Esempio n. 1
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    def all_boats_destination(root_model, api_all_boat, api_all_destination):

        boats_destination = Etl_data.open_json(
            "data_boat_destination_statestique", root_model)
        all_boat = Statestique_bosts.all_boats(api_all_boat)
        all_boat = pd.DataFrame(all_boat)
        df_boats = boats_destination.drop_duplicates(subset="id_gen",
                                                     keep="first")
        df_boats = pd.merge(df_boats, all_boat, on='id_gen', how='inner')
        df_boats = df_boats.to_dict('records')
        df_boats = sorted(df_boats, key=lambda k: k["name"], reverse=False)
        all_destination = Etl_data.web_service_response(api_all_destination)
        df_destenation = boats_destination.drop_duplicates(subset="id",
                                                           keep="first")
        all_destination = all_destination[all_destination["ref_language"] ==
                                          "1"]
        all_destination = all_destination.rename(columns={'location_id': 'id'})
        df_destenation = pd.merge(df_destenation,
                                  all_destination,
                                  on='id',
                                  how='inner')
        df_destenation = df_destenation.to_dict('records')
        df_destenation = sorted(df_destenation,
                                key=lambda k: k["location_name"],
                                reverse=False)

        return df_destenation, df_boats
Esempio n. 2
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    def destination_boat_statetique(root_model, id_location, api_all_boats):
        df_boats = Etl_data.open_json("data_boat_destination_statestique",
                                      root_model)
        df_boats = df_boats[df_boats["id"] == id_location]
        boat = list(df_boats.id_gen.unique())
        df_score = []
        for i in range(0, len(boat)):
            score = 0
            one_boat = pd.DataFrame(df_boats[df_boats["id_gen"] == boat[i]])
            score = len(one_boat)
            df_score.append({"id_gen": boat[i], "score": score})
        df_score = pd.DataFrame(df_score)
        all_boats = Etl_data.web_service_response(api_all_boats)
        all_boats = all_boats.rename(columns={'generic': 'id_gen'})
        all_boats = all_boats.drop_duplicates(subset="id_gen", keep="first")
        df_boats = pd.merge(df_score, all_boats, on='id_gen', how='inner')
        df_final = []
        for index, boat in df_boats.iterrows():
            df_final.append({
                "id_gen":
                boat["id_gen"],
                "name_boat":
                boat["boat_brand"] + " " + boat["boat_model"] + " " +
                boat["shipyard_name"],
                "score":
                boat["score"]
            })

        return df_final
Esempio n. 3
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 def __init__(self, api_data_ww, api_data_crm1, api_data_crm2,
              api_boats_id_ww):
     self.data_ww = Etl_data.web_service_response(api_data_ww)
     self.data_crm1 = Etl_data.web_service_response(api_data_crm1)
     self.data_crm2 = Etl_data.web_service_response(api_data_crm2)
     self.boat_id_ww = Etl_data.web_service_response(api_boats_id_ww)
     self.all_boat = self.all_boat_int(self.data_ww, self.data_crm1,
                                       self.data_crm2)
Esempio n. 4
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    def __init__(self, api_boats_generic, api_all_destination, root_model,
                 name_model):

        self.boats_generic = Etl_data.web_service_response(api_boats_generic)
        self.all_destination = Etl_data.web_service_response(
            api_all_destination)
        self.root_model = root_model
        self.name_model = name_model
Esempio n. 5
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 def created_data_for_recommendation_boat(self, root_model):
     print("log refrech data start")
     boats_data = self.boat_found_all_id()
     boats_data = boats_data[boats_data["country"] != ""]
     boats_data_final = self.ranked_boat(boats_data)
     Etl_data.writeToJSONFile(root_model, "recommandation_boats",
                              boats_data_final.to_dict("records"))
     recommendation = Recommendation_boats(root_model)
     recommendation.restart(root_model)
Esempio n. 6
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 def statestique_type_boat(self, api_ww, apicrm, country):
     req_ww = Etl_data.web_service_response(api_ww)
     req_crm = Etl_data.web_service_response(apicrm)
     req_ww = req_ww[req_ww["country"] == country.upper()]
     req_crm = req_crm[req_crm["pays"] == country.upper()]
     boats_crm = self.boats_clean_type(req_crm, "type_bateau", "pays",
                                       ["3", "1", "2"])
     boats = self.boats_clean_type(req_ww, "boat_type", "country",
                                   ["Motoryacht", "Monohull", "Catamaran"])
     boats = self.somme_boats(boats, boats_crm)
     return boats
Esempio n. 7
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 def index_country(self, root_model):
     boats_data = Etl_data.open_json("recommandation_boats", root_model)
     index_country = Etl_data.open_json("indexed_countryt", root_model)
     unique_country = list(boats_data.country.unique())
     for i in range(0, len(unique_country)):
         one_index = index_country[index_country["label"] ==
                                   unique_country[i]]
         for index, one_contry in one_index.iterrows():
             boats_data.loc[boats_data['country'] == unique_country[i],
                            ['country']] = one_contry["index"]
     return index_country, boats_data
Esempio n. 8
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 def create_data_ml_boats(self, root_model):
     boat = self.all_boat.drop_duplicates(subset='boat', keep='first')
     boat_id = self.boat_id_ww.drop_duplicates(subset='generic',
                                               keep='first')
     boat_final = self.boat_found_id(boat, boat_id)
     df_boats = pd.merge(pd.DataFrame(self.all_boat),
                         pd.DataFrame(boat_final),
                         on='boat',
                         how='inner')
     df_boats = self.ranged_week(df_boats)
     df_boats_final = self.ranked_boat(df_boats)
     Etl_data.writeToJSONFile(root_model, 'data_Ml_boat',
                              df_boats_final.to_dict("records"))
     return "done"
Esempio n. 9
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    def training_model(self, df_boats_destination, root_model, name_model):

        print("begin of training")

        feature_col_names = [
            'year', 'tremestre', 'id_gen', 'id_location', 'fuel', 'loa', 'beam'
        ]
        predicted_class_names = ['counts']

        X = df_boats_destination[feature_col_names].values
        y = df_boats_destination[predicted_class_names].values
        split_test_size = 0.25

        X_train, X_test, y_train, y_test = train_test_split(
            X, y, test_size=split_test_size, random_state=23)

        model = RandomForestRegressor(n_estimators=100)
        model.fit(X_train, y_train)

        joblib.dump(model, root_model + "/" + name_model)

        #####################################
        score_train = model.score(X_train, y_train)
        score_test = model.score(X_test, y_test)
        print(score_train, score_test)

        x_pred = model.predict(X_train)
        error_train = mean_squared_error(y_train, x_pred)
        print(error_train)

        y_pred = model.predict(X_test)
        error_test = mean_squared_error(y_test, y_pred)
        print(error_test)
        ####################
        info = []
        info.append({
            "scoretrai": score_train,
            "errortr": error_train,
            "scoretes": score_test,
            "errorte": error_test
        })
        Etl_data.writeToJSONFile(root_model, "score_ml_boats_destination",
                                 info)
        ####################
        #predection = Predection_distination(root_name+"/"+name_model)
        #predection.restart(root_name+"/"+name_model)
        #####################################
        print("training done !")
Esempio n. 10
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    def scored_day(self, name_model, root_model, api_all_destination):
        all_destination = Etl_data.web_service_response(api_all_destination)
        predection = Predection_distination(root_model + "/" + name_model)
        date = datetime.datetime.now()
        date = date.strftime('%Y/%m/%d')
        destination = pd.DataFrame(
            all_destination[all_destination["ref_language"] == "1"])

        rank = []
        date_in = date.split("/")
        for index, request in destination.iterrows():
            if request["location_type"] == "country" or request[
                    "location_type"] == "ocean":
                predicit = predection.predict(date_in[0], date_in[1],
                                              date_in[2],
                                              request["location_id"])
                rank.append({
                    "date":
                    date_in[0] + "/" + date_in[1] + "/" + date_in[2],
                    "score":
                    predicit[0],
                    'destination':
                    request["location_name"],
                    'id':
                    request["location_id"]
                })

        return sorted(rank, key=lambda k: k["score"], reverse=True)[:20]
Esempio n. 11
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 def found_all_year(root_model):
     df_destination = Etl_data.open_json("data_Ml_destination", root_model)
     df_final = []
     one_year = list(df_destination.year.unique())
     for i in range(0, len(one_year)):
         df_final.append({'year': one_year[i]})
     return sorted(df_final, key=lambda k: k["year"], reverse=False)
Esempio n. 12
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 def courbe_destination(self, root_model, location=21):
     destination = Etl_data.open_json("data_Ml_destination", root_model)
     destination = destination[destination["id"] == location]
     destination = self.rank(destination)
     destination = pd.DataFrame(destination)
     df_destination_choix = self.reg_time(destination)
     return df_destination_choix.to_dict('records')
Esempio n. 13
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    def found_tuple(self, root_model, api_all_destination):
        all_destination = Etl_data.web_service_response(api_all_destination)
        destination = Etl_data.open_json("data_Ml_destination", root_model)
        all_destination = all_destination[all_destination["ref_language"] ==
                                          "1"]
        unique = list(destination.id.unique())
        id_destination_f = []
        for i in range(0, len(unique)):
            id_destination = all_destination[all_destination["location_id"] ==
                                             unique[i]]
            for index, des in id_destination.iterrows():
                id_destination_f.append({
                    "id": des["location_id"],
                    "destination": des["location_name"]
                })

        return sorted(id_destination_f,
                      key=lambda k: k["destination"],
                      reverse=False)
Esempio n. 14
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    def create_data_ML(self, root_model):

        df_boats = self.data_ww.append(self.data_crm)
        df_boats = df_boats.append(self.data_crm2)

        print(df_boats.shape)
        print(df_boats.info())

        df_boats = df_boats[df_boats["boat"] != ""]
        df_boats = df_boats[df_boats["month"] != "0"]
        df_boats = df_boats[df_boats["request_destination"] != ""]

        df_boats = self.found_id_for_all_boat(df_boats)
        df_boats = self.found_destination(df_boats)

        Etl_data.writeToJSONFile(root_model,
                                 "data_boat_destination_statestique",
                                 df_boats.to_dict('records'))

        df_boats_final = self.tremestre(df_boats)
        df_boats_final = self.rank(df_boats_final)

        req_generic = self.boats_generic.loc[:, [
            'boat_id', 'loa', 'beam', 'fuel'
        ]]
        req_generic = req_generic.rename(columns={'boat_id': 'id_gen'})
        Model_boats_final = pd.merge(df_boats_final,
                                     req_generic,
                                     on='id_gen',
                                     how='inner')

        Model_boats_final['loa'] = Model_boats_final.loa.astype(float)
        Model_boats_final['beam'] = Model_boats_final.beam.astype(float)
        Model_boats_final['fuel'] = Model_boats_final.fuel.astype(int)
        Model_boats_final[
            'id_location'] = Model_boats_final.id_location.astype(int)
        Model_boats_final['id_gen'] = Model_boats_final.id_gen.astype(int)
        Model_boats_final['year'] = Model_boats_final.year.astype(int)
        Model_boats_final['tremestre'] = Model_boats_final.tremestre.astype(
            int)

        Etl_data.writeToJSONFile(root_model, "data_final_boats_destination",
                                 Model_boats_final.to_dict('records'))
Esempio n. 15
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 def country_boat_statistique(root_model, code_country):
     df_boats = Etl_data.open_json("recommandation_boats", root_model)
     df_boats = df_boats[df_boats["country"] == code_country]
     boat = list(df_boats.name.unique())
     df_score = []
     for i in range(0, len(boat)):
         one_boat = pd.DataFrame(df_boats[df_boats["name"] == boat[i]])
         for index, bateaux in one_boat.iterrows():
             df_score.append({"counts": bateaux["counts"], 'name': boat[i]})
     df_final = pd.DataFrame(df_score)
     return df_final.to_dict('records')
Esempio n. 16
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    def training_data_boat(self):
        feature_col_names = ['year', 'day', 'id_gen']
        predicted_class_names = ['counts']

        X = self.boat_data[
            feature_col_names].values  # predictor feature columns
        y = self.boat_data[
            predicted_class_names].values  # predicted class (score) column (1 X m)
        split_test_size = 0.25

        X_train, X_test, y_train, y_test = train_test_split(
            X, y, test_size=split_test_size, random_state=20)

        regrossor = RandomForestRegressor(n_estimators=500, random_state=0)
        regrossor.fit(X_train, y_train)

        joblib.dump(regrossor, self.path + "/" + self.name_model)

        score_train = math.fabs(regrossor.score(X_train, y_train))
        score_test = math.fabs(regrossor.score(X_test, y_test))
        print(score_train, score_test)

        x_pred = regrossor.predict(X_train)
        error_train = mean_squared_error(y_train, x_pred)
        print(error_train)

        y_pred = regrossor.predict(X_test)
        error_test = mean_squared_error(y_test, y_pred)
        print(error_test)

        prediction = Prediction(self.path + "/" + self.name_model)
        prediction.restart()

        info = []
        info.append({
            "scoretrai": score_train,
            "errortr": error_train,
            "scoretes": score_test,
            "errorte": error_test
        })
        Etl_data.writeToJSONFile(self.path, "score_ml_boats", info)
Esempio n. 17
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    def all_boats(api_all_boat):
        boats = Etl_data.web_service_response(api_all_boat)
        boats = boats.drop_duplicates(subset="generic", keep="first")
        boats_id = []
        for index, boat in boats.iterrows():
            ch = boat["boat_brand"] + " " + boat["boat_model"] + " " + boat[
                "shipyard_name"]
            boats_id.append({"id_gen": boat["generic"], "name": ch})

        boats_id = sorted(boats_id, key=lambda k: k["name"], reverse=False)

        return boats_id
Esempio n. 18
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 def number_request_allyear_statistique(root_model):
     df_destination = Etl_data.open_json("data_Ml_destination", root_model)
     one_year = list(df_destination.year.unique())
     df_final = []
     for i in range(0, len(one_year)):
         one_boat = pd.DataFrame(
             df_destination[df_destination["year"] == one_year[i]])
         score = 0
         for index, one_data_frame in one_boat.iterrows():
             score = score + one_data_frame['counts']
         df_final.append({'year': one_year[i], 'counts': score})
     return sorted(df_final, key=lambda k: k["year"], reverse=True)
Esempio n. 19
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 def country_alldestnation_statistique(root_model, code_country):
     df_destination = Etl_data.open_json("recommendation_destination",
                                         root_model)
     indexed_country = Etl_data.open_json("indexed_country", root_model)
     index_c = indexed_country[indexed_country["label"] ==
                               code_country.upper()]
     for index, country in index_c.iterrows():
         df_destination = df_destination[df_destination["country"] ==
                                         country['index']]
     destination = list(df_destination.destination.unique())
     df_score = []
     for i in range(0, len(destination)):
         one_boat = pd.DataFrame(df_destination[
             df_destination["destination"] == destination[i]])
         for index, des in one_boat.iterrows():
             df_score.append({
                 "counts": des["counts"],
                 'name': destination[i]
             })
     df_final = pd.DataFrame(df_score)
     return df_final.to_dict('records')
Esempio n. 20
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    def top_destination_request(root_model, api_all_destination):
        df_destination = Etl_data.open_json("data_Ml_destination", root_model)
        all_destination = Etl_data.web_service_response(api_all_destination)
        all_destination = all_destination[all_destination["ref_language"] ==
                                          "1"]
        destination = list(df_destination.id.unique())
        df_score = []
        for i in range(0, len(destination)):
            one_destination = pd.DataFrame(
                df_destination[df_destination["id"] == destination[i]])
            score = 0
            for index, des in one_destination.iterrows():
                score = score + des["counts"]
            df_score.append({"location_id": destination[i], "score": score})

        df_score = pd.DataFrame(
            sorted(df_score, key=lambda k: k["score"], reverse=True))
        df_destination = pd.merge(df_score,
                                  all_destination,
                                  on='location_id',
                                  how='inner')
        return df_destination.to_dict('records')
Esempio n. 21
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    def satestique_boat_generique(self, id_generic, root_model):

        boats = Etl_data.open_json("data_boat_destination_statestique",
                                   root_model)
        df_boats = boats[boats["id_gen"] == id_generic]
        if len(df_boats) < 1:
            return {"dates": "", "score": 0}
        df_boats = self.rank_boat(df_boats)
        df_boats = pd.DataFrame(df_boats)
        df_boats["dates"] = pd.DatetimeIndex(data=df_boats.dates)
        df_boats = df_boats.sort_values(by='dates')
        df_boats["dates"] = df_boats["dates"].dt.strftime('%Y/%m')

        return df_boats.to_dict('records')
Esempio n. 22
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 def boat_type_destination(self, root_model, id_location, api_all_boats):
     df_boats = Etl_data.open_json("data_boat_destination_statestique",
                                   root_model)
     df_boats = df_boats[df_boats["id"] == id_location]
     req_generic = Etl_data.web_service_response(api_all_boats)
     req_generic = req_generic.rename(columns={'boat_id': 'id_gen'})
     df_boats = pd.merge(df_boats, req_generic, on='id_gen', how='inner')
     df_boats_type = []
     motoryacht = 0
     monohull = 0
     catamaran = 0
     for index, boat in df_boats.iterrows():
         if boat["hull"].upper() == "MONOHULL":
             if boat["propulsion"].upper() == "SAILING":
                 monohull = monohull + 1
             else:
                 motoryacht = motoryacht + 1
         else:
             catamaran = catamaran + 1
     df_boats_type.append({'label': 'Catamaran', 'value': catamaran})
     df_boats_type.append({'label': 'Monohull', 'value': monohull})
     df_boats_type.append({'label': 'Motoryacht', 'value': motoryacht})
     return df_boats_type
Esempio n. 23
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 def __init__(self, api_data_ww, api_data_crm, api_data_crm2,
              api_boats_id_ww, api_boats_generic, api_all_destination):
     self.data_ww = Etl_data.web_service_response(api_data_ww)
     self.data_crm = Etl_data.web_service_response(api_data_crm)
     self.data_crm2 = Etl_data.web_service_response(api_data_crm2)
     self.boats_id_ww = Etl_data.web_service_response(api_boats_id_ww)
     self.boats_generic = Etl_data.web_service_response(api_boats_generic)
     self.all_destination = Etl_data.web_service_response(
         api_all_destination)
Esempio n. 24
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    def top_boats(api_all_boats, root_model):
        boats = Etl_data.open_json("data_boat_destination_statestique",
                                   root_model)
        all_boat = Statestique_bosts.all_boats(api_all_boats)
        boat = list(boats.id_gen.unique())
        df_score = []
        for i in range(0, len(boat)):
            one_boat = pd.DataFrame(boats[boats["id_gen"] == boat[i]])
            score = len(one_boat)
            df_score.append({"id_gen": boat[i], "score": score})

        df_score = pd.DataFrame(
            sorted(df_score, key=lambda k: k["score"], reverse=True))
        all_boat = pd.DataFrame(all_boat)
        df_boats = pd.merge(df_score, all_boat, on='id_gen', how='inner')

        return df_boats.to_dict('records')
Esempio n. 25
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 def country_destinaion_statistique(root_model, code_country,
                                    id_destination):
     df_destination = Etl_data.open_json("data_Ml_destination", root_model)
     df_destination = df_destination[df_destination["country"] ==
                                     code_country]
     df_destination = df_destination[df_destination["id"] == id_destination]
     list_destination = []
     for index, destination in df_destination.iterrows():
         list_destination.append({
             "dates":
             destination["month"] + "/" + destination["year"],
             "counts":
             destination["counts"]
         })
     statis = Statestique_all_destination()
     list_destination = pd.DataFrame(list_destination)
     if len(list_destination) > 0:
         list_destination = statis.reg_time(list_destination)
     return list_destination.to_dict('records')
Esempio n. 26
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 def __init__(self, api_data_ww, api_data_crm, api_boats_id_ww):
     self.data_ww = Etl_data.web_service_response(api_data_ww)
     self.data_crm = Etl_data.web_service_response(api_data_crm)
     self.boats_id_ww = Etl_data.web_service_response(api_boats_id_ww)
Esempio n. 27
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 def __init__(self, root_model, name_model):
     self.path = root_model
     self.name_model = name_model
     self.boat_data = Etl_data.open_json('data_Ml_boat', self.path)
     self.training_data_boat()
Esempio n. 28
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 def __init__(self, root_model, name_model):
     self.df_boats_destination = Etl_data.open_json(
         "data_final_boats_destination", root_model)
     self.training_model(self.df_boats_destination, root_model, name_model)
Esempio n. 29
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 def score_ml_destination(self, root_model):
     score = Etl_data.open_json("score_ml_destination", root_model)
     for index, sc in score.iterrows():
         return sc["scoretrai"], sc["scoretes"], sc["errortr"], sc[
             "errorte"]