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Nevar pievienot vairāk kā 25 tēmas Tēmai ir jāsākas ar burtu vai ciparu, tā var saturēt domu zīmes ('-') un var būt līdz 35 simboliem gara.

forcasting2.py 21KB

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  1. from flask import Flask, render_template, send_file, request, redirect, Response
  2. import os
  3. import pandas as pd
  4. import warnings
  5. import json
  6. import requests
  7. from urllib.request import urlopen
  8. warnings.filterwarnings("ignore")
  9. app = Flask(__name__)
  10. @app.route("/", methods=["GET"])
  11. def home():
  12. return 'forcasting app running'
  13. ######################################################################################################################
  14. list_output=[]
  15. def day(Num,get_url,get_url_token,post_url,post_url_token):
  16. import requests
  17. url = get_url
  18. payload = {}
  19. headers = {
  20. 'Authorization': get_url_token
  21. }
  22. response = requests.request("GET", url, headers=headers, data=payload)
  23. #a=response.text
  24. # print(response.text)
  25. import pandas as pd
  26. df2 = pd.read_json(response.text, orient ='index')
  27. df2=df2.reset_index()
  28. df2.columns = ['key','value']
  29. #print(df2)
  30. a=df2['value'][0]
  31. j=json.loads(a)
  32. userdata = pd.DataFrame(j)
  33. #df1
  34. itemid=userdata[['itemname','itemid']]
  35. itemid.columns = ['ItemName', 'ItemId']
  36. #df1=pd.read_csv(r'./upload/' + name)
  37. #df1=df1[df1['obdate']!='01/01/0001']
  38. userdata.columns = ['journaldate','sum','itemid','itemname']
  39. # import pandas as pd
  40. # userdata = pd.read_csv(r'C:\Users\Bizga\Desktop\forcast\5yearsitems.csv')
  41. # itemid = userdata[['itemname', 'itemid']]
  42. #userdata['journaldate'] = pd.to_datetime(userdata['journaldate'])
  43. userdata["journaldate"] = userdata["journaldate"].astype(str)
  44. #userdata[["year", "month", "day"]] = userdata["journaldate"].str.split("/", expand = True)
  45. userdata[[ "day","month","year", ]] = userdata["journaldate"].str.split("-", expand = True)
  46. #userdata['Month-Year']=userdata['year'].astype(str)+'-'+userdata['month'].astype(str)
  47. item_unique_name = userdata['itemname'].unique()
  48. #df=pd.read_csv("C:\\Users\\Bizgaze\\2021_2022.csv")
  49. # Group the DataFrame by the 'item' column
  50. grouped = userdata.groupby('itemname')
  51. # Print the unique items in the 'item' column
  52. #print(grouped.groups.keys())
  53. # Iterate over the unique items and print the group data
  54. for item, userdata in grouped:
  55. print("itemname: ", item)
  56. item_id = userdata.iloc[-1]['itemid']
  57. print(item_id)
  58. userdata= userdata.groupby('journaldate').sum()
  59. userdata= userdata.reset_index()
  60. #print(userdata)
  61. fulldata=userdata[['journaldate','sum']]
  62. fulldata.columns = ["Dates","SALES"]
  63. #************************************************************************************************************************
  64. ## Use Techniques Differencing
  65. import pandas as pd
  66. from pandas import DataFrame
  67. # userdata=pd.read_csv(r"C:\Users\Bizgaze\ipynb files\TS forcasting\working\139470.csv")
  68. userdata=userdata[['journaldate','sum','itemid']]
  69. userdata.columns = ['Date', 'sales','sku']
  70. from statsmodels.tsa.stattools import adfuller
  71. DATE=[]
  72. SALES=[]
  73. def adf_test(series,userdata):
  74. result=adfuller(series)
  75. print('ADF Statistics: {}'.format(result[0]))
  76. print('p- value: {}'.format(result[1]))
  77. if result[1] <= 0.05:
  78. print("strong evidence against the null hypothesis, reject the null hypothesis. Data has no unit root and is stationary")
  79. else:
  80. #print(userdata)
  81. print(stationary_test(userdata))
  82. print("weak evidence against null hypothesis, time series has a unit root, indicating it is non-stationary ")
  83. #********************************************* stationary or non-stationary **********************************************************
  84. def stationary_test(userdata):
  85. data=pd.DataFrame(userdata)
  86. for i in range(1,13):
  87. print(i)
  88. sales_data=DataFrame()
  89. data['sales']=data['sales'].shift(i)
  90. data.dropna(inplace=True)
  91. #print( userdata['sales'])
  92. try:
  93. X=adf_test(data["sales"],userdata="nothing")
  94. if "non-stationary" in str(X):
  95. print("non-stationary")
  96. else:
  97. print("stationary")
  98. #print(userdata[["Date","sales"]])
  99. #df_sale=pd.DataFrame(userdata)
  100. DATE.append(data["Date"])
  101. SALES.append(data["sales"])
  102. #df4 = pd.concat([data, sales_data], axis=1)
  103. return "done"
  104. break
  105. except ValueError:
  106. pass
  107. try:
  108. adf_test(userdata["sales"],userdata)
  109. except ValueError:
  110. pass
  111. sales=pd.DataFrame(SALES).T
  112. dates=pd.DataFrame(DATE).T
  113. try:
  114. df4 = pd.concat([dates["Date"],sales["sales"]], axis=1)
  115. df4=df4.dropna()
  116. print(df4)
  117. except KeyError:
  118. df4=userdata[['Date','sales']]
  119. df4=df4.dropna()
  120. print(df4)
  121. pass
  122. #####################################################################################################################
  123. userdata=df4
  124. a = userdata.iloc[-1]['Date']
  125. #userdata['Date'] = pd.to_datetime(userdata['Date'])
  126. userdata["Date"] = userdata["Date"].astype(str)
  127. print('after testing')
  128. print(userdata)
  129. userdata[["year", "month", "day"]] = userdata["Date"].str.split("-", expand = True)
  130. #userdata[["year", "month"]] = userdata["Month"].str.split("-", expand=True)
  131. #userdata = userdata[["year","month",'sum']]
  132. userdata["year"] = userdata["year"].astype(int)
  133. userdata["month"] = userdata["month"].astype(int)
  134. userdata["day"] = userdata["day"].astype(int)
  135. #####################################################################################################################
  136. list_dates=[]
  137. import datetime
  138. days=int(Num)+1
  139. import pandas as pd
  140. base_date=pd.to_datetime(a)
  141. for x in range(1,days):
  142. dates=(base_date + datetime.timedelta(days=x))
  143. dates=str(dates).replace(" 00:00:00","")
  144. #print(dates)
  145. list_dates.append(dates)
  146. fut_date = pd.DataFrame(list_dates)
  147. fut_date.columns = ["Dates"]
  148. future_dates=pd.DataFrame(list_dates)
  149. future_dates.columns=["Dates"]
  150. future_dates[["year", "month", "day"]] = future_dates["Dates"].str.split("-", expand=True)
  151. future_dates.drop(['Dates'], axis=1, inplace=True)
  152. future_dates["year"] = future_dates["year"].astype(int)
  153. future_dates["month"] = future_dates["month"].astype(int)
  154. future_dates["day"] = future_dates["day"].astype(int)
  155. #print(future_dates)
  156. ###############################################################################
  157. userdata['sales']=userdata["sales"].astype(float)
  158. dependent = userdata[['year','month','day']]
  159. independent = userdata['sales']
  160. import numpy as np
  161. import pandas as pd
  162. import xgboost
  163. from sklearn.model_selection import train_test_split
  164. from sklearn.model_selection import GridSearchCV
  165. from sklearn.metrics import roc_auc_score
  166. import matplotlib.pyplot as plt
  167. #model = xgboost.XGBRegressor()
  168. from sklearn.ensemble import RandomForestRegressor
  169. model = RandomForestRegressor(random_state=1,n_jobs=-1)
  170. #model.fit(dependent, independent)
  171. model.fit(dependent, independent)
  172. #future=pd.read_csv('future_dates.csv')
  173. future_prediction = model.predict(future_dates)
  174. #print(future_prediction)
  175. df=pd.DataFrame(future_prediction)
  176. df.columns = ["SALES"]
  177. frames = [fut_date, df]
  178. result = pd.concat(frames,axis=1)
  179. result['itemname'] = item
  180. result['itemid'] =item_id
  181. result.columns = ['Date','Predict','ItemName','ItemId']
  182. #result['Predict']=result["Predict"].astype(int)
  183. result['UpperLimit']=result["Predict"].mean()+result['Predict'].std()*3
  184. result['LowerLimit']=result['Predict'].mean()-result['Predict'].std()*3
  185. print(result)
  186. result.to_json('forcast.json', orient="records")
  187. with open('forcast.json', 'r') as json_file:
  188. json_load = json.load(json_file)
  189. #url = "https://demo.bizgaze.app/apis/v4/bizgaze/integrations/demandforecast/saveforecast/List"
  190. url=post_url
  191. payload = json.dumps(json_load)#.replace("]", "").replace("[", "")
  192. #print(payload)
  193. headers = {
  194. #'Authorization': 'stat 263162e61f084d3392f162eb7ec39b2c',#demo
  195. 'Authorization': post_url_token,#test
  196. #'Content-Type': 'application/json'
  197. }
  198. response = requests.request("POST", url, headers=headers, data=payload)
  199. print("##############################################################")
  200. print(response.text)
  201. return 'done'
  202. #############################################################################################################################################################
  203. def month(Num,get_url,get_url_token,post_url,post_url_token):
  204. #url='https://qa.bizgaze.app/apis/v4/bizgaze/integrations/demandforecast/getitemdata'
  205. # url= get_url
  206. # response = urlopen(url)
  207. # data_json = json.loads(response.read())
  208. # headers = {
  209. # 'Authorization':get_url_token,
  210. # #'Authorization':'stat 873f2e6f70b3483e983972f96fbf5ea4',#qa
  211. # 'Content-Type': 'application/json'
  212. # }
  213. # response = requests.request("GET", url, headers=headers, data=data_json)
  214. # #print("##############################################################")
  215. # a=response.text
  216. # # print(response.text)
  217. import requests
  218. url = get_url
  219. payload = {}
  220. headers = {
  221. 'Authorization': get_url_token
  222. }
  223. response = requests.request("GET", url, headers=headers, data=payload)
  224. #print(response.text)
  225. import pandas as pd
  226. df2 = pd.read_json(response.text, orient ='index')
  227. df2=df2.reset_index()
  228. df2.columns = ['key','value']
  229. #print(df2)
  230. a=df2['value'][0]
  231. j=json.loads(a)
  232. userdata = pd.DataFrame(j)
  233. #filePath='path.csv'
  234. # if os.path.exists(filePath):
  235. # print('file exist')
  236. # os.remove('path.csv')
  237. # else:
  238. # print("file doesn't exists")
  239. # pass
  240. #userdata=df
  241. itemid=userdata[['itemname','itemid']]
  242. itemid.columns = ['ItemName', 'ItemId']
  243. #df1=pd.read_csv(r'./upload/' + name)
  244. #df1=df1[df1['obdate']!='01/01/0001']
  245. userdata.columns = ['journaldate','sum','itemid','itemname']
  246. # import pandas as pd
  247. # userdata = pd.read_csv(r'C:\Users\Bizga\Desktop\forcast\5yearsitems.csv')
  248. # itemid = userdata[['itemname', 'itemid']]
  249. #userdata['journaldate'] = pd.to_datetime(userdata['journaldate'])
  250. userdata["journaldate"] = userdata["journaldate"].astype(str)
  251. #userdata[["year", "month", "day"]] = userdata["journaldate"].str.split("-", expand = True)
  252. userdata[[ "day","month","year", ]] = userdata["journaldate"].str.split("-", expand = True)
  253. #userdata[["year", "day", "month"]] = userdata["journaldate"].str.split("/", expand=True)
  254. userdata['Month-Year']=userdata['year'].astype(str)+'-'+userdata['month'].astype(str)
  255. item_unique_name = userdata['itemname'].unique()
  256. #df=pd.read_csv("C:\\Users\\Bizgaze\\2021_2022.csv")
  257. # Group the DataFrame by the 'item' column
  258. grouped = userdata.groupby('itemname')
  259. # Print the unique items in the 'item' column
  260. #print(grouped.groups.keys())
  261. # Iterate over the unique items and print the group data
  262. for item, userdata in grouped:
  263. print("itemname: ", item)
  264. item_id = userdata.iloc[-1]['itemid']
  265. print(item_id)
  266. userdata= userdata.groupby('Month-Year').sum()
  267. userdata= userdata.reset_index()
  268. fulldata=userdata[['Month-Year','sum']]
  269. fulldata.columns = ["Dates","SALES"]
  270. #************************************************************************************************************************
  271. ## Use Techniques Differencing
  272. import pandas as pd
  273. from pandas import DataFrame
  274. # userdata=pd.read_csv(r"C:\Users\Bizgaze\ipynb files\TS forcasting\working\139470.csv")
  275. userdata=userdata[['Month-Year','sum','itemid']]
  276. userdata.columns = ['Month', 'sales','sku']
  277. from statsmodels.tsa.stattools import adfuller
  278. DATE=[]
  279. SALES=[]
  280. def adf_test(series,userdata):
  281. result=adfuller(series)
  282. print('ADF Statistics: {}'.format(result[0]))
  283. print('p- value: {}'.format(result[1]))
  284. if result[1] <= 0.05:
  285. print("strong evidence against the null hypothesis, reject the null hypothesis. Data has no unit root and is stationary")
  286. else:
  287. #print(userdata)
  288. print(stationary_test(userdata))
  289. print("weak evidence against null hypothesis, time series has a unit root, indicating it is non-stationary ")
  290. #********************************************* stationary or non-stationary **********************************************************
  291. def stationary_test(userdata):
  292. data=pd.DataFrame(userdata)
  293. for i in range(1,13):
  294. print(i)
  295. sales_data=DataFrame()
  296. data['sales']=data['sales'].shift(i)
  297. data.dropna(inplace=True)
  298. #print( userdata['sales'])
  299. try:
  300. X=adf_test(data["sales"],userdata="nothing")
  301. if "non-stationary" in str(X):
  302. print("non-stationary")
  303. else:
  304. print("stationary")
  305. #print(userdata[["Month","sales"]])
  306. #df_sale=pd.DataFrame(userdata)
  307. DATE.append(data["Month"])
  308. SALES.append(data["sales"])
  309. #df4 = pd.concat([data, sales_data], axis=1)
  310. return "done"
  311. break
  312. except ValueError:
  313. pass
  314. try:
  315. adf_test(userdata["sales"],userdata)
  316. except ValueError:
  317. pass
  318. sales=pd.DataFrame(SALES).T
  319. dates=pd.DataFrame(DATE).T
  320. try:
  321. df4 = pd.concat([dates["Month"],sales["sales"]], axis=1)
  322. df4=df4.dropna()
  323. print(df4)
  324. except KeyError:
  325. df4=userdata[['Month','sales']]
  326. df4=df4.dropna()
  327. print(df4)
  328. pass
  329. #####################################################################################################################
  330. userdata=df4
  331. a = userdata.iloc[-1]['Month']
  332. userdata[["year", "month"]] = userdata["Month"].str.split("-", expand=True)
  333. #userdata = userdata[["year","month",'sum']]
  334. userdata["year"] = userdata["year"].astype(int)
  335. userdata["month"] = userdata["month"].astype(int)
  336. #####################################################################################################################
  337. #a = userdata.iloc[-1]['Month-Year']
  338. from datetime import datetime
  339. from dateutil.relativedelta import relativedelta
  340. import pandas as pd
  341. months_value = int(Num)+1
  342. base_month = pd.to_datetime(a)
  343. list_months = []
  344. def months(MD):
  345. date_after_month = ((base_month + relativedelta(months=MD)).strftime('%Y-%m'))
  346. # print
  347. list_months.append(date_after_month)
  348. for i in range(1, months_value):
  349. months(i)
  350. future_dates = pd.DataFrame(list_months)
  351. future_dates.columns = ["Dates"]
  352. fut_date = pd.DataFrame(list_months)
  353. fut_date.columns = ["Dates"]
  354. future_dates[["year", "month"]] = future_dates["Dates"].str.split("-", expand=True)
  355. future_dates.drop(['Dates'], axis=1, inplace=True)
  356. future_dates["year"] = future_dates["year"].astype(int)
  357. future_dates["month"] = future_dates["month"].astype(int)
  358. ###############################################################################
  359. userdata['sales']=userdata["sales"].astype(float)
  360. dependent = userdata[['year','month']]
  361. independent = userdata['sales']
  362. import numpy as np
  363. import pandas as pd
  364. import xgboost
  365. from sklearn.model_selection import train_test_split
  366. from sklearn.model_selection import GridSearchCV
  367. from sklearn.metrics import roc_auc_score
  368. import matplotlib.pyplot as plt
  369. #model = xgboost.XGBRegressor()
  370. from sklearn.ensemble import RandomForestRegressor
  371. model = RandomForestRegressor(random_state=1,n_jobs=-1)
  372. model.fit(dependent, independent)
  373. #future=pd.read_csv('future_dates.csv')
  374. future_prediction = model.predict(future_dates)
  375. #print(future_prediction)
  376. df=pd.DataFrame(future_prediction)
  377. df.columns = ["SALES"]
  378. frames = [fut_date, df]
  379. result = pd.concat(frames,axis=1)
  380. result['itemname'] = item
  381. result['itemid'] =item_id
  382. result.columns = ['Date','Predict','ItemName','ItemId']
  383. #result['Predict']=result["Predict"].astype(int)
  384. result['UpperLimit']=result["Predict"].mean()+result['Predict'].std()*3
  385. result['LowerLimit']=result['Predict'].mean()-result['Predict'].std()*3
  386. result["LowerLimit"][result["LowerLimit"] < 0] = 0
  387. print(result)
  388. result.to_json('forcast.json', orient="records")
  389. with open('forcast.json', 'r') as json_file:
  390. json_load = json.load(json_file)
  391. #url = "https://demo.bizgaze.app/apis/v4/bizgaze/integrations/demandforecast/saveforecast/List"
  392. url=post_url
  393. payload = json.dumps(json_load)#.replace("]", "").replace("[", "")
  394. #print(payload)
  395. headers = {
  396. #'Authorization': 'stat 263162e61f084d3392f162eb7ec39b2c',#demo
  397. 'Authorization': post_url_token,#test
  398. # 'Content-Type': 'application/json'
  399. }
  400. response = requests.request("POST", url, headers=headers, data=payload)
  401. # print("##############################################################")
  402. # print(response.text)
  403. # filePath='path.csv'
  404. # if os.path.exists(filePath):
  405. # print('file exist')
  406. # #userdata = pd.DataFrame(data)
  407. # result.to_csv('path.csv', mode='a',index=False, header=False)
  408. # else:
  409. # print("file as it doesn't exists")
  410. # #result = pd.DataFrame(data)
  411. # result.to_csv('path.csv', index=False)
  412. # result=pd.read_csv('path.csv')
  413. # result.to_json('forcast.json', orient="records")
  414. # import json
  415. # # open the JSON file and read its contents
  416. # with open(r'forcast.json', 'r') as f:
  417. # json_data = json.load(f)
  418. # print the JSON data
  419. #print(json_data)
  420. #output={"response":"success","result":json_data}
  421. #print(output)
  422. return 'done'
  423. ###############################################################################################################################################################
  424. #####################################################################################################################
  425. @app.route("/sales_forcast", methods=["GET", "POST"])
  426. def sales_forcast():
  427. #wise= request.args.get('wise').replace('{','').replace('}','')
  428. #Num= request.args.get('value').replace('{','').replace('}','')
  429. #print(wise)
  430. #print(Num)
  431. Dataset = request.get_json()
  432. a = Dataset
  433. wise = a['wise']
  434. # print(x)
  435. Num = a['future_dates']
  436. get_url = a['get_url']
  437. get_url_token = a['get_url_token']
  438. post_url = a['post_url']
  439. post_url_token = a['post_url_token']
  440. #print(Dataset)
  441. # import pandas as pd
  442. # df=pd.DataFrame(Dataset)
  443. # print(df)
  444. # a = Dataset
  445. #x = a['wise']
  446. # cmd = "python C:\\Users\\Bizga\\Desktop\\forcast\\XGdaywise.py"
  447. # os.system(cmd)
  448. #split=wise
  449. # wise='month'
  450. # Num=5
  451. if wise=='days':
  452. print('daywise groupby')
  453. output=day(Num,get_url,get_url_token,post_url,post_url_token)
  454. # cmd = "python C:\\Users\\Bizga\\Desktop\\forcast\\XGdaywise.py"+" "+ Num
  455. # os.system(cmd)
  456. else:
  457. print('monthwise groupby')
  458. output=month(Num,get_url,get_url_token,post_url,post_url_token)
  459. # payload = json.dumps(output)
  460. # payload_list="["+payload+"]"
  461. return output
  462. if __name__ == "__main__":
  463. app.run(host='0.0.0.0', port=8082)