Commit 754ca326 authored by 张彦钊's avatar 张彦钊

add device_id

parent 7b24623d
#! -*- coding: utf8 -*-
#coding=utf-8
import pymysql
import pandas as pd
......@@ -137,45 +137,36 @@ class multiFFMFormatPandas:
def get_data():
# db = pymysql.connect(host='10.66.157.22', port=4000, user='root', passwd='3SYz54LS9#^9sBvC', db='jerry_test')
# sql = "select max(stat_date) from jerry_test.esmm_train_data"
# validate_date = con_sql(db, sql)[0].values.tolist()[0]
validate_date = "2018-12-19"
db = pymysql.connect(host='10.66.157.22', port=4000, user='root', passwd='3SYz54LS9#^9sBvC', db='jerry_test')
sql = "select max(stat_date) from esmm_train_data"
validate_date = con_sql(db, sql)[0].values.tolist()[0]
print("validate_date:" + validate_date)
# temp = datetime.datetime.strptime(validate_date, "%Y-%m-%d")
# start = (temp - datetime.timedelta(days=30)).strftime("%Y-%m-%d")
start = "2018-11-19"
temp = datetime.datetime.strptime(validate_date, "%Y-%m-%d")
start = (temp - datetime.timedelta(days=30)).strftime("%Y-%m-%d")
print(start)
db = pymysql.connect(host='10.66.157.22', port=4000, user='root', passwd='3SYz54LS9#^9sBvC')
db = pymysql.connect(host='10.66.157.22', port=4000, user='root', passwd='3SYz54LS9#^9sBvC', db='jerry_test')
sql = "select e.y,e.z,e.stat_date,e.ucity_id,e.clevel1_id,e.ccity_name," \
"u.device_type,u.manufacturer,u.channel,c.top,cid_time.time,s.hospital_id,s.doctor_id,f.level2_ids " \
"from jerry_test.esmm_train_data e left join jerry_test.user_feature u on e.device_id = u.device_id " \
"left join jerry_test.cid_type_top c on e.device_id = c.device_id left join jerry_test.cid_time on e.cid_id = cid_time.cid_id " \
"left join jerry_test.service_hospital s on e.diary_service_id = s.id left join jerry_prod.diary_feat f on e.cid_id = f.diary_id " \
"u.device_type,u.manufacturer,u.channel,c.top,cid_time.time,e.device_id " \
"from esmm_train_data e left join user_feature u on e.device_id = u.device_id " \
"left join cid_type_top c on e.device_id = c.device_id left join cid_time on e.cid_id = cid_time.cid_id " \
"where e.stat_date >= '{}'".format(start)
df = con_sql(db, sql)
print(df.shape)
df = df.rename(columns={0: "y", 1: "z", 2: "stat_date", 3: "ucity_id",4: "clevel1_id", 5: "ccity_name",
6:"device_type",7:"manufacturer",8:"channel",9:"top",10:"time",
11:"hospital_id",12:"doctor_id",13:"level2_ids"})
6:"device_type",7:"manufacturer",8:"channel",9:"top",10:"time",11:"device_id"})
print("esmm data ok")
print(df.head(2))
features = 0
category = ["ucity_id","clevel1_id","ccity_name","device_type","manufacturer","channel","top","doctor_id",
"hospital_id","level2_ids"]
for i in category:
df[i] = df[i].fillna("na")
features = features + len(df[i].unique())
df["time"] = df["time"].fillna(0.0)
df["clevel1_id"] = df["clevel1_id"].astype("str")
df["y"] = df["y"].astype("str")
df["z"] = df["z"].astype("str")
df["top"] = df["top"].astype("str")
df["y"] = df["stat_date"].str.cat([df["y"].values.tolist(),df["z"].values.tolist()], sep=",")
df = df.drop(["z","stat_date"], axis=1)
df["y"] = df["stat_date"].str.cat([df["device_id"].values.tolist(),df["y"].values.tolist(),df["z"].values.tolist()], sep=",")
df = df.drop(["z","stat_date","device_id"], axis=1).fillna(0.0)
print(df.head(2))
features = 0
for i in ["ucity_id","clevel1_id","ccity_name","device_type","manufacturer","channel"]:
features = features + len(df[i].unique())
print("fields:{}".format(df.shape[1]-1))
print("features:{}".format(features))
ccity_name = list(set(df["ccity_name"].values.tolist()))
......@@ -188,10 +179,11 @@ def transform(a,validate_date):
df = model.fit_transform(a, y="y", n=160000, processes=22)
df = pd.DataFrame(df)
df["stat_date"] = df[0].apply(lambda x: x.split(",")[0])
df["device_id"] = df[0].apply(lambda x: x.split(",")[1])
df["number"] = np.random.randint(1, 2147483647, df.shape[0])
df["seq"] = list(range(df.shape[0]))
df["seq"] = df["seq"].astype("str")
df["data"] = df[0].apply(lambda x: ",".join(x.split(",")[1:]))
df["data"] = df[0].apply(lambda x: ",".join(x.split(",")[2:]))
df["data"] = df["seq"].str.cat(df["data"], sep=",")
df = df.drop([0,"seq"], axis=1)
print(df.head(2))
......@@ -226,10 +218,6 @@ def get_predict_set(ucity_id,model,ccity_name):
df = df[df["ccity_name"].isin(ccity_name)]
print("after ccity_name filter:")
print(df.shape)
category = ["ucity_id", "clevel1_id", "ccity_name", "device_type", "manufacturer", "channel", "top"]
for i in category:
df[i] = df[i].fillna("na")
df["time"] = df["time"].fillna(0.0)
df["cid_id"] = df["cid_id"].astype("str")
df["clevel1_id"] = df["clevel1_id"].astype("str")
df["top"] = df["top"].astype("str")
......@@ -239,7 +227,7 @@ def get_predict_set(ucity_id,model,ccity_name):
df["y"] = df["label"].str.cat(
[df["device_id"].values.tolist(), df["ucity_id"].values.tolist(), df["cid_id"].values.tolist(),
df["y"].values.tolist(), df["z"].values.tolist()], sep=",")
df = df.drop(["z","label","device_id","cid_id"], axis=1)
df = df.drop(["z","label","device_id","cid_id"], axis=1).fillna(0.0)
print(df.head(2))
df = model.transform(df,n=160000, processes=22)
df = pd.DataFrame(df)
......@@ -270,13 +258,11 @@ def get_predict_set(ucity_id,model,ccity_name):
if __name__ == "__main__":
path = "/home/gmuser/ffm/"
path = "/home/gmuser/data/"
a = time.time()
df, validate_date, ucity_id,ccity_name = get_data()
model = transform(df, validate_date)
# get_predict_set(ucity_id,model,ccity_name)
get_predict_set(ucity_id,model,ccity_name)
b = time.time()
print("cost(分钟)")
print((b-a)/60)
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