); |
| | | break; |
| | | default: |
| | | break; |
| | | } |
| | | } |
| | | result.setPredictMatrixs(predictMatrixs); |
| | | result.setPredictDoubleValues(predictDoubleValues); |
| | | result.setModelResult(modelResult); |
| | | result.setPredictTime(predictTime); |
| | | } catch (Exception ex) { |