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-#!/bin/sh
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-set -x
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-
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-# 0 全局变量/参数
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-originDataSavePath=/dw/recommend/model/31_ad_sample_data_v3_auto
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-bucketFeatureSavePath=/dw/recommend/model/33_ad_train_data_v3_auto
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-model_name=model_bkb8_v3
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-today="$(date +%Y%m%d)"
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-today_early_1="$(date -d '1 days ago' +%Y%m%d)"
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-today_early_2="$(date -d '2 days ago' +%Y%m%d)"
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-
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-LAST_MODEL_HOME=/root/zhaohp/model_online
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-MODEL_PATH=/root/zhaohp/recommend-emr-dataprocess/model
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-PREDICT_PATH=/root/zhaohp/recommend-emr-dataprocess/predict
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-HADOOP=/opt/apps/HADOOP-COMMON/hadoop-common-current/bin/hadoop
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-FM_HOME=/root/sunmingze/alphaFM
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-OSS_PATH=oss://art-recommend.oss-cn-hangzhou.aliyuncs.com/zhangbo
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-max_hour=17
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-max_minute=00
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-
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-export SPARK_HOME=/opt/apps/SPARK2/spark-2.4.8-hadoop3.2-1.0.8
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-export PATH=$SPARK_HOME/bin:$PATH
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-export HADOOP_CONF_DIR=/etc/taihao-apps/hadoop-conf
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-export JAVA_HOME=/usr/lib/jvm/java-1.8.0
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-
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-start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-elapsed=0
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-LOG_PREFIX=广告模型自动更新任务
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-
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-# 1 判断依赖的数据表是否生产完成
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-source /root/anaconda3/bin/activate py37
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-while true; do
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- python_return_code=$(python ad/ad_utils.py --excute_program check_ad_origin_hive --partition ${today} --hh 10)
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-
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- step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- if [ "$python_return_code" -eq 0 ]; then
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- break
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- fi
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- echo "Python程序返回非0值,等待五分钟后再次调用。"
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- sleep 300
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- current_hour=$(date +%H)
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- current_minute=$(date +%M)
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- if (( current_hour > max_hour || (current_hour == max_hour && current_minute >= max_minute) )); then
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- msg="大数据数据生产校验失败, 分区: ${today}10"
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- echo -e "$LOG_PREFIX -- 大数据数据生产校验 -- ${msg}: 耗时 $elapsed"
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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- fi
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-done
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-echo "$LOG_PREFIX -- 大数据数据生产校验 -- 大数据数据生产校验通过: 耗时 $elapsed"
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-
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-
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-
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-
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-# 2 原始特征生成
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-/opt/apps/SPARK2/spark-2.4.8-hadoop3.2-1.0.8/bin/spark-class2 org.apache.spark.deploy.SparkSubmit \
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---class com.aliyun.odps.spark.zhp.makedata_ad.makedata_ad_31_originData_20240620 \
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---master yarn --driver-memory 1G --executor-memory 2G --executor-cores 1 --num-executors 16 \
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-./target/spark-examples-1.0.0-SNAPSHOT-shaded.jar \
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-tablePart:64 repartition:16 \
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-beginStr:${today_early_1}00 endStr:${today}10 \
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-savePath:${originDataSavePath} \
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-table:alg_recsys_ad_sample_all filterHours:00,01,02,03,04,05,06,07 \
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-idDefaultValue:0.01
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="Spark原始样本生产任务执行失败"
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- echo "$LOG_PREFIX -- 原始样本生产 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo "$LOG_PREFIX -- 原始样本生产 -- Spark原始样本生产任务执行成功: 耗时 $step_elapsed"
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-
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-
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-
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-
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-# 3 特征分桶
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-/opt/apps/SPARK2/spark-2.4.8-hadoop3.2-1.0.8/bin/spark-class2 org.apache.spark.deploy.SparkSubmit \
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---class com.aliyun.odps.spark.zhp.makedata_ad.makedata_ad_33_bucketData_20240622 \
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---master yarn --driver-memory 2G --executor-memory 4G --executor-cores 1 --num-executors 16 \
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-./target/spark-examples-1.0.0-SNAPSHOT-shaded.jar \
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-beginStr:${today_early_1} endStr:${today} repartition:100 \
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-filterNames:adid_,targeting_conversion_ \
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-readPath:${originDataSavePath} \
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-savePath:${bucketFeatureSavePath}
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="Spark特征分桶处理任务执行失败"
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- echo "$LOG_PREFIX -- 特征分桶处理任务 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py ${msg}
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- exit 1
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-fi
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-echo "$LOG_PREFIX -- 特征分桶处理任务 -- spark特征分桶处理执行成功: 耗时 $step_elapsed"
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-
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-
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-
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-
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-# 4 模型训练
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-$HADOOP fs -text ${bucketFeatureSavePath}/${today_early_1}/* | ${FM_HOME}/bin/fm_train -m ${MODEL_PATH}/${model_name}_${today_early_1}.txt -dim 1,1,8 -im ${LAST_MODEL_HOME}/model_online.txt -core 8
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg "模型训练失败"
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- echo "$LOG_PREFIX -- 原始样本生产 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo "$LOG_PREFIX -- 原始样本生产 -- 模型训练完成: 耗时 $step_elapsed"
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-
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-
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-
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-
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-# 5 对比AUC
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-step5_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-
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-# 5.1 计算线上模型的AUC
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-$HADOOP fs -text ${bucketFeatureSavePath}/${today}/* | ${FM_HOME}/bin/fm_predict -m ${LAST_MODEL_HOME}/model_online.txt -dim 8 -core 8 -out ${PREDICT_PATH}/${model_name}_${today}_online.txt
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-online_auc=`cat ${PREDICT_PATH}/${model_name}_${today}_online.txt | /root/sunmingze/AUC/AUC`
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="线上模型AUC计算失败"
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- echo "$LOG_PREFIX -- 线上模型AUC计算 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo "$LOG_PREFIX -- 线上模型AUC计算 -- 线上模型AUC计算完成: 耗时 $step_elapsed"
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-
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-# 5.2 计算新模型的AUC
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-$HADOOP fs -text ${bucketFeatureSavePath}/${today}/* | ${FM_HOME}/bin/fm_predict -m ${MODEL_PATH}/${model_name}_${today_early_1}.txt -dim 8 -core 8 -out ${PREDICT_PATH}/${model_name}_${today}_new.txt
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-new_auc=`cat ${PREDICT_PATH}/${model_name}_${today}_new.txt | /root/sunmingze/AUC/AUC`
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="新模型AUC计算失败"
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- echo "$LOG_PREFIX -- 新模型AUC计算 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo "$LOG_PREFIX -- 新模型AUC计算 -- 新模型AUC计算完成: 耗时 $step_elapsed"
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-
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-echo "AUC比对: 线上模型的AUC: ${online_auc}, 新模型的AUC: ${new_auc}"
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-
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-# 5.3 计算新模型与线上模型的AUC差值的绝对值
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-auc_diff=$(echo "$online_auc - $new_auc" | bc -l)
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-auc_diff_abs=$(echo "sqrt(($auc_diff)^2)" | bc -l)
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step5_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step5_start_time")))
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-# 5.4 如果差值的绝对值小于0.005且新模型的AUC大于0.73, 则更新模型
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-if (( $(echo "${online_auc} <= ${new_auc}" | bc -l) )); then
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- msg="新模型优于线上模型 \n\t线上模型AUC: ${online_auc} \n\t新模型AUC: ${new_auc}"
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- echo -e "$LOG_PREFIX -- AUC对比 -- $msg: 耗时 $step5_elapsed"
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-
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-elif (( $(echo "$auc_diff_abs < 0.005" | bc -l) )) && (( $(echo "$new_auc >= 0.73" | bc -l) )); then
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- msg="新模型与线上模型差值小于阈值0.005 \n\t线上模型AUC: ${online_auc} \n\t新模型AUC: ${new_auc} \n\t差值为: $auc_diff_abs"
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- echo -e "$LOG_PREFIX -- AUC对比 -- $msg: 耗时 $step5_elapsed"
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-
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-else
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- msg="新模型与线上模型差值大于等于阈值0.005或新模型的AUC小于0.73 \n\t线上模型AUC: ${online_auc} \n\t新模型AUC: ${new_auc} \n\t差值为: $auc_diff"
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- echo -e "$LOG_PREFIX -- AUC对比 -- $msg: 耗时 $step5_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-
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-# 5.5 使用前一天线上模型和前一天的新模型对前一天的数据进行预测并计算AUC
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-yesterday_online_model=${LAST_MODEL_HOME}/model_online.txt
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-
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-# 5.5.1 判断model_online文件的生成时间,如果是昨天生成的则表示模型有更新
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-# ${MODEL_PATH}/${model_name}_${today_early_1}.txt 和 ${LAST_MODEL_HOME}/model_online_$(date +\%Y\%m\%d).txt
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-file_creation_date=$(stat -c %Y "$yesterday_online_model")
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-file_creation_date_format=$(date -d "@$file_creation_date" +%Y%m%d)
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-if [ "$file_creation_date_format" == "$today_early_1" ]; then
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- yesterday_online_model=${LAST_MODEL_HOME}/model_online_${today_early_1}.txt
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-fi
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-
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-# 5.5.2 使用昨天的线上模型,进行预测
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-echo "前一天的线上模型路径: $yesterday_online_model"
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-$HADOOP fs -text ${bucketFeatureSavePath}/${today_early_1}/* | ${FM_HOME}/bin/fm_predict -m "$yesterday_online_model" -dim 8 -core 8 -out ${PREDICT_PATH}/${model_name}_${today_early_1}_online_all.txt
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-yesterday_online_auc=`cat ${PREDICT_PATH}/${model_name}_${today_early_1}_online_all.txt | /root/sunmingze/AUC/AUC`
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-
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-# 5.5.3 使用昨天的新模型,进行预测
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-$HADOOP fs -text ${bucketFeatureSavePath}/${today_early_1}/* | ${FM_HOME}/bin/fm_predict -m ${MODEL_PATH}/${model_name}_${today_early_2}.txt -dim 8 -core 8 -out ${PREDICT_PATH}/${model_name}_${today_early_1}_new_all.txt
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-yesterday_new_auc=`cat ${PREDICT_PATH}/${model_name}_${today_early_1}_new_all.txt | /root/sunmingze/AUC/AUC`
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-
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-
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-# 6 模型格式转换
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-change_txt_path=${MODEL_PATH}/${model_name}_${today_early_1}_change.txt
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-cat ${MODEL_PATH}/${model_name}_${today_early_1}.txt |
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-awk -F " " '{
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- if (NR == 1) {
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- print $1"\t"$2
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- } else {
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- split($0, fields, " ");
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- OFS="\t";
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- line=""
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- for (i = 1; i <= 10 && i <= length(fields); i++) {
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- line = (line ? line "\t" : "") fields[i];
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- }
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- print line
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- }
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-}' > "$change_txt_path"
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="新模型文件格式转换失败"
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- echo -e "$LOG_PREFIX -- AUC对比 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo -e "$LOG_PREFIX -- 模型文件格式转换 -- 转换后的路径为 [$change_txt_path]: 耗时 $step_elapsed"
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-
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-
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-
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-
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-# 7 模型文件上传OSS
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-online_model_path=${OSS_PATH}/${model_name}.txt
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-$HADOOP fs -test -e ${online_model_path}
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-if [ $? -eq 0 ]; then
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- echo "删除已存在的OSS模型文件"
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- $HADOOP fs -rm -r -skipTrash ${online_model_path}
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-fi
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-$HADOOP fs -put ${MODEL_PATH}/${model_name}_${today_early_1}_change.txt ${online_model_path}
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="广告模型文件至OSS失败, OSS模型文件路径: $online_model_path"
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- echo -e "$LOG_PREFIX -- 模型文件推送至OSS -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo -e "$LOG_PREFIX -- 模型文件推送至OSS -- 广告模型文件至OSS成功, OSS模型文件路径 $online_model_path: 耗时 $step_elapsed"
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-
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-
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-
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-
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-# 8 本地保存最新的线上使用的模型,用于下一次的AUC验证
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-step_start_time=$(date "+%Y-%m-%d %H:%M:%S")
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-# 将之前的线上模型进行备份,表示从上一个备份时间到当前时间内,使用的线上模型都是此文件
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-# 假设当前是07-11,上一次备份时间为07-07。备份之后表示从07-07下午至07-11上午线上使用的模型文件都是model_online_20240711.txt
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-cp -f ${LAST_MODEL_HOME}/model_online.txt ${LAST_MODEL_HOME}/model_online_${today}.txt
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-cp -f ${MODEL_PATH}/${model_name}_${today_early_1}.txt ${LAST_MODEL_HOME}/model_online.txt
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-
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-step_elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$step_start_time")))
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-if [ $? -ne 0 ]; then
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- msg="模型备份失败"
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- echo -e "$LOG_PREFIX -- 模型备份 -- $msg: 耗时 $step_elapsed"
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- elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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- /root/anaconda3/bin/python ad/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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- exit 1
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-fi
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-echo -e "$LOG_PREFIX -- 模型备份 -- 模型备份完成: 耗时 $step_elapsed"
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-
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-
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-# 9 任务完成通知
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-step_end_time=$(date "+%Y-%m-%d %H:%M:%S")
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-msg="\n\t - 广告模型文件更新完成 \n\t - 前一天线上模型全天数据AUC: $yesterday_online_auc \n\t - 前一天新模型全天数据AUC: $yesterday_new_auc \n\t - 新模型AUC: $new_auc \n\t - 线上模型AUC: $online_auc \n\t - AUC差值: $auc_diff \n\t - 模型上传路径: $online_model_path"
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-echo -e "$LOG_PREFIX -- 模型更新完成 -- $msg: 耗时 $step_elapsed"
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-elapsed=$(($(date +%s -d "$step_end_time") - $(date +%s -d "$start_time")))
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-/root/anaconda3/bin/python ad/ad_monitor_util.py --level info --msg "$msg" --start "$start_time" --elapsed "$elapsed"
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-
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-
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-# 15 15 * * * cd /root/zhaohp/recommend-emr-dataprocess && /bin/sh ./ad/01_ad_model_update_everyday.sh > logs/01_update_eventday_$(date +\%Y-\%m-\%d_\%H-\%M).log 2>&1
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