01_ad_model_update.sh 14 KB

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  1. #!/bin/sh
  2. set -x
  3. export PATH=$SPARK_HOME/bin:$PATH
  4. export HADOOP_CONF_DIR=/etc/taihao-apps/hadoop-conf
  5. export JAVA_HOME=/usr/lib/jvm/java-1.8.0
  6. sh_path=$(cd $(dirname $0); pwd)
  7. source ${sh_path}/00_common.sh
  8. source /root/anaconda3/bin/activate py37
  9. # 全局常量
  10. HADOOP=/opt/apps/HADOOP-COMMON/hadoop-common-current/bin/hadoop
  11. TRAIN_PATH=/dw/recommend/model/31_ad_sample_data_v4
  12. BUCKET_FEATURE_PATH=/dw/recommend/model/33_ad_train_data_v4
  13. TABLE=alg_recsys_ad_sample_all
  14. # 特征文件名
  15. feature_file=20240703_ad_feature_name.txt
  16. # 模型本地临时保存路径
  17. model_local_home=/root/zhaohp/XGB/
  18. # 模型HDFS保存路径,测试时修改为其他路径,避免影响线上
  19. MODEL_PATH=/dw/recommend/model/35_ad_model
  20. # 预测结果保存路径,测试时修改为其他路径,避免影响线上
  21. PREDICT_RESULT_SAVE_PATH=/dw/recommend/model/34_ad_predict_data
  22. # 模型OSS保存路径,测试时修改为其他路径,避免影响线上
  23. MODEL_OSS_PATH=oss://art-recommend.oss-cn-hangzhou.aliyuncs.com/zhangbo/
  24. # 线上模型名,测试时修改为其他模型名,避免影响线上
  25. model_name=model_xgb_351_1000_v2
  26. # 线上校准文件名
  27. OSS_CALIBRATION_FILE_NAME=model_xgb_351_1000_v2_calibration
  28. # 本地保存HDFS模型路径文件,测试时修改为其他模型名,避免影响线上
  29. model_path_file=${model_local_home}/online_model_path.txt
  30. # 获取当前是星期几,1表示星期一
  31. current_day_of_week="$(date +"%u")"
  32. # 任务开始时间
  33. start_time=$(date +%s)
  34. # 前一天
  35. today_early_1="$(date -d '1 days ago' +%Y%m%d)"
  36. # 线上模型在HDFS中的路径
  37. online_model_path=`cat ${model_path_file}`
  38. # 训练用的数据路径
  39. train_data_path=""
  40. # 评估用的数据路径
  41. predict_date_path=""
  42. #评估结果保存路径
  43. new_model_predict_result_path=""
  44. # 模型保存路径
  45. model_save_path=""
  46. # 评测结果保存路径,后续需要根据此文件评估是否要更新模型
  47. predict_analyse_file_path=""
  48. # 校准文件保存路径
  49. calibration_file_path=""
  50. # 保存模型评估的分析结果
  51. old_incr_rate_avg=0
  52. new_incr_rate_avg=0
  53. top10_msg=""
  54. declare -A real_score_map
  55. declare -A old_score_map
  56. declare -A new_score_map
  57. # 校验命令的退出码
  58. check_run_status() {
  59. local status=$1
  60. local step_start_time=$2
  61. local step_name=$3
  62. local msg=$4
  63. local step_end_time=$(date +%s)
  64. local step_elapsed=$(($step_end_time - $step_start_time))
  65. if [ $status -ne 0 ]; then
  66. echo "$LOG_PREFIX -- ${step_name}失败: 耗时 $step_elapsed"
  67. local elapsed=$(($step_end_time - $start_time))
  68. /root/anaconda3/bin/python ${sh_path}/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed" --top10 "${top10_msg}"
  69. exit 1
  70. else
  71. echo "$LOG_PREFIX -- ${step_name}成功: 耗时 $step_elapsed"
  72. fi
  73. }
  74. send_success_upload_msg(){
  75. # 发送更新成功通知
  76. local msg=" 广告模型文件更新完成"
  77. msg+="\n\t - 老模型Top10差异平均值: ${old_incr_rate_avg}"
  78. msg+="\n\t - 新模型Top10差异平均值: ${new_incr_rate_avg}"
  79. msg+="\n\t - 模型在HDFS中的路径: ${model_save_path}"
  80. msg+="\n\t - 模型上传OSS中的路径: ${MODEL_OSS_PATH}/${model_name}.tar.gz"
  81. local step_end_time=$(date +%s)
  82. local elapsed=$(($step_end_time - $start_time))
  83. /root/anaconda3/bin/python ${sh_path}/ad_monitor_util.py --level info --msg "${msg}" --start "${start_time}" --elapsed "${elapsed}" --top10 "${top10_msg}"
  84. }
  85. init() {
  86. declare -a date_keys=()
  87. local count=1
  88. local current_data="$(date -d '2 days ago' +%Y%m%d)"
  89. # 循环获取前 n 天的非节日日期
  90. while [[ $count -le 7 ]]; do
  91. date_key=$(date -d "$current_data" +%Y%m%d)
  92. # 判断是否是节日,并拼接训练数据路径
  93. if [ $(is_not_holidays $date_key) -eq 1 ]; then
  94. # 将 date_key 放入数组
  95. date_keys+=("$date_key")
  96. if [[ -z ${train_data_path} ]]; then
  97. train_data_path="${BUCKET_FEATURE_PATH}/${date_key}"
  98. else
  99. train_data_path="${BUCKET_FEATURE_PATH}/${date_key},${train_data_path}"
  100. fi
  101. count=$((count + 1))
  102. else
  103. echo "日期: ${date_key}是节日,跳过"
  104. fi
  105. current_data=$(date -d "$current_data -1 day" +%Y%m%d)
  106. done
  107. last_index=$((${#date_keys[@]} - 1))
  108. train_first_day=${date_keys[$last_index]}
  109. train_last_day=${date_keys[0]}
  110. model_save_path=${MODEL_PATH}/${model_name}_${train_first_day: -4}_${train_last_day: -4}
  111. predict_date_path=${BUCKET_FEATURE_PATH}/${today_early_1}
  112. new_model_predict_result_path=${PREDICT_RESULT_SAVE_PATH}/${today_early_1}_351_1000_${train_first_day: -4}_${train_last_day: -4}
  113. online_model_predict_result_path=${PREDICT_RESULT_SAVE_PATH}/${today_early_1}_351_1000_${online_model_path: -9}
  114. predict_analyse_file_path=${model_local_home}/predict_analyse_file/${today_early_1}_351_1000_analyse.txt
  115. calibration_file_path=${model_local_home}/${OSS_CALIBRATION_FILE_NAME}.txt
  116. echo "init param train_data_path: ${train_data_path}"
  117. echo "init param predict_date_path: ${predict_date_path}"
  118. echo "init param new_model_predict_result_path: ${new_model_predict_result_path}"
  119. echo "init param online_model_predict_result_path: ${online_model_predict_result_path}"
  120. echo "init param model_save_path: ${model_save_path}"
  121. echo "init param online_model_path: ${online_model_path}"
  122. echo "init param feature_file: ${feature_file}"
  123. echo "init param model_name: ${model_name}"
  124. echo "init param model_local_home: ${model_local_home}"
  125. echo "init param model_oss_path: ${MODEL_OSS_PATH}"
  126. echo "init param predict_analyse_file_path: ${predict_analyse_file_path}"
  127. echo "init param calibration_file_path: ${calibration_file_path}"
  128. echo "init param current_day_of_week: ${current_day_of_week}"
  129. echo "当前Python环境安装的Python版本: $(python --version)"
  130. echo "当前Python环境安装的三方包: $(python -m pip list)"
  131. }
  132. # 校验大数据任务是否执行完成
  133. check_ad_hive() {
  134. local step_start_time=$(date +%s)
  135. local max_hour=05
  136. local max_minute=30
  137. local elapsed=0
  138. while true; do
  139. local python_return_code=$(python ${sh_path}/ad_utils.py --excute_program check_ad_origin_hive --partition ${today_early_1} --hh 23)
  140. elapsed=$(($(date +%s) - $step_start_time))
  141. if [ "$python_return_code" -eq 0 ]; then
  142. break
  143. fi
  144. echo "Python程序返回非0值,等待五分钟后再次调用。"
  145. sleep 300
  146. local current_hour=$(date +%H)
  147. local current_minute=$(date +%M)
  148. if (( current_hour > max_hour || (current_hour == max_hour && current_minute >= max_minute) )); then
  149. local msg="大数据数据生产校验失败, 分区: ${today_early_1}"
  150. echo -e "$LOG_PREFIX -- 大数据数据生产校验 -- ${msg}: 耗时 $elapsed"
  151. /root/anaconda3/bin/python ${sh_path}/ad_monitor_util.py --level error --msg "$msg" --start "$start_time" --elapsed "$elapsed"
  152. exit 1
  153. fi
  154. done
  155. 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"
  156. }
  157. origin_data() {
  158. (
  159. source ${sh_path}/25_xgb_make_data_origin_bucket.sh
  160. make_origin_data
  161. )
  162. }
  163. bucket_feature() {
  164. (
  165. source ${sh_path}/25_xgb_make_data_origin_bucket.sh
  166. make_bucket_feature
  167. )
  168. }
  169. xgb_train() {
  170. local step_start_time=$(date +%s)
  171. /opt/apps/SPARK3/spark-3.3.1-hadoop3.2-1.0.5/bin/spark-class org.apache.spark.deploy.SparkSubmit \
  172. --class com.tzld.piaoquan.recommend.model.train_01_xgb_ad_20240808 \
  173. --master yarn --driver-memory 6G --executor-memory 9G --executor-cores 1 --num-executors 31 \
  174. --conf spark.yarn.executor.memoryoverhead=1000 \
  175. --conf spark.shuffle.service.enabled=true \
  176. --conf spark.shuffle.service.port=7337 \
  177. --conf spark.shuffle.consolidateFiles=true \
  178. --conf spark.shuffle.manager=sort \
  179. --conf spark.storage.memoryFraction=0.4 \
  180. --conf spark.shuffle.memoryFraction=0.5 \
  181. --conf spark.default.parallelism=200 \
  182. /root/zhangbo/recommend-model/recommend-model-produce/target/recommend-model-produce-jar-with-dependencies.jar \
  183. featureFile:20240703_ad_feature_name.txt \
  184. trainPath:${train_data_path} \
  185. testPath:${predict_date_path} \
  186. savePath:${new_model_predict_result_path} \
  187. modelPath:${model_save_path} \
  188. eta:0.01 gamma:0.0 max_depth:5 num_round:1000 num_worker:30 repartition:20
  189. local return_code=$?
  190. check_run_status $return_code $step_start_time "XGB模型训练任务" "XGB模型训练失败"
  191. }
  192. calc_model_predict() {
  193. local count=0
  194. local max_line=10
  195. local old_total_diff=0
  196. local new_total_diff=0
  197. top10_msg="| CID | 老模型相对真实CTCVR的变化 | 新模型相对真实CTCVR的变化 |"
  198. top10_msg+=" \n| ---- | --------- | -------- |"
  199. while read -r line && [ ${count} -lt ${max_line} ]; do
  200. # 使用 ! 取反判断,只有当行中不包含 "cid" 时才执行继续的逻辑
  201. if [[ "${line}" == *"cid"* ]]; then
  202. continue
  203. fi
  204. read -a numbers <<< "${line}"
  205. # 分数分别保存
  206. real_score_map[${numbers[0]}]=${numbers[3]}
  207. old_score_map[${numbers[0]}]=${numbers[6]}
  208. new_score_map[${numbers[0]}]=${numbers[7]}
  209. # 拼接Top10详情的飞书消息
  210. top10_msg="${top10_msg} \n| ${numbers[0]} | ${numbers[6]} | ${numbers[7]} | "
  211. # 计算top10相对误差绝对值的均值
  212. old_abs_score=$( echo "if(${numbers[6]} < 0) -${numbers[6]} else ${numbers[6]}" | bc -l)
  213. new_abs_score=$( echo "if(${numbers[7]} < 0) -${numbers[7]} else ${numbers[7]}" | bc -l)
  214. old_total_diff=$( echo "${old_total_diff} + ${old_abs_score}" | bc -l )
  215. new_total_diff=$( echo "${new_total_diff} + ${new_abs_score}" | bc -l )
  216. count=$((${count} + 1))
  217. done < "${predict_analyse_file_path}"
  218. local return_code=$?
  219. check_run_status $return_code $step_start_time "计算Top10差异" "计算Top10差异异常"
  220. old_incr_rate_avg=$( echo "scale=6; ${old_total_diff} / ${count}" | bc -l )
  221. check_run_status $? $step_start_time "计算老模型Top10差异" "计算老模型Top10差异异常"
  222. new_incr_rate_avg=$( echo "scale=6; ${new_total_diff} / ${count}" | bc -l )
  223. check_run_status $? $step_start_time "计算新模型Top10差异" "计算新模型Top10差异异常"
  224. echo "老模型Top10差异平均值: ${old_incr_rate_avg}"
  225. echo "新模型Top10差异平均值: ${new_incr_rate_avg}"
  226. echo "新老模型分数对比: "
  227. for cid in "${!new_score_map[@]}"; do
  228. echo "\t CID: $cid, 老模型分数: ${old_score_map[$cid]}, 新模型分数: ${new_score_map[$cid]}"
  229. done
  230. }
  231. model_predict() {
  232. # 线上模型评估最新的数据
  233. local step_start_time=$(date +%s)
  234. /opt/apps/SPARK3/spark-3.3.1-hadoop3.2-1.0.5/bin/spark-class org.apache.spark.deploy.SparkSubmit \
  235. --class com.tzld.piaoquan.recommend.model.pred_01_xgb_ad_hdfsfile_20240813 \
  236. --master yarn --driver-memory 1G --executor-memory 3G --executor-cores 1 --num-executors 30 \
  237. --conf spark.yarn.executor.memoryoverhead=1024 \
  238. --conf spark.shuffle.service.enabled=true \
  239. --conf spark.shuffle.service.port=7337 \
  240. --conf spark.shuffle.consolidateFiles=true \
  241. --conf spark.shuffle.manager=sort \
  242. --conf spark.storage.memoryFraction=0.4 \
  243. --conf spark.shuffle.memoryFraction=0.5 \
  244. --conf spark.default.parallelism=200 \
  245. /root/zhangbo/recommend-model/recommend-model-produce/target/recommend-model-produce-jar-with-dependencies.jar \
  246. featureFile:20240703_ad_feature_name.txt \
  247. testPath:${predict_date_path} \
  248. savePath:${online_model_predict_result_path} \
  249. modelPath:${online_model_path}
  250. local return_code=$?
  251. check_run_status $return_code $step_start_time "线上模型评估${predict_date_path: -8}的数据" "线上模型评估${predict_date_path: -8}的数据失败"
  252. # 结果分析
  253. local python_return_code=$(python ${sh_path}/model_predict_analyse.py -op ${online_model_predict_result_path} -np ${new_model_predict_result_path} -af ${predict_analyse_file_path} -cf ${calibration_file_path})
  254. check_run_status $python_return_code $step_start_time "分析线上模型评估${predict_date_path: -8}的数据" "分析线上模型评估${predict_date_path: -8}的数据失败"
  255. calc_model_predict
  256. if (( $(echo "${new_incr_rate_avg} > 0.100000" | bc -l ) ));then
  257. echo "线上模型评估${predict_date_path: -8}的数据,绝对误差大于0.1,请检查"
  258. check_run_status 1 $step_start_time "${predict_date_path: -8}的数据,绝对误差大于0.1" "线上模型评估${predict_date_path: -8}的数据,绝对误差大于0.1,请检查"
  259. exit 1
  260. fi
  261. # 对比两个模型的差异
  262. score_diff=$( echo "${new_incr_rate_avg} - ${old_incr_rate_avg}" | bc -l )
  263. if (( $(echo "${score_diff} > 0.050000" | bc -l ) ));then
  264. echo "两个模型评估${predict_date_path: -8}的数据,两个模型分数差异为: ${score_diff}, 大于0.05, 请检查"
  265. check_run_status 1 $step_start_time "两个模型评估${predict_date_path: -8}的数据" "两个模型评估${predict_date_path: -8}的数据,两个模型分数差异为: ${score_diff}, 大于0.05"
  266. exit 1
  267. fi
  268. }
  269. model_upload_oss() {
  270. local step_start_time=$(date +%s)
  271. (
  272. cd ${model_local_home}
  273. ${HADOOP} fs -get ${model_save_path} ${model_name}
  274. if [ ! -d ${model_name} ]; then
  275. echo "从HDFS下载模型失败"
  276. check_run_status 1 $step_start_time "HDFS下载模型任务" "HDFS下载模型失败"
  277. exit 1
  278. fi
  279. tar -czvf ${model_name}.tar.gz -C ${model_name} .
  280. rm -rf ${model_name}.tar.gz.crc
  281. # 从OSS中移除模型文件和校准文件
  282. ${HADOOP} fs -rm -r -skipTrash ${MODEL_OSS_PATH}/${model_name}.tar.gz ${MODEL_OSS_PATH}/${OSS_CALIBRATION_FILE_NAME}.txt
  283. # 将模型文件和校准文件推送到OSS上
  284. ${HADOOP} fs -put ${model_name}.tar.gz ${OSS_CALIBRATION_FILE_NAME}.txt ${MODEL_OSS_PATH}
  285. local return_code=$?
  286. check_run_status $return_code $step_start_time "模型上传OSS任务" "模型上传OSS失败"
  287. echo ${model_save_path} > ${model_path_file}
  288. #
  289. rm -f ./${model_name}.tar.gz
  290. rm -rf ./${model_name}
  291. rm -rf ${OSS_CALIBRATION_FILE_NAME}.txt
  292. )
  293. local return_code=$?
  294. check_run_status $return_code $step_start_time "模型上传OSS任务" "模型上传OSS失败"
  295. local step_end_time=$(date +%s)
  296. local elapsed=$(($step_end_time - $start_time))
  297. echo -e "$LOG_PREFIX -- 模型更新完成 -- 模型更新成功: 耗时 $elapsed"
  298. send_success_upload_msg
  299. }
  300. # 主方法
  301. main() {
  302. init
  303. check_ad_hive
  304. origin_data
  305. bucket_feature
  306. if [ "${current_day_of_week}" -eq 1 ] || [ "${current_day_of_week}" -eq 3 ] || [ "${current_day_of_week}" -eq 5 ]; then
  307. echo "当前是周一,周三或周五,开始训练并更新模型"
  308. xgb_train
  309. model_predict
  310. model_upload_oss
  311. else
  312. echo "当前是周一,周三或周五,不更新模型"
  313. fi
  314. }
  315. main